Section 01
[Main Floor/Introduction] Core Overview of Temporal-Aware Reasoning Research in Autonomous Driving Scenario Planning
This paper focuses on the problem of temporal-aware reasoning in autonomous driving scenario planning and explores the impact of temporal conditions on multi-agent reasoning. Through experiments comparing three planner architectures (Baseline, Moderate Temporal Integration, and Deep Temporal Integration Sentinel), it reveals the limitations of prompt-based temporal grounding and establishes the first empirical benchmark for temporal scenario-to-planning reasoning. Key findings include: Introducing temporal information through pure prompt engineering did not significantly improve quantitative metrics, but the deep temporal integration architecture showed advantages such as predictive hazard reasoning and stable corrective behavior in qualitative analysis.