Peer-reviewed journal articles, conference proceedings, and academic publications by Dr. Caner Erden.
2026
Frequency Ratio and Machine Learning-Based Classification of Landslide Susceptibility in the West of Mersin Province, Türkiye: An Integrated Approach Using SMOTE
Çağan, Çağrı, Kurnaz, Talas Fikret, and Erden, Caner
@article{kurnaz_frequency_2026,title={Frequency Ratio and Machine Learning-Based Classification of Landslide Susceptibility in the West of Mersin Province, Türkiye: An Integrated Approach Using SMOTE},author={Çağan, Çağrı and Kurnaz, Talas Fikret and Erden, Caner},journal={Journal of African Earth Sciences},volume={238},pages={106085},year={2026},month=jun,doi={https://doi.org/10.1016/j.jafrearsci.2026.106085},url={https://doi.org/10.1016/j.jafrearsci.2026.106085}}
Liquefaction-Induced Settlement Prediction Using Ensemble Machine Learning and LIME-Based Explainable AI
Dağdeviren, Uğur, Kökçam, Abdullah Hulusi, Erden, Caner and 2 more authors
@article{dagdeviren_liquefaction_2026,title={Liquefaction-Induced Settlement Prediction Using Ensemble Machine Learning and LIME-Based Explainable AI},author={Dağdeviren, Uğur and Kökçam, Abdullah Hulusi and Erden, Caner and Demir, Alparslan Serhat and Kurnaz, Talas Fikret},journal={Environmental Earth Sciences},volume={85},number={7},pages={186},year={2026},doi={https://doi.org/10.1007/s12665-026-12904-6},url={https://doi.org/10.1007/s12665-026-12904-6}}
Adaptive Learning Rate Optimization in Deep Recurrent Architectures for Precision PM2.5 Forecasting under Climate Variability
@article{erden_adaptive_2026,title={Adaptive Learning Rate Optimization in Deep Recurrent Architectures for Precision PM2.5 Forecasting under Climate Variability},author={Erden, Caner},journal={Chemosphere},pages={144875},year={2026},doi={https://doi.org/10.1016/j.chemosphere.2026.144875},url={https://doi.org/10.1016/j.chemosphere.2026.144875}}
Prediction of soil compaction parameters using AutoML with multidataset validation
Erden, Caner, Demir, Alparslan Serhat, Kökçam, Abdullah Hulusi and 2 more authors
@article{erden_prediction_2026,title={Prediction of soil compaction parameters using AutoML with multidataset validation},author={Erden, Caner and Demir, Alparslan Serhat and Kökçam, Abdullah Hulusi and Kurnaz, Talas Fikret and Dağdeviren, Uğur},journal={Computers \& Industrial Engineering},pages={112056},year={2026},month=apr,doi={https://doi.org/10.1016/j.cie.2026.112056},url={https://doi.org/10.1016/j.cie.2026.112056}}
An Integrated Techno-Economic and Schedule Optimization Framework for Industrial Solar PV Projects
Günhan, Atakan, Demir, Halil Ibrahim, Erden, Caner and 1 more author
@article{gunhan_techno-economic_2026,title={An Integrated Techno-Economic and Schedule Optimization Framework for Industrial Solar PV Projects},author={Günhan, Atakan and Demir, Halil Ibrahim and Erden, Caner and Erkan, Enes Furkan},journal={Computers \& Industrial Engineering},pages={112105},year={2026},month=may,doi={https://doi.org/10.1016/j.cie.2026.112105},url={https://doi.org/10.1016/j.cie.2026.112105}}
Sustainable Resilience in Critical Mineral Supply Chains: An ESG and Circular Economy Perspective
@article{tutar_sustainable_2026,title={Sustainable Resilience in Critical Mineral Supply Chains: An ESG and Circular Economy Perspective},author={Tutar, Hasan and Erden, Caner},journal={Business Strategy and the Environment},pages={bse.70850},year={2026},month=apr,doi={https://doi.org/10.1002/bse.70850},url={https://doi.org/10.1002/bse.70850}}
Targeted cash transfers vs universal price subsidies: policy persistence and cost-effectiveness in EU energy poverty (2015–2024)
Tutar, Hasan, and Erden, Caner
International Journal of Sociology and Social Policy Apr 2026
@article{tutar_targeted_2026,title={Targeted cash transfers vs universal price subsidies: policy persistence and cost-effectiveness in EU energy poverty (2015–2024)},author={Tutar, Hasan and Erden, Caner},journal={International Journal of Sociology and Social Policy},pages={1--22},year={2026},month=apr,doi={https://doi.org/10.1108/IJSSP-01-2026-0043},url={https://doi.org/10.1108/IJSSP-01-2026-0043}}
Beyond onboarding: social media, microlearning, and psychological safety in hybrid talent integration
Tutar, Hasan, Mutlu, Hakan Tahiri, and Erden, Caner
@article{tutar_beyond_2026,title={Beyond onboarding: social media, microlearning, and psychological safety in hybrid talent integration},author={Tutar, Hasan and Mutlu, Hakan Tahiri and Erden, Caner},journal={Employee Relations},pages={1--22},year={2026},month=mar,doi={https://doi.org/10.1108/ER-11-2025-1014},url={https://doi.org/10.1108/ER-11-2025-1014}}
Büyük Dil Modellerinin (LLM) İnşası: 103 Kod Bloğu ve 8 Uygulamalı Notebook ile
Yapay zekânın en heyecan verici alanlarından biri olan büyük dil modellerini (LLM) hem kavramsal hem de uygulamalı yönleriyle ele alan bu kitap, LLM’lerin tarihsel gelişiminden temel çalışma prensiplerine kadar geniş bir yelpazeyi ayrıntılı bir şekilde açıklar. Dikkat mekanizmaları, sıfırdan GPT modeli oluşturma, performans değerlendirme, ince ayar (fine-tuning) ve komut mühendisliği gibi kritik konuları bütüncül bir çerçevede sunar. Güçlü görsel anlatımı ve uygulama odaklı yapısıyla öne çıkan eser; 9 ana bölüm, 103 kod bloğu ve 8 uygulamalı notebook desteğiyle okuyucuya doğrudan uygulanabilir bir çalışma zemini sağlar. Yapay zekâ meraklılarından yazılım geliştiricilere kadar geniş bir kitleye hitap eden bu çalışma, büyük dil modellerini teoriden pratiğe taşıyan tam donanımlı bir rehber niteliğindedir.
@book{erden_llm_insasi_2026,title={Büyük Dil Modellerinin (LLM) İnşası: 103 Kod Bloğu ve 8 Uygulamalı Notebook ile},author={Erden, Caner},year={2026},publisher={Seçkin Yayıncılık},isbn={9786253818548},url={https://www.seckin.com.tr/kitap/245833947},language={tr}}
Theory and Background on Artificial Intelligence Methods
Gumus, Mehmet, Huang, Xinyi, Erden, Caner and 4 more authors
@inbook{Gumus_2026,title={Theory and Background on Artificial Intelligence Methods},isbn={9781003617327},url={http://dx.doi.org/10.1201/9781003617327-1},doi={10.1201/9781003617327-1},booktitle={Artificial Intelligence in the Energy Industry},publisher={CRC Press},author={Gumus, Mehmet and Huang, Xinyi and Erden, Caner and Kır, Sena and Yang, Jie and Zhang, Tianyi and Gunay, Elif Elcin},year={2026},month=jan,pages={1–80}}
2025
Estimation of soil liquefaction using artificial intelligence techniques: an extended comparison between machine and deep learning approaches
Şehmusoğlu, Eyyüp Hakan, Kurnaz, Talas Fikret, and Erden, Caner
This study investigates the effectiveness of various deep learning (DL) algorithms in predicting soil liquefaction susceptibility. We explore a spectrum of algorithms, including machine learning models such as Support Vector Machines (SVMs), K-Nearest Neighbors (KNN), and Logistic Regression (LR), alongside DL architectures like Convolutional Neural Networks (CNNs), Long Short-Term Memory networks (LSTMs), Bidirectional LSTMs (BiLSTMs), and Gated Recurrent Units (GRUs). The performance of these algorithms is assessed using comprehensive metrics, including accuracy, precision, recall, F1-score, receiver operating characteristic (ROC) curve analysis, and area under the curve (AUC). Cross-entropy loss is employed as the loss function during model training to optimize the differentiation between liquefiable and non-liquefiable soil samples. Our findings reveal that the GRU model achieved the highest overall accuracy of 0.98, followed by the BiLSTM model with an accuracy of 0.95. Notably, the BiLSTM model excelled in precision for class 1, attaining a score of 0.96 on the test dataset. These results underscore the potential of both GRU and BiLSTM models in predicting soil liquefaction susceptibility, with the BiLSTM model’s simpler architecture proving particularly effective in certain metrics and datasets. The findings of this study could assist practitioners in seismic risk assessment by providing more accurate and reliable tools for evaluating soil liquefaction potential, thereby enhancing mitigation strategies and informing decision-making in earthquake-prone areas. This study contributes to developing robust tools for liquefaction hazard assessment, ultimately supporting improved seismic risk mitigation.
@article{sehmusoglu_estimation_2025,title={Estimation of soil liquefaction using artificial intelligence techniques: an extended comparison between machine and deep learning approaches},volume={84},issn={1866-6299},shorttitle={Estimation of soil liquefaction using artificial intelligence techniques},url={https://doi.org/10.1007/s12665-025-12116-4},doi={https://doi.org/10.1007/s12665-025-12116-4},language={en},number={5},urldate={2025-02-21},journal={Environmental Earth Sciences},author={Şehmusoğlu, Eyyüp Hakan and Kurnaz, Talas Fikret and Erden, Caner},month=feb,year={2025},keywords={Deep learning, CNN, LSTM, Deep neural network, GRU, Soil liquefaction prediction},pages={130}}
Explainable AI using ensemble machine learning with integrated SHapley additive explanations (SHAP)-Borda approach for estimation of the safety factor against soil liquefaction
Dağdeviren, Uğur, Demir, Alparslan Serhat, Erden, Caner and 2 more authors
In most of the studies on soil liquefaction prediction based on Machine Learning (ML), the models presented are presented in a closed box structure. In the studies where the effect of the features on the model performance is analyzed with Interpretability methods, it is seen that the order of effect of the features changes for each ML algorithm. This situation makes the results of the studies conducted on the same subject inconsistent. In this study, we propose an integrated SHapley Additive exPlanations (SHAP)-Borda approach to overcome this problem. With this study, we provide decision makers with ease in explaining ML models by combining SHAP analysis results with the Borda method for the first time. In the study, ensemble ML algorithms were used for soil liquefaction prediction using data collected from the literature. The performances of the model predictions obtained by hyper parameterization were compared, and correlation results ranging from 0.91 to 0.93 were obtained. Ensemble ML algorithms that were found to be successful as a result of evaluating other performance criteria were analyzed with the SHAP-Borda approach in the study. It has been observed that with the proposed SHAP-Borda approach, the interpretability results of different ML algorithms can be brought together, and a final result can be presented, providing ease of evaluation for decision makers. The study also shows that (N1)60 and amax are the most effective features in predicting soil liquefaction.
