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基于数据挖掘的翼型气动隐身多学科分析

金世轶 陈树生 杨华 高正红

金世轶, 陈树生, 杨华, 等. 基于数据挖掘的翼型气动隐身多学科分析[J]. 航空动力学报, 2025, 40(8):20230435 doi: 10.13224/j.cnki.jasp.20230435
引用本文: 金世轶, 陈树生, 杨华, 等. 基于数据挖掘的翼型气动隐身多学科分析[J]. 航空动力学报, 2025, 40(8):20230435 doi: 10.13224/j.cnki.jasp.20230435
JIN Shiyi, CHEN Shusheng, YANG Hua, et al. Multi-disciplinary analysis of aerodynamics stealth of airfoil based on data mining[J]. Journal of Aerospace Power, 2025, 40(8):20230435 doi: 10.13224/j.cnki.jasp.20230435
Citation: JIN Shiyi, CHEN Shusheng, YANG Hua, et al. Multi-disciplinary analysis of aerodynamics stealth of airfoil based on data mining[J]. Journal of Aerospace Power, 2025, 40(8):20230435 doi: 10.13224/j.cnki.jasp.20230435

基于数据挖掘的翼型气动隐身多学科分析

doi: 10.13224/j.cnki.jasp.20230435
基金项目: 中国科协青年人才托举工程(2022QNRC001); 国家自然科学基金(12102345);空天飞行空气动力科学与技术全国重点实验室基金(SKLA-2022-KFKT-005)
详细信息
    作者简介:

    金世轶(2000-),男,硕士生,主要从事飞行器气动设计方面的研究。E-mail:1015050980@qq.com

    通讯作者:

    陈树生(1991-),男,副教授,博士,主要从事飞行器布局设计与计算空气动力学方面的研究。E-mail:sshengchen@nwpu.edu.cn

  • 中图分类号: V224

Multi-disciplinary analysis of aerodynamics stealth of airfoil based on data mining

  • 摘要:

    在翼型气动隐身多学科设计中,涉及目标的多样性以及变量之间的相互耦合关系,增大了其优化设计的计算成本和研发周期。针对翼型升力系数、阻力系数、俯仰力矩系数、升阻比、垂直极化雷达散射面积、水平极化雷达散射面积这6个目标,开展了基于随机森林、自适应增强集成学习、自组织映射、等度量映射这4种算法的数据挖掘。在目标与设计变量的分析中,翼型的气动隐身性能受设计变量前缘和后缘弯度影响较大,而受弦长段的影响次之。较大的前缘弯度可以减小阻力,改善隐身性能但增大俯仰力矩系数;较小的后缘弯度可以改善升力系数、升阻比和隐身性能,同时减小俯仰力矩系数。通过数据挖掘,给出了设计变量的具体参考范围以得到气动隐身性能较优的翼型。

     

