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Research of weak fault feature information extraction of planetary gear based on ensemble empirical mode decomposition and adaptive stochastic resonance

机译:基于集成经验模态分解和自适应随机共振的行星齿轮弱故障特征信息提取研究

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Characterized by small size, light weight and large transmission ratio, planetary gear transmission is widely used in large scale complex mechanical system with low speed and heavy duty. However, due to the influences of operating condition, manufacturing error, assembly error and multi-tooth meshing, the vibration signal of planetary gear exhibits the characteristics of nonlinear and non-stationary. Especially when early gear fault occurs, the weak fault feature information is submerged in interfering signal. A weak fault feature information extraction method of planetary gear based on Ensemble Empirical Mode Decomposition (EEMD) and Adaptive Stochastic Resonance (ASR) is proposed. The original signal is decomposed to the Intrinsic Mode Functions (IMFs) with small modal aliasing by EEMD. The Signal to Noise Ratio (SNR) of fault feature frequency information of each IMF is calculated, and the IMFs with first four higher SNR are reconstructed and selected as the effective IMFs containing main fault feature information. ASR system is built by combining Particle Swarm Optimization (PSO) and Stochastic Resonance (SR). PSO algorithm is used to optimize the critical parameters of SR, and SNR of ASR output signal is defined as an optimization objective. When the signal reconstructed by effective IMFs is inputted into ASR system, the weak fault feature information can be extracted from the output signal of ASR system. The experimental results show that the proposed method can extract the weak fault feature information of normal gear and fault gears successfully. The amplitudes of fault feature frequency and its sidebands generated by planetary gear fault have a significantly increase, and the effects on sideband amplitudes of faults become even greater than that on the amplitude of fault feature frequency. For different gear faults, the amplitude of fault feature frequency has different changes, meanwhile different sidebands are produced. Planetary gear fault diagnosis can be achieved accurately by comparing the extracted weak fault feature information, so it is an effective method of weak fault feature information extraction of planetary gear. (C) 2015 Elsevier Ltd. All rights reserved.
机译:行星齿轮变速器具有体积小,重量轻,传动比大的特点,广泛用于低速,重型的大型复杂机械系统。然而,由于工作条件,制造误差,装配误差和多齿啮合的影响,行星齿轮的振动信号呈现出非线性和非平稳的特性。尤其是在发生早期齿轮故障时,弱故障特征信息就会被淹没在干扰信号中。提出了基于整体经验模态分解(EEMD)和自适应随机共振(ASR)的行星齿轮弱故障特征信息提取方法。原始信号通过EEMD分解为具有小模式混叠的本征模式功能(IMF)。计算每个IMF的故障特征频率信息的信噪比(SNR),并重建具有前四个较高SNR的IMF并将其选择为包含主要故障特征信息的有效IMF。 ASR系统是通过结合粒子群优化(PSO)和随机共振(SR)来构建的。采用PSO算法对SR的关键参数进行优化,以ASR输出信号的SNR为优化目标。当有效IMF重构的信号输入ASR系统时,可以从ASR系统的输出信号中提取弱故障特征信息。实验结果表明,该方法能够成功提取出普通齿轮和故障齿轮的弱故障特征信息。行星齿轮故障产生的断层特征频率及其边带幅度明显增加,对断层边带幅度的影响甚至大于对断层特征频率幅度的影响。对于不同的齿轮故障,故障特征频率的幅度具有不同的变化,同时产生不同的边带。通过比较提取的弱故障特征信息可以准确地实现行星齿轮故障诊断,是一种有效的行星齿轮弱故障特征信息提取方法。 (C)2015 Elsevier Ltd.保留所有权利。

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