首页> 外文期刊>Archives of mining sciences >Prediction of Penetration Rate of Rotary-Percussive DrillingUsing Artificial Neural Networks – a Case Study
【24h】

Prediction of Penetration Rate of Rotary-Percussive DrillingUsing Artificial Neural Networks – a Case Study

机译:基于人工神经网络的旋转冲击钻穿透率预测

获取原文
获取外文期刊封面目录资料

摘要

Penetration rate in rocks is one of the most important parameters of determination of drilling economics. Total drilling costs can be determined by predicting the penetration rate and utilized for mine planning. The factors which affect penetration rate are exceedingly numerous and certainly are not completely understood. For the prediction of penetration rate in rotary-percussive drilling, four types of rocks in Sangan mine have been chosen. Sangan is situated in Khorasan-Razavi province inNortheastern Iran. The selected parameters affect penetration rate is divided in three categories: rock properties, drilling condition and drilling pattern. The rock properties are: density, rock quality designation (RQD), uni-axial compressive strength, Brazilian tensile strength, porosity, Mohs hardness, Young modulus, P-wave velocity. Drilling condition parameters are: percussion, rotation, feed (thrust load) and flushing pressure; and parameters for drilling pattern are: blasthole diameter and length. Rock properties were determined in the laboratory, and drilling condition and drilling pattern were determined in the field. For create a correlation between penetration rate and rock properties, drilling condition and drilling pattern, artificial neural networks (ANN) were used. For this purpose, 102 blastholes were observed and drilling condition, drilling pattern and time of drilling in each blasthole were recorded. To obtain a correlation between this data and prediction of penetration rate, MATLAB software was used. To train the pattern of ANN, 77 data has been used and 25 of them found for testing the pattern. Performance of ANN models was assessed through the root mean square error (RMSE) and correlation coefficient (R2). For optimized model (14-14-10-1) RMSE and R2 is 0.1865 and 86%, respectively, and its sensitivity analysis showed that there is a strong correlation between penetration rate and RQD, rotation and blasthole diameter. High correlation coefficient and low root mean square error of these models showed that the ANN is a suitable tool for penetration rate prediction.
机译:岩石的渗透率是确定钻井经济学的最重要参数之一。可以通过预测钻进速度来确定总钻探成本,并将其用于矿山规划。影响渗透率的因素非常多,当然还没有完全理解。为了预测旋转冲击钻的钻进速度,选择了三干矿区的四种岩石。 Sangan位于伊朗东北部的Khorasan-Razavi省。所选的影响渗透率的参数分为三类:岩石性质,钻探条件和钻探模式。岩石特性包括:密度,岩石质量标识(RQD),单轴抗压强度,巴西拉伸强度,孔隙率,莫氏硬度,杨氏模量,P波速度。钻井条件参数为:冲击,旋转,进给(推力载荷)和冲洗压力;钻孔模式的参数为:炮眼直径和长度。在实验室中确定岩石性质,并在现场确定钻井条件和钻井模式。为了在渗透率和岩石特性,钻井条件和钻井模式之间建立关联,使用了人工神经网络(ANN)。为此,观察了102个爆破孔,并记录了每个爆破孔的钻孔条件,钻孔方式和钻孔时间。为了获得此数据与渗透率预测之间的相关性,使用了MATLAB软件。为了训练ANN的模式,已使用77个数据,发现其中25个用于测试模式。通过均方根误差(RMSE)和相关系数(R2)评估ANN模型的性能。对于优化模型(14-14-10-1),RMSE和R2分别为0.1865和86%,其敏感性分析表明,穿透率与RQD,旋转和爆破孔直径之间有很强的相关性。这些模型的高相关系数和低均方根误差表明,人工神经网络是渗透率预测的合适工具。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号