HTSA: A novel hybrid task scheduling algorithm for heterogeneous cloud computing environment

IF 3.5 2区 计算机科学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Simulation Modelling Practice and Theory Pub Date : 2024-08-30 DOI:10.1016/j.simpat.2024.103014
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Abstract

Cloud computing provides users and programs with scalable resources and on-demand services virtually in real time, making it a fundamental paradigm in modern computing. The concept for using remote computing resources is novel. Cloud computing relies on task scheduling to boost system performance, reduce execution time, and optimize resource use. Due to exponential task increase and problem complexity, the search space is huge. Optimization tasks like this are NP-hard. This work aims to find a near-optimal solution for a multi-objective task scheduling problem in the cloud while lowering search time. Using the Genetic Algorithm (GA) and Gravitational Search Algorithms (GSA) benefits while avoiding their drawbacks, we offer a standard cloud computing task scheduling method to improve system performance and optimize the Quality of service (QoS) parameters like energy, makespan, resource utilization and throughput. We use CloudSim to test standard functions, real-time, and synthetic workloads. The obtained results are compared to other similar, metaheuristic-based techniques that were evaluated under the same conditions. The designed technique outperforms Gravitational Search Algorithms (GSA), Ant Colony Optimization(ACO), and Particle Swarm optimization(PSO) in Degree Of Imbalance (12%), resource utilization (9%), Mean Response Time (7%) and energy consumption (6%).

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HTSA:适用于异构云计算环境的新型混合任务调度算法
云计算为用户和程序实时提供可扩展的资源和按需服务,使其成为现代计算的基本模式。使用远程计算资源的概念非常新颖。云计算依靠任务调度来提高系统性能、缩短执行时间并优化资源使用。由于任务呈指数增长,问题复杂,搜索空间巨大。类似这样的优化任务很难完成。本研究旨在为云计算中的多目标任务调度问题找到接近最优的解决方案,同时缩短搜索时间。利用遗传算法(GA)和引力搜索算法(GSA)的优点,同时避免它们的缺点,我们提供了一种标准的云计算任务调度方法,以提高系统性能并优化服务质量(QoS)参数,如能量、工期、资源利用率和吞吐量。我们使用 CloudSim 测试标准功能、实时和合成工作负载。获得的结果与在相同条件下评估的其他类似的基于元启发式的技术进行了比较。所设计的技术在失衡度(12%)、资源利用率(9%)、平均响应时间(7%)和能耗(6%)方面优于引力搜索算法(GSA)、蚁群优化(ACO)和粒子群优化(PSO)。
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来源期刊
Simulation Modelling Practice and Theory
Simulation Modelling Practice and Theory 工程技术-计算机:跨学科应用
CiteScore
9.80
自引率
4.80%
发文量
142
审稿时长
21 days
期刊介绍: The journal Simulation Modelling Practice and Theory provides a forum for original, high-quality papers dealing with any aspect of systems simulation and modelling. The journal aims at being a reference and a powerful tool to all those professionally active and/or interested in the methods and applications of simulation. Submitted papers will be peer reviewed and must significantly contribute to modelling and simulation in general or use modelling and simulation in application areas. Paper submission is solicited on: • theoretical aspects of modelling and simulation including formal modelling, model-checking, random number generators, sensitivity analysis, variance reduction techniques, experimental design, meta-modelling, methods and algorithms for validation and verification, selection and comparison procedures etc.; • methodology and application of modelling and simulation in any area, including computer systems, networks, real-time and embedded systems, mobile and intelligent agents, manufacturing and transportation systems, management, engineering, biomedical engineering, economics, ecology and environment, education, transaction handling, etc.; • simulation languages and environments including those, specific to distributed computing, grid computing, high performance computers or computer networks, etc.; • distributed and real-time simulation, simulation interoperability; • tools for high performance computing simulation, including dedicated architectures and parallel computing.
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