超音速
高超音速
隔离器
超燃冲压发动机
休克(循环)
人工神经网络
航空航天工程
冲击波
计算机科学
工程类
人工智能
燃烧室
医学
燃烧
内科学
有机化学
化学
电子工程
作者
Chen Kong,Chenlin Zhang,Ziao Wang,Yunfei Li,Juntao Chang
出处
期刊:AIAA Journal
[American Institute of Aeronautics and Astronautics]
日期:2022-01-03
卷期号:60 (5): 2826-2835
被引量:27
摘要
The prediction of flowfield evolution can provide valuable reference information for the development of hypersonic technology. Flowfield prediction with the introduction of deep learning techniques is a promising method to provide future flowfield evolution in scramjet isolators. A multipath flowfield prediction model has been proposed to achieve flowfield prediction based on wall pressure sequence. The prediction model is mainly constructed with a convolutional neural network. An experimental dataset was built with supersonic experimental data under different evolution laws in an isolator. The flowfield prediction model is trained and validated using independent experimental data. The proposed model's prediction performance under different prediction spans is discussed in depth. The results demonstrate that the predicted flowfield is in good agreement with the ground truth, and the background wave and shock train structure are basically restored, even when the shock train leading edge changes intermittently. The influence of pressure sequence length on the proposed model's prediction performance is also analyzed.
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