Development of a Tool Condition Monitoring System for Impregnated Diamond Bits in Rock Drilling Applications

被引:0
作者
Santiago Perez
Murat Karakus
Frederic Pellet
机构
[1] University of Adelaide,Deep Exploration Technologies Cooperative Research Centre, School of Civil, Environmental and Mining Engineering
[2] MINES ParisTech,Geosciences and Geoengineering Department
来源
Rock Mechanics and Rock Engineering | 2017年 / 50卷
关键词
Impregnated diamond drilling; Measuring while drilling; Acoustic emission; Pattern recognition; Rock drilling; Tool condition monitoring;
D O I
暂无
中图分类号
学科分类号
摘要
The great success and widespread use of impregnated diamond (ID) bits are due to their self-sharpening mechanism, which consists of a constant renewal of diamonds acting at the cutting face as the bit wears out. It is therefore important to keep this mechanism acting throughout the lifespan of the bit. Nonetheless, such a mechanism can be altered by the blunting of the bit that ultimately leads to a less than optimal drilling performance. For this reason, this paper aims at investigating the applicability of artificial intelligence-based techniques in order to monitor tool condition of ID bits, i.e. sharp or blunt, under laboratory conditions. Accordingly, topologically invariant tests are carried out with sharp and blunt bits conditions while recording acoustic emissions (AE) and measuring-while-drilling variables. The combined output of acoustic emission root-mean-square value (AErms), depth of cut (d), torque (tob) and weight-on-bit (wob) is then utilized to create two approaches in order to predict the wear state condition of the bits. One approach is based on the combination of the aforementioned variables and another on the specific energy of drilling. The two different approaches are assessed for classification performance with various pattern recognition algorithms, such as simple trees, support vector machines, k-nearest neighbour, boosted trees and artificial neural networks. In general, Acceptable pattern recognition rates were obtained, although the subset composed by AErms and tob excels due to the high classification performances rates and fewer input variables.
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页码:1289 / 1301
页数:12
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