Linear Estimation / Edition 1by Thomas Kailath
Pub. Date: 03/28/2000
Publisher: Prentice Hall
This original work offers the most comprehensive and up-to-date treatment of the important subject of optimal linear estimation, which is encountered in many areas of engineering such as communications, control, and signal processing, and also several other fields, e.g., econometrics and statistics. The book not only highlights the most significant/b>… See more details below
This original work offers the most comprehensive and up-to-date treatment of the important subject of optimal linear estimation, which is encountered in many areas of engineering such as communications, control, and signal processing, and also several other fields, e.g., econometrics and statistics. The book not only highlights the most significant contributions to this field during the 20th century, including the works of Weiner and Kalman, but it does so in an original and novel manner that paves the way for further developments in the new millennium. This book contains a large collection of problems that complement the text and are an important part of it, in addition to numerous sections that offer interesting historical accounts and insights.
- Prentice Hall
- Publication date:
- Prentice Hall Information and System Science Series
- Edition description:
- New Edition
- Product dimensions:
- 6.90(w) x 9.10(h) x 1.70(d)
Table of Contents
The Asymptotic Observer. The Optimum Transient Observer. Coming Attractions. The Innovations Process. Steady-State Behavior. Several Related Problems. Complements. Problems.
2. Deterministic Least-Squares Problems.
The Deterministic Least-Squares Criterion. The Classical Solutions. A Geometric Formulation: The Orthogonality Condition. Regularized Least-Squares Problems. An Array Algorithm: The QR Method. Updating Least-Squares Solutions: RLS Algorithms. Downdating Least-Squares Solutions. Some Variations of Least-Squares Problems. Complements. Problems. On Systems of Linear Equations.
3. Stochastic Least-Squares Problems.
The Problem of Stochastic Estimation. Linear Least-Mean-Squares Estimators. A Geometric Formulation. Linear Models. Equivalence to Deterministic Least-Squares. Complements. Problems. Least-Mean-Squares Estimation. Gaussian Random Variables. Optimal Estimation for Gaussian Variables.
4. The Innovations Process.
Estimation of Stochastic Processes. The Innovations Process. Innovations Approach to Deterministic Least-Squares Problems. The Exponentially Correlated Process. Complements. Problems. Linear Spaces, Modules, and Gramians.
5. State-Space Models.
The Exponentially Correlated Process. Going Beyond the Stationary Case. Higher Order Processes and State-Space Models. Wide Sense Markov Processes. Complements. Problems. Some Global Formulas.
6. Innovations for Stationary Processes.
Innovations via Spectral Factorization. Signals and Systems. Stationary Random Processes. Canonical Spectral Factorization. Scalar Rational z-Spectra. Vector-Valued Stationary Processes. Complements. Problems. Continuous Time-Systems and Processes.
7. Wiener Theory for Scalar Processes.
Continuous-Time Wiener Smoothing. The Continuous-Time Wiener-Hopf Equation. Discrete-Time Problems. The Discrete Time Wiener-Hopf Technique. Causal Parts via Partial Fractions. Important Special Cases and Examples. Innovations Approach to the Wiener Filter. Vector Processes. Extensions of Wiener Filtering. Complements. Problems. The Continuous-Time Wiener-Hopf Technique.
8. Recursive Wiener Filtering
Time-Invariant State-Space Models. An Equivalence Class for Input Gramians. Canonical Spectral Factorization. Factorization Given Covariance Data. Predicted and Smoothed Estimators of the State. Extensions to Time-Variant Models. Complements. Problems. The Popov Function. System Theory Approach to Rational Spectral Factorization. The KYP and Bounded Real Lemmas. Vector Spectral Factorization in Continuous-Time.
