基于鲁棒传感器融合的GPS森林环境下无人机自主导航

S. M. Shithil, A. Faudzi, A. Abdullah, Najmul Islam, Shahril Mad Saad
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引用次数: 0

摘要

使用无人机进行林业和精确生物多样性数据收集是一种经济高效的解决方案。然而,由于其GPS被拒绝的环境、混乱、动态和大规模,在森林冠层中自主导航是相当具有挑战性的。用于森林应用的商用无人机大多采用基于gps的导航,不适合在林冠下导航。本文研究了一种在杂乱森林冠层环境下的无人机自主飞行任务。为了实现安全可靠的自主导航,提出了一种基于多传感器融合的鲁棒故障检测鲁棒导航方法。自主架构同时利用无人机的导航、规划和控制能力。为了在森林环境中实现自主飞行任务,所提出的系统在模拟环境中进行了严格的测试,结果显示了在这种具有挑战性的环境中自主飞行的能力。基于平均速度和路径长度相对于森林中树木数量的增加来评估自主飞行的性能。
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Robust Sensor Fusion for Autonomous UAV Navigation in GPS denied Forest Environment
Forestry and precision biodiversity data collection using UAVs can be cost-effective and time efficient solution. However, navigating in the forest canopy autonomously can be quite challenging because of its GPS denied environment, cluttered, dynamic, and large scale. Most of the commercial UAVs used in forest applications apply GPS-based navigation which is not suitable for navigating under the canopy. In this paper, an autonomous UAV flight mission in a cluttered forest-like canopy environment is presented. A robust multi-sensor fusion-based robust navigation method which has failure detection features is proposed to enable safe and reliable autonomous navigation. The autonomy architecture utilizes the navigation, planning, and control capabilities of the UAV in a simultaneous manner. To achieve autonomous missions in forest environment, the proposed system has been tested rigorously in a simulated environment and the result shows the capability of autonomous flights in such a challenging environment. The performance of the autonomous flight was evaluated based on mean velocity and path length with respect to the increasing number of trees in the forest.
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