Remaining useful life prediction of a small sample of aero-engine based on an improved gray Markov model

灰色(单位) 马尔可夫链 计算机科学 统计 样品(材料) 最大熵马尔可夫模型 人工智能 马尔可夫模型 机器学习 数学 变阶马尔可夫模型 医学 色谱法 化学 放射科
作者
Donghai Li,Jian Tu,Hui Liu,Noelle S. Liao
出处
期刊:Results in engineering [Elsevier BV]
卷期号:26: 105486-105486 被引量:2
标识
DOI:10.1016/j.rineng.2025.105486
摘要

• First hybrid data-physics architecture: fusion of feature engineering and adaptive gray Markov model, breaking through the bottleneck of aero-engine degradation modeling under the condition of small samples (n≤50). • Dynamic parameter optimization algorithm: Based on genetic algorithm to realize self-tuning of response parameters in time domain, and improve 12.7% accuracy of late failure prediction compared with traditional model. • Industrial-grade validation system: 2.04% MAPE error reduction on NASA C-MAPSS benchmarks, verifying the robustness of the method under real working conditions. • Migration engineering framework: establish a complete technology chain from algorithm innovation to maintenance decision-making, and provide zero-sample migration solutions for high-value equipment. Predictive maintenance of high-value aero-engines faces a serious challenge: the lack of sufficient failure samples for accurate remaining service life estimation, especially in the case of nonlinear degradation. To address this issue, this study presents a novel data-physics fusion framework using the NASA turbine engine public dataset as the operational data for the study. First, a two-stage feature engineering strategy is designed: (1) Spearman correlation analysis identifies degradation-sensitive physical parameters. (2) Principal component analysis reduces dimensionality while preserving degraded trajectory patterns. Second, a gray-Markov hybrid model is developed to capture nonlinear wear dynamics, where polynomial fitting simulates accelerated failure modes in late life. To enhance adaptability, a genetic algorithm dynamically optimizes the time response parameters of the grey model, overcoming the limitation of a fixed structure in traditional methods. The improved model achieves an average absolute percentage error reduction of 2.04% compared to the original gray Markov model. This research fills the gap between data scarcity and intelligent prediction, providing a viable informatics solution for high-cost devices.
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