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首页> 外文期刊>Particulate Science and Technology: An International Journal >Artificial neural network analysis of the effect of matrix size and milling time on the properties of flake Al-Cu-Mg alloy particles synthesized by ball milling
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Artificial neural network analysis of the effect of matrix size and milling time on the properties of flake Al-Cu-Mg alloy particles synthesized by ball milling

机译:人工神经网络分析基质尺寸和研磨时间对球磨合合金颗粒性能的影响

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摘要

In this study,the effect of matrix size and milling time on the particle size,apparent density,and specific surface area of flake Al-Cu-Mg alloy powders was investigated both by experimental and artificial neural networks model.Four different matrix sizes(28,60,100,and 160 μm) and five different milling times(0.5,1,1.5,2,and 2.5 h) were used in the fabrication of the flake Al-Cu-Mg alloy powders.A feed forward back propagation artificial neural network(ANN) system was used to predict the properties of flake Al-Cu-Mg alloy powders.For training process,the ANN models of the flake size,apparent density,and specific surface area have the mean square error of 0.66,0.004,and 0.01%.For testing process,it was obtained that the R~2 values were 0.9984,0.9998,and 0.9932 for the flake size,apparent density,and specific surface area,respectively.The degrees of accuracy of the prediction models were 95.145,99.705,and 94.25% for the flake size,apparent density,and specific surface area,respectively.
机译:在该研究中,通过实验和人工神经网络模型研究了基质尺寸和研磨时间对薄片Al-Cu-Mg合金粉末的粒度,表观密度和比表面积。不同的矩阵尺寸(28 在薄片Al-Cu-Mg合金粉末的制备中使用60,100和160μm)和五次不同的铣削时间(0.5,1,1.5,2和2.5小时)。进料前后传播人工神经网络( ANN)系统用于预测剥落Al-Cu-Mg合金粉末的性能。对于训练过程,薄片尺寸,表观密度和比表面积的ANN模型具有0.66,0.004的平均平方误差和0.01 %。获得测试过程,获得R〜2值分别为0.9984,0.9998和0.9932,分别为薄片大小,表观密度和比表面积。预测模型的准确度为95.145,99.705, 薄片尺寸,表观密度和比表面积分别为94.25%。

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