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首页> 外文期刊>Journal of natural gas science and engineering >A novel multi-objective estimation of distribution algorithm for solving gas lift allocation problem
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A novel multi-objective estimation of distribution algorithm for solving gas lift allocation problem

机译:解决气举分配问题的一种新的多目标分配算法

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Gas lifting is a common practice in the oil industry. Using an appropriate gas lift injection rate can ensure that the desired oil production rate would be achieved. In the case of an oil field, the problem of distributing a certain amount of the available gas among a number of wells is formally known as a gas lift allocation problem. In this paper, a multi-objective optimization algorithm, based on the Gaussian Bayesian Networks and the Gaussian kernels, is proposed in order to determine the best injection points, considering multiple objective functions. Firstly, the problem is solved in a similar approach to the previous literature with similar gas lift data and similar function approximation method, to compare the performance of the proposed algorithm with the older ones. Thereafter, an extended problem is discussed, with minimizing the water production as a new optimization criterion. The developed multi-objective scheme is capable of handling and optimizing a gas-lift problem with several constraints and conflicting objectives such as controlling the gas usage and increasing the oil production, whereas in the conventional single-objective optimizations, any alteration in the constraints demands a new optimization process and often there is no place for considering an additional objective in the gas-lift allocation problem. The results obtained by the proposed optimization algorithm significantly overcame those reported in the previous similar literature. For a single-objective fifty-six well problem, the results exhibited 16.24% improvement in the total oil production. (C) 2015 Elsevier B.V. All rights reserved.
机译:气举是石油工业中的一种普遍做法。使用适当的气举注入速率可以确保达到所需的采油率。在油田的情况下,在一定数量的井之间分配一定量的可用气体的问题被正式称为气举分配问题。本文提出了一种基于高斯贝叶斯网络和高斯核的多目标优化算法,以便在考虑多个目标函数的情况下确定最佳注入点。首先,采用与以前文献相似的方法,利用相似的气举数据和相似的函数逼近方法,解决了该问题,以将所提算法的性能与较旧的算法进行比较。此后,讨论了一个扩展的问题,将水的产量降至最低作为新的优化标准。所开发的多目标方案能够处理和优化具有多个约束条件和矛盾目标的气举问题,例如控制天然气使用量和增加石油产量,而在传统的单目标优化中,约束条件的任何变化都需要一个新的优化过程,而且在气举分配问题中通常没有地方考虑其他目标。通过提出的优化算法获得的结果大大超过了以前类似文献中报道的结果。对于单目标的56口井问题,结果显示总采油量提高了16.24%。 (C)2015 Elsevier B.V.保留所有权利。

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