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基于自回归和优化的基于共振信号稀疏分解的发动机-变速箱系统中齿轮振动信号识别

Signal Identification of Gear Vibration in Engine-Gearbox Systems Based on Auto-Regression and Optimized Resonance-Based Signal Sparse Decomposition.

作者信息

Huang Yuanyuan, Tong Shuiguang, Tong Zheming, Cong Feiyun

机构信息

The State Key Laboratory of Fluid Power and Mechatronic Systems, Zhejiang University, No. 38, Zheda Road, Hangzhou 310027, China.

School of Mechanical Engineering, Zhejiang University, No. 38, Zheda Road, Hangzhou 310027, China.

出版信息

Sensors (Basel). 2021 Mar 7;21(5):1868. doi: 10.3390/s21051868.

Abstract

As an essential part of the transmission system, gearboxes are considered as a major source of vibration. Signal identification of gear vibration is necessary for online monitoring of the mechanical systems. However, in engine-gearbox systems, the ignition impact of the engine is strong, so that the gear vibration is generally submerged. To overcome this issue, the resonance-based signal sparse decomposition (RSSD) method is used in this paper based on different oscillatory behaviors of the gear meshing impact and the engine ignition impact. To improve the accuracy of RSSD under interferences, the meshing frequency energy ratio (MF-ER) index is introduced into RSSD to adaptively choose the decomposition parameters. Before applying the RSSD method, the auto-regression (AR) model is used as a pre-whitening step to eliminate the normal gear meshing vibration, which improves the decomposition performance of RSSD. The effectiveness of the proposed AR-ORSSD (AR-based optimized RSSD) algorithm is tested using both simulated signals and measured vibration signals from an engine-gearbox system in a forklift. Comparisons were made with the RSSD algorithm based on a genetic algorithm. Experimental results indicate that the AR-ORSSD algorithm is superior at identifying gear vibration signals especially when under strong interferences.

摘要

作为传动系统的重要组成部分,齿轮箱被视为主要的振动源。齿轮振动信号识别对于机械系统的在线监测至关重要。然而,在发动机 - 齿轮箱系统中,发动机的点火冲击很强,导致齿轮振动通常被淹没。为克服这一问题,本文基于齿轮啮合冲击和发动机点火冲击的不同振荡行为,采用基于共振的信号稀疏分解(RSSD)方法。为提高RSSD在干扰下的精度,将啮合频率能量比(MF - ER)指标引入RSSD以自适应选择分解参数。在应用RSSD方法之前,使用自回归(AR)模型作为预白化步骤来消除正常齿轮啮合振动,这提高了RSSD的分解性能。使用来自叉车发动机 - 齿轮箱系统的模拟信号和实测振动信号对所提出的AR - ORSSD(基于AR的优化RSSD)算法的有效性进行了测试。与基于遗传算法的RSSD算法进行了比较。实验结果表明,AR - ORSSD算法在识别齿轮振动信号方面具有优势,特别是在强干扰情况下。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2c7c/7962202/71a95e8fc58c/sensors-21-01868-g001.jpg

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