收稿日期:2024-04-22
修回日期:2024-05-24
接受日期:2024-06-19
出版日期:2024-12-25
发布日期:2024-07-01
通讯作者:
黄伟
E-mail:gladrain2001@163.com
基金资助:
Kai AN1, Wei HUANG1(
), Zhenguo WANG1, Xiaoping XU2, Yushan MENG1
Received:2024-04-22
Revised:2024-05-24
Accepted:2024-06-19
Online:2024-12-25
Published:2024-07-01
Contact:
Wei HUANG
E-mail:gladrain2001@163.com
Supported by:摘要:
近年来,AI技术的不断涌现为推动高速飞行器多学科发展提供了新的求解思路和实现方法。为系统梳理高速飞行器多学科发展的研究脉络、热点和趋势,探析AI方法对高速飞行器学科发展的长远影响,首先利用CiteSpace6.3.R1以及VOSviewer1.6.20软件对2000—2024年中国知网(CNKI)和 Web of Science(WoS)数据库中的相关文献进行了调查,并对发文量、研究机构以及关键词聚类图谱等知识矩阵进行了多角度分析。然后,介绍了流场特性智能预测、无模型自适应制导与控制、偏微分方程智能求解以及知识数据融合的不确定性多学科设计优化4个热点领域的研究概况。最后,总结了AI驱动下高速飞行器学科发展新的研究趋势,强调了该领域现有的挑战,并得出以下结论: AI融合知识已成为高速飞行器多学科研究新的科技范式;深度学习方法进一步拓展了高速飞行器各学科技术理论边界和应用范围,但在精确模型建立求解以及试验应用上仍具有很大探索空间。
中图分类号:
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