@article{dagdeviren_explainable_2025,title={Explainable {AI} using ensemble machine learning with integrated {SHapley} additive explanations ({SHAP})-{Borda} approach for estimation of the safety factor against soil liquefaction},volume={84},issn={1866-6280, 1866-6299},url={https://link.springer.com/10.1007/s12665-025-12466-z},doi={https://doi.org/10.1007/s12665-025-12466-z},language={en},number={17},urldate={2025-08-31},journal={Environmental Earth Sciences},author={Dağdeviren, Uğur and Demir, Alparslan Serhat and Erden, Caner and Kökçam, Abdullah Hulusi and Kurnaz, Talas Fikret},month=sep,year={2025},pages={507}}
An integrated SHAP-MCDM approach for slope stability prediction based on machine learning algorithms
Demir, Alparslan Serhat, Dağdeviren, Uğur, Kurnaz, Talas Fikret and 2 more authors
In machine learning (ML)-based slope stability prediction studies, feature importance results often vary across different algorithms, leading to inconsistent interpretations. This issue arises because the importance of features differs depending on the algorithm applied within the same study. To address this challenge, this study proposes a novel methodology for obtaining a final, unified ranking of features by combining the feature importance rankings of various ML algorithms using a Multi-Criteria Decision-Making (MCDM) technique. This approach ensures a consistent and reliable feature ranking derived from the results of successful ML models. Furthermore, the study demonstrates how performance indicators of ML algorithms can be translated into criterion weights within the MCDM framework. Hyperparameter optimization was applied to the ML models, achieving accuracy rates between 70% and 92.5%. Successful algorithms were analyzed using SHapley Additive Explanations (SHAP) to evaluate feature importance, and the results were integrated into the proposed SHAP-MCDM methodology. The MULTIMOORA method, a well-established MCDM technique, was employed to combine the SHAP rankings. The results confirmed that a final feature ranking could be derived by merging different SHAP rankings of ML algorithms using the proposed SHAP-MULTIMOORA approach. The study also identified key features like cohesion, internal friction angle, and slope height, which significantly influence slope stability prediction. This methodology both contributes to the integration of SHAP rankings and advances prediction accuracy by calculating criterion weights of ML algorithms based on multiple performance metrics. The proposed approach has a broad applicability, improving both classification and regression-based prediction tasks in various domains beyond slope stability.
@article{demir_integrated_2025,title={An integrated {SHAP}-{MCDM} approach for slope stability prediction based on machine learning algorithms},doi={https://doi.org/10.1007/s11069-025-07665-7},url={https://doi.org/10.1007/s11069-025-07665-7},language={en},journal={Natural Hazards},author={Demir, Alparslan Serhat and Dağdeviren, Uğur and Kurnaz, Talas Fikret and Erden, Caner and Kökçam, Abdullah Hulusi},year={2025}}
Türkiye’de Orman Yangınları ile Güneş Lekeleri Arasındaki Olası İlişkinin Araştırılması
Anğınoğlu, Neziha, Utkucu, Murat, and Erden, Caner
Ormanlar, bazı temel kaynakları sağlar, dünya çapında milyonlarca insanın geçimini destekler, iklim değişiklikleri ve afetlerin etkilerini azaltırlar. Bununla birlikte, kötü arazi yönetimi ve iklim değişiklikleriyle ilişkilendirilen daha sıcak ve kuru hava nedeniyle ormanlardaki yangınlar aşırı ve yaygın hale gelerek ormanları bir afet kaynağı haline dönüştürmektedir. Bu çalışmada, 1944 ile 2021 yılları arasında Türkiye’de belgelenen orman yangınlarının sayıları ve etki alanları, gözlemlenen Güneş Lekelerinin günlük sayıları ile olası korelasyonu araştırılmıştır. İlk önce yıl bazında karşılaştırma yapılmış ve korelasyon bulunmamıştır. Nisan 1954- Kasım 2019 zaman aralığında Güneş Lekesi çevrim-süresi uzunluğu temelinde yapılan karşılaştırmada güçlü bir korelasyon (+ 0,955) elde edilmiştir. Yıllık sayıları yerine, bir Güneş Lekesi çevrimi içindeki Güneş Lekelerinin günlük sayılarının toplamlarının orman yangınları ile ilişkili olduğu sonucuna varılmıştır. Şubat 1944 ile Mart 1954 yılları arasındaki ve Aralık 2019’da başlayan çevrimlerdeki azalan korelasyonlar insan-kaynaklı unsurların işaretleri olarak ele alınmıştır. Güneş Lekelerinin döngüsel davranışının orman yangınlarının etki alanını etkilediği ve aralarındaki korelasyonun doğal ve insan-kaynaklı unsurlar arasında ayrım yapmak için kullanılabileceği ileri sürülmüştür.
@article{anginoglu_turkiyeorman_2025,title={Türkiye’de {Orman} {Yangınları} ile {Güneş} {Lekeleri} {Arasındaki} {Olası} İlişkinin {Araştırılması}},volume={8},issn={2636-8390},url={https://dergipark.org.tr/tr/pub/afet/issue/93949/1526324},doi={https://doi.org/10.35341/afet.1526324},language={tr},number={2},urldate={2025-09-23},journal={Afet ve Risk Dergisi},author={Anğınoğlu, Neziha and Utkucu, Murat and Erden, Caner},month=jul,year={2025},note={Publisher: Ankara Üniversitesi},pages={513--529}}
Welding strength prediction in nuts to sheets joints: machine learning and ANFIS comparative analysis
Albak, Bircan, Erden, Caner, Ünal, Osman and 2 more authors
International Journal on Interactive Design and Manufacturing (IJIDeM) Apr 2025
This study uses machine learning algorithms and the Adaptive Neuro-Fuzzy Inference System (ANFIS) to predict welding strength in DD13 sheet metal joints with AISI 1010 nuts. The objective is to optimize industrial welding processes and improve quality control. The study investigates weld current, time, and hold time as critical input variables for joint integrity. The performance of different ML algorithms, including linear regression, random forest regression, ridge regression, Bayesian regression, K-Nearest Neighbors regression, decision tree regression, and ANFIS, are evaluated. Training and testing data consist of welding parameters and corresponding strength measurements. Performance metrics such as R2 score, mean absolute error (MAE), mean squared error (MSE), and root mean square error (RMSE) are used to assess the predictive capabilities. Random forest regression is the most efficient algorithm, with a high R2 score of 0.992 and minimal errors. ANFIS also exhibits comparable performance, highlighting its efficacy in this context. These findings can be useful for optimizing welding parameters in industrial settings, potentially leading to improved quality control and weld strength, particularly in automotive applications. Using ML and ANFIS, industries can make informed decisions to optimize welding processes and ensure joint integrity, ultimately meeting the rigorous demands of demanding applications.
@article{albak_welding_2025,title={Welding strength prediction in nuts to sheets joints: machine learning and {ANFIS} comparative analysis},volume={19},issn={1955-2505},shorttitle={Welding strength prediction in nuts to sheets joints},url={https://doi.org/10.1007/s12008-024-01805-2},doi={https://doi.org/10.1007/s12008-024-01805-2},language={en},number={4},urldate={2025-09-23},journal={International Journal on Interactive Design and Manufacturing (IJIDeM)},author={Albak, Bircan and Erden, Caner and Ünal, Osman and Akkaş, Nuri and Özkan, Sinan Serdar},month=apr,year={2025},keywords={Machine learning, ANFIS, Industrial applications, Nut sheet welding, Regression algorithms, Welding strength prediction},pages={2477--2492}}
A comparative analysis of hyperparameter optimization using LSTM-based deep learning models for urban air quality predictions
Eren, Beytullah, Erden, Caner, Atalı, Gökhan and 1 more author
Air pollution poses significant threats to human health and the environment, necessitating accurate prediction models for effective management and mitigation strategies. This study presents a comprehensive analysis of hyperparameter optimization techniques for Long Short-Term Memory (LSTM) based deep learning models in urban air quality forecasting. We focus on predicting concentrations of four key pollutants: carbon monoxide (CO), nitrogen oxides (NOX), nitrogen dioxide (NO2), and particulate matter (PM10). The study employs and compares three prominent hyperparameter optimization methods: Random Search, Bayesian Optimization, and Hyperband. Using air quality data from Sakarya, Turkey, collected between January 2020 and September 2022, we first addressed missing data through comparative analysis of mean imputation and k-Nearest Neighbors (kNN) imputation methods. Our results demonstrate that kNN imputation generally outperforms mean imputation, except for NOX predictions. The hyperparameter-optimized LSTM models consistently outperformed baseline models across all pollutants. Notably, the Hyperband Search algorithm excelled in NOX prediction, while Bayesian Optimization showed superior performance for other pollutants. Our analysis also revealed temporal trends in pollutant concentrations during the COVID-19 pandemic, including significant reductions in PM10 and CO levels. This study contributes to AI-driven environmental monitoring by comparing hyperparameter optimization techniques in urban air quality modeling. The improved prediction accuracy offered by our optimized models has significant implications for public health protection, environmental policymaking, and smart city initiatives. Our findings underscore the importance of tailored optimization approaches for different pollutants and highlight the potential of advanced machine learning techniques in addressing environmental challenges.
@article{eren_comparative_2025,title={A comparative analysis of hyperparameter optimization using {LSTM}-based deep learning models for urban air quality predictions},doi={https://doi.org/10.1016/j.asej.2025.103786},url={https://doi.org/10.1016/j.asej.2025.103786},language={en},number={103786},journal={Ain Shams Engineering Journal},author={Eren, Beytullah and Erden, Caner and Atalı, Gökhan and Özdemir, Serkan},year={2025},pages={1--13}}
Explainable AI using ensemble machine learning with integrated SHapley additive explanations (SHAP)-Borda approach for estimation of the safety factor against soil liquefaction
Dağdeviren, Uğur, Demir, Alparslan Serhat, Erden, Caner and 2 more authors
@article{Da_deviren_2025,title={Explainable AI using ensemble machine learning with integrated SHapley additive explanations (SHAP)-Borda approach for estimation of the safety factor against soil liquefaction},volume={84},issn={1866-6299},url={http://dx.doi.org/10.1007/s12665-025-12466-z},doi={10.1007/s12665-025-12466-z},number={17},journal={Environmental Earth Sciences},publisher={Springer Science and Business Media LLC},author={Dağdeviren, Uğur and Demir, Alparslan Serhat and Erden, Caner and Kökçam, Abdullah Hulusi and Kurnaz, Talas Fikret},year={2025},month=aug}
Soil Compaction Parameters Prediction Based on Automated Machine Learning Approach
Erden, Caner, Demir, Alparslan Serhat, Kokcam, Abdullah Hulusi and 2 more authors
doi = {10.48550/ARXIV.2512.08343},author = {Erden, Caner and Demir, Alparslan Serhat and Kokcam, Abdullah Hulusi and Kurnaz, Talas Fikret and Dagdeviren, Ugur},keywords = {Artificial Intelligence (cs.AI), FOS: Computer and information sciences, FOS: Computer and information sciences, I.2.6; I.2.1; H.2.8; J.2, 62J05, 62M45, 68T07, 86A32},title = {Soil Compaction Parameters Prediction Based on Automated Machine Learning Approach},publisher = {arXiv},year = {2025},copyright = {Creative Commons Attribution 4.0 International}}
Multiscale Aggregated Hierarchical Attention (MAHA): A Game Theoretic and Optimization Driven Approach to Efficient Contextual Modeling in Large Language Models
doi = {10.48550/ARXIV.2512.14925},author = {Erden, Caner},keywords = {Computation and Language (cs.CL), FOS: Computer and information sciences, FOS: Computer and information sciences},title = {Multiscale Aggregated Hierarchical Attention (MAHA): A Game Theoretic and Optimization Driven Approach to Efficient Contextual Modeling in Large Language Models},publisher = {arXiv},year = {2025},copyright = {arXiv.org perpetual, non-exclusive license}}
Predicting California Bearing Ratio with Ensemble and Neural Network Models: A Case Study from Turkiye
Kökçam, Abdullah Hulusi, Dağdeviren, Uğur, Kurnaz, Talas Fikret and 2 more authors
doi = {10.48550/ARXIV.2512.08340},author = {Kökçam, Abdullah Hulusi and Dağdeviren, Uğur and Kurnaz, Talas Fikret and Demir, Alparslan Serhat and Erden, Caner},keywords = {Artificial Intelligence (cs.AI), Machine Learning (cs.LG), FOS: Computer and information sciences, FOS: Computer and information sciences, I.2.6; I.2.1; G.3; J.2, 62J05, 68T07, 62M45, 86A32},title = {Predicting California Bearing Ratio with Ensemble and Neural Network Models: A Case Study from Turkiye},publisher = {arXiv},year = {2025},copyright = {Creative Commons Attribution 4.0 International}}
Türkiye’de Orman Yangınları ile Güneş Lekeleri Arasındaki Olası İlişkinin Araştırılması
Anğınoğlu, Neziha, Utkucu, Murat, and Erden, Caner
@article{An_no_lu_2025,title={Türkiye’de Orman Yangınları ile Güneş Lekeleri Arasındaki Olası İlişkinin Araştırılması},volume={8},issn={2636-8390},url={http://dx.doi.org/10.35341/afet.1526324},doi={10.35341/afet.1526324},number={2},journal={Afet ve Risk Dergisi},publisher={Afet ve Risk Dergisi},author={Anğınoğlu, Neziha and Utkucu, Murat and Erden, Caner},year={2025},month=jul,pages={513–529}}
Q-Sat AI: Machine Learning-Based Decision Support for Data Saturation in Qualitative Studies
doi = {10.48550/ARXIV.2511.01935},author = {Tutar, Hasan and Erden, Caner and Şentürk, Ümit},keywords = {Machine Learning (cs.LG), Artificial Intelligence (cs.AI), FOS: Computer and information sciences, FOS: Computer and information sciences},title = {Q-Sat AI: Machine Learning-Based Decision Support for Data Saturation in Qualitative Studies},publisher = {arXiv},year = {2025},copyright = {Creative Commons Attribution 4.0 International}}
Dynamic Rank Reinforcement Learning for Adaptive Low-Rank Multi-Head Self Attention in Large Language Models
doi = {10.48550/ARXIV.2512.15973},author = {Erden, Caner},keywords = {Machine Learning (cs.LG), Computation and Language (cs.CL), FOS: Computer and information sciences, FOS: Computer and information sciences},title = {Dynamic Rank Reinforcement Learning for Adaptive Low-Rank Multi-Head Self Attention in Large Language Models},publisher = {arXiv},year = {2025},copyright = {arXiv.org perpetual, non-exclusive license}}
2024
Comparison of machine learning algorithms for slope stability prediction using an automated machine learning approach
Kurnaz, Talas Fikret, Erden, Caner, Dağdeviren, Uğur and 2 more authors
Evaluation of slope failures, which cause significant loss of life and property comparable to natural disasters such as earthquakes, floods and hurricanes, is one of the main areas of interest in geotechnical engineering. Although traditional and modern methods have been developed for slope stability analysis, the importance given to computer-based approaches has increased in recent years. In this study, we investigated the effectiveness of advanced machine learning (ML) algorithms in classification-based slope stability assessment. In this context, examining the impact of input parameters, such as slope height, slope angle, unit volume weight, internal friction angle of the soil, cohesion of the slope material, and water pressure ratio on the slope stability potential and a comparative analysis was performed on the ML algorithms. On the other hand, automated machine learning (AutoML) approaches were used to make rapid and comprehensive comparisons of ensemble, boosting, bagging and traditional ML algorithms to simplifying application development. The weighted ensemble learning algorithm provided by the AutoGluon package outperformed other algorithms in both testing and training accuracy, achieving an impressive rate of 97.5%, according to the obtained results. All algorithms included in the study performed well, with NeuralNetTorch and CatBoost securing the second position with an accuracy rate of 95%. Furthermore, when evaluating the importance of features using the best algorithm, it can be seen that unit volume weight and internal friction angle of soil had the highest weights, 0.225 and 0.200, respectively, indicating their importance in classifying slope stability. In conclusion, our research significantly advanced slope stability assessment, achieving one of the highest accuracy of 0.975 among various classification-based studies.
