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Using Artificial Neural Networks to Predict the Presence of Overpressured Zones in the Anadarko Basin, Oklahoma

机译:使用人工神经网络预测俄克拉荷马州阿纳达科盆地超压带的存在

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Many sedimentary basins throughout the world exhibit areas with abnormal pore-fluid pressures (higher or lower than normal or hydrostatic pressure). Predicting pore pressure and other parameters (depth, extension, magnitude, etc.) in such areas are challenging tasks. The compressional acoustic (sonic) log (DT) is often used as a predictor because it responds to changes in porosity or compaction produced by abnormal pore-fluid pressures. Unfortunately, the sonic log is not commonly recorded in most oil and/or gas wells. We propose using an artificial neural network to synthesize sonic logs by identifying the mathematical dependency between DT and the commonly available logs, such as normalized gamma ray (GR) and deep resistivity logs (REID). The artificial neural network process can be divided into three steps: (1) Supervised training of the neural network; (2) confirmation and validation of the model by blind-testing the results in wells that contain both the predictor (GR, REID) and the target values (DT) used in the supervised training; and 3) applying the predictive model to all wells containing the required predictor data and verifying the accuracy of the synthetic DT data by comparing the back-predicted synthetic predictor curves (GRNN, REIDNN) to the recorded predictor curves used in training (GR, REID). Artificial neural networks offer significant advantages over traditional deterministic methods. They do not require a precise mathematical model equation that describes the dependency between the predictor values and the target values and, unlike linear regression techniques, neural network methods do not overpredict mean values and thereby preserve original data variability. One of their most important advantages is that their predictions can be validated and confirmed through back-prediction of the input data. This procedure was applied to predict the presence of overpressured zones in the Anadarko Basin, Oklahoma. The results are promising and encouraging.
机译:世界各地许多沉积盆地的孔隙流体压力异常(高于或低于正常压力或静水压力)。预测此类区域的孔隙压力和其他参数(深度,延伸率,大小等)是一项艰巨的任务。压缩声(声波)测井(DT)常被用作预测因子,因为它对异常孔隙流体压力产生的孔隙度或压实度变化做出响应。不幸的是,在大多数油井和/或气井中通常不记录声波测井。我们建议使用人工神经网络通过识别DT和常用测井曲线(如归一化伽马射线(GR)和深电阻率测井(REID))之间的数学依赖性来合成声波测井曲线。人工神经网络的过程可以分为三个步骤:(1)神经网络的监督训练; (2)通过对包含监督训练中使用的预测变量(GR,REID)和目标值(DT)的井进行盲测试来确认和验证模型; 3)将预测模型应用于所有包含所需预测变量数据的井,并通过将反向预测的合成预测变量曲线(GRNN,REIDNN)与训练中使用的已记录预测变量曲线(GR,REID)进行比较,验证合成DT数据的准确性)。与传统的确定性方法相比,人工神经网络具有明显的优势。它们不需要精确的数学模型方程式来描述预测值和目标值之间的依赖性,并且与线性回归技术不同,神经网络方法不会过度预测平均值,从而保留原始数据的可变性。它们最重要的优点之一是,可以通过对输入数据进行反向预测来验证和确认其预测。该程序用于预测俄克拉荷马州阿纳达科盆地中超压带的存在。结果令人鼓舞和鼓舞。

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