Multi agent collaborative search algorithm with adaptive weights

Cao, Li and Wang, Maocai and Vasile, Massimiliano and Dai, Guangming (2024) Multi agent collaborative search algorithm with adaptive weights. Expert Systems, 41 (12). e13709. ISSN 0266-4720 (https://doi.org/10.1111/exsy.13709)

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Abstract

This paper presents a new version of Multi Agent Collaborative Search (MACS) with Adaptive Weights (named MACS-AW). MACS is a multi-agent memetic scheme for multi-objective optimization originally developed to mix local and population-based search. MACS was proven to perform well on a number of test cases but had three limitations: (i) the amount of computational resources allocated to each agent was not proportional to the difficulty of the sub-problem the agent had to solve; (ii) the population-based search (called social actions in the following) was using only one differential evolution (DE) operator with fixed parameters; (iii) the descent directions were not adapted during convergence, leading to a loss of diversity. In this paper, we propose an improved version of MACS, that implements: (i) a new utility function to better manage computational resources; (ii) new social actions with multiple adaptive DE operators; (iii) an automatic adaptation of the descent directions with an innovative trigger to initiate adaptation. First, MACS-AW is compared against some state-of-art algorithms and its predecessor MACS2.1 on some standard benchmarks. Then, MACS-AW is applied to the solution of two real-life optimization problems and compared against MACS2.1. It will be shown that MACS-AW produces competitive results on most test cases analysed in this paper. On the standard benchmark test set, MACS-AW outperforms all other algorithms in 11 out of 30 cases and comes second in other 8 cases. On the two real engineering test set, MACS-AW and its predecessor obtain same results.

ORCID iDs

Cao, Li, Wang, Maocai, Vasile, Massimiliano ORCID logoORCID: https://orcid.org/0000-0001-8302-6465 and Dai, Guangming;