An Evolutionary Learning Whale Optimization Algorithm for Disassembly and Assembly Hybrid Line Balancing Problems

  • Xinshuo Cui
  • , Qingbo Meng
  • , Jiacun Wang
  • , Xiwang Guo
  • , Peisheng Liu
  • , Liang Qi
  • , Shujin Qin
  • , Yingjun Ji
  • , Bin Hu

Research output: Contribution to journalArticlepeer-review

3 Scopus citations

Abstract

In order to protect the environment, an increasing number of people are paying attention to the recycling and remanufacturing of EOL (End-of-Life) products. Furthermore, many companies aim to establish their own closed-loop supply chains, encouraging the integration of disassembly and assembly lines into a unified closed-loop production system. In this work, a hybrid production line that combines disassembly and assembly processes, incorporating human–machine collaboration, is designed based on the traditional disassembly line. A mathematical model is proposed to address the human–machine collaboration disassembly and assembly hybrid line balancing problem in this layout. To solve the model, an evolutionary learning-based whale optimization algorithm is developed. The experimental results show that the proposed algorithm is significantly faster than CPLEX, particularly for large-scale disassembly instances. Moreover, it outperforms CPLEX and other swarm intelligence algorithms in solving large-scale optimization problems while maintaining high solution quality.

Original languageEnglish
Article number256
JournalMathematics
Volume13
Issue number2
DOIs
StatePublished - Jan 2025

Keywords

  • carbon savings
  • disassembly line balancing
  • disassembly sequence
  • discrete whale optimization algorithm
  • sustainability

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