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AI for Status Monitoring of Utility Scale Batteries.

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Format:
Book
Author/Creator:
Wang, Shunli.
Contributor:
Liu, Kailong.
Wang, Yujie.
Stroe, Daniel-I. (Daniel Ioan)
Fernández, Carlos (Lecturer in Analytical Chemistry)
Guerrero, Josep M.
Series:
Energy Engineering
Language:
English
Subjects (All):
Machine learning.
Physical Description:
1 online resource (385 pages)
Edition:
1st ed.
Place of Publication:
Stevenage : Institution of Engineering & Technology, 2023.
Summary:
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.
Contents:
Cover
Halftitle Page
Series Page
Title Page
Copyright
Contents
About the Authors
Foreword
Preface
List of contributors
1 Introduction
1.1 Motivation for utility-scale battery deployment
1.2 Definition of AI in the context of battery management
1.3 Advantages of using AI for battery management
2 Utility-­scale lithium-­ion battery system characteristics
2.1 Overview of lithium-ion batteries
2.1.1 Battery working principle
2.1.2 Principles of status monitoring of utility-scale batteries
2.2 Lithium-ion batteries
2.2.1 Lithium iron phosphate batteries
2.2.2 Lithium cobaltate oxide batteries
2.2.3 Lithium manganese oxide batteries
2.3 Large capacity lithium-ion batteries
2.3.1 Application areas of utility-scale batteries
2.3.2 Characteristics of utility-scale battery systems
2.3.3 Operational challenges of utility-scale battery systems
3 AI-­based equivalent modeling and parameter identification
3.1 Overview of battery equivalent circuit modeling
3.2 Modeling types and concepts
3.3 Equivalent circuit modeling methods Generated by AI.
Notes:
Description based on publisher supplied metadata and other sources.
Part of the metadata in this record was created by AI, based on the text of the resource.
ISBN:
1-83724-508-8
1-5231-5354-7
1-83953-739-6
OCLC:
1356002705

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