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A neural networks based approach for the real-time scheduling of reconfigurable embedded systems with minimization of power consumption

机译:基于神经网络的可重构嵌入式系统实时调度方法,功耗最小

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While most embedded systems are designed for real-time applications, they suffer from resource constraints. Many techniques have been proposed for real-time task scheduling to reduce energy consumption. A combination of Dynamic Voltage Scaling (DVS) and feedback scheduling can be used to scale dynamically the frequency by adjusting the operating voltage, and to improve the run-time reliability of embedded systems. We present in this paper a novel hybrid contribution that handles real-time scheduling of embedded systems and low power consumption based on the combination of DVS and Neural Feedback Scheduling NFS with the priority-energy earliest-deadline-first (PEDF) algorithm.
机译:虽然大多数嵌入式系统是为实时应用程序设计的,但它们受到资源限制。已经提出了许多用于实时任务调度以减少能量消耗的技术。动态电压缩放(DVS)和反馈调度的组合可用于通过调整工作电压来动态缩放频率,并提高嵌入式系统的运行时可靠性。我们在本文中提出了一种新颖的混合动力解决方案,它基于DVS和神经反馈调度NFS与优先能量最早截止时间优先(PEDF)算法的结合,可处理嵌入式系统的实时调度和低功耗。

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