An enhanced harmony search integrated with adaptive mutation strategy
by Ying Deng; Yiwen Zhong; Lijin Wang
International Journal of Computing Science and Mathematics (IJCSM), Vol. 16, No. 2, 2022

Abstract: Aiming at making improvements on solutions to function optimisation problems, an enhanced harmony search, called EHS, is proposed by hybridising differential mutation strategies. EHS employs differential mutation strategies after a solution generated by harmony search, then the solution is integrated into the differential mutation strategies as a target or current vector. Moreover, four differential mutation operators, including target-to-rand/1, target-to-rand/2, target-to-best/1 and target-to-best/2 are invoked adaptively in a random way. Extensive experiments on CEC2014 benchmark functions demonstrate EHS is effective and efficient with the combination of harmony search and the differential mutation strategies.

Online publication date: Mon, 19-Dec-2022

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