In this study, a wettability-predicting
method that uses an artificial
neural network (ANN) by learning from digital images of the actual
surface structures was developed. Polyester film surfaces were treated
with oxygen plasma to realize various nanostructured surfaces. Surface
structural characteristics from SEM images were quantified in a multifaceted
way using a box-counting algorithm, a gray-level co-occurrence matrix
algorithm, and binary image analysis. An ANN model that can predict
wettability from surface structures was developed using the quantified
surface structure and the resulting wettability as learning data.
Furthermore, a surface with an optimal nanostructure to achieve superhydrophobicity
was suggested by considering extracted surface structural parameters
that significantly affect the surface wettability.