Description

Book Synopsis

Advances in computers and personal navigation systems have greatly expanded the applications of Kalman filters. A Kalman filter uses information about noise and system dynamics to reduce uncertainty from noisy measurements. Common applications of Kalman filters include such fast-growing fields as autopilot systems, battery state of charge (SoC) estimation, brain-computer interface, dynamic positioning, inertial guidance systems, radar tracking, and satellite navigation systems.

Brown and Hwang''s bestselling textbook introduces the theory and applications of Kalman filters for senior undergraduates and graduate students. This revision updates both the research advances in variations on the Kalman filter algorithm and adds a wide range of new application examples. The book emphasizes the application of computational software tools such as MATLAB. The companion website includes M-files to assist students in applying MATLAB to solving end-of-chapter homework problems.



Table of Contents
PART 1: RANDOM SIGNALS BACKGROUND
Chapter 1 Probability and Random Variables: A Review
Chapter 2 Mathematical Description of Random Signals
Chapter 3 Linear Systems Response, State-space Modeling and Monte Carlo Simulation
PART 2: KALMAN FILTERING AND APPLICATIONS
Chapter 4 Discrete Kalman Filter Basics
Chapter 5 Intermediate Topics on Kalman Filtering
Chapter 6 Smoothing and Further Intermediate Topics
Chapter 7 Linearization, Nonlinear Filtering and Sampling Bayesian Filters
Chapter 8 the "Go-Free" Concept, Complementary Filter and Aided Inertial Examples
Chapter 9 Kalman Filter Applications to the GPS and Other Navigation Systems
APPENDIX A. Laplace and Fourier Transforms
APPENDIX B. The Continuous Kalman Filter

Introduction to Random Signals and Applied Kalman

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    A Hardback by Robert Grover Brown, Patrick Y. C. Hwang

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      View other formats and editions of Introduction to Random Signals and Applied Kalman by Robert Grover Brown

      Publisher: John Wiley & Sons Inc
      Publication Date: 20/02/2012
      ISBN13: 9780470609699, 978-0470609699
      ISBN10: 0470609699

      Description

      Book Synopsis

      Advances in computers and personal navigation systems have greatly expanded the applications of Kalman filters. A Kalman filter uses information about noise and system dynamics to reduce uncertainty from noisy measurements. Common applications of Kalman filters include such fast-growing fields as autopilot systems, battery state of charge (SoC) estimation, brain-computer interface, dynamic positioning, inertial guidance systems, radar tracking, and satellite navigation systems.

      Brown and Hwang''s bestselling textbook introduces the theory and applications of Kalman filters for senior undergraduates and graduate students. This revision updates both the research advances in variations on the Kalman filter algorithm and adds a wide range of new application examples. The book emphasizes the application of computational software tools such as MATLAB. The companion website includes M-files to assist students in applying MATLAB to solving end-of-chapter homework problems.



      Table of Contents
      PART 1: RANDOM SIGNALS BACKGROUND
      Chapter 1 Probability and Random Variables: A Review
      Chapter 2 Mathematical Description of Random Signals
      Chapter 3 Linear Systems Response, State-space Modeling and Monte Carlo Simulation
      PART 2: KALMAN FILTERING AND APPLICATIONS
      Chapter 4 Discrete Kalman Filter Basics
      Chapter 5 Intermediate Topics on Kalman Filtering
      Chapter 6 Smoothing and Further Intermediate Topics
      Chapter 7 Linearization, Nonlinear Filtering and Sampling Bayesian Filters
      Chapter 8 the "Go-Free" Concept, Complementary Filter and Aided Inertial Examples
      Chapter 9 Kalman Filter Applications to the GPS and Other Navigation Systems
      APPENDIX A. Laplace and Fourier Transforms
      APPENDIX B. The Continuous Kalman Filter

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