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基于鴿群優化改進動態窗的多無人車協同編隊避障控制

Multi-vehicle formation and obstacle avoidance control based onpigeon-inspired optimization and dynamic window approach

  • 摘要: 在復雜未知的戰場環境中,無人車集群較單臺無人車可承擔更為復雜的任務,無人車集群協同編隊避障行駛是群體智能領域研究熱點之一. 針對未知環境下無人車集群在規避障礙物時容易出現動態位置與預期隊形偏差較大問題,本文提出了一種基于改進動態窗的無人車編隊協同避障控制方法,在基本動態窗路徑評價函數的方位角評價因子、障礙物評價因子、速度評價因子基礎上,增加了無人車編隊的方向協同因子和隊形保持因子. 同時,基于變權重鴿群優化算法對改進動態窗的路徑評價函數各系數進行優化. 當無人車集群感知到障礙物時,通過改進動態窗算法進行相對位置及速度的自適應協同調整,更好地保證無人車編隊避障行駛過程中隊形位置的精確性. 最后,以3臺無人車構成三角形編隊避障行駛為例進行仿真驗證. 仿真結果表明基于改進動態窗和變權重鴿群優化算法的無人車編隊在規避障礙物時,隊形位置偏差相對較小. 可見,本文提出的改進算法能夠使得無人車集群在規避障礙物過程中提高動態編隊的穩定性和精確性.

     

    Abstract: In a complex and unknown battlefield environment, unmanned vehicle clusters can perform more complex tasks than a single unmanned ground vehicle (UGV). The formation and obstacle avoidance of unmanned vehicle clusters is one of the research hotspots in the field of swarm intelligence. To reduce the deviation between the actual formation position and expected formation when unmanned vehicle clusters avoid obstacles in an unknown environment, this paper proposes a cooperative formation and obstacle avoidance control method for unmanned vehicle clusters based on an improved dynamic window approach (DWA). In addition to the azimuth evaluation, obstacle evaluation, and speed evaluation factors of the path evaluation function in DWA, the direction coordination and formation maintenance factors are added. We established a mathematical model of unmanned vehicle cooperative formation and calculated in real time the expected position, direction, and speed of each following vehicle according to the expected formation. The sum of the deviation between the real driving and expected directions of each following vehicle was taken as the direction cooperation factor, and the sum of the absolute deviation between the real and expected positions of each following vehicle was taken as the formation-keeping factor. When unmanned vehicles approach unknown obstacles, the adaptive collaborative adjustment of the relative position and speed is performed based on the improved DWA, which can improve the precision of the formation positions during the obstacle avoidance process. In this paper, a simulation is conducted using a scenario of three unmanned vehicles forming a triangular formation to avoid obstacles and three obstacles. The simulation results show that the control adjustment based on the improved dynamic window and variable weight optimization algorithm is more timely than the traditional formation control based on the artificial potential field. Additionally, the formation position deviation is relatively small when avoiding obstacles. The average deviation between the actual position of the vehicle formation and the desired position of the formation near the obstacle is used as the evaluation function. The coefficients of the path evaluation function of the improved DWA are optimized based on the variable weight pigeon-inspired optimization (PIO). It can improve the formation, maintaining accuracy in obstacle avoidance. In summary, the proposed improved algorithm can make the unmanned vehicle cluster adjust the driving speed and direction cooperatively in obstacle avoidance. Moreover, it can improve the stability and accuracy of the dynamic formation.

     

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