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9780817649555

System Identification With Quantized Observations

by ; ; ;
  • ISBN13:

    9780817649555

  • ISBN10:

    0817649557

  • Edition: 1st
  • Format: Hardcover
  • Copyright: 2010-07-30
  • Publisher: Birkhauser

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Summary

This book presents recently developed methodologies that utilize quantized information in system identification and explores their potential in extending control capabilities for systems with limited sensor information or networked systems. The results of these methodologies can be applied to signal processing and control design of communication and computer networks, sensor networks, mobile agents, coordinated data fusion, remote sensing, telemedicine, and other fields in which noise-corrupted quantized data need to be processed.Providing a comprehensive coverage of quantized identification, the book treats linear and nonlinear systems, as well as time-invariant and time-varying systems. The authors examine independent and dependent noises, stochastic- and deterministic-bounded noises, and also noises with unknown distribution functions. The key methodologies combine empirical measures and information-theoretic approaches to derive identification algorithms, provide convergence and convergence speed, establish efficiency of estimation, and explore input design, threshold selection and adaptation, and complexity analysis.System Identification with Quantized Observations is an excellent resource for graduate students, systems theorists, control engineers, applied mathematicians, as well as practitioners who use identification algorithms in their work. Selected material from the book may be used in graduate-level courses on system identification.

Table of Contents

Prefacep. xiii
Conventionsp. xv
Glossary of Symbolsp. xvii
Overviewp. 1
Introductionp. 3
Motivating Examplesp. 4
System Identification with Quantized Observationsp. 7
Outline of the Bookp. 8
System Settingsp. 13
Basic Systemsp. 14
Quantized Output Observationsp. 16
Inputsp. 17
System Configurationsp. 18
Filtering and Feedback Configurationsp. 19
Systems with Communication Channelsp. 19
Uncertaintiesp. 20
System Uncertainties: Unmodeled Dynamicsp. 20
System Uncertainties: Function Mismatchp. 21
Sensor Bias and Driftsp. 21
Noisep. 21
Unknown Noise Characteristicsp. 22
Communication Channel Uncertaintiesp. 22
Notesp. 22
Stochastic Methods for Linear Systemsp. 23
Empirical-Measure-Based Identificationp. 25
An Overview of Empirical-Measure-Based Identificationp. 26
Empirical Measures and Identification Algorithmsp. 29
Strong Convergencep. 32
Asymptotic Distributionsp. 34
Mean-Square Convergencep. 37
Convergence under Dependent Noisep. 41
Proofs of Two Propositionsp. 43
Notesp. 46
Estimation Error Bounds: Including Unmodeled Dynamicsp. 49
Worst-Case Probabilistic Errors and Time Complexityp. 50
Upper Bounds on Estimation Errors and Time Complexityp. 50
Lower Bounds on Estimation Errorsp. 53
Notesp. 56
Rational Systemsp. 59
Preliminariesp. 59
Estimation of xkp. 60
Estimation of Parameter ¿p. 62
Parameter Identifiabilityp. 62
Identification Algorithms and Convergence Analysisp. 65
Notesp. 66
Quantized Identification and Asymptotic Efficiencyp. 67
Basic Algorithms and Convergencep. 68
Quasi-Convex Combination Estimators (QCCE)p. 70
Alternative Covariance Expressions of Optimal QCCEsp. 72
Cramér-Rao Lower Bounds and Asymptotic Efficiency of the Optimal QCCEp. 75
Notesp. 79
Input Design for Identification in Connected Systemsp. 81
Invariance of Input Periodicity and Rank in Open- and Closed-Loop Configurationsp. 82
Periodic Dithersp. 83
Sufficient Richness Conditions under Input Noisep. 85
Actuator Noisep. 88
Notesp. 91
Identification of Sensor Thresholds and Noise Distribution Functionsp. 95
Identification of Unknown Thresholdsp. 95
Sufficient Richness Conditionsp. 96
Recursive Algorithmsp. 99
Parameterized Distribution Functionsp. 99
Joint Identification Problemsp. 101
Richness Conditions for Joint Identificationp. 101
Algorithms for Identifying System Parameters and Distribution Functionsp. 103
Convergence Analysisp. 105
Recursive Algorithmsp. 106
Recursive Schemesp. 107
Asymptotic Properties of Recursive Algorithm (8.14)p. 108
Algorithm Flowchartsp. 111
Illustrative Examplesp. 113
Notesp. 115
Deterministic Methods for Linear Systemsp. 117
Worst-Case Identificationp. 119
Worst-Case Uncertainty Measuresp. 120
Lower Bounds on Identification Errors and Time Complexityp. 121
Upper Bounds on Time Complexityp. 124
Identification of Gainsp. 127
Identification Using Combined Deterministic and Stochastic Methodsp. 135
Identifiability Conditions and Properties under Deterministic and Stochastic Frameworksp. 136
Combined Deterministic and Stochastic Identification Methodsp. 139
Optimal Input Design and Convergence Speed under Typical Distributionsp. 141
Notesp. 145
Worst-Case Identification Using Quantized Observationsp. 149
Worst-Case Identification with Quantized Observationsp. 150
Input Design for Parameter Decouplingp. 151
Identification of Single-Parameter Systemsp. 153
General Quantizationp. 154
Uniform Quantizationp. 159
Time Complexityp. 163
Examplesp. 165
Notesp. 168
Identification of Nonlinear and Switching Systemsp. 171
Identification of Wiener Systemsp. 173
Wiener Systemsp. 174
Basic Input Design and Core Identification Problemsp. 175
Properties of Inputs and Systemsp. 177
Identification Algorithmsp. 179
Asymptotic Efficiency of the Core Identification Algorithmsp. 184
Recursive Algorithms and Convergencep. 188
Examplesp. 190
Notesp. 194
Identification of Hammerstein Systemsp. 197
Problem Formulationp. 198
Input Design and Strong-Full-Rank Signalsp. 199
Estimates of ¿ with Individual Thresholdsp. 202
Quasi-Convex Combination Estimators of ¿p. 204
Estimation of System Parametersp. 212
Examplesp. 218
Notesp. 222
Systems with Markovian Parametersp. 225
Markov Switching Systems with Binary Observationsp. 227
Wonham-Type Filtersp. 227
Tracking: Mean-Square Criteriap. 229
Tracking Infrequently Switching Systems: MAP Methodsp. 237
Tracking Fast-Switching Systemsp. 242
Long-Run Average Behaviorp. 243
Empirical Measure-Based Estimatorsp. 245
Estimation Errors on Empirical Measures: Upper and Lower Boundsp. 249
Notesp. 252
Complexity Analysisp. 253
Complexities, Threshold Selection, Adaptationp. 255
Space and Time Complexitiesp. 256
Binary Sensor Threshold Selection and Input Designp. 259
Worst-Case Optimal Threshold Designp. 261
Threshold Adaptationp. 264
Quantized Sensors and Optimal Resource Allocationp. 267
Discussions on Space and Time Complexityp. 271
Notesp. 272
Impact of Communication Channelsp. 275
Identification with Communication Channelsp. 276
Monotonicity of Fisher Informationp. 277
Fisher Information Ratio of Communication Channelsp. 278
Vector-Valued Parametersp. 280
Relationship to Shannon's Mutual Informationp. 282
Tradeoff between Time Information and Space Informationp. 283
Interconnections of Communication Channelsp. 284
Notesp. 285
Background Materialsp. 287
Martingalesp. 287
Markov Chainsp. 290
Weak Convergencep. 299
Miscellanyp. 302
Referencesp. 305
Indexp. 315
Table of Contents provided by Ingram. All Rights Reserved.

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