基于子空间分离的模型迁移,开发一种新的过程监控模型

Haozhi Liu, Bugong Xu, F. Gao
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引用次数: 1

摘要

本文提出了一种基于子空间分离的过程监控模型迁移策略,利用新老过程之间的公共信息进行过程监控。首先,提取一个全局基向量,并认为它包含交叉集相似相关性;然后在新数据集中将两个不同的子空间相互分离。分别针对公共子空间和特定子空间建立了核主成分模型,并对每个子空间进行了监测。以模拟饲料批式青霉素发酵为例说明了所提出的策略。结果表明,该策略是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model Migration Based on Subspace Separation for Development of a New Process Monitoring Model
In this article, a model migration strategy based on subspace separation is proposed for process monitoring by taking advantage of common information between an old process and a new process. Firstly, a global basis vector is extracted and deemed to enclose the cross-set similar correlations. Then two different subspaces are separated from each other in the new dataset. The kernel principal component models are developed for the common and specific subspace respectively, and the monitoring is carried out in each subspace. The proposed strategy is illustrated with a simulated fed-batch penicillin fermentation. The results show that the strategy is effective.
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