基于改进纯跟踪模型的AGV转向控制算法研究

Han Bin, Liu-Hsu Lin, Hao Qun, Cao Jie, Luo Jiahong, Zhang Bo Rui, Zhang Lei
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引用次数: 0

摘要

针对AGV转向后初始精度低的问题,设计了一种基于改进纯跟踪模型的车辆转向控制算法。首先,为了提高纯跟踪模型的自适应能力,通过粒子群算法实时估计纯跟踪模型的前瞻距离;我们使用IWO算法优化粒子群寻找适应度的能力,避免粒子群在工作过程中容易陷入局部收敛。其次,为满足改进后的纯跟踪模型对连续曲率的要求,在传统鱼尾u型转弯轨迹上加入缓动曲线,设计出非切向的圆形鱼尾u型转弯;最后,对该算法进行了仿真测试。试验结果表明:采用IWO-PSO-PTM算法,当车速为0.75m/s进行u型转弯时,最大横向误差小于0.42m,均方根误差为0.18m。换线后直线行程距离超过4m时,最大横向误差小于0.02m。由IWO-PSO改进的纯跟踪算法可以有效地提高AGV转向后的初始精度。
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Research on AGV steering control algorithm based on improving pure tracking model
Aiming at the problem of low initial accuracy of AGV after steering, we design a vehicle steering control algorithm based on an improved pure tracking model. Firstly, in order to improve the adaptive ability of the pure tracking model, we estimate the look-ahead distance of the pure tracking model in real time through the PSO algorithm. We use the IWO algorithm to optimize the ability of the particle swarm finding fitness, so as to avoid the particle swarm easily falling into local convergence during the working process. Secondly, in order to meet the requirements of the improved pure tracking model for continuous curvature, we add an easing curve to the traditional fishtail U-turn trajectory, and design a non-tangential round fishtail U-turn. Finally, we carry out a simulation test of the algorithm. The test results show that: using the IWO-PSO-PTM algorithm, when the vehicle speed is 0.75m/s for U-turn, the maximum lateral error is less than 0.42m, and the root mean square error is 0.18m. And when the straight line travel distance exceeds 4m after line change, the maximum lateral error is less than 0.02m. The pure tracking algorithm improved by IWO-PSO can effectively improve the initial accuracy of the AGV after steering.
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