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Split torque type gearbox fault detection using acoustic emission and vibration sensors

机译:使用声发射和振动传感器的扭矩分离式变速箱故障检测

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In comparison with a traditional planetary gearbox, the split torque gearbox (STG) potentially offers lower weight, increased reliability, and improved efficiency. These benefits have driven the helicopter OEMs to develop products using the STG. However, this may pose a challenge for the current gear analysis methods used in Health and Usage Monitoring Systems (HUMS). Gear analysis uses time synchronous averages to separates in frequency gears that are physically close to a sensor. The effect of a large number of synchronous components (gears or bearing) in close proximity may significantly reduce the fault signal (decreased signal to noise) and therefore reduce the effectiveness of current gear analysis algorithms. As of today, only a limited research on STG fault diagnosis using vibration sensors has been conducted. In this paper, an investigation on STG fault detection using both vibration and acoustic emission (AE) sensors is reported. In particular, signals of both vibration and AE sensors on a notational STG type gearbox were collected from seeded fault tests. Gear fault features were extracted from vibration signals using a Hilbert-Huang Transform (HHT) based algorithm and from AE signals using AE analysis. These fault features were input to a K-nearest neighbor (KNN) algorithm for fault detection. The investigation results showed that both vibration and AE sensors were capable of detecting the gear fault in a STG. However, in terms of locating the source of the fault, AE sensors outperformed vibration sensors.
机译:与传统的行星齿轮箱相比,分离扭矩齿轮箱(STG)潜在地减轻了重量,提高了可靠性并提高了效率。这些好处驱使直升机OEM厂商使用STG开发产品。但是,这可能对健康和使用状况监视系统(HUMS)中使用的当前齿轮分析方法构成挑战。齿轮分析使用时间同步平均来分离物理上接近传感器的频率齿轮。大量靠近的同步组件(齿轮或轴承)的影响可能会大大减少故障信号(降低信噪比),从而降低当前齿轮分析算法的效率。迄今为止,仅对使用振动传感器的STG故障诊断进行了有限的研究。在本文中,对使用振动和声发射(AE)传感器的STG故障检测进行了研究。特别是,从种子故障测试中收集了STG型变速箱上的振动传感器和AE传感器的信号。使用基于Hilbert-Huang变换(HHT)的算法从振动信号中提取齿轮故障特征,并使用AE分析从AE信号中提取齿轮故障特征。这些故障特征被输入到K近邻算法(KNN)进行故障检测。研究结果表明,振动传感器和声发射传感器都能够检测STG中的齿轮故障。但是,就定位故障源而言,AE传感器的性能优于振动传感器。

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