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首页> 外文期刊>International Journal of Fluid Machinery and Systems >The detection of cavitation in hydraulic machines by use of ultrasonic signal analysis
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The detection of cavitation in hydraulic machines by use of ultrasonic signal analysis

机译:利用超声波信号分析检测液压机中的气穴现象

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摘要

This presentation describes an experimental approach for the detection of cavitation in hydraulic machines by use of ultrasonic signal analysis. Instead of using the high frequency pulses (typically 1MHz) only for transit time measurement different other signal characteristics are extracted from the individual signals and its correlation function with reference signals in order to gain knowledge of the water conditions. As the pulse repetition rate is high (typically 100Hz), statistical parameters can be extracted of the signals. The idea is to find patterns in the parameters by a classifier that can distinguish between the different water states. This classification scheme has been applied to different cavitation sections: a sphere in a water flow in circular tube at the HSLU in Lucerne, a NACA profile in a cavitation tunnel and two Francis model test turbines all at LMH in Lausanne. From the signal raw data several statistical parameters in the time and frequency domain as well as from the correlation function with reference signals have been determined. As classifiers two methods were used: neural feed forward networks and decision trees. For both classification methods realizations with lowest complexity as possible are of special interest. It is shown that two to three signal characteristics, two from the signal itself and one from the correlation function are in many cases sufficient for the detection capability. The final goal is to combine these results with operating point, vibration, acoustic emission and dynamic pressure information such that a distinction between dangerous and not dangerous cavitation is possible.
机译:本演示介绍了一种通过使用超声信号分析来检测液压机中的气蚀现象的实验方法。代替仅用于渡越时间测量的高频脉冲(通常为1MHz),可以从单个信号及其与参考信号的相关函数中提取不同的其他信号特性,以了解水的状况。由于脉冲重复率很高(通常为100Hz),因此可以提取信号的统计参数。想法是通过分类器在参数中找到可以区分不同水状态的模式。该分类方案已应用于不同的空化区域:卢塞恩州HSLU圆形管中水流中的球体,空化隧道中的NACA剖面以及洛桑LMH处的两个弗朗西斯模型试验涡轮机。从信号原始数据中,确定了时域和频域中的几个统计参数以及与参考信号的相关函数。作为分类器,使用了两种方法:神经前馈网络和决策树。对于这两种分类方法,具有尽可能低的复杂度的实现是特别有意义的。结果表明,在很多情况下,两到三个信号特性,其中两个来自信号本身,一个来自相关函数,足以满足检测能力要求。最终目标是将这些结果与工作点,振动,声发射和动压力信息相结合,从而可以区分危险和非危险的气蚀。

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