首页 | 官方网站   微博 | 高级检索  
     

数据驱动的运载火箭氧涡轮泵异常分析方法
引用本文:王冠,王婧雨,刘巧珍,宋征宇.数据驱动的运载火箭氧涡轮泵异常分析方法[J].宇航学报,2022,43(7):964-973.
作者姓名:王冠  王婧雨  刘巧珍  宋征宇
作者单位:1. 北京宇航系统工程研究所,北京 100076; 2. 中国运载火箭技术研究院,北京 100076
基金项目:民用航天“十三五”技术预先研究项目;
摘    要:基于模糊聚类和LSTM网络,提出了一种数据驱动的运载火箭发动机氧涡轮泵数据异常分析方法。通过模糊聚类对工况复杂,标签不完整的数据样本进行预分类,得到完整的标签并且分析特征贡献度,为LSTM网络的特征筛选和训练打下基础;通过LSTM网络对氧涡轮泵数据进行预测,并计算预测结果与原始数据之间的平均误差,再根据非参数阈值计算方法计算的阈值判据来判断设备是否异常,最终实现了氧涡轮泵数据驱动的故障检测报警,相较于红线阈值检测方法准确率提升7%。

关 键 词:火箭发动机  故障检测  氧涡轮泵  模糊聚类  长短期记忆网络  
收稿时间:2021-10-19

Data driven Anomaly Analysis Method of Launch Vehicle Oxygen Turbopump
WANG Guan,WANG Jingyu,LIU Qiaozhen,SONG Zhengyu.Data driven Anomaly Analysis Method of Launch Vehicle Oxygen Turbopump[J].Journal of Astronautics,2022,43(7):964-973.
Authors:WANG Guan  WANG Jingyu  LIU Qiaozhen  SONG Zhengyu
Affiliation:1.Beijing Institute of Astronautical Systems Engineering, Beijing 100076, China;2.China Academy of Launch Vehicle Technology, Beijing 100076, China
Abstract:Based on fuzzy clustering and LSTM network, a data driven anomaly analysis method of launch vehicle engine oxygen turbopump data is proposed. Firstly, fuzzy clustering is used to pre classify the data samples with complex working conditions and incomplete labels to obtain complete labels and analyze the feature contribution, which lays a foundation for feature screening and training of LSTM network. The LSTM network is used to predict the data of the oxygen turbopump, and the average error between the predicted results and the original data is calculated. Then the threshold criterion calculated by the non parametric threshold calculation method is used to determine whether the turbopump is abnormal. Finally, the fault detection and alarm driven by the oxygen turbopump data are realized, and the accuracy is improved by 7% compared with the red line threshold detection method.
Keywords:Launch vehicle engine  Anomaly detection  Oxygen turbopump  Fuzzy clustering  LSTM networks  
点击此处可从《宇航学报》浏览原始摘要信息
点击此处可从《宇航学报》下载全文
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司    京ICP备09084417号-23

京公网安备 11010802026262号