The Effect of Rainfall and Illumination on Automotive Sensors Detection Performance

Author:

Li Hexuan1ORCID,Bamminger Nadine1ORCID,Magosi Zoltan Ferenc1ORCID,Feichtinger Christoph2ORCID,Zhao Yongqi1,Mihalj Tomislav1,Orucevic Faris1,Eichberger Arno1ORCID

Affiliation:

1. Institute of Automotive Engineering, Graz University of Technology, 8010 Graz, Austria

2. DigiTrans GmbH, 4020 Linz, Austria

Abstract

Vehicle safety promises to be one of the Advanced Driver Assistance System’s (ADAS) biggest benefits. Higher levels of automation remove the human driver from the chain of events that can lead to a crash. Sensors play an influential role in vehicle driving as well as in ADAS by helping the driver to watch the vehicle’s surroundings for safe driving. Thus, the driving load is drastically reduced from steering as well as accelerating and braking for long-term driving. The baseline for the development of future intelligent vehicles relies even more on the fusion of data from surrounding sensors such as Camera, LiDAR and Radar. These sensors not only need to perceive in clear weather but also need to detect accurately adverse weather and illumination conditions. Otherwise, a small error could have an incalculable impact on ADAS. Most of the current studies are based on indoor or static testing. In order to solve this problem, this paper designs a series of dynamic test cases with the help of outdoor rain and intelligent lightning simulation facilities to make the sensor application scenarios more realistic. As a result, the effect of rainfall and illumination on sensor perception performance is investigated. As speculated, the performance of all automotive sensors is degraded by adverse environmental factors, but their behaviour is not identical. Future work on sensor model development and sensor information fusion should therefore take this into account.

Funder

Graz University of Technology

the program Mobility of the Future, operated by the Austrian research funding agency FFG. Mobility of the Future

Publisher

MDPI AG

Subject

Management, Monitoring, Policy and Law,Renewable Energy, Sustainability and the Environment,Geography, Planning and Development,Building and Construction

Reference40 articles.

1. Singh, S. (2015). Critical Reasons for Crashes Investigated in the National Motor Vehicle Crash Causation Survey.

2. Smith, B.W. (2013, December 18). Human Error as a Cause of Vehicle Crashes. Available online: http://cyberlaw.stanford.edu/blog/2013/12/human-error-cause-vehicle-crashes.

3. Exploring factors affecting the severity of night-time vehicle accidents under low illumination conditions;Liu;Adv. Mech. Eng.,2019

4. Teammate Advanced Drive System Using Automated Driving Technology;Kawasaki;SAE Int. J. Adv. Curr. Pract. Mobil.,2021

5. Automated driving and its sensors under test;Schrepfer;ATZ Worldw.,2018

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