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Damage monitoring and prognostics in composites via dynamic Bayesian networks

机译:通过动态贝叶斯网络进行复合材料的损伤监测和预测

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This study presents a new structural health monitoring framework for complex degradation processes such as degradation of composites under fatigue loading. Since early detection and measurement of an observable damage marker in composite is very difficult, the proposed framework is established based on identifying and then monitoring “indirect damage indicators”. Dynamic Bayesian Network is utilized to integrate relevant damage models with any available monitoring data as well as other influential parameters. As the damage evolution process in composites is not fully explored, a technique consisting of extended Particle Filtering and Support Vector Regression is implemented to simultaneously estimate the damage model parameters as well as damage states in the presence of multiple measurements. The method is then applied to predict the time to failure of the component.
机译:这项研究为复杂的降解过程(例如复合材料在疲劳载荷下的降解)提供了一种新的结构健康监测框架。由于很难对复合材料中的可观察到的破坏标志物进行早期检测和测量,因此,在识别和监控“间接破坏标志”的基础上建立了所提出的框架。动态贝叶斯网络用于将相关的破坏模型与任何可用的监控数据以及其他有影响力的参数集成在一起。由于尚未全面探索复合材料的损伤演化过程,因此实施了由扩展的粒子滤波和支持向量回归组成的技术,以在存在多个测量值的同时估计损伤模型参数以及损伤状态。然后将该方法应用于预测组件的故障时间。

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