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Improved Mutation-Based Particle Swarm Optimization for Load Balancing in Cloud Data Centers

机译:改进云数据中心负载平衡的基于突变的粒子群优化

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摘要

Load balancing techniques are a typical NP-hard problem. Currently, many researchers have solved load balancing problem by considering well-known metaheuristic techniques. However, these techniques suffer from one of these issues: premature convergence, poor convergence speed, initially selected random solutions, and stuck in local optima. To handle the issues associated with existing metaheuristic techniques, in this paper, a mutation-based particle swarm optimization based load balancing technique is proposed. The proposed technique has an ability to overcome several issues associated with existing techniques such as premature convergence, poor convergence speed, initially selected random solutions, and stuck in local optima issues. Also, multi-objective fitness function is designed as a minimization problem. Multi-objective fitness function considers energy consumption, makespan, and load imbalance rate parameters. The proposed technique outperforms existing load balancing techniques in terms of makespan, speedup, communication overheads, efficiency, utilization, mean gain time, load imbalance rate, and energy consumption.
机译:负载平衡技术是典型的NP难题问题。目前,许多研究人员通过考虑众所周知的成形技术来解决负载均衡问题。过早收敛,收敛速度差,最初选择随机的解决方案,并坚持在局部最优解:然而,这些技术从这些问题的一个困扰。为了处理与现有的成式技术相关的问题,提出了一种基于突变的粒子群群优化的负载平衡技术。该提出的技术能够克服与现有技术相关的几个问题,例如过早收敛,收敛速度差,最初选择的随机解决方案,并在本地最佳问题中陷入困境。此外,多目标健身功能被设计为最小化问题。多目标健身功能考虑能源消耗,MakEspan和负载不平衡率参数。所提出的技术在Mapespan,加速,通信开销,效率,利用率,平均增益时间,负载不平衡率和能量消耗方面优于现有负载平衡技术。

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