Estimating Low-Power Radio Signal Attenuation in Forests: A LiDAR-Based Approach

Silvia Demetri, G. Picco, L. Bruzzone
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引用次数: 10

Abstract

Wireless sensor networks offer unprecedented opportunities to monitor natural ecosystems. However, despite the growing number of applications (e.g., Forest fire detection, wildlife monitoring), the deployment challenges posed by the real-world natural environment still hinder the widespread adoption of this technology. In particular, the unpredictability of the low-power wireless channel in the presence of vegetation requires costly trial-and-error pilot campaigns to understand where and how to place the wireless nodes. In this paper, we propose a technique based on remote sensing for accurately estimating low-power radio signal attenuation in forest environments. We leverage airborne Light Detection and Ranging (LiDAR) instruments and related automatic data analysis systems to determine local forest attributes (e.g., Tree density) that, once factored into a specialized radio path loss model, enable accurate estimation of the received signal power. Our approach is i) automatic, i.e., It does not require in-field campaigns, and ii) fine-grained, i.e., It enables per-link estimates. Our validation from deployments in a real forest shows that the error of our per-link estimates of the received signal power is around ± 6 dBm - the accuracy of RSSI readings from the radio transceiver.
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估算森林中低功率无线电信号衰减:基于激光雷达的方法
无线传感器网络为监测自然生态系统提供了前所未有的机会。然而,尽管应用越来越多(例如,森林火灾探测,野生动物监测),但现实世界自然环境带来的部署挑战仍然阻碍了该技术的广泛采用。特别是,在植被存在的情况下,低功耗无线信道的不可预测性需要昂贵的试错试验活动,以了解无线节点的位置和放置方式。本文提出了一种基于遥感的森林环境低功率无线电信号衰减精确估计技术。我们利用机载光探测和测距(LiDAR)仪器和相关的自动数据分析系统来确定当地森林属性(例如,树木密度),一旦将这些属性纳入专门的无线电路径损失模型,就可以准确估计接收到的信号功率。我们的方法是i)自动的,也就是说,它不需要现场活动,ii)细粒度的,也就是说,它支持每个链接的估计。我们在真实森林中部署的验证表明,我们对接收信号功率的每链路估计误差约为±6 dBm -无线电收发器RSSI读数的精度。
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