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Online fault diagnosis and state identification during process transitions using dynamic locus analysis

机译:使用动态轨迹分析的过程转换过程中的在线故障诊断和状态识别

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Chemical plants operate in a variety of states; some of these are steady states while others including grade changes, startup, shutdown, and maintenance operations are transitions. Transition operations are usually challenging and more prone to abnormalities. Therefore, automated process monitoring during transitions is important. In this paper, we propose a new signal comparison-based approach, called dynamic locus analysis, for online state identification and fault diagnosis during process transitions. Dynamic locus analysis is an extension of Smith and Waterman's [1981. Identification of common molecular subsequence. Journal of Molecular Biology 147, 195-197] discrete sequence comparison algorithm to continuous signals. It uses dynamic programming to efficiently identify the portion of a long reference signal that best matches another signal. During online application, signals from real-time sensors are compared with those from prior process runs to identify the current process state as well as estimate its progress. Run-to-run variations between the reference and online signals are accounted for by using dynamic time warping (DTW) for signal comparison. Dynamic locus analysis can be directly used for multivariate temporal signals and has the computational efficiency needed for real-time application. Extensive testing on three case studies-the Tennessee Eastman challenge problem, a lab-scale distillation column, and a simulated fluidized catalytic cracking unit-reveal that the proposed method can quickly identify normal as well as abnormal process states. (c) 2006 Elsevier Ltd. All rights reserved.
机译:化工厂在各种州运营;其中一些是稳定状态,而其他一些(包括坡度更改,启动,关闭和维护操作)是过渡状态。过渡操作通常具有挑战性,并且更容易出现异常情况。因此,过渡期间的自动化过程监控非常重要。在本文中,我们提出了一种基于信号比较的新方法,称为动态轨迹分析,用于过程转换期间的在线状态识别和故障诊断。动态基因座分析是Smith和Waterman [1981年。常见分子亚序列的鉴定。 Journal of Molecular Biology 147,195-197]对连续信号的离散序列比较算法。它使用动态编程来有效地识别长参考信号中与另一个信号最匹配的部分。在线应用期间,将来自实时传感器的信号与来自先前过程运行的信号进行比较,以识别当前过程状态并估计其进度。通过使用动态时间规整(DTW)进行信号比较,可以解决参考信号与在线信号之间的运行差异。动态轨迹分析可以直接用于多元时间信号,并具有实时应用所需的计算效率。在三个案例研究(田纳西伊斯曼挑战问题,实验室规模的蒸馏塔和模拟的流化催化裂化装置)上进行了广泛的测试,证明了该方法可以快速识别正常和异常过程状态。 (c)2006 Elsevier Ltd.保留所有权利。

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