Fuzzy predictive Stanley lateral controller with adaptive prediction horizon

Ahmed Abdelmoniem, Abdullah Ali, Youssef Taher, M. Abdelaziz, S. Maged
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Abstract

The challenge of trajectory tracking of autonomous vehicles (AVs) is a critical aspect that must be effectively addressed. Recent studies are concerned with maintaining the yaw stability to guarantee the customers’ comfort throughout the journey. Most of the geometrical controllers solve this task by dividing it into consecutive point stabilization problems, limiting the controllers’ ability to handle sudden trajectory changes. One research presented a predictive Stanley lateral controller that uses a discrete prediction model to mimic human behavior by anticipating the vehicle’s future states. That controller is limited in its use, as the parameters must be manually tuned for every change in the maneuver or vehicle velocity. This article presents a novel approach for trajectory tracking in autonomous vehicles, by introducing a fuzzy supervisory controller that automatically adapts to changes in the vehicle’s velocity and maneuver by estimating the prediction horizon’s length and providing different weights for each controller. The proposed method overcomes the limitations of traditional controllers that require manual tuning of parameters, making it ready for real-world experiments. This is the main contribution of the research in this paper. The suggested technique demonstrated an advantage over the Basic Stanley controller and the manually tuned predictive Stanley controller in terms of the total lateral error and the model predictive control (MPC) in terms of computational time. The performance is determined by performing various simulations on V-Rep and hardware-in-the-loop (HIL) experiments on an E-CAR golf bus. A broad selection of velocities is used to validate the behavior of the vehicle while working on different maneuvers (double lane change, hook road, S road, and curved road).
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具有自适应预测视界的模糊预测Stanley横向控制器
自动驾驶汽车(AVs)的轨迹跟踪挑战是必须有效解决的关键问题。最近的研究关注的是保持偏航稳定性,以保证客户在整个旅程中的舒适性。大多数几何控制器通过将其划分为连续的点稳定问题来解决这一任务,限制了控制器处理突然轨迹变化的能力。一项研究提出了一种预测性斯坦利横向控制器,该控制器使用离散预测模型通过预测车辆的未来状态来模仿人类行为。该控制器的使用受到限制,因为必须手动调整参数以适应机动或车辆速度的每次变化。本文提出了一种自动驾驶汽车轨迹跟踪的新方法,通过引入模糊监督控制器,该控制器通过估计预测视界的长度并为每个控制器提供不同的权值来自动适应车辆速度和机动的变化。该方法克服了传统控制器需要手动调整参数的局限性,为实际实验做好了准备。这是本文研究的主要贡献。所建议的技术在总横向误差和模型预测控制(MPC)计算时间方面优于基本Stanley控制器和手动调谐预测Stanley控制器。通过在一辆E-CAR高尔夫总线上进行V-Rep仿真和硬件在环(HIL)实验,确定了该系统的性能。广泛的速度选择用于验证车辆在不同机动(双车道变换,钩路,S路和弯曲道路)下的行为。
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