Neural Network-Based State-of-Charge and State-of-Health Estimation

Neural Network-Based State-of-Charge and State-of-Health Estimation

EnglishHardback
Huang Qi
Cambridge Scholars Publishing
EAN: 9781527552173
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Detailed information

To deal with environmental deterioration and energy crises, developing clean and sustainable energy resources has become the strategic goal of the majority of countries in the global community. Lithium-ion batteries are the modes of power and energy storage in the new energy industry, and are also the main power source of new energy vehicles. State-of-charge (SOC) and state-of-health (SOH) are important indicators to measure whether a battery management system (BMS) is safe and effective. Therefore, this book focuses on the co-estimation strategies of SOC and SOH for power lithium-ion batteries. The book describes the key technologies of lithium-ion batteries in SOC and SOH monitoring and proposes a collaborative optimization estimation strategy based on neural networks (NN), which provide technical references for the design and application of a lithium-ion battery power management system. The theoretical methods in this book will be of interest to scholars and engineers engaged in the field of battery management system research.
EAN 9781527552173
ISBN 1527552179
Binding Hardback
Publisher Cambridge Scholars Publishing
Publication date December 1, 2023
Pages 164
Language English
Dimensions 212 x 148
Country United Kingdom
Authors Huang Qi; Wang , Shunli; Wang, Yujie