Adaptive autonomous navigation system for coal mine inspection robots: overcoming intersection challenges

Hongwei Wang, Chao Li, Wei Liang, Di Wang, Linhu Yao
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Abstract

Purpose

In response to the navigation challenges faced by coal mine tunnel inspection robots in semistructured underground intersection environments, many current studies rely on structured map-based planning algorithms and trajectory tracking techniques. However, this approach is highly dependent on the accuracy of the global map, which can lead to deviations from the predetermined route or collisions with obstacles. To improve the environmental adaptability and navigation precision of the robot, this paper aims to propose an adaptive navigation system based on a two-dimensional (2D) LiDAR.

Design/methodology/approach

Leveraging the geometric features of coal mine tunnel environments, the clustering and fitting algorithms are used to construct a geometric model within the navigation system. This not only reduces the complexity of the navigation system but also optimizes local positioning. By constructing a local potential field, there is no need for path-fitting planning, thus enhancing the robot’s adaptability in intersection environments. The feasibility of the algorithm principles is validated through MATLAB and robot operating system simulations in this paper.

Findings

The experiments demonstrate that this method enables autonomous driving and optimized positioning capabilities in harsh environments, with high real-time performance and environmental adaptability, achieving a positioning error rate of less than 3%.

Originality/value

This paper presents an adaptive navigation system for a coal mine tunnel inspection robot using a 2D LiDAR sensor. The system improves robot attitude estimation and motion control accuracy to ensure safe and reliable navigation, especially at tunnel intersections.

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煤矿检测机器人的自适应自主导航系统:克服交叉路口挑战
目的 针对煤矿巷道检测机器人在半结构化地下交叉环境中面临的导航挑战,目前的许多研究都依赖于基于结构化地图的规划算法和轨迹跟踪技术。然而,这种方法高度依赖于全局地图的准确性,可能导致偏离预定路线或与障碍物发生碰撞。为了提高机器人的环境适应能力和导航精度,本文旨在提出一种基于二维(2D)激光雷达的自适应导航系统。这不仅降低了导航系统的复杂性,还优化了局部定位。通过构建局部势场,无需进行路径拟合规划,从而增强了机器人在交叉环境中的适应能力。本文通过 MATLAB 和机器人操作系统仿真验证了算法原理的可行性。实验结果实验证明,该方法可在恶劣环境下实现自主驾驶和优化定位功能,具有较高的实时性和环境适应性,定位误差率小于 3%。该系统提高了机器人姿态估计和运动控制精度,确保导航安全可靠,尤其是在隧道交叉口。
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