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Predictive Power Management for Wind Powered Wireless Sensor Node

机译:风力无线传感器节点的预测电源管理

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A conventional Wireless Sensor Network (WSN) cannot have an infinite lifetime without a battery recharge or replacement. Energy Harvesting (EH), from environmental energy sources, is a promising technology to provide sustainable powering for a WSN. In this paper, we propose and investigate a novel predictive energy management framework that combines the Maximal Power Transferring Tracking (MPTT) algorithm, a predictive energy allocation strategy, and a high efficiency transmission power control mechanism: First, the MPTT optimal working point guarantees minimum power loss of the EH-WSN system; Then, by exactly predicting the upcoming available energy, the power allocation strategy regulates EH-nodes’ duty cycle accurately to minimize the power failure time; Ultimately, the transmission power control module further improves energy efficiency by dynamically selecting the optimum matching transmission power level with minimum energy consumption. A wind energy powered wireless sensor system has been equipped and tested to validate the effectiveness of the proposed scheme. Results indicate that compared with other predictive energy managers, the proposed mechanism incurs relatively low power failure time while maintaining a high-energy conversion rate.
机译:如果不对电池进行充电或更换,传统的无线传感器网络(WSN)不可能拥有无限的使用寿命。来自环境能源的能量收集(EH)是一种有前途的技术,可以为WSN提供可持续的电力供应。在本文中,我们提出并研究了一种新颖的预测能量管理框架,该框架结合了最大功率传输跟踪(MPTT)算法,预测能量分配策略和高效传输功率控制机制:首先,MPTT最佳工作点可确保最小EH-WSN系统的功率损耗;然后,通过精确地预测即将到来的可用能量,功率分配策略可以准确地调节EH节点的占空比,以最大程度地减少断电时间;最终,发射功率控制模块通过动态选择具有最小能耗的最佳匹配发射功率水平,进一步提高了能源效率。已安装并测试了由风能驱动的无线传感器系统,以验证所提出方案的有效性。结果表明,与其他预测能量管理器相比,该机制在维持高能量转换率的同时,导致停电时间相对较短。

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