Weighted bagging gaussion process regression to predict remaining useful life of electro-mechanical actuator

Yujie Zhang, Xiyuan Peng, Yu Peng, Jingyue Pang, Datong Liu
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引用次数: 6

Abstract

Electro-Mechanical Actuator (EMA) is one of the key components of next generation aircraft. In order to ensure the safety of aircraft, it is critical to predict the remaining useful life (RUL) of EMA. And the RUL prediction can be implemented by utilizing Gaussian Process Regression (GPR). However, the GPR algorithm is extremely complex. Hence, a weighted bagging Gaussian Process Regression (WB-GPR) algorithm is presented in this article. To be specific, the significance of RUL prediction of EMA is analyzed, and the variable which can represent the degradation progress of EMA failure is selected. Then the framework to predict the RUL of EMA is realized, with the proposed WB-GPR. Finally the performance of RUL prediction based on WB-GPR is validated by utilizing the sensor data sets from National Aeronautics and Space Administration (NASA) Ames Research Center. Furthermore, the comparison of RUL prediction with GPR and bagging GPR has been achieved. Experimental results demonstrate that the WB-GPR is effective in the RUL prediction with low error rate and standard deviation.
加权装袋高斯过程回归预测机电致动器剩余使用寿命
机电致动器(EMA)是下一代飞机的关键部件之一。为了保证飞机的安全,对电磁辐射防护装置的剩余使用寿命(RUL)进行预测是至关重要的。利用高斯过程回归(GPR)可以实现RUL预测。然而,GPR算法是极其复杂的。因此,本文提出了加权套袋高斯过程回归(WB-GPR)算法。具体来说,分析了自动电机RUL预测的意义,选择了能够代表自动电机失效退化过程的变量。在此基础上,利用所提出的WB-GPR算法,实现了EMA规则值预测的框架。最后,利用美国国家航空航天局(NASA)艾姆斯研究中心的传感器数据集,验证了基于WB-GPR的RUL预测的性能。此外,还与探地雷达和套袋探地雷达进行了RUL预测的比较。实验结果表明,WB-GPR在RUL预测中具有较低的误差率和标准差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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