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Lubrication Regime Classification of Hydrodynamic Journal Bearings by Machine Learning Using Torque Data

机译:基于扭矩数据的机器学习对动压滑动轴承的润滑方式分类

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Hydrodynamic journal bearings are used within a wide range of machines, such as combustion engines, gas turbines, or wind turbines. For a safe operation, awareness of the lubrication regime, in which the bearing is currently operating, is of great importance. In the current study, highspeed data signals of a torque sensor, sampled with a frequency of 1000 hz in a time range of 2.5 s, obtained on a journal bearing test-rig under various operating conditions, are used to train machine learning models, such as neural networks and logistic regression. Results indicate that a fast Fourier transform (fft) of the highspeed torque signals enables accurate predictions of lubrication regimes. The trained models are analysed in order to identify distinctive frequencies for the respective lubrication regime.
机译:流体动力轴颈轴承可用于各种机器,例如内燃机,燃气轮机或风力涡轮机。为了安全运行,了解轴承当前所处的润滑方式非常重要。在当前的研究中,使用扭矩轴承的高速数据信号在2.5 s的时间范围内以1000 hz的频率采样,并在各种工作条件下通过轴颈轴承测试台获得,用于训练机器学习模型,例如作为神经网络和逻辑回归。结果表明,高速转矩信号的快速傅里叶变换(fft)能够准确预测润滑状态。分析训练有素的模型,以便确定相应润滑方案的独特频率。

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