Title :
An efficient heuristic-based evolutionary algorithm for solving constraint satisfaction problems
Author :
Tam, Vincent ; Stuckey, Peter
Author_Institution :
Dept. of Comput. Sci., Melbourne Univ., Parkville, Vic., Australia
Abstract :
GENET and EGENET are artificial neural networks with remarkable success in solving hard constraint satisfaction problems (CSPs) such as car sequencing problems. (E)GENET uses the min-conflict heuristic in variable updating to find local minima, and then applies heuristic learning rule(s) to escape the local minima not representing solution(s). In this paper we describe a micro-genetic algorithm (MGA) which generalizes the (E)GENET approach for solving CSPs efficiently. Our proposed MGA integrates the min-conflict heuristic into mutation for reassigning allels (values) to genes (variables). In addition, we derive two methods, based on general principles from evolutionary algorithms, for escaping local minima: population based learning, and look forward. Our preliminary experimental results showed that this evolutionary approach improved on EGENET in solving certain hard instances of CSPs
Keywords :
constraint theory; genetic algorithms; heuristic programming; learning (artificial intelligence); minimisation; neural nets; CSP; EGENET; GENET; MGA; allel reassignment; artificial neural networks; car sequencing; constraint satisfaction problems; efficient heuristic-based evolutionary algorithm; evolutionary algorithms; heuristic learning; look forward principle; micro-genetic algorithm; min-conflict heuristic; mutation; population based learning; variable updating; Computer science; Cost accounting; Evolutionary computation; Genetic mutations; Job shop scheduling; Large-scale systems; Neural networks; Resource management; Search methods; Simulated annealing;
Conference_Titel :
Intelligence and Systems, 1998. Proceedings., IEEE International Joint Symposia on
Conference_Location :
Rockville, MD
Print_ISBN :
0-8186-8548-4
DOI :
10.1109/IJSIS.1998.685421