MetaCartSign in to MyCiteSeer

Include Citations | Advanced Search | Help

Include Citations | Advanced Search | Help

  Minimum Order Stable Linear Predictor Design via Genetic Algorithm Approach

Download:
Download as a PDF | Download as a PS
by W. Q. Liu, Z. Y. Dong, Cishen Zhang
http://ee.usyd.edu.au/~dong/paper/gapred.ps.gz
Add To MetaCart

Abstract:

In this paper, the problem of minimum order stable linear predictor design is proposed and investigated. First, The existence of high order stable linear predictor is proved. Second, the minimum order stable linear predictor is obtained via solving an optimization problem. Here we adopted the popular genetic algorithm approach since it is a heuristic probabilistic optimization technique and has been widely used in engineering design. Finally, an example is used to illustrate the effectiveness of the proposed algorithm. 1

Citations

4828 Genetic Algorithms – Goldberg - 1989
387 Genetic algorithms with sharing for multi-modal function optimization – Goldberg, Richardson - 1987
20 Digital Signal Processing - A Practical Approach – Ifeachor, Jervis - 2002
10 Population size and genetic drift in fitness sharing – Mahfoud - 1995
8 Digital Filters: Analysis, Design and Applications – Antoniou - 1993
7 Genetic and Genetic/Simulated-Annealing Approaches to Economic Dispatch – Wong, Wong - 1994
7 Genetic Algorithms in Power System Small Signal Stability Analysis – Dong - 1997
4 Reactive Power Optimization by Genetic Algorithm – Iba - 1994
3 An Improved Genetic Algorithm – al
3 Improved Genetic Algorithm for Reactive Power Planning – Ma, Lai - 1996
2 Floating-Point Number-Coding Method for Genetic Algorithms – Wong, Wong - 1993
1 enping, "Z-transform and Laplace Transform, " Chapter 3, (in Chinese – Guan, Wang - 1983
1 Improved optimization method using genetic algorithms for mass transit signaling block-layout design – Chang, DU - 1998
1 Kwai Sang Sin, "Adaptive prediction, filtering and control – Goodwin - 1984
1 Global convergence for adaptive one-step ahead optimal controllers based on input matching – Goodwin, Johnson, et al.