Application of Genetic Algorithms in Texture Analysis and Optimization

作者: J. Tarasiuk , K. Wierzbanowski

DOI: 10.1081/AMP-120022022

关键词:

摘要: Abstract The genetic algorithms method (GAM) is a modern computer technique based on some ideas taken from biological evolution theory. GAM especially useful in study of problems being not completely determined. They are, e.g., having few but very different solutions or without strict (exact) solution. last situation may occur if it enough to find good solution necessarily the best one. In approach, necessary know priori general scheme problem solution; however, important have procedure estimating quality This eliminate and accept another ones. years, was applied with success areas science (e.g., sociology, construction engineering, artificial intelligence many others). present authors crystallographic texture analysis: orientation distribution function (ODF) calculated set ...

参考文章(8)
K. Wierzbanowski, J. Tarasiuk, P. Sałek, Genetic algorithms in crystallographic texture analysis Archives of Metallurgy. ,vol. 44, pp. 175- 182 ,(1999)
P. Salek, J. Tarasiuk, K. Wierzbanowski, Application of Genetic Algorithms to Texture Analysis Crystal Research and Technology. ,vol. 34, pp. 1073- 1079 ,(1999) , 10.1002/(SICI)1521-4079(199909)34:8<1073::AID-CRAT1073>3.0.CO;2-Z
J. Tarasiuk, K. Wierzbanowski, M. Kostrzewa, B. Peczkis, Modification of elastic constants via texture optimisation Journal of Neutron Research. ,vol. 9, pp. 411- 414 ,(2001) , 10.1080/10238160108200171
J. Tarasiuk, K. Wierzbanowski, Application of the linear regression method for comparison of crystallographic textures Philosophical Magazine. ,vol. 73, pp. 1083- 1091 ,(1996) , 10.1080/01418619608243705
Mihran Tuceryan, Anil K. Jain, Texture analysis Handbook of pattern recognition & computer vision. pp. 235- 276 ,(1993)
David E. Goldberg, Genetic algorithms in search, optimization and machine learning Reading: Addison-Wesley. ,(1989)