Parameter estimation in convolved categorical models

In this thesis, we solve the seismic inverse problem in a Bayesian setting and perform the associated model parameter estimation. The subsurface rock layers are represented by categorical variables, which depends on some response variables. The observations recorded appear as a convolution of these...

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Main Author: Lindberg, David
Format: Others
Language:English
Published: Norges teknisk-naturvitenskapelige universitet, Institutt for matematiske fag 2010
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Online Access:http://urn.kb.se/resolve?urn=urn:nbn:no:ntnu:diva-10992
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spelling ndltd-UPSALLA1-oai-DiVA.org-ntnu-109922013-01-08T13:27:20ZParameter estimation in convolved categorical modelseng Lindberg, DavidNorges teknisk-naturvitenskapelige universitet, Institutt for matematiske fagInstitutt for matematiske fag2010ntnudaim:5735SIF3 fysikk og matematikkIndustriell matematikkIn this thesis, we solve the seismic inverse problem in a Bayesian setting and perform the associated model parameter estimation. The subsurface rock layers are represented by categorical variables, which depends on some response variables. The observations recorded appear as a convolution of these response variables. We thus assess the categorical variables' posterior distribution based on a prior distribution and a convolved likelihood distribution. Assuming that the prior model follows a Markov chain, the full model becomes a hidden Markov model. In the associated Posterior-Prior deconvolution algorithm, we approximate the convolved likelihood in order to use the recursive forward-backward algorithm. The prior and likelihood distributions are parameter dependent, and two parameter estimation approaches are discussed. Both estimation methods make use of the marginal likelihood distribution, which can be computed during the forward-backward algorithm.In two thorough test studies, we perform parameter estimation in the likelihood. Approximate posterior models, based on the respective parameter estimates, are computed by Posterior-Prior deconvolution algorithms for different orders. The signal-to-noise ratio, a ratio between the observation mean and variance, is found to be of importance. The results are generally more reliable for large values of this ratio. A more realistic seismic example is also introduced, with a more complex model description. The posterior model approximations are here more poor, due to under-estimation of the noise parameter. Student thesisinfo:eu-repo/semantics/bachelorThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:no:ntnu:diva-10992Local ntnudaim:5735application/pdfinfo:eu-repo/semantics/openAccess
collection NDLTD
language English
format Others
sources NDLTD
topic ntnudaim:5735
SIF3 fysikk og matematikk
Industriell matematikk
spellingShingle ntnudaim:5735
SIF3 fysikk og matematikk
Industriell matematikk
Lindberg, David
Parameter estimation in convolved categorical models
description In this thesis, we solve the seismic inverse problem in a Bayesian setting and perform the associated model parameter estimation. The subsurface rock layers are represented by categorical variables, which depends on some response variables. The observations recorded appear as a convolution of these response variables. We thus assess the categorical variables' posterior distribution based on a prior distribution and a convolved likelihood distribution. Assuming that the prior model follows a Markov chain, the full model becomes a hidden Markov model. In the associated Posterior-Prior deconvolution algorithm, we approximate the convolved likelihood in order to use the recursive forward-backward algorithm. The prior and likelihood distributions are parameter dependent, and two parameter estimation approaches are discussed. Both estimation methods make use of the marginal likelihood distribution, which can be computed during the forward-backward algorithm.In two thorough test studies, we perform parameter estimation in the likelihood. Approximate posterior models, based on the respective parameter estimates, are computed by Posterior-Prior deconvolution algorithms for different orders. The signal-to-noise ratio, a ratio between the observation mean and variance, is found to be of importance. The results are generally more reliable for large values of this ratio. A more realistic seismic example is also introduced, with a more complex model description. The posterior model approximations are here more poor, due to under-estimation of the noise parameter.
author Lindberg, David
author_facet Lindberg, David
author_sort Lindberg, David
title Parameter estimation in convolved categorical models
title_short Parameter estimation in convolved categorical models
title_full Parameter estimation in convolved categorical models
title_fullStr Parameter estimation in convolved categorical models
title_full_unstemmed Parameter estimation in convolved categorical models
title_sort parameter estimation in convolved categorical models
publisher Norges teknisk-naturvitenskapelige universitet, Institutt for matematiske fag
publishDate 2010
url http://urn.kb.se/resolve?urn=urn:nbn:no:ntnu:diva-10992
work_keys_str_mv AT lindbergdavid parameterestimationinconvolvedcategoricalmodels
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