General value functions for fault detection in multivariate time series data

Andy Wong, Mehran Taghian Jazi, Tomoharu Takeuchi, Johannes Günther, Osmar Zaïane
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Abstract

One of the greatest challenges to the automated production of goods is equipment malfunction. Ideally, machines should be able to automatically predict and detect operational faults in order to minimize downtime and plan for timely maintenance. While traditional condition-based maintenance (CBM) involves costly sensor additions and engineering, machine learning approaches offer the potential to learn from already existing sensors. Implementations of data-driven CBM typically use supervised and semi-supervised learning to classify faults. In addition to a large collection of operation data, records of faulty operation are also necessary, which are often costly to obtain. Instead of classifying faults, we use an approach to detect abnormal behaviour within the machine’s operation. This approach is analogous to semi-supervised anomaly detection in machine learning (ML), with important distinctions in experimental design and evaluation specific to the problem of industrial fault detection. We present a novel method of machine fault detection using temporal-difference learning and General Value Functions (GVFs). Using GVFs, we form a predictive model of sensor data to detect faulty behaviour. As sensor data from machines is not i.i.d. but closer to Markovian sampling, temporal-difference learning methods should be well suited for this data. We compare our GVF outlier detection (GVFOD) algorithm to a broad selection of multivariate and temporal outlier detection methods, using datasets collected from a tabletop robot emulating the movement of an industrial actuator. We find that not only does GVFOD achieve the same recall score as other multivariate OD algorithms, it attains significantly higher precision. Furthermore, GVFOD has intuitive hyperparameters which can be selected based upon expert knowledge of the application. Together, these findings allow for a more reliable detection of abnormal machine behaviour to allow ideal timing of maintenance; saving resources, time and cost.
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用于多元时间序列数据故障检测的一般值函数
设备故障是自动化生产面临的最大挑战之一。理想情况下,机器应该能够自动预测和检测运行故障,以最大限度地减少停机时间并制定及时维护计划。传统的基于状态的维护(CBM)涉及昂贵的传感器添加和工程设计,而机器学习方法提供了从现有传感器中学习的可能性。数据驱动型 CBM 的实施通常使用监督和半监督学习来对故障进行分类。除了需要收集大量的运行数据外,还需要记录故障运行情况,而获取故障运行情况的成本往往很高。我们采用的方法不是对故障进行分类,而是检测机器运行中的异常行为。这种方法类似于机器学习(ML)中的半监督异常检测,但在针对工业故障检测问题的实验设计和评估方面有重要区别。我们提出了一种利用时差学习和通用值函数(GVF)进行机器故障检测的新方法。利用 GVF,我们形成了传感器数据的预测模型,以检测故障行为。由于来自机器的传感器数据并非 i.i.d.,而是更接近于马尔可夫采样,因此时差学习方法非常适合这种数据。我们将 GVF 离群点检测 (GVFOD) 算法与多种多元和时差离群点检测方法进行了比较,并使用了从模拟工业执行器运动的桌面机器人上收集的数据集。我们发现,GVFOD 不仅能获得与其他多元离群点算法相同的召回分数,而且精确度明显更高。此外,GVFOD 具有直观的超参数,可根据应用的专业知识进行选择。这些研究结果有助于更可靠地检测机器的异常行为,从而为维护工作提供理想的时机,节省资源、时间和成本。
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