Litcius/Paper detail

DGS-SCSO: Enhancing Sand Cat Swarm Optimization with Dynamic Pinhole Imaging and Golden Sine Algorithm for improved numerical optimization performance

Oluwatayomi Rereloluwa Adegboye, Afi Kekeli Feda, Oluwaseun Racheal Ojekemi, Ephraim Bonah Agyekum, B. Zorina Khan, Salah Kamel

2024Scientific Reports53 citationsDOIOpen Access PDF

Abstract

This paper introduces DGS-SCSO, a novel optimizer derived from Sand Cat Swarm Optimization (SCSO), aiming to overcome inherent limitations in the original SCSO algorithm. The proposed optimizer integrates Dynamic Pinhole Imaging and Golden Sine Algorithm to mitigate issues like local optima entrapment, premature convergence, and delayed convergence. By leveraging the Dynamic Pinhole Imaging technique, DGS-SCSO enhances the optimizer's global exploration capability, while the Golden Sine Algorithm strategy improves exploitation, facilitating convergence towards optimal solutions. The algorithm's performance is systematically assessed across 20 standard benchmark functions, CEC2019 test functions, and two practical engineering problems. The outcome proves DGS-SCSO's superiority over the original SCSO algorithm, achieving an overall efficiency of 59.66% in 30 dimensions and 76.92% in 50 and 100 dimensions for optimization functions. It also demonstrated competitive results on engineering problems. Statistical analysis, including the Wilcoxon Rank Sum Test and Friedman Test, validate DGS-SCSO efficiency and significant improvement to the compared algorithms.

Topics & Concepts

Benchmark (surveying)AlgorithmComputer scienceConvergence (economics)Local optimumPinhole (optics)Mathematical optimizationSineWilcoxon signed-rank testOptimization algorithmMathematicsEconomic growthOpticsGeographyPhysicsMann–Whitney U testEconomicsGeodesyStatisticsGeometryMetaheuristic Optimization Algorithms ResearchReservoir Engineering and Simulation MethodsAdvanced Multi-Objective Optimization Algorithms