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Networked controller and observer design of discrete-time systems with inaccurate model parameters

机译:具有不准确模型参数的离散时间系统的网络控制器和观察者设计

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This paper develops a novel off-policy Q-learning method to find the optimal observer gain and the optimal controller for achieving optimality of network-communication based linear discrete-time systems using only measured data. The primary advantage of this off-policy Q-learning method is that it can work for the linear discrete-time systems with inaccurate system model, unmeasurable system states and network-induced delays. To this end, an optimization problem for networked control systems composed of a plant, a state observer and a Smith predictor is formulated first. The Smith predictor is employed to not only compensate network-induced delays, but also make the separation principle hold, thus the observer and controller can be designed separately. Then, the off-policy Q-learning is implemented for learning the optimal observer gain and the optimal controller combined with the Smith predictor, such that a novel off-policy Q-learning algorithm is derived using only input, output and delayed estimated state of systems, not the inaccurate system matrices. The convergences of the iterative observer gain and the iterative controller gain are rigorously proven. Finally, simulation results are given to verify the effectiveness of the proposed method. (C) 2019 ISA. Published by Elsevier Ltd. All rights reserved.
机译:本文开发了一种新的截止型Q学习方法,可以使用仅使用测量数据实现基于网络通信的线性离散时间系统的最佳控制器和最佳控制器。这种违法Q学习方法的主要优点是它可以为具有不准确的系统模型,未估量的系统状态和网络引起的延迟工作的线性离散时间系统。为此,首先制定由工厂,状态观察者和史密斯预测器组成的网络控制系统的优化问题。史密斯预测器不仅采用了不仅补偿网络引起的延迟,而且还使分离原理保持,因此可以单独设计观察者和控制器。然后,实现截止策略Q学习以学习最佳观察者增益,并且最优控制器与史密斯预测器相结合,使得仅使用输入,输出和延迟估计状态导出新的截止Q学习算法系统,而不是不准确的系统矩阵。迭代观察者增益和迭代控制器增益的收敛经过严格证明。最后,给出了仿真结果来验证所提出的方法的有效性。 (c)2019 ISA。 elsevier有限公司出版。保留所有权利。

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