Back propagation modeling of shear stress and viscosity of aqueous Ionic-MXene nanofluids

Back-propagation modeling of viscosity and shear stress of Ionic-MXene nanofluid is carried out in this work. The data for Ionic-MXene nanofluid of 0.05, 0.1, and 0.2 mass concentration (mass%) are collected from the experimental analysis. Shear stress and viscosity as a function of shear rate and m...

Full description

Saved in:
Bibliographic Details
Main Authors: Afzal, Asif, Yashawantha, K. M., Aslfattahi, Navid, Saidur, R., Razak, R. K. Abdul, Subbiah, Ram
Format: Article
Published: Springer 2021
Subjects:
Online Access:http://eprints.um.edu.my/28226/
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Universiti Malaya
id my.um.eprints.28226
record_format eprints
spelling my.um.eprints.282262022-03-05T02:45:57Z http://eprints.um.edu.my/28226/ Back propagation modeling of shear stress and viscosity of aqueous Ionic-MXene nanofluids Afzal, Asif Yashawantha, K. M. Aslfattahi, Navid Saidur, R. Razak, R. K. Abdul Subbiah, Ram QD Chemistry Back-propagation modeling of viscosity and shear stress of Ionic-MXene nanofluid is carried out in this work. The data for Ionic-MXene nanofluid of 0.05, 0.1, and 0.2 mass concentration (mass%) are collected from the experimental analysis. Shear stress and viscosity as a function of shear rate and mass% of MXene nanoparticles is used as input. Additionally, viscosity as a function of temperature and % of MXene nanoparticles is collected separately. Based on the possible combinations, five back-propagation algorithms are developed. In each algorithm, five models depending upon the number of neurons in the hidden layer are used. The training and testing of all the models in each algorithm are performed. Statistical analysis of the network output is done to evaluate the accuracy of models by finding the losses in terms of mean squared error (MAE), root-mean-squared error, mean absolute error, (MAE), and error deviation. Model 1 is found to have lower accuracy than the remaining models as the number of neurons in its hidden layer is only one. The performance evaluation metrices of the back-propagation model show that the error involved is acceptable. The training and testing of the algorithms are satisfactory as the network output is found to be in comfortably good agreement with the desired experimental output. Springer 2021-08 Article PeerReviewed Afzal, Asif and Yashawantha, K. M. and Aslfattahi, Navid and Saidur, R. and Razak, R. K. Abdul and Subbiah, Ram (2021) Back propagation modeling of shear stress and viscosity of aqueous Ionic-MXene nanofluids. Journal of Thermal Analysis and Calorimetry, 145 (4). pp. 2129-2149. ISSN 1388-6150, DOI https://doi.org/10.1007/s10973-021-10743-0 <https://doi.org/10.1007/s10973-021-10743-0>. 10.1007/s10973-021-10743-0
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic QD Chemistry
spellingShingle QD Chemistry
Afzal, Asif
Yashawantha, K. M.
Aslfattahi, Navid
Saidur, R.
Razak, R. K. Abdul
Subbiah, Ram
Back propagation modeling of shear stress and viscosity of aqueous Ionic-MXene nanofluids
description Back-propagation modeling of viscosity and shear stress of Ionic-MXene nanofluid is carried out in this work. The data for Ionic-MXene nanofluid of 0.05, 0.1, and 0.2 mass concentration (mass%) are collected from the experimental analysis. Shear stress and viscosity as a function of shear rate and mass% of MXene nanoparticles is used as input. Additionally, viscosity as a function of temperature and % of MXene nanoparticles is collected separately. Based on the possible combinations, five back-propagation algorithms are developed. In each algorithm, five models depending upon the number of neurons in the hidden layer are used. The training and testing of all the models in each algorithm are performed. Statistical analysis of the network output is done to evaluate the accuracy of models by finding the losses in terms of mean squared error (MAE), root-mean-squared error, mean absolute error, (MAE), and error deviation. Model 1 is found to have lower accuracy than the remaining models as the number of neurons in its hidden layer is only one. The performance evaluation metrices of the back-propagation model show that the error involved is acceptable. The training and testing of the algorithms are satisfactory as the network output is found to be in comfortably good agreement with the desired experimental output.
format Article
author Afzal, Asif
Yashawantha, K. M.
Aslfattahi, Navid
Saidur, R.
Razak, R. K. Abdul
Subbiah, Ram
author_facet Afzal, Asif
Yashawantha, K. M.
Aslfattahi, Navid
Saidur, R.
Razak, R. K. Abdul
Subbiah, Ram
author_sort Afzal, Asif
title Back propagation modeling of shear stress and viscosity of aqueous Ionic-MXene nanofluids
title_short Back propagation modeling of shear stress and viscosity of aqueous Ionic-MXene nanofluids
title_full Back propagation modeling of shear stress and viscosity of aqueous Ionic-MXene nanofluids
title_fullStr Back propagation modeling of shear stress and viscosity of aqueous Ionic-MXene nanofluids
title_full_unstemmed Back propagation modeling of shear stress and viscosity of aqueous Ionic-MXene nanofluids
title_sort back propagation modeling of shear stress and viscosity of aqueous ionic-mxene nanofluids
publisher Springer
publishDate 2021
url http://eprints.um.edu.my/28226/
_version_ 1735409545586409472