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首页> 外文期刊>Marine and Petroleum Geology >Numerical simulation of hydrocarbon migration in tight reservoir based on Artificial Immune Ant Colony Algorithm: A case of the Chang 8(1) reservoir of the Triassic Yanchang Formation in the Huaqing area, Ordos Basin, China
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Numerical simulation of hydrocarbon migration in tight reservoir based on Artificial Immune Ant Colony Algorithm: A case of the Chang 8(1) reservoir of the Triassic Yanchang Formation in the Huaqing area, Ordos Basin, China

机译:基于人工免疫蚁群算法的致密油藏油气运移数值模拟-以鄂尔多斯盆地华清地区三叠系延长组长8(1)油藏为例

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摘要

The hydrocarbon migration in tight reservoirs is a complex process, the fluid flow patterns of which are notably different from those of conventional reservoirs. Therefore, specific mathematical models are needed to simulate the secondary hydrocarbon migrations. This study presents a numerical simulation method based on Artificial Immune Ant Colony Algorithm (AIACA) to simulate the secondary hydrocarbon migrations in tight reservoirs. It consists of three core parts: (1) the release modes of artificial ants based on the intensity of hydrocarbon generation; (2) the wandering patterns of artificial ants under the control of the dynamic field and the distribution of pheromones; (3) the updating modes of pheromones based on the changes in reservoir wettability. The simulation of secondary migration can be realized by the observing the dynamic movements and accumulations of the artificial ants. The method has been tested in the Chang 8(1) tight sandstone reservoir, which is part of the Triassic Yanchang Forniation in the Huaqing Area, Ordos Basin in China, and proved to be successful in matching the current data in exploration and development. (C) 2016 Elsevier Ltd. All rights reserved.
机译:致密油藏中的烃运移是一个复杂的过程,其流体流动模式与常规油藏明显不同。因此,需要特殊的数学模型来模拟次生烃运移。本研究提出了一种基于人工免疫蚁群算法(AIACA)的数值模拟方法,以模拟致密油藏中的次生油气运移。它包括三个核心部分:(1)基于烃类生成强度的人工蚂蚁释放方式; (2)在动态场和信息素分布的控制下,人造蚂蚁的游荡模式; (3)基于储层润湿性变化的信息素更新方式。通过观察人工蚂蚁的动态运动和积累,可以模拟二次迁移。该方法已在中国鄂尔多斯盆地华清地区三叠系延长组的长8(1)致密砂岩储层中进行了测试,并已证明能够成功匹配当前的勘探和开发数据。 (C)2016 Elsevier Ltd.保留所有权利。

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