Smart Safety Management of Energy Storage Batteries addresses battery management in new power systems which is an important component of the new generation of information technology and power systems. This book covers the application of this new type of power storage as well as power system identification modelling, intelligent energy storage battery status evaluation, and key technologies in intelligent management monitoring. Written for researchers, engineers, and students studying related areas, this book supports research in control science and control, automation, electrical engineering,…mehr
Smart Safety Management of Energy Storage Batteries addresses battery management in new power systems which is an important component of the new generation of information technology and power systems. This book covers the application of this new type of power storage as well as power system identification modelling, intelligent energy storage battery status evaluation, and key technologies in intelligent management monitoring. Written for researchers, engineers, and students studying related areas, this book supports research in control science and control, automation, electrical engineering, and serves as a technical reference for the application of new electric energy storage battery science and technologyHinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Shunli Wang is a professor at the Southwest University of Science and Technology, China. He is an authoritative expert in the field of new energy research. He is the head of DTlab, modeling, and state estimation strategy research for lithium-ion batteries. He has undertaken more than 40 projects and 30 patents, published more than 100 research papers as well as won 20 awards such as the Young Scholar, and Science & Technology Progress Awards.
Inhaltsangabe
1. Introduction 2. Power Storage Battery Testing 3. Smart Energy Modeling Analysis 4. Intelligent Core Algorithm for Predicting the State of Energy Storage Batteries 5. SOC Estimation of Energy Storage Battery Based on LSTM Neural Network 6. Data-driven SOH Estimation for Energy Storage Battery Clusters 7. Battery Peak Power Eestimation Based on Long and Short Term Memory Networks 8. Design and Optimization of Energy State Assessment Algorithms for Energy Storage Batteries 9. Improved Firefly Optimized Method for Lithium-ion Batteries of the Co-Estimation of SOC and SOH 10. Joint Estimation of SOC and SOP for Lithium-ion Battery Based on H∞ Filtering 11. Battery RUL Prediction Based on Multicore Correlation Vector Machine 12. Intelligent Balancing Management of New Power Storage Batteries
1. Introduction 2. Power Storage Battery Testing 3. Smart Energy Modeling Analysis 4. Intelligent Core Algorithm for Predicting the State of Energy Storage Batteries 5. SOC Estimation of Energy Storage Battery Based on LSTM Neural Network 6. Data-driven SOH Estimation for Energy Storage Battery Clusters 7. Battery Peak Power Eestimation Based on Long and Short Term Memory Networks 8. Design and Optimization of Energy State Assessment Algorithms for Energy Storage Batteries 9. Improved Firefly Optimized Method for Lithium-ion Batteries of the Co-Estimation of SOC and SOH 10. Joint Estimation of SOC and SOP for Lithium-ion Battery Based on H∞ Filtering 11. Battery RUL Prediction Based on Multicore Correlation Vector Machine 12. Intelligent Balancing Management of New Power Storage Batteries
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