Abstract
<div>This study investigates the use of a road weather model (RWM) as a virtual
sensing technique to assist autonomous vehicles (AVs) in driving safely, even in
challenging winter weather conditions. In particular, we investigate how the AVs
can remain within their operational design domain (ODD) for a greater duration
and minimize unnecessary exits. As the road surface temperature (RST) is one of
the most critical variables for driving safety in winter weather, we explore the
use of the vehicle’s air temperature (AT) sensor as an indicator of RST. Data
from both Road Weather Information System (RWIS) stations and vehicles measuring
AT and road conditions were used. Results showed that using only the AT sensor
as an indicator of RST could result in a high number of false warnings, but the
accuracy improved significantly with the use of an RWM to model the RST.
ROC-curve analysis resulted in an AUC value of 0.917 with the AT sensor and
0.985 with the RWM, while the true positive rate increased from 67% to 94%. The
study also highlights the limitations of relying on dashboard cameras to detect
slippery driving conditions, as it may not be accurate enough to distinguish
between, for example, wet and icy road conditions. As winter maintenance often
prevents slippery roads, the vehicles often measured wet or moist roads, despite
RST < 0°C. Our calculations indicate that the vehicle should be able to
detect 93% of slippery occasions but the rate of false warnings will be as high
as 73%, if using a dashboard camera along with the AT sensor. There are clear
benefits of using a RWM to improve road safety and reduce the risk of accidents
due to slippery conditions, allowing AVs to safely extend their time within
their ODD. The findings of this study provide valuable insights for the
development of AVs and their response to slippery road conditions.</div>
Subject
Modeling and Simulation,Safety, Risk, Reliability and Quality,Mechanical Engineering,Automotive Engineering
Reference38 articles.
1. BSI Group 2020 2023 https://www.bsigroup.com/en-GB/CAV/cam-vocabulary/operational-design-domain/
2. Czarnecki ,
K. 2018
3. Ito ,
M. ODD Description Methods for Automated Driving Vehicle and
Verifiability for Safety JUCS - Journal of
Universal Computer Science 27 8 2021 796 810 https://doi.org/10.3897/jucs.72333
4. Winner ,
H. ,
Lemmer , K. ,
Form , T. ,
and
Mazzega ,
J. 2019
5. Kotilainen ,
I. ,
Händel , C. ,
Hamid , U. ,
Nykänen ,
L.
et al. Connected and Automated
Driving in Snowy and Icy Conditions - Results of Four Field-Testing
Activities Carried Out in Finland SAE Intl. J
CAV 4 1 2021 109 118 https://doi.org/10.4271/12-04-01-0009