  • 图 1  4阶CST参数

    Figure 1.  Parameters of 4th CST

    图 2  基于扰动CST的翼型取值范围

    Figure 2.  Airfoil profile range based on perturbation CST

    图 3  随机森林示意图

    Figure 3.  Schematic diagram of random forest

    图 4  AdaBoost算法示意图

    Figure 4.  Schematic diagram of adaptive boosting algorithm

    图 5  自组织映射拓扑结构

    Figure 5.  Topological structure of self-organizing map

    图 6  等度量映射数据降维

    Figure 6.  Dimension reduction of data by isometric mapping

    图 7  自适应增强集成算法分析结果

    Figure 7.  Results of adaptive boosting algorithm

    图 8  随机森林得到的设计变量重要程度排序

    Figure 8.  Order of importance of design variables obtained by random forest

    图 9  自组织映射网络目标函数染色结果

    Figure 9.  Objective function dyeing results of self-organizing map

    图 10  等度量映射目标函数染色结果

    Figure 10.  Objective function dyeing results of isometric mapping

    图 11  自组织映射网络的设计变量染色结果

    Figure 11.  Design variable dyeing results for self-organizing map

    图 12  等度量映射的设计变量染色结果

    Figure 12.  Design variable dyeing results for self-organizing map

    图 13  升阻比K的设计知识决策树

    Figure 13.  Design knowledge decision tree for K

    表  1  设计变量与扰动范围

    Table  1.   Design variables and disturbance range

    变量 初始值 扰动值范围
    A0 0.3424 [−0.1, 0.1]
    A1 0.4398 [−0.2, 0.2]
    A2 0.2418 [−0.2, 0.2]
    A3 0.4284 [−0.1, 0.1]
    A4 0.3162 [−0.2, 0.2]
    A5 0.3424 [−0.1, 0.1]
    A6 0.1657 [−0.2, 0.2]
    A7 0.3835 [−0.2, 0.2]
    A8 0.0838 [−0.1, 0.1]
    A9 0.2851 [−0.2, 0.2]
    下载: 导出CSV

    表  3  升力系数CL的设计准则

    Table  3.   Design rules of CL

    序号 规则 数量
    1 A7((−0.293, *)) and A5((−0.309, *)) and A9((−0.213, *)) and A6((−0.277, *)) and A8((−0.149, *))→high 46
    2 A7((−0.293, *)) and A5((−0.309, *)) and A9((−0.213, *)) and A6((*, −0.277]) and A1((0.497, *))→high 4
    3 A7((*, −0.293]) and A9((*, −0.118]) and A2((*, −0.043])→high 3
    下载: 导出CSV

    表  4  阻力系数CD的设计准则

    Table  4.   Design rules of CD

    序号 规则 数量
    1 A1((*, 0.339]) and A6((−0.296, *)) and A0((*, 0.341]) and A4((*, 0.397]) and A2((*, 0.269]) and A3((0.441, *)) and
    A5((−0.37, *))→high
    42
    2 A1((*, 0.339]) and A6((−0.296, *)) and A0((*, 0.341]) and A4((*, 0.32]) and A2((*, 0.155]) and A3((*, 0.441])→high 21
    下载: 导出CSV

    表  5  俯仰力矩系数CM的设计准则

    Table  5.   Design rules of CM

    序号 规则 数量
    1 A7((*, −0.442]) and A6((−0.193, *)) and A1((0.608, *)) and A2((0.148, *)) and A9((*, −0.327])→high 12
    2 A7((*, −0.442]) and A6((−0.193, *)) and A1((*, 0.608])) and A5((*, −0.442])→high 2
    下载: 导出CSV

    表  6  垂直极化Ste的设计准则

    Table  6.   Design rules of Ste

    序号 规则 数量
    1 A5((−0.294, *)) and A9((−0.14, *)) and A4((0.344, *)) and A0((*, 0.301])→high 7
    2 A5((*, −0.294]) and A0((0.252, *)) and A4((*, 0.476]) and A1((*, 0.241])→high 2
    下载: 导出CSV

    表  7  水平极化Stm的设计准则

    Table  7.   Design rules of Stm

    序号 规则 数量
    1 A0((0.301, *)) and A3((*, 0.35]) and A8((0.006, *)) and A4((*, 0.427])→high 6
    2 A0((0.301, *)) and A3((*, 0.347]) and A8((*, 0.006]) and A5((−0.259, *))→high 4
    下载: 导出CSV

    表  2  升阻比K的设计准则

    Table  2.   Design rules of K

    序号 规则 数量
    1 A6((−0.113, *)) and A7((−0.229, *)) and A9((−0.222, *)) and A0((0.428, *)) and A2((*, 0.397])→high 41
    2 A6((*, −0.113]) and A2((0.362, *)) and A8((−0.018, *)) and A4((0.474, *))→high 4
    3 A6((−0.113, *)) and A7((−0.229, *)) and A9((*, −0.222]) and A3((*, 0.337]) and A1((0.397, *))→high 1
    下载: 导出CSV
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  • 收稿日期:  2023-07-05
  • 网络出版日期:  2025-04-25

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