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首页> 外文期刊>Journal of Process Control >Latent variable model predictive control for trajectory tracking in batch processes: Alternative modeling approaches
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Latent variable model predictive control for trajectory tracking in batch processes: Alternative modeling approaches

机译:批处理中轨迹跟踪的潜在变量模型预测控制:替代建模方法

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摘要

Several Latent Variable Model (LVM) structures for modeling the time histories of batch processes are investigated from the view point of their suitability for use in Latent Variable Model Predictive Control (LV-MPC) [1] for trajectory tracking and disturbance rejection in batch processes. The LVMs are based on Principal Component Analysis (PCA). Two previously proposed approaches (Batch-Wise Unfolding (BWU) and Observation-Wise with Time-lag Unfolding (OWTU)) for modeling of batch processes [2] are incorporated in the LV-MPC and the benefits and drawbacks of each are explored. Furthermore, a new modeling approach (Regularized Batch-Wise Unfolding (RBWU)) is proposed to overcome the shortcomings of each of the previous modeling approaches while keeping the major benefits of both. The performances of the three latent variable modeling approaches in the course of LV-MPC for trajectory tracking and disturbance rejection are illustrated using two simulated batch reactor case studies. It is seen that the RBWU approach models the nonlinearity and time-varying properties of the batch almost as accurately as BWU approach, but needs fewer observations (batches) for model identification and results in a smoother PCA model. Recommendations are then given on which modeling approach to use under different scenarios.
机译:从适用于批处理过程中轨迹跟踪和干扰抑制的潜在变量模型预测控制(LV-MPC)[1]的角度出发,研究了几种用于对批处理过程的时间历史进行建模的潜在变量模型(LVM)结构。 。 LVM基于主成分分析(PCA)。 LV-MPC中采用了两种先前提出的方法(批处理明智展开(BWU)和时滞展开明智观察(OWTU))[2],并在LV-MPC中进行了探讨,并探讨了每种方法的优缺点。此外,提出了一种新的建模方法(常规批量明智展开(RBWU)),以克服每种先前建模方法的缺点,同时又保留了两者的主要优点。通过两个模拟间歇反应器案例研究,说明了三种潜在变量建模方法在LV-MPC过程中进行轨迹跟踪和干扰抑制的性能。可以看出,RBWU方法几乎与BWU方法一样准确地对批处理的非线性和时变属性进行建模,但是需要较少的观察(批次)来进行模型识别,并且可以使PCA模型更加平滑。然后给出在不同情况下使用哪种建模方法的建议。

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