State Estimation for Nonlinear Continuous–Discrete Stochastic Systems State Estimation for Nonlinear Continuous–Discrete Stochastic Systems
Studies in Systems, Decision and Control

State Estimation for Nonlinear Continuous–Discrete Stochastic Systems

Numerical Aspects and Implementation Issues

    • USD 109.99
    • USD 109.99

Descripción editorial

This book addresses the problem of accurate state estimation in nonlinear continuous-time stochastic models with additive noise and discrete measurements. Its main focus is on numerical aspects of computation of the expectation and covariance in Kalman-like filters rather than on statistical properties determining a model of the system state. Nevertheless, it provides the sound theoretical background and covers all contemporary state estimation techniques beginning at the celebrated Kalman filter, including its versions extended to nonlinear stochastic models, and till the most advanced universal Gaussian filters with deterministically sampled mean and covariance. In particular, the authors demonstrate that, when applying such filtering procedures to stochastic models with strong nonlinearities, the use of adaptive ordinary differential equation solvers with automatic local and global error control facilities allows the discretization error—and consequently the state estimation error—to be reduced considerably. For achieving that, the variable-stepsize methods with automatic error regulation and stepsize selection mechanisms are applied to treating moment differential equations arisen. The implemented discretization error reduction makes the self-adaptive nonlinear Gaussian filtering algorithms more suitable for application and leads to the novel notion of accurate state estimation.



The book also discusses accurate state estimation in mathematical models with sparse measurements. Of special interest in this regard, it provides a means for treating stiff stochastic systems, which often encountered in applied science and engineering, being exemplified by the Van der Pol oscillator in electrical engineering and the Oregonator model of chemical kinetics. Square-root implementations of all Kalman-like filters considered and explored in this book for state estimation in Ill-conditioned continuous–discrete stochastic systems attract the authors’ particular attention.

This book covers both theoretical and applied aspects of numerical integration methods, including the concepts of approximation, convergence, stiffness as well as of local and global errors, suitably for applied scientists and engineers. Such methods serve as a basis for the development of accurate continuous–discrete extended, unscented, cubature and many other Kalman filtering algorithms, including the universal Gaussian methods with deterministically sampled expectation and covariance as well as their mixed-type versions. 

GÉNERO
Técnicos y profesionales
PUBLICADO
2024
6 de septiembre
IDIOMA
EN
Inglés
EXTENSIÓN
819
Páginas
EDITORIAL
Springer International Publishing
VENDEDOR
Springer Nature B.V.
TAMAÑO
190
MB
Anticipating Future Business Trends: Navigating Artificial Intelligence Innovations Anticipating Future Business Trends: Navigating Artificial Intelligence Innovations
2024
General Reference Architecture Frameworks General Reference Architecture Frameworks
2024
Intelligent Systems Modeling and Simulation III Intelligent Systems Modeling and Simulation III
2024
Harnessing AI, Machine Learning, and IoT for Intelligent Business Harnessing AI, Machine Learning, and IoT for Intelligent Business
2024
Opportunities and Risks in AI for Business Development Opportunities and Risks in AI for Business Development
2024
Business Sustainability with Artificial Intelligence (AI): Challenges and Opportunities Business Sustainability with Artificial Intelligence (AI): Challenges and Opportunities
2024