Drenjanac Domagoj, Tomic Slobodanka, Agüera Juan, Perez-Ruiz Manuel
The Telecommunications Research Center Vienna (FTW), Vienna 1220, Austria.
Universidad de Córdoba, Área de Mecanización y Tecnología Rural, Dpto. de Ingeniería Rural. Córdoba 14005, Spain.
Sensors (Basel). 2014 Oct 22;14(10):19767-84. doi: 10.3390/s141019767.
In the new agricultural scenarios, the interaction between autonomous tractors and a human operator is important when they jointly perform a task. Obtaining and exchanging accurate localization information between autonomous tractors and the human operator, working as a team, is a critical to maintaining safety, synchronization, and efficiency during the execution of a mission. An advanced localization system for both entities involved in the joint work, i.e., the autonomous tractors and the human operator, provides a basis for meeting the task requirements. In this paper, different localization techniques for a human operator and an autonomous tractor in a field environment were tested. First, we compared the localization performances of two global navigation satellite systems' (GNSS) receivers carried by the human operator: (1) an internal GNSS receiver built into a handheld device; and (2) an external DGNSS receiver with centimeter-level accuracy. To investigate autonomous tractor localization, a real-time kinematic (RTK)-based localization system installed on autonomous tractor developed for agricultural applications was evaluated. Finally, a hybrid localization approach, which combines distance estimates obtained using a wireless scheme with the position of an autonomous tractor obtained using an RTK-GNSS system, is proposed. The hybrid solution is intended for user localization in unstructured environments in which the GNSS signal is obstructed. The hybrid localization approach has two components: (1) a localization algorithm based on the received signal strength indication (RSSI) from the wireless environment; and (2) the acquisition of the tractor RTK coordinates when the human operator is near the tractor. In five RSSI tests, the best result achieved was an average localization error of 4 m. In tests of real-time position correction between rows, RMS error of 2.4 cm demonstrated that the passes were straight, as was desired for the autonomous tractor. From these preliminary results, future work will address the use of autonomous tractor localization in the hybrid localization approach.
在新的农业场景中,自主拖拉机与人类操作员共同执行任务时,二者之间的交互非常重要。作为一个团队,在自主拖拉机和人类操作员之间获取并交换准确的定位信息,对于在执行任务期间保持安全、同步和效率至关重要。为参与联合工作的两个实体(即自主拖拉机和人类操作员)开发的先进定位系统,为满足任务要求提供了基础。本文测试了田间环境中人类操作员和自主拖拉机的不同定位技术。首先,我们比较了人类操作员携带的两种全球导航卫星系统(GNSS)接收器的定位性能:(1)内置在手持设备中的内部GNSS接收器;(2)精度为厘米级的外部差分全球导航卫星系统(DGNSS)接收器。为了研究自主拖拉机的定位,对安装在为农业应用开发的自主拖拉机上的基于实时动态(RTK)的定位系统进行了评估。最后,提出了一种混合定位方法,该方法将使用无线方案获得的距离估计与使用RTK-GNSS系统获得的自主拖拉机位置相结合。该混合解决方案旨在用于GNSS信号受阻的非结构化环境中的用户定位。混合定位方法有两个组成部分:(1)基于无线环境中接收信号强度指示(RSSI)的定位算法;(2)当人类操作员靠近拖拉机时获取拖拉机的RTK坐标。在五次RSSI测试中,取得的最佳结果是平均定位误差为4米。在行间实时位置校正测试中,2.4厘米的均方根误差表明行驶轨迹是直的,这正是自主拖拉机所期望的。从这些初步结果来看,未来的工作将涉及在混合定位方法中使用自主拖拉机定位。