4.5 Article

The Earthquake-Source Inversion Validation (SIV) Project

Journal

SEISMOLOGICAL RESEARCH LETTERS
Volume 87, Issue 3, Pages 690-708

Publisher

SEISMOLOGICAL SOC AMER
DOI: 10.1785/0220150231

Keywords

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Funding

  1. Southern California Earthquake Center [6159]
  2. National Science Foundation (NSF) [EAR-1033462]
  3. U.S. Geological Survey (USGS) [G12AC20038]
  4. Czech Science Foundation [14-04372S]
  5. King Abdullah University of Science and Technology (KAUST), Thuwal, Saudi Arabia

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Finite-fault earthquake source inversions infer the (time-dependent) displacement on the rupture surface from geophysical data. The resulting earthquake source models document the complexity of the rupture process. However, multiple source models for the same earthquake, obtained by different research teams, often exhibit remarkable dissimilarities. To address the uncertainties in earthquake-source inversion methods and to understand strengths and weaknesses of the various approaches used, the Source Inversion Validation (SIV) project conducts a set of forward-modeling exercises and inversion benchmarks. In this article, we describe the SIV strategy, the initial benchmarks, and current SIV results. Furthermore, we apply statistical tools for quantitative waveform comparison and for investigating source-model (dis)similarities that enable us to rank the solutions, and to identify particularly promising source inversion approaches. All SIV exercises (with related data and descriptions) and statistical comparison tools are available via an online collaboration platform, and we encourage source modelers to use the SIV benchmarks for developing and testing new methods. We envision that the SIV efforts will lead to new developments for tackling the earthquake-source imaging problem.

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