Geothermal power plants typically show decreasing heat and power production rates over time. Mitigation strategies include optimizing the management of existing wells—increasing or decreasing the fluid flow rates across the wells—and drilling new wells at appropriate locations. The latter is expensive, time-consuming, and subject to many engineering constraints, but the former is a viable mechanism for periodic adjustment of the available fluid allocations. In this study, we describe a new approach combining reservoir modeling and machine learning to produce models that enable such a strategy. Our computational approach allows us, first, to translate sets of potential flow rates for the active wells into reservoir-wide estimates of produced...
Geothermal exploration has traditionally relied on geological, geochemical, or geophysical surveys f...
Condensate reservoirs are the most challenging hydrocarbon reservoirs in the world. The behavior of ...
This research proposes a framework for determining the optimum location of an injection well using a...
In geothermal reservoir management, combined simulation-optimization is a practical approach to achi...
In a geothermal field, power plants are designed for long-term electricity generation. Therefore, it...
Abstract In this paper, we present an analysis using unsupervised machine learning (ML) to identify ...
Numerical modeling for geothermal reservoir engineering is a crucial process to evaluate the perform...
Scientific progress over the last decade has been significantly facilitated by the evolution of a ne...
Abstract Geothermal scientists have used bottom-hole temperature data from extensive oil and gas wel...
This dissertation comprises two topics. The first topic introduces an innovative multiphase, multico...
Reservoir management is critical for optimal hydrocarbon reservoir performance. A key component of r...
This research involves the application of supervised, unsupervised, and deep learning ML modeling ap...
High-temperature reservoir thermal energy storage (HT-RTES) has the potential to become an indispens...
Abstract We present a novel workflow for forecasting production in unconventional reservoirs using r...
The eastern United States generally has lower temperature gradients than the western United States. ...
Geothermal exploration has traditionally relied on geological, geochemical, or geophysical surveys f...
Condensate reservoirs are the most challenging hydrocarbon reservoirs in the world. The behavior of ...
This research proposes a framework for determining the optimum location of an injection well using a...
In geothermal reservoir management, combined simulation-optimization is a practical approach to achi...
In a geothermal field, power plants are designed for long-term electricity generation. Therefore, it...
Abstract In this paper, we present an analysis using unsupervised machine learning (ML) to identify ...
Numerical modeling for geothermal reservoir engineering is a crucial process to evaluate the perform...
Scientific progress over the last decade has been significantly facilitated by the evolution of a ne...
Abstract Geothermal scientists have used bottom-hole temperature data from extensive oil and gas wel...
This dissertation comprises two topics. The first topic introduces an innovative multiphase, multico...
Reservoir management is critical for optimal hydrocarbon reservoir performance. A key component of r...
This research involves the application of supervised, unsupervised, and deep learning ML modeling ap...
High-temperature reservoir thermal energy storage (HT-RTES) has the potential to become an indispens...
Abstract We present a novel workflow for forecasting production in unconventional reservoirs using r...
The eastern United States generally has lower temperature gradients than the western United States. ...
Geothermal exploration has traditionally relied on geological, geochemical, or geophysical surveys f...
Condensate reservoirs are the most challenging hydrocarbon reservoirs in the world. The behavior of ...
This research proposes a framework for determining the optimum location of an injection well using a...