Applications of feedforward multilayer perceptron artificial neural networks and empirical correlation for prediction of thermal conductivity of Mg(OH)2-EG using experimental data

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Author listHemmat Esfe M., Afrand M., Wongwises S., Naderi A., Asadi A., Rostami S., Akbari M.

PublisherElsevier

Publication year2015

JournalInternational Communications in Heat and Mass Transfer (0735-1933)

Volume number67

Start page46

End page50

Number of pages5

ISSN0735-1933

eISSN1879-0178

URLhttps://www.scopus.com/inward/record.uri?eid=2-s2.0-84936945785&doi=10.1016%2fj.icheatmasstransfer.2015.06.015&partnerID=40&md5=2ed78710c9ccbbc3719264b29e7f4d59

LanguagesEnglish-Great Britain (EN-GB)


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Abstract

This paper presents an investigation on the thermal conductivity of nanofluids using experimental data, neural networks, and correlation for modeling thermal conductivity. The thermal conductivity of Mg(OH)2 nanoparticles with mean diameter of 10nm dispersed in ethylene glycol was determined by using a KD2-pro thermal analyzer. Based on the experimental data at different solid volume fractions and temperatures, an experimental correlation is proposed in terms of volume fraction and temperature. Then, the model of relative thermal conductivity as a function of volume fraction and temperature was developed via neural network based on the measured data. A network with two hidden layers and 5 neurons in each layer has the lowest error and highest fitting coefficient. By comparing the performance of the neural network model and the correlation derived from empirical data, it was revealed that the neural network can more accurately predict the Mg(OH)2-EG nanofluids' thermal conductivity. ฉ 2015 Elsevier Ltd.


Keywords

Artificial neural network


Last updated on 2023-03-10 at 07:35