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首页> 外文期刊>Journal of Process Control >A review on data-driven linear parameter-varying modeling approaches: A high-purity distillation column case study
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A review on data-driven linear parameter-varying modeling approaches: A high-purity distillation column case study

机译:数据驱动的线性可变参数建模方法综述:高纯度蒸馏塔案例研究

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Model-based control strategies are widely used for optimal operation of chemical processes to respond to the increasing performance demands in the chemical industry. Yet, obtaining accurate models to describe the inherently nonlinear, time-varying dynamics of chemical processes remains a challenge in most model-based control applications. This paper reviews data-driven, Linear Parameter-Varying (LPV) modeling approaches for process systems by exploring and comparing various identification methods on a high-purity distillation column case study. Several LPV identification methods that utilize input-output and series expansion model structures are explored. Two LPV identification perspectives are adopted:(i) the local approach, which corresponds to the interpolation of Linear Time-Invariant (LTI) models identified at different steady-state operating points of the system and (ii) the global approach, where a parametrized LPV model structure is identified directly using a global data set with varying operating points. For the local approach, various model interpolation schemes are studied under an Output Error(OE) noise setting, whereas in the global case, a polynomial parametrization based OE prediction error minimization approach, an Orthonormal Basis Functions (OBFs) based model estimator and a Least- Square Support Vector Machine (LS-SVM) based non-parametric approach are investigated. Through extensive simulation studies, the aforementioned LPV identification approaches are analyzed in terms of the attainable model accuracy and local frequency response behavior of the obtained models. Recommendations are provided to achieve adequate choice between the methods for a particular process system at hand.
机译:基于模型的控制策略已广泛用于化学过程的最佳操作,以响应化学工业中不断增长的性能要求。然而,在大多数基于模型的控制应用中,获取准确的模型来描述化学过程固有的非线性,时变动力学仍然是一个挑战。本文通过在高纯度蒸馏塔案例研究中探索和比较各种识别方法,回顾了过程系统的数据驱动,线性参数变化(LPV)建模方法。探索了几种利用输入-输出和级数展开模型结构的LPV识别方法。采用了两种LPV识别视角:(i)局部方法,对应于在系统的不同稳态操作点处识别的线性时不变(LTI)模型的插值;以及(ii)全局方法,其中参数化LPV模型结构是使用具有不同工作点的全局数据集直接识别的。对于局部方法,在输出误差(OE)噪声设置下研究了各种模型插值方案,而在整体情况下,基于多项式参数化的OE预测误差最小化方法,基于正交基函数(OBF)的模型估计器和最小-研究了基于平方支持向量机(LS-SVM)的非参数方法。通过广泛的仿真研究,根据可获得的模型精度和所获得模型的局部频率响应行为,分析了上述LPV识别方法。提供了一些建议,以在手头特定过程系统的方法之间实现适当的选择。

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