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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >An intelligent approach for optimizing Energy consumption and Schedule length of Embedded multiprocessors
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An intelligent approach for optimizing Energy consumption and Schedule length of Embedded multiprocessors

机译:一种优化嵌入式多处理器能耗和调度长度的智能方法

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In contemporary and future embedded as well as high-performance microprocessors, power consumption is one of the most important design considerations. Because in current technologies, the dynamic power consumption dominates the static power consumption, voltage scaling is an effective technique to reduce the power consumption. In multiprocessor systems, an efficient scheduling of sequential and parallel tasks onto the processors is known to be NP-Hard problem. In this paper, the problem of minimizing schedule length with energy consumption constraint and the problem of minimizing energy consumption with schedule length constraint on homogeneous and heterogeneous multiprocessor computers through independent sequential and parallel tasks are proposed. These problems emphasize the tradeoff between power and performance and are defined such that the power-performance product is optimized by fixing one factor and minimizing the other and vice versa. The performances of the proposed algorithm with optimal solutions are validated using Discrete Particle Swarm Optimization (DPSO). The proposed algorithms achieve 47.5% of power savings and 45.5% of energy saving with 23.5% increased schedule length when the processors operate its maximum frequency.
机译:在当代和未来的嵌入式以及高性能微处理器中,功耗是最重要的设计考虑因素之一。因为在当前技术中,动态功耗主导着静态功耗,所以电压缩放是一种降低功耗的有效技术。在多处理器系统中,将顺序任务和并行任务有效调度到处理器上是NP-Hard问题。本文提出了通过独立的顺序任务和并行任务,在同构异构计算机和异构异构多处理器计算机上,以能耗约束最小化调度长度和以调度长度约束最小化能耗的问题。这些问题强调了功率和性能之间的折衷,并且通过定义一个因素并最小化另一个因素来优化功率性能产品,反之亦然。使用离散粒子群优化算法(DPSO)验证了所提出算法与最优解的性能。当处理器以其最大频率运行时,所提出的算法可实现47.5%的节能和45.5%的节能,调度长度增加23.5%。

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