Task scheduling in cloud computing systems using multi-objective honey badger algorithm with two hybrid elite frameworks and circular segmentation screening

IF 10.7 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Si-Wen Zhang, Jie-Sheng Wang, Shi-Hui Zhang, Yu-Xuan Xing, Xiao-Fei Sui, Yun-Hao Zhang
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Abstract

In cloud computing environment, task scheduling is the most critical problem to be solved. Two different multi-objective honey badger algorithms (MOHBA-I and MOHBA-II) based on hybrid elitist framework and circular segmentation screening are proposed for the multi-objective problem of task scheduling optimization in cloud computing systems. MOHBA-I and MOHBA-II combine the grid indexing mechanism and decomposition technique, respectively, to select better populations based on elite non-dominated sorting. A circular segmentation screening mechanism was proposed to retain the superior individuals when the regional density is too high to further maintain the diversity of the populations, and attach an external archive to preserve the uniformly diversified Pareto decomposition set. The performance of the proposed algorithms is verified by using test functions. MOHBA-I and MOHBA-II achieve the first and third rankings, respectively, compared to other classical multi-objective algorithms. Solve the cloud computing task scheduling problem using time, load and price cost as metrics, test for different task sizes, and compare MOHBA-I with algorithms such as NSGA-III, MOPSO and MOEA/D in the same experimental environment. When facing a large-scale task, MOHBA-I ranks first in HyperVolume value with 2.4449E−02 for two objectives and 9.2950E−03 for three objectives. The experimental results show that MOHBA-I finds the highest number of solutions with better convergence and coverage, obtaining a satisfactory Pareto front, which can provide more and better choices for decision makers.

在云计算系统中使用多目标蜜獾算法与两种混合精英框架和循环分割筛选进行任务调度
在云计算环境中,任务调度是最亟待解决的问题。针对云计算系统中任务调度优化的多目标问题,提出了基于混合精英框架和循环分割筛选的两种不同的多目标蜜獾算法(MOHBA-I 和 MOHBA-II)。MOHBA-I 和 MOHBA-II 分别结合了网格索引机制和分解技术,在精英非支配排序的基础上选择更好的种群。为了进一步保持种群的多样性,提出了一种循环分割筛选机制,在区域密度过高时保留优秀个体,并附加外部存档以保留均匀多样化的帕累托分解集。所提算法的性能通过测试函数得到了验证。与其他经典多目标算法相比,MOHBA-I 和 MOHBA-II 分别获得了第一和第三的排名。以时间、负载和价格成本为指标求解云计算任务调度问题,针对不同的任务规模进行测试,并在相同的实验环境中将MOHBA-I与NSGA-III、MOPSO和MOEA/D等算法进行比较。面对大规模任务时,MOHBA-I 的 HyperVolume 值在两个目标下为 2.4449E-02,在三个目标下为 9.2950E-03,排名第一。实验结果表明,MOHBA-I 找到的解数量最多,具有更好的收敛性和覆盖性,获得了令人满意的帕累托前沿,可以为决策者提供更多更好的选择。
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来源期刊
Artificial Intelligence Review
Artificial Intelligence Review 工程技术-计算机:人工智能
CiteScore
22.00
自引率
3.30%
发文量
194
审稿时长
5.3 months
期刊介绍: Artificial Intelligence Review, a fully open access journal, publishes cutting-edge research in artificial intelligence and cognitive science. It features critical evaluations of applications, techniques, and algorithms, providing a platform for both researchers and application developers. The journal includes refereed survey and tutorial articles, along with reviews and commentary on significant developments in the field.
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