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Artificial neural networks for modelling of the impact toughness of steel

机译:人工神经网络用于钢的冲击韧性建模

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摘要

The application of artificial neural networks (ANNs) to the prediction of the Charpy impact toughness of quenched and tempered (QT) steels and ferrous weld metals is examined in detail. It is demonstrated that the Charpy impact toughness can be accurately predicted using the selected input variables and their ranges of values.The capacity of ANNs to handle problems involving large sets of input variables is illustrated by a model developed to predict the impact energy of weld metal (WM) produced by flux cored arc welding (FCAW). The usefulness of ANNs for alloy design and process control is demonstrated through another model developed to predict the toughness of a QT structural steel as a function of composition and postweld heat treatment.Although comparison of the two models indicates that the trends in toughness with changes in Mn and B concentrations are In opposite directions for weld metal and QT steel, it is shown that these trends can be reconciled with reported experimental results and theoretical interpretations.
机译:详细研究了人工神经网络(ANN)在预测调质(QT)钢和黑色金属焊接金属的夏比冲击韧性中的应用。结果表明,使用选定的输入变量及其值范围可以准确地预测夏比冲击韧性.ANNs通过预测焊接金属的冲击能而建立的模型可以解决涉及大量输入变量的问题的能力。药芯焊丝(FCAW)生产的合金(WM)。人工神经网络在合金设计和过程控制中的有用性通过另一个模型来证明,该模型用于预测QT结构钢的韧性与成分和焊后热处理之间的关系,尽管两个模型的比较表明,韧性随合金含量的变化而变化。对于焊缝金属和QT钢,Mn和B的浓度方向相反,表明这些趋势可以与报道的实验结果和理论解释相吻合。

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