MF-TimeSformer: A Multi-Frequency Feature Enhancement Network for Predicting Unsteady Flow Field of Plane Cascades

2023 35TH CHINESE CONTROL AND DECISION CONFERENCE, CCDC(2023)

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摘要
The prediction of unsteady flow field in plane cascades is of great significance for analysing compressor instability. A rapid and accurate prediction method of unsteady flow field is a challenge due to the high-dimensional and nonlinear dynamic behavior. In view of the two shortcomings of the existing spatio-temporal predictive network models, namely, the inability to capture the multi-frequency characteristics and massive consumption of computing resources, we designed the MF-TimeSformer model, which uses wavelet transform and ConvLSTM to capture the spatio-temporal multi-frequency characteristics in the flow field, and uses the filled prediction tokens to achieve the prediction function. We design a number of experiments to verify the effectiveness and generalization of the model and explore the role of filled prediction tokens and multi-frequency feature fusion in the prediction of spatio-temporal sequence. The results show that MF-TimeSformer has a good effect on the prediction of the unsteady flow field of plane cascades, and the structure of each part of the model plays an extremely important role.
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关键词
wavelet transform,multi-frequency analysis,spatio-temporal sequence prediction,unsteady flow field of plane cascades
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