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一种在物联网环境中使用混合优化算法的新型气举分配方法。

A new gas lift allocation method in the IoT environment using a hybrid optimization algorithm.

作者信息

Darbandi Mehdi, Meqdad Maytham N, Hammoud Ahmad, Nazif Habibeh

机构信息

Pôle Universitaire Léonard de Vinci, Paris, France.

Intelligent Medical Systems Department, College of Sciences, Al-Mustaqbal University, Babil, 51001, Iraq.

出版信息

Sci Rep. 2024 Dec 28;14(1):30657. doi: 10.1038/s41598-024-75387-0.

Abstract

In the realm of petroleum extraction, well productivity declines as reservoirs deplete, eventually reaching a point where continued extraction becomes economically unfeasible. To counteract this, artificial lift techniques are employed, with gas injection being a prevalent method. Ideally, unrestricted gas injection could maximize oil output. However, gas scarcity necessitates judicious resource management to optimize oil production while minimizing gas usage. Gas injection serves to alleviate hydrostatic pressure within wells, thereby enhancing oil recovery. Conventional gas allocation strategies often prove inadequate when confronted with the complex, non-linear constraints of real-world scenarios, particularly under gas supply limitations. This research introduces an innovative approach to gas allocation optimization, leveraging Internet of Things (IoT) technology in conjunction with advanced computational methods. The study melds two optimization algorithms: Particle Swarm Optimization (PSO) and Atom Search Optimization (ASO). This hybrid technique harnesses IoT capabilities for real-time data acquisition and processing, enabling more precise and adaptive optimization. The proposed methodology incorporates PSO's individual and collective learning mechanisms into the ASO framework, accelerating the solution refinement process. Additionally, it introduces dynamic parameters to balance broad exploration with focused exploitation of the solution space. The algorithm's efficacy is further enhanced by implementing an adaptive force constant for each "atom" (solution candidate), which evolves based on the atom's performance over successive iterations. Empirical evaluation of this novel approach demonstrated significant improvements in both energy efficiency and gas utilization. Specifically, the hybrid method achieved average reductions of 12.12% in energy consumption and 18.05% in gas injection volume compared to existing techniques. Also, the results showed that battery life and cost are better than the other methods and have been improved by an average of 7.67% and 9.48%, respectively.

摘要

在石油开采领域,随着油藏枯竭,油井产能会下降,最终达到一个继续开采在经济上变得不可行的点。为了应对这一情况,人们采用人工举升技术,注气是一种普遍使用的方法。理想情况下,不受限制的注气可以使石油产量最大化。然而,天然气短缺使得必须进行明智的资源管理,以优化石油生产并减少天然气使用量。注气有助于减轻油井内的静水压力,从而提高石油采收率。当面对现实场景中复杂的非线性约束时,尤其是在天然气供应受限的情况下,传统的天然气分配策略往往证明是不够的。本研究引入了一种创新的天然气分配优化方法,将物联网(IoT)技术与先进的计算方法结合起来。该研究融合了两种优化算法:粒子群优化(PSO)和原子搜索优化(ASO)。这种混合技术利用物联网功能进行实时数据采集和处理,实现更精确和自适应的优化。所提出的方法将PSO的个体和集体学习机制纳入ASO框架,加速了求解优化过程。此外,它引入了动态参数,以平衡对解空间的广泛探索和集中利用。通过为每个“原子”(候选解)实施一个自适应力常数,该算法的效能得到进一步增强,该常数会根据原子在连续迭代中的性能而演变。对这种新方法的实证评估表明,在能源效率和天然气利用方面都有显著提高。具体而言,与现有技术相比,混合方法的能耗平均降低了12.12%,注气量平均降低了18.05%。此外,结果表明电池寿命和成本比其他方法更好,分别平均提高了7.67%和9.48%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ca64/11680897/808c50e924e0/41598_2024_75387_Fig1_HTML.jpg

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