Predicting Geothermal Favorability in the...
URL: https://pangea.stanford.edu/ERE/db/IGAstandard/record_detail.php?id=35430
This study aims to reduce expert input through robust data-driven analyses and better-suited data science techniques, with the goals of saving time, reducing bias, and improving predictive ability. We present six favorability maps for geothermal resources in the western United States created using two strategies applied to three modern machine learning algorithms (logistic regression, support-vector machines, and XGBoost). To provide a direct comparison to previous assessments, we use the same input data as the 2008 U.S. Geological Survey (USGS) conventional moderate- to high-temperature geothermal resource assessment.
About this Resource
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Created | unknown |
Name | Predicting Geothermal Favorability in the Western United States by Using Machine Learning - Addressing Challenges and Developing Solutions |
Format | Web Page |
License | Creative Commons Attribution |
Created | 8 months ago |
Media type | text/html |
has views | False |
id | f76f2f18-b69f-4686-9968-01d40034497e |
metadata modified | 8 months ago |
package id | 0d122e9c-a5cb-4dc4-8b59-fc57c1051f23 |
position | 3 |
state | active |
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