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涡轮叶片早期裂纹的三维叶尖间隙EEMD能量熵融合诊断方法

黄鑫 张小栋 刘洪成

黄鑫, 张小栋, 刘洪成. 涡轮叶片早期裂纹的三维叶尖间隙EEMD能量熵融合诊断方法[J]. 航空动力学报, 2020, 35(5): 918-927. doi: 10.13224/j.cnki.jasp.2020.05.003
引用本文: 黄鑫, 张小栋, 刘洪成. 涡轮叶片早期裂纹的三维叶尖间隙EEMD能量熵融合诊断方法[J]. 航空动力学报, 2020, 35(5): 918-927. doi: 10.13224/j.cnki.jasp.2020.05.003
ZHANG Yingjie, ZHANG Xiaodong, LIU Hongcheng. Approach to early crack diagnosis of turbine blade based on EEMD energy entropy fusion of three-dimensional tip clearance[J]. Journal of Aerospace Power, 2020, 35(5): 918-927. doi: 10.13224/j.cnki.jasp.2020.05.003
Citation: ZHANG Yingjie, ZHANG Xiaodong, LIU Hongcheng. Approach to early crack diagnosis of turbine blade based on EEMD energy entropy fusion of three-dimensional tip clearance[J]. Journal of Aerospace Power, 2020, 35(5): 918-927. doi: 10.13224/j.cnki.jasp.2020.05.003

涡轮叶片早期裂纹的三维叶尖间隙EEMD能量熵融合诊断方法

doi: 10.13224/j.cnki.jasp.2020.05.003
基金项目: 国家自然科学基金(51575436)

Approach to early crack diagnosis of turbine blade based on EEMD energy entropy fusion of three-dimensional tip clearance

  • 摘要: 为了解决航空发动机涡轮叶片早期裂纹故障信号微弱、难以识别的问题,提出一种基于三维叶尖间隙集成经验模态分解(EEMD)能量熵融合的涡轮叶片早期裂纹诊断方法。采集涡轮叶片三维叶尖间隙信息,利用EEMD分别对三维叶尖间隙各维信号进行处理,得到相应的固有模态函数(IMF),以此计算每一维信号分量EEMD能量熵,构建能表征叶片裂纹状态的不同EEMD能量熵高维矢量集。建立多个堆叠自动编码器(SAE)分别对各高维矢量集进行特征学习并提取所学习的深层特征表达。利用支持向量机算法(SVM)和遗传算法(GA)融合各维深层特征以综合不同维度信息进而充分判定叶片裂纹状态。通过涡轮叶片裂纹诊断试验,结果表明:所提方法能有效提高叶片早期裂纹诊断精度,其平均准确率达到98.415%,标准差仅为0.697%,具有很好的稳定性、泛化性和自适应性。

     

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出版历程
  • 收稿日期:  2019-12-06
  • 刊出日期:  2020-05-28

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