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Multiprocessor task scheduling problem using hybrid discrete particle swarm optimization

机译:混合离散粒子群算法的多处理器任务调度问题

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Task Scheduling is a complex combinatorial optimization problem and known to be an NP hard. It is an important challenging issue in multiprocessor computing systems. Discrete Particle Swarm Optimization (DPSO) is a newly developed swarm intelligence technique for solving discrete optimization problems efficiently.In DPSO, each particle should limit its communication with the previous best solution and the best solutions of its neighbors. This learning restriction may reduce the diversity of the algorithm and also the possibility of occurring premature convergence problem. In order to address these issues, the proposed workpresents a hybrid version of DPSO which is a combination of DPSO and Cyber Swarm Algorithm (CSA). The efficiency of the proposed algorithm is evaluated based on a set of benchmark instances and the performance criteria such as makespan, mean flow time and reliability cost.
机译:任务调度是一个复杂的组合优化问题,被称为NP难题。在多处理器计算系统中,这是一个重要的挑战性问题。离散粒子群优化算法(DPSO)是一种新开发的群体智能技术,可以有效地解决离散优化问题。在DPSO中,每个粒子都应将其通信限制在以前的最佳解决方案及其邻居的最佳解决方案中。这种学习限制可能会减少算法的多样性,还会降低发生过早收敛问题的可能性。为了解决这些问题,建议的工作提出了DPSO的混合版本,它是DPSO和网络群算法(CSA)的组合。基于一组基准实例和性能标准(如制造期,平均流动时间和可靠性成本)评估所提出算法的效率。

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