When Vehicular Fog Computing Meets Autonomous Driving: Computational Resource Management and Task Offloading

IEEE Network ◽  
2020 ◽  
Vol 34 (6) ◽  
pp. 70-76
Author(s):  
Zhenyu Zhou ◽  
Haijun Liao ◽  
Xiaoyan Wang ◽  
Shahid Mumtaz ◽  
Jonathan Rodriguez
2020 ◽  
Vol 2020 ◽  
pp. 1-12
Author(s):  
Qiong Wu ◽  
Hongmei Ge ◽  
Qiang Fan ◽  
Wei Yin ◽  
Bo Chang ◽  
...  

Various emerging vehicular applications such as autonomous driving and safety early warning are used to improve the traffic safety and ensure passenger comfort. The completion of these applications necessitates significant computational resources to perform enormous latency-sensitive/nonlatency-sensitive and computation-intensive tasks. It is hard for vehicles to satisfy the computation requirements of these applications due to the limit computational capability of the on-board computer. To solve the problem, many works have proposed some efficient task offloading schemes in computing paradigms such as mobile fog computing (MFC) for the vehicular network. In the MFC, vehicles adopt the IEEE 802.11p protocol to transmit tasks. According to the IEEE 802.11p, tasks can be divided into high priority and low priority according to the delay requirements. However, no existing task offloading work takes into account the different priorities of tasks transmitted by different access categories (ACs) of IEEE 802.11p. In this paper, we propose an efficient task offloading strategy to maximize the long-term expected system reward in terms of reducing the executing time of tasks. Specifically, we jointly consider the impact of priorities of tasks transmitted by different ACs, mobility of vehicles, and the arrival/departure of computing tasks, and then transform the offloading problem into a semi-Markov decision process (SMDP) model. Afterwards, we adopt the relative value iterative algorithm to solve the SMDP model to find the optimal task offloading strategy. Finally, we evaluate the performance of the proposed scheme by extensive experiments. Numerical results indicate that the proposed offloading strategy performs well compared to the greedy algorithm.


Author(s):  
Zhenyu Zhou ◽  
Haijun Liao ◽  
Bo Gu ◽  
Shahid Mumtaz ◽  
Jonathan Rodriguez

2021 ◽  
Author(s):  
Ehzaz Mustafa ◽  
Junaid Shuja ◽  
S. Khaliq uz Zaman ◽  
Ali Imran Jehangiri ◽  
Sadia Din ◽  
...  

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