Regression-based reduced-order models to predict transient thermal output for enhanced geothermal systems
M. K. Mudunuru, S. Karra, D. R. Harp, G. D. Guthrie, H. S. Viswanathan

TL;DR
This paper develops and compares three reduced-order models (ROMs) for predicting transient thermal power output in enhanced geothermal systems, effectively capturing complex behaviors and uncertainties with varying levels of model complexity.
Contribution
The paper introduces three novel ROMs tailored for geothermal reservoir modeling, demonstrating their ability to accurately predict power output and outperform detailed simulations in certain conditions.
Findings
ROM-1 accurately predicts low-permeability power output
ROM-2 effectively models field data and high-permeability scenarios
ROM-3 balances model complexity and accuracy across conditions
Abstract
The goal of this paper is to assess the utility of Reduced-Order Models (ROMs) developed from 3D physics-based models for predicting transient thermal power output for an enhanced geothermal reservoir while explicitly accounting for uncertainties in the subsurface system and site-specific details. Numerical simulations are performed based on Latin Hypercube Sampling (LHS) of model inputs drawn from uniform probability distributions. Key sensitive parameters are identified from these simulations, which are fracture zone permeability, well/skin factor, bottom hole pressure, and injection flow rate. The inputs for ROMs are based on these key sensitive parameters. The ROMs are then used to evaluate the influence of subsurface attributes on thermal power production curves. The resulting ROMs are compared with field-data and the detailed physics-based numerical simulations. We propose three…
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