Wong, Ka-ChunKa-ChunWongProf. LEUNG Kwong SakWong, Man-HonMan-HonWong2023-03-232023-03-232009Proceedings of the 11th Annual Genetic and Evolutionary Computation Conference, GECCO-2009, pp. 923 - 930978-160558325-9http://hdl.handle.net/20.500.11861/7547This paper presents an evolutionary algorithm, which we call Evolutionary Algorithm with Species-specific Explosion (EASE), for multimodal optimization. EASE is built on the Species Conserving Genetic Algorithm (SCGA), and the design is improved in several ways. In particular, it not only identifies species seeds, but also exploits the species seeds to create multiple mutated copies in order to further converge to the respective optimum for each species. Experiments were conducted to compare EASE and SCGA on four benchmark functions. Cross-comparison with recent rival techniques on another five benchmark functions was also reported. The results reveal that EASE has a competitive edge over the other algorithms tested. Copyright 2009 ACM.enAn evolutionary algorithm with species-specific explosion for multimodal optimizationConference Paper10.1145/1569901.1570027