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Appendices for Geothermal Exploration Artificial Intelligence Report
L o a d i n g
Organization
National Renewable Energy Laboratory (NREL) - view all
Update frequencyunknown
Last updatedover 2 years ago
Format
Overview

The Geothermal Exploration Artificial Intelligence looks to use machine learning to spot geothermal identifiers from land maps. This is done to remotely detect geothermal sites for the purpose of energy uses. Such uses include enhanced geothermal system (EGS) applications, especially regarding finding locations for viable EGS sites. This submission includes the appendices and reports formerly attached to the Geothermal Exploration Artificial Intelligence Quarterly and Final Reports. The appendices below include methodologies, results, and some data regarding what was used to train the Geothermal Exploration AI. The methodology reports explain how specific anomaly detection modes were selected for use with the Geo Exploration AI. This also includes how the detection mode is useful for finding geothermal sites. Some methodology reports also include small amounts of code. Results from these reports explain the accuracy of methods used for the selected sites (Brady Desert Peak and Salton Sea). Data from these detection modes can be found in some of the reports, such as the Mineral Markers Maps, but most of the raw data is included the DOE Database which includes Brady, Desert Peak, and Salton Sea Geothermal Sites.

AIArcGisBradyCaliforniaDesert PeakEGSGISInSARMorphologicalMorphologyNevadaPythonSVMSWIRSalton SeaTIRVNIRZoteroanomaly detectionartificial intelligenceblindblind systembordercodeconceptual modeldatabasedeep learningdeformationenergyengineered geothermal systemenhanced geothermal systemexplorationfaultgeodatabasegeophysicalgeophysicsgeospatial datageothermalhydrothermalhydrothermally altered mineralshyperspectralhyperspectral imagingland surface temperaturemachine learningmineral markersmodelmorphological featurespreproccessedprocessed dataradarraw dataremote sensingseismicshort wavelength infraredsite detectionsupport vector machinethermal infraredvisible near infraredwell
Additional Information
KeyValue
Dcat Issued2021-01-08T07:00:00Z
Dcat Modified2022-01-13T15:25:08Z
Dcat Publisher NameColorado School of Mines
Guidhttps://data.openei.org/submissions/4088
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Trust Framework(s)None
Assuranceunknown
Data Sensitivity Classunknown
Licenceunknown
Files
  • Geodatabase Design.docx

  • Mineral Mapping Literature Report.docx

  • Deformation Analysis for Brady.docx

  • Land Surface Temperature Report.docx

  • Morphology Literature.docx

  • Well Fault and Seismic Borders Report.docx

  • Geophysical Analysis Results.docx

  • Mineral Marker Maps.docx

  • Mineral Markers References Zotero Format.zip

  • DOE Geodatabases.zip

  • Support Vector Machine Methodology.docx

  • Mineral Markers Methodology.docx