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AI for Status Monitoring of Utility Scale Batteries - Energy Engineering Hardcover
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Highlights
- Batteries are a necessary part of a low-emission energy system, as they can store renewable electricity and assist the grid.
- Author(s): Shunli Wang & Kailong Liu & Yujie Wang & Daniel-Ioan Stroe & Carlos Fernandez & Josep M Guerrero
- 495 Pages
- Technology, Power Resources
- Series Name: Energy Engineering
Description
About the Book
Utility-scale Li-ion batteries are poised to play key roles for the clean energy system, but their failure has severe effects. AI can help with their monitoring and management. This work covers machine learning, neural networks, and deep learning, for battery modeling.
Book Synopsis
Batteries are a necessary part of a low-emission energy system, as they can store renewable electricity and assist the grid. Particularly utility-scale batteries, with capacities of several to hundreds of MWh, are important for e.g. condominiums, local grid nodes and EV charging arrays. But they are expensive and need to be monitored and managed well in order to maintain capacity and reliability. Artificial intelligence is key to this.
This book systematically describes AI-based technologies for battery state estimation and modelling for utility-scale Li-ion batteries. It covers AI methods for circuit modelling, parameter identification, state of charge estimation, state of health evaluation, state of power determination, state of energy calculation, and remaining useful life prediction. The AI methods include machine learning, artificial neural networks, and deep learning. The book provides practical references for the design and application of large-scale lithium-ion battery systems. Examples are given to serve as references.