A Model for Platform Location Optimization in Shale Gas with Learning Effect

Yuemin Gu, D. Gao, Yang Jin, Wang Zhiyue, Xin Li, Leichuan Tan
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引用次数: 1

Abstract

Shale gas in the mountain area is exploited in well factory mode. Learning effect due to well factory mode significantly affect the drilling cost, which has a powerful effect on platform location. The learning index, which is quantitative assessment of learning effect in the process of shale gas exploitment, is made by adjusted cosine similarity in this paper. The learning index, of which data comes from adjacent well, takes drilling cost, the well length and drilling time into account. The platform location optimization model, which considers learning effect, maximum number of wells one platform allowed and well trajectory, is established. The genetic algorithm is applied to solve the optimization model and the genetic operator is improved base on shale gas exploitation in mountain area. All the calculation procedure of genetic algorithm is performed in this work. The case study indicates that the optimization model can reduce the platform amount in a given area and increase the well amount one platform drills, namely, reduce the drilling cost by optimizing the platform location. The study demonstrates that the platform location optimization model established in this paper can both effectively quantify learning effect due to the well factory mode drilling in mountain area and decrease the drilling cost.
具有学习效应的页岩气平台选址优化模型
山区页岩气采用井厂开采模式。井厂模式的学习效应对钻井成本有显著影响,对平台定位有较大影响。本文采用调整余弦相似度法确定了页岩气开发过程中学习效果的定量评价指标。学习指标的数据来源于邻井,考虑了钻井成本、井长和钻井时间。建立了考虑学习效应、平台最大井数和井眼轨迹的平台位置优化模型。将遗传算法应用于优化模型的求解,并结合山区页岩气开采实例对遗传算子进行了改进。本文完成了遗传算法的全部计算过程。实例研究表明,该优化模型可以减少给定区域内的平台数量,增加一个平台的钻井数量,即通过优化平台位置来降低钻井成本。研究表明,本文建立的平台位置优化模型既能有效量化山区工厂化钻井的学习效应,又能降低钻井成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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