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Intelligent discrete particle swarm optimization for multiprocessor task scheduling problem

机译:智能离散粒子群算法求解多处理器任务调度问题

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Discrete particle swarm optimization is one of the most recently developed population-based meta-heuristic optimization algorithm in swarm intelligence that can be used in any discrete optimization problems. This article presents a discrete particle swarm optimization algorithm to efficiently schedule the tasks in the heterogeneous multiprocessor systems. All the optimization algorithms share a common algorithmic step, namely population initialization. It plays a significant role because it can affect the convergence speed and also the quality of the final solution. The random initialization is the most commonly used method in majority of the evolutionary algorithms to generate solutions in the initial population. The initial good quality solutions can facilitate the algorithm to locate the optimal solution or else it may prevent the algorithm from finding the optimal solution. Intelligence should be incorporated to generate the initial population in order to avoid the premature convergence. This article presents a discrete particle swarm optimization algorithm, which incorporates opposition-based technique to generate initial population and greedy algorithm to balance the load of the processors. Make span, flow time, and reliability cost are three different measures used to evaluate the efficiency of the proposed discrete particle swarm optimization algorithm for scheduling independent tasks in distributed systems. Computational simulations are done based on a set of benchmark instances to assess the performance of the proposed algorithm.
机译:离散粒子群优化算法是群智能中最新开发的基于种群的元启发式优化算法之一,可用于任何离散优化问题。本文提出了一种离散粒子群优化算法,可以有效地调度异构多处理器系统中的任务。所有优化算法都共享一个通用算法步骤,即种群初始化。它起着重要作用,因为它会影响收敛速度以及最终解决方案的质量。在大多数进化算法中,随机初始化是最常用的方法,用于在初始种群中生成解。初始的优质解决方案可以帮助算法找到最佳解决方案,否则可能阻止算法找到最佳解决方案。应该合并情报以产生初始种群,以避免过早的收敛。本文提出了一种离散粒子群优化算法,该算法结合了基于对立的技术来生成初始种群和贪婪算法,以平衡处理器的负载。使跨度,流动时间和可靠性成本是用于评估所提出的离散粒子群优化算法在分布式系统中调度独立任务的效率的三种不同方法。基于一组基准实例进行计算仿真,以评估所提出算法的性能。

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