Advances in Battery Manufacturing and Operating Status Analysis Filtering and Artificial Intelligence Strategy

Sale price  $148.45 Regular price  $164.95

Reliable shipping

Flexible returns

Advances in Battery Manufacturing and Operating Status Analysis

Filtering and Artificial Intelligence Strategy

Ziyun Wang | Yan Wang | Zhicheng Ji

Science / Energy

Advanced filtering and AI algorithms for battery system analysis

Advances in Battery Manufacturing and Operating Status Analysis details zonotopic and particle filtering methods for robust real-time estimation of critical battery parameters, alongside hybrid models combining filters with long short-term memory networks for remaining useful life prediction. Coverage of genetic algorithms and Q-learning addresses intelligent battery grouping and manufacturing capacity forecasting. Technical case studies walk through problem definitions, data preprocessing, model selection, implementation, and interpretation of results.

Key topics also include:

  • Zonotopic and particle filtering approaches for achieving robust, real-time estimation of critical battery state parameters in operational environments
  • Hybrid filter and long short-term memory network models designed to predict remaining useful life with improved accuracy
  • Genetic algorithm and Q-learning strategies applied to intelligent battery grouping and manufacturing capacity forecasting
  • Technical case studies covering problem definitions, data preprocessing, model selection, implementation, and real-world result interpretation
  • Data-driven strategies for optimizing battery lifecycle stages from manufacturing through operation and sustainable energy storage

Researchers and industry professionals in energy storage, power electronics, and electrical engineering R&D will find targeted algorithmic strategies for battery system management. Graduate students studying energy storage and related disciplines gain exposure to filtering and AI methods applied directly to manufacturing and operational analysis challenges.

Ziyun Wang is a Professor and Doctoral Supervisor at Jiangnan University's School of Automation and Intelligent Science and Deputy Director of the Engineering Center for the Application of Internet of Things Technology. His research is focused on advanced manufacturing, battery operation analysis, and filter design.

Yan Wang is a Professor and Doctoral Supervisor at Jiangnan University's School of Automation and Intelligent Science and Yangtze River Distinguished Professor of the Ministry of Education. Her research spans artificial intelligence, advanced control and system optimization, and industrial internet technology.

Zhicheng Ji is a Professor and Doctoral Supervisor at Jiangnan University's School of Automation and Intelligent Science, and Director of Jiangsu Engineering Research Center for Intelligent Optimization Manufacturing of Industrial Internet, and former Vice Chancellor of Jiangnan University. His research is focused on energy system design, state estimation, and fault diagnosis.


Publication Date: 26 October 2026
Publisher: Wiley
Imprint: Wiley-IEEE Press
ISBN-13: 9781394437160
Format: Hardback
Page Count: 240

You may also like