A machine learning approach for personalized autonomous lane change initiation and control

Charlott Vallon, Ziya Ercan, Ashwin Carvalho, F. Borrelli
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引用次数: 70

Abstract

We study an algorithm that allows a vehicle to autonomously change lanes in a safe but personalized fashion without the driver's explicit initiation (e.g. activating the turn signals). Lane change initiation in autonomous driving is typically based on subjective rules, functions of the positions and relative velocities of surrounding vehicles. This approach is often arbitrary, and not easily adapted to the driving style preferences of an individual driver. Here we propose a data-driven modeling approach to capture the lane change decision behavior of human drivers. We collect data with a test vehicle in typical lane change situations and train classifiers to predict the instant of lane change initiation with respect to the preferences of a particular driver. We integrate this decision logic into a model predictive control (MPC) framework to create a more personalized autonomous lane change experience that satisfies safety and comfort constraints. We show the ability of the decision logic to reproduce and differentiate between two lane changing styles, and demonstrate the safety and effectiveness of the control framework through simulations.
个性化自动变道启动与控制的机器学习方法
我们研究了一种算法,该算法允许车辆在没有驾驶员明确启动(例如激活转向灯)的情况下,以安全但个性化的方式自动变道。自动驾驶中的变道启动通常基于主观规则,以及周围车辆的位置和相对速度的函数。这种方法通常是任意的,并且不容易适应单个驾驶员的驾驶风格偏好。在此,我们提出了一种数据驱动的建模方法来捕捉人类驾驶员的变道决策行为。我们收集了典型变道情况下测试车辆的数据,并训练分类器根据特定驾驶员的偏好来预测变道启动的瞬间。我们将这种决策逻辑集成到模型预测控制(MPC)框架中,以创建更加个性化的自动变道体验,满足安全性和舒适性约束。我们展示了决策逻辑复制和区分两种变道风格的能力,并通过仿真验证了控制框架的安全性和有效性。
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