2022
DOI: 10.1002/essoar.10511644.1
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Stress-Based and Convolutional Forecasting of Injection-Induced Seismicity: Application to The Helsinki Geothermal Reservoir Stimulation

Abstract: We model induced seismicity from a geothermal well stimulation operation near Helsinki, Finland, using physical and statistical approaches • Hydraulic diffusivity may be misestimated by the triggering front without accounting for nucleation effects from rate-and-state friction • Nucleation effects are expected to be significant at short-time scale injections commonly employed in geothermal well stimulation operations

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“…[19] presented network-based simulation of regional seismicity using seismological methods. [20] assessed reservoir induced seismicity using artificial neural network and GIS. [21] studied the relationship of atmospheric temperature and rainfall with onset of earthquakes.…”
Section: Climatic Anomaliesmentioning
confidence: 99%
“…[19] presented network-based simulation of regional seismicity using seismological methods. [20] assessed reservoir induced seismicity using artificial neural network and GIS. [21] studied the relationship of atmospheric temperature and rainfall with onset of earthquakes.…”
Section: Climatic Anomaliesmentioning
confidence: 99%