Corina Birleanu | Engineering and Technology | Research Excellence Award

Prof. Corina Birleanu | Engineering and Technology | Research Excellence Award 

Prof. Corina Birleanu | Engineering and Technology | Full Professor at Technical University of Cluj-Napoca | Hypothesis Achievement Award

Prof. Corina Birleanu is a distinguished University Professor and PhD Supervisor in Mechanical Engineering at the Technical University of Cluj-Napoca (UTCN), Romania, with an academic and professional career spanning more than three decades in teaching, research, and institutional leadership. Prof. Corina Birleanu earned her Mechanical Engineering degree in Machine Building Technology from the Polytechnic Institute of Cluj-Napoca in 1986 and completed her Doctor of Science between 1992 and 1998 at UTCN, specializing in advanced tribological research focused on the theoretical and experimental behavior of alumina-based ceramic tribosystems under contact pressure. Since joining UTCN as a teaching staff member in 1992, Prof. Corina Birleanu has progressed through all academic ranks, serving as Assistant Professor, Senior Lecturer, Associate Professor, and Professor, and has held numerous senior leadership roles including Chancellor of the University Senate, Vice Dean for Internationalization, Director of the Department of Mechanical Systems Engineering, Dean of the Faculty of Industrial Engineering, Robotics and Production Management, and currently Head of the Tribology Laboratory and coordinator of the Machine Elements and Tribology research group.

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Featured Publications

Tribological Performance of SAE 10W-40 Engine Oil Enhanced with Thermally Treated TiO₂ Nanoparticles
– Lubricants, 2025 
Leveraging Centralized Procurement for Digital Innovation in Higher Education: Institutional Capacity and Policy Gaps in Romania
– Administrative Sciences, 2025 
Basalt vs. Glass Fiber-Reinforced Polymers: A Statistical Comparison of Tribological Performance Under Dry Sliding Conditions
– Journal of Composites Science, 2025 
Tribomechanical Analysis and Performance Optimization of Sustainable Basalt Fiber Polymer Composites for Engineering Applications
– Technologies, 2025 
Comparative Study on Consumers’ Behavior Regarding Water Consumption Pattern
– Water (Switzerland), 2025 
Impact of CuSn10 Powder on Mechanical Properties and Tribological Performance of Novel Basalt Fiber-Reinforced Hybrid Composites
– Polymers, 2025 
The Effect of Fiber Weight Fraction on Tribological Behavior for Glass Fiber Reinforced Polymer
– Polymers, 2025 
Enhanced Tribological and Mechanical Properties of Copper-Modified Basalt-Reinforced Epoxy Composites
– Polymers, 2025
An Aluminum U-Shaped Electro-Thermally Actuated Microgripper: Simulation and Fabrication
– Conference Paper, 2025 

Ayse Tugba Yapici | Engineering and Technology | Best Research Article Award

Ms. Ayse Tugba Yapici | Engineering and Technology | Best Research Article Award

Ms. Ayse Tugba Yapici | Engineering and Technology | Best Research Article Award | Doctoral Researcher | Kocaeli University | Turkey 

Ms. Ayse Tugba Yapici is an emerging scholar in electrical engineering whose research bridges intelligent energy systems, electric vehicles, and artificial intelligence–driven prediction technologies, reflecting her strong academic preparation and expanding scientific footprint. She earned her PhD in Electrical Engineering from Kocaeli University, where her doctoral studies centered on deep learning approaches for forecasting electric vehicle demand, charging behaviors, and integrated grid impacts. Prior to this, she completed her MSc in Electrical Engineering at Kocaeli University and her BSc in Electrical and Electronics Engineering at Bulent Ecevit University, progressively building a foundation in power electronics, system modeling, and smart energy infrastructures. Professionally, Ms. Ayse Tugba Yapici has gained significant experience as a doctoral researcher contributing to multiple academic studies involving EV charging station optimization, boosting converter analyses, AI-based prediction models, and data-driven approaches for regional transportation planning. Her research interests span electric vehicle technologies, charging station planning, induction heating systems, renewable energy integration, IoT-based intelligent mobility frameworks, and machine learning algorithms including LSTM, GRU, and MLR for performance forecasting. She possesses strong research skills in deep learning model development, Python-based simulation, DigSilent-based power system design, MATLAB/Simulink modeling, geographical data mapping, algorithm optimization, and statistical evaluation metrics such as R², MSE, MAE, and DTW. Her body of work includes multiple SCI and Scopus-indexed publications addressing EV growth prediction, secure IoT frameworks for autonomous taxis, and comparative analyses of deep learning methods for charging time estimation. Ms. Ayse Tugba Yapici has been recognized within academic circles for her contributions to advancing sustainable mobility solutions and has received commendations for her research productivity and multidisciplinary collaborations within Türkiye. Her work continues to support improved policy development, smarter grid integration, and future-ready electric mobility infrastructures. She remains actively involved in scholarly dissemination through conference participation, collaborative studies with engineering experts, and mentorship of junior researchers. Through her growing publication record, analytical expertise, and commitment to advancing intelligent transportation systems, Ms. Ayse Tugba Yapici demonstrates strong potential for continued impact in electrical engineering research, contributing to the broader goals of sustainable energy development, smart city transitions, and technology-driven societal advancement.

Profile: Scopus | ORCID

Featured Publications

  1. Yapici, A. T., Abut, N., & Erfidan, T. (2025). Comparing the effectiveness of deep learning approaches for charging time prediction in electric vehicles: Kocaeli example. Energies. Year: 2025

  2. Yapici, A. T., & Abut, N. (2025). Geleceğe yönelik elektrikli araç ve şarj istasyonu sayılarının LSTM ve GRU derin öğrenme yöntemleri kullanılarak tahmin edilmesi: Kocaeli ili örneği. Politeknik Dergisi. Year: 2025

  3. Yapici, A. T., Abut, N., & Yildirim, A. (2025). Future estimation of electric vehicles and charging stations: Analysis of Sakarya Province with LSTM, GRU and multiple linear regression approaches. Applied Sciences. Year: 2025

  4. Yapici, A. T., & Abut, N. (2025). An intelligent and secure IoT-based framework for predicting charging and travel duration in autonomous electric taxi systems. Applied Sciences. Year: 2025

  5. Yapici, A. T., & Abut, N. (2024). Elektrikli araç devresinde kullanılan boost dönüştürücünün analizine farklı yaklaşımlar. Black Sea Journal of Engineering and Science. Year: 2024

  6. Yapici, A. T., & Abut, N. (2024). Elektrikli araç şarj istasyonu konum tasarımında, DigSilent yazılımı kullanılarak Kocaeli Üniversitesi Umuttepe Kampüsü için örnek uygulama. Black Sea Journal of Engineering and Science. Year: 2024

  7. Yapici, A. T. (2024). Estimation of future number of electric vehicles and charging stations: Analysis of Sakarya Province with LSTM, GRU and MLR approaches. Applied Sciences. Year: 2024