The Prediction of the Performance of an Oil Reservoir by Proxy Model: A Case Study

A. Daghbandan, Seyed Mahdi Chalik
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引用次数: 6

Abstract

Simulation model of an undeveloped oil reservoir is full of uncertainty. Assessing the effect of these parameters on the simulation results, is very important task in reservoir engineering. Making a proxy model is a method for forecast reservoir performance under different production scenarios. In this study, GMDH-type neural network is used as a proxy model and also Experimental Design theory is used to get the most information full data set which is applied to the input of the neural network. The traditional way needs to very large number of simulation but this method is very time consuming and costly. A sensitivity analysis was conducted to understand the most important initial parameters. In this study, proxy model is created to predict FOPR, Field Oil Production Rate, in a reservoir under immiscible gas injection scenario to 15 years.
用代理模型预测油藏动态:以实例为例
未开发油藏的模拟模型充满了不确定性。评价这些参数对模拟结果的影响,是油藏工程中非常重要的工作。建立代理模型是预测不同生产情景下油藏动态的一种方法。本研究采用gmdh型神经网络作为代理模型,并利用实验设计理论获得信息量最大的完整数据集,应用于神经网络的输入。传统的方法需要进行大量的仿真,而这种方法耗时长,成本高。进行敏感性分析以了解最重要的初始参数。在本研究中,建立了代理模型来预测非混相注气情景下15年的油田产油量。
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