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Krishnan S. Hariharan - Mathematical Modeling of Lithium Batteries: From Electrochemical Models to State Estimator Algorithms - 9783319035260 - V9783319035260
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Mathematical Modeling of Lithium Batteries: From Electrochemical Models to State Estimator Algorithms

€ 183.92
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Description for Mathematical Modeling of Lithium Batteries: From Electrochemical Models to State Estimator Algorithms hardcover. Starting from fundamental theory, equations, model development, solution methodology to algorithms, this monograph connects fundamental electrochemistry of lithium batteries to controlling processes and eventually to on-board battery state estimators. Series: Green Energy and Technology. Num Pages: 300 pages, 70 black & white illustrations, biography. BIC Classification: THRH. Category: (P) Professional & Vocational. Dimension: 235 x 155. .

This book is unique to be the only one completely dedicated for battery modeling for all components of battery management system (BMS) applications. The contents of this book compliment the multitude of research publications in this domain by providing coherent fundamentals. An explosive market of Li ion batteries has led to aggressive demand for mathematical models for battery management systems (BMS). Researchers from multi-various backgrounds contribute from their respective background, leading to a lateral growth. Risk of this runaway situation is that researchers tend to use an existing method or algorithm without in depth knowledge of the cohesive ... Read more

Battery is an electrochemical system, and any level of understanding cannot ellipse this premise. The common thread that needs to run across—from detailed electrochemical models to algorithms used for real time estimation on a microchip—is that it be physics based. Build on this theme, this book has three parts. Each part starts with developing a framework—often invoking basic principles of thermodynamics or transport phenomena—and ends with certain verified real time applications. The first part deals with electrochemical modeling and the second with model order reduction. Objective of a BMS is estimation of state and health, and the third part is dedicated for that. Rules for state observers are derived from a generic Bayesian framework, and healthestimation is pursued using machine learning (ML) tools. A distinct component of this book is thorough derivations of the learning rules for the novel ML algorithms. Given the large-scale application of ML in various domains, this segment can be relevant to researchers outside BMS domain as well.

The authors hope this offering would satisfy a practicing engineer with a basic perspective, and a budding researcher with essential tools on a comprehensive understanding of BMS models.


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Product Details

Format
Hardback
Publication date
2018
Publisher
Springer/Sci-Tech/Trade Switzerland
Number of pages
300
Condition
New
Series
Green Energy and Technology
Number of Pages
211
Place of Publication
Cham, Switzerland
ISBN
9783319035260
SKU
V9783319035260
Shipping Time
Usually ships in 15 to 20 working days
Ref
99-15

About Krishnan S. Hariharan
Dr. Hariharan’s research focuses on mathematical modeling of lithium batteries for industrial applications. During his research career, he has had the opportunity to develop electrochemical, impedance spectroscopy as well as equivalent circuit models for lithium batteries. In addition, Dr. Hariharan was also involved in developing battery state estimator algorithms and thermal analysis of cells as well as battery packs. During ... Read more

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