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Two-archive evolutionary algorithm for constrained multi objective optimization

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journal contribution
posted on 2025-08-01, 00:08 authored by K Li, R Chen, G Fu, X Yao
When solving constrained multi-objective optimization problems, an important issue is how to balance convergence, diversity and feasibility simultaneously. To address this issue, this paper proposes a parameter-free constraint handling technique, a two-archive evolutionary algorithm, for constrained multi-objective optimization. It maintains two collaborative archives simultaneously: one, denoted as the convergence-oriented archive (CA), is the driving force to push the population toward the Pareto front; the other one, denoted as the diversity-oriented archive (DA), mainly tends to maintain the population diversity. In particular, to complement the behavior of the CA and provide as much diversified information as possible, the DA aims at exploring areas under-exploited by the CA including the infeasible regions. To leverage the complementary effects of both archives, we develop a restricted mating selection mechanism that adaptively chooses appropriate mating parents from them according to their evolution status. Comprehensive experiments on a series of benchmark problems and a real-world case study fully demonstrate the competitiveness of our proposed algorithm, in comparison to five state-of-the-art constrained evolutionary multi-objective optimizers.

Funding

2017YFC0804003

EP/J017515/1

EP/P005578/1

Engineering and Physical Sciences Research Council (EPSRC)

IEC\NSFC\170243

KQTD2016112514355531

Ministry of Science and Technology of China

Royal Society (Government)

Science and Technology Innovation Committee Foundation of Shenzhen

Shenzhen Peacock Plan

ZDSYS201703031748284

History

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Published under a CC-BY licence.

Notes

This is the author accepted manuscript. The final version is available from the publisher via the DOI in this record

Journal

IEEE Transactions on Evolutionary Computation

Publisher

Institute of Electrical and Electronics Engineers (IEEE)

Version

  • Accepted Manuscript

Language

en

FCD date

2019-03-15T09:04:24Z

FOA date

2019-03-15T09:52:55Z

Citation

Published online 19 July 2018

Department

  • Computer Science
  • Engineering

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