@article{kurnaz_comparison_2024,title={Comparison of machine learning algorithms for slope stability prediction using an automated machine learning approach},copyright={All rights reserved},issn={0921-030X, 1573-0840},url={https://link.springer.com/10.1007/s11069-024-06490-8},doi={https://doi.org/10.1007/s11069-024-06490-8},language={en},urldate={2024-03-08},journal={Natural Hazards},author={Kurnaz, Talas Fikret and Erden, Caner and Dağdeviren, Uğur and Demir, Alparslan Serhat and Kökçam, Abdullah Hulusi},month=mar,year={2024},}
Welding strength prediction in nuts to sheets joints: machine learning and ANFIS comparative analysis
Albak, Bircan, Erden, Caner, Ünal, Osman and 2 more authors
International Journal on Interactive Design and Manufacturing (IJIDeM) May 2024
This study uses machine learning algorithms and the Adaptive Neuro-Fuzzy Inference System (ANFIS) to predict welding strength in DD13 sheet metal joints with AISI 1010 nuts. The objective is to optimize industrial welding processes and improve quality control. The study investigates weld current, time, and hold time as critical input variables for joint integrity. The performance of different ML algorithms, including linear regression, random forest regression, ridge regression, Bayesian regression, K-Nearest Neighbors regression, decision tree regression, and ANFIS, are evaluated. Training and testing data consist of welding parameters and corresponding strength measurements. Performance metrics such as R2 score, mean absolute error (MAE), mean squared error (MSE), and root mean square error (RMSE) are used to assess the predictive capabilities. Random forest regression is the most efficient algorithm, with a high R2 score of 0.992 and minimal errors. ANFIS also exhibits comparable performance, highlighting its efficacy in this context. These findings can be useful for optimizing welding parameters in industrial settings, potentially leading to improved quality control and weld strength, particularly in automotive applications. Using ML and ANFIS, industries can make informed decisions to optimize welding processes and ensure joint integrity, ultimately meeting the rigorous demands of demanding applications.
@article{albak_welding_2024,title={Welding strength prediction in nuts to sheets joints: machine learning and {ANFIS} comparative analysis},issn={1955-2505},shorttitle={Welding strength prediction in nuts to sheets joints},url={https://doi.org/10.1007/s12008-024-01805-2},doi={https://doi.org/10.1007/s12008-024-01805-2},language={en},urldate={2024-05-02},journal={International Journal on Interactive Design and Manufacturing (IJIDeM)},author={Albak, Bircan and Erden, Caner and Ünal, Osman and Akkaş, Nuri and Özkan, Sinan Serdar},month=may,year={2024},}
Assessing the performance of state-of-the-art machine learning algorithms for predicting electro-erosion wear in cryogenic treated electrodes of mold steels
In manufacturing, predicting and reducing electro-erosion wear during the electric discharge machining (EDM) process is critical to minimize delays, financial losses and product defects. Achieving this requires developing and evaluating accurate machine learning models. In our study, we focus on cryogenically treated mold steel electrodes to investigate the potential of different machine learning algorithms to predict EDM wear. We considered five machine learning algorithms—artificial neural networks, ensemble learning, boosting algorithms, tree-based algorithms, and k-nearest neighbors—to evaluate their ability to predict wear patterns accurately. Each algorithm was trained and tested using actual experimental data from EDM processes. Our results show that the machine learning models demonstrated exceptional accuracy, accurately predicting EDM wear in training and testing datasets with almost 99% accuracy. In addition, we identified the most influential characteristics that affect wear patterns, including operating current, cryogenic process parameters, and electrode composition. Based on these findings, manufacturers can gain valuable insight into the factors that cause EDM wear and optimize their EDM processes accordingly to improve productivity, reduce wear-related costs, and increase production quality across multiple manufacturing industries. Furthermore, this research provides insights into the possibilities of implementing these models in real manufacturing contexts and motivates future research on this topic. Ultimately, integrating advanced computing techniques and prudent decision-making strategies will shape the future of manufacturing operations management and promote sustainable and profitable business growth.
@article{cetin_assessing_2024,title={Assessing the performance of state-of-the-art machine learning algorithms for predicting electro-erosion wear in cryogenic treated electrodes of mold steels},copyright={All rights reserved},url={https://doi.org/10.1016/j.aei.2024.102468},doi={https://doi.org/10.1016/j.aei.2024.102468},language={en},journal={Advanced Engineering Informatics},author={Cetin, Abdurrahman},year={2024},}
A comparative analysis of ensemble learning algorithms with hyperparameter optimization for soil liquefaction prediction
Demir, Alparslan Serhat, Kurnaz, Talas Fikret, Kökçam, Abdullah Hulusi and 2 more authors
Accurate prediction of soil liquefaction potential is crucial for evaluating the stability of structures in earthquake regions. This study focuses on predicting soil liquefaction using a dataset that included historical liquefaction cases from the 1999 Turkey and Taiwan earthquakes. The dataset was divided into three subsets: Dataset A (fine-grained), Dataset B (coarse-grained), and Dataset C (all samples). Through the analysis of these subsets, the study aims to assess the performance of machine learning algorithms in predicting soil liquefaction potential. This study applied ensemble machine learning algorithms, including extreme gradient boosting, adaptive boosting, extra trees, bagging classifiers, light gradient boosting machine, and random forest, to accurately classify the liquefaction potential of fine-grained and coarse-grained soils. A comparison between the genetic algorithm approach for hyperparameter optimization and traditional methods such as grid search and random search revealed that genetic algorithms outperformed both in terms of average test and train accuracy. Specifically, the light gradient boosting machine yielded the best predictions of soil liquefaction potential among the algorithms tested. The study demonstrated that Dataset B achieved the highest learning performance with accuracy of 0.92 on both the test and training sets. Furthermore, Dataset A showed a training accuracy of 0.88 and a test accuracy of 0.84, while Dataset C exhibited a training accuracy of 0.87 and a test accuracy of 0.87. Future studies could build on these findings by evaluating the performance of genetic algorithms on a wider range of machine learning algorithms and datasets, thus advancing our understanding of soil liquefaction prediction and its implications for geotechnical engineering.
@article{demir_comparative_2024,title={A comparative analysis of ensemble learning algorithms with hyperparameter optimization for soil liquefaction prediction},volume={83},issn={1866-6299},url={https://doi.org/10.1007/s12665-024-11600-7},doi={https://doi.org/10.1007/s12665-024-11600-7},language={en},number={9},urldate={2024-05-02},journal={Environmental Earth Sciences},author={Demir, Alparslan Serhat and Kurnaz, Talas Fikret and Kökçam, Abdullah Hulusi and Erden, Caner and Dağdeviren, Uğur},month=may,year={2024},pages={289},}
Advances in Intelligent Manufacturing and Service System Informatics: Proceedings of IMSS 2023
Covers latest research in technological advances in manufacturing engineering & service systems. Comprises select peer-reviewed proceedings of the conference IMSS 2023. Enriches understanding by including contributions from leading experts across the globe.
