考虑负荷变化的齿轮箱TSA和VAR模型早期故障检测

Xin Li, Hongfu Zuo, Pengcheng Hao, Ya Su, Haoyue Liu, Cheng Xue
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引用次数: 1

摘要

齿轮传动系统的早期故障检测、预测和健康管理具有重要意义。现有的故障检测方法大多很少考虑负荷变化的影响。提出了一种基于时间同步平均(TSA)和向量自回归(VAR)的齿轮故障检测方法,可实现变负荷下齿轮故障的早期检测。针对不同的荷载条件,建立了6个时间序列模型。选择齿轮残差信号是为了减少可变条件对真实信号的干扰。采用均方根、方差和峰度分析了齿轮箱的退化趋势。结果表明,该方法能比传统方法提前35个飞行点检测齿轮箱的异常状态,验证了该方法的有效性。
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Early Fault Detection of Gearbox Using TSA and VAR Model Considering Load Variation
Early fault detection and prognostics and health management (PHM) are of importance in the gear transmission system. Most of the existing fault detection methods rarely considered the influence of load variation. A novel gear fault detection scheme based on time synchronous averaging (TSA) and vector autoregressive (VAR) is proposed, which enables to implement early fault detection of a gearbox under varying load. Six time series models are established for different load conditions. The gear residual signal is selected to reduce the interference of variable conditions to real signals. The root mean square, variance and kurtosis are used to analyze the degradation trend of the gearbox. The results show that the proposed method can detect the abnormal condition of the gearbox 35 flies ahead of the traditional method, which verifies the effectiveness of the proposed approach.
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