2023
DOI: 10.4271/10-07-04-0031
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Robust Multiagent Reinforcement Learning toward Coordinated Decision-Making of Automated Vehicles

Xiangkun He,
Hao Chen,
Chen Lv

Abstract: <div>Automated driving is essential for developing and deploying intelligent transportation systems. However, unavoidable sensor noises or perception errors may cause an automated vehicle to adopt suboptimal driving policies or even lead to catastrophic failures. Additionally, the automated driving longitudinal and lateral decision-making behaviors (e.g., driving speed and lane changing decisions) are coup… Show more

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Cited by 23 publications
(1 citation statement)
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“…Path planning in unstructured environments is categorized into two main broad categories in this article, presented in Figure 3. The first category involves the hierarchical path planning approach, which encompasses terrain traversability analysis, cost estimation, global path planning, constraint analysis, and local path planning [13,26]. Generally, the outcomes of terrain traversability analysis and cost estimation are utilized as input data for global path planners [27,28].…”
Section: Related Work and Survey Boundariesmentioning
confidence: 99%
“…Path planning in unstructured environments is categorized into two main broad categories in this article, presented in Figure 3. The first category involves the hierarchical path planning approach, which encompasses terrain traversability analysis, cost estimation, global path planning, constraint analysis, and local path planning [13,26]. Generally, the outcomes of terrain traversability analysis and cost estimation are utilized as input data for global path planners [27,28].…”
Section: Related Work and Survey Boundariesmentioning
confidence: 99%