Stanford Geothermal Workshop
February 9-11, 2026

Open-Source Gravity Reduction Workflows for Geothermal Resource Assessment

Collin CRONKITE-RATCLIFF

[U.S. Geological Survey, USA]

Potential-field geophysical data such as gravity can enhance understanding of geothermal resources at all stages of the resource life cycle, including assessment, exploration, development, and monitoring, and at multiple scales, from the reservoir scale to regional scale. However, to make gravity data useful for geothermal resource characterization, several processing steps are required to isolate the effects of density variations in the Earth’s crust to enable the identification of structural features associated with geothermal resources. Although this process is well-established, standard computational implementations for processing gravity data that are FAIR (Findable, Accessible, Interoperable, and Reproduceable) are still lacking. This paper details ongoing efforts at the U.S. Geological Survey (USGS) to develop a standard set of open-source Python tools for gravity data reduction that align with the FAIR principles. This workflow makes use of existing open-source tools for geophysical data processing with the goal of maximizing opportunities for rapid improvements, interoperability, and adaptability to other types of geophysical data.

Topic: Geophysics

         Session 10(B): GEOSCIENCE [Wednesday 11th February 2026, 10:30 am] (UTC-8)
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