Stochastic predictive control for semi-autonomous vehicles with an uncertain driver model

A. Gray, Yiqi Gao, Theresa Lin, J. Karl Hedrick, F. Borrelli
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引用次数: 80

Abstract

In this paper a robust control framework is proposed for the lane-keeping and obstacle avoidance of semi-autonomous ground vehicles. A robust Model Predictive Control framework (MPC) is used in order to enforce safety constraints with minimal control intervention. A stochastic driver model is used in closed-loop with a vehicle model to obtain a distribution over future vehicle trajectories. The uncertainty in the prediction is converted to probabilistic constraints. The robust MPC computes the smallest corrective steering action needed to satisfy the safety constraints, to a given probability. Simulations of a driver approaching multiple obstacles, with uncertainty obtained from measured data, show the effect of the proposed framework.
具有不确定驾驶员模型的半自动驾驶车辆随机预测控制
针对半自主地面车辆的车道保持和避障问题,提出了一种鲁棒控制框架。采用鲁棒模型预测控制框架(MPC),以最小的控制干预强制执行安全约束。在闭环中采用随机驾驶员模型和车辆模型,得到未来车辆轨迹的分布。预测中的不确定性被转换为概率约束。鲁棒MPC在给定的概率下计算满足安全约束所需的最小纠正转向动作。驾驶员接近多个障碍物的仿真结果显示了该框架的有效性。
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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