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Iterative learning strategy for a class of nonlinear controllers applied to constrained batch processes

机译:一类非线性控制器应用于约束批处理过程的迭代学习策略

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In this paper, we apply an iterative learning strategy to improve the performance of a class of nonlinear controllers, when they are applied to constrained batch processes. The idea is to exploit the control error information from the previous batches so that the corrected control inputs will iteratively improve the control performance. In this iterative learning scheme, we provide the convergence proof of the feed-forward input correction strategy as the batch cycle progresses. Furthermore, we extend the proposed strategy for handling input constraints, which in some cases the constraints may result in an accumulated error during the iteration process. To deal with this problem, we propose a segmented reference trajectory, where the learning strategy is applied for each segment with the assumption that a smooth transition between segments is established. Throughout the paper, a batch reactor control problem is used to illustrate how the proposed methods work in practice.
机译:在本文中,我们应用迭代学习策略,以提高一类非线性控制器的性能,当它们应用于受约束的批处理过程时。该想法是利用先前批次利用控制错误信息,以便校正的控制输入将迭代地提高控制性能。在这种迭代学习方案中,随着批量循环的进展,我们提供了前馈输入校正策略的收敛证明。此外,我们扩展了用于处理输入约束的提出的策略,这在某些情况下,约束可能导致迭代过程中的累计错误。为了解决这个问题,我们提出了一个分段的参考轨迹,其中,在假设建立段之间的平滑过渡的假设中,应用学习策略。在本文中,批量反应堆控制问题用于说明所提出的方法在实践中如何工作。

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