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Data-Based Modeling and Control of Nylon-6, 6 Batch Polymerization

机译:Nylon-6、6批聚合的基于数据的建模和控制

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摘要

This work addresses the problem of modeling the complex nonlinear behavior of the nylon-6, 6 batch polymerization process and then subsequently tracking trajectories of important process variables, namely the reaction medium temperature and reactor pressure, using model predictive control. To this end, a data-based multi-model approach is proposed in which multiple local linear models are identified from previous batch data using latent variable regression and then combined using an appropriate (continuous) weighting function that arises from fuzzy $c$-means clustering. The proposed approach unifies the concepts of auto-regressive exogenous (ARX) modeling, latent variable regression techniques, fuzzy c-means clustering, and multiple local linear models in an integrated framework capable of capturing the nonlinearities and multivariate nature of batch data. The resulting data-based model is then used to formulate a trajectory tracking predictive controller. Through simulation studies, the modeling approach is shown to capture the major nonlinearities in the nylon-6, 6 polymerization process and closed-loop simulation results demonstrate the efficacy of the proposed predictive controller and illustrate its advantages over existing trajectory tracking approaches such as conventional proportional-integral control and latent variable model predictive control.
机译:这项工作解决了以下问题:对尼龙6、6批次聚合过程的复杂非线性行为进行建模,然后使用模型预测控制来跟踪重要过程变量的轨迹,即反应介质温度和反应器压力。为此,提出了一种基于数据的多模型方法,其中使用潜在变量回归从先前的批处理数据中识别出多个局部线性模型,然后使用由模糊$ c $ -means产生的适当(连续)加权函数进行组合聚类。所提出的方法将自动回归外生(ARX)建模,潜在变量回归技术,模糊c均值聚类和多个局部线性模型的概念统一在一个能够捕获批处理数据的非线性和多元性质的集成框架中。然后将所得的基于数据的模型用于制定轨迹跟踪预测控制器。通过仿真研究,表明该建模方法能够捕获尼龙6、6聚合过程中的主要非线性,并且闭环仿真结果证明了所提出的预测控制器的功效,并说明了其相对于现有轨迹跟踪方法(如常规比例跟踪)的优势-积分控制和潜在变量模型预测控制。

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