Purpose Accurately predicting the high-cycle fatigue (HCF) reliability of single-crystal turbine blades is essential for the structural integrity and service safety of aero-engine components. However, this task remains challenging due to two main limitations in existing methods: the high computational cost required to quantify aerodynamic excitation dispersion and the absence of models capable of characterizing HCF strength dispersion under multi-factor coupling. To overcome these limitations, this study aims to develop an integrated framework with two major innovations. Design/methodology/approach First, a novel rapid aerodynamic response prediction method is proposed by combining dynamic mode decomposition, proper orthogonal decomposition and long short-term memory networks. Second, a multi-factor synergistic HCF strength model is established based on systematic tests of DD6 single-crystal specimens under varying crystal orientations, temperatures and stress ratios. This model improves the K-T diagram by integrating the EI-Haddad intrinsic crack length, critical distance theory and a Gerber-based mean stress correction. Findings This hybrid DMD-POD-LSTM model achieves high-fidelity predictions of unsteady aerodynamic loads with errors below 6.6%, while providing a computational speedup of over 11.4 times. This method makes the previously exhaustive quantification of aerodynamic excitation dispersion feasible. The multi-factor synergistic HCF strength model improves the K-T diagram by integrating the EI-Haddad intrinsic crack length, critical distance theory and a Gerber-based mean stress correction. It accurately captures the coupled effects of multiple factors, with prediction errors below 7.7%. Originality/value By integrating these two high-precision models within the reliability prediction framework, a comprehensive HCF reliability analysis is achieved that simultaneously accounts for uncertainties in aerodynamic excitation and material HCF strength. The analysis yields a probabilistic reliability of 96.82% for the blade under design conditions, offering a robust and quantitative basis for fatigue-resistant design.
Building similarity graph...
Analyzing shared references across papers
Loading...
Shaohua Wang
Rongqiao Wang
Yupeng Liu
International Journal of Structural Integrity
Beihang University
Aero Engine Corporation of China (China)
Hunan Xiangdian Test Research Institute (China)
Building similarity graph...
Analyzing shared references across papers
Loading...
Wang et al. (Thu,) studied this question.
www.synapsesocial.com/papers/699010ce2ccff479cfe570f4 — DOI: https://doi.org/10.1108/ijsi-12-2025-0314