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Practical application of machine learning on fast phase equilibrium calculations in compositional reservoir simulations

机译:机器学习在组成储层模拟中快速相平计算的实际应用

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To accurately describe the fluid phase behaviour in reservoir simulation, Equation-of-State-based compositional models are usually used. However, phase equilibrium calculations, including stability tests and phase splitting calculations, may require huge computational costs. An improved artificial neural network model is developed based on our previous work to achieve the prediction of phase stability with high accuracy and reduce the computational costs in order of magnitude. This model does not directly tell if a hydrocarbon mixture at given compositions, pressure and temperature is stable or unstable, and it is able to predict the saturation pressures. By comparing the given pressure with the predicted saturation pressure, it is natural to tell the stability of a hydrocarbon mixture. For the phase splitting calculations, another artificial neural network model is developed to provide more reliable initial guesses for commonly used equilibrium methods to reduce their nonlinear iterations. Compared with our previous work, multi-layer neural networks are employed in the models. The improved models have more efficient training processes and more accurate prediction results. Additionally, an adaptive data generation process is introduced to optimize the quality and size of training data; the data transformation and normalization are discussed to reduce the skewness of the data and rescale the data; and a model training and selection strategy is also discussed to efficiently train a high-quality model. The efficiency of the ANN models is first validated by standalone phase equilibrium calculations with a three-component hydrocarbon mixture. Then the ANN models are successfully applied in compositional simulation examples, which demonstrates the practical value of these ANN models on speeding up the phase equilibrium calculations during compositional simulations. (C) 2019 Elsevier Inc. All rights reserved.
机译:为了准确地描述储层模拟中的流体相位行为,通常使用基于状态的基于状态的组成模型。然而,相平衡计算,包括稳定性测试和相分裂计算,可能需要巨大的计算成本。基于我们以前的工作开发了一种改进的人工神经网络模型,以实现高精度的相位稳定性的预测,并按幅度降低计算成本。该模型不直接判断给定组合物,压力和温度是否稳定或不稳定的烃混合物,并且能够预测饱和压力。通过将给定的压力与预测的饱和度压进行比较,表示烃混合物的稳定性是自然的。对于相位分割计算,开发了另一个人工神经网络模型,为常用的平衡方法提供更可靠的初始猜测,以减少其非线性迭代。与我们以前的工作相比,模型中采用了多层神经网络。改进的模型具有更高效的培训过程和更准确的预测结果。另外,引入了自适应数据生成过程以优化培训数据的质量和大小;讨论了数据转换和归一化以减少数据的偏差并重新归类数据;还讨论了模型培训和选择策略以有效地培训高质量的模型。 ANN模型的效率首先通过具有三组分烃混合物的独立相平衡计算验证。然后,ANN模型成功应用于组成模拟实施例,这证明了这些ANN模型在组成模拟期间加速相位平衡计算的实际值。 (c)2019 Elsevier Inc.保留所有权利。

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