Ebook: Fixed Interval Smoothing for State Space Models
Author: Howard L. Weinert (auth.)
- Tags: Electrical Engineering, Signal Image and Speech Processing, Statistics general
- Series: The Springer International Series in Engineering and Computer Science 609
- Year: 2001
- Publisher: Springer US
- Edition: 1
- Language: English
- pdf
Fixed-interval smoothing is a method of extracting useful information from inaccurate data. It has been applied to problems in engineering, the physical sciences, and the social sciences, in areas such as control, communications, signal processing, acoustics, geophysics, oceanography, statistics, econometrics, and structural analysis.
This monograph addresses problems for which a linear stochastic state space model is available, in which case the objective is to compute the linear least-squares estimate of the state vector in a fixed interval, using observations previously collected in that interval. The author uses a geometric approach based on the method of complementary models. Using the simplest possible notation, he presents straightforward derivations of the four types of fixed-interval smoothing algorithms, and compares the algorithms in terms of efficiency and applicability. Results show that the best algorithm has received the least attention in the literature.
Fixed Interval Smoothing for State Space Models:
- includes new material on interpolation, fast square root implementations, and boundary value models;
- is the first book devoted to smoothing;
- contains an annotated bibliography of smoothing literature;
- uses simple notation and clear derivations;
- compares algorithms from a computational perspective;
- identifies a best algorithm.
Fixed-interval smoothing is a method of extracting useful information from inaccurate data. It has been applied to problems in engineering, the physical sciences, and the social sciences, in areas such as control, communications, signal processing, acoustics, geophysics, oceanography, statistics, econometrics, and structural analysis.
This monograph addresses problems for which a linear stochastic state space model is available, in which case the objective is to compute the linear least-squares estimate of the state vector in a fixed interval, using observations previously collected in that interval. The author uses a geometric approach based on the method of complementary models. Using the simplest possible notation, he presents straightforward derivations of the four types of fixed-interval smoothing algorithms, and compares the algorithms in terms of efficiency and applicability. Results show that the best algorithm has received the least attention in the literature.
Fixed Interval Smoothing for State Space Models:
- includes new material on interpolation, fast square root implementations, and boundary value models;
- is the first book devoted to smoothing;
- contains an annotated bibliography of smoothing literature;
- uses simple notation and clear derivations;
- compares algorithms from a computational perspective;
- identifies a best algorithm.
Fixed-interval smoothing is a method of extracting useful information from inaccurate data. It has been applied to problems in engineering, the physical sciences, and the social sciences, in areas such as control, communications, signal processing, acoustics, geophysics, oceanography, statistics, econometrics, and structural analysis.
This monograph addresses problems for which a linear stochastic state space model is available, in which case the objective is to compute the linear least-squares estimate of the state vector in a fixed interval, using observations previously collected in that interval. The author uses a geometric approach based on the method of complementary models. Using the simplest possible notation, he presents straightforward derivations of the four types of fixed-interval smoothing algorithms, and compares the algorithms in terms of efficiency and applicability. Results show that the best algorithm has received the least attention in the literature.
Fixed Interval Smoothing for State Space Models:
- includes new material on interpolation, fast square root implementations, and boundary value models;
- is the first book devoted to smoothing;
- contains an annotated bibliography of smoothing literature;
- uses simple notation and clear derivations;
- compares algorithms from a computational perspective;
- identifies a best algorithm.
Content:
Front Matter....Pages i-x
Introduction....Pages 1-12
Complementary Models....Pages 13-28
Discrete Smoothers....Pages 29-67
Continuous Smoothers....Pages 69-80
Boundary Value Models....Pages 81-97
Back Matter....Pages 99-119
Fixed-interval smoothing is a method of extracting useful information from inaccurate data. It has been applied to problems in engineering, the physical sciences, and the social sciences, in areas such as control, communications, signal processing, acoustics, geophysics, oceanography, statistics, econometrics, and structural analysis.
This monograph addresses problems for which a linear stochastic state space model is available, in which case the objective is to compute the linear least-squares estimate of the state vector in a fixed interval, using observations previously collected in that interval. The author uses a geometric approach based on the method of complementary models. Using the simplest possible notation, he presents straightforward derivations of the four types of fixed-interval smoothing algorithms, and compares the algorithms in terms of efficiency and applicability. Results show that the best algorithm has received the least attention in the literature.
Fixed Interval Smoothing for State Space Models:
- includes new material on interpolation, fast square root implementations, and boundary value models;
- is the first book devoted to smoothing;
- contains an annotated bibliography of smoothing literature;
- uses simple notation and clear derivations;
- compares algorithms from a computational perspective;
- identifies a best algorithm.
Content:
Front Matter....Pages i-x
Introduction....Pages 1-12
Complementary Models....Pages 13-28
Discrete Smoothers....Pages 29-67
Continuous Smoothers....Pages 69-80
Boundary Value Models....Pages 81-97
Back Matter....Pages 99-119
....