Solving multiprocessor scheduling problem using multi-objective mean field annealing

Nasser Lotfi, A. Acan
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引用次数: 4

Abstract

Multiprocessor scheduling problem is one of the most important issues regarding to parallel programming and distributed system environments. Multiprocessor scheduling is known as a NP-hard problem, hence, applying an exact solution method is not recommended at all. Single-objective type of multiprocessor scheduling problem has already been solved by evolutionary algorithms like genetic algorithms, ant colony optimization, particle swarm optimization, mean field annealing and so on. This paper presents a mean field annealing approach for solving the multi-objective type of this problem. We introduce multi-objective multiprocessor scheduling problem with three objectives and then solve it using mean field annealing approach. Finally, the proposed algorithm is tested over some benchmarks and its effectiveness is compared to NSGA2 and MOGA algorithms. Obtained results show that mean field annealing method leads better Pareto fronts within reasonable computation times.
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用多目标平均场退火法求解多处理机调度问题
多处理器调度问题是并行编程和分布式系统环境中最重要的问题之一。多处理器调度被称为np困难问题,因此根本不建议使用精确解方法。单目标型多处理器调度问题已经被遗传算法、蚁群算法、粒子群算法、平均场退火等进化算法解决。本文提出了一种求解多目标型这类问题的平均场退火方法。介绍了具有三个目标的多目标多处理机调度问题,并采用平均场退火法求解。最后,对该算法进行了基准测试,并与NSGA2和MOGA算法进行了有效性比较。结果表明,平均场退火法在合理的计算时间内得到了较好的Pareto前沿。
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