A method to detect internal leakage of hydraulic cylinder by combining data augmentation and multiscale residual CNN

Qingchuan He, Huiqi Ruan, Jun Pan, Xiaotian Lyu
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引用次数: 0

Abstract

Developing a method to detect internal leakage in hydraulic cylinder, which is used for Electro‐Hydrostatic Actuators (EHA), is important to prevent serious malfunctions for aircrafts. At present, the internal leakage in an EHA cannot be accurately detected only using operational data. This paper proposed a convolutional neural networks (CNN) based method to detect internal leakage in hydraulic cylinder according to the relationship between operational state parameters of EHA and leakage in the hydraulic cylinder. A method was presented to align multi‐source signals with different forms by using the motor current as a benchmark. Because the number of monitoring signals are relatively small, a feedforward neural network (FFNN) based data augment method is proposed to increase parameters of input data set. A general method on how to detect internal leakage by combining signals alignment, data augmentation and multiscale residual CNN was proposed. The experimental results show that the proposed method can be used to accurately detect internal leakage in a hydraulic cylinder operating under non‐stationary load and velocity conditions, and the detection accuracy reached 99.8%.
一种结合数据增强和多尺度残差CNN的液压缸内泄漏检测方法
开发一种检测液压缸内泄漏的方法对于防止飞机发生严重故障至关重要,该方法用于电-静液执行器(EHA)。目前,仅凭操作数据无法准确检测EHA的内漏情况。根据EHA工作状态参数与液压缸泄漏量的关系,提出了一种基于卷积神经网络(CNN)的液压缸内泄漏检测方法。提出了一种以电机电流为基准对不同形式的多源信号进行对齐的方法。针对监测信号数量较少的特点,提出了一种基于前馈神经网络(FFNN)的数据增强方法来增加输入数据集的参数。提出了一种将信号对准、数据增强和多尺度残差CNN相结合的检测内漏的通用方法。实验结果表明,该方法能够准确检测非稳态负载和速度工况下的液压缸内泄漏,检测精度达到99.8%。
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