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Keywords: corrosion rank predictions
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Proceedings Papers
Proc. ASME. PVP2020, Volume 8: Operations, Applications, and Components, V008T08A026, August 3, 2020
Paper No: PVP2020-21333
..., polynomial kernel and Gaussian kernel), whose prediction accuracies are 50%, 48% and 54% respectively. These findings could help field engineers rank corrosion and reduce the corrosion risk. gathering pipeline corrosion rate multi-kernel support vector machine corrosion rank predictions...