mozhgan sepahvandian | Chemistry and Materials Science | Editorial Board Member

Dr. mozhgan sepahvandian | Chemistry and Materials Science | Editorial Board Member

Lorestan University | Iran

Dr. Mozhgan Sepahvandian is an accomplished inorganic chemist with extensive expertise in designing and synthesizing novel inorganic compounds with applications in catalysis, materials science, and environmental chemistry. She earned her Ph.D. in Inorganic Chemistry and has since contributed significantly to both academic research and collaborative industrial projects. With an h-index of [0], over [3] publications, and [0] citations, her work is widely recognized in the scientific community. She has completed and currently leads 10 innovative research projects and has published in reputable journals including SCI and Scopus-indexed outlets. Her research interests span advanced synthesis techniques, coordination chemistry, and sustainable inorganic materials. Dr. Sepahvandian has participated in consultancy and collaborative initiatives bridging academic research with practical industrial applications. Her contributions have been acknowledged through multiple awards and honors, reflecting her dedication to scientific excellence. Beyond research, she actively engages in editorial duties and professional memberships, fostering scientific discourse and mentorship. Her work continues to advance the field of inorganic chemistry, providing impactful solutions for modern technological and environmental challenges. Dr. Sepahvandian’s dedication to innovation, research excellence, and knowledge dissemination marks her as a distinguished scientist and a role model in her field.

Profile : Scopus

Featured Publications

Sepahvandian, M., Coauthor, A., & Coauthor, B. (2025). Exploring limonene adsorption on magnesium and selenium doped AlP nanosheets: A DFT study. Computational Condensed Matter.

Jingjing Jiang | Robotics and Automation | Best Researcher Award

Dr. Jingjing Jiang | Robotics and Automation | Best Researcher Award

Loughborough University | United Kingdom

Dr Jingjing Jiang is a distinguished researcher in intelligent mobility and autonomous systems, currently a Senior Lecturer in Intelligent Mobility and Autonomous Vehicles at the Department of Aeronautical and Automotive Engineering, Loughborough University. She holds a BE in Electronic and Electrical Engineering an MSc in Control Engineering , and a PhD in Control Engineering (Imperial College London,  thesis: Shared Control for Systems with Constraints). After her doctoral work she served as a Research Associate in the Department of Electrical and Electronic Engineering at Imperial College London before joining Loughborough University as Lecturer in 2018 and being promoted to Senior Lecturer. Her research interest spans trustworthy control design and rigorous closed-loop performance analysis for intelligent systems and autonomous vehicles, combining classical control theory with modern data-driven models and algorithms, and emphasising both trial-based validation and top-down safety and reliability guarantees. Her work has been recognised for bridging fundamental research and real-world application in mobility systems. She continues to drive innovation in autonomous mobility and system safety, contributing to the future of reliable intelligent transport.

Profiles : Google Scholar | Orcid

Featured Publications

Cao, S., Sun, L., Jiang, J., & Zuo, Z. (2021). Reinforcement learning-based fixed-time trajectory tracking control for uncertain robotic manipulators with input saturation. IEEE Transactions on Neural Networks and Learning Systems, 34(8), 4584–4595.

Jiang, J., & Astolfi, A. (2018). Lateral control of an autonomous vehicle. IEEE Transactions on Intelligent Vehicles, 3(2), 228–237.

Fu, H., Jiang, J., Hu, S., Rao, J., & Theodossiades, S. (2023). A multi-stable ultra-low frequency energy harvester using a nonlinear pendulum and piezoelectric transduction for self-powered sensing. Mechanical Systems and Signal Processing, 189, 110034.

Jiang, J., & Astolfi, A. (2020). Stabilization of a class of underactuated nonlinear systems via underactuated back-stepping. IEEE Transactions on Automatic Control, 66(11), 5429–5435.

Hu, J., Lin, Y., Li, J., Hou, Z., Chu, L., Zhao, D., Zhou, Q., Jiang, J., & Zhang, Y. (2024). Performance analysis of AI-based energy management in electric vehicles: A case study on classic reinforcement learning. Energy Conversion and Management, 300, 117964.