4.7 Article

Intelligent Content Caching Strategy in Autonomous Driving Toward 6G

期刊

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TITS.2021.3114199

关键词

Mobile edge computing; 6G; caching; reinforcement learning; autonomous driving

资金

  1. Young and Middle-Aged Science and Technology Innovation Talent Support Plan of Shenyang [RC190026]
  2. Natural Science Foundation of Liaoning Province [2020-MS-237]
  3. Liaoning Provincial Department of Education Science Foundation [JYT19052]
  4. Digit Fujian Internet-of-Things Laboratory of Environmental Monitoring Research Fund, Fujian Normal University [202001]
  5. National Natural Science Foundation of China [61872086]

向作者/读者索取更多资源

The rapid development of 6G can bring autonomous driving closer to reality, but the insufficient edge resources from small base stations highlights the importance of enabling local cache for vehicle users.
The rapid development of 6G can help to bring autonomous driving closed to the reality. Drivers and passengers will have more time for work and leisure spending in the vehicles, further generating a lot of data requirements. However, edge resources from small base stations are insufficient to match the wide variety of services of the future vehicular networks. Besides, due to the high-speed nature of the vehicles, users have to switch the connections among different base stations, whereas such way will cause external latency during the data request. Therefore, it is vital to enable the local cache of vehicle users to realize the reliable autonomous driving. In this paper, we consider caching the contents in the local cache, small base station, and edge server. In practice, the request preference of some single users may he different from a whole region. To maximize the efficiency of content cache, we design a strategy that uses reinforcement learning algorithm to optimize cache schemes on different devices. The experimental results demonstrate that our strategy can enhance the cache hit ratio by 10%-20% compared with the well-known counterparts.

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