The new approach of “enhanced artificial neural network” (EANN) is developed based on the new generated hybrid nanocomposite of F-MWCNTs–Fe 3 O 4 /EG which represents the Functionalized Multi Walled Carbon Nano Tubes together with Fe 3 O 4 nanoparticles, dispersed in ethylene glycol (EG) as the base fluid. Moreover, a new suitable sensitivity analysis is presented which involves a novel proposed method for the sensitivity analysis via ANNs. In this method, the sensitivity of the outputs predicted by means of an ANN to the inputs is calculated analytically rather than numerically. The proposed method not only provides more perceptive, precise and accurate results, but also requires less computational time and cost. The proposed method can be used for all ANNs having various architectures, training algorithms and input–output data sets.

A novel sensitivity analysis model of EANN for F-MWCNTs–Fe 3 O 4 /EG nanofluid thermal conductivity: outputs predicted analytically instead of numerically to more accuracy and less costs a novel sensitivity analysis model of EANN for F-MWCNTs–Fe3O4/EG nanofluid thermal conductivity: outputs predicted analytically instead of numerically to more accuracy and less costs / Seyed Amin Bagherzadeh, ; D'Orazio, Annunziata; Arash, Karimipour; Marjan, Goodarzi; Quang-Vu, Bach. - In: PHYSICA. A. - ISSN 0378-4371. - 521:(2019), pp. 406-415. [10.1016/j.physa.2019.01.048]

A novel sensitivity analysis model of EANN for F-MWCNTs–Fe 3 O 4 /EG nanofluid thermal conductivity: outputs predicted analytically instead of numerically to more accuracy and less costs a novel sensitivity analysis model of EANN for F-MWCNTs–Fe3O4/EG nanofluid thermal conductivity: outputs predicted analytically instead of numerically to more accuracy and less costs

Annunziata D’Orazio;
2019

Abstract

The new approach of “enhanced artificial neural network” (EANN) is developed based on the new generated hybrid nanocomposite of F-MWCNTs–Fe 3 O 4 /EG which represents the Functionalized Multi Walled Carbon Nano Tubes together with Fe 3 O 4 nanoparticles, dispersed in ethylene glycol (EG) as the base fluid. Moreover, a new suitable sensitivity analysis is presented which involves a novel proposed method for the sensitivity analysis via ANNs. In this method, the sensitivity of the outputs predicted by means of an ANN to the inputs is calculated analytically rather than numerically. The proposed method not only provides more perceptive, precise and accurate results, but also requires less computational time and cost. The proposed method can be used for all ANNs having various architectures, training algorithms and input–output data sets.
2019
enhanced artificial neural network; training algorithms; sensitivity analysis; nanofluid
01 Pubblicazione su rivista::01a Articolo in rivista
A novel sensitivity analysis model of EANN for F-MWCNTs–Fe 3 O 4 /EG nanofluid thermal conductivity: outputs predicted analytically instead of numerically to more accuracy and less costs a novel sensitivity analysis model of EANN for F-MWCNTs–Fe3O4/EG nanofluid thermal conductivity: outputs predicted analytically instead of numerically to more accuracy and less costs / Seyed Amin Bagherzadeh, ; D'Orazio, Annunziata; Arash, Karimipour; Marjan, Goodarzi; Quang-Vu, Bach. - In: PHYSICA. A. - ISSN 0378-4371. - 521:(2019), pp. 406-415. [10.1016/j.physa.2019.01.048]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1279758
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