Quantitative Assessment of Sand Particulates in Gas-Water Slug Flow Using Deep Learning
Kai Wang,
Jiaqi Tian,
Ziang Chang
et al.
Abstract:Summary
The weak collision response excited by micrometer-scale sand particulates is prone to overmixing with strong slug noise, significantly reducing the characterization and monitoring accuracy of sand particulate information in slug flows. Therefore, we developed a quantitative assessment method for sand particulates in slug flow that combines triaxial vibration monitoring and deep learning. First, a migration behavior characterization method of sand particulates is proposed combining nonlin… Show more
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