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Porosity estimation at depths below the borehole bottom from resistivity logs and electromagnetic resistivity

机译:根据电阻率测井曲线和电磁电阻率估算井底以下深度的孔隙率

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摘要

A neural network approach to porosity prediction below the well bottom from either the electrical resistivity logs or electromagnetic resistivity profiles is developed using data from Soultz-sous-Forets area (France). It is shown that the neural network approach enables the porosity to be predicted at depths below the bottom of the borehole from resistivity well-logging data and by resistivity profiles determined by inversion of electromagnetic sounding data collected in the vicinity of the well. The results indicate that the forecasts based on the electrical logging data are more accurate (average relative errors being equal to 3%-5%) when the target depths do not exceed the double length of the well log used for calibration. In the absence of the resistivity logs at target depths or when the target to well depth ratio is large enough, the forecasts based on the electromagnetic resistivity data are more preferable.
机译:使用来自Soultz-sous-Forets地区(法国)的数据,开发了一种通过电阻率测井或电磁电阻率曲线预测井底下方孔隙度的神经网络方法。结果表明,神经网络方法可以根据电阻率测井数据和通过反演在井附近收集的电磁测深数据确定的电阻率剖面来预测井底以下深度的孔隙度。结果表明,当目标深度不超过用于校准的测井长度的两倍时,基于电测井数据的预测将更为准确(平均相对误差等于3%-5%)。在目标深度处没有电阻率测井曲线的情况下,或者当目标与井深之比足够大时,基于电磁电阻率数据的预测更为可取。

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