<p>This book presents a treatise on the theory and modeling of second-order stationary processes, including an exposition on selected application areas that are important in the engineering and applied sciences. The foundational issues regarding stationary processes dealt with in the beginning of th
Linear Stochastic Systems: A Geometric Approach to Modeling, Estimation and Identification
β Scribed by Anders Lindquist, Giorgio Picci
- Publisher
- Springer
- Year
- 2015
- Tongue
- English
- Leaves
- 799
- Series
- Series in Contemporary Mathematics, Vol. 1
- Edition
- 2015
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
Maximizes reader insights into stochastic modeling, estimation, system identification, and time series analysis
Reveals the concepts of stochastic state space and state space modeling to unify the idea
Supports further exploration through a unified and logically consistent view of the subject
This book presents a treatise on the theory and modeling of second-order stationary processes, including an exposition on selected application areas that are important in the engineering and applied sciences. The foundational issues regarding stationary processes dealt with in the beginning of the book have a long history, starting in the 1940s with the work of Kolmogorov, Wiener, CramΓ©r and his students, in particular Wold, and have since been refined and complemented by many others. Problems concerning the filtering and modeling of stationary random signals and systems have also been addressed and studied, fostered by the advent of modern digital computers, since the fundamental work of R.E. Kalman in the early 1960s. The book offers a unified and logically consistent view of the subject based on simple ideas from Hilbert space geometry and coordinate-free thinking. In this framework, the concepts of stochastic state space and state space modeling, based on the notion of the conditional independence of past and future flows of the relevant signals, are revealed to be fundamentally unifying ideas. The book, based on over 30 years of original research, represents a valuable contribution that will inform the fields of stochastic modeling, estimation, system identification, and time series analysis for decades to come. It also provides the mathematical tools needed to grasp and analyze the structures of algorithms in stochastic systems theory.
β¦ Table of Contents
Front Matter....Pages i-xv
Introduction....Pages 1-23
Geometry of Second-Order Random Processes....Pages 25-64
Spectral Representation of Stationary Processes....Pages 65-101
Innovations, Wold Decomposition, and Spectral Factorization....Pages 103-151
Spectral Factorization in Continuous Time....Pages 153-174
Linear Finite-Dimensional Stochastic Systems....Pages 175-213
The Geometry of Splitting Subspaces....Pages 215-250
Markovian Representations....Pages 251-311
Proper Markovian Representations in Hardy Space....Pages 313-353
Stochastic Realization Theory in Continuous Time....Pages 355-412
Stochastic Balancing and Model Reduction....Pages 413-462
Finite-Interval and Partial Stochastic Realization Theory....Pages 463-506
Subspace Identification of Time Series....Pages 507-542
Zero Dynamics and the Geometry of the Riccati Inequality....Pages 543-590
Smoothing and Interpolation....Pages 591-636
Acausal Linear Stochastic Models and Spectral Factorization....Pages 637-673
Stochastic Systems with Inputs....Pages 675-724
Back Matter....Pages 725-781
β¦ Subjects
Systems Theory, Control; Probability Theory and Stochastic Processes; Control
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