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Fault Diagnosis and Health Assessment of Landing Gear Hydraulic Retraction System Based on Multi-source Information Feature Fusion

机译:基于多源信息特征融合的起落架液压回缩系统故障诊断与健康评估

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In order to solve the problems that a single signal cannot provide sufficient fault information, while the direct using of multi-sensor signals for fusion diagnosis will lead to a heavy calculation which will reduce the diagnostic efficiency, a multi-source information feature fusion method is proposed in this paper. The stacked denoising autoencoders (SDAE) is used to extract the abstract features of time-domain features of multi-source signals, and then locality preserving projection (LPP) is used to dimension 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 closed-loop system on the incipient fault is discussed as well. Moreover, a health assessment method is presented considering the gradual degradation of leakage fault of the actuator. The results show that the proposed method is more accurate and reliable than any single signal result. The model of health assessment can give the internal leakage severity of the actuator. The significance of this paper is to provide a feasible idea of the fault diagnosis and health assessment of the landing gear hydraulic retraction system.
机译:为了解决单个信号不能提供足够的故障信息的问题,而直接使用多传感器信号进行融合诊断会导致计算量大,降低了诊断效率,因此,提出了一种多源信息特征融合方法。本文提出。堆叠式去噪自动编码器(SDAE)用于提取多源信号时域特征的抽象特征,然后使用局部保留投影(LPP)进行降维以完成特征融合。最后,融合的低维特征充当支持向量机(SVM)的输入,以实现起落架液压回缩系统的典型故障模式的故障检测和故障定位。还讨论了闭环系统对初期故障的抑制作用。此外,提出了一种考虑致动器泄漏故障逐渐恶化的健康评估方法。结果表明,所提出的方法比任何单个信号结果都更加准确和可靠。健康评估模型可以给出执行器的内部泄漏严重性。本文的意义在于为起落架液压回缩系统的故障诊断和健康评估提供可行的思路。

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