Near-ground sensing data, such as geospatial measurements of soil apparent electrical conductivity (ECa), are used in precision agriculture to improve farming practices and increase crop yield. Near-ground sensors provide valuable information, yet, the process of collecting, assessing, and interpreting measurements requires significant human labor. Automating parts of this process via the use of mobile robots can help decrease labor burden, and increase the accuracy and frequency of data collections, and overall increase the adoption and use of ECa measurement technology. This paper introduces a roboticized means to autonomously perform geospatial ECa measurements and map soil moisture content in micro-irrigated orchard systems. We retrofit a small wheeled mobile robot with a small electromagnetic induction sensor by studying and taking into consideration the effect of the robot body to the sensor's readings, and develop a software stack to enable autonomous logging of geo-referenced measurements. The proposed roboticized ECa measurement method is evaluated by mapping a 50m x 30m field against the baseline of human-conducted measurements obtained by walking the sensor in the same field and following the same path. Experimental testing reveals that our approach yields roboticized measurements comparable to human-conducted ones, despite the robot's small form factor.
翻译:近地遥感数据,如对土壤表面电导率的地理空间测量(ECa),用于精密农业,以改善耕作方法,提高作物产量; 近地传感器提供宝贵的信息,然而,收集、评估和解释测量数据的过程需要大量的人力劳动; 通过使用移动机器人使这一过程部分自动化,有助于减少劳动力负担,提高数据收集的准确性和频率,并全面提高ECa测量技术的采用和使用率; 本文采用一种机器人化手段,自主地进行地理空间ECa测量,并在微型灌溉果园系统中绘制土壤湿度含量图; 我们用小型电磁感应传感器改造一个小型轮式移动机器人,研究和考虑机器人身体对传感器读数的影响,并开发一套软件堆,以便能够自主地记录地理参照测量结果; 对拟议的机器人化ECa测量方法进行了评估,根据同一领域走过传感器并沿着同一道路走过的人以测量结果为基准进行测绘。 实验性测试显示,我们的方法可以使机器人的机器人与人类行为系数相仿。