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A Distributed Canonical Correlation Analysis-Based Fault Detection Method for Plant-Wide Process Monitoring

机译:基于分布式典型相关分析的全厂过程监控故障检测方法

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In this paper, a new data-driven fault detection method based on distributed canonical correlation analysis (D-CCA) is proposed to address the plant-wide process monitoring problem. This paper focuses on the distributed plant-wide processes. The core of the proposed method is to reduce uncertainties using correlation information from the neighboring nodes. Furthermore, the cost of the data transmission between network nodes is also reduced by the D-CCA algorithm. When the proposed method and the existing methods are compared using the Tennessee Eastman benchmark process, the false alarm rate, fault detection rate, and the detection delay are comparable. This suggests that the proposed method is feasible.
机译:本文提出了一种基于分布式典型相关分析(D-CCA)的数据驱动故障检测新方法,以解决全厂范围的过程监控问题。本文着重于工厂范围内的分布式过程。所提出方法的核心是使用来自相邻节点的相关信息来减少不确定性。此外,还通过D-CCA算法降低了网络节点之间数据传输的成本。当使用田纳西州伊斯曼基准测试方法比较提出的方法和现有方法时,虚警率,故障检测率和检测延迟是可比的。这表明所提出的方法是可行的。

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