Features of a Splashing Drop on a Solid Surface and the Temporal Evolution extracted through Image-Sequence Classification using an Interpretable Feedforward Neural Network
Jingzu Yee, Daichi Igarashi, Akinori Yamanaka, Yoshiyuki Tagawa

TL;DR
This study uses an interpretable neural network to identify key features and temporal evolution in splashing drops impacting a solid surface, achieving high accuracy and providing insights for data-driven modeling.
Contribution
It introduces a zero-hidden-layer feedforward neural network for classifying splashing drops and extracting meaningful physical features from image sequences.
Findings
FNN achieved over 96% test accuracy.
Identified features include ejected droplets and lamella contours.
Physical interpretation of features supports modeling of splashing dynamics.
Abstract
This paper reports the features of a splashing drop on a solid surface and the temporal evolution, which are extracted through image-sequence classification using a highly interpretable feedforward neural network (FNN) with zero hidden layer. The image sequences used for training-validation and testing of the FNN show the early-stage deformation of milli-sized ethanol drops that impact a hydrophilic glass substrate with the Weber number ranges between 31-474 (splashing threshold about 173). Specific videographing conditions and digital image processing are performed to ensure the high similarity among the image sequences. As a result, the trained FNNs achieved a test accuracy higher than 96%. Remarkably, the feature extraction shows that the trained FNN identifies the temporal evolution of the ejected secondary droplets around the aerodynamically lifted lamella and the relatively high…
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