动态环境监测活动中数据异常检测的时空模型

Ethan W. Dereszynski, Thomas G. Dietterich
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引用次数: 78

摘要

最近无线传感器技术的进步使生态科学受益匪浅。这些技术允许研究人员部署自动传感器网络,可以在非常精细的时间和空间尺度上监测景观。然而,这些网络受到恶劣条件的影响,导致单个传感器故障和网络通信失败。结果数据流经常显示不正确的数据测量和缺失值。识别和纠正这些错误既耗时又容易出错。我们提出了一种实时自动化数据质量控制(QC)方法,该方法利用数据中的空间和时间相关性来区分传感器故障和有效观测。该模型通过学习捕获传感器之间空间关系的贝叶斯网络结构来适应每个部署地点,并将该结构扩展为包含时间相关性的动态贝叶斯网络。该模型能够标记错误的观测结果,并预测丢失或损坏读数的真实值。该模型的性能是根据SensorScope项目收集的数据进行评估的。结果表明,时空模型比仅包含时间或空间相关性的模型具有明显的优势,并且该模型能够准确地输入损坏值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatiotemporal Models for Data-Anomaly Detection in Dynamic Environmental Monitoring Campaigns
The ecological sciences have benefited greatly from recent advances in wireless sensor technologies. These technologies allow researchers to deploy networks of automated sensors, which can monitor a landscape at very fine temporal and spatial scales. However, these networks are subject to harsh conditions, which lead to malfunctions in individual sensors and failures in network communications. The resulting data streams often exhibit incorrect data measurements and missing values. Identifying and correcting these is time-consuming and error-prone. We present a method for real-time automated data quality control (QC) that exploits the spatial and temporal correlations in the data to distinguish sensor failures from valid observations. The model adapts to each deployment site by learning a Bayesian network structure that captures spatial relationships between sensors, and it extends the structure to a dynamic Bayesian network to incorporate temporal correlations. This model is able to flag faulty observations and predict the true values of the missing or corrupt readings. The performance of the model is evaluated on data collected by the SensorScope Project. The results show that the spatiotemporal model demonstrates clear advantages over models that include only temporal or only spatial correlations, and that the model is capable of accurately imputing corrupted values.
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