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Nonlinear multidimensional scaling and visualization of earthquake clusters over space, time and feature space

机译:空间,时间和特征空间上地震群的非线性多维缩放和可视化

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We present a novel technique based on a multiresolutional clustering and nonlinear multi-dimensional scaling of earthquake patterns to investigate observed and synthetic seismic catalogs. The observed data represent seismic activities around the Japanese islands during 1997-2003. The synthetic data were generated by numerical simulations for various cases of a heterogeneous fault governed by 3-D elastic dislocation and power-law creep. At the highest resolution, we analyze the local cluster structures in the data space of seismic events for the two types of catalogs by using an agglomerative clustering algorithm. We demonstrate that small magnitude events produce local spatiotemporal patches delineating neighboring large events. Seismic events, quantized in space and time, generate the multidimensional feature space characterized by the earthquake parameters. Using a non-hierarchical clustering algorithm and nonlinear multi-dimensional scaling, we explore the multitudinous earthquakes by real-time 3-D visualization and inspection of the multivariate clusters. At the spatial resolutions characteristic of the earthquake parameters, all of the ongoing seismicity both before and after the largest events accumulates to a global structure consisting of a few separate clusters in the feature space. We show that by combining the results of clustering in both low and high resolution spaces, we can recognize precursory events more precisely and unravel vital information that cannot be discerned at a single resolution.
机译:我们提出了一种基于多分辨率聚类和地震模式的非线性多维比例尺的新技术,以调查观察到的和合成的地震目录。观测到的数据代表了1997-2003年日本岛屿周围的地震活动。合成数据是通过数值模拟针对3D弹性位错和幂律蠕变控制的非均质断层的各种情况生成的。在最高分辨率下,我们通过使用聚集聚类算法分析了两种类型目录的地震事件数据空间中的局部聚类结构。我们证明了小规模的事件会产生描述相邻大事件的局部时空斑块。在空间和时间上量化的地震事件生成以地震参数为特征的多维特征空间。使用非层次聚类算法和非线性多维标度,我们通过实时3-D可视化和检查多元聚类来探索多地震。在地震参数的空间分辨率特征下,在最大事件发生之前和之后,所有正在进行的地震活动都累积为一个由特征空间中几个单独的簇组成的整体结构。我们表明,通过结合在低分辨率和高分辨率空间中的聚类结果,我们可以更准确地识别先兆事件,并揭示无法以单一分辨率识别的重要信息。

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