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A Probabilistic Framework for Low Cycle Fatigue Life Prediction and Uncertainty Modeling of Turbine Disk Alloys

机译:涡轮盘合金低周疲劳寿命预测和不确定性建模的概率框架

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Probabilistic life prediction of aircraft turbine disks requires the modeling of multiple complex random phenomena. The aim of the present paper is to develop a framework for probabilistic low cycle fatigue (LCF) life prediction using Bayes' theorem and to quantify the uncertainty of material properties, total inputs and model uncertainty resulting from creation of different deterministic models within a LCF regime. Further, based on experimental data of the turbine disk material (GH4133) tested at various temperatures, the capabilities of proposed probabilistic LCF life prediction framework are verified using four models (the viscosity-based model, generalized damage parameter, Smith-Watson-Topper (SWT) and plastic strain energy density (PSED)). Through updating the input parameters with new data, this probabilistic framework provides more valuable information for assessing the life of structures or materials, showing that the predicted distributions of fatigue life agree well with the experimental results. The results show that the viscosity-based model and the SWT model yield more satisfactory probabilistic life prediction results for GH4133 under different temperatures than the generalized damage parameter and PSED ones.
机译:飞机涡轮盘的概率寿命预测需要对多个复杂的随机现象进行建模。本文的目的是使用贝叶斯定理建立概率低周期疲劳(LCF)寿命预测的框架,并量化因在LCF方案内创建不同确定性模型而导致的材料性能,总输入量和模型不确定性的不确定性。此外,根据在各种温度下测试的涡轮盘材料(GH4133)的实验数据,使用四个模型(基于粘度的模型,广义损伤参数,Smith-Watson-Topper( SWT)和塑性应变能密度(PSED))。通过用新数据更新输入参数,该概率框架为评估结构或材料的寿命提供了更有价值的信息,表明疲劳寿命的预测分布与实验结果吻合良好。结果表明,与广义损伤参数和PSED相比,基于粘度的模型和SWT模型对于GH4133在不同温度下的概率寿命预测结果更为令人满意。

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