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Stochastic high-order internal model-based adaptive TILC with random uncertainties in initial states and desired reference points

机译:基于随机高阶内部模型的自适应TILC,其初始状态和所需参考点具有随机不确定性

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Many practical batch processes operate repetitively in industry and lack intermediate measurements for the interested process variables. Moreover, the initial states as well as the desired product objective often vary with different runs because of the existence of many uncertainties in practice. This work proposes a novel adaptive terminal iterative learning control method to deal with random uncertainties in desired terminal points and initial states. The run-varying initial states are formulated by a stochastic high-order internal model, which is further incorporated into the controller design. The desired terminal output is run dependent and is directly compensated like a feedback term in the controller. Only the system output at the endpoint of an operation is utilized to update the control signal. An estimation algorithm is designed to update the system Markov parameters as a whole. No explicit model information is involved in the controller design; thus, the proposed method is data driven and can be applied to nonlinear systems directly. Both the theoretical analysis and the simulation studies demonstrate the effectiveness of the proposed approach under random initial states and iteration-varying referenced terminal points. Copyright (c) 2016 John Wiley & Sons, Ltd.
机译:许多实用的批处理过程在工业中重复运行,并且缺少对感兴趣的过程变量的中间度量。而且,由于实践中存在许多不确定性,因此初始状态以及所需的产品目标通常会随运行的不同而变化。这项工作提出了一种新颖的自适应终端迭代学习控制方法,以处理所需终端点和初始状态中的随机不确定性。运行随机的初始状态由随机的高阶内部模型表示,该模型进一步并入控制器设计中。所需的端子输出取决于运行,并像控制器​​中的反馈项一样直接补偿。仅在操作终点处的系统输出可用于更新控制信号。设计了一种估计算法来整体上更新系统的马尔可夫参数。控制器设计中不涉及任何明确的模型信息。因此,该方法是数据驱动的,可直接应用于非线性系统。理论分析和仿真研究均证明了该方法在随机初始状态和迭代变化的参考终点下的有效性。版权所有(c)2016 John Wiley&Sons,Ltd.

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