Herrería-Alonso Sergio, Suárez-González Andrés, Rodríguez-Pérez Miguel, Rodríguez-Rubio Raúl F, López-García Cándido
AtlanTTic, Universidade de Vigo, 36310 Vigo, Spain.
Sensors (Basel). 2021 Feb 2;21(3):983. doi: 10.3390/s21030983.
Wind energy harvesting technology is one of the most popular power sources for wireless sensor networks. However, given its irregular nature, wind energy availability experiences significant variations and, therefore, wind-powered devices need reliable forecasting models to effectively adjust their energy consumption to the dynamics of energy harvesting. On the other hand, resource-constrained devices with limited hardware capacities (such as sensor nodes) must resort to forecasting schemes of low complexity for their predictions in order to avoid squandering their scarce power and computing capabilities. In this paper, we present a new efficient ARIMA-based forecasting model for predicting wind speed at short-term horizons. The performance results obtained using real data sets show that the proposed ARIMA model can be an excellent choice for wind-powered sensor nodes due to its potential for achieving accurate enough predictions with very low computational burden and memory overhead. In addition, it is very simple to setup, since it can dynamically adapt to varying wind conditions and locations without requiring any particular reconfiguration or previous data training phase for each different scenario.
风能采集技术是无线传感器网络最常用的电源之一。然而,鉴于其不规则性,风能的可用性会有显著变化,因此,风力驱动设备需要可靠的预测模型,以便根据能量采集的动态变化有效地调整其能耗。另一方面,硬件能力有限的资源受限设备(如传感器节点)必须采用低复杂度的预测方案进行预测,以避免浪费其稀缺的电力和计算能力。在本文中,我们提出了一种基于自回归积分滑动平均(ARIMA)的高效新预测模型,用于短期风速预测。使用真实数据集获得的性能结果表明,所提出的ARIMA模型对于风力驱动的传感器节点可能是一个极佳的选择,因为它有潜力以非常低的计算负担和内存开销实现足够准确的预测。此外,它的设置非常简单,因为它可以动态适应不同的风力条件和位置,而无需针对每个不同场景进行任何特定的重新配置或先前的数据训练阶段。