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首页> 外文期刊>Pattern Analysis and Applications >Detecting cracks in reciprocating compressor valves using pattern recognition in the pV diagram
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Detecting cracks in reciprocating compressor valves using pattern recognition in the pV diagram

机译:使用pV图中的模式识别来检测往复式压缩机阀门中的裂纹

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摘要

We present a novel approach to detecting leaking reciprocating compressor valves based on the idea that a leaking valve affects the shape of the pressure-volume diagram (pV diagram). This effect can be observed when the valves are closed. To avoid disturbances due to the load control, we concentrate on the expansion phase, and linearize it using the logarithmic pV diagram. The gradient of the expansion phase serves as an indicator for the fault state of the valve. Since the gradient is also affected by the pressure conditions, both are used as features in our approach. After feature extraction, classification is performed using several established approaches and a one-class classification method based on linearizing the classification boundary and thresholding. The method was validated using real-world data, and the results show high classification accuracy for varying compressor loads and pressure conditions as well as different valve types.
机译:我们提出一种新颖的方法来检测泄漏的往复式压缩机阀门,其思想是泄漏的阀门会影响压力-容积图(pV图表)的形状。当阀门关闭时,可以观察到这种效果。为了避免由于负载控制引起的干扰,我们集中在扩展阶段,并使用对数pV图对其进行线性化。膨胀阶段的梯度用作阀故障状态的指示器。由于梯度还受压力条件的影响,因此在我们的方法中都将二者用作特征。特征提取后,使用几种已建立的方法和基于线性化分类边界和阈值的一类分类方法进行分类。该方法已使用实际数据进行了验证,结果表明,对于变化的压缩机负载和压力条件以及不同的阀门类型,其分类精度很高。

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