Machine learning-based probabilistic fatigue assessment of turbine bladed disks under multisource uncertainties

IF 3.5 Q1 ENGINEERING, MULTIDISCIPLINARY
Shun-Peng Zhu, Xiaopeng Niu, Behrooz Keshtegar, Changqi Luo, Mansour Bagheri
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引用次数: 0

Abstract

Purpose The multisource uncertainties, including material dispersion, load fluctuation and geometrical tolerance, have crucial effects on fatigue performance of turbine bladed disks. In view of the aim of this paper, it is essential to develop an advanced approach to efficiently quantify their influences and evaluate the fatigue life of turbine bladed disks. Design/methodology/approach In this study, a novel combined machine learning strategy is performed to fatigue assessment of turbine bladed disks. Proposed model consists of two modeling phases in terms of response surface method (RSM) and support vector regression (SVR), namely RSM-SVR. Two different input sets obtained from basic variables were used as the inputs of RSM, then the predicted results by RSM in first phase is used as inputs of SVR model by using a group data-handling strategy. By this way, the nonlinear flexibility of SVR inputs is improved and RSM-SVR model presents the high-tendency and efficiency characteristics. Findings The accuracy and tendency of the RSM-SVR model, applied to the fatigue life estimation of turbine bladed disks, are validated. The results indicate that the proposed model is capable of accurately simulating the nonlinear response of turbine bladed disks under multisource uncertainties, and SVR-RSM model provides an accurate prediction strategy compared to RSM and SVR for fatigue analysis of complex structures. Originality/value The results indicate that the proposed model is capable of accurately simulate the nonlinear response of turbine bladed disks under multisource uncertainties, and SVR-RSM model provides an accurate prediction compared to RSM and SVRE for fatigue analysis of turbine bladed disk.
多源不确定性下基于机器学习的涡轮叶片叶片概率疲劳评估
材料弥散、载荷波动和几何容差等多源不确定性对涡轮叶片的疲劳性能有重要影响。鉴于本文的目的,有必要发展一种先进的方法来有效地量化它们的影响并评估涡轮叶片的疲劳寿命。设计/方法/方法在本研究中,采用一种新的组合机器学习策略对涡轮叶片盘进行疲劳评估。该模型包括响应面法(RSM)和支持向量回归(SVR)两个建模阶段,即RSM-SVR。将基本变量得到的两个不同的输入集作为RSM的输入,然后采用分组数据处理策略将RSM在第一阶段的预测结果作为SVR模型的输入。这种方法提高了SVR输入的非线性灵活性,使RSM-SVR模型具有高倾向性和高效率的特点。结果验证了RSM-SVR模型在涡轮叶片疲劳寿命估计中的准确性和倾向性。结果表明,该模型能够准确地模拟多源不确定性条件下涡轮叶片盘的非线性响应,与RSM和SVR模型相比,SVR-RSM模型为复杂结构的疲劳分析提供了更准确的预测策略。结果表明,该模型能够准确模拟多源不确定性条件下涡轮叶片的非线性响应,与RSM和SVRE模型相比,SVR-RSM模型对涡轮叶片的疲劳分析提供了更准确的预测。
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来源期刊
International Journal of Structural Integrity
International Journal of Structural Integrity ENGINEERING, MULTIDISCIPLINARY-
CiteScore
5.40
自引率
14.80%
发文量
42
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