论文标题
PREPEM-L:无线电传播环境建模和学习,用于通信感知多机器人探索
PropEM-L: Radio Propagation Environment Modeling and Learning for Communication-Aware Multi-Robot Exploration
论文作者
论文摘要
对复杂,未知环境的多机器人探索受益于机器人间交流提供的协作与合作。准确的无线电信号强度预测可实现通信感知探索。忽略环境对信号传播的影响或依赖于先验地图的模型在未知的,沟通限制的环境中受到影响。在这项工作中,我们提出了传播环境建模和学习(PREPEM-L),该框架利用环境的实时传感器衍生的3D几何表示,以提取有关无线电和衰减壁/障碍之间的视线信息,以便准确预测接收的信号强度(RSS)。我们的数据驱动方法结合了众所周知的信号传播现象模型的优势(例如阴影,反射,衍射)和机器学习,并可以在线适应新环境。我们在一个具有地铁般的,像矿山和洞穴的特征的沟通环境中展示了Propem-L对六机器人团队的性能,该环境为2021年DARPA Suberranean挑战构建。我们的发现表明,在对数距离路径损耗模型中,PREPEM-L可以提高信号强度预测精度高达44%。
Multi-robot exploration of complex, unknown environments benefits from the collaboration and cooperation offered by inter-robot communication. Accurate radio signal strength prediction enables communication-aware exploration. Models which ignore the effect of the environment on signal propagation or rely on a priori maps suffer in unknown, communication-restricted (e.g. subterranean) environments. In this work, we present Propagation Environment Modeling and Learning (PropEM-L), a framework which leverages real-time sensor-derived 3D geometric representations of an environment to extract information about line of sight between radios and attenuating walls/obstacles in order to accurately predict received signal strength (RSS). Our data-driven approach combines the strengths of well-known models of signal propagation phenomena (e.g. shadowing, reflection, diffraction) and machine learning, and can adapt online to new environments. We demonstrate the performance of PropEM-L on a six-robot team in a communication-restricted environment with subway-like, mine-like, and cave-like characteristics, constructed for the 2021 DARPA Subterranean Challenge. Our findings indicate that PropEM-L can improve signal strength prediction accuracy by up to 44% over a log-distance path loss model.