DOE PAGES title logo U.S. Department of Energy
Office of Scientific and Technical Information

Title: Temperature uncertainty modelling with proxy structural data as geostatistical constraints for well siting: an example applied to Granite Springs Valley, NV, USA

Journal Article · · Geoenergy

Utilizing existing temperature and structural geology information around Granite Springs Valley, Nevada, we build 3D stochastic temperature models with the aims of evaluating the 3D uncertainty of temperature and choosing between candidate exploration well locations. The data used to support the modelling are measured temperatures and structural proxies from 3D geologic modelling (distance to fault, distance to fault intersections and terminations, Coulomb stress change and dilation tendency), the latter considered ‘secondary’ data. Two stochastic geostatistical techniques are explored for incorporating the structural proxies: cosimulation and local varying mean. With both the cosimulation and local varying mean methods, many equally-likely temperature models (i.e. realizations) are produced, from which temperature probability profiles are calculated at candidate well locations. To aid in choosing between the candidate locations, two quantities summarize the temperature probabilities: V prior and entropy. V prior quantifies the likelihood for economic temperatures at each candidate location, whereas entropy identifies where new information has the most potential to reduce uncertainty. In general, the cosimulation realizations have smoother spatial structure, and extrapolate high temperatures at candidate locations that are located along the direction of the longest spatial correlation, which are down dip from existing temperature logs. The smooth realizations result in tight temperature probability profiles that are easier to interpret, but they have unrealistic temperature reversals in some locations because of the dipping ellipsoid shape created and that the cosimulation technique does not enforce a conductive geothermal gradient as a baseline (i.e. linearly increasing temperature with depth). The local varying mean results produce realizations with more realistic geothermal gradients, with temperatures increasing downward since a depth-temperature relationship is included. However, because they have much noisier spatial nature compared to cosimulation, it is harder to interpret the temperature probability profiles. The different local varying mean results allow the geologist to determine which proxy (e.g. dilation v. distance to fault termination) should be used given the specific geothermal system. In general, V prior from local varying mean results identify locations that are close to high values for the structural proxies: areas with higher probabilities for higher temperatures. The entropy results identify where uncertainty is greatest and therefore new drilling information could be most useful. Though these techniques provide useful information, even when applied to areas of sparse data, our comparison of these two techniques demonstrates the need for new geothermal geostatistics techniques that combine the advantages of these two methods and that are tailored to the spatial uncertainty issues inherent in geothermal exploration.

Sponsoring Organization:
USDOE Office of Energy Efficiency and Renewable Energy (EERE), Renewable Power Office. Geothermal Technologies Office
Grant/Contract Number:
EE0009254
OSTI ID:
2217601
Alternate ID(s):
OSTI ID: 2439542; OSTI ID: 2217602
Journal Information:
Geoenergy, Journal Name: Geoenergy Journal Issue: 1 Vol. 1; ISSN 2755-1725
Publisher:
Geological Society of LondonCopyright Statement
Country of Publication:
United Kingdom
Language:
English

References (17)

Inference of the two dimensional GPR velocity field using collocated cokriging of Direct Push permittivity and conductivity logs and GPR profiles journal March 2012
3-D Geologic Controls of Hydrothermal Fluid Flow at Brady geothermal field, Nevada, USA journal July 2021
Geostatistical modelling of uncertainty in soil science journal September 2001
An expanded GSLIB cokriging program allowing for two Markov models journal July 1999
A Mathematical Theory of Communication journal July 1948
Borehole radar velocity inversion using cokriging and cosimulation journal July 2005
Challenges in conditioning a stochastic geological model of a heterogeneous glacial aquifer to a comprehensive soft data set journal January 2014
Linear inverse Gaussian theory and geostatistics journal November 2006
Formatting and Integrating Soft Data: Stochastic Imaging via the Markov-Bayes Algorithm book January 1993
PVGeo: an open-source Python package for geoscientific visualization in VTK and ParaView journal June 2019
Stress concentrations at structural discontinuities in active fault zones in the western United States: Implications for permeability and fluid flow in geothermal fields journal March 2018
Discovery and analysis of a blind geothermal system in southeastern Gabbs Valley, western Nevada, USA journal December 2021
Geostatistics book January 2012
A Multilinear Singular Value Decomposition journal January 2000
Uncertainty and risk evaluation during the exploration stage of geothermal development: A review journal March 2019
Developing a conceptual model and power capacity estimates for a low-temperature geothermal prospect with two chemically and thermally distinct reservoir compartments, Hawthorne, Nevada, USA journal September 2020
Discovering Blind Geothermal Systems in the Great Basin Region: An Integrated Geologic and Geophysical Approach for Establishing Geothermal Play Fairways: All Phases report May 2021