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Well placement optimization according to field production curve using gradient-based control methods through dynamic modeling

机译:使用基于梯度的控制方法通过动态建模根据现场生产曲线优化井位

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Determination of optimal well locations plays an important role in field development. Therefore in recent years, there has been an increasing consideration to solve the problem through systematic methods. The problem usually defined as finding well locations such that maximum profit is achieved. Usually there is an industrial demand for oil and gas production in oil and gas companies with respect to consumers' needs. In such cases tracking the required production curve could be a good choice. For this purpose, in this paper optimal well placement problem is formulated as an optimal control one. In this case, well locations and the field oil production total/rate are input and output variables, respectively. The target is to locate wells such that the output can track a desired pre-specified curve. The curve can be determined according to the industrial gas and oil companies' seasonal need. To our best knowledge this is the first contribution that define well placement as a tracking problem in an optimal control frame work. The first step in solving such problems is modeling. No one can ever deny the significance of an appropriate model. According to reservoir complexity usually neural network and neuro-fuzzy modeling were used. However, because of reservoir uncertainties, dynamical approaches where the model would be updated during the process, could be more helpful. This study presents an approach where a Dynamic Fuzzy Neural Network (DFNN) is applied to generate a model which can perform dynamically. The model will be updated at each iteration due to current reservoir information. On the other hand, since the network starts with no hidden units, there is no need to generate input-output set of data for training purposes for which hundreds of costly and time-consuming simulations are required so simulator runs will be decreased significantly. In the optimization step, gradient based approaches as one of the most common methods in control field are employed. These methods perform the search without being obliged to use the simulator several times and usually are faster due to increment of cost function at each iteration. Finally, the proposed method is evaluated by applying to a 3D 3-phase synthetic reservoir for three different scenarios of well location determination. Simulation results show how a desired curve can be tracked through the method with only few numbers of simulator run and confirm the abilities of the proposed procedure in both modeling and tracking control.
机译:确定最佳井位在油田开发中起着重要作用。因此,近年来,越来越多地考虑通过系统的方法来解决该问题。问题通常被定义为寻找能获得最大利润的油井位置。通常,就消费者的需求而言,石油和天然气公司对石油和天然气的生产有工业需求。在这种情况下,跟踪所需的生产曲线可能是一个不错的选择。为此,在本文中将最优井位问题表述为最优控制问题。在这种情况下,油井位置和油田采油总量/速率分别是输入变量和输出变量。目标是定位井,以便输出可以跟踪所需的预定曲线。该曲线可以根据工业天然气和石油公司的季节性需求确定。据我们所知,这是在最佳控制框架中将井位定义为跟踪问题的第一项贡献。解决此类问题的第一步是建模。没有人能否认合适模型的重要性。根据储层复杂性,通常使用神经网络和神经模糊模型。但是,由于储层的不确定性,在过程中更新模型的动态方法可能会更有帮助。这项研究提出了一种方法,其中使用动态模糊神经网络(DFNN)生成可以动态执行的模型。由于当前的油藏信息,模型将在每次迭代时更新。另一方面,由于网络开始时没有隐藏的单元,因此无需生成用于训练目的的输入/输出数据集,为此需要数百个昂贵且耗时的模拟,因此模拟器的运行将大大减少。在优化步骤中,采用基于梯度的方法作为控制领域中最常见的方法之一。这些方法执行搜索而不必强制使用模拟器几次,并且由于每次迭代中成本函数的增加,通常更快。最后,通过将3D三相合成油藏应用于确定井位的三种不同情况,对提出的方法进行了评估。仿真结果表明,只需运行少量仿真器就可以通过该方法跟踪所需曲线,并确认了拟议程序在建模和跟踪控制方面的能力。

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