2023
DOI: 10.1093/gji/ggac510
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The influence of physical and algorithmic factors on simulated far-field waveforms and source–time functions of underground explosions using unsupervised machine learning

Abstract: Summary Characterizing explosion sources and differentiating between earthquake and underground explosions using distributed seismic networks becomes nontrivial when explosions are detonated in cavities or heterogeneous ground material. Moreover, there is little understanding of how changes in subsurface physical properties affect the far-field waveforms we record and use to infer information about the source. Simulations of underground explosions and the resultant ground motions can be a powerf… Show more

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