2018
DOI: 10.1051/e3sconf/20183801007
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The Detection Method of Fire Abnormal Based on Directional Drilling in Complex Conditions of Mine

Abstract: Abstract:In the light of more and more urgent hidden fire abnormal detection problem in complex conditions of mine, a method which is used directional drilling technology is put forward. The method can avoid the obstacles in mine, and complete the fire abnormal detection. This paper based on analyzing the trajectory control of directional drilling, measurement while drilling and the characteristic of open branch process, the project of the directional drilling is formulated combination with a complex condition… Show more

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“…Coal fire detection typically incorporates the identification of changes in the LST (Du et al, 2015a). Conventionally, these LSTs can be achieved from ground-based handheld thermal infrared imagery (Kuenzer and Dech, 2014) and by drilling holes for temperature measurements (Huijun et al, 2018). Using these methods, LST measurements are done very close to the fire, but they are nearly impossible to gather enough data over large areas (Gangopadhyay et al, 2006) or in inaccessible areas.…”
Section: Introductionmentioning
confidence: 99%
“…Coal fire detection typically incorporates the identification of changes in the LST (Du et al, 2015a). Conventionally, these LSTs can be achieved from ground-based handheld thermal infrared imagery (Kuenzer and Dech, 2014) and by drilling holes for temperature measurements (Huijun et al, 2018). Using these methods, LST measurements are done very close to the fire, but they are nearly impossible to gather enough data over large areas (Gangopadhyay et al, 2006) or in inaccessible areas.…”
Section: Introductionmentioning
confidence: 99%