%0 Journal Article %T Study on Predicting the Mode Development Process of Taylor Vortices Using Convolutional Neural Networks %A Hiroyuki Furukawa %A Takeomi Yamazaki %J World Journal of Mechanics %P 169-184 %@ 2160-0503 %D 2024 %I Scientific Research Publishing %R 10.4236/wjm.2024.148008 %X The study investigated Taylor vortex flow between rotating double cylinders using a convolutional neural network (CNN). By combining numerical results of vortex flow for specific periods after vortex onset, the researchers aimed to determine if mode discrimination was possible in the combined images. They used images taken at various intervals: 20 images at 1 second, 30 images at 1.5 seconds, 40 images at 2 seconds, 50 images at 2.5 seconds, 60 images at 3 seconds, and 67 images at 3.35 seconds after vortex onset. The goal was to compare the accuracy rates in predicting the mode development process of the vortex. The study concluded that the mode development process of the Taylor vortex can be discriminated by combining images taken at specific time intervals after the vortex occurs and training the CNN with these images as teacher data. The results showed that the most efficient prediction of the mode development process was achieved when 50 images taken at 2.5 seconds were used for learning. This highlights the potential of using CNNs in fluid dynamics research, specifically in analyzing and predicting the behavior of vortex flows. %K Taylor Vortex Flow %K CNN %K CFD %U http://www.scirp.org/journal/PaperInformation.aspx?PaperID=137586