Predictive analytics for detecting sensor failure using autoregressive integrated moving average model

K. Thiyagarajan, S. Kodagoda, Linh Van Nguyen
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引用次数: 31

Abstract

Sensors play a vital role in monitoring the important parameters of critical infrastructure. Failure of such sensors causes destabilization to the entire system. In this regard, this paper proposes a predictive analytics solution for detecting the failure of a sensor that measures surface temperature from an urban sewer. The proposed approach incorporates a forecasting technique based on the past time series of sparse data using an autoregressive integrated moving average (ARIMA) model. Based on the 95% forecast interval and continuity of faulty data, a criterion was set to detect anomalies and to issue a warning for sensor failure. The forecasted and faulty data were assumed Gaussian distributed. By using the probability density of the distribution, the mean and variance were computed for faulty data to examine the abnormality in the variance value of each day to detect the sensor failure. The experimental results on the sewer temperature data are appealing.
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基于自回归积分移动平均模型的传感器故障预测分析
传感器在关键基础设施的重要参数监测中起着至关重要的作用。这些传感器的故障会导致整个系统的不稳定。在这方面,本文提出了一种预测分析解决方案,用于检测用于测量城市下水道表面温度的传感器的故障。该方法结合了一种基于稀疏数据过去时间序列的预测技术,采用自回归综合移动平均(ARIMA)模型。基于95%的预测区间和故障数据的连续性,设置了检测异常并对传感器故障发出警告的标准。预测数据和故障数据均假定为高斯分布。利用分布的概率密度,计算故障数据的均值和方差,检验每一天的方差值是否异常,从而检测传感器故障。对下水道温度数据的实验结果很有吸引力。
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