Prediction of density, porosity and hardness in aluminum-copper-based composite materials using artificial neural network

Adel Mahamood Hassan, Abdalla Alrashdan, Mohammed T. Hayajneh, Ahmad Turki Mayyas

Research output: Contribution to journalArticlepeer-review

171 Scopus citations

Abstract

The potential of using feed forward backpropagation neural network in prediction of some physical properties and hardness of aluminium-copper/silicon carbide composites synthesized by compocasting method has been studied in the present work. Two input vectors were used in the construction of proposed network; namely weight percentage of the copper and volume fraction of the reinforced particles. Density, porosity and hardness were the three outputs developed from the proposed network. Effects of addition of copper as alloying element and silicon carbide as reinforcement particles to Al-4 wt.% Mg metal matrix have been investigated by using artificial neural networks. The maximum absolute relative error for predicted values does not exceed 5.99%. Therefore, by using ANN outputs, satisfactory results can be estimated rather than measured and hence reduce testing time and cost.

Original languageBritish English
Pages (from-to)894-899
Number of pages6
JournalJournal of Materials Processing Technology
Volume209
Issue number2
DOIs
StatePublished - 19 Jan 2009

Keywords

  • Aluminum matrix composites
  • Artificial neural network
  • Compocasting
  • Hardness
  • Metal matrix composite

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