Title of article
Simulation of structural features on mechanochemical synthesis of Al2O3–TiB2 nanocomposite by optimized artificial neural network
Author/Authors
Ali Ghafari Nazari، نويسنده , , Masoud Mozafari، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2012
Pages
8
From page
220
To page
227
Abstract
In this study, structural features of alumina–titanium diboride nanocomposite (Al2O3–TiB2) were simulated from the mixture of titanium dioxide, boric acid and pure aluminum as raw materials via mechanochemical process using the optimized artificial neural network. The phase transformation and structural evolutions during the mechanochemical process were characterized using X-ray powder diffractometry (XRD). For better understanding the refining crystallite size and amorphization phenomena during the milling, XRD data were modeled and simulated by artificial neural network (ANN). An ANN consisting of three layers of neurons was trained using a back-propagation learning rule. Also, the ANN was optimized by Taguchi method. Additionally, the crystallite size, interplanar distance, amorphization degree and lattice strain were compared for the simulated values and experimental results.
Keywords
Crystalline state , ANN , Mechanochemical , X-ray analysis , Taguchi method
Journal title
Advanced Powder Technology
Serial Year
2012
Journal title
Advanced Powder Technology
Record number
1248067
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