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Improved Fault Diagnosis in Online Process Monitoring of Complex JNetworked Processes: a Data-Driven Approach

机译:复杂的JNetworked进程的在线过程监控中的改善故障诊断:数据驱动方法

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Many of the fault detection and diagnosis frameworks currently used in complex industrial processes rely on the application of data-driven models. Among these methodologies, those based on principal component analysis (PCA) are particularly relevant due to its effectiveness in describing the normal operation conditions (NOC) in a parsimonious way, with resort to a reduced set of latent variables. However, PCA models are non-causal by nature and therefore fail to extract the intrinsic structure of the relationships between the variables, leading to limited fault diagnosis capabilities. To circumvent this limitation, we propose to implement a data-driven pre-processing module that codifies the causal structure of data and that can be easily plugged-in into current monitoring schemes. This pre-processing module makes use of a Sensitivity Enhancing Transformation (SET) that decorrelates the variables based on their causal structure, inferred through partial correlations. Therefore, deviations on the new decorrelated variables represent specific changes in the process structure, making fault diagnosis more transparent. To demonstrate the applicability of the proposed approach, two case studies are considered (CSTR and the Tennessee Eastman process). The results show that mapping the causal structure by means of the SET leads to a set of variables directly linked with the true source of the fault, providing a simple and effective way to improve fault detection and diagnosis.
机译:目前在复杂的工业过程中使用的许多故障检测和诊断框架依赖于数据驱动模型的应用。在这些方法中,基于主成分分析(PCA)的那些尤其有关,因为它在以一种解析方式描述了正常运行条件(NOC)的有效性,具有减少一组潜在的潜在变量。然而,PCA模型是非因果性的,因此未能提取变量之间关系的内在结构,导致有限的故障诊断能力。为了规避此限制,我们建议实现数据驱动的预处理模块,该模块编写数据的因果结构,并且可以轻松插入当前的监视方案。该预处理模块利用灵敏度增强转换(SET),其基于其因果结构使变量去相关,通过部分相关性推断。因此,对新的去相关变量的偏差表示过程结构的特定变化,使故障诊断更透明。为了证明所提出的方法的适用性,考虑了两种案例研究(CSTR和田纳西州伊斯坦德进程)。结果表明,通过该组映射因果结构导致一组与故障源直接相关的一组变量,为提高故障检测和诊断提供简单有效的方法。

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