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Neural Network Based Toughness Prediction in CGHAZ of Low-Alloy Steel Produced by Temper Bead Welding

机译:轧制珠焊生产的低合金钢CGHAZ基于神经网络的韧性预测

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摘要

In temper bead welding, toughness is one of the key criteria to evaluate the tempering effect. A neural network-based method for toughness prediction in the coarse grained heat affected zone (CGHAZ) of low-alloy steel has been investigated in the present study to evaluate the tempering effect in temper bead welding. Based on the experimentally obtained toughness database, the prediction systems of the toughness of CGHAZ have been constructed using RBF-neural network. The predicted toughness of the synthetic CGHAZ subjected to arbitrary thermal cycles was in good accordance with the experimental results. It follows that our new prediction system is effective for estimating the tempering effect in CGHAZ during temper bead welding and hence enables us to assess the effectiveness of temper bead welding.
机译:在锻炼珠焊,韧性是评估回火效果的关键标准之一。在本研究中研究了低合金钢粗粒热影响区(CGHAZ)粗粒热影响区(CGHAZ)的基于神经网络的韧性预测方法,以评估锻炼珠焊的回火效果。基于实验获得的韧性数据库,使用RBF-Neural网络构建了CGHAZ韧性的预测系统。对任意热循环进行的合成CGHAZ的预测韧性与实验结果良好。因此,我们的新预测系统对于估计CGHAZ期间的淬火珠焊接期间的回火效果是有效的,因此使我们能够评估锻炼珠焊的有效性。

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