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Research on the Forecast Model of the Boron Removal from Metallurgical Grade Silicon by Slag Refining Based on GA-BP Neural Network

机译:基于GA-BP神经网络的渣精制从冶金级硅中硼预测模型研究

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A purification process was developed to removal impurity element boron from metallurgical grade silicon by electromagnetic induction slag melting. Vacuum melting furnace was used to purify boron in both Al_2O_3-MgO-CaO-SiO_2 slag system and Al_2O_3-CaO-SiO_2 slag system. The relationship between different slag chemistry and the removal of boron in silicon were studied using Back Propagation (BP) Neural Network model. The best slag chemistry for the removal of boron was predicted by Genetic Algorithm (GA) contributed by the use of Matlab. The results show that the mass fraction of Boron in silicon is reduced from 11.7496×10~(-6) to 2.3259×10~(-6) after slag melting in 28.96%Al_2O_3-3.43%MgO-36.24%CaO-31.37%SiO_2 slag system. The relative error obtained with GA-BP Neural Network model was below 0.35%.
机译:通过电磁感应炉渣熔化开发出纯化过程以从冶金级硅中除去杂质元素硼。真空熔炉用于纯化Al_2O_3-MgO-CAO-SiO_2渣系统和AL_2O_3-CAO-SIO_2渣系统中的硼。使用反向传播(BP)神经网络模型研究了不同炉渣化学与硅中硼的去除关系。通过使用MATLAB的遗传算法(GA)预测用于去除硼的最佳熔渣化学。结果表明,在熔渣熔化之后,硅中硼的质量分数从11.7496×10〜(-6)减少到2.3259×10〜(-6)中28.96%Al_2O_3-3.43%MgO-36.24%CaO-31.37%SiO_2渣系统。使用GA-BP神经网络模型获得的相对误差低于0.35%。

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