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Sulphide Capacity Prediction of Molten Slags by Using a Neural Network Approach

机译:神经网络方法预测熔渣的硫化物容量

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In the present study, the neural network approach was applied for the estimation of sulfide capacities (Cs) in binary and multi-component melts at different temperatures. The calculated results obtained using neural network computation were plotted against the experimental values for comparison comparative purposes. Besides, iso-sulfide capacity contours on liquid regions of some ternary melt phase diagrams were generated and plotted by using neural network model results. It was found that calculated results obtained through neural network computation agree very well with the experimental results and more precise than those of some models.
机译:在本研究中,将神经网络方法用于估算不同温度下的二元和多组分熔体中的硫化物容量(Cs)。将使用神经网络计算获得的计算结果与实验值作图,以进行比较比较。此外,利用神经网络模型结果生成并绘制了一些三元熔融相图的液体区域上的异硫容量轮廓。发现通过神经网络计算获得的计算结果与实验结果非常吻合,并且比某些模型更精确。

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