On Normalized Fatigue Crack Growth Modeling

Sebastian T. Glavind, Henning Brüske, M. Faber
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引用次数: 1

Abstract

Modeling of fatigue crack growth plays a key role in risk informed inspection and maintenance planning for fatigue sensitive structural details. Probabilistic models must be available for observable fatigue performances such as crack length and depth, as a function of time. To this end, probabilistic fracture mechanical models are generally formulated and calibrated to provide the same probabilistic characteristics of the fatigue life as the relevant SN fatigue life model. Despite this calibration, it is recognized that the rather complex fracture mechanical models suffer from the fact that several of their parameters are assessed experimentally on an individual basis. Thus, the probabilistic models derived for these parameters in general omit possible mutual dependencies, and this in turn is likely to increase the uncertainty associated with modeled fatigue lives. Motivated by the possibility to reduce the uncertainty associated with complex multi-parameter probabilistic fracture mechanical models, a so-called normalized fatigue crack growth model was suggested by Tychsen (2017). In this model, the main uncertainty associated with the fatigue crack growth is captured in only one parameter. In the present contribution, we address this new approach for the modeling of fatigue crack growth from the perspective of how to best estimate its parameters based on experimental evidence. To this end, parametric Bayesian hierarchical models are formulated taking basis in modern big data analysis techniques. The proposed probabilistic modeling scheme is presented and discussed through an example considering fatigue crack growth of welds in K-joints. Finally, it is shown how the developed probabilistic crack growth model may be applied as basis for risk-based inspection and maintenance planning.
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归一化疲劳裂纹扩展模型研究
疲劳裂纹扩展建模在疲劳敏感结构细节的风险检测和维修计划中起着关键作用。对于可观察到的疲劳性能,如裂纹长度和深度,必须有作为时间函数的概率模型。为此,通常制定和校准概率断裂力学模型,以提供与相关SN疲劳寿命模型相同的疲劳寿命概率特征。尽管进行了这种校准,但人们认识到,相当复杂的断裂力学模型的一些参数是在个体基础上进行实验评估的。因此,为这些参数推导的概率模型通常忽略了可能的相互依赖性,而这反过来又可能增加与建模疲劳寿命相关的不确定性。为了减少复杂的多参数概率断裂力学模型的不确定性,Tychsen(2017)提出了一种所谓的归一化疲劳裂纹扩展模型。在该模型中,与疲劳裂纹扩展有关的主要不确定性仅体现在一个参数中。在目前的贡献中,我们从如何根据实验证据最好地估计其参数的角度出发,讨论了这种建模疲劳裂纹扩展的新方法。为此,在现代大数据分析技术的基础上,建立了参数贝叶斯层次模型。通过考虑k形接头焊缝疲劳裂纹扩展的实例,提出并讨论了所提出的概率建模方案。最后,说明了所建立的概率裂纹扩展模型可以作为基于风险的检修计划的依据。
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