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Fatigue damage diagnostics and prognostics of composites utilizing structural health monitoring data and stochastic processes

机译:利用结构健康监测数据和随机过程对复合材料进行疲劳损伤诊断和预测

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摘要

The procedure of damage accumulation in composites, especially during fatigue loading, is a complex phenomenon of stochastic nature which depends on a number of parameters such as type and frequency of loading, stacking sequence, material properties, and so on. Toward condition-based health monitoring and decision making, the need for not only diagnostic but also prognostic tools rises and draws increasing attention in the last few years. To this direction, we model the damage evolution in composites as a doubly stochastic hidden Markov process that manifests itself via structural health monitoring observations, that is, acoustic emission data. The damage process is modeled via an extension of the classic hidden Markov models to account for nonhomogeneity, that is, age dependence in state transitions. The observations come from acoustic emission data recorded throughout fatigue testing of open-hole carbon-epoxy coupons. A procedure that utilizes multiple observation sequences from a training dataset and estimates in a maximum likelihood sense the optimal model parameters is presented and applied in unseen data via a cross-validation rationale. Diagnostics of the most likely health state determination, average degradation level, and prognostics of the remaining useful life are among the capabilities of the presented stochastic model.
机译:复合材料中损伤累积的过程,尤其是在疲劳载荷过程中,是一种复杂的随机性现象,它取决于许多参数,例如载荷的类型和频率,堆垛顺序,材料特性等。在基于状况的健康监测和决策方面,不仅对诊断工具而且对预后工具的需求在上升,并且在最近几年引起了越来越多的关注。朝这个方向,我们将复合材料中的损伤演化建模为双重随机隐马尔可夫过程,该过程通过结构健康监测观察(即声发射数据)表现出来。通过经典隐马尔可夫模型的扩展对损坏过程进行建模,以解决非均质性,即状态转换中的年龄依赖性。这些观察结果来自声发射数据,这些声发射数据是在整个裸眼碳-环氧树脂试件疲劳测试期间记录的。该程序利用了来自训练数据集的多个观察序列,并以最大似然的方式估计了最优模型参数,并通过交叉验证原理将其应用到了看不见的数据中。所提出的随机模型的功能包括最可能的健康状态确定,平均降解水平和剩余使用寿命的预测。

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