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, Kalm
Estimation, Control, and the Discrete Kalman Filter
β 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
No coin nor oath required. For personal study only.
β¦ 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.
β¦ Table of Contents
Front Matter....Pages i-xiii
Basic Probability....Pages 1-60
Minimum Variance EstimationβHow 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
β¦ 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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