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Bayesian Nonlinear Gaussian Mixture Regression and its Application to Virtual Sensing for Multimode Industrial Processes

机译:Bayesian非线性高斯混合回归及其在多模工业过程虚拟传感中的应用

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Virtual sensors have established themselves as effective tools in process industries for online estimating variables that are crucial but difficult to measure. However, multimode industrial processes render developing high-accuracy virtual sensors quite challenging. The main difficulties lie in that, in multimode processes, the distributions of process data are strongly non-Gaussian and the mathematical relationships between the explanatory and primary variables are highly nonlinear. Even within one operating mode, the primary variables could depend on the explanatory variables in nonlinear ways. In order to address these issues, this article proposes a virtual sensing approach named Bayesian nonlinear Gaussian mixture regression (BNGMR) with the aid of single-hidden layer feedforward neural networks (SLFNs). In the BNGMR, a fully Bayesian model structure that absorbs the merits of SLFNs and the mixture models is designed. In addition, we develop a training algorithm for the BNGMR to realize predictive virtual sensor development based on variational inference. Extensive assessments of the performance of the BNGMR are carried out using both artificial example and real-world industrial processes. The experiments have demonstrated the predictive advantage of the BNGMR over several benchmark methods and also have provided practitioners with good illustrations. Note to Practitioners-Although the case studies on two real-world industrial processes have verified the effectiveness and feasibility of the Bayesian nonlinear Gaussian mixture regression (BNGMR) for industrial applications, it is still worth emphasizing that before training the BNGMR, some important works on data preprocessing should be done, which include: 1) careful selection of explanatory variables that are closely related to primary variables; 2) time alignment matching between primary and explanatory variables; and 3) dealing with samples with missing values (for example, removing them) and elimination of outliers. We suggest to complete 1) and 2) based on process mechanisms and to pay particular attention to removing the outlier, as the presence of outliers could skew the estimations of Gaussian components and result in significant performance deterioration.
机译:虚拟传感器已将自己作为工艺行业的有效工具,用于在线估计变量至关重要但难以衡量。然而,多模工业过程呈现出高精度虚拟传感器非常具有挑战性。主要困难在于,在多模过程中,过程数据的分布是强高斯的,解释性和初级变量之间的数学关系是高度非线性的。即使在一个操作模式中,初级变量也可能取决于非线性方式的解释变量。为了解决这些问题,本文提出了一种借助单隐藏的层前馈神经网络(SLFN)的虚拟感测方法,名为贝叶斯非线性高斯混合回归(BNGMR)。在BNGMR中,设计了一种吸收SLFN的优点和混合模型的完全贝叶斯模型结构。此外,我们为BNGMR开发了一个训练算法,以实现基于变分推理的预测虚拟传感器开发。利用人工示例和现实世界的工业过程进行了对BNGMR性能的广泛评估。实验证明了BNGMR在几种基准方法上的预测优势,并且还提供了具有良好插图的从业者。向从业者 - 虽然对两个现实世界工艺的案例研究已经验证了贝叶斯非线性高斯混合回归(BNGMR)对工业应用的效果和可行性,但仍然值得强调,在培训BNGMR之前,一些重要的作品应完成数据预处理,其中包括:1)仔细选择与初级变量密切相关的解释性变量; 2)主要和解释变量之间的时间对齐; 3)处理具有缺失值的样本(例如,去除它们)并消除异常值。我们建议根据过程机制建议完成1)和2)并特别注意拆除异常值,因为异常值的存在可以歪斜高斯组分的估计,导致显着的性能恶化。

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