Image features of a splashing drop on a solid surface extracted using a feedforward neural network
Jingzu Yee,
Akinori Yamanaka,
Yoshiyuki Tagawa
Abstract:This article reports nonintuitive characteristic of a splashing drop on a solid surface discovered through extracting image features using a feedforward neural network (FNN). Ethanol of area-equivalent radius about 1.29 mm was dropped from impact heights ranging from 4 to 60 cm (splashing threshold 20 cm) and impacted on a hydrophilic surface. The images captured when half of the drop impacted the surface were labeled according to their outcome, splashing or nonsplashing, and were used to train an FNN. A class… Show more
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