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FLAGS: A methodology for adaptive anomaly detection and root cause analysis on sensor data streams by fusing expert knowledge with machine learning

机译:标志:通过与机器学习融合专家知识,对传感器数据流的自适应异常检测和根本原因分析的方法

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摘要

Anomalies and faults can be detected, and their causes verified, using both data-driven and knowledge-driven techniques. Data-driven techniques can adapt their internal functioning based on the raw input data but fail to explain the manifestation of any detection. Knowledge-driven techniques inherently deliver the cause of the faults that were detected but require too much human effort to set up. In this paper, we introduce FLAGS, the Fused-AI interpretabLe Anomaly Generation System, and combine both techniques in one methodology to overcome their limitations and optimize them based on limited user feedback. Semantic knowledge is incorporated in a machine learning technique to enhance expressivity. At the same time, feedback about the faults and anomalies that occurred is provided as input to increase adaptiveness using semantic rule mining methods. This new methodology is evaluated on a predictive maintenance case for trains. We show that our method reduces their downtime and provides more insight into frequently occurring problems.
机译:可以检测异常和故障,并且使用数据驱动和知识驱动技术验证其原因。数据驱动技术可以基于原始输入数据调整其内部功能,但无法解释任何检测的表现。知识驱动的技术本质地提供了检测到的故障原因,但需要太多人力努力来设置。在本文中,我们介绍了标志,融合AI可解释的异常生成系统,并将两种技术组合在一种方法中,以克服它们的限制,并根据有限的用户反馈来优化它们。语义知识纳入机器学习技术中以增强表达性。同时,提供关于发生的故障和异常的反馈作为输入,以增加使用语义规则挖掘方法的适应性。这种新方法在列车预测的维护案例上进行了评估。我们表明我们的方法减少了他们的停机时间,并提供了更多地洞察经常发生的问题。

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