Fu Chengcheng, Gao Cheng, Zhang Weifang
School of Energy and Power Engineering, Beihang University, Beijing 100191, China.
School of Reliability and Systems Engineering, Beihang University, Beijing 100191, China.
Sensors (Basel). 2023 Sep 29;23(19):8173. doi: 10.3390/s23198173.
Piezoelectric vibration sensors (PVSs) are widely applied to vibration detection in aerospace engines due to their small size, high sensitivity, and high-temperature resistance. The precise prediction of their remaining useful life (RUL) under high temperatures is crucial for their maintenance. Notably, digital twins (DTs) provide enormous data from both physical structures and virtual models, which have potential in RUL predictions. Therefore, this work establishes a DT framework containing six modules for sensitivity degradation detection and assessment on the foundation of a five-dimensional DT model. In line with the sensitivity degradation mechanism at high temperatures, a DT-based RUL prediction was performed. Specifically, the PVS sensitivity degradation was described by the Wiener-Arrhenius accelerated degradation model based on the acceleration factor constant principle. Next, an error correction method for the degradation model was proposed using real-time data. Moreover, parameter updates were conducted using a Bayesian method, based on which the RUL was predicted using the first hitting time. Extensive experiments on distinguishing PVS samples demonstrate that our model achieves satisfying performance, which significantly reduces the prediction error to 8 h. A case study was also conducted to provide high RUL prediction accuracy, which further validates the effectiveness of our model in practical use.
压电振动传感器(PVSs)因其尺寸小、灵敏度高和耐高温性而被广泛应用于航空发动机的振动检测。精确预测其在高温下的剩余使用寿命(RUL)对其维护至关重要。值得注意的是,数字孪生(DTs)从物理结构和虚拟模型中提供了大量数据,在RUL预测方面具有潜力。因此,这项工作在五维DT模型的基础上建立了一个包含六个模块的DT框架,用于灵敏度退化检测和评估。根据高温下的灵敏度退化机制,进行了基于DT的RUL预测。具体而言,基于加速因子恒定原理,采用维纳-阿累尼乌斯加速退化模型描述PVS灵敏度退化。接下来,利用实时数据提出了一种退化模型的误差校正方法。此外,使用贝叶斯方法进行参数更新,并在此基础上利用首次击中时间预测RUL。对区分PVS样本的大量实验表明,我们的模型取得了令人满意的性能,显著将预测误差降低到8小时。还进行了一个案例研究,以提供较高的RUL预测精度,进一步验证了我们模型在实际应用中的有效性。