This book gives readers in-depth know-how on methods of state estimation for nonlinear control systems. It starts with an introduction to dynamic control systems and system states and a brief description of the Kalman filter. In the following chapters, various state estimation techniques for nonline
Nonlinear Filtering: Methods and Applications
โ Scribed by Kumar Pakki Bharani Chandra, Da-Wei Gu
- Publisher
- Springer International Publishing
- Year
- 2019
- Tongue
- English
- Leaves
- 197
- Edition
- 1st ed.
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
This book gives readers in-depth know-how on methods of state estimation for nonlinear control systems. It starts with an introduction to dynamic control systems and system states and a brief description of the Kalman filter. In the following chapters, various state estimation techniques for nonlinear systems are discussed, including the extended, unscented and cubature Kalman filters. The cubature Kalman filter and its variants are introduced in particular detail because of their efficiency and their ability to deal with systems with Gaussian and/or non-Gaussian noise. The book also discusses information-filter and square-root-filtering algorithms, useful for state estimation in some real-time control system design problems.
A number of case studies are included in the book to illustrate the application of various nonlinear filtering algorithms. Nonlinear Filtering is written for academic and industrial researchers, engineers and research students who are interested in nonlinear control systems analysis and design. The chief features of the book include: dedicated coverage of recently developed nonlinear, Jacobian-free, filtering algorithms; examples illustrating the use of nonlinear filtering algorithms in real-world applications; detailed derivation and complete algorithms for nonlinear filtering methods, which help readers to a fundamental understanding and easier coding of those algorithms; and MATLABยฎ codes associated with case-study applications, which can be downloaded from the Springer Extra Materials website.
โฆ Table of Contents
Front Matter ....Pages i-xix
Control Systems and State Estimation (Kumar Pakki Bharani Chandra, Da-Wei Gu)....Pages 1-11
State Observation and Estimation (Kumar Pakki Bharani Chandra, Da-Wei Gu)....Pages 13-28
Kalman Filter and Linear State Estimations (Kumar Pakki Bharani Chandra, Da-Wei Gu)....Pages 29-57
Jacobian-Based Nonlinear State Estimation (Kumar Pakki Bharani Chandra, Da-Wei Gu)....Pages 59-73
Cubature Kalman Filter (Kumar Pakki Bharani Chandra, Da-Wei Gu)....Pages 75-96
Variants of Cubature Kalman Filter (Kumar Pakki Bharani Chandra, Da-Wei Gu)....Pages 97-148
More Estimation Methods and Beyond (Kumar Pakki Bharani Chandra, Da-Wei Gu)....Pages 149-182
Back Matter ....Pages 183-184
โฆ Subjects
Engineering; Control; Signal, Image and Speech Processing
๐ SIMILAR VOLUMES
<span>NONLINEAR FILTERS</span><p><span>Discover the utility of using deep learning and (deep) reinforcement learning in deriving filtering algorithms with this insightful and powerful new resource</span></p><p><span>Nonlinear Filters: Theory and Applications </span><span>delivers an insightful view
<p>Nonlinear and nonnormal filters are introduced and developed. Traditional nonlinear filters such as the extended Kalman filter and the Gaussian sum filter give biased filtering estimates, and therefore several nonlinear and nonnormal filters have been derived from the underlying probability densi
Nonlinear and nonnormal filters are introduced and developed. Traditional nonlinear filters such as the extended Kalman filter and the Gaussian sum filter give biased filtering estimates, and therefore several nonlinear and nonnormal filters have been derived from the underlying probability density
This book provides an easy to understand overview of nonlinear behavior in digital filters, showing how it can be utilized or avoided when operating nonlinear digital filters. It gives techniques for analyzing discrete-time systems with discontinuous linearity, enabling the analysis of other nonline