From outcrop observations to dynamic simulations

an efficient workflow for generating ensembles of geologically plausible fracture networks and assessing their impact on flow and transport

Journal Article (2025)
Author(s)

Elahe Kamel Targhi (TU Delft - Applied Geology)

Pierre-Olivier Bruna (TU Delft - Applied Geology)

Alexandros Daniilidis (TU Delft - Reservoir Engineering)

Guillaume Rongier (TU Delft - Applied Geology)

Sebastian Geiger (TU Delft - Geoscience and Engineering)

Research Group
Applied Geology
DOI related publication
https://doi.org/10.1144/geoenergy2025-028
More Info
expand_more
Publication Year
2025
Language
English
Research Group
Applied Geology
Issue number
1
Volume number
3
Reuse Rights

Other than for strictly personal use, it is not permitted to download, forward or distribute the text or part of it, without the consent of the author(s) and/or copyright holder(s), unless the work is under an open content license such as Creative Commons.

Abstract

Fractures are ubiquitous in geological formations and can often have an impact on subsurface applications such as geothermal energy, groundwater management or CO2 storage. Quantifying the relationship between the uncertainties inherent to fracture networks and the corresponding flow behaviour for these applications remains an open challenge. Simulation studies that are based on outcrop analogues of fracture networks have yielded many new insights about heat and mass transfer in fractured geological formations but are restricted to a limited number of fracture network realizations, simplified assumptions about fracture network properties or deterministic models, making it difficult to analyse a wide range of uncertainties. This study introduces a flexible workflow that generates ensembles of geologically plausible fracture networks that can be based on statistical data from outcrop analogues. The fracture networks are generated using a computationally efficient approach that combines mechanical and statistical methods. The ensembles are then seamlessly linked to multi-purpose flow and transport simulations where the fractures are represented explicitly in a porous and permeable rock matrix. This approach can enable new uncertainty quantification methods, supported by machine-learning-based emulators, to analyse how fracture network properties, such as fracture intensity, fracture aperture or fracture orientation, influence heat and mass transfer in fractured geological formations. The workflow is illustrated using two classic example applications pertinent to fracture network modelling – one based on outcrop data to assess thermal behaviour in geothermal systems, and one synthetic study to analyse the transition from matrix-dominated to fracture-dominated flow – and released as open-source code.