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Real-Time Prognosis of Crack Growth Evolution Using Sequential Monte Carlo Methods and Statistical Model Parameters

机译:顺序蒙特卡罗方法和统计模型参数对裂纹扩展演化的实时预测

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摘要

A probabilistic method to monitor and predict fatigue crack propagation is presented in this work. The technique makes use of sequential Monte Carlo sampling combined with the probability density functions of the model parameters. The technique leads to an adaptive dynamic state-space model for crack evolution able to identify the most probable parameters, enhancing the estimation of the residual life of the system. The lifetime predictor presented here could be implemented in advanced maintenance strategies for critical structures employed in civil, industrial, and aerospace fields. The algorithm is first applied to a simulated crack growth, and then to some experimental crack propagations from laboratory tests on helicopter panels. The applicability within on-line continuous monitoring systems is discussed at the end of the paper.
机译:在这项工作中提出了一种监测和预测疲劳裂纹扩展的概率方法。该技术利用顺序蒙特卡洛采样结合模型参数的概率密度函数。该技术导致了用于裂纹扩展的自适应动态状态空间模型,该模型能够识别最可能的参数,从而增强了系统剩余寿命的估计。此处介绍的寿命预测器可以在民用,工业和航空航天领域中采用的关键结构的高级维护策略中实施。该算法首先应用于模拟裂纹扩展,然后应用于直升机面板上实验室测试的一些实验裂纹扩展。本文最后讨论了在线连续监控系统中的适用性。

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