Logical Mapping-based hierarchical safe reinforcement learning for autonomous driving

Jihui Nie and Yingda Li
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引用次数: 0

Abstract

Making decisions in complex and multiple scenarios presents great challenges for autonomous driving systems (ADS). In recent years, deep reinforcement learning algorithms (DRL) have made remarkable breakthroughs in decision-making. However, there remain many problems, such as sparse reward and slow convergence in traditional DRL when facing multiple sub-goals. In this paper, we propose a hierarchical deep deterministic policy gradient (DDPG) based on the BDIK model for autonomous driving, which enables ADS to have the ability to make decisions in human-like deliberation ways as well as deal with uncertainties in the environment. First, we propose the BDIK model based on the Beliefs-Desires-Intentions (BDI) model so that the agents are guided by domain knowledge when generating their sub-goals. Furthermore, in contrast to traditional BDI systems making plans by hand, a BDIK hierarchical DDPG (BDIK HDDPG) algorithm is employed to deduce the optimal actions automatically in an uncertain environment. The results show that our method outperforms the standard DDPG for both processing speed and effectiveness in multiple and complex scenarios.
基于逻辑映射的自动驾驶分层安全强化学习
在复杂多变的场景中做出决策是自动驾驶系统(ADS)面临的巨大挑战。近年来,深度强化学习算法(DRL)在决策方面取得了显著突破。然而,传统的 DRL 仍然存在很多问题,比如面对多个子目标时,奖励稀疏、收敛缓慢等。本文提出了一种基于 BDIK 模型的分层深度确定性策略梯度(DDPG),用于自动驾驶,使 ADS 能够以类似人类的深思熟虑方式做出决策,并应对环境中的不确定性。首先,我们提出了基于 "信念-愿望-意图"(BDI)模型的 BDIK 模型,从而使代理在生成子目标时受到领域知识的指导。此外,与传统的 BDI 系统手工制定计划不同,我们采用了 BDIK 分层 DDPG(BDIK HDDPG)算法,在不确定的环境中自动推导出最优行动。结果表明,我们的方法在多种复杂场景下的处理速度和效果都优于标准 DDPG。
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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CiteScore
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