Batch process control from practice to 2D model predictive control

K. Yao, Yi Yang, F. Gao
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引用次数: 1

Abstract

Owing to the natures of batch processes, such as high nonlinearity, time-varying, and limited batch time duration, their control remains as a challenge to modern industries. This paper takes a typical batch process, injection molding, as an example to present a set of control schemes for batch processes. Advanced control algorithms such as adaptive control and model predictive control have been adopted to deal with the inherent process nonlinear and time-varying characteristics. These control algorithms are all focused on single cycle control performance. A multi-cycle two-dimensional model predictive learning control has been developed for batch processes control to take advantages of batch process repeatability. In this presentation, besides showing the control results/methods, the authors wish to illustrate the development evolution with their understanding of the natures of batch processes in general, injection molding in particular.
批量过程控制从实践到二维模型预测控制
由于批处理过程具有高度非线性、时变和有限的批处理时间等特点,其控制仍然是现代工业面临的一个挑战。本文以典型的成批工艺注射成型为例,提出了一套成批工艺的控制方案。采用自适应控制和模型预测控制等先进的控制算法来处理系统固有的过程非线性和时变特性。这些控制算法都集中在单周期控制性能上。针对批量过程可重复性的特点,提出了一种多周期二维模型预测学习控制方法。在本次演讲中,除了展示控制结果/方法外,作者还希望通过他们对批量工艺,特别是注塑成型性质的理解来说明其发展演变。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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