LoRa networks have been deployed all over the world and are a major enabling wireless technology for the Internet of Things (IoT). Massive connectivity applications such as smart metering, agriculture, and supply chain \& logistics are most suitable for LoRa deployments due to their long range, low cost, and low power features. Meanwhile, energy harvesting technologies that extract energy from ambient sources have enabled the battery-less operation of many small wireless sensors. This paper studies the merger of these two technologies and mathematically models device and network performance using tools from stochastic geometry and Markov analysis. To that end, we derive the steady-state distribution of the capacitor voltage, the outage probability due to co-spreading factor interference at the LoRa gateway, and propose adaptive charging time schemes in order to mitigate energy outage events.
翻译:Lora网络已在世界各地部署,是用于物联网的主要赋能无线技术(IoT),大规模连通应用,如智能计量、农业和供应链物流等,由于其射程长、成本低、功率低,最适合LoRa的部署,同时,从环境源中提取能源的能源收集技术使许多小型无线传感器能够无电池运行,本文研究这两种技术与数学模型装置和网络性能的结合,利用随机几何和Markov分析工具。为此,我们得出电容器电压的稳定状态分布,以及洛拉网关因共同传播要素干扰而导致的耗竭概率,并提出适应性充电时间计划,以减轻能源耗耗耗耗耗事件。