受北极狐生存策略启发的新型优化算法

IF 0.9 4区 数学 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Journal of Combinatorial Optimization Pub Date : 2024-11-14 DOI:10.1007/s10878-024-01233-8
E. Subha, V. Jothi Prakash, S. Arul Antran Vijay
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引用次数: 0

摘要

在优化算法领域,受自然启发的技术因其适应性和解决问题的能力而备受关注。这项研究介绍了北极狐算法(AFA),这是一种创新的优化技术,其灵感来自北极狐的适应性生存策略,专为在动态和复杂的优化环境中发挥出色作用而设计。结合梯度流动力学、随机微分方程和概率分布,AFA 能够动态调整搜索策略,增强探索和开发能力。通过对一组 25 个基准函数的严格评估,AFA 始终优于现有算法,尤其是在涉及高维和多模式问题的情况下,表现出更快的收敛速度和更高的解决方案质量。将 AFA 应用于实际问题(包括风电场布局优化和金融投资组合优化)时,与传统方法相比,AFA 能够将能源产出提高 15%,将投资组合夏普比率提高 20%。这些结果展示了 AFA 作为复杂优化任务的强大工具的潜力,为今后重点完善其自适应性机制和探索更广泛应用的研究铺平了道路。
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A novel arctic fox survival strategy inspired optimization algorithm

In the field of optimization algorithms, nature-inspired techniques have garnered attention for their adaptability and problem-solving prowess. This research introduces the Arctic Fox Algorithm (AFA), an innovative optimization technique inspired by the adaptive survival strategies of the Arctic fox, designed to excel in dynamic and complex optimization landscapes. Incorporating gradient flow dynamics, stochastic differential equations, and probability distributions, AFA is equipped to adjust its search strategies dynamically, enhancing both exploration and exploitation capabilities. Through rigorous evaluation on a set of 25 benchmark functions, AFA consistently outperformed established algorithms particularly in scenarios involving high-dimensional and multi-modal problems, demonstrating faster convergence and improved solution quality. Application of AFA to real-world problems, including wind farm layout optimization and financial portfolio optimization, highlighted its ability to increase energy outputs by up to 15% and improve portfolio Sharpe ratios by 20% compared to conventional methods. These results showcase AFA’s potential as a robust tool for complex optimization tasks, paving the way for future research focused on refining its adaptive mechanisms and exploring broader applications.

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来源期刊
Journal of Combinatorial Optimization
Journal of Combinatorial Optimization 数学-计算机:跨学科应用
CiteScore
2.00
自引率
10.00%
发文量
83
审稿时长
6 months
期刊介绍: The objective of Journal of Combinatorial Optimization is to advance and promote the theory and applications of combinatorial optimization, which is an area of research at the intersection of applied mathematics, computer science, and operations research and which overlaps with many other areas such as computation complexity, computational biology, VLSI design, communication networks, and management science. It includes complexity analysis and algorithm design for combinatorial optimization problems, numerical experiments and problem discovery with applications in science and engineering. The Journal of Combinatorial Optimization publishes refereed papers dealing with all theoretical, computational and applied aspects of combinatorial optimization. It also publishes reviews of appropriate books and special issues of journals.
期刊最新文献
Enhanced deterministic approximation algorithm for non-monotone submodular maximization under knapsack constraint with linear query complexity A novel arctic fox survival strategy inspired optimization algorithm Dynamic time window based full-view coverage maximization in CSNs Different due-window assignment scheduling with deterioration effects An upper bound for neighbor-connectivity of graphs
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