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Dynamic latent variable regression for inferential sensor modeling and monitoring

机译:用于推动传感器建模和监控的动态潜在变量回归

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Canonical correlation analysis (CCA) and projection to latent structures (PLS) are popular statistical approaches for process modeling and monitoring. CCA focuses on the correlation structure only, while PLS focuses on maximizing the covariance between process variables Ⅹ and quality variables Y. In this article, a dynamic regularized latent variable regression (DrLVR) algorithm is proposed for dynamic data modeling and monitoring. DrLVR aims to maximize the projection of quality variables on the dynamic latent spaces of the process variables. A regularization term is incorporated into DrLVR to handle the collinear-ity issues. The dynamic monitoring scheme based on the DrLVR model is also developed. Both numerical simulations and the Tennessee Eastman process data are employed to demonstrate the effectiveness of DrLVR.
机译:典型相关性分析(CCA)和潜在结构的投影(PLS)是过程建模和监控的流行统计方法。 CCA仅重点关注相关结构,而PLS专注于最大化过程变量之间的协方差ⅹ和质量变量Y.在本文中,提出了一种动态正则化潜变回归(DRLVR)算法用于动态数据建模和监控。 DRLVR旨在最大限度地提高流程变量的动态潜空间上的质量变量的投影。正则化术语被纳入DRLVR以处理共链问题。还开发了基于DRLVR模型的动态监测方案。使用数值模拟和田纳西州伊斯坦德进程数据来展示DRLVR的有效性。

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