Biography
Laid Degaa is an experienced Teacher/Researcher at ESTACA, specializing in Electronic Engineering, Electrical Engineering, and Automotive Systems Engineering. With a Ph.D. in Electrical Engineering and another in Electronics, Laid is actively involved in research projects focusing on energy storage and battery technologies. His work encompasses advanced battery chemistries, novel materials, and energy management systems, with a goal to enhance energy density, performance, and reliability. In addition to his academic role, Laid brings valuable industry experience from his work at Nidec, where he contributes to industrial projects, applying his expertise in practical settings.
Moreover, Laid serves as a reviewer for international conferences and journals, contributing to the advancement of scientific knowledge. He has published approximately 30 scientific papers, further demonstrating his expertise and dedication to the field of engineering and energy storage.
Contribution Titles
Guest Editor
Work Details
Doctor
Université Paris-Saclay
France
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Which articles are now trending?
Research Articles
- A Machine Learning-based Method for COVID-19 and Pneumonia Detection
- Challenge and Readiness to Implemented Geothermal Energy in Indonesia
- Enhancing Material Property Predictions through Optimized KNN Imputation and Deep Neural Network Modeling
- Abrasive Wear in Some High Fe-Cr-C Alloy in Cement Powder
- Gaussian-Transform for the Dirac Wave Function and its Application to the Multicenter Molecular Integral Over Dirac Wave Functions for Solving the Molecular Matrix Dirac Equation
- Enhancing Missing Values Imputation through Transformer-Based Predictive Modeling
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