Shaft instantaneous angular speed for blade vibration in rotating machine

Reliable blade health monitoring (BHM) in rotating machines like steam turbines and gas turbines, is a topic of research since decades to reduce machine down time, maintenance costs and to maintain the overall safety. Transverse blade vibration is often transmitted to the shaft as torsional vibratio...

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Veröffentlicht in:Mechanical systems and signal processing 2014-02, Vol.44 (1-2), p.47-59
Hauptverfasser: Gubran, Ahmed A., Sinha, Jyoti K.
Format: Artikel
Sprache:eng
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Zusammenfassung:Reliable blade health monitoring (BHM) in rotating machines like steam turbines and gas turbines, is a topic of research since decades to reduce machine down time, maintenance costs and to maintain the overall safety. Transverse blade vibration is often transmitted to the shaft as torsional vibration. The shaft instantaneous angular speed (IAS) is nothing but the representing the shaft torsional vibration. Hence the shaft IAS has been extracted from the measured encoder data during machine run-up to understand the blade vibration and to explore the possibility of reliable assessment of blade health. A number of experiments on an experimental rig with a bladed disk were conducted with healthy but mistuned blades and with different faults simulation in the blades. The measured shaft torsional vibration shows a distinct difference between the healthy and the faulty blade conditions. Hence, the observations are useful for the BHM in future. The paper presents the experimental setup, simulation of blade faults, experiments conducted, observations and results. ► Analysis of the shaft instantaneous angular speed (IAS) for the blade vibration. ► Different dynamic behaviour observed for the healthy and faulty blades using the IAS signal. ► Observed blade dynamics may be useful for the blade health monitoring (BHM).
ISSN:0888-3270
1096-1216
DOI:10.1016/j.ymssp.2013.02.005