Torres-Torriti Miguel, Nazate-Burgos Paola, Paredes-Lizama Fabián, Guevara Javier, Auat Cheein Fernando
Department of Electrical Engineering, Pontificia Universidad Católica de Chile, Santiago 782-0436, Chile.
Department of Electronic Engineering, Universidad Técnica Federico Santa María, Valparaíso 239-0123, Chile.
Sensors (Basel). 2022 Apr 15;22(8):3038. doi: 10.3390/s22083038.
Autonomous navigation in mining tunnels is challenging due to the lack of satellite positioning signals and visible natural landmarks that could be exploited by ranging systems. Solutions requiring stable power feeds for locating beacons and transmitters are not accepted because of accidental damage risks and safety requirements. Hence, this work presents an autonomous navigation approach based on artificial passive landmarks, whose geometry has been optimized in order to ensure drift-free localization of mobile units typically equipped with lidar scanners. The main contribution of the approach lies in the design and optimization of the landmarks that, combined with scan matching techniques, provide a reliable pose estimation in modern smoothly bored mining tunnels. A genetic algorithm is employed to optimize the landmarks' geometry and positioning, thus preventing that the localization problem becomes ill-posed. The proposed approach is validated both in simulation and throughout a series of experiments with an industrial skid-steer CAT 262C robotic excavator, showing the feasibility of the approach with inexpensive passive and low-maintenance landmarks. The results show that the optimized triangular and symmetrical landmarks improve the positioning accuracy by 87.5% per 100 m traveled compared to the accuracy without landmarks. The role of optimized artificial landmarks in the context of modern smoothly bored mining tunnels should not be understated. The results confirm that without the optimized landmarks, the localization error accumulates due to odometry drift and that, contrary to the general intuition or belief, natural tunnel features alone are not sufficient for unambiguous localization. Therefore, the proposed approach ensures grid-based SLAM techniques can be implemented to successfully navigate in smoothly bored mining tunnels.
由于缺乏卫星定位信号以及测距系统无法利用的可见自然地标,在采矿隧道中进行自主导航具有挑战性。由于存在意外损坏风险和安全要求,需要稳定电源为定位信标和发射器供电的解决方案不被接受。因此,这项工作提出了一种基于人工被动地标的自主导航方法,其几何形状已经过优化,以确保通常配备激光雷达扫描仪的移动单元实现无漂移定位。该方法的主要贡献在于地标的设计和优化,结合扫描匹配技术,可在现代光滑钻孔采矿隧道中提供可靠的位姿估计。采用遗传算法优化地标的几何形状和定位,从而防止定位问题变得不适定。所提出的方法在模拟中以及通过使用工业滑移转向卡特彼勒262C机器人挖掘机进行的一系列实验中得到了验证,表明该方法使用廉价的被动且维护成本低的地标是可行的。结果表明,与没有地标的情况相比,优化后的三角形和对称地标每行驶100米可将定位精度提高87.5%。在现代光滑钻孔采矿隧道的背景下,优化后的人工地标的作用不可小觑。结果证实,没有优化后的地标,由于里程计漂移,定位误差会累积,而且与一般直觉或看法相反,仅靠自然隧道特征不足以实现明确的定位。因此,所提出的方法确保了基于网格的同步定位与地图构建(SLAM)技术能够在光滑钻孔采矿隧道中成功导航。