Feedforward Neural Network for joint inversion of geophysical data to identify geothermal sweet spots in Gandhar, Gujarat, India

Artificial Neural Networks (ANNs) are used in numerous engineering and scientific disciplines as an automated approach to resolve a number of problems. However, to build an artificial neural network that is prudent enough to rely on, vast quantities of relevant data have to be fed. In this study, we...

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Main Authors: Apurwa Yadav, Kriti Yadav, Anirbid Sircar
Format: Article
Language:English
Published: KeAi Communications Co., Ltd. 2021-07-01
Series:Energy Geoscience
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2666759221000019
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spelling doaj-dbfb22264b254d9d9627c0e6f0d3bf872021-06-21T04:26:15ZengKeAi Communications Co., Ltd.Energy Geoscience2666-75922021-07-0123189200Feedforward Neural Network for joint inversion of geophysical data to identify geothermal sweet spots in Gandhar, Gujarat, IndiaApurwa Yadav0Kriti Yadav1 Anirbid Sircar2Silver Oak College of Engineering and Technology, S.G. Road, Gujarat, IndiaCentre of Excellence for Geothermal Energy, Pandit Deendayal Petroleum University, Raisan, Gandhinagar, 382007, Gujarat, India; Corresponding author. Centre of Excellence for Geothermal Energy, Pandit Deendayal Petroleum University, Raisan, Gandhinagar, 382007. Gujarat, India.DG, GERMI and Head, Centre of Excellence for Geothermal Energy, Pandit Deendayal Petroleum University, Raisan, Gandhinagar, 382007, Gujarat, IndiaArtificial Neural Networks (ANNs) are used in numerous engineering and scientific disciplines as an automated approach to resolve a number of problems. However, to build an artificial neural network that is prudent enough to rely on, vast quantities of relevant data have to be fed. In this study, we analysed the scope of artificial neural networks in geothermal reservoir architecture. In particular, we attempted to solve joint inversion problem through Feedforward Neural Network (FNN) technique. In order to identify geothermal sweet spots in the subsurface, an extensive geophysical studies were conducted in Gandhar area of Gujarat, India. The data were acquired along six profile lines for gravity, magnetics and magnetotellurics. Initially low velocity zone was identified using refraction seismic technique in order to set a common datum level for other potential data. The depth of low velocity zone in Gandhar was identified at 11 m. The FNN backpropagation method was applied to gain the global minima of the data space and model space as desired. The input dataset fed to the inversion algorithm in the form of gravity, magnetic susceptibility and resistivity helped to predict the suitable model after network training in multiple steps. The joint inversion of data is conducive to understanding the subsurface geological and lithological features along with probable geothermal sweet spots. The results of this study show the geothermal sweet spots at depth ranging from 200 m to 300 m. The results from our study can be used for targeted zones for geothermal water exploitation.http://www.sciencedirect.com/science/article/pii/S2666759221000019Artificial neural network (ANN)GeothermFeedforward neural network (FNN)GeophysicsMachine learning (ML)
collection DOAJ
language English
format Article
sources DOAJ
author Apurwa Yadav
Kriti Yadav
Anirbid Sircar
spellingShingle Apurwa Yadav
Kriti Yadav
Anirbid Sircar
Feedforward Neural Network for joint inversion of geophysical data to identify geothermal sweet spots in Gandhar, Gujarat, India
Energy Geoscience
Artificial neural network (ANN)
Geotherm
Feedforward neural network (FNN)
Geophysics
Machine learning (ML)
author_facet Apurwa Yadav
Kriti Yadav
Anirbid Sircar
author_sort Apurwa Yadav
title Feedforward Neural Network for joint inversion of geophysical data to identify geothermal sweet spots in Gandhar, Gujarat, India
title_short Feedforward Neural Network for joint inversion of geophysical data to identify geothermal sweet spots in Gandhar, Gujarat, India
title_full Feedforward Neural Network for joint inversion of geophysical data to identify geothermal sweet spots in Gandhar, Gujarat, India
title_fullStr Feedforward Neural Network for joint inversion of geophysical data to identify geothermal sweet spots in Gandhar, Gujarat, India
title_full_unstemmed Feedforward Neural Network for joint inversion of geophysical data to identify geothermal sweet spots in Gandhar, Gujarat, India
title_sort feedforward neural network for joint inversion of geophysical data to identify geothermal sweet spots in gandhar, gujarat, india
publisher KeAi Communications Co., Ltd.
series Energy Geoscience
issn 2666-7592
publishDate 2021-07-01
description Artificial Neural Networks (ANNs) are used in numerous engineering and scientific disciplines as an automated approach to resolve a number of problems. However, to build an artificial neural network that is prudent enough to rely on, vast quantities of relevant data have to be fed. In this study, we analysed the scope of artificial neural networks in geothermal reservoir architecture. In particular, we attempted to solve joint inversion problem through Feedforward Neural Network (FNN) technique. In order to identify geothermal sweet spots in the subsurface, an extensive geophysical studies were conducted in Gandhar area of Gujarat, India. The data were acquired along six profile lines for gravity, magnetics and magnetotellurics. Initially low velocity zone was identified using refraction seismic technique in order to set a common datum level for other potential data. The depth of low velocity zone in Gandhar was identified at 11 m. The FNN backpropagation method was applied to gain the global minima of the data space and model space as desired. The input dataset fed to the inversion algorithm in the form of gravity, magnetic susceptibility and resistivity helped to predict the suitable model after network training in multiple steps. The joint inversion of data is conducive to understanding the subsurface geological and lithological features along with probable geothermal sweet spots. The results of this study show the geothermal sweet spots at depth ranging from 200 m to 300 m. The results from our study can be used for targeted zones for geothermal water exploitation.
topic Artificial neural network (ANN)
Geotherm
Feedforward neural network (FNN)
Geophysics
Machine learning (ML)
url http://www.sciencedirect.com/science/article/pii/S2666759221000019
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AT kritiyadav feedforwardneuralnetworkforjointinversionofgeophysicaldatatoidentifygeothermalsweetspotsingandhargujaratindia
AT anirbidsircar feedforwardneuralnetworkforjointinversionofgeophysicaldatatoidentifygeothermalsweetspotsingandhargujaratindia
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