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Process modeling by bayesian latent variable regression

机译:贝叶斯潜变量回归的过程建模

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摘要

Large quantities of measured data are being routinely collected in various industries and used for extracting linear models for tasks such as process control, fault diagnosis, and process monitoring. Existing linear modeling methods, however, do not fully utilize all the information contained in the measurements. A new approach for linear process modeling makes maximum use of available process data and incorporation of Bayesian latent-variable regression (BLVR) permits extraction and incorporation of knowledge about the statistical behavior of measurements in developing linear process models. Furthermore, BLVR can handle noise in inputs and outputs, collinear variables. The model is usually more accurate than those of existing methods, including OLS, PCR, and PLS. BLVR considers a univariate output and assumes the underlying variables and noise to be Gaussian, but it can be used for multivariate outputs and other distributions. An empirical Bayes approach is developed to extract the prior information from historical data or maximum-likelihood solution of available data. Examples of steady-state, dynamic and inferential modeling demonstrate the superior accutions are violated. The relationship between BLVR and existing methods and opportunities for future work based on this framework are also discussed.
机译:在各个行业中,通常会收集大量的测量数据,并将其用于提取线性模型以执行诸如过程控制,故障诊断和过程监控之类的任务。但是,现有的线性建模方法不能完全利用测量中包含的所有信息。线性过程建模的新方法最大程度地利用了可用的过程数据,并且合并了贝叶斯潜变量回归(BLVR)允许在开发线性过程模型时提取和合并有关测量的统计行为的知识。此外,BLVR可以处理输入和输出中的噪声,共线变量。该模型通常比包括OLS,PCR和PLS在内的现有方法更准确。 BLVR考虑单变量输出,并假定基础变量和噪声为高斯,但可用于多变量输出和其他分布。开发了经验贝叶斯方法以从历史数据或可用数据的最大似然解中提取先验信息。稳态,动态和推论建模的例子说明了对高级指控的侵犯。还讨论了BLVR与现有方法之间的关系以及基于此框架的未来工作机会。

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