高含水油田自动井网部署的优化

IF 2.6 3区 工程技术 Q3 ENERGY & FUELS
Xianing Li, Jiqun Zhang, Junhua Chang, Liming Wang, Li Wu, L. Cui, Deli Jia
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引用次数: 0

摘要

针对注水油田冲储形成多条主要水流通道、开发效果差等问题,改造现有井网,提供井网评价方法,是通过改善注采关系、增加注水波及面积来提高采收率的重要途径。然而,油藏工程方法、模拟方法、目标较少的人工智能算法能够对井网进行综合评价。本文利用萤火虫群优化算法和小生境技术,综合考虑油田开发中的多个评价指标,进行了井网自动优化。萤火虫群优化算法具有全局搜索效率高、算法流程简单的优点,可以加快收敛速度,减少参数调整。小众技术可以更好地保持解决方案的多样性,更高效、准确、可靠地解决多模态优化问题。将该方法应用于某油田高含水注水油田某区块的井网优化。通过多次迭代得到最佳井网,以最大限度地提高井网对砂体的控制程度。结果表明,井网对砂体的注采对应率和储量控制度分别提高了4.48%和7.94%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of Automatic Well Pattern Deployment in High Water Cut Oilfield
In view of the problems such as a plurality of dominant water flow channels formed by flushing the reservoir, inferior development effect in the water injection oilfields, reconstructing the current well pattern and providing well pattern evaluation methods are the important ways to enhance oil recovery by improving the injection-production relation, increasing the swept area of water flooding. However, the reservoir engineering methods, the simulation methods, the artificial intelligence algorithms with few objectives enable to comprehensively evaluate the well pattern. In this paper, considering multiple evaluation indexes in oilfield development by the glowworm swarm optimization algorithm and niche technology, automatic well pattern optimization is carried out. The glowworm swarm optimization algorithm has the advantage of efficient global search and simpler algorithm flow, which can speed up the convergence and reduce the parameter adjustment. The niche technology can better maintain the diversity of the solutions, and solve the multimodal optimization problems more efficiently, accurately and reliably. The new method was used to optimized the well pattern of one block in a water flooding oilfield with high water-cut in a certain oilfield. The optimal well pattern is obtained by multiple iterations to maximize the control degree of well pattern to sand body. The results indicate that the injection production correspondence ratio and reserves control degree of the well pattern to sand body are improved by 4.48% and 7.94%.
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来源期刊
CiteScore
6.40
自引率
30.00%
发文量
213
审稿时长
4.5 months
期刊介绍: Specific areas of importance including, but not limited to: Fundamentals of thermodynamics such as energy, entropy and exergy, laws of thermodynamics; Thermoeconomics; Alternative and renewable energy sources; Internal combustion engines; (Geo) thermal energy storage and conversion systems; Fundamental combustion of fuels; Energy resource recovery from biomass and solid wastes; Carbon capture; Land and offshore wells drilling; Production and reservoir engineering;, Economics of energy resource exploitation
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