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An Intelligent Self-driving Truck System For Highway Transportation

Authors :
Wang, Dawei
Gao, Lingping
Lan, Ziquan
Li, Wei
Ren, Jiaping
Zhang, Jiahui
Zhang, Peng
Zhou, Pei
Wang, Shengao
Pan, Jia
Manocha, Dinesh
Yang, Ruigang
Publication Year :
2021

Abstract

Recently, there have been many advances in autonomous driving society, attracting a lot of attention from academia and industry. However, existing works mainly focus on cars, extra development is still required for self-driving truck algorithms and models. In this paper, we introduce an intelligent self-driving truck system. Our presented system consists of three main components, 1) a realistic traffic simulation module for generating realistic traffic flow in testing scenarios, 2) a high-fidelity truck model which is designed and evaluated for mimicking real truck response in real-world deployment, 3) an intelligent planning module with learning-based decision making algorithm and multi-mode trajectory planner, taking into account the truck's constraints, road slope changes, and the surrounding traffic flow. We provide quantitative evaluations for each component individually to demonstrate the fidelity and performance of each part. We also deploy our proposed system on a real truck and conduct real world experiments which shows our system's capacity of mitigating sim-to-real gap. Our code is available at https://github.com/InceptioResearch/IITS

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2112.15304
Document Type :
Working Paper