A hybrid butterfly and Newton–Raphson swarm intelligence algorithm based on opposition-based learning

Chuan Li, Yanjie Zhu
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Abstract

In response to the issues of local optima entrapment, slow convergence, and low optimization accuracy in Butterfly optimization algorithm (BOA), this paper proposes a hybrid Butterfly and Newton–Raphson swarm intelligence algorithm based on Opposition-based learning (BOANRBO). Firstly, by Opposition-based learning, the initialization strategy of the butterfly algorithm is improved to accelerate convergence. Secondly, adaptive perception modal factors are introduced into the original butterfly algorithm, controlling the adjustment rate through the adjustment factor α to enhance the algorithm's global search capability. Then, the exploration probability \(p\) is dynamically adjusted based on the algorithm's runtime, increasing or decreasing exploration probability by examining changes in fitness to achieve a balance between exploration and exploitation. Finally, the exploration capability of BOA is enhanced by incorporating the Newton–Raphson-based optimizer (NRBO) to help BOA avoid local optima traps. The optimization performance of BOANRBO is evaluated on 65 standard benchmark functions from CEC-2005, CEC-2017, and CEC-2022, and the obtained optimization results are compared with the performance of 17 other well-known algorithms. Simulation results indicate that in the 12 test functions of CEC-2022, the BOANRBO algorithm achieved 8 optimal results (66.7%). In CEC-2017, out of 30 test functions, it obtained 27 optimal results (90%). In CEC-2005, among 23 test functions, it secured 22 optimal results (95.6%). Additionally, experiments have validated the algorithm’s practicality and superior performance in 5 engineering design optimization problems and 2 real-world problems.

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基于对立学习的蝴蝶和牛顿-拉夫逊混合群智能算法
针对蝶式优化算法(BOA)中存在的局部最优陷阱、收敛速度慢、优化精度低等问题,本文提出了一种基于对立学习的蝶式和牛顿-拉夫逊混合群智能算法(BOANRBO)。首先,通过基于对立面的学习,改进了蝴蝶算法的初始化策略,加快了收敛速度。其次,在原有的蝶式算法中引入自适应感知模态因子,通过调整因子α控制调整率,增强算法的全局搜索能力。然后,根据算法的运行时间动态调整探索概率(p\),通过考察适合度的变化来增加或减少探索概率,从而实现探索和利用之间的平衡。最后,通过加入基于牛顿-拉弗森的优化器(NRBO)来增强 BOA 的探索能力,帮助 BOA 避免局部最优陷阱。在 CEC-2005、CEC-2017 和 CEC-2022 中的 65 个标准基准函数上评估了 BOANRBO 的优化性能,并将所获得的优化结果与其他 17 种著名算法的性能进行了比较。仿真结果表明,在 CEC-2022 的 12 个测试函数中,BOANRBO 算法取得了 8 个最优结果(66.7%)。在 CEC-2017 中,在 30 个测试功能中,BOANRBO 算法获得了 27 个最优结果(90%)。在 CEC-2005 中,在 23 个测试功能中,它获得了 22 个最佳结果(95.6%)。此外,实验还验证了该算法在 5 个工程设计优化问题和 2 个实际问题中的实用性和优越性能。
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