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首页> 外文期刊>Journal of Parallel and Distributed Computing >A multi-staged niched evolutionary approach for allocating parallel tasks with joint optimization of performance, energy, and temperature
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A multi-staged niched evolutionary approach for allocating parallel tasks with joint optimization of performance, energy, and temperature

机译:通过联合优化性能,能量和温度来分配并行任务的多阶段利基演化方法

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This paper presents a multi-stage multi-objective evolutionary approach (MS-MOEA) for allocating parallel computations on multi-core processors by joint optimizing performance (P), energy (E), and temperature (T). Evolutionary techniques have been shown to be effective for solving optimization problems, including our own previous work on solving the PET-optimized scheduling (PETOS) problem. There have long been a great many debates and rivalries between various evolutionary approaches, such as the SPEA or NSGA, with regard to their relative matters. The novelty of the proposed MS-MOEA approach is its amalgamation of the basic evolutionary algorithms that are already shown to be highly effective, thereby creating a niche of these techniques. The niche takes advantages of the strengths of each baseline technique for achieving additional enhancement in the precision of the optimization. We propose six multi-stage hybrids, each designed with either niched fitness assignment strategy, or combining populations from multiple MOEAs, or incorporating the problem knowledge into the conventional technique. The experimental results measure the quality of resulting Pareto fronts and demonstrate that the proposed MS-MOEAs yield better optimization for the PETOS problem in achieving three-objective in parallel task-to-core mapping. (C) 2019 Elsevier Inc. All rights reserved.
机译:本文提出了一种多阶段多目标进化方法(MS-MOEA),用于通过联合优化性能(P),能量(E)和温度(T)在多核处理器上分配并行计算。进化技术已被证明对于解决优化问题是有效的,包括我们自己先前解决PET优化调度(PETOS)问题的工作。长期以来,在诸如SPEA或NSGA之类的各种进化方法之间,就它们的相对问题进行了许多辩论和竞争。提出的MS-MOEA方法的新颖之处在于它融合了已经被证明是非常有效的基本进化算法,从而创造了这些技术的利基市场。利基市场利用每种基准技术的优势来实现优化精度的进一步提高。我们提出了六个多阶段混合动力系统,每个混合动力系统都采用适当的适应性分配策略,或者结合来自多个MOEA的群体,或者将问题知识整合到常规技术中。实验结果衡量了所得帕累托前沿的质量,并证明了提出的MS-MOEA在实现三目标并行任务到核心映射时,可以更好地优化PETOS问题。 (C)2019 Elsevier Inc.保留所有权利。

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