Seismic Characterization of the Blue Mountain Geothermal Field

Author:

Gao Kai1,Huang Lianjie1,Cladouhos Trenton2ORCID

Affiliation:

1. Earth and Environmental Sciences Division, Los Alamos National Laboratory, Los Alamos, NM 87545, USA

2. Cyrq Energy Inc., Salt Lake City, UT 84101, USA

Abstract

Subsurface characterization is crucial for geothermal energy exploration and production. Yet hydrothermal reservoirs usually reside in highly fractured and faulted zones where accurate characterization is very challenging because of low signal-to-noise ratios of land seismic data and lack of coherent reflection signals. We perform an active-source seismic characterization for the Blue Mountain geothermal field in Nevada using active seismic data to reveal the elastic medium property complexity and fault distribution at this field. We first employ an unsupervised machine learning method to attenuate groundroll and near-surface guided-wave noise and enhance coherent reflection and scattering signals from noisy seismic data. We then build a smooth initial P-wave velocity model based on an existing magnetotellurics survey result, and use 3D first-arrival traveltime tomography to refine the initial velocity model. We then derive a set of elastic wave velocities and anisotropic parameters using elastic full-waveform inversion, and obtain PP and PS images using elastic reverse-time migration. We identify major faults by analyzing the variations of seismic velocities and anisotropy parameters, and reveal mid- to small-scale faults by applying a supervised machine learning method to the seismic migration images. Our characterization reveals complex velocity heterogeneities and anisotropies, as well as faults, with a high spatial resolution. These results can provide valuable information for optimal placement of future injection and production wells to increase geothermal energy production at the Blue Mountain geothermal power plant.

Funder

U.S. Department of Energy (DOE) Geothermal Technologies Office

U.S. DOE National Nuclear Security Administration

Publisher

MDPI AG

Subject

Energy (miscellaneous),Energy Engineering and Power Technology,Renewable Energy, Sustainability and the Environment,Electrical and Electronic Engineering,Control and Optimization,Engineering (miscellaneous),Building and Construction

Reference71 articles.

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3. Fercho, S., Norbeck, J., McConville, E., Hinz, N., Wallis, I., Titov, A., Agarwal, S., Dadi, S., Gradl, C., and Baca, H. (2023, January 6–8). Geology, State of Stress, and Heat in Place for a Horizontal Well Geothermal Development Project at Blue Mountain, Nevada. Proceedings of the 48th Workshop on Geothermal Reservoir Engineering, Stanford, CA, USA.

4. Melosh, G., Cumming, W., Casteel, J., Niggemann, K., and Fairbank, B. (2010, January 25–30). Seismic Reflection Data and Conceptual Models for Geothermal Development in Nevada. Proceedings of the World Geothermal Congress, Bali Island, Indonesia.

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