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A hybrid algorithm based on state-adaptive slime mold model and fractional-order ant system for the travelling salesman problem

Xiaoling Gong, Ziheng Rong, Jian Wang, Kai Zhang, Shengxiang Yang

2022Complex & Intelligent Systems55 citationsDOIOpen Access PDF

Abstract

Abstract The ant colony optimization (ACO) is one efficient approach for solving the travelling salesman problem (TSP). Here, we propose a hybrid algorithm based on state-adaptive slime mold model and fractional-order ant system (SSMFAS) to address the TSP. The state-adaptive slime mold (SM) model with two targeted auxiliary strategies emphasizes some critical connections and balances the exploration and exploitation ability of SSMFAS. The consideration of fractional-order calculus in the ant system (AS) takes full advantage of the neighboring information. The pheromone update rule of AS is modified to dynamically integrate the flux information of SM. To understand the search behavior of the proposed algorithm, some mathematical proofs of convergence analysis are given. The experimental results validate the efficiency of the hybridization and demonstrate that the proposed algorithm has the competitive ability of finding the better solutions on TSP instances compared with some state-of-the-art algorithms.

Topics & Concepts

Travelling salesman problemSlime moldAnt colony optimization algorithmsMathematical proofConvergence (economics)Mathematical optimizationComputer science2-optAnt colonyState (computer science)AlgorithmEnumerationComputational intelligenceOrder (exchange)MathematicsArtificial intelligenceFinanceCell biologyEconomicsBiologyCombinatoricsEconomic growthGeometrySlime Mold and Myxomycetes ResearchBiocrusts and Microbial EcologyFungal Biology and Applications
A hybrid algorithm based on state-adaptive slime mold model and fractional-order ant system for the travelling salesman problem | Litcius