Stochastic and Deterministic Inversion Methods for History Matching of Production and Time-Lapse Seismic Data

Automatic history matching methods utilize various kinds of inverse modeling techniques. In this dissertation, we examine ensemble Kalman filter as a stochastic approach for assimilating different types of production data and streamline-based inversion methods as a deterministic approach for integra...

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Main Author: Watanabe, Shingo
Other Authors: Datta-Gupta, Akhil, King, Michael J, Gildin, Eduardo, Ikelle, Luc T
Format: Thesis
Language:English
Published: 2014
Subjects:
Online Access:https://hdl.handle.net/1969.1/151664
id fttexasamuniv:oai:oaktrust.library.tamu.edu:1969.1/151664
record_format openpolar
spelling fttexasamuniv:oai:oaktrust.library.tamu.edu:1969.1/151664 2023-07-16T03:59:39+02:00 Stochastic and Deterministic Inversion Methods for History Matching of Production and Time-Lapse Seismic Data Watanabe, Shingo Datta-Gupta, Akhil King, Michael J Gildin, Eduardo Ikelle, Luc T 2014-05-13T17:09:32Z application/pdf https://hdl.handle.net/1969.1/151664 en eng https://hdl.handle.net/1969.1/151664 ensemble Kalman Filter streamline inversion time lapse seismic history matching 4D seismic covariance localization Thesis text 2014 fttexasamuniv 2023-06-27T22:28:06Z Automatic history matching methods utilize various kinds of inverse modeling techniques. In this dissertation, we examine ensemble Kalman filter as a stochastic approach for assimilating different types of production data and streamline-based inversion methods as a deterministic approach for integrating both production and time-lapse seismic data into high resolution reservoir models. For the ensemble Kalman filter, we develope a physically motivated phase streamline-based covariance localization method to improve data assimilation performance while capturing geologic continuities that affect the flow dynamics and preserving model variability among the ensemble of models. For the streamline-based inversion method, we derived saturation and pressure drop sensitivities with respect to reservoir properties along streamline trajectories and integrated time-lapse seismic derived saturation and pressure changes along with production data using a synthetic model and the Brugge field model. Our results show the importance of accounting for both saturation and pressure changes in the reservoir responses in order to constrain the history matching solutions. Finally we demonstrated the practical feasibility of a proposed structured work- flow for time-lapse seismic and production data integration through the Norne field application. Our proposed method follows a two-step approach: global and local model calibrations. In the global step, we reparameterize the field permeability het- erogeneity with a Grid Connectivity-based Transformation with the basis coefficient as parameters and use a Pareto-based multi-objective evolutionary algorithm to integrate field cumulative production and time-lapse seismic derived acoustic impedance change data. The method generates a suite of trade-off solutions while fitting production and seismic data. In the local step, first the time-lapse seismic data is integrated using the streamline-derived sensitivities of acoustic impedance with respect to reservoir permeability incorporating ... Thesis Norne field Texas A&M University Digital Repository
institution Open Polar
collection Texas A&M University Digital Repository
op_collection_id fttexasamuniv
language English
topic ensemble Kalman Filter
streamline
inversion
time lapse seismic
history matching
4D seismic
covariance localization
spellingShingle ensemble Kalman Filter
streamline
inversion
time lapse seismic
history matching
4D seismic
covariance localization
Watanabe, Shingo
Stochastic and Deterministic Inversion Methods for History Matching of Production and Time-Lapse Seismic Data
topic_facet ensemble Kalman Filter
streamline
inversion
time lapse seismic
history matching
4D seismic
covariance localization
description Automatic history matching methods utilize various kinds of inverse modeling techniques. In this dissertation, we examine ensemble Kalman filter as a stochastic approach for assimilating different types of production data and streamline-based inversion methods as a deterministic approach for integrating both production and time-lapse seismic data into high resolution reservoir models. For the ensemble Kalman filter, we develope a physically motivated phase streamline-based covariance localization method to improve data assimilation performance while capturing geologic continuities that affect the flow dynamics and preserving model variability among the ensemble of models. For the streamline-based inversion method, we derived saturation and pressure drop sensitivities with respect to reservoir properties along streamline trajectories and integrated time-lapse seismic derived saturation and pressure changes along with production data using a synthetic model and the Brugge field model. Our results show the importance of accounting for both saturation and pressure changes in the reservoir responses in order to constrain the history matching solutions. Finally we demonstrated the practical feasibility of a proposed structured work- flow for time-lapse seismic and production data integration through the Norne field application. Our proposed method follows a two-step approach: global and local model calibrations. In the global step, we reparameterize the field permeability het- erogeneity with a Grid Connectivity-based Transformation with the basis coefficient as parameters and use a Pareto-based multi-objective evolutionary algorithm to integrate field cumulative production and time-lapse seismic derived acoustic impedance change data. The method generates a suite of trade-off solutions while fitting production and seismic data. In the local step, first the time-lapse seismic data is integrated using the streamline-derived sensitivities of acoustic impedance with respect to reservoir permeability incorporating ...
author2 Datta-Gupta, Akhil
King, Michael J
Gildin, Eduardo
Ikelle, Luc T
format Thesis
author Watanabe, Shingo
author_facet Watanabe, Shingo
author_sort Watanabe, Shingo
title Stochastic and Deterministic Inversion Methods for History Matching of Production and Time-Lapse Seismic Data
title_short Stochastic and Deterministic Inversion Methods for History Matching of Production and Time-Lapse Seismic Data
title_full Stochastic and Deterministic Inversion Methods for History Matching of Production and Time-Lapse Seismic Data
title_fullStr Stochastic and Deterministic Inversion Methods for History Matching of Production and Time-Lapse Seismic Data
title_full_unstemmed Stochastic and Deterministic Inversion Methods for History Matching of Production and Time-Lapse Seismic Data
title_sort stochastic and deterministic inversion methods for history matching of production and time-lapse seismic data
publishDate 2014
url https://hdl.handle.net/1969.1/151664
genre Norne field
genre_facet Norne field
op_relation https://hdl.handle.net/1969.1/151664
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