Time-variant parameter estimation using a SVM Gray-Box model: Application to a CSTR Process

G. Acuña, Millaray Curilem
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引用次数: 3

Abstract

Gray-Box models (GBM) which combine a priori knowledge of a process -e.g. first principle equations- with a black-box modeling technique are useful when some parameters of the first-principle model -normally time-variant parameters cannot be easily determined. In this case the black-box part of the GBM can be used to model the influence of input and state variables on the evolution of those parameters. The most commonly used black-box technique for GBM is Artificial Neural Networks (ANN). However Support Vector Machine (SVM) has shown its usefulness by improving over the performance of different supervised learning methods, either as classification models or as regression models. In this paper, a kind of SVM -the Least-Square Support Vector Machine (LS-SVM)- is used to develop a GBM for a Continuous Stirred Tank Reactor (CSTR) process. The aim of the present work is then to build a GBM to estimate a time-varying parameter, ρ, of the CSTR process. Good results confirm that SVM can be effectively used for developing GBM to estimate time-varying parameters of non-linear processes like CSTR.
基于支持向量机灰盒模型的时变参数估计:在CSTR过程中的应用
当第一原理模型的某些参数(通常是时变参数)不能轻易确定时,将过程的先验知识(例如第一原理方程)与黑盒建模技术相结合的灰盒模型(GBM)是有用的。在这种情况下,GBM的黑盒部分可以用来模拟输入变量和状态变量对这些参数演化的影响。最常用的黑盒技术是人工神经网络(ANN)。然而,支持向量机(SVM)通过改进不同监督学习方法的性能,无论是作为分类模型还是作为回归模型,都显示了它的有用性。本文利用最小二乘支持向量机(LS-SVM)建立了连续搅拌槽式反应器(CSTR)过程的支持向量机模型。本工作的目的是建立一个GBM来估计CSTR过程的时变参数ρ。良好的结果证实了支持向量机可以有效地用于发展GBM来估计CSTR等非线性过程的时变参数。
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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