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Fuzzy Logic Unmanned Air Vehicle Motion Planning

机译:模糊逻辑无人机飞行计划

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There are a variety of scenarios in which the mission objectives rely on an unmanned aerial vehicle (UAV) being capable of maneuvering in an environment containing obstacles in which there is little prior knowledge of the surroundings. With an appropriate dynamic motion planning algorithm, UAVs would be able to maneuver in any unknown environment towards a target in real time. This paper presents a methodology for two-dimensional motion planning of a UAV using fuzzy logic. The fuzzy inference system takes information in real time about obstacles (if within the agent's sensing range) and target location and outputs a change in heading angle and speed. The FL controller was validated, and Monte Carlo testing was completed to evaluate the performance. Not only was the path traversed by the UAV often the exact path computed using an optimal method, the low failure rate makes the fuzzy logic controller (FLC) feasible for exploration. The FLC showed only a total of 3% failure rate, whereas an artificial potential field (APF) solution, a commonly used intelligent control method, had an average of 18% failure rate. These results highlighted one of the advantages of the FLC method: its adaptability to complex scenarios while maintaining low control effort.
机译:在多种情况下,任务目标依赖于能够在包含障碍物的环境中进行机动的无人飞行器(UAV),在该环境中周围环境的先验知识很少。借助适当的动态运动计划算法,无人机可以在任何未知环境中实时向目标机动。本文提出了一种使用模糊逻辑对无人机进行二维运动规划的方法。模糊推理系统实时获取有关障碍物(如果在侦探的感知范围内)和目标位置的信息,并输出航向角和速度的变化。 FL控制器经过验证,并且完成了蒙特卡洛测试以评估性能。 UAV穿越的路径不仅经常使用最优方法计算出准确的路径,而且低故障率使模糊逻辑控制器(FLC)易于探索。 FLC的总故障率仅为3%,而常用的智能控制方法人工势场(APF)解决方案的平均故障率仅为18%。这些结果凸显了FLC方法的优势之一:它对复杂场景的适应性,同时保持了较低的控制工作量。

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