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首页> 外文期刊>Neural computing & applications >Study of correlation between the steels susceptibility to hydrogen embrittlement and hydrogen thermal desorption spectroscopy using artificial neural network
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Study of correlation between the steels susceptibility to hydrogen embrittlement and hydrogen thermal desorption spectroscopy using artificial neural network

机译:人工神经网络研究钢脆性与氢气热解吸光谱的相关性研究

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摘要

Steels are the most used structural material in the world, and hydrogen content and localization within the microstructure play an important role in its properties, namely inducing some level of embrittlement. The characterization of the steels susceptibility to hydrogen embrittlement (HE) is a complex task requiring always a broad and multidisciplinary approach. The target of the present work is to introduce the artificial neural network (ANN) computing system to predict the hydrogen-induced mechanical properties degradation using the hydrogen thermal desorption spectroscopy (TDS) data of the studied steel. Hydrogen sensitivity parameter (HSP) calculated from the reduction of elongation to fracture caused by hydrogen was linked to the corresponding hydrogen thermal desorption spectra measured for austenitic, ferritic, and ferritic-martensitic steel grades. Correlation between the TDS input data and HSP output data was studied using two ANN models. A correlation of 98% was obtained between the experimentally measured HSP values and HSP values predicted using the developed densely connected layers ANN model. The performance of the developed ANN models is good even for never-before-seen steels. The ANN-coupled system based on the TDS is a powerful tool in steels characterization especially in the analysis of the steels susceptibility to HE.
机译:钢是世界上最常用的结构材料,而微观结构内的氢气含量和定位在其性质中起重要作用,即诱导某种程度的脆化。钢易感性对氢脆(HE)的表征是一种复杂的任务,需要始终是广泛和多学科的方法。本作本作的目标是引入人工神经网络(ANN)计算系统,以预测使用所研究钢的氢热解吸光谱(TDS)数据的氢诱导的机械性能降解。从氢引起的伸长率的减少计算的氢气灵敏度参数(HSP)与奥氏体,铁素体和铁素体 - 马氏体钢等级测量的相应的氢热解吸光谱有关。使用两个ANN模型研究了TDS输入数据和HSP输出数据之间的相关性。在实验测量的HSP值与使用显影密集连接的层ANN模型预测的HSP值之间获得98%的相关性。即使是从未见过的钢材,发达的ANN型号的性能也很好。基于TDS的Ann耦合系统是钢材表征中的强大工具,特别是在分析钢易感性对他的情况下。

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