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Multi-objective task allocation in distributed computing systems by hybrid particle swarm optimization

机译:混合粒子群算法在分布式计算系统中的多目标任务分配

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In a distributed computing system (I)CS), we need to allocate a number of modules to different processors for execution. It is desired to maximize the processor synergism in order to achieve various objectives, such as throughput maximization, reliability maximization, and cost minimization. There may also exist a set of system constraints related to memory and communication link capacity. The considered problem has been shown to be NP-hard. Most existing approaches for task allocation deal with a single objective only. This paper presents a multi-objective task allocation algorithm with presence of system constraints. The algorithm is based on the particle swarm optimization which is a new metaheuristic and has delivered many successful applications. We further devise a hybrid strategy for expediting the convergence process. We assess our algorithm by comparing to a genetic algorithm and a mathematical programming approach. The experimental results manifest that the proposed algorithm performs the best under different problem scales, task interaction densities, and network topologies. (C) 2006 Elsevier Inc. All rights reserved.
机译:在分布式计算系统(I)CS中,我们需要将多个模块分配给不同的处理器以执行。期望最大化处理器协同作用以实现各种目标,例如吞吐量最大化,可靠性最大化和成本最小化。还可能存在一组与内存和通信链路容量有关的系统约束。所考虑的问题已显示为NP难题。现有的大多数任务分配方法仅涉及单个目标。本文提出了一种具有系统约束的多目标任务分配算法。该算法基于粒子群优化,这是一种新的元启发式方法,已实现了许多成功的应用。我们进一步设计了一种混合策略来加快收敛过程。我们通过与遗传算法和数学编程方法进行比较来评估我们的算法。实验结果表明,该算法在不同的问题规模,任务交互密度和网络拓扑下表现最佳。 (C)2006 Elsevier Inc.保留所有权利。

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