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Data-driven root-cause fault diagnosis for multivariate non-linear processes

机译:多元非线性过程的数据驱动根本原因故障诊断

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In a majority of multivariate processes, propagating nature of malfunctions makes the fault diagnosis a challenging task. This paper presents a novel data-driven strategy for real-time root-cause fault diagnosis in multivariate (non-)linear processes by estimating the strength of causality using normalized transfer entropy (NTE) between measured process variables and variations of a residual signal. In this paper, a new framework for root-cause fault diagnosis applicable for multivariate nonlinear processes is proposed, which can reduce the necessary number of calculation for causality analysis among time-series. More specially, a new and fast symbolic dynamic-based normalized transfer entropy (SDNTE) technique is proposed to enable real-time application of transfer entropy, which has been considered as a burdensome approach for causality analysis. The concept of SDNTE is built upon principles of time-series symbolization, xD-Markov machine and Shannon entropy. This paper also introduces a new concept of joint xD-Markov machine to capture dynamic interactions between two time-series. The proposed root-cause fault diagnosis framework is applied on Tennessee Eastman process benchmark and its computational advantages are shown by comparing with conventional kernel PDF-based method. Moreover, the proposed strategy is applied to health monitoring of a big scale industry centrifuge to corroborates its effectiveness and feasibility in industrial applications.
机译:在大多数多元过程中,故障的传播性质使故障诊断成为一项艰巨的任务。本文通过使用测量过程变量和残差信号变化之间的归一化传递熵(NTE)估计因果强度,提出了一种用于多变量(非线性)过程中实时根本原因故障诊断的数据驱动策略。本文提出了一种适用于多元非线性过程的根本原因故障诊断框架,可以减少时间序列之间因果关系分析所需的计算量。更具体地说,提出了一种新的快速基于符号动态的标准化归一化传输熵(SDNTE)技术,以实现传输熵的实时应用,这已被认为是因果关系分析的繁琐方法。 SDNTE的概念基于时间序列符号化,xD-Markov机器和Shannon熵的原理。本文还介绍了联合xD-Markov机器的新概念,以捕获两个时间序列之间的动态相互作用。将所提出的根本原因故障诊断框架应用于田纳西州伊斯曼过程基准测试中,并与传统的基于核的基于PDF的方法进行比较,证明了其计算优势。此外,所提出的策略被应用于大型工业离心机的健康监测,以证实其在工业应用中的有效性和可行性。

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