Abstract:After simply presenting the Genetic Algorithm with Symmetric Code: GASC, which is-proposed by us in reference, then we study the effects of ‘Emigate’ and Partial Genetic Reservation techniques on GASC. Three necessary steps for ‘Emigrate’ technique-are defined. We propose a optimal genetic reservation quantity (25%) and its selecting range (20%~50%). The results obtained from the algorithm simulation show-the necessity-of employing the two new techniques for enhancing the performance of GASC.
1 孟庆春.Genetic Algorithms and Their Application to Problem Resolution and to Control Systems.The Thesis of Paris XII,Oct,1993 2 Goldberg E David.Genetic Algorithms in Search,Optimization and Machine Learning.Addis on-Wesley Publis hingCompany,Inc,1989 3 孟庆春,刘明,杨波,胡艳娥.机器人优化控制技术的研究.清华大学国家重点实验室课题结题报告,1995 4 孟庆春,Hamam Y.A New Genetic Strategy with a Gate Change Function.in Proc Intl Conference of IEEE on 93'SMC,1993,2:462~466 5 孟庆春.机器人工作空间模型建模技术——扩展障碍法.全国系统仿真学会学术年会论文集,1994 6 孟庆春,姜胜明.移动式机器人的动力学模型及其优化函数的构成.烟台大学学报,1995,(1):63~69 7 孟庆春.基因算法及其应用.山东大学出版社,1995 8 孟庆春.带有对称编码的基因算法.电子学报,1996,24(10):27~31