Analysing and Improving Robustness of Predictive Energy Harvesting Systems

Naomi Stricker, L. Thiele
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引用次数: 10

Abstract

Internet of Things (IoT) systems can rely on energy harvesting to extend battery lifetimes or even to render batteries obsolete. Such systems employ an energy scheduler to optimize their behavior and thus performance by adapting the node operation. Predictive models of harvesting sources, which are inherently non-deterministic and consequently challenging to predict, are often necessary for the scheduler to optimize performance. Therefore the accuracy of the predictive model inevitably impacts the scheduler and system performance. This fact has been largely overlooked in the vast amount of available results on energy management systems. We define a novel robustness metric for energy-harvesting systems that describes the effect prediction errors have on the system performance. Furthermore, we show that if a scheduler is optimal when predictions are accurate, it is not very robust. Thus there is a tradeoff between robustness and performance. We propose a prediction scaling method to improve a system's robustness and demonstrate the results using energy harvesting data sets from both outdoor and indoor scenarios. The method improves a non-robust system's performance by up to 75 times in a real-world setting.
预测能量收集系统鲁棒性分析与改进
物联网(IoT)系统可以依靠能量收集来延长电池寿命,甚至使电池过时。这样的系统采用一个能量调度器来优化它们的行为,从而通过调整节点操作来优化性能。收获源的预测模型本质上是不确定的,因此很难预测,这通常是调度器优化性能所必需的。因此,预测模型的准确性不可避免地影响调度程序和系统性能。在能源管理系统的大量可用结果中,这一事实在很大程度上被忽视了。我们为能量收集系统定义了一个新的鲁棒性度量来描述预测误差对系统性能的影响。此外,我们还表明,如果在预测准确时调度程序是最优的,那么它就不是非常健壮。因此,在健壮性和性能之间存在权衡。我们提出了一种预测缩放方法来提高系统的鲁棒性,并使用来自室外和室内场景的能量收集数据集来演示结果。在实际环境中,该方法将非鲁棒系统的性能提高了75倍。
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