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首页> 外文期刊>Transactions of Nonferrous Metals Society of China >Application of BP neural network to semi-solid apparent viscosity simulation
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Application of BP neural network to semi-solid apparent viscosity simulation

机译:BP神经网络在半固体表观粘度模拟中的应用

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摘要

Two-layer BP neural network was designed for the semi-solid apparent viscosity simulation. The apparent viscosity simulations of Sn-15%Pb alloy and Al-4.5%Cu-1.5%Mg alloy stirred slurries were carried out. The trained BP neural network forecast the curve of the apparent viscosity versus solid volume fraction of Sn-15%Pb alloy, under the condition of shear rate, γ=150 s~(-1), and cooling rate of G=0.33℃/min. The simulation results are well agreement with the experimental values given in references. The fitted mathematical formula of Sn-15%Pb alloy apparent viscosity, under the condition of the cooling rate of G=0.33℃/min, was obtained by optimization method. The results show that the precision of apparent viscosity simulation value by neural network is much better than that of its calculation value by fitted mathematical formula.
机译:设计了两层BP神经网络用于半固体表观粘度模拟。进行了Sn-15%Pb合金和Al-4.5%Cu-1.5%Mg合金搅拌浆料的表观粘度模拟。训练后的BP神经网络在剪切速率为γ= 150 s〜(-1),冷却速率为G = 0.33℃/的条件下,预测了Sn-15%Pb合金的表观粘度与固相体积分数的关系曲线。分钟仿真结果与参考文献中给出的实验值完全吻合。通过优化方法得到了在冷却速度G = 0.33℃/ min的条件下Sn-15%Pb合金表观粘度的拟合数学公式。结果表明,神经网络的表观粘度模拟值的精度远优于拟合数学公式计算出的表观粘度值。

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