Disengagement Analysis and Field Tests of a Prototypical Open-Source Level 4 Autonomous Driving System

arXiv cs.RO / 3/24/2026

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Key Points

  • The paper presents real-world field testing of a prototypical open-source Level 4 autonomous driving vehicle using an Autoware-based software stack over 236 km of mixed traffic.
  • It analyzes 30 disengagements across 26 rides using a new five-level criticality framework, reporting a spatial disengagement rate of 0.127 per km.
  • Most disengagements occurred at lower speeds near static objects and traffic lights, indicating vulnerabilities in interaction with stationary infrastructure and nearby objects.
  • Perception and Planning failures were the leading causes (40% and 26.7%), with object-tracking losses and operational deadlocks from parked vehicles cited as major drivers.
  • The study finds that frequent, unnecessary interventions suggest a lack of trust by the safety driver and argues that disengagement analysis is necessary to uncover robustness issues not captured by standard metrics.

Abstract

Proprietary Autonomous Driving Systems are typically evaluated through disengagements, unplanned manual interventions to alter vehicle behavior, as annually reported by the California Department of Motor Vehicles. However, the real-world capabilities of prototypical open-source Level 4 vehicles over substantial distances remain largely unexplored. This study evaluates a research vehicle running an Autoware-based software stack across 236 km of mixed traffic. By classifying 30 disengagements across 26 rides with a novel five-level criticality framework, we observed a spatial disengagement rate of 0.127 1/km. Interventions predominantly occurred at lower speeds near static objects and traffic lights. Perception and Planning failures accounted for 40% and 26.7% of disengagements, respectively, largely due to object-tracking losses and operational deadlocks caused by parked vehicles. Frequent, unnecessary interventions highlighted a lack of trust on the part of the safety driver. These results show that while open-source software enables extensive operations, disengagement analysis is vital for uncovering robustness issues missed by standard metrics.