Clustering and visualization of geodetic array data streams using self-organizing maps

R. Popovici, Răzvan Andonie, W. Szeliga, T. Melbourne, C. Scrivner
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引用次数: 4

Abstract

The Pacific Northwest Geodesic Array at Central Washington University collects telemetered streaming data from 450 GPS stations. These real-time data are used to monitor and mitigate natural hazards arising from earthquakes, volcanic eruptions, landslides, and coastal sea-level hazards in the Pacific Northwest. Recent improvements in both accuracy of positioning measurements and latency of terrestrial data communication have led to the ability to collect data with higher sampling rates. For seismic monitoring applications, this means 1350 separate position streams from stations located across 1200 km along the West Coast of North America must be able to be both visually observed and automatically analyzed at a sampling rate of up to 1 Hz. Our goal is to efficiently extract and visualize useful information from these data streams. We propose a method to visualize the geodetic data by clustering the signal types with a Self-Organizing Map (SOM). The similarity measure in the SOM is determined by the similarity of signals received from GPS stations. Signals are transformed to symbol strings, and the distance measure in the SOM is defined by an edit distance. The symbol strings represent data streams and the SOM is dynamic. We overlap the resulted dynamic SOM on the Google Maps representation.
使用自组织地图的大地测量阵列数据流聚类和可视化
中央华盛顿大学的太平洋西北测地线阵列从450个GPS站收集遥测流数据。这些实时数据用于监测和减轻由地震、火山爆发、山体滑坡和太平洋西北部沿海海平面灾害引起的自然灾害。最近在定位测量精度和地面数据通信延迟方面的改进使我们能够以更高的采样率收集数据。对于地震监测应用,这意味着来自北美西海岸1200公里的站点的1350个独立位置流必须能够以高达1hz的采样率进行视觉观察和自动分析。我们的目标是从这些数据流中有效地提取和可视化有用的信息。本文提出了一种利用自组织映射(SOM)对信号类型进行聚类的方法来可视化大地测量数据。SOM中的相似度度量是由从GPS站接收到的信号的相似度决定的。信号被转换成符号串,SOM中的距离度量由编辑距离定义。符号字符串表示数据流,SOM是动态的。我们将得到的动态SOM重叠在谷歌Maps表示上。
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