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Reservoir description using dynamic parameterisation selection with a combined stochastic and gradient search

机译:动态参数化选择与随机和梯度搜索相结合的储层描述

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There is a correspondence between flow in a reservoir and large scale permeability trends. This correspondence can be derived by constraining reservoir models using observed production data. One of the challenges in deriving the permeability distribution of a field using production data involves determination of the scale of resolution of the permeability. The Adaptive Multiscale Estimation (AME) seeks to overcome the problems related to choosing the resolution of the permeability field by a dynamic parameterisation selection. The standard AME uses a gradient algorithm in solving several optimisation problems with increasing permeability resolution. This paper presents a hybrid algorithm which combines a gradient search and a stochastic algorithm to improve the robustness of the dynamic parameterisation selection. At low dimension, we use the stochastic algorithm to generate several optimised models. We use information from all these produced models to find new optimal refinements, and start out new optimisations with several unequally suggested parameterisations. At higher dimensions we change to a gradient-type optimiser, where the initial solution is chosen from the ensemble of models suggested by the stochastic algorithm. The selection is based on a predefined criterion. We demonstrate the robustness of the hybrid algorithm on sample synthetic cases, which most of them were considered insolvable using the standard AME algorithm.
机译:储层中的流量与大规模渗透率趋势之间存在对应关系。可以通过使用观察到的生产数据来约束储层模型来推导这种对应关系。使用生产数据得出油田渗透率分布的挑战之一涉及确定渗透率分辨率的规模。自适应多尺度估计(AME)试图克服与通过动态参数化选择来选择渗透率场分辨率有关的问题。标准AME使用梯度算法解决渗透率分辨率提高的几个优化问题。本文提出了一种混合算法,结合了梯度搜索和随机算法,以提高动态参数化选择的鲁棒性。在低维情况下,我们使用随机算法来生成多个优化模型。我们使用来自所有这些产生的模型的信息来寻找新的最佳优化,并通过几个不平等建议的参数设置开始新的优化。在更高的维度上,我们更改为梯度类型的优化器,其中的初始解是从随机算法建议的模型集合中选择的。该选择基于预定义的标准。我们证明了混合算法在样本合成案例中的鲁棒性,其中大多数案例使用标准AME算法都无法解决。

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