Digital Twin Enhanced Assembly Based on Deep Reinforcement Learning

Junzheng Li, Dong Pang, Yu Zheng, Xinyi Le
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引用次数: 2

Abstract

Discrete manufacturing is becoming a popular modality, which places a higher demand on the flexibility of the production line. Traditional assembly lines require extensive manual design and cannot meet the need for flexibility. Due to the rise of reinforcement learning, we suspect that modern algorithms are crucial to further improve the flexibility of assembly. In this paper, we propose a digital twin enhanced assembly method with deep reinforcement learning. A digital twin model of the assembly line is first built. Then, the deep deterministic policy gradient based reinforcement learning agent is trained on the digital twin model. The simulation of the reinforcement learning environment is based on a mixture of simulation engine and real signals. Thus, we can balance the training efficiency and the simulation accuracy. Finally, to validate our proposed method, peg-in-hole assembly experiments were conducted and good results were observed.
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基于深度强化学习的数字孪生增强装配
离散制造正成为一种流行的生产方式,这对生产线的灵活性提出了更高的要求。传统的装配线需要大量的人工设计,不能满足灵活性的需要。由于强化学习的兴起,我们怀疑现代算法对于进一步提高装配的灵活性至关重要。本文提出了一种基于深度强化学习的数字孪生增强装配方法。首先建立了装配线的数字孪生模型。然后,在数字孪生模型上训练基于深度确定性策略梯度的强化学习智能体。强化学习环境的仿真是基于仿真引擎和真实信号的混合。因此,我们可以平衡训练效率和仿真精度。最后,为验证所提出的方法,进行了钉孔装配实验,取得了良好的效果。
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