Digital Twin-Enabled Real-Time Control in Robotic Additive Manufacturing via Soft Actor-Critic Reinforcement Learning
- URL: http://arxiv.org/abs/2501.18016v1
- Date: Wed, 29 Jan 2025 22:06:53 GMT
- Title: Digital Twin-Enabled Real-Time Control in Robotic Additive Manufacturing via Soft Actor-Critic Reinforcement Learning
- Authors: Matsive Ali, Sandesh Giri, Sen Liu, Qin Yang,
- Abstract summary: This research presents a novel approach integrating Soft Actor-Critic (SAC) reinforcement learning with digital twin technology.
We demonstrate our methodology using a Viper X300s robot arm, implementing two distinct control scenarios.
Results show rapid policy convergence and robust task execution in both simulated and physical environments.
- Score: 2.5709786140685633
- License:
- Abstract: Smart manufacturing systems increasingly rely on adaptive control mechanisms to optimize complex processes. This research presents a novel approach integrating Soft Actor-Critic (SAC) reinforcement learning with digital twin technology to enable real-time process control in robotic additive manufacturing. We demonstrate our methodology using a Viper X300s robot arm, implementing two distinct control scenarios: static target acquisition and dynamic trajectory following. The system architecture combines Unity's simulation environment with ROS2 for seamless digital twin synchronization, while leveraging transfer learning to efficiently adapt trained models across tasks. Our hierarchical reward structure addresses common reinforcement learning challenges including local minima avoidance, convergence acceleration, and training stability. Experimental results show rapid policy convergence and robust task execution in both simulated and physical environments, with performance metrics including cumulative reward, value prediction accuracy, policy loss, and discrete entropy coefficient demonstrating the effectiveness of our approach. This work advances the integration of reinforcement learning with digital twins for industrial robotics applications, providing a framework for enhanced adaptive real-time control for smart additive manufacturing process.
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