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Faulty sensor detection, identification and reconstruction of indoor air quality measurements in a subway station

机译:地铁站中传感器的故障检测,识别和室内空气质量测量的重建

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Indoor air quality (IAQ) is important in subway stations because it can influence the health and comfort of passengers significantly. To effectively monitor and control the IAQ in subway stations, several key air pollutants data were collected by the air sampler and tele-monitoring system. In this study, an air pollutant prediction model based an adaptive network-based fuzzy inference system (ANFIS) was used to detect sensor fault, and a structured residual approach with maximum sensitivity (SRAMS) method was used to identify and reconstruct sensor faults existing in subway system. When a sensor failure was detected, the faulty sensor was identified using the exponential weighted moving average filtered squared residual (FSR). Four identification indices, including the identification index based on FSR (IFSR), the identification index based on generalized likelihood ratio (IGLR), the identification index based on cumulative sum of residuals (IQsum), and the identification index based on cumulative variances index (IVsum) were used to assist in identifying sensor faults. The best reconstructed sensor value can be estimated based on a given sensor fault direction. The drifting sensor failure was tested and the effectiveness of the proposed sensor validation procedure was verified.
机译:室内空气质量(IAQ)在地铁站中很重要,因为它会显着影响乘客的健康和舒适度。为了有效地监视和控制地铁站的室内空气质量,空气采样器和远程监视系统收集了一些关键的空气污染物数据。在这项研究中,使用基于自适应网络模糊推理系统(ANFIS)的空气污染物预测模型来检测传感器故障,并使用具有最大灵敏度的结构化残差法(SRAMS)方法来识别和重建存在于传感器中的传感器故障。地铁系统。当检测到传感器故障时,将使用指数加权移动平均滤波平方残差(FSR)来确定故障传感器。四个识别指数,包括基于FSR的识别指数(I FSR ),基于广义似然比的识别指数(I GLR ),基于累积和的识别指数残差(I Qsum )以及基于累积方差指标(I Vsum )的识别指标可帮助识别传感器故障。可以基于给定的传感器故障方向来估计最佳重构传感器值。测试了漂移传感器的故障,并验证了所提出的传感器验证程序的有效性。

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