一种基于levy飞行和基于对立学习的麻雀搜索算法

IF 1.9 4区 计算机科学 Q3 AUTOMATION & CONTROL SYSTEMS
Danni Chen, Jiandong Zhao, Peng Huang, Xiongna Deng, Tingting Lu
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引用次数: 6

摘要

摘要:麻雀搜索算法(SSA)是一种新颖的全局寻优方法,但容易陷入局部寻优,导致其搜索精度和稳定性较差。本研究的目的是提出一种改进的基于LOSSA策略的SSA算法,称为levy flight and opposition-based learning (LOSSA)。该算法具有更好的搜索精度、更快的收敛速度和更强的稳定性。为了进一步提高算法的优化性能,在原SSA的生产者搜索过程中引入了Levy飞行操作,增强了算法跳出局部最优的能力。基于对立的学习策略产生了更好的SSA解,有利于加快算法的收敛速度。一方面,通过基于经典基准函数的一组数值实验对该算法的性能进行了评价。另一方面,也利用支持向量机(SVM)的超参数优化问题来检验LOSSA解决实际问题的能力。首先,通过Wilcoxon符号秩检验验证了两种改进方法的有效性。其次,数值实验的统计结果表明,与原始算法和其他自然启发式算法相比,LOSSA算法有了显著的改进。最后,验证了该方法在解决机器学习算法超参数优化问题中的可行性和有效性。本文提出了一种基于LOSSA的改进SSA。实验结果表明,该方法的总体性能令人满意。与SSA等自然启发式算法相比,LOSSA具有更好的搜索精度、更快的收敛速度和更强的稳定性。此外,在SVM模型的超参数优化中,LOSSA也表现出了很好的优化性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An improved sparrow search algorithm based on levy flight and opposition-based learning
Purpose Sparrow search algorithm (SSA) is a novel global optimization method, but it is easy to fall into local optimization, which leads to its poor search accuracy and stability. The purpose of this study is to propose an improved SSA algorithm, called levy flight and opposition-based learning (LOSSA), based on LOSSA strategy. The LOSSA shows better search accuracy, faster convergence speed and stronger stability. Design/methodology/approach To further enhance the optimization performance of the algorithm, The Levy flight operation is introduced into the producers search process of the original SSA to enhance the ability of the algorithm to jump out of the local optimum. The opposition-based learning strategy generates better solutions for SSA, which is beneficial to accelerate the convergence speed of the algorithm. On the one hand, the performance of the LOSSA is evaluated by a set of numerical experiments based on classical benchmark functions. On the other hand, the hyper-parameter optimization problem of the Support Vector Machine (SVM) is also used to test the ability of LOSSA to solve practical problems. Findings First of all, the effectiveness of the two improved methods is verified by Wilcoxon signed rank test. Second, the statistical results of the numerical experiment show the significant improvement of the LOSSA compared with the original algorithm and other natural heuristic algorithms. Finally, the feasibility and effectiveness of the LOSSA in solving the hyper-parameter optimization problem of machine learning algorithms are demonstrated. Originality/value An improved SSA based on LOSSA is proposed in this paper. The experimental results show that the overall performance of the LOSSA is satisfactory. Compared with the SSA and other natural heuristic algorithms, the LOSSA shows better search accuracy, faster convergence speed and stronger stability. Moreover, the LOSSA also showed great optimization performance in the hyper-parameter optimization of the SVM model.
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来源期刊
Assembly Automation
Assembly Automation 工程技术-工程:制造
CiteScore
4.30
自引率
14.30%
发文量
51
审稿时长
3.3 months
期刊介绍: Assembly Automation publishes peer reviewed research articles, technology reviews and specially commissioned case studies. Each issue includes high quality content covering all aspects of assembly technology and automation, and reflecting the most interesting and strategically important research and development activities from around the world. Because of this, readers can stay at the very forefront of industry developments. All research articles undergo rigorous double-blind peer review, and the journal’s policy of not publishing work that has only been tested in simulation means that only the very best and most practical research articles are included. This ensures that the material that is published has real relevance and value for commercial manufacturing and research organizations.
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