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Bayesian-based probabilistic fatigue crack growth evaluation combined with machine-learning-assisted GPR

机译:基于贝叶斯的概率疲劳裂纹增长评估与机器学习辅助GPR相结合

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摘要

This paper presents a Bayesian-based calibration method that simultaneously improves the model accuracy and the computational efficiency for fatigue crack growth (FCG) life prediction on turbine discs. Uncertainties derived from geometry, material and models are elaborately quantified based on the data from measurements and experiments. A Bayesian approach is used for uncertainty quantification, where Markov Chain Monte Carlo algorithm is employed to estimate posterior distributions. Gaussian process regression (GPR) is introduced to describe the propagation of uncertainties and improve the efficiency in high-dimensional analysis. With the integrated methodology, uncertainties are embodied in life prediction results of a whole turbine disc. A full-scale spin test is carried out under low cycle fatigue loading, where three effective crack samples are generated and monitored. Compared with the experimental results, the mean values of the predictions are bounded within a factor of +/- 2.0, validating the potential usage of the proposed method in the probabilistic FCG life assessment.
机译:本文介绍了一种基于贝叶斯的校准方法,可同时提高模型精度和涡轮机椎间盘疲劳裂纹生长(FCG)寿命预测的计算效率。根据来自测量和实验的数据来精确定量来自几何形状,材料和模型的不确定性。贝叶斯方法用于不确定量化,其中马尔可夫链蒙特卡罗算法用于估计后部分布。引入高斯过程回归(GPR)以描述不确定性的传播,提高高维分析的效率。利用综合方法,不确定性体现在整个涡轮盘的生命预测结果中。在低循环疲劳负载下进行全级旋转试验,其中产生三个有效的裂缝样品并监测。与实验结果相比,预测的平均值在+/- 2.0的因子范围内界定,验证了所提出的方法在概率的FCG寿命评估中的潜在用法。

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