ABSTRACT
In this work, we propose a hybrid parallel Jaya optimisation algorithm for a multi-core environment with the aim of solving large-scale global optimisation problems. The proposed algorithm is called HHCPJaya, and combines the hyper-population approach with the hierarchical cooperation search mechanism. The HHCPJaya algorithm divides the population into many small subpopulations, each of which focuses on a distinct block of the original population dimensions. In the hyper-population approach, we increase the small subpopulations by assigning more than one subpopulation to each core, and each subpopulation evolves independently to enhance the explorative and exploitative nature of the population. We combine this hyper-population approach with the two-level hierarchical cooperative search scheme to find global solutions from all subpopulations. Furthermore, we incorporate an additional updating phase on the respective subpopulations based on global solutions, with the aim of further improving the convergence rate and the quality of solutions. Several experiments applying the proposed parallel algorithm in different settings prove that it demonstrates sufficient promise in terms of the quality of solutions and the convergence rate. Furthermore, a relatively small computational effort is required to solve complex and large-scale optimisation problems.
Graphical Abstract
Implementation flow chart of the HHCPJaya algorithm.
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Acknowledgements
The author would like to thank the anonymous reviewers for helpful comments, which have improved the presentation of this paper. The computational experiments reported in this paper were performed at the Parallel and Distributed Processing Laboratory (PDP Lab) of the Department of Applied Informatics, University of Macedonia. The author would also like to thank the personnel of the PDP Lab.
Notes
No potential conflict of interest was reported by the author.