Signal processing for cognitive radios / (Record no. 42748)

000 -LEADER
fixed length control field 14480nam a2200541 i 4500
001 - CONTROL NUMBER
control field 8039695
003 - CONTROL NUMBER IDENTIFIER
control field IEEE
005 - DATE AND TIME OF LATEST TRANSACTION
control field 20191218152129.0
006 - FIXED-LENGTH DATA ELEMENTS--ADDITIONAL MATERIAL CHARACTERISTICS
fixed length control field m o d
007 - PHYSICAL DESCRIPTION FIXED FIELD--GENERAL INFORMATION
fixed length control field cr |n|||||||||
008 - FIXED-LENGTH DATA ELEMENTS--GENERAL INFORMATION
fixed length control field 171024s2008 maua ob 001 eng d
010 ## - LIBRARY OF CONGRESS CONTROL NUMBER
Canceled/invalid LC control number 2014020555 (print)
020 ## - INTERNATIONAL STANDARD BOOK NUMBER
International Standard Book Number 9781118824818
Qualifying information electronic
020 ## - INTERNATIONAL STANDARD BOOK NUMBER
Canceled/invalid ISBN 9781118824931
Qualifying information hardback
024 7# - OTHER STANDARD IDENTIFIER
Standard number or code 10.1002/9781118824818
Source of number or code doi
035 ## - SYSTEM CONTROL NUMBER
System control number (CaBNVSL)mat08039695
035 ## - SYSTEM CONTROL NUMBER
System control number (IDAMS)0b00006485f0d86f
040 ## - CATALOGING SOURCE
Original cataloging agency CaBNVSL
Language of cataloging eng
Description conventions rda
Transcribing agency CaBNVSL
Modifying agency CaBNVSL
050 #4 - LIBRARY OF CONGRESS CALL NUMBER
Classification number TK5103.4815
Item number .J39 2015eb
082 00 - DEWEY DECIMAL CLASSIFICATION NUMBER
Classification number 621.382/2
Edition number 23
100 1# - MAIN ENTRY--PERSONAL NAME
Personal name Jayaweera, Sudharman K.,
Dates associated with a name 1972-
245 10 - TITLE STATEMENT
Title Signal processing for cognitive radios /
Statement of responsibility, etc. Sudharman K. Jayaweera.
264 #1 - PRODUCTION, PUBLICATION, DISTRIBUTION, MANUFACTURE, AND COPYRIGHT NOTICE
Place of production, publication, distribution, manufacture Hoboken, New Jersey :
Name of producer, publisher, distributor, manufacturer John Wiley & Sons, Inc.,
Date of production, publication, distribution, manufacture, or copyright notice [2015]
264 #2 - PRODUCTION, PUBLICATION, DISTRIBUTION, MANUFACTURE, AND COPYRIGHT NOTICE
Place of production, publication, distribution, manufacture [Piscataqay, New Jersey] :
Name of producer, publisher, distributor, manufacturer IEEE Xplore,
Date of production, publication, distribution, manufacture, or copyright notice [2014]
300 ## - PHYSICAL DESCRIPTION
Extent 1 PDF (xvi, 747 pages) :
Other physical details illustrations.
336 ## - CONTENT TYPE
Content type term text
Source rdacontent
337 ## - MEDIA TYPE
Media type term electronic
Source isbdmedia
338 ## - CARRIER TYPE
Carrier type term online resource
Source rdacarrier
504 ## - BIBLIOGRAPHY, ETC. NOTE
Bibliography, etc. note Includes bibliographical references (pages 721-739) and index.
