High-level Decision Making for Safe and Reasonable Autonomous Lane Changing using Reinforcement Learning

Branka Mirchevska, Christian Pek, M. Werling, M. Althoff, J. Boedecker
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引用次数: 116

Abstract

Machine learning techniques have been shown to outperform many rule-based systems for the decision-making of autonomous vehicles. However, applying machine learning is challenging due to the possibility of executing unsafe actions and slow learning rates. We address these issues by presenting a reinforcement learning-based approach, which is combined with formal safety verification to ensure that only safe actions are chosen at any time. We let a deep reinforcement learning (RL) agent learn to drive as close as possible to a desired velocity by executing reasonable lane changes on simulated highways with an arbitrary number of lanes. By making use of a minimal state representation, consisting of only 13 continuous features, and a Deep Q-Network (DQN), we are able to achieve fast learning rates. Our RL agent is able to learn the desired task without causing collisions and outperforms a complex, rule-based agent that we use for benchmarking.
基于强化学习的安全合理自动变道高层决策
在自动驾驶汽车的决策方面,机器学习技术已被证明优于许多基于规则的系统。然而,由于执行不安全操作的可能性和缓慢的学习率,应用机器学习是具有挑战性的。我们通过提出一种基于强化学习的方法来解决这些问题,该方法与正式的安全验证相结合,以确保在任何时候都只选择安全的操作。我们让深度强化学习(RL)代理通过在具有任意车道数量的模拟高速公路上执行合理的车道变化来学习尽可能接近所需速度的驾驶。通过使用仅由13个连续特征组成的最小状态表示和深度q -网络(DQN),我们能够实现快速的学习率。我们的强化学习代理能够在不引起冲突的情况下学习所需的任务,并且优于我们用于基准测试的复杂的、基于规则的代理。
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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