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A Temporal Forecasting Driven Approach Using Facebook’s Prophet Method for Anomaly Detection in Sewer Air Temperature Sensor System

机译:使用Facebook的先知方法的时间预测驱动方法在下水道温度传感器系统中的异常检测

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Smart sensor systems play a decisive role in the condition assessment of concrete sewer pipes going through microbial corrosion. Few Australian water utilities adopt a predictive analytic model for estimating the corrosion. They require sensor inputs like sewer air temperature data for corrosion prediction. A sensor system was developed to monitor the daily variation of sewer air temperature inside the harsh sewer environmental conditions. However, a diagnostic tool to evaluate the streaming sensor data is vital for reliable monitoring. In this context, this paper proposes a temporal forecasting driven approach for anomaly detection in sewer air temperature sensor system. Several temporal forecasting models were comprehensively evaluated and adopted Facebook’s Prophet method based forecasting to develop an anomaly detection approach. The proposed approach was evaluated with sewer air temperature sensor data and the results indicate a reasonable anomaly detection performance.
机译:智能传感器系统在经受微生物腐蚀的混凝土下水道状况评估中起着决定性的作用。很少有澳大利亚自来水公司采用预测分析模型来估算腐蚀。他们需要像下水道空气温度数据这样的传感器输入来进行腐蚀预测。开发了一种传感器系统来监控恶劣的下水道环境条件下下水道温度的每日变化。但是,用于评估流传感器数据的诊断工具对于可靠监控至关重要。在这种情况下,本文提出了一种时间预测驱动的方法,用于下水道空气温度传感器系统中的异常检测。对几种时间预测模型进行了全面评估,并采用了基于Facebook Prophet方法的预测来开发异常检测方法。利用下水道空气温度传感器数据对提出的方法进行了评估,结果表明了合理的异常检测性能。

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