Performance of Radial Basis Function and Group Method of Data Handling-type Neural-Networks in Flammability Characteristics Prediction of PMMA

Performance of Radial Basis Function and Group Method of Data Handling-type Neural-Networks in Flammability Characteristics Prediction of PMMA

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© 2023 by IJETT Journal
Volume-71 Issue-5
Year of Publication : 2023
Author : Mohammed Okoe Alhassan, Stephen Eduku, Doreen Ama Amoah, Joseph Sekyi-Ansah, Felix Uba
DOI : 10.14445/22315381/IJETT-V71I5P233

How to Cite?

Mohammed Okoe Alhassan, Stephen Eduku, Doreen Ama Amoah, Joseph Sekyi-Ansah, Felix Uba, "Performance of Radial Basis Function and Group Method of Data Handling-type Neural-Networks in Flammability Characteristics Prediction of PMMA," International Journal of Engineering Trends and Technology, vol. 71, no. 5, pp. 313-327, 2023. Crossref, https://doi.org/10.14445/22315381/IJETT-V71I5P233

Abstract
In this paper, the characterization of polymers fire behavior is studied for predicting the thermophysical flammability characteristics from developed supervised machine learning (SML) models. In the first stage, polymethyl methacrylate (PMMA) flammability properties, total heat release (THR) and heat release capacity (HRC) were examined and measured based on conducted micro-scale combustion calorimetry (MCC) experiments at varying heating rates (β) of milli-gram masses (m) ranging (0.1-3.5 Ks-1) and (1-3.5 mg) respectively. Normalized experimental data was then used to develop SML models, radial basis function (RBF) and group method of data handling (GMDH-type) neural networks (NN) using m and β as input variables for performance prediction of HRC and THR. GMDHNN model performed remarkably well, attaining nominal errors in predicting HRC. Also, in estimating THR, RBFNN attained values with improved outcomes as compared to GMDHNN; hence, RBFNN performed relatively better in predicting THR. Overall, both ML algorithms performed well; nonetheless, GMDHNN outperformed RBFNN for prediction. Moreover, the GMDHNN and RBFNN models provided the lowest mean errors compared with HRC outcomes for PMMA from other HRC estimation models in the literature. As a result, both GMDHNN and RBFNN serve as applicable tools for PMMA flammability properties estimation based on the MCC fire test.

Keywords
Flammability, Group method of data handling-type neural-network, Microscale combustion calorimetry, Polymethyl Methacrylate (PMMA), Radial basis function neural-network.

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