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Artificial neural network technique to predict the properties of multiwall carbon nanotube-fly ash reinforced aluminium composite
Author(s) -
Udaya Devadiga,
Rakhesha Kumar R. Poojary,
Peter Fernandes
Publication year - 2019
Publication title -
journal of materials research and technology
Language(s) - English
Resource type - Journals
eISSN - 2214-0697
pISSN - 2238-7854
DOI - 10.1016/j.jmrt.2019.07.005
Subject(s) - materials science , ball mill , sintering , composite number , carbon nanotube , composite material , powder metallurgy , scanning electron microscope , aluminium , nano , fly ash , dispersion (optics) , relative density , physics , optics
In this study, prediction of density and hardness properties using artificial neural network (ANN) and micro structural evolution of multi walled carbon nano tubes (MWCNT) and fly ashes (FA)/Al composites produced by powder metallurgy were investigated. The influence of content (wt.%) of reinforcements(MWCNTs and FA), ball milling time and sintering time on the mechanical properties were experimentally determined by measuring density and hardness values which are the outputs obtained from the artificial neural network. It was found that amount of reinforcements, ball milling time and sintering time play a major role in dispersion and enhancement of the properties. It was also demonstrated that ANN model is a powerful prediction technique to predict the mechanical properties of the composites. Blend powder morphology and sintered composite structure were investigated by scanning electron microscope (SEM). It was found that reinforcements were well dispersed for prolonged ball milling time and sintering time.

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