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Predicting the Critical Cooling Velocities of Bainite Start Transformation Using Artificial Neural Networks

机译:使用人工神经网络预测贝氏体开始转变的临界冷却速度

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The author collected 252 continuous cooling transformation (CCT) diagrams of steels and developed artificial neural network(ANN) models to predict the critical cooling velocities of bainite start transformation(CCVBST) of steels. The comparison of the predicted values with the measured ones showed that the prediction accuracy of different ANN models is different. Effects of alloying elements such as silicon and boron on the CCVBST were analysed quantitatively using ANN model with highest accuracy, most of the computation results accord well with the measured ones.
机译:作者收集了252张钢的连续冷却转变(CCT)图,并开发了人工神经网络(ANN)模型来预测钢的贝氏体开始转变(CCVBST)的临界冷却速度。预测值与实测值的比较表明,不同的人工神经网络模型的预测精度是不同的。利用ANN模型对硅,硼等合金元素对CCVBST的影响进行了准确的定量分析,大部分计算结果与实测值吻合较好。

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