Three-Dimensional Permeability Inversion Using Convolutional Neural
Networks and Positron Emission Tomography
Abstract
Quantification of heterogeneous multiscale permeability in geologic
porous media is key for understanding and predicting flow and transport
processes in the subsurface. Recent utilization of in situ imaging,
specifically positron emission tomography (PET), enables the measurement
of three-dimensional (3-D) time-lapse radiotracer solute transport in
geologic media. However, accurate and computationally efficient
characterization of the permeability distribution that controls the
solute transport process remains challenging. Leveraging the
relationship between local permeability variation and solute advection
rates, an encoder-decoder based convolutional neural network (CNN) is
implemented as a permeability inversion scheme using a single PET scan
of a radiotracer pulse injection experiment as input. The CNN consists
of Densely Connected Neural Networks that can accurately capture the 3-D
spatial correlation between the permeability and the radiotracer solute
arrival time difference maps in geologic cores. We first test the
inversion accuracy using 500 synthetic test datasets. We then use a
suite of experimental PET imaging datasets acquired on four different
geologic cores. The network-inverted permeability maps from the geologic
cores are used to parameterize forward numerical models that are
directly compared with the experimental PET imaging datasets. The
results indicate that a single trained network can generate robust,
denoised 3-D permeability inversion maps in seconds. Numerical models
parameterized with these permeability maps closely capture the
experimental solute arrival time behavior. This approach presents an
unprecedented improvement for efficiently characterizing multiscale
permeability heterogeneity in complex geologic materials.