Fault network reconstruction using agglomerative clustering: applications to southern Californian seismicity
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Published:2020-12-23
Issue:12
Volume:20
Page:3611-3625
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ISSN:1684-9981
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Container-title:Natural Hazards and Earth System Sciences
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language:en
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Short-container-title:Nat. Hazards Earth Syst. Sci.
Author:
Kamer YavorORCID, Ouillon Guy, Sornette Didier
Abstract
Abstract. In this paper we introduce a method for fault network reconstruction based
on the 3D spatial distribution of seismicity. One of the major drawbacks of
statistical earthquake models is their inability to account for the highly
anisotropic distribution of seismicity. Fault reconstruction has been
proposed as a pattern recognition method aiming to extract this structural
information from seismicity catalogs. Current methods start from simple
large-scale models and gradually increase the complexity trying to explain
the small-scale features. In contrast the method introduced here uses a
bottom-up approach that relies on initial sampling of the small-scale
features and reduction of this complexity by optimal local merging of
substructures. First, we describe the implementation of the method through illustrative
synthetic examples. We then apply the method to the probabilistic absolute
hypocenter catalog KaKiOS-16, which contains three decades of southern
Californian seismicity. To reduce data size and increase computation
efficiency, the new approach builds upon the previously introduced catalog
condensation method that exploits the heterogeneity of the hypocenter
uncertainties. We validate the obtained fault network through a pseudo
prospective spatial forecast test and discuss possible improvements for
future studies. The performance of the presented methodology attests to the
importance of the non-linear techniques used to quantify location
uncertainty information, which is a crucial input for the large-scale
application of the method. We envision that the results of this study can be
used to construct improved models for the spatiotemporal evolution of
seismicity.
Publisher
Copernicus GmbH
Subject
General Earth and Planetary Sciences
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