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Fault detection and diagnosis in process system using artificial intelligence-based cognitive technique

机译:基于人工智能的认知技术在过程系统中的故障检测与诊断

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摘要

Fault detection and classifications using supervised learning algorithms are widely studied; however, lesser attention is given to fault detection using unsupervised learning. This work focused on the integration of unsupervised learning with cognitive modelling to detect and diagnose unknown fault conditions. It is achieved by integrating two techniques: (ⅰ) incremental one class algorithm to identify anomaly condition and introduce a new state of fault to the current fault states if an unknown fault occurs, and (ⅱ) dynamic shallow neural network to learn and classify the fault state. The proposed framework is applied to the well-known Tennessee Eastman process and achieved significantly better results compared to results reported by earlier studies. Laboratory experiments are also performed using a pilot-scale system to test the validity of the approach. The results confirm the proposed framework as an effective way to detect and classify known and unknown faults in process operations.
机译:使用监督学习算法的故障检测和分类得到了广泛的研究。但是,使用无监督学习进行故障检测的关注较少。这项工作的重点是将无监督学习与认知建模相集成,以检测和诊断未知故障状况。它是通过集成两种技术来实现的:(ⅰ)增量式一类算法,用于识别异常情况,如果发生未知故障,则将新的故障状态引入当前的故障状态;以及(ⅱ)动态浅层神经网络,用于对故障进行学习和分类。故障状态。所提出的框架已应用于著名的田纳西州伊士曼过程,与早期研究报告的结果相比,取得了明显更好的结果。还使用中试规模的系统进行实验室实验,以测试该方法的有效性。结果证实了所提出的框架是检测和分类过程操作中已知和未知故障的有效方法。

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