A servo system tracking controller based on neural networks

P. Boyagoda, M. Nakaoka
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Abstract

A novel neural network (NN) based trajectory tracking controller for a servo system that also incorporates a knowledge-based control scheme is proposed in this paper. A decentralized control scheme, which neither requires a priori knowledge of the plant nor learning of the system dynamics, is introduced to deactivate the coupled dynamics associated with certain systems like robotic manipulators. The NN is employed to classify the system input-output measurements into several patterns depending on the displacement and velocity deviations from the respective desired trajectories. A proportional plus derivative gain control action is determined from a look-up table corresponding to the classification from the NN. Furthermore, an integrator is applied to enhance system performance. Several PD gains are introduced in a staggered format relative to the magnitudes of the displacement and velocity tracking errors, resulting in a controller that is robust to both structured and unstructured uncertainties.
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基于神经网络的伺服系统跟踪控制器
本文提出了一种新的基于神经网络的伺服系统轨迹跟踪控制器,并结合了基于知识的控制方案。引入了一种分散控制方案,既不需要对对象的先验知识,也不需要对系统动力学的学习,以使与某些系统(如机器人操纵器)相关的耦合动力学失效。利用神经网络将系统输入-输出测量值根据各自期望轨迹的位移和速度偏差分类为几种模式。比例加导数增益控制动作由与神经网络分类相对应的查找表确定。此外,还采用了积分器来提高系统性能。相对于位移和速度跟踪误差的大小,以交错格式引入了几个PD增益,从而使控制器对结构化和非结构化不确定性都具有鲁棒性。
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