△P index with different gas compositions for instantaneous outburst prediction in coal mines

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WU DongmeiZHAO YueminCHENG YuanpingAN Fenghua National Engineering Research Center of Coal Gas ControlChina University of Mining TechnologyXuzhou China Key Laboratory of Gas and Fire Control for Coal MinesChina University of Mining TechnologyXuzhou China School of Chemical Engineering and TechnologyChina University of Mining TechnologyXuzhou China [1 ,2 ,3 ,1 ,1 ,1 ,221008 ,2 ,221008 ,3 ,221116 ]
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In this study we measured the △P(initial speed of gas emission) index with different gas concentrations of carbon dioxide(pure CO2,90% CO2+10% CH4,67% CO2+33% CH4,50% CO2+50% CH4,30% CO2+10% CH4 and pure CH4) of coal samples from the No.2 coal seam in the Yaojie Coal Mine,Gansu province,China.The effect of carbon dioxide concentration,gas composition,coal strength and particle size of coal samples on the △P index was investigated.The experimental results show that with gas of various compositions,the △P value of three samples were clearly different.The △P index of coal samples A,B and C(0.2~0.25 mm) were 4,6 and 7 with pure CH4 and 22,30 and 21 when pure CH4 was used.Carbon dioxide concentration affects the △P index markedly.The △P index increases with an increase in carbon dioxide concentration,especially for coal B.Hence,the △P index and K(another outburst index) values tested only with pure CH4 for prediction of the danger of outburst is not accurate.It is important to determine the initial speed of gas emission given the gas composition of the coal seam to be tested for exact outburst prediction.
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