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A Novel Video Transmission Optimization Mechanism Based on Reinforcement Learning and Edge Computing
Author(s) -
Nan Hu,
Xuming Cen,
Fangjun Luan,
Liangliang Sun,
Chengdong Wu
Publication year - 2021
Publication title -
mobile information systems
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.346
H-Index - 34
eISSN - 1875-905X
pISSN - 1574-017X
DOI - 10.1155/2021/6258200
Subject(s) - computer science , reinforcement learning , enhanced data rates for gsm evolution , transmission (telecommunications) , the internet , video quality , computer network , real time computing , artificial intelligence , telecommunications , metric (unit) , operations management , world wide web , economics
As we know, the video transmission traffic already constitutes 60% of Internet downlink traffic. The optimization of video transmission efficiency has become an important challenge in the network. This paper designs a video transmission optimization strategy that takes reinforcement learning and edge computing (TORE) to improve the video transmission efficiency and quality of experience. Specifically, first, we design the popularity prediction model for video requests based on the RL (reinforcement learning) and introduce the adaptive video encoding method for optimizing the efficiency of computing resource distribution. Second, we design a video caching strategy, which adopts EC (edge computing) to reduce the redundant video transmission. Last, simulations are conducted, and the experimental results fully demonstrate the improvement of video quality and response time.

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