505 0# - FORMATTED CONTENTS NOTE
Formatted contents note -- PREFACE xv -- PART I INTRODUCTION TO COGNITIVE RADIOS 1 -- 1 Introduction 3 -- 1.1 Introduction, 3 -- 1.2 Signal Processing and Cognitive Radios, 4 -- 1.3 Software-Defined Radios, 6 -- 1.3.1 Software-Defined Radio Platforms, 14 -- 1.3.2 Software-Defined Radio Systems, 15 -- 1.4 From Software-Defined Radios to Cognitive Radios, 19 -- 1.4.1 The Spectrum Scarcity Problem, 19 -- 1.4.2 Emergence of CRs, 21 -- 1.5 What this Book is About, 22 -- 1.6 Summary, 26 -- 2 The Cognitive Radio 27 -- 2.1 Introduction, 27 -- 2.2 A Functional Model of a Cognitive Radio, 30 -- 2.2.1 Spectrum Knowledge Acquisition (Spectrum Awareness), 30 -- 2.2.2 Communications Decision-Making, 33 -- 2.2.3 Learning in Cognitive Radios, 33 -- 2.3 The Cognitive Radio Architecture, 35 -- 2.3.1 Spectrum Sensing Region of a Cognitive Engine, 36 -- 2.3.2 Radio Reconfiguration Region of a Cognitive Engine, 36 -- 2.3.3 Learning Region of a Cognitive Engine, 37 -- 2.3.4 Memory Region of a Cognitive Engine, 37 -- 2.4 The Ideal Cognitive Radio, 38 -- 2.5 Signal Processing Challenges in Cognitive Radios, 39 -- 2.6 Summary, 40 -- 3 Cognitive Radios and Dynamic Spectrum Sharing 42 -- 3.1 Introduction, 42 -- 3.2 Interference and Spectrum Opportunities, 46 -- 3.3 Dynamic Spectrum Access, 50 -- 3.4 Dynamic Spectrum Leasing, 54 -- 3.5 Challenges in DSS Cognitive Radios, 55 -- 3.6 Cognitive Radios and Future of Wireless Communications, 60 -- 3.7 Summary, 61 -- PART II THEORETICAL FOUNDATIONS 65 -- 4 Introduction to Detection Theory 67 -- 4.1 Introduction, 67 -- 4.2 Optimality Criteria: Bayesian versus Non-Bayesian, 71 -- 4.2.1 The Bayesian Approach, 72 -- 4.2.2 A Non-Bayesian Approach: Neyman / Pearson Optimality Criterion, 73 -- 4.3 Parametric Signal Detection Theory, 75 -- 4.3.1 Bayesian Optimal Detection, 76 -- 4.3.2 Neyman / Pearson Optimal Detection, 82 -- 4.3.3 Another Non-Bayesian Alternative: The Generalized Likelihood Ratio Test, 99 -- 4.3.4 Parametric Signal Detection in Additive Noise, 103 -- 4.4 Nonparametric Signal Detection Theory, 122.
505 8# - FORMATTED CONTENTS NOTE
Formatted contents note 4.4.1 Signal Detection in Additive Zero-Median Noise: The Sign Test, 124 -- 4.4.2 Signal Detection in Additive Symmetric Noise: The Rank Test, 125 -- 4.4.3 Signal Detection in Additive Zero Median, Zero Mean, Finite-Variance Noise: The t-Test, 126 -- 4.5 Summary, 127 -- 5 Introduction to Estimation Theory 132 -- 5.1 Introduction, 132 -- 5.2 Random Parameter Estimation: Bayesian Estimation, 134 -- 5.2.1 Minimum Mean-Squared Error Estimation, 134 -- 5.2.2 MMSE Estimation of Vector Parameters, 135 -- 5.2.3 Linear Minimum Mean-Squared Error Estimation, 138 -- 5.2.4 Maximum A Posteriori Probability Estimation, 139 -- 5.3 Nonrandom Parameter Estimation, 140 -- 5.3.1 Theory of Minimum Variance Unbiased Estimation, 142 -- 5.3.2 Best Linear Unbiased Estimator, 147 -- 5.3.3 Maximum Likelihood Estimation, 152 -- 5.3.4 Performance Bounds: Cramer-Rao Lower Bound, 154 -- 5.4 Summary, 158 -- 6 Power Spectrum Estimation 164 -- 6.1 Introduction, 164 -- 6.2 PSD Estimation of a Stationary Discrete-Time Signal, 168 -- 6.2.1 Correlogram Method, 168 -- 6.2.2 Periodogram Method, 170 -- 6.2.3 Performance of the Periodogram PSD Estimate, 172 -- 6.3 Blackman / Tukey Estimator of the Power Spectrum, 177 -- 6.4 Other PSD Estimators Based on Modified Periodograms, 181 -- 6.4.1 Bartlett PSD Estimator, 181 -- 6.4.2 Welch PSD Estimator, 183 -- 6.5 PSD Estimation of Nonstationary Discrete-Time Signals, 186 -- 6.5.1 Temporally Windowed Observations, 188 -- 6.5.2 Temporal and Spectral Smoothing of PSD Estimates of Nonstationary Discrete-Time Signals, 189 -- 6.5.3 DFT-Based PSD Computation, 191 -- 6.6 Spectral Correlation of Cyclostationary Signals, 192 -- 6.6.1 Spectral Correlation and Spectral Autocoherence, 196 -- 6.6.2 Time-Averaged Spectral Correlation, 197 -- 6.6.3 Estimation of Spectral Correlation, 198 -- 6.7 Summary, 200 -- 7 Markov Decision Processes 207 -- 7.1 Introduction, 207 -- 7.2 Markov Decission Processes, 209 -- 7.3 Finite-Horizon MDPs, 212 -- 7.3.1 Definitions, 212 -- 7.3.2 Optimal Policies for MDPs, 216.
