Machine learning for sustainable geoenergy: uncertainty, physics and decision-ready inference
Hannah P. Menke, Ahmed H. Elsheikh, Lingli Wei, Nanzhe Wang, Andreas Busch

TL;DR
This paper discusses how machine learning can improve decision-making in geoenergy projects by addressing uncertainties, physical constraints, and multi-objective trade-offs, with a focus on practical applications and standards.
Contribution
It proposes ML approaches tailored for geoenergy challenges, emphasizing uncertainty quantification, hybrid models, and multi-fidelity learning, and outlines a pragmatic agenda for standards and validation.
Findings
ML approaches enable better risk assessment in geoenergy.
Probabilistic UQ improves decision confidence.
Structured ML models enhance monitoring and basin management.
Abstract
Geoenergy projects (CO2 storage, geothermal, subsurface H2 generation/storage, critical minerals from subsurface fluids, or nuclear waste disposal) increasingly follow a petroleum-style funnel from screening and appraisal to operations, monitoring, and stewardship. Across this funnel, limited and heterogeneous observations must be turned into risk-bounded operational choices under strong physical and geological constraints - choices that control deployment rate, cost of capital, and the credibility of climate-mitigation claims. These choices are inherently multi-objective, balancing performance against containment, pressure footprint, induced seismicity, energy/water intensity, and long-term stewardship. We argue that progress is limited by four recurring bottlenecks: (i) scarce, biased labels and few field performance outcomes; (ii) uncertainty treated as an afterthought rather than…
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Taxonomy
TopicsCO2 Sequestration and Geologic Interactions · Reservoir Engineering and Simulation Methods · Geothermal Energy Systems and Applications
