Hydraulic Support Tail Beam Natural Characteristics Analysis for Coal and Rock Identification

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Abstract:

Accurate vibration signals are important for signal analysis in the method of analysis vibration of hydraulic support tail beam. Signal acquisition position needs multiple comparison and optimization on site. Natural characteristics analysis of the hydraulic support tail beam can offer theoretical guidance to optimize sensor installation position. In this paper, impulse hammer excitation was used to analyze the inherent property of the hydraulic support tail beam which provided useful information for setting the signal pick-up place.

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77-80

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November 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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