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Permeability Prediction from Specific Area, Porosity and Water Saturation Using Extreme Learning Machine and Decision Tree Techniques: A Case Study from Carbonate Reservoir

机译:利用极端学习机和决策技术的特定面积,孔隙度和水饱和度的渗透性预测:碳酸盐储层的案例研究

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This paper presents a comparative study of the capabilities of Extreme Learning Machines (ELM), Decision Trees (DT) and Artificial Neural Networks (ANN), in the prediction of permeability from specific surface area, porosity and water saturation. ANN has been applied in the prediction of various oil and gas properties but with limitations such as computational instability due to its lack of global optima. ELM and DT are recent advances in Artificial Intelligence with improved architectures and better performance. The techniques were optimized and applied to the same carbonate reservoir field dataset . Following the popular convention and to ensure fairness, a stratified sampling approach was used to randomly extract 70% of the dataset for training while the remaining 30% was used for testing. The results showed that ELM performed best with the highest correlation coefficient, lowest root mean square error and shortest execution time. This agrees perfectly with the literature that ELM has a more compact architecture optimized for faster execution than the original ANN. DT was also found to be a promising technique for reservoir modeling. The results showed that ELM performed best with the highest correlation coefficient, lowest root mean square error and shortest execution time. This agrees perfectly with the literature that ELM has a more compact architecture optimized for faster execution than the original ANN. DT was also found to be a promising technique for reservoir modeling.
机译:本文介绍了极端学习机(ELM),决策树(DT)和人工神经网络(ANN)的能力的比较研究,从特定表面积,孔隙率和水饱和度预测渗透性。 ANN已应用于预测各种石油和天然气性质,但由于其缺乏全球最佳缺乏,有局限性如资金不稳定。 ELM和DT是近期人工智能的进步,具有改进的架构和更好的性能。优化技术并施加到相同的碳酸盐储层场数据集。在流行的惯例和确保公平性之后,使用分层采样方法用于随机提取70%的数据集进行培训,而剩余的30%用于测试。结果表明,ELM最佳地执行了最高的相关系数,最低根均方误差和最短的执行时间。这与ELM具有更紧凑的架构的文献完美同意,优化了比原始ANN更快的执行。也发现DT是一种有希望的储层建模技术。结果表明,ELM最佳地执行了最高的相关系数,最低根均方误差和最短的执行时间。这与ELM具有更紧凑的架构的文献完美同意,优化了比原始ANN更快的执行。也发现DT是一种有希望的储层建模技术。

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