@book{sen2024advances,title={Advances in Intelligent Manufacturing and Service System Informatics: Proceedings of IMSS 2023},author={Şen, Zekâi and Uygun, Özer and Erden, Caner},year={2024},publisher={Springer},isbn={9789819960620},url={https://link.springer.com/book/10.1007/978-981-99-6062-0},language={en}}
Predicting Earthquake Ground Motion in the North-Western Part of Türkiye: A Comparative Study of Machine Learning Techniques
Lambon, Salamatu Bannib, Erden, Caner, and Utkucu, Murat
@article{Lambon_2024,title={Predicting Earthquake Ground Motion in the North-Western Part of Türkiye: A Comparative Study of Machine Learning Techniques},url={http://dx.doi.org/10.2139/ssrn.5027720},doi={10.2139/ssrn.5027720},publisher={Elsevier BV},author={Lambon, Salamatu Bannib and Erden, Caner and Utkucu, Murat},year={2024}}
Optimization of Soil Behavior Type Index for Evaluating Liquefaction Potential of Fine-Grained Soils in Adapazarı
Ozsagir, Mustafa, Erden, Caner, Bol, Ertan and 2 more authors
@article{Ozsagir_2024,title={Optimization of Soil Behavior Type Index for Evaluating Liquefaction Potential of Fine-Grained Soils in Adapazarı},url={http://dx.doi.org/10.21203/rs.3.rs-4329242/v1},doi={10.21203/rs.3.rs-4329242/v1},publisher={Springer Science and Business Media LLC},author={Ozsagir, Mustafa and Erden, Caner and Bol, Ertan and Özocak, Aşkın and Sert, Sedat},year={2024},month=may}
Meta-heuristic algorithms for integrating manufacturing and supply chain functions
Canpolat, Onur, Ibrahim Demir, Halil, and Erden, Caner
@article{Canpolat_2025,volume={192},issn={0360-8352},url={http://dx.doi.org/10.1016/j.cie.2024.110240},doi={10.1016/j.cie.2024.110240},journal={Computers & Industrial Engineering},publisher={Elsevier BV},author={Canpolat, Onur and Ibrahim Demir, Halil and Erden, Caner},year={2024},month=jun,pages={110240}}
Bibliometric analysis of artificial intelligence techniques for predicting soil liquefaction: insights and MCDM evaluation
Kökçam, Abdullah Hulusi, Erden, Caner, Demir, Alparslan Serhat and 1 more author
@article{K_k_am_2024,title={Bibliometric analysis of artificial intelligence techniques for predicting soil liquefaction: insights and MCDM evaluation},volume={120},issn={1573-0840},url={http://dx.doi.org/10.1007/s11069-024-06630-0},doi={10.1007/s11069-024-06630-0},number={12},journal={Natural Hazards},publisher={Springer Science and Business Media LLC},author={Kökçam, Abdullah Hulusi and Erden, Caner and Demir, Alparslan Serhat and Kurnaz, Talas Fikret},year={2024},month=may,pages={11153–11181}}
Comparison of machine learning algorithms for slope stability prediction using an automated machine learning approach
Kurnaz, Talas Fikret, Erden, Caner, Dağdeviren, Uğur and 2 more authors
@article{Kurnaz_2024,title={Comparison of machine learning algorithms for slope stability prediction using an automated machine learning approach},volume={120},issn={1573-0840},url={http://dx.doi.org/10.1007/s11069-024-06490-8},doi={10.1007/s11069-024-06490-8},number={8},journal={Natural Hazards},publisher={Springer Science and Business Media LLC},author={Kurnaz, Talas Fikret and Erden, Caner and Dağdeviren, Uğur and Demir, Alparslan Serhat and Kökçam, Abdullah Hulusi},year={2024},month=mar,pages={6991–7014}}
2023
Distribution Center Location Selection in Humanitarian Logistics Using Hybrid BWM-ARAS: A Case Study in Türkiye
Erden, Caner, Ateş, Çağdaş, and Esen, Sinan
Journal of Homeland Security and Emergency Management Jun 2023
This study investigates the criteria affecting the location of humanitarian logistics distribution centers in the Sakarya province of Turkey, an area prone to natural disasters. The study identifies potential distribution center locations and uses the BestWorst Method (BWM) to determine criteria such as population, distance to major highways and airports, public transportation availability, natural disaster risk, and suitable infrastructure. BWM is used to assign weights to each criterion and rank them based on their importance. The Additive Ratio Assessment (ARAS) method is then used to evaluate potential distribution center locations based on the established criteria. Disaster management experts and academicians provide their opinions through an online and face-to-face survey. Based on the results, Adapazarı is identified as the most suitable district for a humanitarian logistics distribution center. The study highlights the importance of considering multiple criteria when selecting distribution center locations and provides a framework for using multi-criteria decision-making methods in logistics planning. Disaster managers and policymakers can use the results to make informed decisions about the location of humanitarian logistics distribution centers.
@article{erden_distribution_2023,title={Distribution {Center} {Location} {Selection} in {Humanitarian} {Logistics} {Using} {Hybrid} {BWM}-{ARAS}: {A} {Case} {Study} in {Türkiye}},volume={0},issn={1547-7355},shorttitle={Distribution {Center} {Location} {Selection} in {Humanitarian} {Logistics} {Using} {Hybrid} {BWM} {ARAS}},doi={https://doi.org/10.1515/jhsem-2022-0052},language={en},number={0},urldate={2023-06-27},journal={Journal of Homeland Security and Emergency Management},author={Erden, Caner and Ateş, Çağdaş and Esen, Sinan},month=jun,year={2023}}
Integrated Process Planning, Scheduling, and Due-Date Assignment
Demir, Halil Ibrahim, Kökçam, Abdullah Hulusi, and Erden, Caner
Traditionally, the three most important manufacturing functions are process planning, scheduling, and due-date assignment, which are handled sequentially and separately.This book integrates these manufacturing processes and functions to increase global performance along with manufacturing and production cost savings. Integrated Process Planning, Scheduling, and Due-Date Assignment combines the most important manufacturing functions to use manufacturing resources better, reduce production costs, and eliminate bottlenecks with increased production efficiency. The book covers how the integration will help eliminate scheduling conflicts and how to adapt to irregular shop floor disturbances. It also explains how other elements, such as tardiness and earliness, are penalized and how prioritizing helps improve weight performance function. This book will draw the interest of professionals, students, and academicians in process planning, scheduling, and due-date assignment. It could also be supplemental material for manufacturing courses in industrial engineering and manufacturing engineering departments.
@book{demir2023integrated,title={Integrated Process Planning, Scheduling, and Due-Date Assignment},author={Demir, Halil Ibrahim and K{\"o}k{\c{c}}am, Abdullah Hulusi and Erden, Caner},year={2023},url={https://www.taylorfrancis.com/books/mono/10.1201/9781003215295/integrated-process-planning-scheduling-due-date-assignment-halil-ibrahim-demir-abdullah-hulusi-k%C3%B6k%C3%A7am-caner-erden},doi={https://doi.org/10.1201/9781003215295},publisher={CRC Press}}
Enhancing Machine Learning Model Performance with Hyper Parameter Optimization: A Comparative Study
Erden, Caner, Demir, Halil Ibrahim, and Kökçam, Abdullah Hulusi
One of the most critical issues in machine learning is the selection of appropriate hyper parameters for training models. Machine learning models may be able to reach the best training performance and may increase the ability to generalize using hyper parameter optimization (HPO) techniques. HPO is a popular topic that artificial intelligence studies have focused on recently and has attracted increasing interest. While the traditional methods developed for HPO include exhaustive search, grid search, random search, and Bayesian optimization; meta-heuristic algorithms are also employed as more advanced methods. Meta-heuristic algorithms search for the solution space where the solutions converge to the best combination to solve a specific problem. These algorithms test various scenarios and evaluate the results to select the best-performing combinations. In this study, classical methods, such as grid, random search and Bayesian optimization, and population-based algorithms, such as genetic algorithms and particle swarm optimization, are discussed in terms of the HPO. The use of related search algorithms is explained together with Python programming codes developed on packages such as Scikit-learn, Sklearn Genetic, and Optuna. The performance of the search algorithms is compared on a sample data set, and according to the results, the particle swarm optimization algorithm has outperformed the other algorithms.
@misc{erden_enhancing_2023,title={Enhancing {{Machine Learning Model Performance}} with {{Hyper Parameter Optimization}}: {{A Comparative Study}}},shorttitle={Enhancing {{Machine Learning Model Performance}} with {{Hyper Parameter Optimization}}},author={Erden, Caner and Demir, Halil Ibrahim and K{\"o}k{\c c}am, Abdullah Hulusi},year={2023},month=feb,number={arXiv:2302.11406},eprint={2302.11406},primaryclass={cs},publisher={{arXiv}},doi={https://doi.org/10.48550/arXiv.2302.11406},urldate={2023-02-23},keywords={Computer Science - Machine Learning}}
Genetic Algorithm-Based Hyperparameter Optimization of Deep Learning Models for PM2.5 Time-Series Prediction
Since air pollution negatively affects human health and causes serious diseases, accurate air pollution prediction is essential regarding environmental sustainability. Although conventional statistical and machine learning methods have been widely used for air quality forecasting, they have limitations in finding nonlinear relations and modeling sequential data. In recent years, deep learning methods such as long short-term memory, recurrent neural networks, and gated recurrent units have been successfully applied in several research areas, including time-series forecasting. In this study, deep learning algorithm is employed to predict the PM2.5 dataset, including air pollutants (NO, NO2, NOX, O3, PM2.5, SO, and SO2) and meteorological features (wind speed, wind direction, and air temperature) in Istanbul metropolitan. Deep learning algorithms have many hyperparameters such as learning and dropout rate, the number of hidden layers and units in each hidden layer, activation function, loss function, and optimizer that need to be optimized in order to achieve optimal training performance. Therefore, a genetic algorithm-based hyperparameter optimization approach is proposed to find the best parameter combination. The prediction results of deep learning algorithms are compared with default hyperparameters and random search algorithms to confirm the efficacy of the genetic algorithm approach. The proposed method outperforms the other configurations, with the MSE error reduced by 13.38% and 55.30% for testing performance, respectively. The experimental results revealed that genetic algorithms are promising and applicable in hyperparameter optimization of deep neural network models, especially in air quality forecasting.
@article{erden_genetic_2023,title={Genetic Algorithm-Based Hyperparameter Optimization of Deep Learning Models for {{PM2}}.5 Time-Series Prediction},author={Erden, C.},year={2023},month=mar,journal={Int. J. Environ. Sci. Technol.},volume={20},number={3},pages={2959--2982},issn={1735-2630},doi={https://doi.org/10.1007/s13762-023-04763-6},urldate={2023-03-07},langid={english},annotation={WOS:000920619500001},}
A Modified Integer and Categorical PSO Algorithm for Solving Integrated Process Planning, Dynamic Scheduling and Due Date Assignment Problem
Erden, Caner, Demir, Halil Ibrahim, and Canpolat, Onur
@article{erden_modified_2023,title={A Modified Integer and Categorical {{PSO}} Algorithm for Solving Integrated Process Planning, Dynamic Scheduling and Due Date Assignment Problem},author={Erden, Caner and Demir, Halil Ibrahim and Canpolat, Onur},year={2023},journal={Scientia Iranica},volume={30},number={2},pages={738--756},issn={2345-3605},doi={https://doi.org/10.24200/sci.2021.55250.4130},urldate={2023-04-20},langid={english},}
Predicting next Hour Fine Particulate Matter (PM2.5) in the Istanbul Metropolitan City Using Deep Learning Algorithms with Time Windowing Strategy
Poor air quality has various detrimental physical and mental effects on human health and quality of life. In particular, PM2.5 air pollution has been associated with cardiovascular and respiratory problems. Therefore, air quality management is an essential issue for densely populated cities to reduce or prevent the adverse effects of air pollution. Considering this, reliable models for predicting pollution levels for pollutants like PM2.5 are critical tools for decision-making. For this purpose, this study presents three kinds of deep learning (DL) algorithms (LSTM, RNN, and GRU) that utilize a time-windowing strategy to predict the hourly concentration of PM2.5 in the Istanbul metropolitan. The models were trained and tested using large data sets that envelope air quality parameters (PM2.5, SO2, NO, NO2, NOX, and O3) and meteorological factors (temperature, wind speed, relative humidity, and air pressure) for about five years. The experimental results demonstrate that the LSTM+LSTM model performs significantly better with an R2 of 0.98 and 0.97 at the significance level (p < 0.05) for training and test sets compared to other deep learning algorithms. In addition, data for one year from several stations located in nine different districts of Istanbul were used to evaluate the proposed model’s generalization ability. As a result, the proposed LSTM+LSTM model has a good generalization ability with an R2 accuracy rate of 0.90 (p < 0.05) and above for all stations and can be used for non-linear, non-stationary multidimensional time series data. Furthermore, the results were compared to other studies in the literature; it was found that the proposed LSTM+LSTM model performed better in predicting PM2.5 concentrations.
