Applicability of genetic algorithms to movement analysis of a moving object by analyzing sound signals

作者: R. Goto , Y. Sato

DOI: 10.1109/CEC.2005.1554881

关键词:

摘要: We have researched for the applicability of genetic algorithms (GA) to issues such as multi objective optimization, time series prediction, analysis from observed noisy data and solution implicit functions. Concerning these problems, we reported that GA is effective tracking moving ships, objects orbiting earth bearing distance data. In this paper, report on movement characteristics an object in sea water sound signal. This more complex than those earlier reports. To analyze characteristics, applied a two-step analysis. The first step analyzes harmonic frequencies their phases signal radiated by object. second using output GA. could prove through computer simulation.

参考文章(10)
Andrew H. Watson, Ian C. Parmee, Preliminary airframe design using co-evolutionary multiobjective genetic algorithms genetic and evolutionary computation conference. pp. 1657- 1665 ,(1999)
Masahiro Okamoto, Nobuto Koga, Daisuke Tominaga, Efficient numerical optimization algorithm based on Genetic Algorithm for inverse problem genetic and evolutionary computation conference. pp. 251- 258 ,(2000)
Hans-Georg Beyer, Dirk V. Arnold, Fitness noise and localization errors of the optimum in general quadratic fitness models genetic and evolutionary computation conference. pp. 817- 824 ,(1999)
A.L. Blumel, E.J. Hughes, B.A. White, Fuzzy autopilot design using a multiobjective evolutionary algorithm congress on evolutionary computation. ,vol. 1, pp. 54- 61 ,(2000) , 10.1109/CEC.2000.870275
I. Yoshihara, T. Aoyama, M. Yasunaga, GP-based modeling method for time series prediction with parameter optimization and node alternation congress on evolutionary computation. ,vol. 2, pp. 1475- 1481 ,(2000) , 10.1109/CEC.2000.870828
Craig W. Reynolds, Evolution of obstacle avoidance behavior: using noise to promote robust solutions Advances in genetic programming. pp. 221- 241 ,(1994)
R. Goto, Y. Sato, Applicability of genetic algorithms to motion analysis of a moving object congress on evolutionary computation. ,vol. 1, pp. 765- 770 ,(2002) , 10.1109/CEC.2002.1007022
Y. Sato, S. Nagaya, Evolutionary algorithms that generate recurrent neural networks for learning chaos dynamics ieee international conference on evolutionary computation. pp. 144- 149 ,(1996) , 10.1109/ICEC.1996.542350
Hisashi Tamaki, Hajime Kita, Shigenobu Kobayashi, Multi-objective optimization by genetic algorithms: a review ieee international conference on evolutionary computation. pp. 517- 522 ,(1996) , 10.1109/ICEC.1996.542653