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Prediction of primary water stress corrosion crack growth rates in Alloy 600 using artificial neural networks — Jiangbo Shi (2014) | RDL Network
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Prediction of primary water stress corrosion crack growth rates in Alloy 600 using artificial neural networks
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Digby D Macdonald
University of California, Berkeley
Prediction of primary water stress corrosion crack growth rates in Alloy 600 using artificial neural networks
Article
2014
en
Authors
JS
Jiangbo Shi
JW
Jihui Wang
Digby D Macdonald
University of California, Berkeley
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