Shuffled shepherd optimization method: a new Meta-heuristic algorithm
A. Kaveh, Ataollah Zaerreza
Abstract
Purpose This paper aims to present a new multi-community meta-heuristic optimization algorithm, which is called shuffled shepherd optimization algorithm (SSOA). In this algorithm. Design/methodology/approach The agents are first separated into multi-communities and the optimization process is then performed mimicking the behavior of a shepherd in nature operating on each community. Findings A new multi-community meta-heuristic optimization algorithm called a shuffled shepherd optimization algorithm is developed in this paper and applied to some attractive examples. Originality/value A new metaheuristic is presented and tested with some classic benchmark problems and some attractive structures are optimized.
Topics & Concepts
MetaheuristicMeta heuristicHeuristicMathematical optimizationBenchmark (surveying)Optimization algorithmAlgorithmComputer scienceValue (mathematics)Extremal optimizationMeta-optimizationMathematicsMachine learningGeodesyGeographyMetaheuristic Optimization Algorithms ResearchAdvanced Multi-Objective Optimization AlgorithmsEvolutionary Algorithms and Applications