A new hybrid gravitational particle swarm optimisation-ACO with local search mechanism, PSOGSA-ACO-Ls for TSP

Loading...
Thumbnail Image

Downloads

0

Date issued

Journal Title

Journal ISSN

Volume Title

Publisher

Inderscience Publishers

Location

Signature

Abstract

The travelling salesman problem (TSP) is a hard combinatorial optimisation problem and a popular benchmarking problem at the same time. The TSP has also a number of practical real-world and industrial applications, such as routing in internet of things, IoT, networks, path planning in robotics and many others. In this paper, a new hybrid algorithm for the TSP is proposed; it combines gravitational particle swami optimisation (PSOGSA) and ACO, and is called ant supervised by gravitational particle swami optimisation with a local search, PSOGSA-ACO-LS. PSOGSA is used to optimise ACO settings while a local search mechanism, 2-Opt is employed by ACO to ameliorate its local solutions. The proposed method is evaluated using a set a test benches from the TSPLib database including: eil51, berlin52, st70, eil76, rat99, eil101, kroA100, and kroA200. Experimental results show that ACO-GPSO-LS is able to solve the set of TSP instances listed below including the large TSP data sets: kroA100, eli101 and kroA200.

Description

Subject(s)

particle swarm optimisation, PSO, ant colony optimisation, ACO, travelling salesman problem, TSP, local search, hybridisation

Citation

International Journal of Intelligent Engineering Informatics. 2019, vol. 7, issue 4, p. 384-398.