Publication | Open Access
Elite Opposition-Based Social Spider Optimization Algorithm for Global Function Optimization
29
Citations
34
References
2017
Year
Large-scale Global OptimizationMemetic AlgorithmComputational AccuracyBenchmark FunctionsFirefly AlgorithmIntelligent OptimizationGlobal Function OptimizationHybrid Optimization TechniqueComputer ScienceSso AlgorithmEvolutionary Programming
The Social Spider Optimization algorithm (SSO) is a novel metaheuristic optimization algorithm. To enhance the convergence speed and computational accuracy of the algorithm, in this paper, an elite opposition-based Social Spider Optimization algorithm (EOSSO) is proposed; we use an elite opposition-based learning strategy to enhance the convergence speed and computational accuracy of the SSO algorithm. The 23 benchmark functions are tested, and the results show that the proposed elite opposition-based Social Spider Optimization algorithm is able to obtain an accurate solution, and it also has a fast convergence speed and a high degree of stability.
| Year | Citations | |
|---|---|---|
Page 1
Page 1