Coyote and Badger Optimization (CBO): A natural inspired meta-heuristic algorithm based on cooperative hunting

IF 3.4 2区 数学 Q1 MATHEMATICS, APPLIED
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引用次数: 0

Abstract

Optimization techniques play a pivotal role in refining problem-solving methods across various domains. These methods have demonstrated their efficacy in addressing real-world complexities. Continuous efforts are made to create and enhance techniques in the realm of research. This paper introduces a novel technique that distinguishes itself through its clarity, logical mathematical structure, and robust mathematical equations, particularly in the second phase. This study presents the development of a new metaheuristic algorithm named Coyote and Badger Optimization (CBO). CBO draws inspiration from the cooperative behaviors observed in honey badgers and coyotes, with a specific focus on their intriguing communication process. Utilizing the inherent traits of these animals, the proposed CBO algorithm offers an intuitive and effective solution for addressing engineering optimization challenges by providing the best fitness values. To validate CBO's effectiveness in real-time applications, complex engineering problems called pressure vessel design, feature selection in medical system, and tension-compression spring design are used as case studies for testing the proposed CBO compared to other recent algorithms. Additionally, ten benchmark functions and also statistical analysis methods (mean, standard deviation, confidence intervals, t-test, and Wilcoxon test) are used. Experimental results demonstrate that the CBO algorithm surpasses eleven recent algorithms when subjected to common ten benchmark functions. Additionally, CBO outperforms other recent eleven algorithms according to three different case studies. According to the ten benchmark functions (F1 to F10), CBO provides the minimum fitness values which are closed to the exact (standard) values; 0, 0, 0.003, 0.0002, -1.0316, 3.0058, 0.398, 0.02, 0.00076, and 0.000725 respectively. Related to statistical analysis, CBO provides the best mean, standard deviation, confidence intervals, t-test, and Wilcoxon test values. According to case studies, CBO provided the minimum cost value for pressure vessel design, the maximum accuracy value for feature selection, and the minimum cost value for spring design. Hence, CBO superiors other recent algorithms.

土狼和獾优化(CBO):基于合作狩猎的自然启发元启发式算法
优化技术在完善各个领域的问题解决方法方面发挥着举足轻重的作用。这些方法在解决现实世界的复杂问题方面已显示出其功效。在研究领域,人们一直在努力创造和改进优化技术。本文介绍了一种新颖的技术,它通过清晰的逻辑数学结构和稳健的数学方程(尤其是在第二阶段)脱颖而出。本研究介绍了一种名为 "土狼和獾优化"(CBO)的新型元启发式算法的开发过程。CBO 从观察到的蜜獾和郊狼的合作行为中汲取灵感,特别关注它们引人入胜的交流过程。利用这些动物的固有特性,拟议的 CBO 算法提供了一种直观有效的解决方案,通过提供最佳适应度值来应对工程优化挑战。为了验证 CBO 在实时应用中的有效性,我们将压力容器设计、医疗系统中的特征选择和拉伸压缩弹簧设计等复杂工程问题作为案例研究,与其他最新算法进行比较,以测试所提出的 CBO。此外,还使用了十个基准函数和统计分析方法(平均值、标准偏差、置信区间、t 检验和 Wilcoxon 检验)。实验结果表明,CBO 算法在使用常见的十种基准函数时,超越了最近的十一种算法。此外,根据三个不同的案例研究,CBO 算法优于其他 11 种最新算法。根据十个基准函数(F1 至 F10),CBO 提供的最小适配值分别为 0、0、0.003、0.0002、-1.0316、3.0058、0.398、0.02、0.00076 和 0.000725,均接近精确(标准)值。在统计分析方面,CBO 提供了最佳的平均值、标准差、置信区间、t 检验和 Wilcoxon 检验值。根据案例研究,CBO 为压力容器设计提供了最小成本值,为特征选择提供了最大精度值,为弹簧设计提供了最小成本值。因此,CBO 优于其他最新算法。
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来源期刊
Communications in Nonlinear Science and Numerical Simulation
Communications in Nonlinear Science and Numerical Simulation MATHEMATICS, APPLIED-MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
CiteScore
6.80
自引率
7.70%
发文量
378
审稿时长
78 days
期刊介绍: The journal publishes original research findings on experimental observation, mathematical modeling, theoretical analysis and numerical simulation, for more accurate description, better prediction or novel application, of nonlinear phenomena in science and engineering. It offers a venue for researchers to make rapid exchange of ideas and techniques in nonlinear science and complexity. The submission of manuscripts with cross-disciplinary approaches in nonlinear science and complexity is particularly encouraged. Topics of interest: Nonlinear differential or delay equations, Lie group analysis and asymptotic methods, Discontinuous systems, Fractals, Fractional calculus and dynamics, Nonlinear effects in quantum mechanics, Nonlinear stochastic processes, Experimental nonlinear science, Time-series and signal analysis, Computational methods and simulations in nonlinear science and engineering, Control of dynamical systems, Synchronization, Lyapunov analysis, High-dimensional chaos and turbulence, Chaos in Hamiltonian systems, Integrable systems and solitons, Collective behavior in many-body systems, Biological physics and networks, Nonlinear mechanical systems, Complex systems and complexity. No length limitation for contributions is set, but only concisely written manuscripts are published. Brief papers are published on the basis of Rapid Communications. Discussions of previously published papers are welcome.
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