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Fault detection with Conditional Gaussian Network

机译:有条件高斯网络的故障检测

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The main interest of this paper is to illustrate a new representation of the Principal Component Analysis (PCA) for fault detection under a Conditional Gaussian Network (CGN), a special case of Bayesian networks. PCA and its associated quadratic statistics such as T~2 and SPE are integrated under a sole CGN. The proposed framework projects a new observation into an orthogonal space and gives probabilities on the state of the system. It could do so even when some data in the sample test are missing. This paper also gives the probabilities thresholds to use in order to match quadratic statistics decisions. The proposed network is validated and compared to the standard PCA scheme for fault detection on the Tennessee Eastman Process and the Hot Forming Process.
机译:本文的主要目的是说明在条件高斯网络(CGN)(一种贝叶斯网络的特殊情况)下用于故障检测的主成分分析(PCA)的新表示形式。 PCA及其相关的二次统计量(例如T〜2和SPE)集成在唯一的CGN下。提出的框架将一个新的观测值投影到正交空间中,并给出系统状态的概率。即使样本测试中的某些数据丢失,也可以这样做。本文还给出了用于匹配二次统计决策的概率阈值。验证了所提议的网络,并将其与标准PCA方案进行了比较,以进行田纳西伊士曼过程和热成型过程中的故障检测。

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