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Hybrid intelligent algorithm [improved particle swarm optimization (PSO) with ant colony optimization (ACO)] for multiprocessor job scheduling

机译:用于多处理器作业调度的混合智能算法[带蚁群优化(ACO)的改进粒子群算法(PSO)]

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Efficient multiprocessor scheduling is essentially the problem of allocating a set of computational jobs to a set of processors to minimize the overall execution time. The main issue is how jobs are partitioned in which total finishing time and waiting time is minimized. Minimization of these two criteria simultaneously, is a multi objective optimization problem. There are many variations of this problem, most of which are NP-hard problem, so we must rely on heuristics to solve the problem instances. Many heuristic-based approaches have been applied to finding schedules that minimize the execution time of computing tasks on parallel processors. Particle swarm optimization (PSO) is currently employed in several optimization and search problems duetoits ease and ability to find solutions successfully. A variant of PSO, called as improved particle swarm optimization (ImPSO) has been developed in this paper and is hybridized with the ant colony optimization (ACO) to achieve better solutions. The proposed hybrid algorithm effectively exploits the capabilities of distributed and parallel computing of swarm intelligence approaches. In addition hybrid algorithm using improved particle swarm optimization (ImPSO) with artificial immune system (AIS) is also implemented for the same set of problems to compare with the proposed hybrid algorithm (ImPSO with ACO). Itwasobserved that the proposed hybrid approach (Improved PSO with ACO) gives better results in experiments and reduces finishing and waiting time simultaneously.
机译:有效的多处理器调度本质上是将一组计算作业分配给一组处理器以最小化总体执行时间的问题。主要问题是如何对作业进行分区,以使总整理时间和等待时间最小化。同时最小化这两个标准是一个多目标优化问题。此问题有很多变体,其中大多数是NP难题,因此我们必须依靠启发式方法来解决问题实例。许多基于启发式的方法已用于查找调度,以最大程度地减少并行处理器上计算任务的执行时间。由于粒子群优化(PSO)的简便性和成功找到解决方案的能力,它们目前被用于一些优化和搜索问题。本文开发了一种称为改进粒子群优化(ImPSO)的PSO变体,并将其与蚁群优化(ACO)杂交以获得更好的解决方案。提出的混合算法有效地利用了群体智能方法的分布式和并行计算能力。此外,针对同一组问题,还实现了使用带有人工免疫系统(AIS)的改进的粒子群算法(ImPSO)的混合算法,以与提出的混合算法(带有ACO的ImPSO)进行比较。观察到,提出的混合方法(使用ACO改进PSO)在实验中提供了更好的结果,同时减少了完成和等待时间。

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