A method for predicting aviation equipment failures based on degradation-track similarity

Zhao Xin, Xiao Ming-qing, Xie Yi-wang-lang, Huang Han-qiao, Cao Wei
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引用次数: 3

Abstract

The framework of similarity-based prognostics was presented, which takes advantage of system 's training instances' degradation trajectory and run-to-failure time to predict the remaining useful life(RUL) of test instances. Degradation models are extracted from time series data of training instances. Similarity between time series data of test instance and degradation model is calculated by likelihood function. RUL value according to the degradation model is then estimated at the best matched time stamp. RUL values weighted by similarities are fused by kernel density estimation to form the final probability density of the RUL of test instance. Results of aviation equipment simulation experiments show that the similarity-based RUL prediction performs better in accuracy and convergency.
基于退化航迹相似度的航空设备故障预测方法
提出了基于相似性的预测框架,利用系统训练实例的退化轨迹和运行失效时间来预测测试实例的剩余使用寿命。从训练实例的时间序列数据中提取退化模型。利用似然函数计算测试实例的时间序列数据与退化模型的相似度。然后根据退化模型在最佳匹配的时间戳处估计RUL值。通过核密度估计对相似度加权后的RUL值进行融合,形成测试实例RUL的最终概率密度。航空装备仿真实验结果表明,基于相似度的RUL预测具有较好的精度和收敛性。
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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