A Self-Adaptive Artificial Neural Network Technique to Estimate Static Young's Modulus Based on Well Logs

A. Mahmoud, S. Elkatatny, Abdulwahab Ali, T. Moussa
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引用次数: 3

Abstract

Static Young's modulus (Estatic) is an essential parameter needed to develop the earth geomechanical model, Young's modulus (E) considerably varies with the change in the lithology. Recently, artificial intelligence (AI) techniques were used to estimate Estatic for carbonate formation. In this study, artificial neural network (ANN) was used to estimate Estatic for sandstone formation. In this study, the ANN design parameters were optimized using the self-adaptive differential evolution (SaDE) optimization algorithm. The ANN model was trained to predict Estatic from conventional well log data such as bulk density, compressional time, and shear time. 409 data points from Well-A were used to train the ANN model which was then tested using 183 unseen data from the same well and validated on 11 data points from a different well (Well-B). The developed SaDE-ANN model estimated Estatic for the training data set with a very low average absolute percentage error (AAPE) of 0.46%, very high correlation coefficient (R) of 0.999 and coefficient of determination (R2) of 0.9978. And the Estatic values of testing data set were estimated with AAPE, R, and R2 of 1.46%, 0.998, and 0.9951, respectively. These results confirmed the high accuracy of the developed Estatic model.
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基于测井曲线的静态杨氏模量自适应人工神经网络估算方法
静态杨氏模量(Static)是建立地球地质力学模型所必需的一个重要参数,杨氏模量(E)随着岩性的变化而有很大的变化。最近,人工智能(AI)技术被用于估算碳酸盐岩地层的静态。本文采用人工神经网络(ANN)对砂岩地层进行静力学估计。在本研究中,采用自适应差分进化(SaDE)优化算法对人工神经网络的设计参数进行优化。人工神经网络模型经过训练,可以根据常规测井数据(如体积密度、压缩时间和剪切时间)预测静校正。来自a井的409个数据点用于训练人工神经网络模型,然后使用来自同一口井的183个未见数据进行测试,并使用来自另一口井(b井)的11个数据点进行验证。所建立的SaDE-ANN模型对训练数据集的估计具有非常低的平均绝对百分比误差(AAPE)为0.46%,非常高的相关系数(R)为0.999,决定系数(R2)为0.9978。AAPE、R、R2分别为1.46%、0.998、0.9951,对检验数据集的Estatic值进行估计。这些结果证实了所建立的静态模型具有较高的精度。
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