Investigating Robotaxi Crash Severity with Geographical Random Forest and the Urban Environment
Junfeng Jiao, Seung Gyu Baik, Seung Jun Choi, Yiming Xu

TL;DR
This study uses spatially localized machine learning to analyze urban factors affecting robotaxi crash severity, revealing land use's importance and the influence of neighborhood type on crash outcomes.
Contribution
It introduces Geographical Random Forest, a novel spatially localized machine learning approach, to predict and visualize AV crash severity across urban environments.
Findings
Spatially localized machine learning outperforms regular models.
Land use is the most important predictor of crash severity.
Residential areas are associated with higher crash severity.
Abstract
This paper quantitatively investigates the crash severity of Autonomous Vehicles (AVs) with spatially localized machine learning and macroscopic measures of the urban built environment. Extending beyond the microscopic effects of individual infrastructure elements, we focus on the city-scale land use and behavioral patterns, while addressing spatial heterogeneity and spatial autocorrelation. We implemented a spatially localized machine learning technique called Geographical Random Forest (GRF) on the California AV collision dataset. Analyzing multiple urban measures, including points of interest, building footprint, and land use, we built a GRF model and visualized it as a crash severity risk map of San Francisco. This paper presents three findings. First, spatially localized machine learning outperformed regular machine learning in predicting AV crash severity. The bias-variance…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Traffic and Road Safety · Automotive and Human Injury Biomechanics
