基于协正则最小二乘回归的半监督软传感器和特征排序在聚合间歇过程中的应用

Vasco Ferreira, F. Souza, R. Araújo
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引用次数: 4

摘要

本文将基于协同训练的半监督回归模型应用于软测量上下文,并结合特征排序方法去除不相关特征。对半监督回归和特征排序方法进行了描述,并给出了所提出的特征排序方法的理论基础。为了评价所提出的方法,以实际聚合工业过程为例。结果表明,所设计的特征排序和选择改进了半监督回归模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semi-supervised soft sensor and feature ranking based on co-regularised least squares regression applied to a polymerization batch process
In this paper a semi-supervised regression model based on co-training is applied on the soft sensor context, together with a feature ranking approach which has the purpose of removing irrelevant features. The description of both the methods of semi-supervised regression and feature ranking, as well as the theorethical foundation of the proposed feature ranking approach are also given. To evaluate the proposed methodology, a real-world polymerization industrial process was used as example. The results demonstrate that the devised feature ranking and selection improves the semi-supervised regression model.
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