@article{eren_predicting_2023,title={Predicting next Hour Fine Particulate Matter ({{PM2}}.5) in the {{Istanbul Metropolitan City}} Using Deep Learning Algorithms with Time Windowing Strategy},author={Eren, Beytullah and Aksang{\"u}r, {\.I}pek and Erden, Caner},year={2023},month=mar,journal={Urban Climate},volume={48},pages={101418},issn={2212-0955},doi={https://doi.org/10.1016/j.uclim.2023.101418},keywords={Deep learning,Fine particulate matter (PM),Gated recurrent unit (GRU),Long-short term memory (LSTM),Recurrent neural network (RNN),Time windowing},}
Ant Colony Optimization Application in Bottleneck Station Scheduling
Kılıçaslan, Emre, Demir, Halil Ibrahim, Kökçam, Abdullah Hulusi and 2 more authors
Finding optimal solutions to production planning and scheduling problems is crucial for surviving in a competitive environment and meeting customer expectations over time. Planning can become complicated in sectors with many different products such as tire production. This study focuses on the bottleneck problem caused by a machine called a Quadruplex Extruder in a tire factory. With this machine, rubber is extruded and transformed into a tread material product, which is critically important in some essential tire features, such as low rolling resistance and brake distance. This study aims to minimize the set-up times in production by optimizing the manufacturing order of the products produced in a quadruplex extruder machine using the Ant Colony Algorithm (ACA), a well-known metaheuristic method to solve polynomial optimization problems. In addition, the second version of the Lin–Kernighan–Helsgaun (LKH-2) algorithm was adapted to this problem. Manually prepared, LKH-2 and ACA-produced schedules were compared in terms of global efficiency. As a result, it has been shown that ACA can provide fast and suitable solutions for decision makers in production planning.
@article{kilicaslan_ant_2023,title={Ant {{Colony}} Optimization Application in Bottleneck Station Scheduling},author={K{\i}l{\i}{\c c}aslan, Emre and Demir, Halil Ibrahim and K{\"o}k{\c c}am, Abdullah Hulusi and Phanden, Rakesh Kumar and Erden, Caner},year={2023},month=apr,journal={Advanced Engineering Informatics},volume={56},pages={101969},issn={1474-0346},doi={https://doi.org/10.1016/j.aei.2023.101969},urldate={2023-04-14},langid={english},keywords={Ant Colony Algorithm,Bottleneck Station Scheduling,Lin–Kernighan–Helsgaun Algorithm,Optimization,Production Planning,Tire Production},}
A Hyper Parameterized Artificial Neural Network Approach for Prediction of the Factor of Safety against Liquefaction
Kurnaz, Talas Fikret, Erden, Caner, Kökçam, Abdullah Hulusi and 2 more authors
@article{kurnaz_hyper_2023,title={A Hyper Parameterized Artificial Neural Network Approach for Prediction of the Factor of Safety against Liquefaction},author={Kurnaz, Talas Fikret and Erden, Caner and K{\"o}k{\c c}am, Abdullah Hulusi and Da{\u g}deviren, U{\u g}ur and Demir, Alparslan Serhat},year={2023},month=jun,journal={Engineering Geology},volume={319},pages={107109},issn={00137952},doi={https://doi.org/10.1016/j.enggeo.2023.107109},urldate={2023-04-07},langid={english},}
Machine Learning Experiment Management with MLFlow
Big data and machine learning are driving the Fourth Industrial Revolution. With the age of big data upon us, we risk drowning in a flood of digital data. Big data has now become a critical part of both the business world and daily life, as the synthesis and synergy of machine learning and big data...
@incollection{wang_machine_2023,title={Machine {{Learning Experiment Management}} with {{MLFlow}}},booktitle={Encyclopedia of {{Data Science}} and {{Machine Learning}}},author={Erden, Caner},editor={Wang, John},year={2023},pages={1215--1234},publisher={{IGI Global}},urldate={2022-07-16},copyright={Access limited to members},isbn={978-1-79989-220-5},langid={english}}
Derin Öğrenme ve ARIMA Yöntemlerinin Tahmin Performanslarının Kıyaslanması: Bir Borsa İstanbul Hissesi Örneği
Finansal zaman serisi verileri doğrusal olmayan, karmaşık, birçok ekonomik faktörden etkilenen ve tahmin edilmesi zor verilerdir. Çok boyutlu ilişkilerin tahminini gerektiren finansal zaman serisi modelleri için çeşitli istatistiksel yöntemler geliştirilmiştir. Ancak günümüzde büyük verilerin kaydedilmesi, analiz edilmesi ve anlamlı bilgiye dönüştürülmesi kolaylaştığından dolayı finansal tahmin geliştirmede makine öğrenmesi algoritmalarının kullanımı özellikle son yıllarda artmıştır. Bu çalışmada, Borsa İstanbul endeksinde metal ana pazarında işlem gören EREGL hissesine ait veriler zaman serisi yöntemleri ile analiz edilmiş ardından ARIMA ve derin öğrenme modelleri ile tahmin edilmiştir. Geliştirilen derin öğrenme yönteminde veri ön işleme aşamaları, özellik çıkarımı çalışmaları ve farklı zaman çerçeveleri ile tahmin performansı iyileştirilmiştir. Derin öğrenme algoritmalarının zaman serisi çalışmalarında kullanılabilmesi için zaman gecikmelerinden oluşan bir çerçeve kullanılmalıdır. Bu çalışmada, farklı zaman gecikmeleri için senaryolar denenmiş ve performans kıyaslaması ARIMA modelleri ve uzun-kısa vadeli bellek (LSTM), geçitli tekrarlayan ünite (GRU) ve özyineli sinir ağları (RNN) algoritmalarını kullanan derin öğrenme modelleri arasında gerçekleştirilmiştir. Deneysel çalıştırmalar ile RNN algoritmasının diğerlerine göre daha iyi tahmin performansına sahip olduğu ve ele alınan test veri seti üzerinde ortalama %93’lük doğrulukla tahmin ettiği ortaya konulmuştur.
@article{erden_derin_2023,title={Derin Öğrenme ve {ARIMA} {Yöntemlerinin} {Tahmin} {Performanslarının} {Kıyaslanması}: {Bir} {Borsa} İstanbul {Hissesi} Örneği},volume={30},issn={1302-0064},shorttitle={Derin Öğrenme ve {ARIMA} {Yöntemlerinin} {Tahmin} {Performanslarının} {Kıyaslanması}},url={https://dergipark.org.tr/tr/doi/10.18657/yonveek.1208807},doi={https://doi.org/10.18657/yonveek.1208807},language={tr},number={3},urldate={2023-09-14},journal={Yönetim ve Ekonomi Dergisi},author={Erden, Caner},month=sep,year={2023},pages={419--438}}
Bu kitap, Python programlama dili kullanarak veri analizi yapmak isteyen herkes için tasarlanmış bir kaynaktır. NumPy, Pandas ve Matplotlib kütüphanelerini kullanarak, temel veri analizi becerilerini kazanmanıza yardımcı olacak kapsamlı bir rehberdir.
@book{erden_veri_analizi_python_2023,title={Veri Analizi için Python Kütüphaneleri},author={Erden, Caner},year={2023},language={tr}}
Scheduling in Manufacturing
Demir, Halil İbrahim, Kökçam, Abdullah Hulusi, and Erden, Caner
@inbook{Demir_2023,title={Scheduling in Manufacturing},isbn={9781003215295},url={http://dx.doi.org/10.1201/9781003215295-3},doi={10.1201/9781003215295-3},booktitle={Integrated Process Planning, Scheduling, and Due-Date Assignment},publisher={CRC Press},author={Demir, Halil İbrahim and Kökçam, Abdullah Hulusi and Erden, Caner},year={2023},month=may,pages={17–34}}
Integrated Process Planning, Scheduling, Due-Date Assignment and Delivery Using Simulated Annealing and Evolutionary Strategies
Canpolat, Onur, Demir, Halil Ibrahim, and Erden, Caner
@inbook{Canpolat_2023,title={Integrated Process Planning, Scheduling, Due-Date Assignment and Delivery Using Simulated Annealing and Evolutionary Strategies},isbn={9789819960620},issn={2195-4364},url={http://dx.doi.org/10.1007/978-981-99-6062-0_36},doi={10.1007/978-981-99-6062-0_36},booktitle={Advances in Intelligent Manufacturing and Service System Informatics},publisher={Springer Nature Singapore},author={Canpolat, Onur and Demir, Halil Ibrahim and Erden, Caner},year={2023},month=oct,pages={388–401}}
Dynamic Integrated Process Planning, Scheduling, and Due-Date Assignment
Demir, Halil İbrahim, Kökçam, Abdullah Hulusi, and Erden, Caner
@inbook{Demir_2024,title={Dynamic Integrated Process Planning, Scheduling, and Due-Date Assignment},isbn={9781003215295},url={http://dx.doi.org/10.1201/9781003215295-10},doi={10.1201/9781003215295-10},booktitle={Integrated Process Planning, Scheduling, and Due-Date Assignment},publisher={CRC Press},author={Demir, Halil İbrahim and Kökçam, Abdullah Hulusi and Erden, Caner},year={2023},month=may,pages={99–109}}
Meta-Heuristic Algorithms for Integrating Manufacturing and Supply Chain Functions
Canpolat, Onur, Demir, Halil İbrahim, and Erden, Caner
@article{Canpolat_2024,title={Meta-Heuristic Algorithms for Integrating Manufacturing and Supply Chain Functions},url={http://dx.doi.org/10.2139/ssrn.4598690},doi={10.2139/ssrn.4598690},publisher={Elsevier BV},author={Canpolat, Onur and Demir, Halil İbrahim and Erden, Caner},year={2023}}
Integrated Process Planning, Scheduling, and Due-Date Assignment
Demir, Halil Ibrahim, Kökçam, Abdullah Hulusi, and Erden, Caner
@book{Demir_2025,title={Integrated Process Planning, Scheduling, and Due-Date Assignment},isbn={9781003215295},url={http://dx.doi.org/10.1201/9781003215295},doi={10.1201/9781003215295},publisher={CRC Press},author={Demir, Halil Ibrahim and Kökçam, Abdullah Hulusi and Erden, Caner},year={2023},month=may}
Ant Colony optimization application in bottleneck station scheduling
Kılıçaslan, Emre, Demir, Halil Ibrahim, Kökçam, Abdullah Hulusi and 2 more authors
@article{K_l_aslan_2023,title={Ant Colony optimization application in bottleneck station scheduling},volume={56},issn={1474-0346},url={http://dx.doi.org/10.1016/j.aei.2023.101969},doi={10.1016/j.aei.2023.101969},journal={Advanced Engineering Informatics},publisher={Elsevier BV},author={Kılıçaslan, Emre and Demir, Halil Ibrahim and Kökçam, Abdullah Hulusi and Phanden, Rakesh Kumar and Erden, Caner},year={2023},month=apr,pages={101969}}
Due-Date Assignment
Demir, Halil İbrahim, Kökçam, Abdullah Hulusi, and Erden, Caner
@inbook{Demir_2026,title={Due-Date Assignment},isbn={9781003215295},url={http://dx.doi.org/10.1201/9781003215295-4},doi={10.1201/9781003215295-4},booktitle={Integrated Process Planning, Scheduling, and Due-Date Assignment},publisher={CRC Press},author={Demir, Halil İbrahim and Kökçam, Abdullah Hulusi and Erden, Caner},year={2023},month=may,pages={35–44}}
Integrated Process Planning and Scheduling
Demir, Halil İbrahim, Kökçam, Abdullah Hulusi, and Erden, Caner
@inbook{Demir_2027,title={Integrated Process Planning and Scheduling},isbn={9781003215295},url={http://dx.doi.org/10.1201/9781003215295-5},doi={10.1201/9781003215295-5},booktitle={Integrated Process Planning, Scheduling, and Due-Date Assignment},publisher={CRC Press},author={Demir, Halil İbrahim and Kökçam, Abdullah Hulusi and Erden, Caner},year={2023},month=may,pages={45–54}}
Solution Techniques in Integrated Manufacturing Functions
Demir, Halil İbrahim, Kökçam, Abdullah Hulusi, and Erden, Caner
@inbook{Demir_2028,title={Solution Techniques in Integrated Manufacturing Functions},isbn={9781003215295},url={http://dx.doi.org/10.1201/9781003215295-11},doi={10.1201/9781003215295-11},booktitle={Integrated Process Planning, Scheduling, and Due-Date Assignment},publisher={CRC Press},author={Demir, Halil İbrahim and Kökçam, Abdullah Hulusi and Erden, Caner},year={2023},month=may,pages={111–124}}
Integrated Process Planning, Scheduling, and Due-Date Assignment
Demir, Halil İbrahim, Kökçam, Abdullah Hulusi, and Erden, Caner
@inbook{Demir_2029,title={Integrated Process Planning, Scheduling, and Due-Date Assignment},isbn={9781003215295},url={http://dx.doi.org/10.1201/9781003215295-9},doi={10.1201/9781003215295-9},booktitle={Integrated Process Planning, Scheduling, and Due-Date Assignment},publisher={CRC Press},author={Demir, Halil İbrahim and Kökçam, Abdullah Hulusi and Erden, Caner},year={2023},month=may,pages={87–98}}
