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首页> 外文期刊>Journal of natural gas science and engineering >Metaheuristic profiling to assess performance of hybrid evolutionary optimization algorithms applied to complex wellbore trajectories
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Metaheuristic profiling to assess performance of hybrid evolutionary optimization algorithms applied to complex wellbore trajectories

机译:元启发分析,以评估适用于复杂井眼轨迹的混合进化优化算法的性能

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Metaheuristic profiling is proposed as an effective technique with which to evaluate the relative contributions of the metaheuristic components of hybrid evolutionary optimization algorithms in progressing searches of feasible solution spaces to locate global optimum values of their objective functions. Although many useful evolutionary algorithms have been successfully proposed and tested to solve a wide range of complex mathematical optimization problems, when applied to real-world optimization tasks their performance can often be improved by hybridization with other metaheuristics. A case is made here that in developing optimization algorithms for specific practical applications it is better to treat the available evolutionary algorithms as part of a "toolbox" of metaheuristic components that can be configured in various hybridized combinations. The technique of metaheuristic profiling is evaluated as means of identifying the relative contributions of individual metaheuristic components in contributing to the discovery of optimum solutions over multiple iterations of hybrid algorithms. The meta heuristic profiling technique of a toolbox of metaheuristic components is evaluated in terms of applying seven hybrid evolutionary algorithms to optimize a previously studied complex well-bore trajectory optimization problem. The seven hybrid evolutionary algorithms developed with multiple meta heuristics are built upon standard: genetic; particle swarm; bee colony; ant colony; harmony search, cuckoo search and bat flight algorithms. Pseudocode for each of the hybrid algorithms studied are provided in an appendix. These codes identify the metaheuristics included and the sequence in which they are applied in the hybrid algorithms. All seven hybrid algorithms are coded in VBA based in Microsoft Excel with the assistance of the metaheuristic profiling technique, to provide reliably reproducible solutions to well-bore trajectory design optimization. Analysis of metaheuristic performance also confirms the benefits of fat-tailed distributions, sampled chaotically, in a novel way, to drive certain metaheuristics. (C) 2016 Elsevier B.V. All rights reserved.
机译:提出了元启发式剖析作为一种有效的技术,可用来评估混合进化优化算法的元启发式分量在进行可行解空间查找以定位其目标函数的全局最优值时的相对贡献。尽管已经成功提出并测试了许多有用的进化算法来解决各种复杂的数学优化问题,但是当将它们应用于现实世界中的优化任务时,通常可以通过与其他元启发式算法进行混合来提高其性能。在此提出一种情况,在为特定的实际应用开发优化算法时,最好将可用的进化算法视为可配置为各种混合组合的元启发式组件“工具箱”的一部分。对元启发式分析技术进行了评估,以此作为确定各个元启发式组件在推动​​混合算法多次迭代中发现最佳解决方案方面的相对贡献的手段。通过应用七种混合进化算法来优化先前研究的复杂井眼轨迹优化问题,对元启发式组件工具箱的元启发式剖析技术进行了评估。利用多种元启发法开发的七种混合进化算法均基于以下标准:遗传算法;粒子群蜂群蚁群和声搜索,杜鹃搜索和蝙蝠飞行算法。附录中提供了所研究的每种混合算法的伪代码。这些代码标识了所包含的元启发式方法以及它们在混合算法中的应用顺序。借助元启发分析技术,所有这七个混合算法都在基于Microsoft Excel的VBA中进行了编码,从而为井眼轨迹设计优化提供了可靠的可重现解决方案。对元启发式性能的分析还证实了以一种新颖的方式对混沌尾部进行采样的胖尾分布驱动某些元启发式的好处。 (C)2016 Elsevier B.V.保留所有权利。

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