基于核主成分回归模型的批处理约束批间最优控制

Ganping Li, Tao Huang, Jun Zhao
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引用次数: 0

摘要

针对输入约束下的批量过程控制问题,提出了一种批量到批量的最优控制方法。一般来说,获得批处理过程的精确机理模型是非常困难的。核主成分回归(KPCR)技术是一种非线性建模方法,具有较好的非线性数据处理能力。提出了一种基于KPCR模型的批对批最优控制策略,用于批过程的端点质量控制。在线性化的KPCR模型的基础上,通过最小化与终点产品质量有关的二次目标函数来获得控制输入。为了保证批处理过程的安全、顺利运行,需要考虑一定的输入约束。此外,KPCR模型逐批更新,以克服过程变化或干扰。数值仿真结果表明,在输入约束下,该方法可以提高不同批次的终端产品质量。该方法基于更新的KPCR模型,比基于更新的PCR模型的策略具有更好的对过程变化或干扰的适应性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Constrained batch-to-batch optimal control for batch process based on kernel principal component regression model
A batch-to-batch optimal control method is presented in the paper for batch process control under input constraints. Generally it is very difficult to acquire an accurate mechanistic model for a batch process. Kernel principal component regression (KPCR) technique is a nonlinear modeling method that has a better ability to deal with nonlinear data. A KPCR model based batch-to-batch optimal control strategy is developed for end-point quality control of batch process. On the basis of the linearized KPCR model, the control input is obtained by minimising a quadratic objective function concerning the end-point product quality. To ensure the safe, smooth operations of batch process, certain input constraints are taken into considered. Furthermore, the KPCR model is updated from batch-to-batch to overcome the process variations or disturbances. Numerical simulation shows that the method can improve the end-point product qualities from batch to batch under input constraints. Based on updated KPCR model, the approach has better adaptability for process variations or disturbances than the policy based on updated PCR model has.
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