A comparative study of recent multi-objective metaheuristics for solving constrained truss optimisation problems

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Date

2021-08

Authors

Panagant, Natee
Pholdee, Nantiwat
Bureerat, Sujin
Mirjalili, Seyedali

Journal Title

Journal ISSN

Volume Title

Publisher

Springer

Abstract

Multi-objective truss optimisation is a research topic that has been less investigated in the literature compared to the single-objective cases. This paper investigates the comparative performance of fourteen new and established multi-objective metaheuristics when solving truss optimisation problems. The optimisers include multi-objective ant lion optimiser, multi-objective dragonfly algorithm, multi-objective grasshopper optimisation algorithm, multi-objective grey wolf optimiser, multi-objective multi-verse optimisation, multi-objective water cycle algorithm, multi-objective Salp swarm algorithm, success history-based adaptive multi-objective differential evolution, success history-based adaptive multi-objective differential evolution with whale optimisation, non-dominated sorting genetic algorithm II, hybridisation of real-code population-based incremental learning and differential evolution, differential evolution for multi-objective optimisation, multi-objective evolutionary algorithm based on decomposition, and unrestricted population size evolutionary multi-objective optimisation algorithm. The design problem is assigned to minimise structural mass and compliance subject to stress constraints. Eight classical trusses found in the literature are used for setting up the design test problems. Various optimisers are then implemented to tackle the problems. A comprehensive comparative study is given to critically analyse the performance of all algorithms in this problem area. The results provide new insights to the pros and cons of evolutionary multi-objective optimisation algorithms when addressing multiple, often conflicting objective in truss optimisation. The results and findings of this work assist with not only solving truss optimisation problem better but also designing customised algorithms for such problems.

Description

Keywords

Topology optimization, Size optimization, Sizing optimization, Genetic algorithm, Shape, Design, Approxımate, Search, Constrained optimization, Genetic algorithms, Heuristic algorithms, Population statistics, Trusses, Comparative performance, Conflicting objectives, Evolutionary multi-objectives, Multi objective evolutionary algorithms, Multi-objective differential evolutions, Multi-objective metaheuristics, Non-dominated sorting genetic algorithm - ii, Population based incremental learning, Multiobjective optimization

Citation

Yıldız, A. R. vd. (2021). "A comparative study of recent multi-objective metaheuristics for solving constrained truss optimisation problems". Archives of Computational Methods in Engineering, 28(5), 4031-4047.