颗粒污染润滑油在线状态监测及剩余使用寿命预测

Junda Zhu, Jae Yoon, D. He, Bin Qiu, Eric Bechhoefer
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引用次数: 22

摘要

为了提高风能的生产效率,迫切需要提高风力发电机的利用率,降低运行和维护成本。风力发电机运行的安全性和可靠性在很大程度上取决于润滑油对其传动系统组件(如齿轮箱)的保护性能以及润滑油状态监测和退化检测手段。润滑油状态监测和劣化检测的目的是确定润滑油是否已经劣化到不再履行其功能的程度。本文对润滑油的颗粒污染和颗粒污染润滑油的剩余使用寿命进行了研究。开发了物理模型来量化颗粒污染水平与市售在线油介电和粘度传感器输出之间的关系。然后通过实验室实验验证了所开发模型的有效性。特别提出了利用粒子滤波的方法,利用粘度和介电常数数据预测退化润滑油的剩余使用寿命。仿真研究表明了所开发技术的有效性。
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Online condition monitoring and remaining useful life prediction of particle contaminated lubrication oil
To increase wind energy production rate, there is a pressing need to improve the wind turbine availability and reduce the operational and maintenance costs. The safety and reliability of a functioning wind turbine depend largely on the protective properties of the lubrication oil for its drive train subassemblies such as gearbox and means for lubrication oil condition monitoring and degradation detection. The purpose of lubrication oil condition monitoring and degradation detection is to determine whether the oil has deteriorated to such a degree that it no longer fulfills its function. In this paper, particle contamination of lubrication oil and the remaining useful life (RUL) of the particle contaminated lubrication oil are investigated. Physical models are developed to quantify the relationship between particle contamination level and the outputs of commercially available online oil dielectric and viscosity sensors. The effectiveness of the developed models is then validated using laboratory experiments. In particular, the remaining useful life prediction of degraded lubrication oil with viscosity and dielectric constant data using particle filtering is presented. A simulation case study is provided to demonstrate the effectiveness of the developed technique.
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