Hybrid Heat Transfer Search and Passing Vehicle Search optimizer for multi-objective structural optimization

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摘要

A novel hybrid optimizer called Multi-Objective Hybrid Heat Transfer Search and Passing Vehicle Search optimizer (MOHHTS–PVS) is proposed while its performance is investigated for the structural design. The HHTS–PVS optimizer combines the merits of Heat Transfer Search (HTS) and Passing Vehicle Search (PVS). The design problem is posed for weight minimization and maximization of nodal deflection subject to multiple constraints of trusses. In the proposed optimizer, HTS acts as the main engine and PVS is added as an auxiliary stage into it to overcome its limitations and enhance the performance while simultaneously creating harmony between global diversification and local intensification of the search. Five challenging structure optimization benchmarks are optimized having discrete design variables. For performance validation, four state-of-the-art optimizers are compared with the proposed optimizer. Pareto Front Hypervolume and Spacing-to-Extent test are performance indicators for all the test examples. HHTS–PVS achieved the best non-dominated Pareto fronts with continuous and well diverse solutions set. The statistical analysis is done by performing Friedman’s rank test and allocating respective ranks to the optimizers. As per the outcomes, it is concluded that HHTS–PVS outperforms other optimizers and simultaneously shows its competency in solving large engineering design problems.

论文关键词:Hybrid optimizer,Truss design,Multi-objective problem,Meta-heuristics,Discrete design variables,Constrained problems

论文评审过程:Received 28 June 2020, Revised 3 September 2020, Accepted 21 October 2020, Available online 3 November 2020, Version of Record 24 December 2020.

论文官网地址:https://doi.org/10.1016/j.knosys.2020.106556