4.6 Article

Artificial neural network for prediction of thermal conductivity of rGO-metal oxide nanocomposite-based nanofluids

Journal

NEURAL COMPUTING & APPLICATIONS
Volume 34, Issue 1, Pages 271-282

Publisher

SPRINGER LONDON LTD
DOI: 10.1007/s00521-021-06366-z

Keywords

Artificial neural network; Nanofluid; Thermal conductivity; rGO-metal oxide nanocomposites

Funding

  1. Laxminarayan Institute of Technology

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A four-input artificial neural network model was developed for predicting the thermal conductivity of rGO-metal oxide nanocomposite-based nanofluids. The model showed a good agreement with experimental data, achieving an R-2 value of 0.956 for the testing dataset, with a low average residual of +/- 0.048 W/mK.
A four-input artificial neural network (ANN) model has been presented for the prediction of thermal conductivity of rGO-metal oxide nanocomposite-based nanofluids. For this, data of five types of water-based nanofluids containing rGO-metal oxide nanocomposites particles were used from the available literature. The four-input variables considered were molecular weight of nanocomposite, average particle size of nanocomposites, concentration, and temperature of nanofluid which exhibited thermal conductivity of the nanofluids as output. Using the same architecture, two ANN models were developed, one using a total of 185 data points and the other by dividing the data points in two sets (training and testing). The model agreed well with the experimental data and exhibited an R-2 value of 0.956 for the testing data set. Also, the magnitude of deviation of the predicted thermal conductivity for all the data points was very less with an average residual of +/- 0.048 W/mK.

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