Physics-Informed Framework for Impact Identification in Aerospace Composites
AI 摘要
提出了一种基于物理信息的冲击识别框架,可实现更稳定、数据效率更高的冲击识别。
主要贡献
- 提出了一种融合物理知识和数据驱动推理的冲击识别框架
- 利用物理信息的能量指标构建输入空间
- 通过架构设计和混合损失函数约束解空间,保证物理一致性
方法论
该方法结合物理知识,通过物理信息约束和混合损失函数,训练解耦的代理模型,并利用动能一致性计算冲击能量。
原文摘要
This paper introduces a novel physics-informed impact identification (Phy-ID) framework. The proposed method integrates observational, inductive, and learning biases to combine physical knowledge with data-driven inference in a unified modelling strategy, achieving physically consistent and numerically stable impact identification. The physics-informed approach structures the input space using physics-based energy indicators, constrains admissible solutions via architectural design, and enforces governing relations via hybrid loss formulations. Together, these mechanisms limit non-physical solutions and stabilise inference under degraded measurement conditions. A disjoint inference formulation is used as a representative use case to demonstrate the framework capabilities, in which impact velocity and impactor mass are inferred through decoupled surrogate models, and impact energy is computed by enforcing kinetic energy consistency. Experimental evaluations show mean absolute percentage errors below 8% for inferred impact velocity and impactor mass and below 10% for impact energy. Additional analyses confirm stable performance under reduced data availability and increased measurement noise, as well as generalisation for out-of-distribution cases across pristine and damaged regimes when damaged responses are included in training. These results indicate that the systematic integration of physics-informed biases enables reliable, physically consistent, and data-efficient impact identification, highlighting the potential of the approach for practical monitoring systems.