A Novel Hybrid Grey Wolf Differential Evolution Algorithm
By: Ioannis D. Bougas , Pavlos Doanis , Maria S. Papadopoulou and more
Potential Business Impact:
New computer trick solves hard problems faster.
Grey wolf optimizer (GWO) is a nature-inspired stochastic meta-heuristic of the swarm intelligence field that mimics the hunting behavior of grey wolves. Differential evolution (DE) is a popular stochastic algorithm of the evolutionary computation field that is well suited for global optimization. In this part, we introduce a new algorithm based on the hybridization of GWO and two DE variants, namely the GWO-DE algorithm. We evaluate the new algorithm by applying various numerical benchmark functions. The numerical results of the comparative study are quite satisfactory in terms of performance and solution quality.
Similar Papers
A Novel Hybrid Grey Wolf Differential Evolution Algorithm
Neural and Evolutionary Computing
Finds best answers by copying wolf hunting.
Design of quasi phase matching crystal based on differential gray wolf algorithm
Distributed, Parallel, and Cluster Computing
Makes special crystals work much, much faster.
Fast and robust parametric and functional learning with Hybrid Genetic Optimisation (HyGO)
Neural and Evolutionary Computing
Makes designs better, faster, and more efficient.