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DVFS-Based Long-Term Task Scheduling for Dual-Channel Solar-Powered Sensor Nodes

机译:基于DVFS的双通道太阳能传感器节点的长期任务调度

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Solar-powered sensor nodes (SCSNs) with energy storages have the greatest potential and are widely used in the coming era of the Internet of Things, since they avoid tedious battery maintenance tasks. However, because the solar energy source is unstable and limited, the sensor nodes suffer from high deadline miss ratio (DMR). To achieve better DMR, the existing scheduling algorithms find the best scheduling scheme in a single period of the recurring task queue and, hence, ignore the long-term performance. To tackle this challenge, this paper proposes a three-level dynamic voltage-frequency scaling (DVFS)-based scheduling strategy to minimize long-term DMR for dual-channel SCSNs. This approach includes a day-level scheduler to achieve a coarse-grained task arrangement, two artificial neural networks to determine the task priorities, and a DVFS-based task selection algorithm for slot-level execution. Experiments show that the proposed scheduler reduces DMR by over 30% on average.
机译:具有能量存储功能的太阳能传感器节点(SCSN)具有最大的潜力,并在即将到来的物联网时代得到广泛使用,因为它们避免了繁琐的电池维护任务。然而,由于太阳能源不稳定且受限制,所以传感器节点遭受高截止期限未命中率(DMR)的困扰。为了获得更好的DMR,现有的调度算法在周期性任务队列的单个周期中找到最佳的调度方案,因此忽略了长期性能。为了解决这一挑战,本文提出了一种基于三级动态电压频率缩放(DVFS)的调度策略,以最小化双通道SCSN的长期DMR。该方法包括实现粗粒度任务安排的日级调度程序,两个用于确定任务优先级的人工神经网络以及用于插槽级执行的基于DVFS的任务选择算法。实验表明,提出的调度程序平均可将DMR降低30%以上。

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