Data-driven Prognosis of Fatigue-induced Delamination in Composites using Optical and Acoustic NDE methods

P. Banerjee, R. Palanisamy, M. Haq, L. Udpa, Y. Deng
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引用次数: 5

Abstract

With increasing use of fiber reinforced polymer (FRP) composites in several industries such as aviation, automotive and construction, effective reliability analysis of composites has become imperative in recent years. Periodic inspection by robust non-destructive evaluation (NDE) techniques and accurate health prognosis is essential for condition-based maintenance (CBM) of the safety-critical components and structures. Prediction of future damage level in composites often becomes challenging due to lack of physics-based damage growth models for unknown materials which leaves us to rely solely on the NDE data for prognosis. In this study, delamination growth in glass fiber reinforced polymer (GFRP) joints, under Mode I cyclic loading, was monitored by guided waves(GW) using miniature surface-mounted piezoelectric wafers(PZT). Data-driven prognosis techniques such as Kalman filter and particle filter were implemented on the indirect CBM data obtained from GW signals to predict future delamination area and validated against optical transmission scans (OTS) of damaged samples. A comparison of data-driven prognosis methods with static regression versus dynamic update of estimated parameters is presented in this paper. Results show that even when a simple logarithmic fit is assumed, use of NDE data to estimate function parameters in a stochastic framework outperforms the static regression approach leading to a robust sensor-aided reliability analysis.
基于光学和声学无损检测方法的复合材料疲劳诱发分层数据驱动预测
近年来,随着纤维增强聚合物(FRP)复合材料在航空、汽车和建筑等行业的应用越来越广泛,对复合材料进行有效的可靠性分析已成为当务之急。采用稳健的无损评估(NDE)技术进行定期检查和准确的健康预测对于安全关键部件和结构的状态维护(CBM)至关重要。由于缺乏基于物理的未知材料损伤增长模型,预测复合材料的未来损伤水平往往变得具有挑战性,这使得我们只能依靠NDE数据进行预测。在本研究中,利用微型表面贴装压电片(PZT),利用导波(GW)监测了玻璃纤维增强聚合物(GFRP)接头在I型循环载荷下的分层生长情况。采用卡尔曼滤波和粒子滤波等数据驱动预测技术,对从GW信号中获得的间接CBM数据进行预测,预测未来分层面积,并通过损坏样品的光透射扫描(OTS)进行验证。本文对数据驱动的静态回归预测方法与动态更新估计参数的预测方法进行了比较。结果表明,即使假设简单的对数拟合,在随机框架中使用NDE数据估计函数参数也优于静态回归方法,从而实现稳健的传感器辅助可靠性分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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