支持向量回归在非线性过程软测量设计中的应用

S. Chitralekha, Sirish L. Shah
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引用次数: 8

摘要

近年来,随着高效且易于使用的计算工具的发展,软传感器领域的发展变得非常重要。其基本思想是将从过程中收集的输入输出数据中包含的信息转换为数学模型。这样的数学模型可以作为硬件传感器的低成本替代品。支持向量回归(SVR)工具就是这样一种计算工具,最近在系统识别文献中受到了很多关注,特别是因为它在建立非线性黑箱模型方面取得了成功。在这项工作中,我们展示了SVR作为开发非线性过程软传感器的有效且易于使用的工具的应用。在一个工业案例研究中,我们说明了基于SVR的工业规模醋酸乙烯乙烯(EVA)聚合物挤出工艺的稳态熔融指数软传感器的开发。基于支持向量回归的软测量在广泛的熔体指标范围内有效,在预测误差方面优于现有的基于非线性最小二乘的软测量。通过第二个案例研究,我们展示了SVR在实验室规模双螺杆聚合物挤出过程中以动态模型形式开发软传感器的应用。
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Support Vector Regression for soft sensor design of nonlinear processes
The field of soft sensor development has gained significant importance in the recent past with the development of efficient and easily employable computational tools for this purpose. The basic idea is to convert the information contained in the input-output data collected from the process into a mathematical model. Such a mathematical model can be used as a cost efficient substitute for hardware sensors. The Support Vector Regression (SVR) tool is one such computational tool that has recently received much attention in the system identification literature, especially because of its successes in building nonlinear blackbox models. In this work we demonstrate the application of SVR as an efficient and easy-to-use tool for developing soft sensors for nonlinear processes. In an industrial case study, we illustrate the development of a steady state Melt Index soft sensor for an industrial scale Ethylene Vinyl Acetate (EVA) polymer extrusion process using SVR. The SVR based soft sensor, valid over a wide range of melt indices, outperformed the existing nonlinear least squares based soft sensor in terms of lower prediction errors. Through a second case study, we demonstrate the application of SVR for developing soft sensors in the form of dynamic models for a laboratory scale twin screw polymer extrusion process.
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