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An Enhanced Guided Wave-Gaussian Mixture Model for Aircraft Structural Damage Monitoring Under Varying Environmental and Operational Conditions

机译:不同环境与运营条件下的飞机结构损伤监测增强引导波 - 高斯混合模型

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During the past two decades, aircraft Structural Health Monitoring (SHM) technology has gradually turned from fundamental research and laboratorial validations to engineering-oriented developments. However, the process of the transition from research to application has been rather slow and the SHM application to real in-service aircraft structures is barely reported. One of the main application obstacle of the SHM application to real in-service aircraft structures is the problem of reliable damage monitoring under aircraft in-service environmental and operational conditions (referred to as time-varying conditions). Several methods have been proposed to deal with this problem but limitations remain. In this paper, an enhanced Guided Wave-Gaussian Mixture Model (GW-GMM) based damage monitoring method is studied. It can be used on-line without any structural mechanical model or priori knowledge of damage under time-varying conditions. With this method, a baseline GW-GMM is constructed first based on the GW features obtained under time-varying conditions when the structure is in healthy state. When a new GW feature is obtained during an on-line damage monitoring process, the GW-GMM is updated by an enhanced update mechanism including dynamic learning and Gaussian components split-merge. The mixture probability structure of the GW-GMM and the number of Gaussian components can be optimized adaptively. Finally, a Probability Damage Index is used to measure the variation degree between the baseline GW-GMM and the on-line GW-GMM to reveal the weak cumulative variation trend induced by damage of the GW-GMM so as to increase the reliability of damage evaluation. The method is validated in a full-scale aircraft fatigue test and the results indicate that the reliable crack propagation monitoring of the right landing gear spar under the fatigue load condition is achieved.
机译:在过去的二十年中,飞机结构健康监测(SHM)技术逐渐从基本的研究和实验室验证转向以工程为导向的发展。然而,从研究到申请的转型的过程已经相当慢,并且SHM应用于真正的在职飞机结构几乎没有报道。 SHM应用到真正的在职飞机结构的主要应用障碍之一是飞机在役环境和运营条件下的可靠损坏问题(称为时变条件)。已经提出了几种方法来处理这个问题,但仍然存在限制。本文研究了增强的引导波 - 高斯混合模型(GW-GMM)损伤监测方法。它可以在线无需任何结构机械模型或在时变条件下先验的损坏知识。利用这种方法,基于在结构处于健康状态时,基于在时变条件下获得的GW特征来构建基线GW-GMM。当在在线损伤监视过程中获得新的GW功能时,GW-GMM通过增强的更新机制更新,包括动态学习和高斯组件分离合并。 GW-GMM的混合概率结构和高斯部件的数量可以自适应地优化。最后,概率损伤指数用于测量基线GW-GMM和在线GW-GMM之间的变化程度,以揭示GW-GMM损坏引起的累积变异趋势,以提高损坏的可靠性评估。该方法在全尺寸的飞机疲劳试验中验证,结果表明,实现了在疲劳负荷条件下的右侧着陆齿轮翼梁的可靠裂缝传播监测。

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