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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Online Learning ARMA Controllers With Guaranteed Closed-Loop Stability
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Online Learning ARMA Controllers With Guaranteed Closed-Loop Stability

机译:保证闭环稳定性的在线学习ARMA控制器

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This paper presents a novel online block adaptive learning algorithm for autoregressive moving average (ARMA) controller design based on the real data measured from the plant. The method employs ARMA input-output models both for the plant and the resulting closed-loop system. In a sliding window, the plant model parameters are identified first offline using a supervised learning algorithm minimizing an e-insensitive and regularized identification error, which is the window average of the distances between the measured plant output and the model output for the input provided by the controller. The optimal controller parameters are then determined again offline for another sliding window as the solution to a constrained optimization problem, where the cost is the e-insensitive and regularized output tracking error and the constraints that are linear inequalities of the controller parameters are imposed for ensuring the closed-loop system to be Schur stable. Not only the identification phase but also the controller design phase uses the input-output samples measured from the plant during online learning. In the developed online controller design method, the controller parameters can always be kept in a parameter region providing Schur stability for the closed-loop system. The e-insensitiveness provides robustness against disturbances, so does the regularization better generalization performance in the identification and the control. The method is tested on benchmark plants, including the inverted pendulum and dc motor models. The method is also tested on an emulated and also a real dc motor by online block adaptive learning ARMA controllers, in particular, Proportional-Integral-Derivative controllers.
机译:本文提出了一种新的在线块自适应学习算法,用于基于工厂实测数据的自回归移动平均(ARMA)控制器设计。该方法为工厂和最终的闭环系统采用ARMA输入-输出模型。在一个滑动窗口中,首先使用一种有监督的学习算法离线离线识别工厂模型参数,该算法将对电子不敏感的正则化识别误差降至最低,该误差是所测得的工厂输出与模型输出之间的距离的窗口平均值,该距离为控制器。然后,再次离线确定另一个控制器的最优控制器参数,作为约束优化问题的解决方案,其中代价是对电子不敏感且规则化的输出跟踪误差,并且施加了控制器参数的线性不等式约束以确保闭环系统是Schur稳定的。不仅识别阶段,而且控制器设计阶段都使用在线学习期间从工厂测得的输入输出样本。在开发的在线控制器设计方法中,控制器参数始终可以保留在一个参数区域中,从而为闭环系统提供Schur稳定性。电子不敏感度提供了抗干扰的鲁棒性,因此正则化在识别和控制中也具有更好的泛化性能。该方法在基准设备上进行了测试,包括倒立摆和直流电动机模型。还可以通过在线块自适应学习ARMA控制器(尤其是比例积分微分控制器)在仿真的直流电机和实际的直流电机上测试该方法。

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