Ant colony algorithm based fuzzy PID control of unmanned aerial vehicle under wind disturbance conditions

Xichen Tang
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Abstract

A drone is an unmanned aerial vehicle that has been widely used in military, civil and commercial fields. UAVs need to maintain a smooth and stable flight state during flight to accomplish various tasks, such as reconnaissance, scouting, aerial photography, transportation, and so on. In this paper, both the ant colony algorithm and fuzzy PID control are utilized to investigate the control of quadrotor UAVs under wind disturbance conditions. The optimization of the fuzzy PID control algorithm is conducted through the application of a convolutional neural network under wind disturbance conditions.The system construction and simulation test are conducted using MATLAB and Simulink. The experimental results are analyzed, experimental conclusions are drawn, and the results are compared with those obtained using the traditional PID control algorithm and fuzzy PID control algorithm. This comparison helps demonstrate the extent of optimization achieved by the convolutional neural network on the fuzzy PID control algorithm.The results obtained from comparing the performance with the traditional PID control algorithm and fuzzy PID control algorithm demonstrate the degree of optimization achieved by applying the convolutional neural network to the fuzzy PID control algorithm. The findings indicate that the fuzzy PID control, optimized by the ant colony algorithm, can effectively be utilized for controlling quadrotor UAVs under wind disturbance conditions.
风干扰条件下基于蚁群算法的无人飞行器模糊 PID 控制
无人机是一种无人驾驶飞行器,已广泛应用于军事、民用和商业领域。无人机在飞行过程中需要保持平稳、稳定的飞行状态,以完成侦察、侦查、航拍、运输等各种任务。本文利用蚁群算法和模糊 PID 控制来研究风干扰条件下四旋翼无人机的控制问题。系统构建和仿真测试使用 MATLAB 和 Simulink 进行。使用 MATLAB 和 Simulink 对系统进行了构建和仿真测试,分析了实验结果,得出了实验结论,并将结果与使用传统 PID 控制算法和模糊 PID 控制算法得出的结果进行了比较。通过与传统 PID 控制算法和模糊 PID 控制算法的性能比较,得出的结果表明了将卷积神经网络应用于模糊 PID 控制算法所达到的优化程度。研究结果表明,经过蚁群算法优化的模糊 PID 控制可以有效地用于风干扰条件下的四旋翼无人机控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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