4.7 Article

EDGE INTELLIGENCE FOR AUTONOMOUS DRIVING IN 6G WIRELESS SYSTEM: DESIGN CHALLENGES AND SOLUTIONS

期刊

IEEE WIRELESS COMMUNICATIONS
卷 28, 期 2, 页码 40-47

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/MWC.001.2000292

关键词

Wireless communication; 6G mobile communication; Wireless sensor networks; Computational modeling; Neural networks; Sensor systems; Servers

资金

  1. A*STAR under its RIE2020 Advanced Manufacturing and Engineering (AME) Industry Alignment Fund-Pre Positioning (IAF-PP) [A19D6a0053]
  2. U.S. Office of the Under Secretary of Defense for Research and Engineering (OUSD(RE)) [FA8750-15-2-0119]
  3. NSF [EARS-1839818, CNS1717454, CNS-1731424, CNS-1702850]

向作者/读者索取更多资源

This paper proposes a two-tier edge intelligence-empowered autonomous driving framework, aiming to achieve more reliable and safer autonomous driving by providing AVs with machine learning and close multi-access edge computing. Experimental results demonstrate the effectiveness of the proposed framework.
In a level-5 autonomous driving system, the autonomous driving vehicles (AVs) are expected to sense the surroundings via analyzing a large amount of data captured by a variety of onboard sensors in near-real-time. As a result, enormous computing costs will be introduced to the AVs for processing the tasks with the deployed machine learning (ML) model, while the inference accuracy may not be guaranteed. In this context, the advent of edge intelligence (EI) and sixth-generation (6G) wireless networking are expected to pave the way to more reliable and safer autonomous driving by providing multi-access edge computing (MEC) together with ML to AVs in close proximity. To realize this goal, we propose a two-tier EI-empowered autonomous driving framework. In the autonomous-vehicles tier, the autonomous vehicles are deployed with the shallow layers by splitting the trained deep neural network model. In the edge-intelligence tier, an edge server is implemented with the remaining layers (also deep layers) and an appropriately trained multi-task learning (MTL) model. In particular, obtaining the optimal offloading strategy (including the binary offloading decision and the computational resources allocation) can be formulated as a mixed-integer nonlinear programming (MINLP) problem, which is solved via MTL in near-real-time with high accuracy. On another note, an edge-vehicle joint inference is proposed through neural network segmentation to achieve efficient online inference with data privacy-preserving and less communication delay. Experiments demonstrate the effectiveness of the proposed framework, and open research topics are finally listed.

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