深度学习在复合材料无损检测与评估中的研究现状、挑战与展望

Deep Learning for Non-Destructive Testing and Evaluation of Composite Materials: State of the Art, Challenges, and Perspectives

  • 摘要: 复合材料在航空航天等领域应用广泛,但制造与服役中易产生缺陷与损伤,严重威胁结构完整性。传统无损检测与评估方法在判读效率、检测灵敏度及多模态融合评估等方面存在不足。深度学习凭借自动特征提取与复杂模式识别能力,在该领域展现出巨大潜力。本文系统综述了深度学习在复合材料无损检测与评估中的研究进展。首先,按时间脉络梳理了网络架构的演进及技术特点;然后,以检测与评估任务流程为主线,从数据预处理、缺陷检测、缺陷评估及人机协同四个层面,阐述了深度学习在多种检测模态中的代表性研究,并指出当前面临的不足与挑战;最后,从技术介入的自主程度出发,提出了AI-Assistant、AI-Copilot、AI-Agent、AI-Autonomy与AI-Complete(AI-ACAAC)五个递进式发展路径,为复合材料检测与评估的智能化发展提供参考。

     

    Abstract: Composite materials are widely used in aerospace and other fields, but defects and damage arising from manufacturing and service pose threats to structural integrity. Traditional non-destructive testing and evaluation (NDT&E) methods exhibit limitations in interpretation efficiency, detection sensitivity, and multimodal fusion evaluation. Deep learning (DL) has shown great potential in this area through its automatic feature extraction and pattern recognition capabilities. This paper systematically reviews the state-of-the-art of DL-enabled NDT&E of composite materials. First, the evolution and technical characteristics of DL architectures are summarized chronologically. Secondly, organized by the NDT&E task flow, representative studies are elaborated from four aspects—data preprocessing, defect detection, defect evaluation, and human-in-the-loop. Current deficiencies and challenges are highlighted. Finally, based on the level of DL autonomy in NDT&E, we propose a five-stage progressive path: AI-Assistant, AI-Copilot, AI-Agent, AI-Autonomy, and AI-Complete (AI-ACAAC), aiming to provide a roadmap for intelligent development in composite inspection and evaluation.

     

/

返回文章
返回