Prof. Dr.Puneet Kaur | Automotive Electronics | Research Excellence Award

Prof. Dr.Puneet Kaur | Automotive Electronics | Research Excellence Award

Professor | UIET,Panjab University,Chandigarh | India

Prof. Dr. Puneet Kaur is a distinguished academic in electrical and electronics engineering with extensive experience in teaching, research, and consultancy across power systems, embedded systems, and electric mobility. Her professional journey reflects progressive academic roles and strong industry collaboration, contributing to innovations such as vehicle management systems, IoT-based automotive solutions, and battery monitoring for electric vehicles. Her research interests span power electronics, smart systems, AI-driven applications, and energy optimization, supported by strong skills in data acquisition, control systems, and machine learning integration. She has received recognition for technical leadership, project development, and research contributions.She has achieved 197 Citations, 26 Documents 8 h-index.

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Featured Publications

State of art of smart vehicle management system based on PIC micro controller and accelerometer

– Journal of Electrical Engineering, 2016

AVR Microcontroller-based automated technique for analysis of DC motors

– International Journal of Electronics, 2014

Design and Development of a Multi-Utility Device for data acquisition, monitoring and Control

– NJETE, 2010

Selective harmonic elimination PWM technique implementation for a multilevel converter

– International Journal of Engineering Research, 2015

Development of scalable hardware abstraction framework for DC motor control applications

– International Journal of Electrical and Electronics Engineering Research, 2011

Jiayin Tang | Automotive Artificial Intelligence | Excellence in Research Award

Dr. Jiayin Tang | Automotive Artificial Intelligence  |  Excellence in Research Award

Associate professor  |  Southwest Jiaotong university  |  China

Prof. Jiayin Tang is a distinguished academic and researcher whose work bridges the fields of manufacturing, reliability engineering, and intelligent systems, with a strong focus on mechanical, electrical, and automation technologies. His scholarly pursuits emphasize reliability assessment, degradation modeling, fault diagnosis, and intelligent prediction within industrial systems, contributing to both theoretical innovation and practical applications in smart manufacturing and system health management. His research encompasses areas such as accelerated life testing, reliability inference under multiple stress factors, and fault detection using deep learning and advanced signal processing. Prof. Tang’s notable publications in leading international journals including IEEE Transactions on Instrumentation and Measurement, Quality and Reliability Engineering International, PLOS ONE, and IEEE Sensors Journal demonstrate his mastery of reliability modeling and intelligent diagnostic algorithms. He has developed advanced methodologies such as Wiener process-based models, complex attention transformers, and graph attention networks to enhance predictive maintenance and system dependability in modern industrial environments. With expertise in automation, transportation systems, and electronic reliability, he continues to contribute significantly to the advancement of smart industrial solutions and sustainable engineering practices. Prof. Tang’s research skills include data-driven modeling, machine learning, statistical analysis, and sensor-based fault detection, reflecting his interdisciplinary strength and innovative vision. His dedication to academic excellence and impactful research has earned him recognition within the international reliability and automation research communities. He has acheived 250 Citations, 39 Documents, 8 h-index.

Profiles:  ORCID Scopus

Featured Publication

  1. Gan, W., & Tang, J. (2024). Multi-Performance Degradation System Reliability Analysis with Varying Failure Threshold Based on Copulas. Symmetry, 16(1), 57.