Multilevel Graph Reinforcement Learning for Consistent Cognitive Decision-making in Heterogeneous Mixed Autonomy

Xin Gao, Zhaoyang Ma, Xueyuan Li, Xiaoqiang Meng, Zirui Li
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Abstract

In the realm of heterogeneous mixed autonomy, vehicles experience dynamic spatial correlations and nonlinear temporal interactions in a complex, non-Euclidean space. These complexities pose significant challenges to traditional decision-making frameworks. Addressing this, we propose a hierarchical reinforcement learning framework integrated with multilevel graph representations, which effectively comprehends and models the spatiotemporal interactions among vehicles navigating through uncertain traffic conditions with varying decision-making systems. Rooted in multilevel graph representation theory, our approach encapsulates spatiotemporal relationships inherent in non-Euclidean spaces. A weighted graph represents spatiotemporal features between nodes, addressing the degree imbalance inherent in dynamic graphs. We integrate asynchronous parallel hierarchical reinforcement learning with a multilevel graph representation and a multi-head attention mechanism, which enables connected autonomous vehicles (CAVs) to exhibit capabilities akin to human cognition, facilitating consistent decision-making across various critical dimensions. The proposed decision-making strategy is validated in challenging environments characterized by high density, randomness, and dynamism on highway roads. We assess the performance of our framework through ablation studies, comparative analyses, and spatiotemporal trajectory evaluations. This study presents a quantitative analysis of decision-making mechanisms mirroring human cognitive functions in the realm of heterogeneous mixed autonomy, promoting the development of multi-dimensional decision-making strategies and a sophisticated distribution of attentional resources.
多层次图强化学习促进异构混合自主中的一致认知决策
在异构混合自主领域,车辆在复杂的非欧几里得空间中经历动态空间关联和非线性时间交互。这些复杂性给传统决策框架带来了巨大挑战。针对这一问题,我们提出了一种与多层次图表示集成的层次强化学习框架,它能有效地理解和模拟在不确定的交通条件下航行的车辆之间的时空交互,并具有不同的决策系统。基于多层次图表示理论,我们的方法囊括了非欧几里得空间中固有的时空关系。加权图表示节点之间的时空特征,解决了动态图中固有的程度不平衡问题。我们将异步并行分层强化学习与多层次图表示和多头注意力机制相结合,使互联自动驾驶汽车(CAV)展现出与人类认知类似的能力,促进在各种关键维度上做出一致的决策。提议的决策策略在具有高密度、随机性和动态性特点的高速公路环境中得到了验证。我们通过相关研究、比较分析和时空轨迹评估来评估我们框架的性能。本研究对决策机制进行了定量分析,这些机制反映了人类在异质混合自主领域的认知功能,促进了多维决策策略的发展和注意力资源的精密分配。
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