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Fault diagnosis of hydraulic retraction system based on multi-source signals feature fusion and health assessment for the actuator

机译:基于多源信号的液压收缩系统故障诊断特征融合与执行器的健康评估

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摘要

In order to solve the problems that traditional diagnostic method is heavily dependent on the signal processing techniques and expert experience, and the diagnostic accuracy is difficult to have big improvement anymore with the accumulation of operational data, which cannot meet the needs of fault diagnosis in the big data age, a multi-source signals feature fusion method by deep learning model is proposed in this paper. The stacked denoising autoencoders (SDAE) is used to extract the abstract and deep features from original features, and then locality preserving projections (LPP) is used for dimensionality reduction to complete the feature fusion. Finally, the fused low-dimensional features act as inputs to the support vector machine (SVM) to realize the failure detection and fault location of typical fault modes of the landing gear hydraulic retraction system. The inhibitory effect of the feedback control on the incipient fault is discussed as well. Moreover, a severity assessment method is presented considering the gradual degradation of leakage fault of the actuator. The diagnostic results show that the proposed method has a better feature fusion ability and higher diagnostic accuracy. The health assessment model can evaluate the health state of the actuator. The significance of this paper is to provide a feasible idea for the fault diagnosis of the landing gear hydraulic retraction system and health assessment of the actuator.
机译:为了解决传统诊断方法严重依赖于信号处理技术和专家体验的问题,并且难以通过运营数据的积累来具有大的改进难以满足故障诊断的需要大数据时代,本文提出了深度学习模型的多源信号特征融合方法。堆叠的去噪AutoEncoders(SDAE)用于从原始特征中提取摘要和深度特征,然后将位置保存投影(LPP)用于维度降低以完成特征融合。最后,熔融的低维特征充当支撑载体机(SVM)的输入,以实现着陆齿轮液压收缩系统的典型故障模式的故障检测和故障定位。还讨论了反馈控制对初始故障的抑制作用。此外,考虑了致动器泄漏故障的逐渐劣化,提出了严重性评估方法。诊断结果表明,该方法具有更好的特征融合能力和更高的诊断精度。健康评估模型可以评估执行器的健康状态。本文的重要性是为致动器的着陆齿轮液压缩回系统的故障诊断提供可行的思想。

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