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Application of Artificial Intelligence Techniques in Estimating Oil Recovery Factor for Water Derive Sandy Reservoirs

机译:人工智能技术在水源砂油藏采油因子估算中的应用

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Oil and gas operating companies are always concerned with evaluating the reserve of their assets. Evaluation process of hydrocarbon reserves requires a full understanding and knowledge of technical and non-technical aspects regarding the nature of reservoir, available technology and economic conditions as well as others. Recovery factor (RF) is the most important parameter in evaluating the reserve of new fields. Several techniques are currently available for estimating oil recovery factor, the accuracy of those techniques are highly affected by data availability which is mainly related to the field age. Some of the techniques are highly accurate but they require lots of production data, hence, their applicability early in the reservoir life is restricted. Others could be applied earlier, but on the other hand, they have very low accuracy. In this paper ten parameters (original oil in place, asset area, net pay, initial reservoir pressure, porosity, permeability, Lorenz coefficient, API gravity, initial water saturation and oil viscosity), which are usually available early in the life of the reservoir, are used to estimate the oil recovery factor through application of four Artificial Intelligence (AI) techniques namely: artificial neuron networks (ANNs), Radial Basis Neuron Network (RNN), ANFIS-2 (Adaptive Neuro Fuzzy Inference System, Subtractive Clustering), and SVM (Support Vector Machines). Data from 130 sandstone reservoirs were used to learn the AI models, and then an empirical correlation was developed based on the ANN model. The suggested AI models and the developed ANN-based correlation were then tested in other 38 sandstone reservoirs. The results obtained showed that ANN-based correlation successfully predicted the recovery factor based on early time data only with absolute average percentage error (AAPE) of 7.92%, coefficient of determination (R2) of 0.9417, root mean square error (RMSE) and maximum absolute percent error (MAE) of 3.74 and 24.07%, respectively. ANN-based empirical correlation over-performed RNN, ANFIS-2, and SVM models in term of AAPE, MAE, and RMSE for testing set. Comparison of the recovery factor predicted by the developed equation with three available correlations showed that the developed equation predictability is about 5 times better that the most accurate correlation (of the currently available ones) in term of AAPE for predicted RF of the tested 38 reservoirs.
机译:石油和天然气运营公司总是关注评估其资产的储备。碳氢化合物储备的评估过程需要完全了解和了解有关水库性质,可用技术和经济条件以及其他人的技术和非技术方面的全面理解和知识。恢复因子(RF)是评估新字段储备中最重要的参数。目前有几种技术可用于估计石油回收率,这些技术的准确性受到与现场年龄相关的数据可用性的高度影响。一些技术是高度准确的,但它们需要大量的生产数据,因此,他们在水库生活中早期的适用性受到限制。其他人可以先应用,但另一方面,它们的准确性非常低。在本文中,十个参数(原油到位,资产区域,净支付,初始储层压力,孔隙度,渗透性,洛伦系数,API重力,初始水饱和度和油粘度)通常在水库的使用寿命期初提供,用于通过应用四个人工智能(AI)技术来估计石油回收因子即:人工神经元网络(ANNS),径向基神经元网络(RNN),ANFIS-2(自适应神经模糊推理系统,减数集群),和SVM(支持向量机)。来自130个砂岩储层的数据用于学习AI模型,然后基于ANN模型开发了经验相关性。然后在其他38个砂岩储层中测试了建议的AI模型和发育的基于基于的基于的基于的基于的基于的基于的相关性。所得到的结果表明,基于ANN的相关性地基于早期数据,仅基于7.92%,确定系数(R2)的绝对平均百分比误差(r2),均匀平方误差(RMSE)和最大值的恢复系数分别为3.74和24.07%的绝对百分比误差(MAE)。基于ANN的经验相关性超过CNN,ANFIS-2和SVM模型的AAPE,MAE和RMSE用于测试集。具有三种可用相关性的开发方程预测的回收因子的比较显示,显影方程可预测性大约需要5倍,使得对于预测的38个储存器的预测RF的AAPE中最准确的相关性(当前可用的)。

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