首页|期刊导航|复合材料科学与工程|基于自适应聚类与语义加权的空气耦合兰姆波无基准损伤成像方法

基于自适应聚类与语义加权的空气耦合兰姆波无基准损伤成像方法OA

A baseline-free damage imaging method for air-coupled lamb waves based on adaptive clustering and semantic weighting

中文摘要英文摘要

针对传统空气耦合兰姆(Lamb)波概率成像方法所存在的严重依赖无缺陷参考信号及易受边界伪影干扰的问题,提出一种融合密度聚类与语义加权的无基准概率成像新方法.该方法通过正交扫查采集全路径响应信号,提取小波低频近似系数与归一化对称差分因子构建联合特征向量,并采用基于密度的噪声应用空间聚类(Density-Based Spatial Clustering of Ap-plications with Noise,DBSCAN)对扫描路径进行"健康-损伤"状态的无监督划分.进一步将聚类获得的语义标签作为自适应权重嵌入改进的损伤概率检测重构算法(Reconstruction Algorithm for Probabilistic Inspection of Damage,RAPID)概率成像模型,实现伪影路径抑制与软基准的动态构建.在碳纤维增强复合材料分层缺陷检测试验中,所提方法在完全无需独立健康基准的条件下,平均尺寸测量误差较传统RAPID方法降低 50.5%,对 40 mm×20 mm×0.05 mm缺陷在X/Y方向的测量误差分别降低81.7%与 65.5%,并实现了对 20 mm×20 mm×0.05 mm小缺陷的有效识别.在低至 5 dB信噪比的强噪声环境中,该方法仍保持稳定的成像性能.研究表明,该方法有效解决了传统成像方法对健康基准数据的依赖问题,显著提升了损伤检测的精度与鲁棒性,展现出良好的工程应用潜力.

This paper proposes a baseline-free probability imaging method integrating density clustering and se-mantic weighting to overcome the reliance on defect-free reference signals and boundary artifacts in traditional air-coupled Lamb wave imaging.Full-path response signals are collected via orthogonal scanning.A joint feature vector is constructed using wavelet low-frequency approximation coefficients and a normalized symmetric difference factor,followed by density-based spatial clustering of applications with noise(DBSCAN)to unsupervisedly classify scan paths into"healthy"or"damaged"states.The resulting semantic labels are embedded as adaptive weights into an improved reconstruction algorithm for probabilistic inspection of damage(RAPID)model,suppressing artifact paths and dynamically constructing a soft baseline.Experiments on CFRP delamination defects show that the method,requi-ring no prior baseline,reduces the average size measurement error by 50.5%compared to traditional RAPID.For a 40 mm×20 mm×0.05 mm defect,measurement accuracy in the X/Y directions has improved by 81.7%and 65.5%,respectively,while effective identification of a 20 mm×20 mm×0.05 mm defect is achieved.Stable imaging perform-ance is maintained even at a 5 dB SNR.This method effectively eliminates the baseline dependency and enhances de-tection accuracy and robustness,demonstrating significant engineering potential.

秦塬;周进节;彭志康

中北大学 机械工程学院,太原 030051||恶劣环境管孔智能制造与智能检测山西省重点实验室,太原 030051中北大学 机械工程学院,太原 030051||恶劣环境管孔智能制造与智能检测山西省重点实验室,太原 030051中北大学 机械工程学院,太原 030051||恶劣环境管孔智能制造与智能检测山西省重点实验室,太原 030051

通用工业技术

无基准成像密度聚类语义加权空气耦合兰姆波碳纤维增强复合材料边界伪影抑制

baseline-free imagingdensity clusteringsemantic weightingair-coupled Lamb wavesCFRPboundary artifact suppression

《复合材料科学与工程》 2026 (4)

44-54,11

中央引导地方科技发展资金(YDZJSX2024B006)

10.19936/j.cnki.2096-8000.20260428.006

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