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Reinforcement adaptive learning neural-net-based friction compensation control for high speed and precision

机译:基于增强自适应学习神经网络的摩擦补偿控制,实现高速,高精度

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摘要

There is an increasing number of applications in high-precision motion control systems in manufacturing, i.e., ultra-precision machining, assembly of small components and micro devices. It is very difficult to assure such accuracy due to many factors affecting the precision of motion, such as frictions and disturbances in the drive system. The standard proportional-integral-derivative (PID) type servo control algorithms are not capable of delivering the desired precision under the influence of frictions and disturbances. In this paper, the frictions are identified by a neural net, which has a critic element to measure the system performance. Then, the weight adaptation rule, defined as reinforcement adaptive learning, is derived from the Lyapunov stability theory. Therefore the proposed scheme can be applicable to a wide class of mechanical systems. The simulation results on a 1-degree-of-freedom mechanical system verify the effectiveness of the proposed algorithm.
机译:高精度运动控制系统在制造中的应用越来越多,即超精密加工,小零件和微型设备的组装。由于许多影响运动精度的因素(例如驱动系统中的摩擦和干扰),很难保证这种精度。标准的比例积分微分(PID)类型的伺服控制算法在摩擦和干扰的影响下无法提供所需的精度。在本文中,摩擦是通过神经网络识别的,该神经网络具有评估系统性能的批评元素。然后,从李雅普诺夫稳定性理论中得出权重适应规则,即强化适应学习。因此,所提出的方案可以适用于各种各样的机械系统。在1自由度机械系统上的仿真结果验证了所提算法的有效性。

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