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A Novel Approach to Assist History Matching Using Artificial Intelligence

机译:一种使用人工智能辅助历史匹配的新方法

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This study represents a novel method to accelerate history matching using artificial intelligence. Artificial intelligence is becoming popular in the oil and gas industry. The scope of this study is to provide guidelines to develop and train an artificial neural network (ANN) coupled with a genetic algorithm (GA) to optimize networks that can give an improved history match when given as input to a reservoir simulation model. For this work the concept of nominal decline rate (D) is used. For training the neural network, the difference in nominal decline rates between the varied numerical simulations and the base case field performance (Delta D) is used. A neural network model was developed to predict the differences between nominal decline rates (Delta D). Then a genetic algorithm used the trained neural network prediction model to determine the optimized parameter values. The feed-forward network with back propagation and the hyperbolic tangent sigmoid function (tansig) in the hidden layers of the network is used for the training/learning process. Results of the study showed that the NN-GA system considerably reduces the time and number of simulation runs required to achieve a good history match. Using the decline curve parameter for target data decreases the complexity and difficulty proxy and requires a smaller amount of training data to train the network.
机译:这项研究代表了一种使用人工智能加速历史匹配的新方法。人工智能在石油和天然气行业正变得越来越流行。这项研究的范围是为开发和训练与遗传算法(GA)结合的人工神经网络(ANN)提供指导,以优化网络,当作为储层模拟模型的输入时,可以改善历史匹配度。对于这项工作,使用名义下降率(D)的概念。为了训练神经网络,使用了变化的数值模拟与基本情况下的现场性能(ΔD)之间的名义下降率之差。开发了一个神经网络模型来预测名义下降率(ΔD)之间的差异。然后,遗传算法使用训练后的神经网络预测模型来确定最佳参数值。在网络的隐藏层中具有反向传播的前馈网络和双曲线正切S型函数(tansig)用于训练/学习过程。研究结果表明,NN-GA系统极大地减少了实现良好历史记录匹配所需的时间和数量。对目标数据使用下降曲线参数可以降低复杂性和难度代理,并且需要较少量的训练数据来训练网络。

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