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Knowledge Discovery and Anomaly Identification for Low Correlation Industry Data

机译:低相关行业数据的知识发现和异常识别

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With the development of information technology, industry data is increasingly generated during the manufacturing process. Companies often want to utilize the data they collected for more than the initial purposes. In this paper, we report a case study with an industrial equipment manufacturer to analyze the operation data and the failure records of the equipment. We first tried to map the working condition of the equipment according to the daily recorded sensor data. However, we found the collected sensor data is not strongly correlated with the failure data to capture the phenomenon of the recorded failure categories. Thus, we proposed a data driven-based method for anomaly identification of such low correlation data. Our idea is to apply a deep neural network to learn the behavior of collected records to calculate the severity degree of each record. The severity degree of each record indicates the difference of performance between each record and all other records. Based on the value of severity degree, we identified a few anomalous records, which have very different sensor data with other records. By analyzing the sensor data of the anomalous records, we observed some unique combinations of sensor values that can potentially be used as indicators for failure prediction. From the observations, we derived hypotheses for future validation.
机译:随着信息技术的发展,在制造过程中越来越多地生成行业数据。公司通常希望将收集到的数据用于最初的目的之外。在本文中,我们报告了与一家工业设备制造商的案例研究,以分析设备的运行数据和故障记录。我们首先尝试根据每日记录的传感器数据绘制设备的工作状况图。但是,我们发现所收集的传感器数据与故障数据之间没有强相关性,无法捕获记录的故障类别的现象。因此,我们提出了一种基于数据驱动的方法,用于这种低相关性数据的异常识别。我们的想法是应用深度神经网络来学习收集到的记录的行为,以计算每条记录的严重程度。每个记录的严重程度表明每个记录与所有其他记录之间的性能差异。根据严重程度的值,我们确定了一些异常记录,这些异常记录的传感器数据与其他记录有很大不同。通过分析异常记录的传感器数据,我们观察到了一些传感器值的独特组合,这些组合可以潜在地用作故障预测的指标。从这些观察中,我们得出了用于未来验证的假设。

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