505 8# - FORMATTED CONTENTS NOTE
Formatted contents note 7.4 Infinite-Horizon MDPs, 222 -- 7.4.1 Stationary Optimal Policies for Infinite-Horizon MDPs, 224 -- 7.4.2 Bellman-Optimality Equations, 227 -- 7.5 Partially Observable Markov Decision Processes, 232 -- 7.5.1 Definitions, 233 -- 7.5.2 Policy Evaluation for a Finite-Horizon POMDP, 238 -- 7.5.3 Optimality Equations for a Finite-Horizon POMDP, 241 -- 7.5.4 Optimal Policy Computation for a Finite-Horizon POMDP, 242 -- 7.5.5 Infinite-Horizon POMDPs, 257 -- 7.6 Summary, 259 -- 8 Bayesian Nonparametric Classification 269 -- 8.1 Introduction, 269 -- 8.2 K-Means Classification Algorithm, 274 -- 8.3 X-Means Classification Algorithm, 276 -- 8.4 Dirichlet Process Mixture Model, 278 -- 8.4.1 Dirichlet Process, 278 -- 8.4.2 Construction of the Dirichlet Process, 279 -- 8.4.3 DPMM, 282 -- 8.5 Bayesian Nonparametric Classification Based on the DPMM and the Gibbs Sampling, 283 -- 8.5.1 DPMM-Based Classification of Scalar Observations, 287 -- 8.5.2 DPMM-Based Classification of Multidimensional Gaussian Observations, 298 -- 8.5.3 DPMM-Based Classification of Possibly Non-Gaussian Multidimensional Observations, 308 -- 8.6 Summary, 315 -- PART III SIGNAL PROCESSING IN COGNITIVE RADIOS 321 -- 9 Wideband Spectrum Sensing 323 -- 9.1 Introduction, 323 -- 9.2 Wideband Spectrum Sensing Problem, 325 -- 9.3 Wideband Spectrum Scanning Problem, 326 -- 9.4 Spectrum Segmentation and Subbanding, 328 -- 9.5 Wideband Spectrum Sensing Receiver, 330 -- 9.5.1 Homodyne Receiver Configuration, 332 -- 9.5.2 Super Heterodyne Digital Receiver Configuration, 334 -- 9.5.3 A/D Conversion and the Discrete-Time Received Signal Model, 335 -- 9.6 Subband Selection Problem in Wideband Spectrum Sensing, 336 -- 9.6.1 Subband Dynamics, 338 -- 9.6.2 A POMDP Model for Subband Selection, 340 -- 9.6.3 An Optimal Subband Selection Policy for Spectrum Sensing, 347 -- 9.6.4 A Reduced-Complexity Optimal Sensing Decision-Making Algorithm with Independent Channels, 350 -- 9.6.5 A Reduced Complexity Optimal Sensing Decision-Making Algorithm with Independent Subbands, 354.
