Provably safe and human-like car-following behaviors: Part 1. Analysis of phases and dynamics in standard models
Wen-Long Jin

TL;DR
This paper analyzes standard car-following models using multi-phase dynamical systems to evaluate their safety and human-like behavior, identifying limitations and setting principles for improved models.
Contribution
It introduces a framework for analyzing car-following models through phase analysis and derives insights into their safety and human-likeness limitations.
Findings
Newell's model derived from fundamental principles
Limitations identified in Intelligent Driver and Gipps models
Numerical simulations validate theoretical analysis
Abstract
Trajectory planning is essential for ensuring safe driving in the face of uncertainties related to communication, sensing, and dynamic factors such as weather, road conditions, policies, and other road users. Existing car-following models often lack rigorous safety proofs and the ability to replicate human-like driving behaviors consistently. This article applies multi-phase dynamical systems analysis to well-known car-following models to highlight the characteristics and limitations of existing approaches. We begin by formulating fundamental principles for safe and human-like car-following behaviors, which include zeroth-order principles for comfort and minimum jam spacings, first-order principles for speeds and time gaps, and second-order principles for comfort acceleration/deceleration bounds as well as braking profiles. From a set of these zeroth- and first-order principles, we…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Human-Automation Interaction and Safety
MethodsSparse Evolutionary Training
