The detection of cavitation in hydraulic machines by use of ultrasonic signal analysis

被引:0
作者
Gruber, P. [1 ,2 ]
Farhat, M. [3 ]
Odermatt, P. [1 ]
Etterlin, M. [1 ]
Lerch, T. [1 ]
Frei, M. [1 ]
机构
[1] Fluid Mechanics and Hydro Machines, HSLU TandA, Technikumstrasse 21, Horw
[2] formerly with Rittmeyer AG, Baar
[3] Laboratory for Hydraulic Machines, EPFL-LMH, Avenue de Cour 33, Lausanne
关键词
Cavitation; Decision tree; Neural network; Turbine; Ultrasonic signals;
D O I
10.5293/IJFMS.2015.8.4.264
中图分类号
学科分类号
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. © 2015 Turbomachinery Society of Japan.
引用
收藏
页码:264 / 273
页数:9
相关论文
共 14 条
  • [1] Avellan F., Introduction to cavitation in hydraulic machinery, (2004)
  • [2] Escaler X., Egusquiza E., Farhat M., Avellan F., Coussirat M., Detecton of cavitation in hydraulic turbines, pp. 983-1007, (2006)
  • [3] Muller C., Untersuchung der Kavitation mit Ultraschall an zwei Prüfstrecken, (2008)
  • [4] Gruber P., Roos D., Muller C., Staubli T., Detection of damaging cavitation states by means of ultrasonic signal parameter patterns, (2011)
  • [5] Hassoun MH., Fundamentals of artificial neural networks, (1995)
  • [6] Press W., Teukolski SA., Vetterling WT., Flannery BP., Numerical Recipes, (1986)
  • [7] Etterlin M., Klassifizierung von Wasserzuständen mithilfe von Ultraschallsignalen und neuronalen, (2012)
  • [8] Lerch T., Klassifizierung von Kavitationszuständen mithilfe von Ultraschallsignalen, (2013)
  • [9] Gruber P., Odermatt P., Etterlin M., Lerch T., Farhat M., Cavitation Detection via Ultrasonic Signal Characteristics, (2013)
  • [10] Gruber P., Odermatt P., Etterlin M., Lerch T., The detection of cavitation in hydraulic machines by use of ultrasonic signal analysis, (2013)