基于物理信息神经网络的航空发动机叶片高周疲劳剩余寿命预测方法

Method for predicting the high-cycle fatigue remaining useful life of aero-engine blades based on physics-informed neural networks

  • 摘要: 叶片作为航空发动机核心部件,其结构完整性直接决定发动机的性能与飞行安全。在高温、高压及高速旋转等极端工况下,叶片易在复杂应力场作用下产生微裂纹,一旦裂纹扩展、叶片发生断裂,将引发连锁破坏,构成重大安全隐患。基于损伤容限理念,叶片在出现裂纹后仍能维持安全运行的临界时长被界定为剩余寿命(remaining useful life,RUL)。为此,本文提出一种基于Paris裂纹扩展定律与物理信息神经网络(physics-informed neural network,PINN)融合的机理-数据双驱动的剩余寿命预测方法。该方法通过构建包含物理约束的损失函数,对神经网络梯度进行正则化约束,在实现裂纹扩展参数逆向辨识的同时,有效提升了模型在有限监测数据条件下的预测准确性。针对航发叶片与CT试样,相较于传统物理模型与数据驱动方法,本文方法动态更新特征参数以适应系统的变化,在有限样本条件下的预测误差显著降低。此外,本文所构建的PINN模型具有轻量化特性与快速推理能力,可以满足在线监测与预测性维护的需求,为航空发动机健康管理和智能运维提供了一种技术路径。

     

    Abstract: As a core component of an aero-engine, the structural integrity of a blade directly determines the engine’s performance and flight safety. Under extreme working conditions such as high temperature, high pressure, and high-speed rotation, blades are prone to generating micro-cracks under the action of complex stress fields. Once cracks propagate and cause blade fracture, they will trigger chain damage, posing significant safety hazards. Based on the damage tolerance concept, the critical duration during which a blade can still operate safely after crack initiation is defined as the remaining useful life (RUL).To address this, this study proposes a mechanism-data dual-driven RUL prediction method integrating the Paris crack propagation law and physics-informed neural networks (PINN). By constructing a loss function that incorporates physical constraints, this method regularizes and constrains the gradients of the neural network. It enables inverse identification of crack propagation parameters while effectively improving the model’s prediction accuracy under limited monitoring data. For aero-engine blades and CT (compact tension) specimens, compared with traditional physical models and data-driven methods, the proposed method dynamically updates characteristic parameters to adapt to system changes, significantly reducing prediction errors under limited sample conditions. Additionally, the PINN model developed in this study features lightweight architecture and fast inference capabilities, meeting the requirements of online monitoring and predictive maintenance. This method provides a new technical pathway for health management and intelligent operation and maintenance of aero-engines.

     

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