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首页> 外文期刊>Journal of natural gas science and engineering >Designing and optimizing deviated wellbore trajectories using novel particle swarm algorithms
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Designing and optimizing deviated wellbore trajectories using novel particle swarm algorithms

机译:使用新型粒子群算法设计和优化井眼轨迹

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摘要

Wellbore trajectory design is a determinant issue in drilling engineering. This paper introduces a new stochastic approach for drilling trajectory design applying continuous particle swarm algorithms to find the optimum drilling measured depth of directional and horizontal wells in 3-D space. Considering all the constraints and limitations, the final goal is to determine all geometrical well parameters, in order to achieve the optimum measured depth to the desired target location. Particle swarm optimization is a computational algorithm inspired from natural behavior of some animal societies, such as flocks of birds and shoals of fish. In this review, the trajectory design method for an objective function, originally proposed by Adams and Chattier (1985), is explored and developed. Also, the attributes of the particle swarm optimization (e.g., Onwunalu, 2010) and Meta-optimization (e.g., Pedersen, 2010a,b) algorithms are considered and compared. These algorithms are then applied to demonstrate the determination of true measured depth of example horizontal wellbores as the objective function. Faster convergences, better final points which satisfy all constraints imposed on the drilling paths and population diversity maintenance to help the algorithms find better solutions, are positive characteristics of the solutions found using the algorithms proposed. These algorithms make promising new tools for designing economically-effective trajectories for deviated wells. MATLAB codes for the PSO algorithms evaluated are provided as appendices to this article. (C) 2014 Elsevier B.V. All rights reserved.
机译:井眼轨迹设计是钻井工程中的决定性问题。本文介绍了一种新的随机轨迹设计方法,该方法采用连续粒子群算法来寻找3-D空间中定向井和水平井的最佳钻井测量深度。考虑所有约束和限制,最终目标是确定所有几何井参数,以实现到所需目标位置的最佳测量深度。粒子群优化是一种计算算法,其灵感来自某些动物社会的自然行为,例如鸟群和鱼群。在这篇评论中,探索和开发了最初由亚当斯和查捷(1985)提出的目标函数的轨迹设计方法。同样,考虑并比较了粒子群优化算法(例如Onwunalu,2010)和元优化算法(例如Pedersen,2010a,b)的属性。然后将这些算法应用于证明确定示例水平井眼的真实测量深度作为目标函数。更快的收敛速度,更好的终点满足钻探路径上的所有约束以及种群多样性维护,以帮助算法找到更好的解决方案,这是使用所提出的算法找到的解决方案的积极特征。这些算法提供了有前途的新工具,可用于设计斜井的经济有效轨迹。本文附录提供了用于评估的PSO算法的MATLAB代码。 (C)2014 Elsevier B.V.保留所有权利。

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