全项目净现值最大化下油井布局的随机优化及其类型和轨迹

D. Zeqiraj
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引用次数: 0

摘要

油田注采井数量及其井眼轨迹的最佳确定取决于一系列因素,而这些因素在大多数情况下具有随机性。在不确定因素中,我们可以提到地质复杂性、岩石物理、经济参数、流动状态、石油类型、储层岩石、砂岩或碳酸盐岩的组合。主要原因是为了开发最优算法,在相对较短的时间内或相对较少的迭代中提供问题的解决方案。正是后者,迭代的时间和次数在过去一直是一个主要障碍,在过去需要花费数天才能找到问题的解决方案。所以,问题是我们不应该优先考虑计算机的速度,而不是以一种智能的方式开发算法。在这方面的优势已经相当好,足以提及遗传算法,粒子群。因此,必须开发智能算法,通过油藏模拟,在相对较短的时间内(例如几个小时)为优化问题提供最优解决方案:现有注水井和生产井的位置,以及将同时进行注水井和开发的候选井的轨迹位置,以实现净现值最大化的最终目标。我们要解决的问题具有双重随机性:既具有地质上的不确定性,也具有经济上的不确定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stochastic Optimization of Oil Well Placement and Their Type and Trajectory for Maximizing the Net Present Value of Entire Project
The optimal determination of the number of injection and production wells as well as their trajectories in an oil field depends on a series of factors which in most cases are of a stochastic nature. Among the uncertain factors we can mention the geological complexity, combinations of petrophysical, economic parameters, flow regimes, oil type, reservoir rock, sandstone or carbonate. The main reason is to develop optimal algorithms that provide the solution to the problem in a relatively short time or with a relatively small number of iterations. Exactly the latter, time and number of iterations has been a major handicap in the past where it took days to find a solution to the problem. So, the problem is that we should not give greater priority to the speed of computers than the way algorithms are developed in a smart way. The advantages in this regard have been quite good, suffice it to mention the genetic algorithm, particle swarm. So, it is imperative to develop intelligent algorithms that through reservoir simulations give us in a relatively short time, say some hours, the optimal solution to the optimization problem: the location of existing injection and production wells and the location of the trajectory of the candidate wells that will be drilled for both injection and exploitation to achieve the final goal which is the maximization of the Net Present Value. The problem we will pose for solution is of a dual stochastic nature: both in terms of geological uncertainty and economic uncertainty.
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