Flow field reconstruction and shock train leading edge position detection of scramjet isolation section based on a small amount of CFD data

IF 2.9 3区 工程技术 Q2 ENGINEERING, MECHANICAL
Chen, Hao, Tian, Ye, Guo, Mingming, Le, Jialing, Ji, Yuan, Zhang, Yi, Zhang, Hua, Zhang, Chenlin
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引用次数: 2

Abstract

Scramjet is the main power device of hypersonic vehicles. With the gradual expansion of wide velocity domain, shock wave/shock wave and shock wave/boundary layer are the main phenomena in scramjet isolator. When the leading edge of the shock train is pushed out from the inlet of the isolator, the engine will not start. Therefore, it is very important to detect the flow field structure in the isolator and the leading edge position of the shock train. The traditional shock train detection methods have low detection accuracy and slow detection speed. This paper describes a method based on deep learning to reconstruct the flow field in the isolator and detect the leading edge of the shock train. Under various back pressure conditions, the flow field images of computational fluid dynamics (CFD) data and the corresponding upper and lower wall pressure data were obtained, and a data set corresponding to pressure and flow field was constructed. By constructing and training convolutional neural networks, a mapping model with pressure information as input and flow field image as output is obtained, and then the leading edge position of shock train is detected on the output flow field image. The experimental results show that the average structure similarity (SSIM) between the reconstructed flow field image and the CFD flow field image is 0.902, the average peak signal-to-noise ratio (PSNR) is 25.289, the average correlation coefficient (CORR) is 0.956, and the root mean square error of shock train leading edge detection is 3.28 mm. Moreover, if the total pressure input is appropriately reduced, the accuracy of flow field reconstruction does not decline significantly, which means that the model has a certain robustness. Finally, in order to improve the detection accuracy of the leading edge position, we fine tuned the model and obtained another detection method, which reduced the root mean square error of the detection results to 1.87 mm.
基于少量CFD数据的超燃冲压发动机隔离段流场重建及激波列车前缘位置检测
超燃冲压发动机是高超声速飞行器的主要动力装置。随着宽速度域的逐渐扩大,激波/激波和激波/边界层是超燃冲压发动机隔离器内的主要现象。当减震列车的前缘从隔离器的入口推出时,发动机将无法启动。因此,检测隔振器内的流场结构和激波序列的前缘位置是非常重要的。传统的冲击列车检测方法存在检测精度低、检测速度慢的问题。本文提出了一种基于深度学习的隔离器流场重构和激波前缘检测方法。在不同背压条件下,获得计算流体动力学(CFD)数据的流场图像以及相应的上下壁压力数据,构建压力和流场对应的数据集。通过构造和训练卷积神经网络,得到以压力信息为输入,流场图像为输出的映射模型,然后在输出流场图像上检测激波序列的前缘位置。实验结果表明,重建流场图像与CFD流场图像的平均结构相似度(SSIM)为0.902,平均峰值信噪比(PSNR)为25.289,平均相关系数(CORR)为0.956,激波序列前缘检测的均方根误差为3.28 mm。此外,如果适当减小总压力输入,流场重建的精度不会明显下降,说明模型具有一定的鲁棒性。最后,为了提高前缘位置的检测精度,我们对模型进行了微调,得到了另一种检测方法,将检测结果的均方根误差减小到1.87 mm。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.50
自引率
4.30%
发文量
35
审稿时长
11 weeks
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