Froiz-Míguez Iván, Lopez-Iturri Peio, Fraga-Lamas Paula, Celaya-Echarri Mikel, Blanco-Novoa Óscar, Azpilicueta Leyre, Falcone Francisco, Fernández-Caramés Tiago M
Department of Computer Engineering, Faculty of Computer Science, Universidade da Coruña, 15071 A Coruña, Spain.
Centro de investigación CITIC, Universidade da Coruña, 15071 A Coruña, Spain.
Sensors (Basel). 2020 Nov 30;20(23):6865. doi: 10.3390/s20236865.
Climate change is driving new solutions to manage water more efficiently. Such solutions involve the development of smart irrigation systems where Internet of Things (IoT) nodes are deployed throughout large areas. In addition, in the mentioned areas, wireless communications can be difficult due to the presence of obstacles and metallic objects that block electromagnetic wave propagation totally or partially. This article details the development of a smart irrigation system able to cover large urban areas thanks to the use of Low-Power Wide-Area Network (LPWAN) sensor nodes based on LoRa and LoRaWAN. IoT nodes collect soil temperature/moisture and air temperature data, and control water supply autonomously, either by making use of fog computing gateways or by relying on remote commands sent from a cloud. Since the selection of IoT node and gateway locations is essential to have good connectivity and to reduce energy consumption, this article uses an in-house 3D-ray launching radio-planning tool to determine the best locations in real scenarios. Specifically, this paper provides details on the modeling of a university campus, which includes elements like buildings, roads, green areas, or vehicles. In such a scenario, simulations and empirical measurements were performed for two different testbeds: a LoRaWAN testbed that operates at 868 MHz and a testbed based on LoRa with 433 MHz transceivers. All the measurements agree with the simulation results, showing the impact of shadowing effects and material features (e.g., permittivity, conductivity) in the electromagnetic propagation of near-ground and underground LoRaWAN communications. Higher RF power levels are observed for 433 MHz due to the higher transmitted power level and the lower radio propagation losses, and even in the worst gateway location, the received power level is higher than the sensitivity threshold (-148 dBm). Regarding water consumption, the provided estimations indicate that the proposed smart irrigation system is able to reduce roughly 23% of the amount of used water just by considering weather forecasts. The obtained results provide useful guidelines for future smart irrigation developers and show the radio planning tool accuracy, which allows for optimizing the sensor network topology and the overall performance of the network in terms of coverage, cost, and energy consumption.
气候变化正在推动人们寻求新的解决方案,以更高效地管理水资源。此类解决方案涉及开发智能灌溉系统,在大面积区域部署物联网(IoT)节点。此外,在上述区域,由于存在障碍物和金属物体,会完全或部分阻挡电磁波传播,无线通信可能会变得困难。本文详细介绍了一种智能灌溉系统的开发,该系统借助基于LoRa和LoRaWAN的低功耗广域网(LPWAN)传感器节点,能够覆盖大型城市区域。物联网节点收集土壤温度/湿度和空气温度数据,并通过使用雾计算网关或依靠从云端发送的远程命令自主控制供水。由于物联网节点和网关位置的选择对于实现良好的连接性和降低能耗至关重要,本文使用了一种内部3D射线发射无线电规划工具来确定实际场景中的最佳位置。具体而言,本文详细介绍了大学校园的建模,其中包括建筑物、道路、绿地或车辆等元素。在这种场景下,针对两个不同的测试平台进行了模拟和实证测量:一个工作在868 MHz的LoRaWAN测试平台和一个基于433 MHz收发器的LoRa测试平台。所有测量结果均与模拟结果一致,显示了阴影效应和材料特性(如介电常数、电导率)对近地面和地下LoRaWAN通信电磁传播的影响。由于发射功率水平较高且无线电传播损耗较低,433 MHz的射频功率水平更高,即使在最差的网关位置,接收功率水平也高于灵敏度阈值(-148 dBm)。关于用水量,提供的估计表明,仅考虑天气预报,所提出的智能灌溉系统就能减少约23%的用水量。所获得的结果为未来智能灌溉开发者提供了有用的指导方针,并展示了无线电规划工具的准确性,该工具能够在覆盖范围、成本和能耗方面优化传感器网络拓扑和网络的整体性能。