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Data-Driven Anomaly Detection Approach for Time-Series Streaming Data

机译:时间序列流数据的数据驱动的异常检测方法

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摘要

Recently, wireless sensor networks (WSNs) have been extensively deployed to monitor environments. Sensor nodes are susceptible to fault generation due to hardware and software failures in harsh environments. Anomaly detection for the time-series streaming data of sensor nodes is a challenging but critical fault diagnosis task, particularly in large-scale WSNs. The data-driven approach is becoming essential for the goal of improving the reliability and stability of WSNs. We propose a data-driven anomaly detection approach in this paper, named median filter (MF)-stacked long short-term memory-exponentially weighted moving average (LSTM-EWMA), for time-series status data, including the operating voltage and panel temperature recorded by a sensor node deployed in the field. These status data can be used to diagnose device anomalies. First, a median filter (MF) is introduced as a preprocessor to preprocess obvious anomalies in input data. Then, stacked long short-term memory (LSTM) is employed for prediction. Finally, the exponentially weighted moving average (EWMA) control chart is employed as a detector for recognizing anomalies. We evaluate the proposed approach for the panel temperature and operating voltage of time-series streaming data recorded by wireless node devices deployed in harsh field conditions for environmental monitoring. Extensive experiments were conducted on real time-series status data. The results demonstrate that compared to other approaches, the MF-stacked LSTM-EWMA approach can significantly improve the detection rate (DR) and false rate (FR). The average DR and FR values with the proposed approach are 95.46% and 4.42%, respectively. MF-stacked LSTM-EWMA anomaly detection also achieves a better F2 score than that achieved by other methods. The proposed approach provides valuable insights for anomaly detection in WSNs by detecting anomalies in the time-series status data recorded by wireless sensor nodes.
机译:最近,无线传感器网络(WSNS)已被广泛部署到监视环境。由于恶劣环境中的硬件和软件故障,传感器节点易于发生故障生成。异常检测传感器节点的时间序列流数据是一个具有挑战性但关键的故障诊断任务,特别是在大规模的WSN中。数据驱动的方法对于提高WSN的可靠性和稳定性来实现至关重要。我们在本文中提出了一种数据驱动的异常检测方法,名为中值滤波器(MF) - 用于时间序列状态数据,包括操作电压和面板的时序状态数据(LSTM-EWMA)的名为Median滤波器(MF)的长短期内存指数加权移动平均值(LSTM-EWMA)由部署在该字段中的传感器节点记录的温度。这些状态数据可用于诊断设备异常。首先,将中值滤波器(MF)作为预处理引入预处理输入数据中的明显异常。然后,采用堆叠的长短期存储器(LSTM)进行预测。最后,采用指数加权移动平均(EWMA)控制图作为识别异常的检测器。我们评估由部署的无线节点设备记录的用于环境监测的无线节点设备记录的时间序列流数据的面板温度和工作电压的所提出的方法。在实时序列状态数据上进行了广泛的实验。结果表明,与其他方法相比,MF堆叠的LSTM-EWMA方法可以显着提高检测率(DR)和假速率(FR)。具有拟议方法的平均DR和FR值分别为95.46%和4.42%。 MF堆叠的LSTM-EWMA异常检测也实现了比其他方法所实现的更好的F2分数。所提出的方法通过在无线传感器节点记录的时序状态数据中检测到异常,为WSN中的异常检测提供了有价值的见解。

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