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Space-time outlier identification in a large ground deformation data set

机译:大地面变形数据集中的时空异常识别

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摘要

A novel application for outlier detection is in ground deformation monitoring. During any type of underground construction in urban settings, sensors are placed on the ground surface to monitor the vertical displacement with the goal of ensuring that there is no substantial heaving or settling of the ground. As a result, a large spatial-temporal data set is produced, but the sensors are often very sensitive, and spurious readings are commonly observed, resulting in both random and systematic outliers. In this work, we present a novel, fast spatial-temporal quality control procedure that is designed to remove these spurious readings prior to subsequent ground deformation monitoring. First, a robust kriging model is applied to the spatial ground deformations at each time point to remove systematic errors; next, an exponential moving average model is applied to the time series of ground deformations at each station to remove random outliers. A case study using ground deformation data when four subway tunnels are bored under a railyard in Queens, New York is used to illustrate the methodology. Methods used to construct outlier bounds are described, and the accuracy of our outlier detection approach is evaluated by calculating the percentages of outliers detected in an introduced artificial outlier set.
机译:对异常值检测的新颖应用是地面变形监测。在城市环境中的任何类型的地下建设中,传感器放置在地面上,以监测垂直位移,以确保没有大量的地下或沉降地面的目标。结果,产生大的空间 - 时间数据集,但传感器通常非常敏感,并且通常观察到虚假读数,导致随机和系统的异常值。在这项工作中,我们提出了一种新的快速空间 - 时间质量控制程序,旨在在随后的地面变形监测之前去除这些杂散读数。首先,在每个时间点施加到稳健的克里格型模型以去除系统误差;接下来,将指数移动平均模型应用于每个站的地面变形的时间序列以去除随机异常值。使用地面变形数据的案例研究当四个地铁隧道在Queens的轨道上无聊时,纽约用于说明方法。描述了用于构造异常界限的方法,通过计算引入的人工异常值集中检测到的异常值百分比来评估我们的异常检测方法的准确性。

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