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Enhancing the performance of biogeography-based optimization using polyphyletic migration operator and orthogonal learning

机译:使用多系统迁移算子和正交学习增强基于生物地理的优化的性能

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摘要

Biogeography-based optimization (BBO) is a powerful population-based algorithm inspired by biogeography and has been extensively applied to many science and engineering problems. However, its direct-copying-based migration and random mutation operators make BBO possess local exploitation ability but lack global exploration ability. To remedy the defect and enhance the performance of BBO, an enhanced BBO variant, called POLBBO, is developed in this paper. In POLBBO, a proposed efficient operator named polyphyletic migration operator can formally utilize as many as four individuals' features to construct a new solution vector. This operator cannot only generate new features from more promising areas in the search space, but also effectively increase the population diversity. On the other hand, an orthogonal learning (OL) strategy based on orthogonal experimental design is employed. The OL strategy can quickly discover more useful information from the search experiences and efficiently utilize the information to construct a more promising solution, and thereby provide a systematic and elaborate reasoning method to guide the search directions of POLBBO. The proposed POLBBO is verified on a set of 24 benchmark functions with diverse complexities, and is compared with the basic BBO, five state-of-the-art BBO variants, five existing OL-based algorithms, and nine other evolutionary algorithms. The experimental results and comparisons demonstrate that the polyphyletic migration operator and the OL strategy can work together well and enhance the performance of BBO significantly in terms of the quality of the final solutions and the convergence rate.
机译:基于生物地理的优化(BBO)是一种受生物地理启发的强大的基于人口的算法,已广泛应用于许多科学和工程问题。但是,其基于直接复制的迁移和随机突变算子使BBO具备局部开发能力,但缺乏整体勘探能力。为了纠正缺陷并增强BBO的性能,本文开发了一种称为POLBBO的增强BBO变体。在POLBBO中,建议的有效算子称为多系迁移算子,可以正式利用多达四个个体的特征来构建新的求解向量。该运算符不仅可以从搜索空间中更有前途的区域中生成新功能,而且还可以有效地增加人口多样性。另一方面,采用基于正交实验设计的正交学习(OL)策略。 OL策略可以从搜索体验中快速发现更多有用的信息,并有效地利用这些信息来构建更有希望的解决方案,从而提供一种系统详尽的推理方法来指导POLBBO的搜索方向。拟议的POLBBO在一组24个具有各种复杂性的基准函数上进行了验证,并与基本BBO,五个最新的BBO变体,五个现有的基于OL的算法以及九个其他进化算法进行了比较。实验结果和比较结果表明,就最终溶液的质量和收敛速度而言,多系统迁移算子和OL策略可以很好地协同工作并显着提高BBO的性能。

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