Efficient Genetic Algorithms Using Simple Genes Exchange Local Search Policy for the Quadratic Assignment Problem

被引:0
作者
M.H. Lim
Y. Yuan
S. Omatu
机构
[1] Nanyang Technological University,School of Electrical and Electronic Engineering
[2] Osaka Prefecture University,Department of Computer and Systems Sciences, College of Engineering
来源
Computational Optimization and Applications | 2000年 / 15卷
关键词
quadratic assignment; combinatorial optimization; genetic algorithm; local search; k-gene exchange;
D O I
暂无
中图分类号
学科分类号
摘要
In this paper, we describe an approach for solving the quadratic assignment problem (QAP) that is based on genetic algorithms (GA). It will be shown that a standard canonical GA (SGA), which involves genetic operators of selection, reproduction, crossover, and mutation, tends to fall short of the desired performance expected of a search algorithm. The performance deteriorates significantly as the size of the problem increases. To address this syndrome, it is common for GA-based techniques to be embedded with deterministic local search procedures. It is proposed that the local search should involve simple procedure of genome reordering that should not be too complex. More importantly, from a computational point of view, the local search should not carry with it the full cost of evaluating a chromosome after each move in the localized landscape. Results of simulation on several difficult QAP benchmarks showed the effectiveness of our approaches.
引用
收藏
页码:249 / 268
页数:19
相关论文
共 36 条
[11]  
Chakrapani J.(1993)Reformulating quadratic assignment problems for efficient optimization IIE Transactions 25 97-107
[12]  
Skorin-Kapov J.(1957)Assignment problems and the location of economic activities Econometrica 25 53-76
[13]  
Clausen J.(1993)Simulated annealing for the QAP-Optimal tradeoff between simulation time and solution quality European Journal of Operational Research 69 238-243
[14]  
Perregaard M.(1993)Genetic algorithm for linear and cyclic assignment problem Operations Research 20 575-586
[15]  
Connolly D.T.(1996)A GA paradigm for learning fuzzy rules Fuzzy Sets and Systems 82 177-186
[16]  
Gwee B.H.(1997)Simulated annealing and genetic algorithms for the facility layout problem: A survey Computational Optimization and Applications 7 111-126
[17]  
Lim M.H.(1994)Extensions of a tabu search adaptation to the quadratic assignment problem Computers & Operations Research 21 855-865
[18]  
Kapsalis A.(1991)Robust taboo search for the quadratic assignment problem Parallel Computing 17 443-455
[19]  
Rayward-Smith V.J.(1995)A genetic approach to the quadratic assignment problem Computers & Operations Research 22 73-83
[20]  
Smith G.D.(undefined)undefined undefined undefined undefined-undefined