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Evaluation of Steels Susceptibility to Hydrogen Embrittlement: A Thermal Desorption Spectroscopy-Based Approach Coupled with Artificial Neural Network

机译:钢筋脆性易感性评价:一种与人工神经网络耦合的热解吸光谱法

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摘要

A novel approach has been developed for quantitative evaluation of the susceptibility of steels and alloys to hydrogen embrittlement. The approach uses a combination of hydrogen thermal desorption spectroscopy (TDS) analysis with recent advances in machine learning technology to develop a regression artificial neural network (ANN) model predicting hydrogen-induced degradation of mechanical properties of steels. We describe the thermal desorption data processing, artificial neural network architecture development, and the learning process beneficial for the accuracy of the developed artificial neural network model. A data augmentation procedure was proposed to increase the diversity of the input data and improve the generalization of the model. The study of the relationship between thermal desorption spectroscopy data and the mechanical properties of steel evidences a strong correlation of their corresponding parameters. A prototype software application based on the developed model is introduced and is openly available. The developed prototype based on TDS analysis coupled with ANN is shown to be a valuable engineering tool for steel characterization and quantitative prediction of the degradation of steel properties caused by hydrogen.
机译:已经开发了一种新的方法,用于定量评估钢和合金对氢脆的敏感性。该方法采用氢气解吸光谱(TDS)分析的组合在机器学习技术的最新进展中,开发一种回归人工神经网络(ANN)模型预测钢的机械性能的氢致抗降解。我们描述了热解吸数据处理,人工神经网络架构开发和学习过程有利于开发人工神经网络模型的准确性。建议提高数据增强程序以增加输入数据的多样性并改善模型的泛化。热解吸光谱数据与钢的力学性能之间的关系的研究表明它们对应参数的强烈相关性。介绍了基于开发模型的原型软件应用程序,并公开可用。基于TDS分析的开发的原型与ANN耦合的基于TDS分析,是钢结构的有价值的工程工具,以及由氢引起的钢质性能降解的定量预测。

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