Ahmed Faisal, Tamberg Gert, Le Moullec Yannick, Annus Paul
Thomas Johann Seebeck Department of Electronic, Tallinn University of Technology, Tallinn 12616, Estonia.
Department of Cybernetics, Tallinn University of Technology, Tallinn 12616, Estonia.
Sensors (Basel). 2017 Jul 20;17(7):1666. doi: 10.3390/s17071666.
Energy harvesting technologies such as miniature power solar panels and micro wind turbines are increasingly used to help power wireless sensor network nodes. However, a major drawback of energy harvesting is its varying and intermittent characteristic, which can negatively affect the quality of service. This calls for careful design and operation of the nodes, possibly by means of, e.g., dynamic duty cycling and/or dynamic frequency and voltage scaling. In this context, various energy prediction models have been proposed in the literature; however, they are typically compute-intensive or only suitable for a single type of energy source. In this paper, we propose Linear Energy Prediction "LINE-P", a lightweight, yet relatively accurate model based on approximation and sampling theory; LINE-P is suitable for dual-source energy harvesting. Simulations and comparisons against existing similar models have been conducted with low and medium resolutions (i.e., 60 and 22 min intervals/24 h) for the solar energy source (low variations) and with high resolutions (15 min intervals/24 h) for the wind energy source. The results show that the accuracy of the solar-based and wind-based predictions is up to approximately 98% and 96%, respectively, while requiring a lower complexity and memory than the other models. For the cases where LINE-P's accuracy is lower than that of other approaches, it still has the advantage of lower computing requirements, making it more suitable for embedded implementation, e.g., in wireless sensor network coordinator nodes or gateways.
诸如微型太阳能板和微型风力涡轮机等能量收集技术正越来越多地用于为无线传感器网络节点供电。然而,能量收集的一个主要缺点是其变化无常和间歇性的特性,这可能会对服务质量产生负面影响。这就需要对节点进行精心设计和操作,可能要借助动态占空比和/或动态频率与电压缩放等手段。在这种背景下,文献中已经提出了各种能量预测模型;然而,它们通常计算量很大,或者只适用于单一类型的能源。在本文中,我们提出了线性能量预测模型“LINE-P”,这是一种基于近似和采样理论的轻量级但相对准确的模型;LINE-P适用于双源能量收集。针对太阳能(变化较小),我们以低分辨率和中分辨率(即每24小时60分钟和22分钟间隔)进行了模拟,并与现有类似模型进行了比较,针对风能则以高分辨率(每24小时15分钟间隔)进行了模拟。结果表明,基于太阳能和基于风能的预测准确率分别高达约98%和96%,同时与其他模型相比,其复杂度和内存需求更低。对于LINE-P的准确率低于其他方法的情况,它仍然具有计算需求较低的优势,使其更适合嵌入式实现,例如在无线传感器网络协调器节点或网关中。