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首页> 外文期刊>International Journal of Rock Mechanics and Mining Sciences >Elastic and shear moduli of coal measure rocks derived from basic well logs using fractal statistics and radial basis functions
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Elastic and shear moduli of coal measure rocks derived from basic well logs using fractal statistics and radial basis functions

机译:利用分形统计和径向基函数从基本测井得到的煤系岩石的弹性模量和剪切模量

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Gamma ray, density, sonic and core logs obtained from two boreholes drilled over a longwall panel in Southwestern (SW) Pennsylvania were analyzed for formation boundaries, log-derived porosities and densities and for rock elastic properties from sonic transit times. Gamma ray (GR) and density logs (DL) were analyzed using univariate statistical techniques and fractal statistics for similarity and ordering of the log data in depth. A Fourier transformation with low-pass filter was used as a noise elimination (filtering) technique from the original logs. Filtered data was tested using basic univariate and fractal statistics, rescaled range (R/S) and power spectrum (PS) analysis to compare the information characteristics of the filtered logs with the original data. The randomness of log data in depth was analyzed for fractional Gaussian noise (fGn) or fractional Brownian motion (fBm) character. A new prediction technique using radial basis function (RBF) networks was developed to calculate shear and Young's moduli of the formations when sonic logs are not available. For this approach, the filtered logs were used as input to an RBF based upon a combination of supervised and unsupervised learning. The network was trained and tested using rock elastic properties calculated from the sonic log of one of the boreholes. The network was used to predict the elastic and shear moduli of the coal-measure rocks over a longwall coal mine in SW Pennsylvania. This approach demonstrated that it could be used for prediction of elastic and shear moduli of coal-measure rocks with reasonable accuracy.
机译:分析了宾夕法尼亚州西南部(SW)宾夕法尼亚州一个长壁板上钻出的两个钻孔的伽马射线,密度,声波和岩心测井的地层边界,测井得出的孔隙率和密度以及声波穿越时间的岩石弹性。使用单变量统计技术和分形统计分析了伽马射线(GR)和密度测井(DL),以深入了解测井数据的相似性和排序。具有低通滤波器的傅立叶变换被用作原始日志的噪声消除(滤波)技术。使用基本的单变量和分形统计数据,重新定标范围(R / S)和功率谱(PS)分析来测试过滤后的数据,以将过滤后的日志的信息特征与原始数据进行比较。针对分数高斯噪声(fGn)或分数布朗运动(fBm)特征分析深度测井数据的随机性。开发了一种新的使用径向基函数(RBF)网络的预测技术,以在无法获得声波测井时计算地层的剪切模量和杨氏模量。对于这种方法,基于监督学习和无监督学习的组合,将过滤后的日志用作RBF的输入。使用从一个井眼的声波测井计算出的岩石弹性特性对网络进行了训练和测试。该网络用于预测宾夕法尼亚州西南部一长壁煤矿上的煤系岩石的弹性模量和剪切模量。该方法表明,该方法可用于合理预测煤质岩的弹性模量和剪切模量。

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