Prediction of Subsurface Fluid Flow via Physics Informed Neural Networks

Geoenergies such as underground gas storage and energy storage, geothermal energy and geologic carbon storage are key technologies on the way to the foreseeable energy transition. The reservoir characterization in these projects remains challenging since predictive modeling approaches face limitations in identifying the spatial distribution of distinct lithologies and their hydro-mechanical properties from downwell testing procedures. Pumping tests are usually carried out to infer permeability, but offer only few observation points in space and require large extrapolation through inversion. The application of Physics Informed Neural Networks (PINN) offers a promising solution which can seamlessly incorporate field data, while enforcing the accordance with physical laws in the domain of study. This concept is implemented via two distinct loss terms for both the physical constraints and for the observational data in the loss function of an Artificial Neural Network (ANN). The physics-informed loss term contains a mass balance equation consisting of a storage and a diffusion component. The process is considered to be purely hydraulic and Darcy flow is assumed. The observational loss term compares the output of the ANN to a set of training data. This set consists of the system’s initial fluid pressure, as well as of a fluid pressure time series at the domain boundaries and at the borehole location. Preliminary results suggest that our PINN model is able to forecast the spatiotemporal fluid pressure distribution in a 2D domain for a variety of pumping test schemes. In this way, we give a first impression of the opportunities that PINN applications offer in the field of reservoir modeling.

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Main Authors: Walter, Linus, Parisio, Francesco, Vilarrasa, Víctor
Format: comunicación de congreso biblioteca
Language:English
Published: 2023-03
Subjects:Physics Informed Neural Networks, Fluid flow,
Online Access:http://hdl.handle.net/10261/310932
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spelling dig-idaea-es-10261-3109322023-06-08T05:49:14Z Prediction of Subsurface Fluid Flow via Physics Informed Neural Networks Walter, Linus Parisio, Francesco Vilarrasa, Víctor Physics Informed Neural Networks Fluid flow Geoenergies such as underground gas storage and energy storage, geothermal energy and geologic carbon storage are key technologies on the way to the foreseeable energy transition. The reservoir characterization in these projects remains challenging since predictive modeling approaches face limitations in identifying the spatial distribution of distinct lithologies and their hydro-mechanical properties from downwell testing procedures. Pumping tests are usually carried out to infer permeability, but offer only few observation points in space and require large extrapolation through inversion. The application of Physics Informed Neural Networks (PINN) offers a promising solution which can seamlessly incorporate field data, while enforcing the accordance with physical laws in the domain of study. This concept is implemented via two distinct loss terms for both the physical constraints and for the observational data in the loss function of an Artificial Neural Network (ANN). The physics-informed loss term contains a mass balance equation consisting of a storage and a diffusion component. The process is considered to be purely hydraulic and Darcy flow is assumed. The observational loss term compares the output of the ANN to a set of training data. This set consists of the system’s initial fluid pressure, as well as of a fluid pressure time series at the domain boundaries and at the borehole location. Preliminary results suggest that our PINN model is able to forecast the spatiotemporal fluid pressure distribution in a 2D domain for a variety of pumping test schemes. In this way, we give a first impression of the opportunities that PINN applications offer in the field of reservoir modeling. Peer reviewed 2023-06-08T05:49:14Z 2023-06-08T05:49:14Z 2023-03 comunicación de congreso EGU General Assembly 2022, Geophysical Research Abstracts, Vol. 24, Vienna, Austria, 23-27 May 2022 http://hdl.handle.net/10261/310932 en Sí open
institution IDAEA ES
collection DSpace
country España
countrycode ES
component Bibliográfico
access En linea
databasecode dig-idaea-es
tag biblioteca
region Europa del Sur
libraryname Biblioteca del IDAEA España
language English
topic Physics Informed Neural Networks
Fluid flow
Physics Informed Neural Networks
Fluid flow
spellingShingle Physics Informed Neural Networks
Fluid flow
Physics Informed Neural Networks
Fluid flow
Walter, Linus
Parisio, Francesco
Vilarrasa, Víctor
Prediction of Subsurface Fluid Flow via Physics Informed Neural Networks
description Geoenergies such as underground gas storage and energy storage, geothermal energy and geologic carbon storage are key technologies on the way to the foreseeable energy transition. The reservoir characterization in these projects remains challenging since predictive modeling approaches face limitations in identifying the spatial distribution of distinct lithologies and their hydro-mechanical properties from downwell testing procedures. Pumping tests are usually carried out to infer permeability, but offer only few observation points in space and require large extrapolation through inversion. The application of Physics Informed Neural Networks (PINN) offers a promising solution which can seamlessly incorporate field data, while enforcing the accordance with physical laws in the domain of study. This concept is implemented via two distinct loss terms for both the physical constraints and for the observational data in the loss function of an Artificial Neural Network (ANN). The physics-informed loss term contains a mass balance equation consisting of a storage and a diffusion component. The process is considered to be purely hydraulic and Darcy flow is assumed. The observational loss term compares the output of the ANN to a set of training data. This set consists of the system’s initial fluid pressure, as well as of a fluid pressure time series at the domain boundaries and at the borehole location. Preliminary results suggest that our PINN model is able to forecast the spatiotemporal fluid pressure distribution in a 2D domain for a variety of pumping test schemes. In this way, we give a first impression of the opportunities that PINN applications offer in the field of reservoir modeling.
format comunicación de congreso
topic_facet Physics Informed Neural Networks
Fluid flow
author Walter, Linus
Parisio, Francesco
Vilarrasa, Víctor
author_facet Walter, Linus
Parisio, Francesco
Vilarrasa, Víctor
author_sort Walter, Linus
title Prediction of Subsurface Fluid Flow via Physics Informed Neural Networks
title_short Prediction of Subsurface Fluid Flow via Physics Informed Neural Networks
title_full Prediction of Subsurface Fluid Flow via Physics Informed Neural Networks
title_fullStr Prediction of Subsurface Fluid Flow via Physics Informed Neural Networks
title_full_unstemmed Prediction of Subsurface Fluid Flow via Physics Informed Neural Networks
title_sort prediction of subsurface fluid flow via physics informed neural networks
publishDate 2023-03
url http://hdl.handle.net/10261/310932
work_keys_str_mv AT walterlinus predictionofsubsurfacefluidflowviaphysicsinformedneuralnetworks
AT parisiofrancesco predictionofsubsurfacefluidflowviaphysicsinformedneuralnetworks
AT vilarrasavictor predictionofsubsurfacefluidflowviaphysicsinformedneuralnetworks
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