Prediction of silver nanoparticles’ diameter in montmorillonite/chitosan bionanocomposites by using artificial neural networks

被引:0
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作者
Parvaneh Shabanzadeh
Norazak Senu
Kamyar Shameli
Fudziah Ismail
Ali Zamanian
Maryam Mohagheghtabar
机构
[1] Universiti Putra Malaysia,Department of Mathematics, Faculty of Science
[2] Universit Putra Malaysia,Department of Chemistry, Faculty of Science
[3] Materials & Energy Research Center,Nanotechnology and Advance Materials Department
[4] University Gilan,Department of Mathematics, Faculty of Science
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关键词
Artificial neural networks; Silver nanoparticles; Montmorillonite; Chitosan; Bionanocomposites;
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摘要
Artificial neural networks (ANNs) are computational tools that have found comprehensive utilization in solving many complex real world problems. Major benefits in using ANNs are their remarkable information-processing characteristics pertinent mainly to high parallelism, nonlinearity, fault and noise tolerance, and learning and generalization capabilities. An ANN approach is used to model the size of silver nanoparticles (Ag-NPs) in montmorillonite/chitosan bionanocomposites layers as a function of the silver nitrate concentration, reaction of temperature, chitosan percentage, and d-spacing of clay layers. The best ANN model is found and this final model is capable of predicting the size of nanosilver for a wide range of conditions with a mean absolute error of less than 0.004 and a regression error of about 1. Results obtained showed good ability predictive of neural network model for the prediction of the size of Ag-NPs in chemical reduction methods.
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页码:3275 / 3287
页数:12
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