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PCA-SDG based process monitoring and fault diagnosis

机译:基于PCA-SDG的过程监控和故障诊断

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摘要

Significant research has been done in recent years to use principal component analysis (PCA) for process fault diagnosis. The general approach involves manual interpretation of measured variable contributions to the residual and/or principal components. For a large chemical process, this could be tedious and often impossible. In addition, it hampers the automation of high-level analysis and decision support tasks that require root cause information. In this work, the interpretation of PCA-based contributions is automated using signed digraphs (SDGs). Also, a serious limitation of SDG-based diagnosis - the assumption of a single fault is overcome by developing a SDG-based multiple fault diagnosis algorithm. The implementation of the PCA-SDG-based fault diagnosis algorithms is done using G2. Its application is illustrated on the Amoco Model IV Fluidized Catalytic Cracking Unit (FCCU).
机译:近年来,已经进行了大量研究,以使用主成分分析(PCA)进行过程故障诊断。一般方法涉及手工解释对剩余和/或主要成分的测量变量贡献。对于大型化学过程,这可能很乏味,而且通常是不可能的。此外,它妨碍了需要根本原因信息的高级分析和决策支持任务的自动化。在这项工作中,使用签署的有向图(SDG)自动解释基于PCA的贡献。同样,基于SDG的诊断存在严重局限性-通过开发基于SDG的多故障诊断算法可以克服单个故障的假设。基于PCA-SDG的故障诊断算法的实现是使用G2完成的。 Amoco IV型流化催化裂化装置(FCCU)上说明了其应用。

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