The Ebola virus and the disease in effect tend to randomly move individuals in the population around susceptible, infected, quarantined, hospitalized, recovered, and dead sub-population. Motivated by the effectiveness in propagating the disease through the virus, a new bio-inspired and population-based optimization algorithm is proposed. This paper presents a novel metaheuristic algorithm named Ebola optimization algorithm (EOSA). To correctly achieve this, this study models the propagation mechanism of the Ebola virus disease, emphasising all consistent states of the propagation. The model was further represented using a mathematical model based on first-order differential equations. After that, the combined propagation and mathematical models were adapted for developing the new metaheuristic algorithm. To evaluate the proposed method's performance and capability compared with other optimization methods, the underlying propagation and mathematical models were first investigated to determine how they successfully simulate the EVD. Furthermore, two sets of benchmark functions consisting of forty-seven (47) classical and over thirty (30) constrained IEEE CEC-2017 benchmark functions are investigated numerically. The results indicate that the performance of the proposed algorithm is competitive with other state-of-the-art optimization methods based on scalability analysis, convergence analysis, and sensitivity analysis. Extensive simulation results indicate that the EOSA outperforms other state-of-the-art popular metaheuristic optimization algorithms such as the Particle Swarm Optimization Algorithm (PSO), Genetic Algorithm (GA), and Artificial Bee Colony Algorithm (ABC) on some shifted, high dimensional and large search range problems.
翻译:为了正确实现这一点,埃博拉病毒和事实上的疾病倾向于随机地将人口中的个人围绕易感染、感染、隔离、住院、康复和死亡的亚群人口转移。受通过病毒传播该疾病的有效性的驱动,提出了一个新的生物激励和基于人口的优化算法。本文介绍了名为埃博拉优化算法(EOSA)的新型计量算法。为正确实现这一点,本研究模拟了埃博拉病毒疾病传播机制,强调了所有一致的传播状态。模型还使用了基于一级差异方程式的数学模型。随后,对混合的传播和数学模型进行了调整,以开发新的计量经济学算法。为了评估拟议方法的性能和能力,与其他优化方法相比,首先对基本传播和数学模型进行了调查,以确定它们如何成功模拟EVD。此外,对47个(47个经典和30个以上)埃博拉病毒传播基准功能进行了定量调查。对IEEE CEC-2017基准功能进行了进一步调查。结果显示,拟议的计算法的性能与其他州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-级-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-州-