The Geothermal Artificial Intelligence for geothermal exploration
Exploration of geothermal resources involves analysis and management of a large number of uncertainties, which makes investment and operations decisions challenging. Remote Sensing (RS), Machine Learning (ML) and Artificial Intelligence (AI) have potential in managing the challenges of geothermal ex...
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Veröffentlicht in: | Renewable energy 2022-06, Vol.192, p.134-149 |
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Sprache: | eng |
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Zusammenfassung: | Exploration of geothermal resources involves analysis and management of a large number of uncertainties, which makes investment and operations decisions challenging. Remote Sensing (RS), Machine Learning (ML) and Artificial Intelligence (AI) have potential in managing the challenges of geothermal exploration. In this paper, we present a methodology that integrates RS, ML and AI to create an initial assessment of geothermal potential, by resorting to known indicators of geothermal areas namely mineral markers, surface temperature, faults and deformation. We demonstrated the implementation of the method in two sites (Brady and Desert Peak geothermal sites) that are close to each other but have different characteristics (Brady having clear surface manifestations and Desert Peak being a blind site). We processed various satellite images and geospatial data for mineral markers, temperature, faults and deformation and then implemented ML methods to obtain pattern of surface manifestation of geothermal sites. We developed an AI that uses patterns from surface manifestations to predict geothermal potential of each pixel. We tested the Geothermal AI using independent data sets obtaining accuracy of 92–95%; also tested the Geothermal AI trained on one site by executing it for the other site to predict the geothermal/non-geothermal delineation, the Geothermal AI performed quite well in prediction with 72–76% accuracy.
•Novel deep learning model uses geological and geophysical information as data source.•Automated labeling process using unsupervised learning for training, and testing.•Preprocessing to create input and label layers for the deep learning model.•Artificial intelligence using independent data sets obtained accuracy of 92–95%. |
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ISSN: | 0960-1481 1879-0682 |
DOI: | 10.1016/j.renene.2022.04.113 |