Introduction to Integrated Process Planning, Scheduling, and Due-Date Assignment
Demir, Halil İbrahim, Kökçam, Abdullah Hulusi, and Erden, Caner
@inbook{Demir_2030,title={Introduction to Integrated Process Planning, Scheduling, and Due-Date Assignment},isbn={9781003215295},url={http://dx.doi.org/10.1201/9781003215295-1},doi={10.1201/9781003215295-1},booktitle={Integrated Process Planning, Scheduling, and Due-Date Assignment},publisher={CRC Press},author={Demir, Halil İbrahim and Kökçam, Abdullah Hulusi and Erden, Caner},year={2023},month=may,pages={1–6}}
Predicting next hour fine particulate matter (PM2.5) in the Istanbul Metropolitan City using deep learning algorithms with time windowing strategy
@article{Eren_2023,title={Predicting next hour fine particulate matter (PM2.5) in the Istanbul Metropolitan City using deep learning algorithms with time windowing strategy},volume={48},issn={2212-0955},url={http://dx.doi.org/10.1016/j.uclim.2023.101418},doi={10.1016/j.uclim.2023.101418},journal={Urban Climate},publisher={Elsevier BV},author={Eren, Beytullah and Aksangür, İpek and Erden, Caner},year={2023},month=mar,pages={101418}}
Modeling Electro-Erosion Wear of Cryogenic Treated Electrodes of Mold Steels Using Machine Learning Algorithms
Cetin, Abdurrahman, Atali, Gökhan, Erden, Caner and 1 more author
@inbook{Cetin_2023,title={Modeling Electro-Erosion Wear of Cryogenic Treated Electrodes of Mold Steels Using Machine Learning Algorithms},isbn={9789819960620},issn={2195-4364},url={http://dx.doi.org/10.1007/978-981-99-6062-0_3},doi={10.1007/978-981-99-6062-0_3},booktitle={Advances in Intelligent Manufacturing and Service System Informatics},publisher={Springer Nature Singapore},author={Cetin, Abdurrahman and Atali, Gökhan and Erden, Caner and Ozkan, Sinan Serdar},year={2023},month=oct,pages={15–26}}
Dynamic Integrated Process Planning and Scheduling
Demir, Halil İbrahim, Kökçam, Abdullah Hulusi, and Erden, Caner
@inbook{Demir_2031,title={Dynamic Integrated Process Planning and Scheduling},isbn={9781003215295},url={http://dx.doi.org/10.1201/9781003215295-6},doi={10.1201/9781003215295-6},booktitle={Integrated Process Planning, Scheduling, and Due-Date Assignment},publisher={CRC Press},author={Demir, Halil İbrahim and Kökçam, Abdullah Hulusi and Erden, Caner},year={2023},month=may,pages={55–65}}
Derin Öğrenme ve ARIMA Yöntemlerinin Tahmin Performanslarının Kıyaslanması: Bir Borsa İstanbul Hissesi Örneği
@article{Erden_2023,title={Derin Öğrenme ve ARIMA Yöntemlerinin Tahmin Performanslarının Kıyaslanması: Bir Borsa İstanbul Hissesi Örneği},volume={30},issn={1302-0064},url={http://dx.doi.org/10.18657/yonveek.1208807},doi={10.18657/yonveek.1208807},number={3},journal={Yönetim ve Ekonomi Dergisi},publisher={Yonetim ve Ekonomi},author={Erden, Caner},year={2023},month=sep,pages={419–438}}
Integrated Process Planning, Scheduling, Due-Date Assignment, and Delivery
Demir, Halil İbrahim, Kökçam, Abdullah Hulusi, and Erden, Caner
@inbook{Demir_2032,title={Integrated Process Planning, Scheduling, Due-Date Assignment, and Delivery},isbn={9781003215295},url={http://dx.doi.org/10.1201/9781003215295-12},doi={10.1201/9781003215295-12},booktitle={Integrated Process Planning, Scheduling, and Due-Date Assignment},publisher={CRC Press},author={Demir, Halil İbrahim and Kökçam, Abdullah Hulusi and Erden, Caner},year={2023},month=may,pages={125–133}}
Process Planning
Demir, Halil İbrahim, Kökçam, Abdullah Hulusi, and Erden, Caner
@inbook{Demir_2033,title={Process Planning},isbn={9781003215295},url={http://dx.doi.org/10.1201/9781003215295-2},doi={10.1201/9781003215295-2},booktitle={Integrated Process Planning, Scheduling, and Due-Date Assignment},publisher={CRC Press},author={Demir, Halil İbrahim and Kökçam, Abdullah Hulusi and Erden, Caner},year={2023},month=may,pages={7–16}}
Sentiment Analysis of Twitter Data of Hepsiburada E-commerce Site Customers with Natural Language Processing
Şimşek, İsmail, Kökçam, Abdullah Hulusi, Demir, Halil Ibrahim and 1 more author
@inbook{_im_ek_2023,title={Sentiment Analysis of Twitter Data of Hepsiburada E-commerce Site Customers with Natural Language Processing},isbn={9789819960620},issn={2195-4364},url={http://dx.doi.org/10.1007/978-981-99-6062-0_52},doi={10.1007/978-981-99-6062-0_52},booktitle={Advances in Intelligent Manufacturing and Service System Informatics},publisher={Springer Nature Singapore},author={Şimşek, İsmail and Kökçam, Abdullah Hulusi and Demir, Halil Ibrahim and Erden, Caner},year={2023},month=oct,pages={567–578}}
Genetic algorithm-based hyperparameter optimization of deep learning models for PM2.5 time-series prediction
Erden, C.
International Journal of Environmental Science and Technology Jan 2023
@article{Erden_2024,title={Genetic algorithm-based hyperparameter optimization of deep learning models for PM2.5 time-series prediction},volume={20},issn={1735-2630},url={http://dx.doi.org/10.1007/s13762-023-04763-6},doi={10.1007/s13762-023-04763-6},number={3},journal={International Journal of Environmental Science and Technology},publisher={Springer Science and Business Media LLC},author={Erden, C.},year={2023},month=jan,pages={2959–2982}}
Enhancing Machine Learning Model Performance with Hyper Parameter Optimization: A Comparative Study
Erden, Caner, Demir, Halil Ibrahim, and Kökçam, Abdullah Hulusi
doi = {10.48550/ARXIV.2302.11406},author = {Erden, Caner and Demir, Halil Ibrahim and Kökçam, Abdullah Hulusi},keywords = {Machine Learning (cs.LG), FOS: Computer and information sciences, FOS: Computer and information sciences},title = {Enhancing Machine Learning Model Performance with Hyper Parameter Optimization: A Comparative Study},publisher = {arXiv},year = {2023},copyright = {arXiv.org perpetual, non-exclusive license}}
A hyper parameterized artificial neural network approach for prediction of the factor of safety against liquefaction
Kurnaz, Talas Fikret, Erden, Caner, Kökçam, Abdullah Hulusi and 2 more authors
@article{Kurnaz_2023,title={A hyper parameterized artificial neural network approach for prediction of the factor of safety against liquefaction},volume={319},issn={0013-7952},url={http://dx.doi.org/10.1016/j.enggeo.2023.107109},doi={10.1016/j.enggeo.2023.107109},journal={Engineering Geology},publisher={Elsevier BV},author={Kurnaz, Talas Fikret and Erden, Caner and Kökçam, Abdullah Hulusi and Dağdeviren, Uğur and Demir, Alparslan Serhat},year={2023},month=jun,pages={107109}}
Scheduling with Due-Date Assignment
Demir, Halil İbrahim, Kökçam, Abdullah Hulusi, and Erden, Caner
@inbook{Demir_2034,title={Scheduling with Due-Date Assignment},isbn={9781003215295},url={http://dx.doi.org/10.1201/9781003215295-7},doi={10.1201/9781003215295-7},booktitle={Integrated Process Planning, Scheduling, and Due-Date Assignment},publisher={CRC Press},author={Demir, Halil İbrahim and Kökçam, Abdullah Hulusi and Erden, Caner},year={2023},month=may,pages={67–76}}
Distribution Center Location Selection in Humanitarian Logistics Using Hybrid BWM–ARAS: A Case Study in Türkiye
Erden, Caner, Ateş, Çağdaş, and Esen, Sinan
Journal of Homeland Security and Emergency Management Jun 2023
@article{Erden_2025,title={Distribution Center Location Selection in Humanitarian Logistics Using Hybrid BWM–ARAS: A Case Study in Türkiye},volume={21},issn={1547-7355},url={http://dx.doi.org/10.1515/jhsem-2022-0052},doi={10.1515/jhsem-2022-0052},number={3},journal={Journal of Homeland Security and Emergency Management},publisher={Walter de Gruyter GmbH},author={Erden, Caner and Ateş, Çağdaş and Esen, Sinan},year={2023},month=jun,pages={383–415}}
Machine Learning Experiment Management With MLFlow
@inbook{Erden_2026,title={Machine Learning Experiment Management With MLFlow},isbn={9781799892212},url={http://dx.doi.org/10.4018/978-1-7998-9220-5.ch071},doi={10.4018/978-1-7998-9220-5.ch071},booktitle={Encyclopedia of Data Science and Machine Learning},publisher={IGI Global Scientific Publishing},author={Erden, Caner},year={2023},month=jan,pages={1215–1234}}
Scheduling with Due-Window Assignment
Demir, Halil İbrahim, Kökçam, Abdullah Hulusi, and Erden, Caner
@inbook{Demir_2035,title={Scheduling with Due-Window Assignment},isbn={9781003215295},url={http://dx.doi.org/10.1201/9781003215295-8},doi={10.1201/9781003215295-8},booktitle={Integrated Process Planning, Scheduling, and Due-Date Assignment},publisher={CRC Press},author={Demir, Halil İbrahim and Kökçam, Abdullah Hulusi and Erden, Caner},year={2023},month=may,pages={77–85}}
2022
Evaluation of Data Preprocessing and Feature Selection Process for Prediction of Hourly PM10 Concentration Using Long Short-Term Memory Models
@article{aksangur_evaluation_2022,title={Evaluation of Data Preprocessing and Feature Selection Process for Prediction of Hourly {{PM10}} Concentration Using Long Short-Term Memory Models},author={Aksang{\"u}r, {\.I}pek and Eren, Beytullah and Erden, Caner},year={2022},month=oct,journal={Environmental Pollution},volume={311},pages={119973},issn={02697491},doi={https://doi.org/10.1016/j.envpol.2022.119973},urldate={2023-04-20},langid={english},}
The Transition to 5G Project In The Telecommunications Industry Using CPM and PERT Techniques
Arslan, Faruk, Demir, Halil Ibrahim, Erden, Caner and 1 more author
In 4th International Conference on Applied Engineering and Natural Sciences Nov 2022
@inproceedings{arslan_transition_2022,title={The {{Transition}} to {{5G Project In The Telecommunications Industry Using CPM}} and {{PERT Techniques}}},booktitle={4th {{International Conference}} on {{Applied Engineering}} and {{Natural Sciences}}},author={Arslan, Faruk and Demir, Halil Ibrahim and Erden, Caner and Erkayman, Burak},year={2022},month=nov,pages={429--435},address={{Konya, Turkey}}}
@incollection{erden_tasima_2022,title={{Ta\c{s}\i ma Modlar\i{} ve Ula\c{s}t\i rma Modelleri}},booktitle={{Uygulamal\i{} Uluslararas\i{} Ticaret}},author={Erden, Caner},editor={Esen, Sinan and Ate{\c s}, {\c C}a{\u g}da{\c s}},year={2022},pages={183--202},publisher={{Nobel Akademik Yay\i nc\i l\i k}},address={{Istanbul}},isbn={9786254270888},langid={turkish},keywords={}}
Yapay zeka ve makine öğrenmesi uygulamaları iş dünyası ndan akademiye, sağlı k alanı ndan eğitim sektörüne kadar hemen hemen tüm alanlardaki etkisini hı zlı bir şekilde artı rmaktadı r. Makine öğrenmesi kullanan organizasyonlar kullanmayan organizasyonlara göre daha başarı lı uygulamalar gerçekleştirdiğinden dolayı makine öğrenmesi uygulamaları geçmişe kı yasla daha kolay ve küçük işletmeler tarafı ndan bile uygulanabilir hale gelmiştir. Ancak verimli çalışan ve sürekliliği olan makine öğrenmesi uygulamaları üretmek zor ve karmaşı k bir süreçtir. Geçmişteki verilerden faydalanarak çalışan makine öğrenmesi uygulamaları nı n yeni veri girişine adapte edilmesi, öğrenmenin sürekliliğinin sağlanması gibi zorluklar aynı zamanda günümüz makine öğrenmesi uygulamaları nı öne çı karan özelliklerdendir. Bu anlamda, makine öğrenmesi alanı ndaki en önemli konulardan birisi de Hiper Parametre Optimizasyonu(HPO) konusudur. İyi gerçekleştirilmiş bir HPO ile gerçeğe daha uygun performansa sahip makine öğrenmesi çalışmaları geliştirilebilir. Bu bölümde ilk olarak HPO konusunda yapı lan çalışmalar özetlenerek HPO konusuna duyulan ihtiyaçtan bahsedilecektir. İkinci kı sı mda, HPO çözümü için geliştirilmiş yöntemler ve çözüm araçları anlatı lacaktı r. Son olarak, uygulamalarda sı klı kla kullanı lan ve güçlü bir HPO aracı olan Hyperopt aracı ndan bahsedilecek ve bir uygulama üzerinde aracı n kullanı mı gösterilecektir.
