Stochastic control plays an important role in many scientific and applied disciplines including communications, engineering, medicine, finance and many others. It is one of the effective methods being used to find optimal decision-making strategies in applications. The book provides a collection of
Stochastic Modelling and Control
β Scribed by M. H. A. Davis, R. B. Vinter (auth.)
- Publisher
- Springer Netherlands
- Year
- 1985
- Tongue
- English
- Leaves
- 405
- Series
- Monographs on Statistics and Applied Probability
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
This book aims to provide a unified treatment of input/output modelling and of control for discrete-time dynamical systems subject to random disturbances. The results presented are of wide applicaΒ bility in control engineering, operations research, econometric modelling and many other areas. There are two distinct approaches to mathematical modelling of physical systems: a direct analysis of the physical mechanisms that comprise the process, or a 'black box' approach based on analysis of input/output data. The second approach is adopted here, although of course the properties ofthe models we study, which within the limits of linearity are very general, are also relevant to the behaviour of systems represented by such models, however they are arrived at. The type of system we are interested in is a discrete-time or sampled-data system where the relation between input and output is (at least approximately) linear and where additive random disΒ turbances are also present, so that the behaviour of the system must be investigated by statistical methods. After a preliminary chapter summarizing elements of probability and linear system theory, we introduce in Chapter 2 some general linear stochastic models, both in input/output and state-space form. Chapter 3 concerns filtering theory: estimation of the state of a dynamical system from noisy observations. As well as being an important topic in its own right, filtering theory provides the link, via the so-called innovations representation, between input/output models (as identified by data analysis) and state-space models, as required for much contemporary control theory.
β¦ Table of Contents
Front Matter....Pages i-xii
Probability and linear system theory....Pages 1-59
Stochastic models....Pages 60-99
Filtering theory....Pages 100-136
System identification....Pages 137-214
Asymptotic analysis of prediction error identification methods....Pages 215-246
Optimal control for state-space models....Pages 247-290
Minimum-variance and self-tuning control....Pages 291-334
Back Matter....Pages 335-393
β¦ Subjects
Science, general
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From Contents: Introduction; Deterministic System Models; Probability Theory and Static Models; Stochastic Processes and Linear Dynamic System Models; Optimal Filtering and Linear System Models; Design and Performance Analysis of Kalman Filters; Square Root Filtering. (Description by http-mart)
<p><p></p><p>This volume collects papers, based on invited talks given at the IMA workshop in Modeling, Stochastic Control, Optimization, and Related Applications, held at the Institute for Mathematics and Its Applications, University of Minnesota, during May and June, 2018. There were four week-lon
This volume builds upon the foundations set in Volumes 1 and 2. Chapter 13 introduces the basic concepts of stochastic control and dynamic programming as the fundamental means of synthesizing optimal stochastic control laws.