基于非线性模型预测控制和三维点云定位的自动驾驶轨迹跟踪

Ajish Babu, Kerim Yener Yurtdas, C. Koch, Mehmed Yüksel
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引用次数: 1

摘要

在自动驾驶中,轨迹跟随器是关键的控制器之一,它必须能够处理不同的驾驶场景。大多数现有的控制器都局限于特定的驾驶场景和特定的车辆模型。本文将轨迹从动器表述为一个非线性模型预测控制问题,并采用高斯-牛顿多次射击轨迹优化方法进行求解。该求解器已用于其他控制应用,并提供了使用不同非线性模型的灵活性。该控制器使用改装后的自动驾驶平台以及基于3D点云的映射和定位算法进行测试。所使用的非线性模型是一个经典的自行车运动学模型。由于车辆输入、油门和刹车以及加速度之间的高度非线性,纵向速度控制使用了额外的分段线性映射。在Go-Kart测试赛道上遵循预定义轨迹的初始测试结果在这里进行了评估和展示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Trajectory Following using Nonlinear Model Predictive Control and 3D Point-Cloud-based Localization for Autonomous Driving
In autonomous driving, the trajectory follower is one of the critical controllers which should be capable of handling different driving scenarios. Most of the existing controllers are limited to a particular driving scenario and for a specific vehicle model. In this work, the trajectory follower is formulated as a nonlinear model predictive control problem and solved using the multiple-shooting trajectory optimization method, Gauss-Newton Multiple Shooting. This solver has already been used for other control applications and provides the flexibility to use different nonlinear models. The controller is tested using a retrofitted autonomous driving platform, along with the 3D point-cloud-based mapping and localization algorithms. The nonlinear model being used is a classical kinematic bicycle model. Due to the high nonlinearity between the vehicle inputs, throttle and brake, and the acceleration, the longitudinal speed control uses an additional piece-wise linear mapping. The results from the initial tests, while following a predefined trajectory on a Go-Kart test-track, are evaluated and presented here.
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