Litcius/Paper detail

Dove Swarm Optimization Algorithm

Mu‐Chun Su, Jieh‐Haur Chen, Andina Mugi Utami, Shih-Chieh Lin, Hsi-Hsien Wei

2022IEEE Access33 citationsDOIOpen Access PDF

Abstract

Popular methods to deal with computation become strenuous due to the optimization demands that develop more complex nowadays. This research aims to propose a new optimal algorithm, Dove Swarm Optimization (DSO), that adopts the foraging behaviors of doves to have six benchmark functions expressing DSO performance. By considering competition for forage, DSO is designed to ensure the most satisfied dove as well as optimization, then compared with 15 popular optimization algorithms using random initial and lattice initial values. The results reveal that DSO performs the best in time efficiency and well in both convergences for these functions in a reasonable region from 1 to 3 seconds, and population diversity for the initialization method from less than 1 second to 9 seconds dependent on the population size. As a result, DSO is indeed a time-efficient and effective algorithm in solving optimization problems.

Topics & Concepts

DoveComputer scienceInitializationMathematical optimizationBenchmark (surveying)Optimization algorithmPopulationForagingOptimization problemComputationAlgorithmMathematicsEcologyBiologyLawPolitical scienceGeodesyGeographyDemographySociologyProgramming languageMetaheuristic Optimization Algorithms ResearchEvolutionary Algorithms and ApplicationsAdvanced Multi-Objective Optimization Algorithms
Dove Swarm Optimization Algorithm | Litcius