基于光纤Bragg光栅的复合材料层合板疲劳损伤检测与预测

M. Todd, W. Gregory, C. Key, Mike Yeager, J.-Y. Ye
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引用次数: 2

摘要

在许多结构应用中,复合材料系统在改造和新设计模式中的应用已经大大扩展。复合材料带来的性能优势,如重量减轻、强度增加、耐腐蚀性增强、热学和声学性能改善,与一系列失效模式相平衡,这些失效模式的发生和发展尚未得到很好的理解。因此,结构健康监测(SHM)在性能/操作优化、维护计划和整体生命周期成本降低的现场评估中起着关键作用。在这项工作中,光纤布拉格光栅光学应变传感器阵列连接到玻璃环氧固体层压复合材料样品,随后受到特定水平的完全反向循环加载。疲劳载荷被设计成施加在面板上的应变水平,在不同的循环次数下会对层压板造成损伤。该系列测试的目的是评估光纤布拉格光栅传感器检测疲劳损伤的能力(使用先前开发的SHM算法),并建立一个数据集,用于开发应用于随机大小的完全反向应变加载的预测模型。预测方法植根于故障预测方法,即周期性特征变化率随时间回归以达到故障估计。建立了预测器的不确定性模型,以便可以在故障时间估计周围计算概率密度函数,从中比较平均值,中位数和模式预测器的稳健性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Composite Laminate Fatigue Damage Detection and Prognosis Using Embedded Fiber Bragg Gratings
In many structural applications the use of composite material systems in both retrofit and new design modes has expanded greatly. The performance benefits from composites such as weight reduction with increased strength, corrosion resistance, and improved thermal and acoustic properties, are balanced by a host of failure modes whose genesis and progression are not yet well understood. As such, structural health monitoring (SHM) plays a key role for in-situ assessment for the purposes of performance/operations optimization, maintenance planning, and overall life cycle cost reduction. In this work, arrays of fiber Bragg grating optical strain sensors are attached to glass-epoxy solid laminate composite specimens that were subsequently subjected to specific levels of fully reversed cyclic loading. The fatigue loading was designed to impose strain levels in the panel that would induce damage to the laminate at varying numbers of cycles. The objectives of this test series were to assess the ability of the fiber Bragg grating sensors to detect fatigue damage (using previously developed SHM algorithms) and to establish a dataset for the development of a prognostic model to be applied to a random magnitude of fully reversed strain loading. The prognostic approach is rooted in the Failure Forecast Method, whereby the periodic feature rate-of-change was regressed against time to arrive at a failure estimate. An uncertainty model for the predictor was built so that a probability density function could be computed around the time-of-failure estimate, from which mean, median, and mode predictors were compared for robustness.
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