Bayesian source inversion of microseismic events

Rapid stress release at the source of an earthquake produces seismic waves. Observations of the particle motions from such waves are used in source inversion to characterise the dynamic behaviour of the source and to help in understanding the driving processes. Earthquakes either occur naturally, su...

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Main Author: Pugh, David James
Format: Thesis
Language:English
Published: Apollo - University of Cambridge Repository 2016
Subjects:
Online Access:https://dx.doi.org/10.17863/cam.15958
https://www.repository.cam.ac.uk/handle/1810/253751
id ftdatacite:10.17863/cam.15958
record_format openpolar
spelling ftdatacite:10.17863/cam.15958 2023-05-15T16:53:11+02:00 Bayesian source inversion of microseismic events Pugh, David James 2016 https://dx.doi.org/10.17863/cam.15958 https://www.repository.cam.ac.uk/handle/1810/253751 en eng Apollo - University of Cambridge Repository All Rights Reserved https://www.rioxx.net/licenses/all-rights-reserved/ Seismology Source Inversion Microseismicity Bayesian Methods Research Subject CategoriesNATURAL SCIENCES Geophysics FOS Earth and related environmental sciences Earth Sciences Text Thesis article-journal ScholarlyArticle 2016 ftdatacite https://doi.org/10.17863/cam.15958 2021-11-05T12:55:41Z Rapid stress release at the source of an earthquake produces seismic waves. Observations of the particle motions from such waves are used in source inversion to characterise the dynamic behaviour of the source and to help in understanding the driving processes. Earthquakes either occur naturally, such as in volcanic eruptions and natural geothermal fields, or are linked to anthropogenic activities including hydrofracture of gas and oil reservoirs, mining events and extraction of geothermal fluids. Source inversion is very sensitive to uncertainties in both the model and the data, especially for low magnitude, namely microseismic, events. Many of the uncertainties can be poorly quantified, and are often not included in source inversion. This thesis proposes a Bayesian framework enabling a complete inclusion of uncertainties in the resultant probability distribution using Bayesian marginalisation. This approach is developed for polarity and amplitude ratio data, although it is possible to use any data type, provided the noise model can be estimated. The resultant posterior probability distributions are easily visualised on different plots for orientation and source-type. Several different algorithms can be used to search the source space, including Monte Carlo random sampling and Markov chain Monte Carlo sampling. Relative information between co-located events may be used as an extension to the framework, improving the constraint on the source. The double-couple source is the commonly assumed source model for many earthquakes, corresponding to slip on a fault plane. Two methods for estimating the posterior model probability of the double-couple source type are explored, one using the Bayesian evidence, the other using trans-dimensional Markov chain Monte Carlo sampling. Results from both methods are consistent with each other, producing good estimates of the probability given sufficient samples. These provide estimates of the probability of the source being a double-couple source or not, which is very useful when trying to understand the processes causing the earthquake. Uncertainty on the polarity estimation is often hard to characterise, so an alternative approach for determining the polarity and its associated uncertainty is proposed. This uses a Bayesian estimate of the polarity probability and includes both the background noise and the arrival time pick uncertainty, resulting in a more quantitative estimate of the polarity uncertainty. Moreover, this automated approach can easily be included in automatic event detection and location workflows. The inversion approach is discussed in detail and then applied to both synthetic events generated using a finite-difference code, and to real events acquired from a temporary seismometer network deployed around the Askja and Krafla Volcanoes, Iceland. : Acknowledgements: This work was undertaken through a UK Natural Environment Research Council CASE studentship (NE/I018263/1) in partnership with Schlumberger Gould Research. Thesis Iceland DataCite Metadata Store (German National Library of Science and Technology) Askja ENVELOPE(-16.802,-16.802,65.042,65.042) Krafla ENVELOPE(-16.747,-16.747,65.713,65.713)
institution Open Polar
collection DataCite Metadata Store (German National Library of Science and Technology)
op_collection_id ftdatacite
