DocumentCode :
1832845
Title :
Adaptive Probabilities of Crossover and Mutation in Genetic Algorithms Based on Cloud Model
Author :
Dai, C.H. ; Zhu, Y.F. ; Chen, W.R.
Author_Institution :
Inst. of Electrification & Autom., Southwest Jiaotong Univ., Chengdu
fYear :
2006
fDate :
22-26 Oct. 2006
Firstpage :
710
Lastpage :
713
Abstract :
Traditional genetic algorithms (GAs) easily get stuck at a local optimum, and often have slow convergent speed. A novel adaptive genetic algorithm (AGA) called cloud-model-based AGA (CAGA) is proposed in this paper. Unlike conventional genetic algorithms, CAGA presents the use of cloud model to adaptively tune the probabilities of crossover pc and mutation pm depending on the fitness values of solutions. Because normal cloud models have the properties of randomness and stable tendency, CAGA is expected to realize the twin goals of maintaining diversity in the population and sustaining the convergence capacity of the GA. We compared the performance of the CAGA with that of the standard GA (SGA) and AGA in optimizing several typical functions with varying degrees of complexity and solving travelling salesman problems. In all cases studied, CAGA is greatly superior to SGA and AGA in terms of robustness and efficiency. The CAGA converges to the global optimum in far fewer generations, and gets stuck at a local optimum fewer times than SGA and AGA
Keywords :
genetic algorithms; probability; travelling salesman problems; adaptive crossover probabilities; adaptive genetic algorithm; cloud-model-based AGA; convergence capacity; fitness values; travelling salesman problems; Automation; Clouds; Conferences; Genetic algorithms; Genetic communication; Genetic mutations; Information theory; Robustness; Traveling salesman problems; Uncertainty;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Information Theory Workshop, 2006. ITW '06 Chengdu. IEEE
Conference_Location :
Chengdu
Print_ISBN :
1-4244-0067-8
Electronic_ISBN :
1-4244-0068-6
Type :
conf
DOI :
10.1109/ITW2.2006.323754
Filename :
4119392
Link To Document :
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