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首页> 外文期刊>IEEE transactions on industrial informatics >Dynamic Variational Bayesian Student's T Mixture Regression With Hidden Variables Propagation for Industrial Inferential Sensor Development
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Dynamic Variational Bayesian Student's T Mixture Regression With Hidden Variables Propagation for Industrial Inferential Sensor Development

机译:动态变分贝叶斯学生的T混合回归与隐藏变量传播,用于工业推理传感器开发

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摘要

Data-driven inferential sensors have been increasingly applied to estimating important yet difficult-to-measure quality-relevant variables in industrial processes. However, complicated data characteristics (such as nonlinearities, non-Gaussianities, uncertainties, outlying data, etc.) existing in industrial datasets impose significant difficulties in developing inferential sensors with high accuracy. In particular, modeling process dynamics with sequential data is practically very important but quite challenging. In order to deal with such issues, this article proposes a dynamic variational Bayesian Student's t mixture regression (D-VBSMR) with hidden variables propagation. In D-VBSMR, the probabilistic mixture model structure can deal with nonlinearities, non-Gaussianities, and uncertainties; meanwhile, the Student's t-distribution with heavy tails enables D-VBSMR to be highly robust against outliers. Most importantly, the first-order Markov chain is used to connect hidden state variables, such that the process dynamic characteristic can be effectively modeled. In addition, parameter learning for D-VBSMR is also developed by adopting the variational inference framework and forward-backward algorithm. Experimental results on both a numerical example and a real industrial process validate the effectiveness and advantages of the proposed method.
机译:数据驱动的推理传感器已经越来越多地应用于估计工业过程中的重要又难以测量的质量相关变量。然而,在工业数据集中存在的复杂数据特征(例如在工业数据集中存在的非线性,非高斯,不确定性,偏远数据等)在高精度的推理传感器中施加了显着的困难。特别地,具有顺序数据的建模过程动态实际上非常非常重要,但非常具有挑战性。为了处理此类问题,本文提出了一种动态变化的贝叶斯学生的T混合回归(D-VBSMR),具有隐藏变量传播。在D-VBSMR中,概率混合模型结构可以应对非线性,非高斯和不确定性;与此同时,学生的T分布具有重型尾部,使D-VBSMR能够对异常值非常强大。最重要的是,首级马尔可夫链用于连接隐藏状态变量,从而可以有效地建模处理动态特性。此外,还通过采用变分推理框架和前后算法来开发D-VBSMR的参数学习。关于数字示例和实际工业过程的实验结果验证了所提出的方法的有效性和优点。

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