|
Showing 1 - 2 of
2 matches in All Departments
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 fundamentals-often misinterpreting
the outcome. It is worthy to note that the guiding principles are
similar and the lack of clarity impedes a significant advancement.
A repeat or even a synopsis of all the applications of battery
modeling albeit redundant, would hence be a mammoth task, and
cannot be done in a single offering. The authors believe that a
pivotal contribution can be made by explaining the fundamentals in
a coherent manner. Such an offering would enable researchers from
multiple domains appreciate the bedrock principles and forward the
frontier. 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 health estimation 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.
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 fundamentals-often misinterpreting
the outcome. It is worthy to note that the guiding principles are
similar and the lack of clarity impedes a significant advancement.
A repeat or even a synopsis of all the applications of battery
modeling albeit redundant, would hence be a mammoth task, and
cannot be done in a single offering. The authors believe that a
pivotal contribution can be made by explaining the fundamentals in
a coherent manner. Such an offering would enable researchers from
multiple domains appreciate the bedrock principles and forward the
frontier. 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 health estimation 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.
|
You may like...
Pewp
Kenton Blythe
Hardcover
R440
Discovery Miles 4 400
|