Bayesian Regularized Gaussian Mixture Regression with Application to Soft Sensor Modeling for Multi-Mode Industrial Processes

Jingbo Wang, Weiming Shao, Zhihuan Song
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引用次数: 3

Abstract

The Gaussian mixture regression (GMR) is an effective approach to predict those difficult-to-measure quality variables for industrial processes with multiple operating modes. However, the GMR easily gets stuck into overfitting in the scenario of insufficient labeled samples, particularly when the dimensionality of the secondary variables is high. To alleviate this issue, this paper proposes the Bayesian regularized GMR (BGMR), and applies it to soft sensor modeling. In the BGMR, an alternative model structure, which explicitly considers the functional dependency between the primary and secondary variables, is presented to facilitate the Bayesian regularization that is widely used for anti-overfitting. In addition, an efficient learning procedure is developed for the BGMR based on the expectation-maximization algorithm. The performance of the BGMR is evaluated through two case studies including a numerical example and a real-life industrial process, which demonstrates the effectiveness of the proposed approach.
贝叶斯正则化高斯混合回归及其在多模式工业过程软测量建模中的应用
对于具有多种运行模式的工业过程,高斯混合回归(GMR)是预测难以测量的质量变量的有效方法。然而,在标记样本不足的情况下,特别是当次要变量的维数很高时,GMR很容易陷入过拟合。为了解决这一问题,本文提出了贝叶斯正则化GMR (BGMR),并将其应用于软传感器建模。在BGMR中,提出了一种替代模型结构,该结构明确考虑了主变量和次变量之间的函数依赖性,以促进广泛用于反过拟合的贝叶斯正则化。在此基础上,提出了基于期望最大化算法的BGMR学习方法。通过两个案例研究,包括一个数值例子和一个实际的工业过程,评估了BGMR的性能,证明了所提出方法的有效性。
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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