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Precision Tracking Motion Control Using Deep GRU Network

机译:深度GRU网络精密跟踪运动控制

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To meet the requirement of high-performance motion accuracy and complex trajectory variation in modern industry, a neural network feedforward control framework is proposed in this article. This framework is based on the latest recurrent network structure (RNN) method with gate recurrent unit (GRU). By predicting the tracking error of a normal PID controller using deep GRU network, the proposed framework can achieve equal control performance with iterative learning control (ILC) without any actual iterations. Furthermore, the proposed framework can effectively tackle the problem of trajectory variation which is the widely recognized obstacle for ILC. Comparative experiments between traditional PID, ILC, and the proposed GRU control scheme (GRUC) are carried out on a linear-motor-driven stage. Essentially, the proposed GRUC scheme provides a rather excellent feedforward control scheme without iteration and trajectory repetition, and has good potential in industrial applications.
机译:为满足现代行业的高性能运动精度和复杂的轨迹变化的要求,本文提出了一种神经网络前馈控制框架。该框架基于具有栅极复制单元(GRU)的最新反复网络结构(RNN)方法。通过使用深GRU网络预测普通PID控制器的跟踪误差,所提出的框架可以通过迭代学习控制(ILC)实现相同的控制性能而没有任何实际迭代。此外,所提出的框架可以有效地解决轨迹变化问题,这是ILC广泛认可的障碍物。在线电动机驱动阶段进行传统PID,ILC和所提出的GRU控制方案(GRUC)之间的比较实验。基本上,所提出的Gruc方案提供了一个相当优异的前馈控制方案,而无需迭代和轨迹重复,并且具有良好的工业应用潜力。

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