9. The Kalman Filter.
The Standard State-Space Model. The Kalman Filter Recursions for the Innovations. Recursions for Predicted and Filtered State Estimators. Triangular Factorizations of Ry and Ry -1. An Important Special Assumption: Ri >> 0. Covariance-Based Filters. Approximate Nonlinear Filtering. Backwards Kalman Recursions. Complements. Problems. Factorization of Ry Using the MGS Procedure. Factorization via Gramian Equivalence Classes.
10. Smoothed Estimators.
General Smoothing Formulas. Exploiting State-Space Structure. The Rauch-Tung-Striebel (RTS) Recursions. Two-Filter Formulas. The Hamiltonian Equations (Ri >> 0). Variational Origin of Hamiltonian Equations. Applications of Equivalence. Complements. Problems.
11. Fast Algorithms.
The Fast (CKMS) Algorithms. Two Important Cases. Structured Time-Variant Systems. CKMS Recursions given Covariance Data. Relation to Displacement Rank. Complements. Problems.
12. Array Algorithms.
Review and Notations. Potter's Explicit Algorithm for Scalar Measurement Update. Several Array Algorithms. Numerical Examples. Derivations of the Array Algorithms. A Geometric Explanation of the Arrays. Paige's Form of the Array Algorithm. Array Algorithms for the Information Forms. Array Algorithms for Smoothing. Complements. Problems. The UD Algorithm. The Use of Schur and Condensed Forms. Paige's Array Algorithm.
13. Fast Array Algorithms.
A Special Case: P 0 = 0. A General Fast Array Algorithm. From Explicit Equations to Array Algorithms. Structured Time-Variant Systems. Complements. Problems. Combining Displacement and State-Space Structures.
14. Asymptotic Behavior.
Introduction. Solutions of the DARE. Summary of the Convergence Proofs. Riccati Solutions for Different Initial Conditions. Convergence Results. The Case of Stable Systems. The Case of S…Ö0. Exponential Convergence of the Fast Recursions. Complements. Problems.
15. Duality and Equivalence in Estimation and Control.
Dual Bases. Application to Linear Models. Duality and Equivalence Relationships. Duality Under Causality Constraints. Measurement Constraints and a Separation Principle. Duality in the Frequency Domain. Complementary State-Space Models. Complements. Problems.
16. Continuous-Time State-Space Estimation.
Continuous-Time Models. The Continuous-Time Kalman Filter Equations. Some Examples. Smoothed Estimators. Fast Algorithms for Time-Invariant Models. Asymptotic Behavior. Steady-State Filter. Complements. Problems. Backwards Markovian Models.
17. A Scattering Theory Approach.
A Generalized Transmission-Line Model. Backward Evolution. The Star Product. Various Riccati Formulas. Homogeneous Media: Time-Invariant Models. Discrete-Time Scattering Formulation. Further Work. Complements. Problems. A Complementary State-Space Model.
A. Useful Matrix Results.
Some Matrix Identities. Kronecker Products. The Reduced and Full QR Decompositions. The Singular Value Decomposition and Applications. Basis Rotations. Complex Gradients and Hessians. Further Reading.
B. Unitary and J-Unitary Transformations.
Householder Transformations. Circular or Givens Rotations. Fast Givens Transformations. J-Unitary Householder Transformations. Hyperbolic Givens Rotations. Some Alternative Implementations.
C. Some System Theory Concepts.
Linear State-Space Models. State-Transition Matrices. Controllabilty and Stabilizabilty. Observabilty and Detectabilty. Minimal Realizations.
D. Lyapunov Equations.
Discrete-Time Lyapunov Equations. Continuous-Time Lyapunov Equations. Internal Stability.
E. Algebraic Riccati Equations.
Overview of DARE. A Linear Matrix Inequality. Existence of Solutions to the DARE. Properties of the Maximal Solution. Main Result. Further Remarks. The Invariant Subspace Method. The Dual DARE. The CARE. Complements.
F. Displacement Structure.
Motivation. Two Fundamental Properties. A Generalized Schur Algorithm. The Classical Schur Algorithm. Combining Displacement and State-Space Structures.
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