Detecting Outliers in Streaming Time Series Data from ARM Distributed Sensors

Yuping Lu, J. Kumar, N. Collier, Bhargavi Krishna, M. Langston
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引用次数: 4

Abstract

The Atmospheric Radiation Measurement (ARM) Data Center at ORNL collects data from a number of permanent and mobile facilities around the globe. The data is then ingested to create high level scientific products. High frequency streaming measurements from sensors and radar instruments at ARM sites require high degree of accuracy to enable rigorous study of atmospheric processes. Outliers in collected data are common due to instrument failure or extreme weather events. Thus, it is critical to identify and flag them. We employed multiple univariate, multivariate and time series techniques for outlier detection methods and studied their effectiveness. First, we examined Pearson correlation coefficient which is used to measure the pairwise correlations between variables. Singular Spectrum Analysis (SSA) was applied to detect outliers by removing the anticipated annual and seasonal cycles from the signal to accentuate anomalies. K-means was applied for multivariate examination of data from collection of sensors to identify any deviation from expected and known patterns and identify abnormal observation. The Pearson correlation coefficient, SSA and K-means methods were later combined together in a framework to detect outliers through a range of checks. We applied the developed method to data from meteorological sensors at ARM Southern Great Plains site and validated against existing database of known data quality issues.
ARM分布式传感器流时间序列数据异常点检测
ORNL的大气辐射测量(ARM)数据中心从全球许多永久和移动设施收集数据。然后,这些数据被用于创造高水平的科学产品。来自ARM站点的传感器和雷达仪器的高频流测量要求高度精确,以便对大气过程进行严格的研究。由于仪器故障或极端天气事件,所收集数据中的异常值很常见。因此,识别和标记它们至关重要。我们采用多单变量、多变量和时间序列技术进行异常值检测方法,并研究了它们的有效性。首先,我们检验了皮尔逊相关系数,这是用来衡量变量之间的两两相关。奇异谱分析(SSA)通过从信号中去除预期的年度和季节周期来突出异常,从而检测异常值。采用K-means对传感器收集的数据进行多变量检验,以识别与预期和已知模式的任何偏差,并识别异常观测。随后,Pearson相关系数、SSA和K-means方法结合在一个框架中,通过一系列检查来检测异常值。我们将开发的方法应用于ARM南部大平原站点的气象传感器数据,并与已知数据质量问题的现有数据库进行验证。
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