利用前馈算法成功预测水驱

Qunazatul Shima Batubara, Tomi Erfando
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引用次数: 0

摘要

水驱是最常用的提高采收率的方法之一,因为它可以提高总产量的30% -60%。有必要应用生产系统性能预测方法,如解析方法和数值方法,以最大限度地减少生产数据增加的不确定性。人工智能在油气领域并不是一个新鲜事物,但它经常被用于勘探、钻井、生产和储层等各个领域。因此这是成功进行水驱预测研究的基础。本研究的目的是利用人工神经网络(ANN)预测注水成功率。本研究采用的方法是采用CMG Imex油藏模拟建模的模拟研究方法,对500个敏感性数据运行CMG CMOST,输入压缩率、水平渗透率、垂直渗透率、注入压力、注入速率、厚度、含油饱和度7个参数,输出采收率,采用人工神经网络(ANN),以70%的RF计算模型结果进行训练,30%的模型结果进行测试。为了得到最优的预测结果,对隐藏层节点数进行试错,在节点10处得到最优稳定的隐藏层节点,训练的RMSE值为0.339035,测试的RMSE值为0.442663,训练的MAPE值为1.15%,测试的MAPE值为1.62%。训练数据的统计分析值为0.906139,测试数据的统计分析值为0.899525。从本研究中可以得出结论,ANN在使用10个隐藏层节点的预测中被证明是非常好的和成功的,本研究的预测被归类为High Accurate Prediction。
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The Successful Prediction Of Waterflooding Using A Feed Forward Algorithm
Waterflooding is one of the most frequently used EOR methods to increase oil recovery because it can increase 30% -60% of total production. It is necessary to apply a production system performance prediction approach to minimize uncertainty in increasing production figures, such as analytical methods and numerical methods. Artificial Intelligence in the world of oil and gas is not a new thing, but it has often been used in various fields such as exploration, drilling, production, and reservoirs. So this is the basis for the prediction of the success of waterflooding research carried out. The purpose of this research was to predict the success rate of waterflooding using an Artificial Neural Network (ANN). The method used in this study is the simulation research method using CMG Imex for reservoir simulation modeling, running CMG CMOST for 500 sensitivity data with the input of seven parameters of compressibility, horizontal permeability, vertical permeability, pressure injection, injection rate, thickness, oil saturation, and the output is recovery factor using Artificial Neural Network (ANN) with a ratio of 70% of the RF calculation model results for training and 30% model results for testing. In order to get optimal prediction results, trial, and error were carried out on the number of hidden layer nodes, so that optimal and stable hidden layer nodes were obtained at node 10 with RMSE values of 0.339035 for training and 0.442663 for testing and MAPE for training 1.15% and 1.62% for testing. The statistical analysis value is 0.906139 for training and 0.899525 for testing data. It can be concluded from this study that the use of ANN in predictions using ten hidden layer nodes proved to be very good and successful, and predictions in this study were classified as High Accurate Prediction.
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