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A novel unsupervised method for anomaly detection in time series based on statistical features for industrial predictive maintenance

机译:基于工业预测维护的统计特征的时间序列中的异常检测的一种新型无调节方法

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摘要

Industrial production processes are increasingly collecting data from machines in operation due to the cost reduction and popularization of sensor technologies. Valuable information is generated by using the right sensors and proper techniques on the machine's current state in operation. This extraction allows detecting whether the machine is operating in a degraded state and then, if necessary, interrupts its operation before it goes into a broken state. The detection of the abnormal behavior of a machine is relevant since detection at the right time can reduce financial costs due to machine breakdown and production downtime. This work proposes a novel unsupervised method to detect anomalies in industrial machines and interrupt their operation before this machine goes into a state of breakdown. The proposed method receives as input a set of time series data from several sensors. Using a collection of statistical features, it calculates an indicator that characterizes the failure's severity, issuing an alert to the machine operator if necessary. The method was evaluated in two benchmarks with known univariate data and two proprietary datasets with multivariate data. Conducted experiments revealed the low computational time spent on training and on evaluation. Overall results measured in Area Under the Receiver Operating Characteristic Curve (AUC) in Yahoo's benchmark were 89.3%; in Numenta, it was 70.3%, and in the two multivariate datasets evaluated, it was 92.4% and 91.2%. These high AUC values reveal the potential of the proposed method applied in predictive maintenance in a large soybean oil production industry.
机译:由于传感器技术的成本降低和普及,工业生产过程越来越多地收集来自运营机器的数据。通过在操作中使用正确的传感器和机器当前状态的正确技术来生成有价值的信息。该提取允许检测机器是否以劣化状态运行,然后在必要时,在进入断开状态之前中断其操作。检测机器的异常行为是相关的,因为在正确的时间检测可以降低​​由于机器故障和生产停机时间而减少财务成本。这项工作提出了一种新颖的无人监督方法,可以在工业机器中检测异常并在该机器进入击穿状态之前中断其操作。所提出的方法从几个传感器接收到输入一组时间序列数据。使用统计功能的集合,它计算一个指标,该指示符表征失败的严重性,如有必要,向机器运算符发出警报。该方法是在具有已知的单变量数据和具有多变量数据的两个专有数据集的两个基准中评估。进行的实验揭示了在培训和评估上花费的低计算时间。在雅虎基准中的接收器经营特征曲线(AUC)下的区域中测量的总体结果为89.3%;在Numenta中,它为70.3%,在评估的两个多变量数据集中,为92.4%和91.2%。这些高AUC值揭示了在大豆油生产行业中应用预测维护中所应用的方法的潜力。

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