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Phosphate, Phosphide, Nitride and Carbide Capacity Predictions of Molten Melts by Using an Artificial Neural Network Approach

机译:人工神经网络方法预测熔体的磷酸盐,磷化物,氮化物和碳化物容量

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In the present study, the impurity capacities (Ci) of phosphate, phosphide, nitride and carbide in binary and multi-component molten melt systems at different temperatures were estimated using the artificial neural network approach. The experimental data taken from the previous studies were introduced to the artificial neural network, then the calculated results were plotted against the experimental values for comparative purposes. Besides, iso-phosphate capacity contours on the liquid region of CaO–CaF_(2)–Al_(2)O_(3) ternary phase diagram at 1773 K were generated and plotted by using the neural network model results. The calculated results obtained through neural network computation agreed well with the experimental ones and were found more accurate than those estimates based on some models.
机译:在本研究中,使用人工神经网络方法估算了在不同温度下二元和多组分熔融熔体系统中磷酸盐,磷化物,氮化物和碳化物的杂质容量(Ci)。从以前的研究中获得的实验数据被引入到人工神经网络中,然后将计算结果与实验值作图以作比较。此外,利用神经网络模型结果绘制并绘制了CaO–CaF_(2)–Al_(2)O_(3)三元相图液相区域的等磷酸盐容量等值线,并绘制了图。通过神经网络计算获得的计算结果与实验结果吻合得很好,并且发现比基于某些模型的估计结果更准确。

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