The impact of a drop on a solid surface is an important phenomenon that has various implications and applications. However, the multiphase nature of this phenomenon causes complications in the prediction of its morphological evolution, especially when the drop splashes. While most machine-learning-based drop-impact studies have centred around physical parameters, this study used a computer-vision strategy by training an encoder-decoder to predict the drop morphologies using image data. Herein, we show that this trained encoder-decoder is able to successfully generate videos that show the morphologies of splashing and non-splashing drops. Remarkably, in each frame of these generated videos, the spreading diameter of the drop was found to be in good agreement with that of the actual videos. Moreover, there was also a high accuracy in splashing/non-splashing prediction. These findings demonstrate the ability of the trained encoder-decoder to generate videos that can accurately represent the drop morphologies. This approach provides a faster and cheaper alternative to experimental and numerical studies.
翻译:在固体表面的滴落冲击是一种重要的现象,具有各种应用和影响。然而,这种现象的多相性质会在预测其形态演变时带来各种复杂性,特别是当滴落喷溅时。尽管大多数基于机器学习的滴落冲击研究都集中在物理参数上,但本研究采用了计算机视觉策略,通过训练编码器-解码器来使用图像数据预测滴落的形态。在本文中,我们展示了这个经过训练的编码器-解码器能够成功生成显示喷溅和非喷溅滴落形态的视频。值得注意的是,这些生成视频中的每一帧的液滴展开直径与实际视频中的展开直径非常吻合。此外,喷溅/非喷溅预测也具有高精度。这些发现表明了经过训练的编码器-解码器生成的视频能够准确代表滴落的形态。该方法提供了比实验和数值研究更快更便宜的选择。