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Semi-supervised variational Bayesian Student's t mixture regression and robust inferential sensor application

机译:半监督变分贝叶斯学生t混合回归和鲁棒推断传感器应用

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Data-driven inferential sensor has been widely adopted to estimate key quality relevant variables. However, industrial dataset usually presents many characteristics such as nonlinearity, non-Gaussianity, insufficiency of labeled samples, contamination of outliers, etc. These intractable characteristics have rendered significant difficulties in developing high-performance inferential sensor. This paper deals with these issues in the probabilistic way by proposing a robust semi-supervised variational Bayesian Student's t mixture regression (referred to as the 'SSVBSMR'). Specifically, in the SSVBSMR, the nonlinear and non-Gaussian characteristics are handled by Bayesian finite mixture models (FMM), and the Student's t distribution is employed to constitute the components of FMM, which makes the SSVBSMR robust against outliers. In addition, the SSVBSMR exploits unlabeled samples to remedy the insufficiency of labeled samples. Furthermore, the SSVBSMR treats all model parameters as stochastic rather than deterministic such that the model selection can be automatically and efficiently completed and some limitations of the maximum likelihood method (such as overfitting and singular covariance) can be alleviated. A variational Bayesian expectation-maximization-based learning algorithm is also developed to train the SSVBSMR. Two cases are carried out to investigate the performance of the SSVBSMR, and the results demonstrate its effectiveness and feasibility compared to several state-of-the-art methods.
机译:数据驱动的推理传感器已被广泛采用来估计关键质量相关变量。但是,工业数据集通常表现出许多特性,例如非线性,非高斯性,标记样品不足,离群值污染等。这些难处理的特性给开发高性能推理传感器带来了很大的困难。本文通过提出鲁棒的半监督变分贝叶斯学生t混合回归(称为“ SSVBSMR”)以概率方式解决了这些问题。具体而言,在SSVBSMR中,非线性和非高斯特性由贝叶斯有限混合模型(FMM)处理,并采用Student's t分布构成FMM的成分,这使SSVBSMR能够抵抗异常值。另外,SSVBSMR利用未标记的样本来弥补标记样本的不足。此外,SSVBSMR将所有模型参数视为随机模型,而不是确定性模型,从而可以自动有效地完成模型选择,并且可以减轻最大似然法的某些局限性(例如过度拟合和奇异协方差)。还开发了基于变分贝叶斯期望最大化的学习算法来训练SSVBSMR。进行了两个案例来研究SSVBSMR的性能,与几种最先进的方法相比,结果证明了其有效性和可行性。

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