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Hauptverfasser: Khalili, Mahnaz, Göransson, Peter, Hesthaven, Jan S., Pasanen, Antti, Vauhkonen, Marko, Lähivaara, Timo
Format: Preprint
Veröffentlicht: 2022
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2211.14276
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author Khalili, Mahnaz
Göransson, Peter
Hesthaven, Jan S.
Pasanen, Antti
Vauhkonen, Marko
Lähivaara, Timo
author_facet Khalili, Mahnaz
Göransson, Peter
Hesthaven, Jan S.
Pasanen, Antti
Vauhkonen, Marko
Lähivaara, Timo
contents A potential framework to estimate the volume of water stored in a porous storage reservoir from seismic data is neural networks. In this study, the man-made groundwater reservoir is modeled as a coupled poroviscoelastic-viscoelastic medium, and the underlying wave propagation problem is solved using a three-dimensional discontinuous Galerkin method coupled with an Adams-Bashforth time stepping scheme. The wave problem solver is used to generate databases for the neural network-based machine learning model to estimate the water volume. In the numerical examples, we investigate a deconvolution-based approach to normalize the effect from the source wavelet in addition to the network's tolerance for noise levels. We also apply the SHapley Additive exPlanations method to obtain greater insight into which part of the input data contributes the most to the water volume estimation. The numerical results demonstrate the capacity of the fully connected neural network to estimate the amount of water stored in the porous storage reservoir.
format Preprint
id arxiv_https___arxiv_org_abs_2211_14276
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Monitoring of water volume in a porous reservoir using seismic data: A 3D simulation study
Khalili, Mahnaz
Göransson, Peter
Hesthaven, Jan S.
Pasanen, Antti
Vauhkonen, Marko
Lähivaara, Timo
Computational Physics
A potential framework to estimate the volume of water stored in a porous storage reservoir from seismic data is neural networks. In this study, the man-made groundwater reservoir is modeled as a coupled poroviscoelastic-viscoelastic medium, and the underlying wave propagation problem is solved using a three-dimensional discontinuous Galerkin method coupled with an Adams-Bashforth time stepping scheme. The wave problem solver is used to generate databases for the neural network-based machine learning model to estimate the water volume. In the numerical examples, we investigate a deconvolution-based approach to normalize the effect from the source wavelet in addition to the network's tolerance for noise levels. We also apply the SHapley Additive exPlanations method to obtain greater insight into which part of the input data contributes the most to the water volume estimation. The numerical results demonstrate the capacity of the fully connected neural network to estimate the amount of water stored in the porous storage reservoir.
title Monitoring of water volume in a porous reservoir using seismic data: A 3D simulation study
topic Computational Physics
url https://arxiv.org/abs/2211.14276