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Cautious Control of Industrial Process Variability With Uncertain Input and Disturbance Model Parameters

机译:输入和扰动模型参数不确定的工业过程变异性的谨慎控制

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摘要

This article discusses a method for controlling variation in industrial processes when the model parameters are estimated from data and subject to uncertainty. A static input/output relationship with multiple input variables and an integrated moving average disturbance model are assumed. Most robust control methods use deterministic measures of uncertainty and a control objective that focuses on worst-case performance. This work uses a probabilistic measure of uncertainty and a control objective that relates more closely to minimizing variation, where parameter estimation errors are treated simply as an additional source of variability. We show that this approach results in a higher probability of closed-loop stability than the standard minimum variance control and can substantially lessen the adverse impact of parameter uncertainty on closed-loop variance. Guidelines for designing and evaluating the experiment used to estimate the model parameters are also discussed.
机译:本文讨论了一种从数据估计模型参数并且存在不确定性时控制工业过程变化的方法。假定具有多个输入变量的静态输入/输出关系和集成的移动平均扰动模型。最鲁棒的控制方法使用不确定性的确定性度量和侧重于最坏情况性能的控制目标。这项工作使用了一种不确定性的概率测度和一个与最小化偏差更紧密相关的控制目标,在该控制目标中,参数估计误差被简单地视为附加的偏差源。我们表明,这种方法比标准最小方差控制产生更高的闭环稳定性概率,并且可以大大减少参数不确定性对闭环方差的不利影响。还讨论了设计和评估用于估计模型参数的实验的准则。

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