The theory of linear discrete time filtering started with a paper by Kol mogorov in 1941. He addressed the problem for stationary random se quences and introduced the idea of the innovations process, which is a useful tool for the more general problems considered here. The reader may object and note that Gauss discovered least squares much earlier; however, I want to distinguish between the problem of parameter estimation, the Gauss problem, and that of Kolmogorov estimation of a process. This sep aration is of more than academic interest as the least squares problem leads to the normal equations, which are numerically ill conditioned, while the process estimation problem in the linear case with appropriate assumptions leads to uniformly asymptotically stable equations for the estimator and the gain. The conditions relate to controlability and observability and will be detailed in this volume. In the present volume, we present a series of lectures on linear and nonlinear sequential filtering theory. The theory is due to Kalman for the linear colored observation noise problem; in the case of white observation noise it is the analog of the continuous-time Kalman-Bucy theory. The discrete time filtering theory requires only modest mathematical tools in counterpoint to the continuous time theory and is aimed at a senior-level undergraduate course. The present book, organized by lectures, is actually based on a course that meets once a week for three hours, with each meeting constituting a lecture.
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1 Review.- 1 Review of Concepts in Probability.- 1.1 Gaussian Random Variables.- 2 Random Noise Generation.- 1 Random Noise Generation.- 2 Cholesky Decomposition.- 3 Uses of the Pseudo Inverse.- 4 Signal Models.- 5 Sensor Model.- 3 Historical Background.- 1 Background Material.- 2 Historical Developments for Filtering.- 2.1 Concept of Innovations.- 2.2 Wiener-Hopf Equation.- 3 Development of Innovations.- 4 Sequential Filter Development.- 4 Sequential Filtering Theory.- 1 Summary of the Sequential Filter.- 2 The Scalar Autonomous Riccati Equation.- 3 Linearizing the Riccati Equation.- 3.1 Symplectic Matrices.- 3.2 Stability of the Filter.- 5 Burg Technique.- 1 Background Material.- 6 Signal Processing.- 1 The Burg Technique.- 2 Signal Processing.- 3 Burg Revisited (Rouché’s Theorem).- 3.1 Burg’s Inverse Iteration.- 7 Classical Approach.- 1 Classical Steady-State Filtering.- 8 A Priori Bounds.- 1 A Priori Bounds for the Riccati Equation.- 2 Information and Filtering.- 3 Nonlinear Systems.- 9 Asymptotic Theory.- 1 Applications of the Theory of Filtering.- 2 Asymptotic Theory of the Riccati Equation.- 3 Steady-State Solution to Riccati.- 10 Advanced Topics.- 1 Invariant Directions.- 2 Nonlinear Filtering.- 11 Applications.- 1 Historical Applications.- 1.1 Problem 1. Cubic Sensor Problem (d=1).- 1.2 Numerical Realization.- 1.3 Problem 2. Passive Receiver.- 12 Phase Tracking.- 1 The Phase Lock Loop.- 2 Phase Demodulation.- 13 Device Synthesis.- 1 Device Synthesis for Nonlinear Filtering.- 1.1 Hybrid Computing in Nonlinear Filtering.- 1.2 Optical Techniques for Nonlinear Filter Convolution.- 1.3 Acoustic Techniques for Nonlinear Filter Convolution.- 1.4 Digital Developments in Nonlinear Filtering.- 2 Radar Filtering Application.- 2.1 Rao-Cramer Bound.- 14 Random Fields.
Book by Bucy RS
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Taschenbuch. Condizione: Neu. This item is printed on demand - it takes 3-4 days longer - Neuware -The theory of linear discrete time filtering started with a paper by Kol mogorov in 1941. He addressed the problem for stationary random se quences and introduced the idea of the innovations process, which is a useful tool for the more general problems considered here. The reader may object and note that Gauss discovered least squares much earlier; however, I want to distinguish between the problem of parameter estimation, the Gauss problem, and that of Kolmogorov estimation of a process. This sep aration is of more than academic interest as the least squares problem leads to the normal equations, which are numerically ill conditioned, while the process estimation problem in the linear case with appropriate assumptions leads to uniformly asymptotically stable equations for the estimator and the gain. The conditions relate to controlability and observability and will be detailed in this volume. In the present volume, we present a series of lectures on linear and nonlinear sequential filtering theory. The theory is due to Kalman for the linear colored observation noise problem; in the case of white observation noise it is the analog of the continuous-time Kalman-Bucy theory. The discrete time filtering theory requires only modest mathematical tools in counterpoint to the continuous time theory and is aimed at a senior-level undergraduate course. The present book, organized by lectures, is actually based on a course that meets once a week for three hours, with each meeting constituting a lecture. 176 pp. Englisch. Codice articolo 9781461383949
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Taschenbuch. Condizione: Neu. This item is printed on demand - Print on Demand Titel. Neuware -The theory of linear discrete time filtering started with a paper by Kol mogorov in 1941. He addressed the problem for stationary random se quences and introduced the idea of the innovations process, which is a useful tool for the more general problems considered here. The reader may object and note that Gauss discovered least squares much earlier; however, I want to distinguish between the problem of parameter estimation, the Gauss problem, and that of Kolmogorov estimation of a process. This sep aration is of more than academic interest as the least squares problem leads to the normal equations, which are numerically ill conditioned, while the process estimation problem in the linear case with appropriate assumptions leads to uniformly asymptotically stable equations for the estimator and the gain. The conditions relate to controlability and observability and will be detailed in this volume. In the present volume, we present a series of lectures on linear and nonlinear sequential filtering theory. The theory is due to Kalman for the linear colored observation noise problem; in the case of white observation noise it is the analog of the continuous-time Kalman-Bucy theory. The discrete time filtering theory requires only modest mathematical tools in counterpoint to the continuous time theory and is aimed at a senior-level undergraduate course. The present book, organized by lectures, is actually based on a course that meets once a week for three hours, with each meeting constituting a lecture.Springer Verlag GmbH, Tiergartenstr. 17, 69121 Heidelberg 176 pp. Englisch. Codice articolo 9781461383949
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Taschenbuch. Condizione: Neu. Druck auf Anfrage Neuware - Printed after ordering - The theory of linear discrete time filtering started with a paper by Kol mogorov in 1941. He addressed the problem for stationary random se quences and introduced the idea of the innovations process, which is a useful tool for the more general problems considered here. The reader may object and note that Gauss discovered least squares much earlier; however, I want to distinguish between the problem of parameter estimation, the Gauss problem, and that of Kolmogorov estimation of a process. This sep aration is of more than academic interest as the least squares problem leads to the normal equations, which are numerically ill conditioned, while the process estimation problem in the linear case with appropriate assumptions leads to uniformly asymptotically stable equations for the estimator and the gain. The conditions relate to controlability and observability and will be detailed in this volume. In the present volume, we present a series of lectures on linear and nonlinear sequential filtering theory. The theory is due to Kalman for the linear colored observation noise problem; in the case of white observation noise it is the analog of the continuous-time Kalman-Bucy theory. The discrete time filtering theory requires only modest mathematical tools in counterpoint to the continuous time theory and is aimed at a senior-level undergraduate course. The present book, organized by lectures, is actually based on a course that meets once a week for three hours, with each meeting constituting a lecture. Codice articolo 9781461383949
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