Projected Attainable Speed Space: A Driving Efficiency Metric Connecting Instantaneous Evaluation to Travel Time
Xiaohua Zhao, Zhaowei Huang, Chen Chen, Haiyi Yang

TL;DR
The paper introduces the Projected Attainable Speed Space (PASS), a unified framework for assessing driving efficiency in autonomous vehicles across real-time and travel-level scales, validated through simulation data.
Contribution
It proposes a novel, physically grounded metric that links instantaneous driving efficiency to overall travel time, ensuring consistency across different temporal scales.
Findings
PASS shows strong correlation with observed travel times (R^2=0.913).
The framework effectively captures both immediate and long-term driving efficiency.
Simulation results validate PASS as a reliable decision-making and performance evaluation tool.
Abstract
Inefficient driving behaviors, such as overly conservative yielding, remain a key obstacle to deployment of autonomous vehicles (AVs). Instantaneous driving efficiency metrics are crucial for self-driving decision-making because they affect real-time performance evaluation and control optimization. However, commonly used indicators, including speed, relative speed, and inter-vehicle distance, are limited in capturing traffic context and in ensuring consistency between instantaneous outputs and travel-level outcomes. This study proposes the Projected Attainable Speed Space (PASS) model, a unified framework for driving efficiency assessment across instantaneous and travel-level analyses by integrating kinematic and spatial traffic information. PASS characterizes instantaneous driving efficiency with two coupled elements: potential for speed improvement (available acceleration space) and…
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