Publication:
Prediction of Wear Properties of Graphene-Si3N4 Reinforced Titanium Hybrid Composites by Artificial Neural Network

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In this study, we have employed artificial neural network (ANN) method to predict wear properties of titanium hybrid composites produced by powder metallurgy (PM) method. Titanium (Ti) was used as a matrix materials and graphene nano-platelets (GNPs)-Si3N4 were used as reinforcement materials in hybrid composites. A back-propagation neural network with 3-6-1 architecture was developed to predict wear rates by considering weight fraction reinforcements, load and density as model variables. The well trained ANN system predicted the experimental results in a good agreement with the experimental data. This refers that ANN can be used to evaluate wear rate of samples in a cost effective way.

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Mutuk, Tuğba/0000-0003-0143-2721;

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Q3

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Q3

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Materials Research Express

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7

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8

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