Using Neural Network for Determination of Viscosity in Water-TiO Nanofluid

Using nanofluids is a novel solution to enhance heat transfer. This study tries to extract the model of viscosity changes in water-TiO 2 nanofluid through examining the effect of temperature and volume fraction on the viscosity. Results were recorded and analyzed within temperature range of 25 to 70...

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Main Authors: Mehdi Bahiraei, Seyed Mostafa Hosseinalipour, Kaveh Zabihi, Ehsan Taheran
Format: Article
Language:English
Published: SAGE Publishing 2012-01-01
Series:Advances in Mechanical Engineering
Online Access:https://doi.org/10.1155/2012/742680
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spelling doaj-7abb4715223f4537914d2ecf697a7ca72020-11-25T03:14:06ZengSAGE PublishingAdvances in Mechanical Engineering1687-81322012-01-01410.1155/2012/74268010.1155_2012/742680Using Neural Network for Determination of Viscosity in Water-TiO NanofluidMehdi BahiraeiSeyed Mostafa HosseinalipourKaveh ZabihiEhsan TaheranUsing nanofluids is a novel solution to enhance heat transfer. This study tries to extract the model of viscosity changes in water-TiO 2 nanofluid through examining the effect of temperature and volume fraction on the viscosity. Results were recorded and analyzed within temperature range of 25 to 70°C with increments of five for 0.1, 0.4, 0.7, and 1% volume fractions. The obtained results demonstrated that the viscosity of this nanofluid decreases by increasing the temperature and increases by raising the volume fraction. The results show that conventional correlations are unable to properly predict nanofluid viscosity especially at high volume fractions. A model was developed by the data obtained from experiments to estimate viscosity of water-TiO 2 nanofluid based on two variables of temperature and volume fraction using neural network. The proposed model was qualified as highly competent for determination of nanofluid viscosity.https://doi.org/10.1155/2012/742680
collection DOAJ
language English
format Article
sources DOAJ
author Mehdi Bahiraei
Seyed Mostafa Hosseinalipour
Kaveh Zabihi
Ehsan Taheran
spellingShingle Mehdi Bahiraei
Seyed Mostafa Hosseinalipour
Kaveh Zabihi
Ehsan Taheran
Using Neural Network for Determination of Viscosity in Water-TiO Nanofluid
Advances in Mechanical Engineering
author_facet Mehdi Bahiraei
Seyed Mostafa Hosseinalipour
Kaveh Zabihi
Ehsan Taheran
author_sort Mehdi Bahiraei
title Using Neural Network for Determination of Viscosity in Water-TiO Nanofluid
title_short Using Neural Network for Determination of Viscosity in Water-TiO Nanofluid
title_full Using Neural Network for Determination of Viscosity in Water-TiO Nanofluid
title_fullStr Using Neural Network for Determination of Viscosity in Water-TiO Nanofluid
title_full_unstemmed Using Neural Network for Determination of Viscosity in Water-TiO Nanofluid
title_sort using neural network for determination of viscosity in water-tio nanofluid
publisher SAGE Publishing
series Advances in Mechanical Engineering
issn 1687-8132
publishDate 2012-01-01
description Using nanofluids is a novel solution to enhance heat transfer. This study tries to extract the model of viscosity changes in water-TiO 2 nanofluid through examining the effect of temperature and volume fraction on the viscosity. Results were recorded and analyzed within temperature range of 25 to 70°C with increments of five for 0.1, 0.4, 0.7, and 1% volume fractions. The obtained results demonstrated that the viscosity of this nanofluid decreases by increasing the temperature and increases by raising the volume fraction. The results show that conventional correlations are unable to properly predict nanofluid viscosity especially at high volume fractions. A model was developed by the data obtained from experiments to estimate viscosity of water-TiO 2 nanofluid based on two variables of temperature and volume fraction using neural network. The proposed model was qualified as highly competent for determination of nanofluid viscosity.
url https://doi.org/10.1155/2012/742680
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