Machine learning applications to geophysical data analysis

The sedimentary layers of the Earth are a complex amorphous material formed from chaotic, turbulent, and random natural processes. Exploration geophysicists use a combination of assumptions, approximate physical models, and trained pattern recognition to extract useful information from complex remot...

Full description

Bibliographic Details
Main Author: Bougher, Benjamin Bryan
Language:English
Published: University of British Columbia 2016
Online Access:http://hdl.handle.net/2429/58972
id ndltd-UBC-oai-circle.library.ubc.ca-2429-58972
record_format oai_dc
spelling ndltd-UBC-oai-circle.library.ubc.ca-2429-589722018-01-05T17:29:14Z Machine learning applications to geophysical data analysis Bougher, Benjamin Bryan The sedimentary layers of the Earth are a complex amorphous material formed from chaotic, turbulent, and random natural processes. Exploration geophysicists use a combination of assumptions, approximate physical models, and trained pattern recognition to extract useful information from complex remote sensing data such as seismic and well logs. In this thesis I investigate supervised and unsupervised machine learning models in geophysical data analysis and present two novel applications to exploration geophysics. Firstly, interpreted well logs from the Trenton-Black River study are used to train a classifier that results in a success rate of 67% at predicting stratigraphic units from gamma ray logs. I use the scattering transform, a multiscale analysis transform, to extract discriminating features to feed a K-nearest neighbour classifier. A second experiment frames a conventional pre-stack seismic data characterization workflow as an unsupervised machine learning problem that is free from physical assumptions. Conventionally, the Shuey model is used to fit the angle dependent reflectivity response of seismic data. I instead use principle component based approaches to learn projections from the data that improve classification. Results on the Marmousi II elastic model and an industry field dataset show that unsupervised learning models can be effective at segmenting hydrocarbon reservoirs from seismic data. Science, Faculty of Earth, Ocean and Atmospheric Sciences, Department of Graduate 2016-08-24T15:45:31Z 2016-08-25T02:02:04 2016 2016-09 Text Thesis/Dissertation http://hdl.handle.net/2429/58972 eng Attribution-NonCommercial-NoDerivatives 4.0 International http://creativecommons.org/licenses/by-nc-nd/4.0/ University of British Columbia
collection NDLTD
language English
sources NDLTD
description The sedimentary layers of the Earth are a complex amorphous material formed from chaotic, turbulent, and random natural processes. Exploration geophysicists use a combination of assumptions, approximate physical models, and trained pattern recognition to extract useful information from complex remote sensing data such as seismic and well logs. In this thesis I investigate supervised and unsupervised machine learning models in geophysical data analysis and present two novel applications to exploration geophysics. Firstly, interpreted well logs from the Trenton-Black River study are used to train a classifier that results in a success rate of 67% at predicting stratigraphic units from gamma ray logs. I use the scattering transform, a multiscale analysis transform, to extract discriminating features to feed a K-nearest neighbour classifier. A second experiment frames a conventional pre-stack seismic data characterization workflow as an unsupervised machine learning problem that is free from physical assumptions. Conventionally, the Shuey model is used to fit the angle dependent reflectivity response of seismic data. I instead use principle component based approaches to learn projections from the data that improve classification. Results on the Marmousi II elastic model and an industry field dataset show that unsupervised learning models can be effective at segmenting hydrocarbon reservoirs from seismic data. === Science, Faculty of === Earth, Ocean and Atmospheric Sciences, Department of === Graduate
author Bougher, Benjamin Bryan
spellingShingle Bougher, Benjamin Bryan
Machine learning applications to geophysical data analysis
author_facet Bougher, Benjamin Bryan
author_sort Bougher, Benjamin Bryan
title Machine learning applications to geophysical data analysis
title_short Machine learning applications to geophysical data analysis
title_full Machine learning applications to geophysical data analysis
title_fullStr Machine learning applications to geophysical data analysis
title_full_unstemmed Machine learning applications to geophysical data analysis
title_sort machine learning applications to geophysical data analysis
publisher University of British Columbia
publishDate 2016
url http://hdl.handle.net/2429/58972
work_keys_str_mv AT bougherbenjaminbryan machinelearningapplicationstogeophysicaldataanalysis
_version_ 1718585361554210816