X
Battery Management Algorithm for Electric Vehicles
Battery Management Algorithm for Electric Vehicles
Battery Management Algorithm for Electric Vehicles

Battery Management Algorithm for Electric Vehicles

Product ID : 47449054


Galleon Product ID 47449054
Shipping Weight 1.08 lbs
I think this is wrong?
Model
Manufacturer Springer
Shipping Dimension 9.13 x 6.14 x 0.75 inches
I think this is wrong?
-
No price yet.
Price not yet available.

Pay with

About Battery Management Algorithm For Electric Vehicles

Product Description This book systematically introduces readers to the core algorithms of battery management system (BMS) for electric vehicles. These algorithms cover most of the technical bottlenecks encountered in BMS applications, including battery system modeling, state of charge (SOC) and state of health (SOH) estimation, state of power (SOP) estimation, remaining useful life (RUL) prediction, heating at low temperature, and optimization of charging. The book not only presents these algorithms, but also discusses their background, as well as related experimental and hardware developments. The concise figures and program codes provided make the calculation process easy to follow and apply, while the results obtained are presented in a comparative way, allowing readers to intuitively grasp the characteristics of different algorithms. Given its scope, the book is intended for researchers, senior undergraduate and graduate students, as well as engineers in the fields of electric vehicles and energy storage. From the Back Cover This book systematically introduces readers to the core algorithms of battery management system (BMS) for electric vehicles. These algorithms cover most of the technical bottlenecks encountered in BMS applications, including battery system modeling, state of charge (SOC) and state of health (SOH) estimation, state of power (SOP) estimation, remaining useful life (RUL) prediction, heating at low temperature, and optimization of charging. The book not only presents these algorithms, but also discusses their background, as well as related experimental and hardware developments. The concise figures and program codes provided make the calculation process easy to follow and apply, while the results obtained are presented in a comparative way, allowing readers to intuitively grasp the characteristics of different algorithms. Given its scope, the book is intended for researchers, senior undergraduate and graduate students, as well as engineers in the fields of electric vehicles and energy storage. About the Author Dr. Rui Xiong received the Ph.D. degrees from Beijing Institute of Technology, Beijing, China in 2014. He is currently a Professor in the Department of Vehicle Engineering, Beijing Institute of Technology, China. Since 2017, he has been an Adjunct Professor in the Faculty of Science, Engineering and Technology, Swinburne University of Technology, Melbourne, Vic., Australia. His research interests mainly include electrical/hybrid vehicles, energy storage, and battery management system. Dr. Xiong received the Highly Cited Researcher from Clarivate Analytics in 2018. He was a recipient of the First Prize of Natural Science Award of the Ministry of Education of China in 2018 and First Prize of the Chinese Automobile Industry Science and Technology Invention Award in 2018. He serves as an Associate Editor for the IEEE ACCESS and the SAE International Journal of Alternative Powertrains, and on the Editorial Board for the Applied Energy and eTransportation. He is the Conference Chair of the 2017 International Symposium on Electric Vehicles (ISEV 2017), in Stockholm, Sweden, the 2018 and 2019 International Conference on Electric and Intelligent Vehicles (ICEIV 2018 and ICEIV 2019), in Melbourne, Australia and Stavanger, Norway, respectively.