溶解度
一般化
固体溶解度
人工神经网络
对数
热力学
材料科学
变量(数学)
近似误差
极限(数学)
价值(数学)
平均绝对百分比误差
生物系统
统计
数学
计算机科学
化学
人工智能
物理
物理化学
数学分析
生物
作者
Takafumi Mochizuki,Tokuteru Uesugi,Yorinobu Takigawa
标识
DOI:10.2320/matertrans.mt-mbw2019010
摘要
A solid solubility prediction system using Hume-Rothery parameters and first-principles calculation to obtain explanatory variables was devised, and the resulting coefficients of determination, R2, were compared. When we used the Hume-Rothery parameter, R2 was 0.715, and when we used the first-principles calculation results, R2 was 0.900, indicating the improved accuracy of prediction. We tested 10-fold cross validation to evaluate the generalization performance of the network. The number of explanatory variables was optimized using the stepwise method. R2 was maximized when eight explanatory variables were used. As a result of 10-fold cross-validation, R2 of the constructed solid solubility prediction system which uses eight explanatory variables was 0.6993. The mean absolute error for this network was 0.45. The common logarithm value was used as the explained variable. Thus, the solid solubility limit predicted from this network was on an average 0.35 to 2.85 times the true value.
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