4.7 Article

Communication-and-Computing Latency Minimization for UAV-Enabled Virtual Reality Delivery Systems

期刊

IEEE TRANSACTIONS ON COMMUNICATIONS
卷 69, 期 3, 页码 1723-1735

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCOMM.2020.3040283

关键词

Servers; Unmanned aerial vehicles; Clouds; Minimization; Telecommunication computing; Resource management; Cloud computing; UAV communication; computing; caching; latency minimization; joint optimization

资金

  1. ARC [DP190101988, DP210103410]
  2. ARC Laureate Fellowship [FL160100032]

向作者/读者索取更多资源

The study proposes a low-latency virtual reality delivery system using UAV base stations to transmit VR content to multiple ground users. A low-complexity iterative algorithm is designed to minimize communication and computing latency among users, with caching found to be helpful in reducing latency.
In this paper, we propose a low-latency virtual reality (VR) delivery system where an unmanned aerial vehicle (UAV) base station (U-BS) is deployed to deliver VR content from a cloud server to multiple ground VR users. Each VR input data requested by the VR users can be either projected at the U-BS before transmission or processed locally at each user. Popular VR input data is cached at the U-BS to further reduce backhaul latency from the cloud server. For this system, we design a low-complexity iterative algorithm to minimize the maximum communications and computing latency among all VR users subject to the computing, caching and transmit power constraints, which is guaranteed to converge. Numerical results indicate that our proposed algorithm can achieve a lower latency compared to other benchmark schemes. Moreover, we observe that the maximum latency mainly comes from communication latency when the bandwidth resource is limited, while it is dominated by computing latency when computing capacity is low. In addition, we find that caching is helpful to reduce latency.

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