Volume 32, Issue 2 (Dec 2013)                   jame 2013, 32(2): 117-124 | Back to browse issues page

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Gh.R. Aghaei, M.R. Izadpanah, M. Eftekhari. Prediction of structural characteristics and magnetic properties of nanostructured Fe-Ni powders by artificial neural network. jame 2013; 32 (2) :117-124
URL: http://jame.iut.ac.ir/article-1-564-en.html
Shahid Bahonar University of Kerman , gholamrezaaghaei@yahoo.com
Abstract:   (6173 Views)
Mechanical alloying technique is used for production of nanostructured soft magnetic alloys. In this work the back propagation (BP) artificial neural adopted to model the effect of various mechanical alloying parameters i.e. milling time and chemical composition, on the properties of Fe-Ni powders. Lattice parameter, grain size, lattice strain, coersivity and saturation intrinsic flux density are considered as the output of five BP neural networks. The results obtained show the efficiency of designed networks for the prediction of the properties of Fe-Ni powders.
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Type of Study: Research | Subject: General
Received: 2015/02/9 | Accepted: 2015/05/6 | Published: 2015/05/6

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