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Utah FORGE 6-3712: Probabilistic Estimation of Seismic Response Using Physics-Informed Recurrent Neural Networks - 2025 Workshop Presentation
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National Renewable Energy Laboratory (NREL) - view all
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Overview

This is a presentation on the Probabilistic Estimation of Seismic Response Using Physics-Informed Recurrent Neural Networks by GTC Analytics, presented by Dr. Jesse Williams. This video slide presentation discusses the development of machine learning-based predictive tools to estimate the magnitude-frequency response of stimulation-induced seismicity. This presentation was featured at the Utah FORGE R&D Annual Workshop on September 9, 2025. The workshop offered a valuable opportunity to review the progress of Research and Development projects funded under Solicitation 2022-2, which aim to improve our understanding of the key factors influencing Enhanced Geothermal System (EGS) reservoir and resource development.

2025 Annual WorkshopEGSUtah FORGEenergygeothermalinduced seismicitymachine learningmagnitude-frequency analysisphysics-informed aipresentationpresentation recordingpresentation slidesprobabilistic modelingrecurrent neural networksreportseismic response prediction
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Dcat Issued2025-09-18T06:00:00Z
Dcat Modified2025-09-21T20:28:24Z
Dcat Publisher NameGTC Analytics
Guidhttps://data.openei.org/submissions/8529
Harvest Object Id1fa5a95a-89f7-4c16-8964-9937ceaf3f07
Harvest Source Id4eb7107f-a2b1-40e3-b36a-8161aa98a56e
Harvest Source TitleOpenEI Data Portal
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