Cost Effective Automotive Platform for ADAS and Autonomous Development

2018-01-0588

4/3/2018

Authors
Abstract
Content
This paper presents a cost effective development platform, named FEV-Driver, for Advanced Driver Assistance Systems (ADAS) and autonomous driving (AD). The FEV-Driver platform is an electric go-kart that was converted into an x-by-wire vehicle which represents the behavior of a full-scale electric vehicle. FEV-Driver has the advantage of being a small-scale vehicle that can be used with a significant lower safety risk compared to full-sized vehicles. The ADAS/AD algorithms for this platform were developed in both Simulink and C++ software and implemented within the Robot Operating System (ROS) middleware. Besides the description of the platform, Lane Keep Assist (LKA) and Automatic Emergency Braking (AEB) algorithms are discussed, followed by a path planning algorithm which enables the vehicle to drive autonomously after a manually controlled training lap. The modular system architecture allows for complete controller exchange or adaptation to different vehicles. The adaptation and implementation of the platform into a full-scale passenger vehicle is described in the last section of this paper. The presented platform has proven to be a low-cost scalable platform for development and verification of ADAS and AD functions.
Meta TagsDetails
DOI
https://doi.org/10.4271/2018-01-0588
Citation
Alzu'bi, H., Dwyer, B., Nagaraj, S., Pischinger, M., et al., "Cost Effective Automotive Platform for ADAS and Autonomous Development," WCX World Congress Experience, Detroit, Michigan, United States, April 10, 2018, https://doi.org/10.4271/2018-01-0588.
Additional Details
Publisher
Published
4/3/2018
Product Code
2018-01-0588
Content Type
Technical Paper
Language
English