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Deep residual learning with demodulated time-frequency features for fault diagnosis of planetary gearbox under nonstationary running conditions

机译:在非营养运行条件下,用解调时频特征进行解调时频特征的深度剩余学习

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摘要

Due to the tough and time-varying working conditions, fault diagnosis technique is of critical significance for drive-chain system in rotating machines. In recent years, many statistical and spectral feature extraction methods have been developed and applied, but unfortunately, they are incapable of dealing with mechanical behaviors under varying running conditions. Besides, the lack of specific dynamical knowledge also becomes an obstacle for effective diagnosis through direct spectral analysis. Accordingly, a data-driven fault diagnosis method based on time-frequency analysis and deep residual network is proposed in this research. Firstly, a deep residual network is pre-trained on spectral features extracted under fixed rotating speeds. For the transient signals, an accurate phase function is constructed via probabilistic instantaneous angular speed (IAS) estimation algorithm based on time-frequency representations. Then the generalized demodulation operator is utilized to remove rotating speed fluctuation. Afterwards, several groups of instantaneous features demodulated from time-frequency representations are input to the deep residual network to test the performance of proposed method under nonstationary running conditions. The diagnosis results of a planetary gearbox test rig are compared with other traditional methods; the comparisons show that the proposed data-driven fault diagnosis method achieved significant improvement on incipient fault detection accuracy under varying rotating speed. (C) 2019 Elsevier Ltd. All rights reserved.
机译:由于艰难和时变的工作条件,故障诊断技术对旋转机器中的驱动链系统具有重要意义。近年来,已经开发和应用了许多统计和光谱特征提取方法,但不幸的是,它们无法处理不同运行条件下的机械行为。此外,缺乏特定的动态知识也是通过直接光谱分析有效诊断的障碍。因此,在该研究中提出了一种基于时频分析和深度残差网络的数据驱动的故障诊断方法。首先,在固定旋转速度下提取的光谱特征预先培训深度剩余网络。对于瞬态信号,通过基于时频表示的概率瞬时角度速度(IAS)估计算法构造精确的相位函数。然后,使用广义解调操作员去除旋转速度波动。之后,从时频表示解调的几组瞬时特征被输入到深度残差网络,以测试在非视野运行条件下提出的方法的性能。将行星齿轮箱试验台的诊断结果与其他传统方法进行比较;比较表明,所提出的数据驱动故障诊断方法对不同旋转速度下的初期故障检测精度取得了显着提高。 (c)2019 Elsevier Ltd.保留所有权利。

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