Autonomous surface vessels (ASV) represent a promising technology to automate water-quality monitoring of lakes. In this work, we use satellite images as a coarse map and plan sampling routes for the robot. However, inconsistency between the satellite images and the actual lake, as well as environmental disturbances such as wind, aquatic vegetation, and changing water levels can make it difficult for robots to visit places suggested by the prior map. This paper presents a robust route-planning algorithm that minimizes the expected total travel distance given these environmental disturbances, which induce uncertainties in the map. We verify the efficacy of our algorithm in simulations of over a thousand Canadian lakes and demonstrate an application of our algorithm in a 3.7 km-long real-world robot experiment on a lake in Northern Ontario, Canada.
翻译:自主地表船只(ASV)是使湖水质量监测自动化的有希望的技术。在这项工作中,我们使用卫星图像作为粗略的地图,并规划机器人的采样路线。然而,卫星图像与实际湖泊以及风、水生植被和水位变化等环境扰动不一致,可能使机器人难以访问前一地图所建议的地点。本文件提出了一个强有力的路线规划算法,以尽量减少这些环境扰动导致地图不确定的预期总旅行距离。我们核查了我们算法在模拟一千多个加拿大湖泊时的功效,并展示了我们在加拿大北安大略湖进行3.7公里长的真实世界机器人实验时的算法应用情况。