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Optimization of integrated production system using advanced proxy based models: A new approach

机译:使用基于高级代理的模型优化集成生产系统:一种新方法

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Hydrocarbon production can be elevated using gas lift especially when reservoir pressure declines throughout reservoir life. Specific amount of compressed gas distributes among wells during a gas lift operation through the orifice installed on the tubing string. Since the available gas is usually less than the amount of gas needed to obtain the maximum rate of extraction in each individual well, it is essential to determine and inject the optimal amount of gas into each well. As reservoir conditions alter over time, these optimal rates change during the life of the field; additionally, the recent and periodic fluctuation in oil price has implied a need for an economical and reliable alternative to the former discontinuous optimization methods. Therefore, to effectively increase the profit of the project and reach true potential of any hydrocarbon field, formulation of a practical dynamic optimization scheme is inevitable. Dynamic models often use integrated models of upstream and downstream systems. Since running commercial simulation software is very time-consuming, look-up tables (interpolated values) are used to reduce the laboriousness; however, the interpolations can lead to miscalculations. This study proposes a fully dynamic novel approach to optimize a gas lift system by implementing proxy models to minimize an objective function, being the resource usage. First, machine-learning based proxy models trained with the datasets from simulation software are used. Later, the genetic algorithm GA is coupled to the model and is performed alongside the well proxy model to optimize the gas injection rate by evaluating the fitness function being net present value (NPV). The whole procedure is repeated iteratively over many time steps throughout the life of the reservoir enabling near real-time optimization. The results assert that the proposed dynamic scheme is able to fully understand the relationship between the different components of the production system. By imitating them it is thrived to optimize the gas lift operation dynamically over a specific time period. Moreover, the model is compared and verified by a semi dynamic model reported in the literature. (C) 2016 Elsevier B.V. All rights reserved.
机译:可以通过气举提高烃类产量,尤其是在整个储层寿命期间储层压力下降时。在气举作业期间,通过安装在油管柱上的孔口,特定数量的压缩气体会在各井之间分配。由于可用的气体通常少于在每个单独的井中获得最大提取速率所需的气体量,因此必须确定最佳量的气体并将其注入每个井中。随着储层条件随时间而变化,这些最优速率在油田生命周期中会发生变化。另外,最近和周期性的油价波动意味着需要一种经济,可靠的替代方法来替代以前的不连续优化方法。因此,为了有效地增加项目利润并实现任何油气田的真正潜力,制定实用的动态优化方案是不可避免的。动态模型通常使用上游和下游系统的集成模型。由于运行商业仿真软件非常耗时,因此使用查询表(内插值)可以减少工作量;但是,插值会导致计算错误。这项研究提出了一种完全动态的新方法,通过实施代理模型以最小化目标功能(即资源使用量)来优化气举系统。首先,使用基于机器学习的代理模型,该模型使用来自仿真软件的数据集进行训练。后来,遗传算法GA耦合到该模型,并与井代理模型一起执行,以通过评估适应度函数为净现值(NPV)来优化注气速率。整个过程在整个油藏寿命中的许多时间步长上反复进行重复,从而实现近实时优化。结果表明,提出的动态方案能够完全理解生产系统不同组件之间的关系。通过模仿它们,可以在特定时间段内动态优化气举操作。此外,该模型通过文献报道的半动态模型进行比较和验证。 (C)2016 Elsevier B.V.保留所有权利。

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