505 8# - FORMATTED CONTENTS NOTE
Formatted contents note 9.6.6 Optimal Myopic Sensing Decision Policies, 354 -- 9.7 A Reduced Complexity Optimal Subband Selection Framework with an Alternative Reward Function, 355 -- 9.7.1 A New Model for Subband Dynamics, 357 -- 9.7.2 A Simplified Reward Function and a Reduced-Complexity Optimal Policy, 359 -- 9.7.3 A Reduced Complexity Optimal Policy for Independent Subbands, 362 -- 9.7.4 Optimal Myopic Policies with Reduced Dimensional Subband State Vectors, 363 -- 9.8 Machine-Learning Aided Subband Selection Policies, 364 -- 9.8.1 Q-Learning, 365 -- 9.8.2 Q-Learning in a POMDP: A Q-Learning Algorithm for Subband Selection, 368 -- 9.9 Summary, 372 -- 10 Spectral Activity Detection inWideband Cognitive Radios 377 -- 10.1 Introduction, 377 -- 10.2 Optimal Wideband Spectral Activity Detection, 379 -- 10.3 Wideband Spectral Activity Detection, 386 -- 10.4 Wavelet Transform-Based Wideband Spectral Activity Detection, 392 -- 10.4.1 Wavelet Transform, 394 -- 10.4.2 Edge Detection with Wavelet Transform, 395 -- 10.4.3 Spectral Activity Detection Based on Edge Detection, 397 -- 10.5 Wideband Spectral Activity Detection in Non-Gaussian Noise, 398 -- 10.5.1 Arbitrary but Known Noise Distribution, 399 -- 10.5.2 Robust Spectral Activity Detection, 406 -- 10.6 Wideband Spectral Activity Detection with Compressive Sampling, 413 -- 10.6.1 Compressive Sampling, 415 -- 10.6.2 Compressive Sensing of Wideband Spectrum, 419 -- 10.7 Summary, 421 -- 11 Signal Classification inWideband Cognitive Radios 429 -- 11.1 Introduction, 429 -- 11.2 Signal Classification Problem in a Wideband Cognitive Radio, 431 -- 11.3 Feature Extraction for Signal Classification, 435 -- 11.3.1 Carrier/Center Frequency, 435 -- 11.3.2 Cyclostationary Features, 436 -- 11.3.3 Modulation Type and Order Features, 441 -- 11.4 A Signal Classification Architecture for a Wideband Cognitive Radio, 445 -- 11.5 Bayesian Nonparametric Signal Classification, 447 -- 11.6 Sequential Bayesian Nonparametric Signal Classification, 462 -- 11.7 Summary, 469.
505 8# - FORMATTED CONTENTS NOTE
Formatted contents note 12 Primary Signal Detection in DSA Cognitive Networks 472 -- 12.1 Introduction, 472 -- 12.2 Spectrum Sensing Problem in Dynamic Spectrum Sharing CR Networks, 475 -- 12.3 Autonomous Spectrum Sensing for Dynamic Spectrum Sharing, 479 -- 12.3.1 Secondary User Sensing Observations, 480 -- 12.3.2 Channel-State (Idle/Busy) Decisions, 481 -- 12.4 Limitations of Autonomous Spectrum Sensing, 489 -- 12.5 Cooperative Spectrum Sensing for Dynamic Spectrum Sharing, 492 -- 12.6 Cooperative Channel-State Detection, 495 -- 12.6.1 Local Processing and Sensing Reports from Secondary Users, 498 -- 12.6.2 Final Channel-State Decisions at the SSDC: Decision Fusion, 502 -- 12.7 Summary, 516 -- 13 Spectrum Decision-Making in DSA Cognitive Networks 519 -- 13.1 Introduction, 519 -- 13.2 Primary Channel Dynamic Model, 520 -- 13.3 Sensing Decisions in DSS Networks with Autonomous Cognitive Radios, 522 -- 13.3.1 Optimal Sensing Policy Determination, 525 -- 13.3.2 Optimal Myopic Sensing Policy Determination, 530 -- 13.4 Sensing Decisions in Cooperative DSS Networks, 533 -- 13.4.1 Optimal SSDC Decisions for Independent Channel Dynamics, 537 -- 13.4.2 Optimal Myopic Sensing Decisions at the SSDC with Independent Channel Dynamics, 541 -- 13.5 Summary, 550 -- 14 Dynamic Spectrum Leasing in Cognitive Radio Networks 553 -- 14.1 Introduction, 553 -- 14.2 DSL with Direct Rewards to Primary Users, 555 -- 14.2.1 Interference at the Primary Receiver, 560 -- 14.2.2 A Game Model for Dynamic Spectrum Leasing, 565 -- 14.2.3 Nash Equilibria in Noncooperative Games, 570 -- 14.2.4 Existence of a Nash Equilibrium in the DSL Game, 573 -- 14.3 DSL Based on Asymmetric Cooperation with Primary Users, 587 -- 14.3.1 A Primary / Secondary Coexistence Model, 588 -- 14.3.2 Asymmetric Cooperative Communications-Based DSL between Primary Users and a Centralized Secondary Network, 591 -- 14.3.3 Asymmetric Cooperative Communications-Based DSL between Primary Users and Autonomous Cognitive Secondary Users, 604 -- 14.4 Summary, 609.
