Artificial Neural Networks Study on Prediction of Dielectric Permittivity of Basalt/PANI Composites
Author(s) -
Önder EYECİOĞLU,
Mehmet Kılıç,
Yaşar Karabul,
Ümit Alkan,
Orhan İçelli
Publication year - 2016
Publication title -
international journal of engineering technologies ijet
Language(s) - English
Resource type - Journals
eISSN - 2149-0104
pISSN - 2149-5262
DOI - 10.19072/ijet.27769
Subject(s) - composite material , dielectric , materials science , permittivity , dielectric permittivity , artificial neural network , basalt , computer science , machine learning , geology , geochemistry , optoelectronics
In the present study, the dielectric permittivity change of basalt (two type basalt; CM-1, KYZ-13) reinforced PANI composites were studied to determine the effects of PANI additivities (10.0, 25.0, 50.0 wt.%) at several frequencies from 100 Hz to 17.5 MHz by a dielectric spectroscopy method at the room temperature and artificial neural networks (ANNs) simulation. Also, the dielectric permittivity at 30.0 wt.% of PANI additivity was obtained by ANNs without experimental process. That process, a significant predictive instrument was produced which allows optimization of dielectric properties for numerous composites without substantial experimentation. It has been observed that PANI additivities decreased to dielectric constant of composites at low frequencies. Furthermore, the ANNs method have satisfactory accuracy for prediction of dielectric parameters.
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