language English
topic Seismology
Source Inversion
Microseismicity
Bayesian Methods
Research Subject CategoriesNATURAL SCIENCES
Geophysics
FOS Earth and related environmental sciences
Earth Sciences
spellingShingle Seismology
Source Inversion
Microseismicity
Bayesian Methods
Research Subject CategoriesNATURAL SCIENCES
Geophysics
FOS Earth and related environmental sciences
Earth Sciences
Pugh, David James
Bayesian source inversion of microseismic events
topic_facet Seismology
Source Inversion
Microseismicity
Bayesian Methods
Research Subject CategoriesNATURAL SCIENCES
Geophysics
FOS Earth and related environmental sciences
Earth Sciences
description Rapid stress release at the source of an earthquake produces seismic waves. Observations of the particle motions from such waves are used in source inversion to characterise the dynamic behaviour of the source and to help in understanding the driving processes. Earthquakes either occur naturally, such as in volcanic eruptions and natural geothermal fields, or are linked to anthropogenic activities including hydrofracture of gas and oil reservoirs, mining events and extraction of geothermal fluids. Source inversion is very sensitive to uncertainties in both the model and the data, especially for low magnitude, namely microseismic, events. Many of the uncertainties can be poorly quantified, and are often not included in source inversion. This thesis proposes a Bayesian framework enabling a complete inclusion of uncertainties in the resultant probability distribution using Bayesian marginalisation. This approach is developed for polarity and amplitude ratio data, although it is possible to use any data type, provided the noise model can be estimated. The resultant posterior probability distributions are easily visualised on different plots for orientation and source-type. Several different algorithms can be used to search the source space, including Monte Carlo random sampling and Markov chain Monte Carlo sampling. Relative information between co-located events may be used as an extension to the framework, improving the constraint on the source. The double-couple source is the commonly assumed source model for many earthquakes, corresponding to slip on a fault plane. Two methods for estimating the posterior model probability of the double-couple source type are explored, one using the Bayesian evidence, the other using trans-dimensional Markov chain Monte Carlo sampling. Results from both methods are consistent with each other, producing good estimates of the probability given sufficient samples. These provide estimates of the probability of the source being a double-couple source or not, which is very useful when trying to understand the processes causing the earthquake. Uncertainty on the polarity estimation is often hard to characterise, so an alternative approach for determining the polarity and its associated uncertainty is proposed. This uses a Bayesian estimate of the polarity probability and includes both the background noise and the arrival time pick uncertainty, resulting in a more quantitative estimate of the polarity uncertainty. Moreover, this automated approach can easily be included in automatic event detection and location workflows. The inversion approach is discussed in detail and then applied to both synthetic events generated using a finite-difference code, and to real events acquired from a temporary seismometer network deployed around the Askja and Krafla Volcanoes, Iceland. : Acknowledgements: This work was undertaken through a UK Natural Environment Research Council CASE studentship (NE/I018263/1) in partnership with Schlumberger Gould Research.
format Thesis
author Pugh, David James
author_facet Pugh, David James
author_sort Pugh, David James
title Bayesian source inversion of microseismic events
title_short Bayesian source inversion of microseismic events
title_full Bayesian source inversion of microseismic events
title_fullStr Bayesian source inversion of microseismic events
title_full_unstemmed Bayesian source inversion of microseismic events
title_sort bayesian source inversion of microseismic events
publisher Apollo - University of Cambridge Repository
publishDate 2016
url https://dx.doi.org/10.17863/cam.15958
https://www.repository.cam.ac.uk/handle/1810/253751
long_lat ENVELOPE(-16.802,-16.802,65.042,65.042)
ENVELOPE(-16.747,-16.747,65.713,65.713)
geographic Askja
Krafla
geographic_facet Askja
Krafla
genre Iceland
genre_facet Iceland
op_rights All Rights Reserved
https://www.rioxx.net/licenses/all-rights-reserved/
op_doi https://doi.org/10.17863/cam.15958
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