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首页> 外文期刊>Arabian Journal for Science and Engineering. Section A, Sciences >Optimization of WAG Process Using Dynamic Proxy, Genetic Algorithm and Ant Colony Optimization
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Optimization of WAG Process Using Dynamic Proxy, Genetic Algorithm and Ant Colony Optimization

机译:使用动态代理,遗传算法和蚁群算法优化WAG工艺

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摘要

The optimization of water alternating gas injection (WAG) process is a complex problem, which requires a significant number of numerical simulations that are time-consuming. Therefore, developing a fast and accurate replacing method becomes a necessity. Proxy models that are light mathematical models have a high ability to identify very complex and non-straightforward problems such as the answers of numerical simulators in brief deadlines. Different static proxy models have been used to date, where a predefined model is employed to approximate the outputs of numerical simulators such as field oil production total (FOPT) or net present value, at a given time and not as functions of time. This study demonstrates the application of time-dependent multi Artificial Neural Networks as a dynamic proxy to the optimization of a WAG process in a synthetic field. Latin hypercube design is used to select the database employed in the training phase. By coupling the established proxy with genetic algorithm (GA) and ant colony optimization (ACO), the optimum WAG parameters, namely gas and water injection rates, gas and water injection half-cycle, WAG ratio and slug size, which maximize FOPT subject to some time-depending constraints, are investigated. The problem is formulated as a nonlinear optimization problem with bound and nonlinear constraints. The results show that the established proxy is found to be robust and an efficient alternative for mimicking the numerical simulator performances in the optimization of the WAG. Both GA and ACO are strongly shown to be highly effective in the combinatorial optimization of the WAG process.
机译:水交替气体注入(WAG)工艺的优化是一个复杂的问题,需要大量耗时的数值模拟。因此,开发一种快速而准确的替换方法成为必要。轻型数学模型的代理模型具有很高的能力,可以识别非常复杂且非直截了当的问题,例如在短期限内解决数字模拟器的问题。迄今为止,已经使用了不同的静态代理模型,其中在给定的时间而不是时间的函数中,使用预定义的模型来近似数字模拟器的输出,例如油田石油总产量(FOPT)或净现值。这项研究证明了时变多人工神经网络作为动态代理在合成领域中优化WAG工艺的应用。拉丁文超立方体设计用于选择训练阶段中使用的数据库。通过将已建立的代理与遗传算法(GA)和蚁群优化(ACO)结合使用,最优的WAG参数,即注水和注水速率,注水和注水半周期,WAG比率和段塞尺寸,可最大化FOPT,研究了一些时间相关的约束。该问题被表述为具有约束和非线性约束的非线性优化问题。结果表明,已建立的代理被认为是鲁棒的,并且是在WAG优化中模仿数值模拟器性能的有效替代方法。 GA和ACO在WAG工艺的组合优化中都被证明是非常有效的。

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