Prediction of petrophysical properties through comparative post-stack inversion techniques using advance Neural Networking

The sophisticated seismic inversion methodology can develop the relationship between the interpreted seismic data and the elastic properties of the reservoir. The comparative analysis of three seismic inversion techniques, Band limited inversion, Model Based inversion and stochastic inversion, is u...

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Main Authors: Pal Washa Shahzad Rathore, Matloob Hussain, Muhammad Bilal Malik, Sher Afgan
Format: Article
Language:English
Published: Elsevier 2022-08-01
Series:Kuwait Journal of Science
Online Access:https://journalskuwait.org/kjs/index.php/KJS/article/view/18279
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author Pal Washa Shahzad Rathore
Matloob Hussain
Muhammad Bilal Malik
Sher Afgan
author_facet Pal Washa Shahzad Rathore
Matloob Hussain
Muhammad Bilal Malik
Sher Afgan
author_sort Pal Washa Shahzad Rathore
collection DOAJ
description The sophisticated seismic inversion methodology can develop the relationship between the interpreted seismic data and the elastic properties of the reservoir. The comparative analysis of three seismic inversion techniques, Band limited inversion, Model Based inversion and stochastic inversion, is used to assess each technique's efficiency. The comparison also helps better understand reservoir petrophysical properties (Vclay and Effective porosity). The reservoir in the study area is the C-interval sands of the Lower Goru Formation. Data used in the present research work include 3D seismic cube and bore-hole logs data of six wells drilled in the study area. For the calculation of Petrophysical properties (Vclay and Effective porosity), inverted attributes are used as an input in Probability Neural Networking along with Post-stack Time Migration. The is a useful technique for predicting desired petrophysics properties in sands encased within shales. The comparison of results from all three techniques after PNN is analyzed to achieve the study's goal. The results of Probability Neural Networking using stochastic inversion attribute match the blind well and resolute delicately the reservoir potential along with populating the depositional environment of the three segregated sand bodies. In the present study, the model is trained to predict well location using the petrophysical well logs data, Inverted Impedance, and seismic data. After the training of the model, it is used to predict the entire seismic cube.
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issn 2307-4108
2307-4116
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publishDate 2022-08-01
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spelling doaj-art-ea57445059d740e58cdb4dbfefb9009c2025-08-20T02:03:36ZengElsevierKuwait Journal of Science2307-41082307-41162022-08-01501B10.48129/kjs.18279Prediction of petrophysical properties through comparative post-stack inversion techniques using advance Neural NetworkingPal Washa Shahzad Rathore0Matloob Hussain1Muhammad Bilal Malik2Sher Afgan3Dept. of Earth Sciences, Quaid-i-Azam University, Islamabad, PakistanDept. of Earth Sciences, Quaid-i-Azam University, Islamabad, PakistanDept. of Earth Sciences, Quaid-i-Azam University, Islamabad, PakistanInstitute of Geology, University of the Punjab, Lahore 54000, Pakistan The sophisticated seismic inversion methodology can develop the relationship between the interpreted seismic data and the elastic properties of the reservoir. The comparative analysis of three seismic inversion techniques, Band limited inversion, Model Based inversion and stochastic inversion, is used to assess each technique's efficiency. The comparison also helps better understand reservoir petrophysical properties (Vclay and Effective porosity). The reservoir in the study area is the C-interval sands of the Lower Goru Formation. Data used in the present research work include 3D seismic cube and bore-hole logs data of six wells drilled in the study area. For the calculation of Petrophysical properties (Vclay and Effective porosity), inverted attributes are used as an input in Probability Neural Networking along with Post-stack Time Migration. The is a useful technique for predicting desired petrophysics properties in sands encased within shales. The comparison of results from all three techniques after PNN is analyzed to achieve the study's goal. The results of Probability Neural Networking using stochastic inversion attribute match the blind well and resolute delicately the reservoir potential along with populating the depositional environment of the three segregated sand bodies. In the present study, the model is trained to predict well location using the petrophysical well logs data, Inverted Impedance, and seismic data. After the training of the model, it is used to predict the entire seismic cube. https://journalskuwait.org/kjs/index.php/KJS/article/view/18279
spellingShingle Pal Washa Shahzad Rathore
Matloob Hussain
Muhammad Bilal Malik
Sher Afgan
Prediction of petrophysical properties through comparative post-stack inversion techniques using advance Neural Networking
Kuwait Journal of Science
title Prediction of petrophysical properties through comparative post-stack inversion techniques using advance Neural Networking
title_full Prediction of petrophysical properties through comparative post-stack inversion techniques using advance Neural Networking
title_fullStr Prediction of petrophysical properties through comparative post-stack inversion techniques using advance Neural Networking
title_full_unstemmed Prediction of petrophysical properties through comparative post-stack inversion techniques using advance Neural Networking
title_short Prediction of petrophysical properties through comparative post-stack inversion techniques using advance Neural Networking
title_sort prediction of petrophysical properties through comparative post stack inversion techniques using advance neural networking
url https://journalskuwait.org/kjs/index.php/KJS/article/view/18279
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AT muhammadbilalmalik predictionofpetrophysicalpropertiesthroughcomparativepoststackinversiontechniquesusingadvanceneuralnetworking
AT sherafgan predictionofpetrophysicalpropertiesthroughcomparativepoststackinversiontechniquesusingadvanceneuralnetworking