Mixed-Layout Multi-Type Factory Remanufacturing System Optimization via LLM-TD3

Authors

  • Xiwang Guo Author
  • Yujie Feng wu Author
  • Mengchu Zhou Author

Keywords:

Large language models, Twin Delayed Deep Deterministic Policy Gradient, Remanufacturing optimization problem, Optimization, Mixed Integer Programing, Petri net.

Abstract

This work presents a mixed-layout, multi-type factory remanufacturing system optimization problem that considers both linear and U-shaped disassembly lines, with the goal of maximizing profit, and formulates its corresponding mathematical model. Its solution has four stages: product allocation, disassembly line selection, task allocation, and component transportation. Based on the characteristics of each stage, Large Language Model (LLM) is responsible for product allocation and disassembly line selection, while Twin Delayed Deep Deterministic Policy Gradient optimizes task allocation and component transportation according to the LLM’s results. By providing the estimated profits of products under different factory and disassembly line configurations and designing tailored action-state space, the proposed method interacts with the environment to solve the problem. By using various experimental cases, we compare it with CPLEX, Deep Deterministic Policy Gradient, Soft Actor-Critic, and Advantage Actor-Critic to verify its feasibility and effectiveness, demonstrating its potential as a novel solution method.

Downloads

Download data is not yet available.
3

Downloads

Published

2026-01-04

How to Cite

Mixed-Layout Multi-Type Factory Remanufacturing System Optimization via LLM-TD3. (2026). International Journal of Artificial Intelligence and Green Manufacturing, 1(4). https://hopeembark.org/index.php/IJGMAI/article/view/61

Similar Articles

1-10 of 18

You may also start an advanced similarity search for this article.