Cite Details
D. M. Tartakovsky, B. E. Wohlberg and A. Guadagnini, "Reconstruction of geologic facies with statistical learning theory", in Proceedings of the 5th International
Conference on
Calibration and
Reliability in
Groundwater Modeling:
From Ucertainty to
Decision Making
(ModelCARE'05)", (The Hague, The Netherlands), pp. 357-363, Jun 2005
Abstract
A typical subsurface environment is heterogeneous,
consists of multiple materials (geologic facies), and is often
insufficiently characterised by data. The ability to delineate
geologic facies and to estimate their properties from sparse data
is essential for modeling physical and biochemical processes
occurring in the subsurface. We study the problem of facies
delineation in geologic formations by means of a subset of the
machine learning techniques - the Support Vector Machine (SVM) and
its mathematical underpinning, the Statistical Learning Theory. To
demonstrate the potential of the SVM, we randomly generate a
two-dimensional porous medium composed of two heterogeneous
materials, and then reconstruct boundaries between these materials
from a few data points. We analyse the accuracy of the SVM facies
delineation, and compare the SVM performance with that of a
geostatistical approach.
BibTeX Entry
@inproceedings{tartakovsky-2005-reconstruction,
author = {D. M. Tartakovsky and B. E. Wohlberg and A. Guadagnini},
title = {Reconstruction of geologic facies with statistical learning theory},
year = {2005},
month = Jun,
urlpdf = {http://maeresearch.ucsd.edu/Tartakovsky/Papers/tartakovsky-2005-reconstruction.pdf},
booktitle = {Proceedings of the 5th {I}nternational
{C}onference on
{C}alibration and
{R}eliability in
{G}roundwater {M}odeling:
{F}rom {U}certainty to
{D}ecision {M}aking
({M}odel{CARE}'05)"},
address = {The Hague, The Netherlands},
pages = {357-363}
}