@incollection{kubat_makine_2022,title={{Makine \"O\u{g}renmesinde Hiper Parametre Optimizasyonu}},booktitle={{Yapay Zeka Dijital Sistemleri Ve Uygulamalar\i}},author={Erden, Caner},editor={Kubat, Cemalettin},year={2022},publisher={{Papatya}},urldate={2022-03-11},langid={turkish}}
Machine Learning Approaches for Prediction of Fine-Grained Soils Liquefaction
Ozsagir, Mustafa, Erden, Caner, Bol, Ertan and 2 more authors
@article{ozsagir_machine_2022,title={Machine Learning Approaches for Prediction of Fine-Grained Soils Liquefaction},author={Ozsagir, Mustafa and Erden, Caner and Bol, Ertan and Sert, Sedat and {\"O}zocak, A{\c s}k{\i}n},year={2022},month=dec,journal={Computers and Geotechnics},volume={152},pages={105014},issn={0266352X},doi={https://doi.org/10.1016/j.compgeo.2022.105014},urldate={2023-04-20},langid={english},}
Recent Advances in Intelligent Manufacturing and Service Systems: Select Proceedings of IMSS 2021
@book{sen_recent_2022,title={Recent {{Advances}} in {{Intelligent Manufacturing}} and {{Service Systems}}: {{Select Proceedings}} of {{IMSS}} 2021},shorttitle={Recent {{Advances}} in {{Intelligent Manufacturing}} and {{Service Systems}}},editor={Sen, Zekai and Oztemel, Ercan and Erden, Caner},year={2022},series={Lecture {{Notes}} in {{Mechanical Engineering}}},publisher={{Springer Singapore}},address={{Singapore}},urldate={2022-01-04},copyright={All rights reserved},isbn={9789811671630 9789811671647},langid={english}}
Economic Analysis and Determination of Profitability of an Automotive Company’s Building Construction Investment
Yuvalı, Enes, Demir, Halil Ibrahim, Kökçam, Abdullah and 1 more author
In 4th International Conference on Applied Engineering and Natural Sciences Nov 2022
@inproceedings{yuvali_economic_2022,title={Economic {{Analysis}} and {{Determination}} of {{Profitability}} of an {{Automotive Company}}'s {{Building Construction Investment}}},booktitle={4th {{International Conference}} on {{Applied Engineering}} and {{Natural Sciences}}},author={Yuval{\i}, Enes and Demir, Halil Ibrahim and K{\"o}k{\c c}am, Abdullah and Erden, Caner},year={2022},month=nov,pages={436--443},address={{Konya, Turkey}},langid={english}}
A Hyper-Parameterized Artificial Neural Network Approach for Prediction of the Factor of Safety Against Liquefaction
Kurnaz, Talas Fikret, Erden, Caner, Kökçam, Abdullah Hulusi and 2 more authors
@article{Kurnaz_2022,title={A Hyper-Parameterized Artificial Neural Network Approach for Prediction of the Factor of Safety Against Liquefaction},issn={1556-5068},url={http://dx.doi.org/10.2139/ssrn.4313540},doi={10.2139/ssrn.4313540},journal={SSRN Electronic Journal},publisher={Elsevier BV},author={Kurnaz, Talas Fikret and Erden, Caner and Kökçam, Abdullah Hulusi and Dağdeviren, Uğur and Demir, Alparslan Serhat},year={2022}}
Recent Advances in Intelligent Manufacturing and Service Systems: Select Proceedings of IMSS 2021
@book{2022,title={Recent Advances in Intelligent Manufacturing and Service Systems: Select Proceedings of IMSS 2021},isbn={9789811671647},issn={2195-4364},url={http://dx.doi.org/10.1007/978-981-16-7164-7},doi={10.1007/978-981-16-7164-7},journal={Lecture Notes in Mechanical Engineering},publisher={Springer Singapore},year={2022}}
Machine learning approaches for prediction of fine-grained soils liquefaction
Ozsagir, Mustafa, Erden, Caner, Bol, Ertan and 2 more authors
@article{Ozsagir_2022,title={Machine learning approaches for prediction of fine-grained soils liquefaction},volume={152},issn={0266-352X},url={http://dx.doi.org/10.1016/j.compgeo.2022.105014},doi={10.1016/j.compgeo.2022.105014},journal={Computers and Geotechnics},publisher={Elsevier BV},author={Ozsagir, Mustafa and Erden, Caner and Bol, Ertan and Sert, Sedat and Özocak, Aşkın},year={2022},month=dec,pages={105014}}
Evaluation of data preprocessing and feature selection process for prediction of hourly PM10 concentration using long short-term memory models
@article{Aksang_r_2022,title={Evaluation of data preprocessing and feature selection process for prediction of hourly PM10 concentration using long short-term memory models},volume={311},issn={0269-7491},url={http://dx.doi.org/10.1016/j.envpol.2022.119973},doi={10.1016/j.envpol.2022.119973},journal={Environmental Pollution},publisher={Elsevier BV},author={Aksangür, İpek and Eren, Beytullah and Erden, Caner},year={2022},month=oct,pages={119973}}
2021
A Multi-Criteria Decision Making and Goal Programming Model for Fire Station Location Selection
Alkan, Melek, Demir, Halil, Erden, Caner and 1 more author
In Proceedings of 11th International Symposium on Intelligent Manufacturing and Service Systems May 2021
@inproceedings{alkan_multi-criteria_2021,title={A {{Multi-Criteria Decision Making}} and {{Goal Programming Model}} for {{Fire Station Location Selection}}},booktitle={Proceedings of 11th {{International Symposium}} on {{Intelligent Manufacturing}} and {{Service Systems}}},author={Alkan, Melek and Demir, Halil and Erden, Caner and K{\"o}k{\c c}am, Abdullah},year={2021},month=may,address={{Sakarya University - Sakarya/Turkey}}}
Alternative Cleaning Company Selection Method With Fuzzy Topsis
Bayındır, Sümeyye, Demir, Halil, Erden, Caner and 1 more author
In Proceedings of 11th International Symposium on Intelligent Manufacturing and Service Systems May 2021
@inproceedings{bayindir_alternative_2021,title={Alternative {{Cleaning Company Selection Method With Fuzzy Topsis}}},booktitle={Proceedings of 11th {{International Symposium}} on {{Intelligent Manufacturing}} and {{Service Systems}}},author={Bay{\i}nd{\i}r, S{\"u}meyye and Demir, Halil and Erden, Caner and Canpolat, Onur},year={2021},month=may,address={{Sakarya University - Sakarya/Turkey}},langid={english}}
Hybrid Evolutionary Strategy and Simulated Annealing Algorithms for Integrated Process Planning, Scheduling and Due-Date Assignment Problem
Demir, Halil I\.ḃrahim, Phanden, Rakesh, Kökçam, Abdullah and 2 more authors
Academic Platform Journal of Engineering and Science Jan 2021
@article{demir_hybrid_2021,title={Hybrid {{Evolutionary Strategy}} and {{Simulated Annealing Algorithms}} for {{Integrated Process Planning}}, {{Scheduling}} and {{Due-Date Assignment Problem}}},author={Demir, Halil I\.\.brahim and Phanden, Rakesh and K{\"o}k{\c c}am, Abdullah and Erkayman, Burak and Erden, Caner},year={2021},month=jan,journal={Academic Platform Journal of Engineering and Science},volume={9},number={1},pages={86--91},issn={2147-4575},doi={https://doi.org/10.21541/apjes.764150},urldate={2023-04-20}}
A Tabu Search and Hybrid Evolutionary Strategies Algorithms for the Integrated Process Planning and Scheduling with Due-date Agreement
Demi̇R, Halil İbrahim, Erden, Caner, Kökçam, Abdullah and 1 more author
Journal of Intelligent Systems: Theory and Applications Mar 2021
@article{demir_tabu_2021,title={A {{Tabu Search}} and {{Hybrid Evolutionary Strategies Algorithms}} for the {{Integrated Process Planning}} and {{Scheduling}} with {{Due-date Agreement}}},author={Dem{\.i}R, Halil {\.I}brahim and Erden, Caner and K{\"o}k{\c c}am, Abdullah and G{\"o}ksu, Alper},year={2021},month=mar,journal={Journal of Intelligent Systems: Theory and Applications},volume={4},number={1},pages={24--36},issn={2651-3927},doi={https://doi.org/10.38016/jista.767154},urldate={2023-04-20}}
@book{erden_python_2021,title={{Python \.Ile Veri Madencili\u{g}i}},author={Erden, Caner},year={2021},publisher={{Kodlab}},address={{\.Istanbul}},isbn={9786257440172},langid={turkish}}
Green Supply Chain Management in the Context of Sustainability
For centuries, humanity has seen nature as an unlimited resource, despised it, they polluted it. Hence, that caused environmental problems. On the one hand, the rapidly increasing population phenomenon, the existence of natural resources that are running out has made it necessary to seek new solutions for humanity. The solution put forward in this framework is the understanding of sustainable development, which can be summarized as ensuring that natural resources are transferred to future generations without completely consuming them. The priority in sustainable development approach has been the sustainability of the natural environment. With the increasing awareness of the international community and states, production systems and processes are revised and transition to green practices that will minimize environmental damage has rapidly gained importance. A traditional supply chain is a one-way process that involves productionrelated activities from raw material procurement to delivery of the final product. Due to environmental requirements affecting production operations today, an increasing emphasis is placed on the development of environmental management strategies for the supply chain. In this study, green approaches, and green supply chain management (GSCM) are considered conceptually, and the green activities implemented and the obstacles in front of them are evaluated. A general perspective is put forward to ensure and maintain the green supply chain.
