Title of article :
A Comparison between MLP and SVR Models in Prediction of Thermal Properties of Nano Fluids
Author/Authors :
Kavitha, R Parisutham Institute of Technology and Science, Tamil Nadu, India , Mukesh Kumar, P. C University College of Engineering Dindigul, Tamil Nadu, India
Abstract :
Desirable thermal properties of nanofluid is the vital reason for using nanofluid. There is an exemplary
development in various applications using nanofluid. Mathematical and experimental models were developed
to predict the thermal properties of nanofluids, the models are tiresome and expensive and have discrepancies
between them. Soft computing tools are most useful in prediction, classification and clustering the data with
good accuracy and with less expensive. In this paper, comparative analysis of Multi Layer Perceptron (MLP)
model and Support Vector Regression (SVR) model were done by using various evaluation criterions. The
two models developed to predict the thermal conductivity ratio of CNT/H2O and the results were compared.
The present modeling has been carried out using MATLAB 2017 b. In both the models, the experimental
values and predicted values possess good accordance. Regression coefficient value (R2) for overall data is
0.99 and 0.98 for MLP and SVR models respectively. The Root Mean Square Error (RMSE) value is less in
MLP model when compared with SVR model, RMSE values are 0.01578 and 0.01812 respectively. The
prediction is best in MLP model but with limited experimental data set, it fails to address over fitting
problem, whereas SVR model is ideal with limited data set, it overcomes over fitting problem and possess
better generalization than MLP model.
Keywords :
Support vector regression , Multilayer perceptron , Artificial neural network , Thermal conductivity , Nano fluids
Journal title :
Astroparticle Physics