505 8# - FORMATTED CONTENTS NOTE
Formatted contents note 15 Cooperative Cognitive Communications 613 -- 15.1 Introduction, 613 -- 15.2 Cooperative Spectrum Sensing, 619 -- 15.3 Cooperative Spectrum Sensing and Channel-Access Decisions, 621 -- 15.4 Cooperative Communications Strategies in Cognitive Radio Networks, 624 -- 15.5 Asymmetric Cooperative Relaying in DSA Cognitive Radios, 627 -- 15.5.1 Secondary User Optimal Power Allocation for Asymmetric Cooperative Relaying, 629 -- 15.5.2 Centralized Assignment of Cognitive Radios for Cooperation with Primary Users: An Ideal Approach, 635 -- 15.5.3 Centralized Assignment of Cognitive Radios for Cooperation with Primary Users: A Realistic Approach, 640 -- 15.6 Summary, 644 -- 16 Machine Learning in Cognitive Radios 647 -- 16.1 Introduction, 647 -- 16.2 Artificial Neural Networks, 650 -- 16.2.1 Learning Algorithms for LTUs, 651 -- 16.2.2 Layered Neural Networks, 655 -- 16.2.3 Learning in Layered Feed-Forward Networks: Back-Propagation Algorithm, 656 -- 16.2.4 Neural Networks in Cognitive Radios, 662 -- 16.3 Support Vector Machines, 664 -- 16.3.1 Statistical Learning Theory, 665 -- 16.3.2 Structural Risk Minimization with Support Vector Machines, 669 -- 16.3.3 Linear Support Vector Machines, 670 -- 16.3.4 Nonlinear Support Vector Machines, 674 -- 16.3.5 Kernel Function Implementation of Support Vector Machines, 677 -- 16.3.6 SVMs in Cognitive Radios, 679 -- 16.4 Reinforcement Learning, 681 -- 16.4.1 Temporal Difference Learning, 683 -- 16.4.2 Q-Learning in a POMDP: Replicated Q-Learning, 684 -- 16.4.3 Reinforcement Learning in Cognitive Radios, 686 -- 16.5 Multiagent Learning, 688 -- 16.5.1 Game-Theoretic Multiagent Learning, 691 -- 16.5.2 Cooperative Multiagent Learning, 694 -- 16.5.3 Multiagent Learning in Cognitive Radio Networks, 696 -- 16.6 Summary, 698 -- Appendix A Nyquist Sampling Theorem 704 -- Appendix B A Collection of Useful Probability Distributions 711 -- B.1 Univariate Distributions, 711 -- B.2 Multivariate Distributions, 713 -- Appendix C Conjugate Priors 716 -- REFERENCES 721.
505 8# - FORMATTED CONTENTS NOTE
Formatted contents note INDEX 740.
506 ## - RESTRICTIONS ON ACCESS NOTE
Terms governing access Restricted to subscribers or individual electronic text purchasers.
520 ## - SUMMARY, ETC.
Summary, etc. "This book covers power electronics, in depth, by presenting the basic principles and application details, and it can be used both as a textbook and reference book. Introduces the specific type of CR that has gained the most research attention in recent years: the CR for Dynamic Spectrum Access (DSA). Provides signal processing solutions to each task by relating the tasks to materials covered in Part II. Specialized chapters then discuss specific signal processing algorithms required for DSA and DSS cognitive radios "--
Assigning source Provided by publisher.
530 ## - ADDITIONAL PHYSICAL FORM AVAILABLE NOTE
Additional physical form available note Also available in print.
538 ## - SYSTEM DETAILS NOTE
System details note Mode of access: World Wide Web
588 ## - SOURCE OF DESCRIPTION NOTE
Source of description note Description based on PDF viewed 10/24/2017.
650 #0 - SUBJECT ADDED ENTRY--TOPICAL TERM
Topical term or geographic name entry element Cognitive radio networks.
650 #0 - SUBJECT ADDED ENTRY--TOPICAL TERM
Topical term or geographic name entry element Signal processing.
655 #0 - INDEX TERM--GENRE/FORM
Genre/form data or focus term Electronic books.
710 2# - ADDED ENTRY--CORPORATE NAME
Corporate name or jurisdiction name as entry element Wiley,
Relator term publisher.
710 2# - ADDED ENTRY--CORPORATE NAME
Corporate name or jurisdiction name as entry element IEEE Xplore (Online Service),
Relator term distributor.
856 42 - ELECTRONIC LOCATION AND ACCESS
Materials specified Abstract with links to resource
Uniform Resource Identifier https://ieeexplore.ieee.org/xpl/bkabstractplus.jsp?bkn=8039695

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