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首页> 外文期刊>Geoscience and Remote Sensing Letters, IEEE >Rock Recognition From MWD Data: A Comparative Study of Boosting, Neural Networks, and Fuzzy Logic
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Rock Recognition From MWD Data: A Comparative Study of Boosting, Neural Networks, and Fuzzy Logic

机译:从MWD数据进行岩石识别:Boosting,神经网络和模糊逻辑的比较研究

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摘要

Measurement-while-drilling (MWD) data recorded from drill rigs can provide a valuable estimation of the type and strength of the rocks being drilled. Typical MWD sensors include bit pressure, rotation pressure, pull-down pressure, pull-down rate, and head speed. This letter presents an empirical comparison of the statistical performance, ease of implementation, and computational efficiency associated with three machine-learning techniques. A recently proposed method, boosting, is compared with two well-established methods, neural networks and fuzzy logic, used as benchmarks. MWD data were acquired from blast holes at an iron ore mine in Western Australia. The boreholes intersected a number of rock types including shale, iron ore, and banded iron formation. Boosting and neural networks presented the best performance overall. However, from the viewpoint of implementation simplicity and computational load, boosting outperformed the other two methods.
机译:从钻机记录的随钻测量(MWD)数据可以为所钻岩石的类型和强度提供有价值的估计。典型的MWD传感器包括钻头压力,旋转压力,下拉压力,下拉速率和杆头速度。这封信提出了与三种机器学习技术相关的统计性能,易于实现和计算效率的经验比较。将最近提出的方法Boosting与用作基准的两种成熟方法(神经网络和模糊逻辑)进行了比较。 MWD数据是从西澳大利亚一家铁矿的爆破孔中获取的。钻孔与多种岩石类型相交,包括页岩,铁矿石和带状铁层。 Boosting和神经网络总体上表现出最佳性能。但是,从实现的简便性和计算量的角度来看,boosting优于其他两种方法。

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