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Estimation, Control, and the Discrete Kalman Filter

✍ Scribed by Donald E. Catlin (auth.)


Publisher
Springer-Verlag New York
Year
1989
Tongue
English
Leaves
285
Series
Applied Mathematical Sciences 71
Edition
1
Category
Library

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✦ Synopsis


In 1960, R. E. Kalman published his celebrated paper on recursive minΒ­ imum variance estimation in dynamical systems [14]. This paper, which introduced an algorithm that has since been known as the discrete Kalman filter, produced a virtual revolution in the field of systems engineering. Today, Kalman filters are used in such diverse areas as navigation, guidΒ­ ance, oil drilling, water and air quality, and geodetic surveys. In addition, Kalman's work led to a multitude of books and papers on minimum variΒ­ ance estimation in dynamical systems, including one by Kalman and Bucy on continuous time systems [15]. Most of this work was done outside of the mathematics and statistics communities and, in the spirit of true academic parochialism, was, with a few notable exceptions, ignored by them. This text is my effort toward closing that chasm. For mathematics students, the Kalman filtering theorem is a beautiful illustration of functional analysis in action; Hilbert spaces being used to solve an extremely important problem in applied mathematics. For statistics students, the Kalman filter is a vivid example of Bayesian statistics in action. The present text grew out of a series of graduate courses given by me in the past decade. Most of these courses were given at the University of MasΒ­ sachusetts at Amherst.

✦ Table of Contents


Front Matter....Pages i-xiii
Basic Probability....Pages 1-60
Minimum Variance Estimationβ€”How the Theory Fits....Pages 61-69
The Maximum Entropy Principle....Pages 70-91
Adjoints, Projections, Pseudoinverses....Pages 92-113
Linear Minimum Variance Estimation....Pages 114-124
Recursive Linear Estimation (Bayesian Estimation)....Pages 125-132
The Discrete Kalman Filter....Pages 133-163
The Linear Quadratic Tracking Problem....Pages 164-187
Fixed Interval Smoothing....Pages 188-199
Back Matter....Pages 200-275

✦ Subjects


Statistics, general;Systems Theory, Control;Calculus of Variations and Optimal Control;Optimization;Appl.Mathematics/Computational Methods of Engineering;Control, Robotics, Mechatronics


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