使用非高斯实时建模的软传感器开发

Jiu-sun Zeng, Lei Xie, Chuanhou Gao, Jingjing Sha
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引用次数: 6

摘要

本文介绍了一种新的基于即时(JIT)学习的非高斯过程建模软传感器。大多数JIT建模使用基于距离的相似性度量进行局部建模,这可能不适合许多表现出非高斯行为的工业过程。由于大多数工业过程是非高斯的,因此采用非高斯回归(NGR)技术提取与响应变量在互信息意义上相关的非高斯独立分量。然后对提取的独立分量进行支持向量数据描述(SVDD),构建新的相似度度量。基于相似性度量,提出了一种新的JIT建模方法。数值算例和工业过程的应用研究表明,所提出的JIT模型具有较好的预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Soft sensor development using non-Gaussian Just-In-Time modeling
This paper introduces a novel Just-In-Time (JIT) learning based soft sensor for modeling of non-Gaussian process. Most of JIT modeling uses distance based similarity measure for local modeling, which may be inappropriate for many industrial processes exhibiting non-Gaussian behaviors. Since most of industrial processes are non-Gaussian, a non-Gaussian regression (NGR) technique is used to extract non-Gaussian independent components that are correlated to response variable in the sense of mutual information. Support vector data description (SVDD) is then performed on the extracted independent components to construct a new similarity measure. Based on the similarity measure, a novel JIT modeling procedure is proposed. Application studies on a numerical example as well as an industrial process confirm that the proposed JIT model can achieve good predictive accuracy.
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