Adaptive scheduling of real-time systems cosupplied by renewable and nonrenewable energy sources

M. Mohaqeqi, M. Kargahi, Maryam Dehghan
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引用次数: 3

Abstract

Energy management is an important issue in today's real-time systems due to the high costs of energy supplying. Using renewable, like wave, wind, and solar energy sources seem promising methods to address this issue. However, because of the existing contrast between the critical nature of hard real-time systems and the unpredictable nature of renewable energies, some supplementary energy source like electricity grid or battery is needed. In this paper, we consider hard real-time systems with two renewable and nonrenewable energy sources. In order to reduce the costs, we present two dynamic voltage scaling controllers to minimize the energy attained from the latter source. In order to handle variations of the environmental energy and workload, the model predictive control approach is employed. One nonlinear approach beside one fast linear piecewise affine explicit controller are proposed. The efficacies of the proposed approaches have been investigated through extensive simulations. Comparisons to an ideal clairvoyant controller as a baseline show that, in the studied scenarios, the proposed controllers guarantee at least 78% of the baseline performance.
可再生能源和不可再生能源共供实时系统的自适应调度
由于能源供应的高成本,能源管理是当今实时系统中的一个重要问题。使用可再生能源,如海浪、风能和太阳能,似乎是解决这个问题的有希望的方法。然而,由于硬实时系统的临界性质与可再生能源的不可预测性质之间存在着对比,因此需要一些补充能源,如电网或电池。本文考虑具有两种可再生能源和不可再生能源的硬实时系统。为了降低成本,我们提出了两个动态电压缩放控制器,以尽量减少从后者获得的能量。为了处理环境能量和工作量的变化,采用了模型预测控制方法。在快速线性分段仿射显式控制器的基础上,提出了一种非线性控制方法。通过大量的仿真研究了所提出方法的有效性。与理想的千里眼控制器作为基准的比较表明,在所研究的场景中,所提出的控制器保证了至少78%的基准性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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