2020
DOI: 10.3390/ma13235500
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Evaluation of Steels Susceptibility to Hydrogen Embrittlement: A Thermal Desorption Spectroscopy-Based Approach Coupled with Artificial Neural Network

Abstract: 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 developme… Show more

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Cited by 9 publications
(2 citation statements)
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“…To further correlate H transport in the microstructure to the susceptibility to HE, Malitckii et al , built one conceptual method that is able to link TDS with HE using ANN model. Worthy of note is that TDS is considered an effective way to assess the microstructure-dependent H trapping.…”
Section: Perspectives and Future Directionsmentioning
confidence: 99%
See 1 more Smart Citation
“…To further correlate H transport in the microstructure to the susceptibility to HE, Malitckii et al , built one conceptual method that is able to link TDS with HE using ANN model. Worthy of note is that TDS is considered an effective way to assess the microstructure-dependent H trapping.…”
Section: Perspectives and Future Directionsmentioning
confidence: 99%
“…For better quantifying the susceptibility to HE, the well-defined H sensitivity parameter (HSP), calculated as HSP = (ε – ε H )/ε × 100% where ε and ε H are the failure strains without and with H, was utilized for training. Based on the approach raised by Malitckii et al, , two ANN models were trained and validated for a series of materials including austenitic, ferritic, and ferritic-–artensitic steels. Both trained ANN models exhibited good accuracy in which a correlation of more than 90% is achieved between experimentally measured HSP and model predicted values, suggesting that the ANN models fed by TDS data can be a robust tool for predicting HE in metallic systems.…”
Section: Perspectives and Future Directionsmentioning
confidence: 99%