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Title: Model reduction for fractured porous media: a machine learning approach for identifying main flow pathways

Journal Article · · Computational Geosciences

Discrete fracture networks (DFN) are often used to model flow and transport in fractured porous media. The accurate resolution of flow and transport behavior on a large DFN involving thousands of fractures is computationally expensive. This makes uncertainty quantification studies of quantities of interest such as travel time through the network computationally intractable, since hundreds to thousands of runs of the DFN model are required to get bounds on the uncertainty of the predictions. Prior works on the subject demonstrated that the complexity of a DFN could be reduced by considering a sub-network of it (often termed a “backbone” sub-network), one whose flow and transport properties were then shown to be similar to that of the full network. The technique is tantamount to partitioning the complete set of fractures of a network into two disjoint sets, one of which is the backbone sub-network while the other its complement. It is in this context that we present a system-reduction technique for DFNs using supervised machine learning via a Random Forest Classifier that selects a backbone sub-network from the full set of fractures. The in-sample errors (in terms of precision and recall scores) of the trained classifier are found to be very accurate indicators of the out-of-sample errors, thus exhibiting that the classifier generalizes well to test data. Moreover, this system-reduction technique yields sub-networks as small as 12% of the full DFN that still recover transport characteristics of the full network such as the peak dosage and tailing behavior for late times. Most importantly, the sub-networks remain connected, and their size can be controlled by a single dimensionless parameter. Furthermore, measures of KL-divergence and KS-statistic for the breakthrough curves of the sub-networks with respect to the full network show physically realistic trends in that the measures decrease monotonically as the size of the sub-networks increase. In conclusion, the computational efficiency gained by this technique depends on the size of the sub-network, but large reductions in computational time can be expected for small sub-networks, yielding as much as 90% computational savings for sub-networks that are as small as 10-12% of the full network.

Research Organization:
Los Alamos National Laboratory (LANL), Los Alamos, NM (United States)
Sponsoring Organization:
USDOE Office of Science (SC), Basic Energy Sciences (BES)
Grant/Contract Number:
89233218CNA000001; AC52-06NA25396; 20170508DR
OSTI ID:
1511247
Report Number(s):
LA-UR-18-30475
Journal Information:
Computational Geosciences, Vol. 23, Issue 3; ISSN 1420-0597
Publisher:
SpringerCopyright Statement
Country of Publication:
United States
Language:
English
Citation Metrics:
Cited by: 20 works
Citation information provided by
Web of Science

References (43)

Multi-scale finite-volume method for elliptic problems in subsurface flow simulation journal May 2003
Generalized multiscale finite element method. Symmetric interior penalty coupling journal December 2013
Multiscale direction-splitting algorithms for parabolic equations with highly heterogeneous coefficients journal September 2016
Applicability of statistical learning algorithms in groundwater quality modeling: GROUNDWATER MODELING BY LEARNING MACHINES journal May 2005
Inclusion of Topological Measurements into Analytic Estimates of Effective Permeability in Fractured Media: FRACTURE PERMEABILITY FROM TOPOLOGY journal November 2017
A Parallel Solver for Large Scale DFN Flow Simulations journal January 2015
Topology of fracture networks journal January 2013
Machine learning for graph-based representations of three-dimensional discrete fracture networks journal January 2018
Influence of injection mode on transport properties in kilometer-scale three-dimensional discrete fracture networks: INFLUENCE OF INJECTION MODE IN 3-D DFNs journal September 2015
Machine Learning Approach for Contamination Source Identification in Water Distribution Systems conference July 2012
PFLOTRAN User Manual: A Massively Parallel Reactive Flow and Transport Model for Describing Surface and Subsurface Processes report January 2015
A descriptive study of fracture networks in rocks using complex network metrics journal March 2016
Advancing Graph-Based Algorithms for Predicting Flow and Transport in Fractured Rock journal September 2018
Particle tracking approach for transport in three-dimensional discrete fracture networks: Particle tracking in 3-D DFNs journal September 2015
Deep Learning for Remote Sensing Data: A Technical Tutorial on the State of the Art journal June 2016
Flow channeling in heterogeneous fractured rocks journal May 1998
Predictions of first passage times in sparse discrete fracture networks using graph-based reductions journal July 2017
Fracture size and transmissivity correlations: Implications for transport simulations in sparse three-dimensional discrete fracture networks following a truncated power law distribution of fracture size: FRACTURE SIZE AND TRANSMISSIVITY CORRELATIONS journal August 2016
Analysis and Visualization of Discrete Fracture Networks Using a Flow Topology Graph journal August 2017
A Large-Scale Flow and Tracer Experiment in Granite: 2. Results and Interpretation journal December 1991
Derivation of equivalent pipe network analogues for three-dimensional discrete fracture networks by the boundary element method journal September 1999
Large-Scale Optimization-Based Non-negative Computational Framework for Diffusion Equations: Parallel Implementation and Performance Studies journal July 2016
Connectivity, permeability, and channeling in randomly distributed and kinematically defined discrete fracture network models: PERMEABILITY OF DISCRETE FRACTURE NETWORK journal November 2016
Identifying Backbones in Three-Dimensional Discrete Fracture Networks: A Bipartite Graph-Based Approach journal January 2018
A Generalized Darcy–Dupuit–Forchheimer Model with Pressure-Dependent Drag Coefficient for Flow Through Porous Media Under Large Pressure Gradients journal January 2016
Machine Learning Predicts Laboratory Earthquakes: MACHINE LEARNING PREDICTS LAB QUAKES journal September 2017
Robust system size reduction of discrete fracture networks: a multi-fidelity method that preserves transport characteristics journal September 2018
A methodology for the characterization of flow conductivity through the identification of communities in samples of fractured rocks journal February 2014
Conforming Delaunay Triangulation of Stochastically Generated Three Dimensional Discrete Fracture Networks: A Feature Rejection Algorithm for Meshing Strategy journal January 2014
Scaling of fracture systems in geological media journal August 2001
Flux formulation of parabolic equations with highly heterogeneous coefficients journal October 2018
A thermodynamic basis for the derivation of the Darcy, Forchheimer and Brinkman models for flows through porous media and their generalizations journal January 2014
Graph theory in the geosciences journal April 2015
Quantifying Topological Uncertainty in Fractured Systems using Graph Theory and Machine Learning journal August 2018
Pathline tracing on fully unstructured control-volume grids journal July 2012
Sequential geophysical and flow inversion to characterize fracture networks in subsurface systems: MUDUNURU
  • Mudunuru, Maruti Kumar; Karra, Satish; Makedonska, Nataliia
  • Statistical Analysis and Data Mining: The ASA Data Science Journal, Vol. 10, Issue 5 https://doi.org/10.1002/sam.11356
journal September 2017
Geological mapping using remote sensing data: A comparison of five machine learning algorithms, their response to variations in the spatial distribution of training data and the use of explicit spatial information journal February 2014
Regression-based reduced-order models to predict transient thermal output for enhanced geothermal systems journal November 2017
Modeling flow and transport in fracture networks using graphs journal March 2018
Generalized Multiscale Finite Element Method. Symmetric Interior Penalty Coupling text January 2013
Large-scale Optimization-based Non-negative Computational Framework for Diffusion Equations: Parallel Implementation and Performance Studies text January 2015
Machine learning for graph-based representations of three-dimensional discrete fracture networks text January 2017
Modeling flow and transport in fracture networks using graphs text January 2017