Development of a Universal Pressure Drop Model in Pipelines Using Group Method of Data Handling-Type Neural Networks Model

This paper presents a universal pressure drop model in pipelines using the group method of data handling (GMDH)-type neural networks technique. The model has been generated and validated under three phase flow conditions. As it is quite known in production engineering that estimating pressure drop u...

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Main Authors: Ayoub, Mohammed Abdalla, Elraies, Khaled A
Format: Conference or Workshop Item
Published: 2013
Online Access:http://eprints.utp.edu.my/10628/2/Development%20of%20a%20Universal%20Pressure%20Drop%20Model%20in%20Pipelines%20Using%20Group%20Method%20of%20Data%20Handling.pdf
http://www.iogse2013.tasacad.org/
http://eprints.utp.edu.my/10628/
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spelling my.utp.eprints.106282017-03-20T08:33:14Z Development of a Universal Pressure Drop Model in Pipelines Using Group Method of Data Handling-Type Neural Networks Model Ayoub, Mohammed Abdalla Elraies, Khaled A This paper presents a universal pressure drop model in pipelines using the group method of data handling (GMDH)-type neural networks technique. The model has been generated and validated under three phase flow conditions. As it is quite known in production engineering that estimating pressure drop under different angles of inclination is of a massive value for design purposes. The new correlation was made simple for the purpose of eliminating the tedious and yet the inaccurate and cumbersome conventional methods such as empirical correlations and mechanistic methods. In this paper, GMDH-type neural networks technique has been utilized as a powerful modeling tool to establish the complex relationship between the most relevant input parameters and the pressure drop in pipeline systems under wide range of angles of inclination. The performance of the model has been evaluated against the best commonly available empirical correlations and mechanistic models in the literature. Statistical and graphical tools were also utilized to show the significance of the generated model. The new developed model reduced the curse of dimensionality in terms of the low number of input parameters that have been utilized as compared to the existing models. 2013-09 Conference or Workshop Item PeerReviewed application/pdf http://eprints.utp.edu.my/10628/2/Development%20of%20a%20Universal%20Pressure%20Drop%20Model%20in%20Pipelines%20Using%20Group%20Method%20of%20Data%20Handling.pdf http://www.iogse2013.tasacad.org/ Ayoub, Mohammed Abdalla and Elraies, Khaled A (2013) Development of a Universal Pressure Drop Model in Pipelines Using Group Method of Data Handling-Type Neural Networks Model. In: International Oil and Gas Symposium and Exhibition (IOGSE-2013), 2013-10-09 - 2013-10-11, Sabah. (Submitted) http://eprints.utp.edu.my/10628/
institution Universiti Teknologi Petronas
building UTP Resource Centre
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Petronas
content_source UTP Institutional Repository
url_provider http://eprints.utp.edu.my/
description This paper presents a universal pressure drop model in pipelines using the group method of data handling (GMDH)-type neural networks technique. The model has been generated and validated under three phase flow conditions. As it is quite known in production engineering that estimating pressure drop under different angles of inclination is of a massive value for design purposes. The new correlation was made simple for the purpose of eliminating the tedious and yet the inaccurate and cumbersome conventional methods such as empirical correlations and mechanistic methods. In this paper, GMDH-type neural networks technique has been utilized as a powerful modeling tool to establish the complex relationship between the most relevant input parameters and the pressure drop in pipeline systems under wide range of angles of inclination. The performance of the model has been evaluated against the best commonly available empirical correlations and mechanistic models in the literature. Statistical and graphical tools were also utilized to show the significance of the generated model. The new developed model reduced the curse of dimensionality in terms of the low number of input parameters that have been utilized as compared to the existing models.
format Conference or Workshop Item
author Ayoub, Mohammed Abdalla
Elraies, Khaled A
spellingShingle Ayoub, Mohammed Abdalla
Elraies, Khaled A
Development of a Universal Pressure Drop Model in Pipelines Using Group Method of Data Handling-Type Neural Networks Model
author_facet Ayoub, Mohammed Abdalla
Elraies, Khaled A
author_sort Ayoub, Mohammed Abdalla
title Development of a Universal Pressure Drop Model in Pipelines Using Group Method of Data Handling-Type Neural Networks Model
title_short Development of a Universal Pressure Drop Model in Pipelines Using Group Method of Data Handling-Type Neural Networks Model
title_full Development of a Universal Pressure Drop Model in Pipelines Using Group Method of Data Handling-Type Neural Networks Model
title_fullStr Development of a Universal Pressure Drop Model in Pipelines Using Group Method of Data Handling-Type Neural Networks Model
title_full_unstemmed Development of a Universal Pressure Drop Model in Pipelines Using Group Method of Data Handling-Type Neural Networks Model
title_sort development of a universal pressure drop model in pipelines using group method of data handling-type neural networks model
publishDate 2013
url http://eprints.utp.edu.my/10628/2/Development%20of%20a%20Universal%20Pressure%20Drop%20Model%20in%20Pipelines%20Using%20Group%20Method%20of%20Data%20Handling.pdf
http://www.iogse2013.tasacad.org/
http://eprints.utp.edu.my/10628/
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score 13.212249