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Utah FORGE 6-3712: Report on Building a Recurrent Neural Network Framework for Induced Seismicity - October, 2025
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National Renewable Energy Laboratory (NREL) - view all
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Last updated4 days ago
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Overview

This is a technical report for the Probabilistic Estimation of Seismic Response Using Physics Informed Recurrent Neural Networks project. The report describes the process of designing a recurrent neural network (RNN) to predict induced seismicity. Background material is included to inform non-subject matter experts about the types of architectures available. The exact architectures (layers) of three models are discussed, which are being used to predict induced seismicity.

AIDLDeep learningEGSInduced SeismicityMLUtah FORGEartificial intelligenceenergygeophysical modelsgeothermalinjection parametersmachine learningmagnitudemodelingphysics-basedpredictiveprobabilisticseismic datatechnical report
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Dcat Issued2025-10-13T06:00:00Z
Dcat Modified2025-10-13T19:39:01Z
Dcat Publisher NameGlobal Technology Connection, Inc.
Guidhttps://data.openei.org/submissions/8550
Harvest Object Ida07816d0-41c6-4a3e-9555-6fafe4eac287
Harvest Source Id4eb7107f-a2b1-40e3-b36a-8161aa98a56e
Harvest Source TitleOpenEI Data Portal
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