@article{koc_green_2021,title={Green {{Supply Chain Management}} in the {{Context}} of {{Sustainability}}},author={Ko{\c c}, Serkan and Erden, Caner},year={2021},journal={Journal of Business and Trade},volume={2},number={1},pages={1--11},langid={english},keywords={No DOI found}}
A modified integer and categorical PSO algorithm for solving integrated process planning, dynamic scheduling and due date assignment problem
Erden, Caner, Demir, Halil Ibrahim, and Canpolat, Onur
@article{Erden_2021,title={A modified integer and categorical PSO algorithm for solving integrated process planning, dynamic scheduling and due date assignment problem},volume={0},issn={2345-3605},url={http://dx.doi.org/10.24200/sci.2021.55250.4130},doi={10.24200/sci.2021.55250.4130},number={0},journal={Scientia Iranica},publisher={SCI AND TECH UNIVERSAL INC},author={Erden, Caner and Demir, Halil Ibrahim and Canpolat, Onur},year={2021},month=mar,pages={0–0}}
2020
Dynamic Integrated Process Planning, Scheduling and Due-Date Assignment Using Ant Colony Optimization
@article{demir_dynamic_2020,title={Dynamic Integrated Process Planning, Scheduling and Due-Date Assignment Using Ant Colony Optimization},author={Demir, Halil Ibrahim and Erden, Caner},year={2020},month=nov,journal={Computers \& Industrial Engineering},volume={149},pages={106799},issn={03608352},doi={https://doi.org/10.1016/j.cie.2020.106799},urldate={2023-04-20},langid={english}}
Dynamic integrated process planning, scheduling and due-date assignment using ant colony optimization
@article{Demir_2020,title={Dynamic integrated process planning, scheduling and due-date assignment using ant colony optimization},volume={149},issn={0360-8352},url={http://dx.doi.org/10.1016/j.cie.2020.106799},doi={10.1016/j.cie.2020.106799},journal={Computers & Industrial Engineering},publisher={Elsevier BV},author={Demir, Halil Ibrahim and Erden, Caner},year={2020},month=nov,pages={106799}}
2019
Concurrent Solution of WATC Scheduling with WPPW Due Date Assignment for Environmentally Weighted Customers, Jobs and Services Using SA and Its Hybrid
Demir, Halil Ibrahim, Erden, Caner, Kökçam, Abdullah Hulusi and 1 more author
@article{demir_concurrent_2019,title={Concurrent Solution of {{WATC}} Scheduling with {{WPPW}} Due Date Assignment for Environmentally Weighted Customers, Jobs and Services Using {{SA}} and Its Hybrid},author={Demir, Halil Ibrahim and Erden, Caner and K{\"o}k{\c c}am, Abdullah Hulusi and Uygun, Ozer},year={2019},month=jan,journal={PEN},volume={6},number={2},pages={192},issn={23034521},doi={https://doi.org/10.21533/pen.v6i2.186},urldate={2023-04-20}}
Solving Integrated Process Planning, Dynamic Scheduling, and Due Date Assignment Using Metaheuristic Algorithms
Erden, Caner, Demir, Halil Ibrahim, and Kökçam, Abdullah Hulusi
Because the alternative process plans have significant contributions to the production efficiency of a manufacturing system, researchers have studied the integration of manufacturing functions, which can be divided into two groups, namely, integrated process planning and scheduling (IPPS) and scheduling with due date assignment (SWDDA). Although IPPS and SWDDA are well-known and solved problems in the literature, there are limited works on integration of process planning, scheduling, and due date assignment (IPPSDDA). In this study, due date assignment function was added to IPPS in a dynamic manufacturing environment. And the studied problem was introduced as dynamic integrated process planning, scheduling, and due date assignment (DIPPSDDA). The objective function of DIPPSDDA is to minimize earliness and tardiness (E/T) and determine due dates for each job. Furthermore, four different pure metaheuristic algorithms which are genetic algorithm (GA), tabu algorithm (TA), simulated annealing (SA), and their hybrid (combination) algorithms GA/SA and GA/TA have been developed to facilitate and optimize DIPPSDDA on the 8 different sized shop floors. The performance comparisons of the algorithms for each shop floor have been given to show the efficiency and effectiveness of the algorithms used. In conclusion, computational results show that the proposed combination algorithms are competitive, give better results than pure metaheuristics, and can effectively generate good solutions for DIPPSDDA problems.
@article{erden_solving_2019,title={Solving {{Integrated Process Planning}}, {{Dynamic Scheduling}}, and {{Due Date Assignment Using Metaheuristic Algorithms}}},author={Erden, Caner and Demir, Halil Ibrahim and K{\"o}k{\c c}am, Abdullah Hulusi},year={2019},month=may,journal={Mathematical Problems in Engineering},volume={2019},pages={1--19},issn={1024-123X, 1563-5147},doi={https://doi.org/10.1155/2019/1572614},urldate={2023-01-18},langid={english}}
Solving Integrated Process Planning, Dynamic Scheduling, and Due Date Assignment Using Metaheuristic Algorithms
Erden, Caner, Demir, Halil Ibrahim, and Kökçam, Abdullah Hulusi
@article{Erden_2019,title={Solving Integrated Process Planning, Dynamic Scheduling, and Due Date Assignment Using Metaheuristic Algorithms},volume={2019},issn={1563-5147},url={http://dx.doi.org/10.1155/2019/1572614},doi={10.1155/2019/1572614},number={1},journal={Mathematical Problems in Engineering},publisher={Wiley},author={Erden, Caner and Demir, Halil Ibrahim and Kökçam, Abdullah Hulusi},editor={Palmeri, Alessandro},year={2019},month=jan}
Concurrent solution of WATC scheduling with WPPW due date assignment for environmentally weighted customers, jobs and services using SA and its hybrid
Demir, Halil Ibrahim, Erden, Caner, Kökçam, Abdullah Hulusi and 1 more author
Periodicals of Engineering and Natural Sciences (PEN) Jan 2019
@article{Demir_2019,title={Concurrent solution of WATC scheduling with WPPW due date assignment for environmentally weighted customers, jobs and services using SA and its hybrid},volume={6},issn={2303-4521},url={http://dx.doi.org/10.21533/pen.v6i2.186},doi={10.21533/pen.v6i2.186},number={2},journal={Periodicals of Engineering and Natural Sciences (PEN)},publisher={International University of Sarajevo},author={Demir, Halil Ibrahim and Erden, Caner and Kökçam, Abdullah Hulusi and Uygun, Ozer},year={2019},month=jan,pages={192}}
2018
Process Planning and Scheduling with WNOPPT Weighted Due-Date Assignment Where Earliness, Tardiness and Due-Dates Are Penalized
Demi̇r, Halil İbrahim, Canpolat, Onur, Erden, Caner and 1 more author
Journal of Intelligent Systems: Theory and Applications Sep 2018
@article{demir_process_2018,title={Process {{Planning}} and {{Scheduling}} with {{WNOPPT Weighted Due-Date Assignment}} Where {{Earliness}}, {{Tardiness}} and {{Due-Dates}} Are {{Penalized}}},author={Dem{\.i}r, Halil {\.I}brahim and Canpolat, Onur and Erden, Caner and {\c S}im{\c s}ir, Fuat},year={2018},month=sep,journal={Journal of Intelligent Systems: Theory and Applications},volume={1},number={1},pages={16--25},issn={2651-3927},doi={https://doi.org/10.38016/jista.433085},urldate={2023-04-20}}
Solving Process Planning, ATC Scheduling and Due-date Assignment Problems Concurrently Using Genetic Algorithm for Weighted Customers
Erden, Caner, Demir, Halil İbrahim, Göksu, Alper and 1 more author
Academic Platform-Journal of Engineering and Science Jan 2018
@article{erden_solving_2018,title={Solving {{Process Planning}}, {{ATC Scheduling}} and {{Due-date Assignment Problems Concurrently Using Genetic Algorithm}} for {{Weighted Customers}}},author={Erden, Caner and Demir, Halil {\.I}brahim and G{\"o}ksu, Alper and Uygun, {\"O}zer},year={2018},month=jan,journal={Academic Platform-Journal of Engineering and Science},issn={2147-4575},doi={https://doi.org/10.21541/apjes.318451},urldate={2023-04-20}}
2017
Integrating Process Planning, WATC Weighted Scheduling, and WPPW Weighted Due-Date Assignment Using Pure and Hybrid Metaheuristics for Weighted Jobs
Demir, Halil Ibrahim, Erden, Caner, Demiriz, Ayhan and 2 more authors
International Journal of Computational and Experimental Science and Engineering Jun 2017
@article{demir_integrating_2017,title={Integrating {{Process Planning}}, {{WATC Weighted Scheduling}}, and {{WPPW Weighted Due-Date Assignment Using Pure}} and {{Hybrid Metaheuristics}} for {{Weighted Jobs}}},author={Demir, Halil Ibrahim and Erden, Caner and Demiriz, Ayhan and Dugenci, Muharrem and Uygun, Ozer},year={2017},month=jun,journal={International Journal of Computational and Experimental Science and Engineering},volume={3},number={1},pages={11--20},issn={2149-9144},doi={https://doi.org/10.22399/ijcesen.323860},urldate={2023-01-26}}
Proses Planlama ve Ağı rlı klı Teslim Tarihi Atama Ile Birlikte Ağı rlı klı Çizelgeleme Probleminin Bazı Saf ve Melez Meta-Sezgisel Yöntemler Ile Çözümü
@article{demir_proses_2017,title={Proses Planlama ve A\u{g}\i rl\i kl\i{} Teslim Tarihi Atama Ile Birlikte A\u{g}\i rl\i kl\i{} \c{C}izelgeleme Probleminin Baz\i{} Saf ve Melez Meta-Sezgisel Y\"ontemler Ile \c{C}\"oz\"um\"u},author={Demir, Halil {\.I}brahim and Erden, Caner},year={2017},month=apr,journal={SA\"U Fen Bilimleri Enstit\"us\"u Dergisi},volume={21},number={2},pages={1--1},issn={1301-4048},doi={https://doi.org/10.16984/saufenbilder.297014},urldate={2023-04-20}}
2016
Accident Causation Factor Analysis of Traffic Accidents using Rough Relational Analysis:
Erden, Caner, and Çelebi, Numan
International Journal of Rough Sets and Data Analysis Jul 2016
The aim of this study is to show that the decision rules generated from Rough Sets Theory can be used for a new relational analysis. Rough Sets Theory generally works with small datasets more than big data. If we can deal with the decision rules and its complexities, it is still possible to analyze big data with Rough Set Theory. That is why in this study the authors offer a statistical method to overdue problems which belongs to big data. According statistical methods, a lots of decision rules generated from rough sets theory become useful information. Using a real case data on the traffic accident which were taken place in USA in 2013, this paper finds the relationships between accident causation factors which may be referred to decision makers in the field of traffic.
@article{erden_accident_2016,title={{Accident Causation Factor Analysis of Traffic Accidents using Rough Relational Analysis:}},shorttitle={{Accident Causation Factor Analysis of Traffic Accidents using Rough Relational Analysis}},author={Erden, Caner and {\c C}elebi, Numan},year={2016},month=jul,journal={International Journal of Rough Sets and Data Analysis},volume={3},number={3},pages={60--71},issn={2334-4598, 2334-4601},doi={https://doi.org/10.4018/IJRSDA.2016070105},urldate={2023-03-29},langid={ng}}
@article{erden_iplik_2016,title={\.Iplik {{S\"urt\"unme \"Ozelliklerinin \.Incelemesinde Kaba K\"umeler Yakla\c{s}\i m\i}}},author={Erden, Caner and Nazarov, Muhammed},year={2016},month=jun,journal={Erzincan University Journal of Science and Technology},volume={9},number={1},issn={2149-4584, 1307-9085},pages={75--86},doi={https://dergipark.org.tr/tr/pub/erzifbed/issue/24416/258786},urldate={2023-04-20}}
2015
Gri Sistem Teorisi Kullanı larak Türkiye’nin Büyüme Oranı Faktörlerinin Analizi