期刊文献+

面向高超声速飞行器的激波智能预测方法

Shock Wave Intelligent Prediction Method for Hypersonic Vehicle
下载PDF
导出
摘要 高超声速飞行器激波位置的准确预测能够有效提升数值模拟的精度和效率。一方面,对高超声速飞行器激波附近网格进行正交和加密处理,可有效提升数值计算精度;另一方面,使用高超声速飞行器激波位置对计算网格进行修正,能够加速CFD计算收敛过程。提出了一种基于机器学习的高超声速飞行器激波智能预测方法,对典型高超声速飞行器外形进行激波位置的高效准确预测。首先,针对典型高超声速飞行器外形和典型飞行状态,使用数值模拟方法获得收敛的流场,并采用基于Mach数等值线的激波提取方法,从流场中判别激波面并提取构成激波面的关键点位置,形成训练数据;然后采用有监督学习算法,学习关键点位置,并利用二次曲线沿流向拟合关键点形成初步的激波线族;最后,基于剖面压力云图,构造基于投影压力图像的智能预测神经网络,对初步形成的激波线族进行修正,并获得三维激波面。大量的实验结果表明,激波预测模型能够对高超声速飞行器激波位置做出准确预测,预测的激波面与CFD数值计算结果中提取的激波面误差在10-4量级。 Accurate prediction of shock wave position of hypersonic aircrafts can effectively improve the accuracy and efficiency of computational fluid dynamics(CFD)simulation.On the one hand,orthogonalization and densification of the grid near the shock wave of the hypersonic vehicle can effectively improve the numerical accuracy.On the other hand,using the shock wave position of the hypersonic vehicle to correct the computational grid can speed up the CFD convergence process.A shock wave intelligent prediction method for hypersonic vehicles based on machine learning was proposed,which could efficiently and accurately predict the shock position of the typical hypersonic aircraft shape.Firstly,for the typical hypersonic vehicle shape and typical flight state,numerical methods were used to obtain a convergent flow field.Secondly,the shock wave extraction method based on Mach number contour was used to identify the shock wave surface from the flow field and extract the key points that constitute the shock wave to form training data.After that,the supervised learning method was used to predict the positions of these key points and the quadratic curve was used to fit these key points along the flow direction to form a preliminary shock line family.Finally,based on the typical pressure profile,an image-based neural network was constructed to correct the preliminary shock line family and obtain the three-dimensional shock surface.A large number of experimental results show that the shock wave prediction model can effectively predict the shock wave position of the hypersonic vehicle,and the error between the reconstructed shock wave surface and the extracted shock surface from the CFD results is in the order of 10-4.
作者 朱元浩 王岳青 杨志供 孙国鹏 宗文刚 曾磊 陈坚强 ZHU Yuan-hao;WANG Yue-qing;YANG Zhi-gong;SUN Guo-peng;ZONG Wen-gang;ZENG Lei;CHEN Jian-qiang(College of Chemical Engineering,Sichuan University,Chengdu 610065,China;State Key Laboratory of Aerodynamics,China Aerodynamics Research and Development Center,Mianyang 621000,China;Computational Aerodynamics Institute of China Aerodynamics Research and Development Center,Mianyang 621000,China)
出处 《气体物理》 2023年第1期48-57,共10页 Physics of Gases
基金 国家自然科学基金(61806205)。
关键词 数值模拟 CFD 激波 机器学习 神经网络 numerical simulation CFD shock wave machine learning neural network
  • 相关文献

参考文献10

二级参考文献66

  • 1范晓樯,李桦,易仕和,潘沙.侧压式进气道与飞行器机体气动一体化设计及实验[J].推进技术,2004,25(6):499-502. 被引量:19
  • 2朱嫣岚,闵锦,周雅倩,黄萱菁,吴立德.基于HowNet的词汇语义倾向计算[J].中文信息学报,2006,20(1):14-20. 被引量:327
  • 3耿永兵,刘宏,姚文秀,王发民.锥形流乘波体优化设计研究[J].航空学报,2006,27(1):23-28. 被引量:18
  • 4涂国华,袁湘江,夏治强,呼振.一类TVD型的迎风紧致差分格式[J].应用数学和力学,2006,27(6):675-682. 被引量:14
  • 5宗文刚 张涵信.基于NND格式、ENN格式的高阶紧致格式[A]..第九届全国计算流体力学会议[C].,1998..
  • 6MUHAMMAD Asif, ZAHIR S. Computational investigations aerodynamic forces at supersonic/hypersonic flow past blunt body with various forward facing spikes [R]. AIAA2004-5189.
  • 7SRULIJES J, GNEMMI P, RUNNE K, et al. High- pressure shock tunnel experiments and CFD calculations on spike-tipped blunt bodies[R]. AIAA2002-2918.
  • 8MEHTA R C. Numerical simulation of self-sustained oscillations over spiked blunt-bodies[R]. AIAA2001-0262.
  • 9DRIVER D M, SEEGMILLER H L, MARVIN J. Unsteady behavior of a reattachment shear layer [R]. AIAA 83-1712.
  • 10GUENTHER R A, REDING J P. Fluctuating pressure environment of a drag reducing spike [J]. Journal of Spacecraft and Rockets, 1977, 14(12): 705-710.

共引文献162

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部