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Digital Twin-Driven TD3 Reinforcement Learning for Welding Path Optimization and Deformation Control of Large Mechanical Components

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  • Bin Duan

    (Xinxiang Vocational and Technical College, China)

Abstract

To tackle both welding deformation in large mechanical components and the poor dynamic adaptability of traditional open-loop path planning, this study proposed a digital twin-driven Twin Delayed Deep Deterministic Policy Gradient (TD3) reinforcement learning framework for online collaborative welding path optimization and deformation control. The framework integrated data from multiple sensing sources to build a high-dimensional state space and continuous 3D action space for welding parameters. A multi-objective reward function was designed, and the framework employed a finite, element–experiment hybrid training mechanism together with the TD3 algorithm to reduce the simulation-to-reality gap and mitigate action-value overestimation. Experiments on Q345 steel box girders showed that the framework reduced maximum angular deformation to 1.82 mm/m, increased the weld qualification rate to 96.2%, and improved both energy consumption and invalid path ratio. The system also demonstrated strong robustness under disturbances, while multi-field state fusion accelerated strategy convergence and enabled closed-loop intelligent welding for high-precision manufacturing.

Suggested Citation

  • Bin Duan, 2026. "Digital Twin-Driven TD3 Reinforcement Learning for Welding Path Optimization and Deformation Control of Large Mechanical Components," International Journal of Intelligent Information Technologies (IJIIT), IGI Global Scientific Publishing, vol. 22(1), pages 1-19, January.
  • Handle: RePEc:igg:jiit00:v:22:y:2026:i:1:p:1-19
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