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A data-driven fault diagnosis approach towards oil retention in vapour compression refrigeration systems

机译:一种数据驱动的故障诊断方法,用于蒸气压缩制冷系统中的油滞留

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In vapour compression refrigeration systems, oil circulates to lubricate moving parts. However, due to its low miscibility with most environmentally friendly refrigerants, such as ammonia, it is retained in some parts of the system causing losses in the overall system efficiency. Therefore, this paper focusses on the investigation of the fault characteristics of oil-retention by simulating this fault using a test facility. Based on the obtained dataset, a data-driven fault diagnosis approach is derived. Furthermore, a genetic algorithm is used for the selection of characteristic features, which are finally defined as input parameters for an exemplary implemented classification algorithm. It is also demonstrated how this classification algorithm correctly distinguishes multiple system states from one another.
机译:在蒸气压缩制冷系统中,油循环以润滑运动部件。但是,由于它与大多数环境友好型制冷剂(例如氨)的混溶性较低,因此会保留在系统的某些部分中,从而导致整个系统效率下降。因此,本文通过使用测试设备模拟该故障,重点研究了保油的故障特征。基于获得的数据集,推导了一种数据驱动的故障诊断方法。此外,遗传算法用于选择特征,这些特征最终被定义为示例性实施分类算法的输入参数。还演示了这种分类算法如何正确区分多个系统状态。

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