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Software-defined networking QoS optimization based on deep reinforcement learning
Authors:Julong LAN  Xueshuai ZHANG  Yuxiang HU  Penghao SUN
Affiliation:National Digital Switching System Engineering &Research Center,Zhengzhou 450001,China
Abstract:To solve the problem that the QoS optimization schemes which based on heuristic algorithm degraded often due to the mismatch between parameters and network characteristics in software-defined networking scenarios,a software-defined networking QoS optimization algorithm based on deep reinforcement learning was proposed.Firstly,the network resources and state information were integrated into the network model,and then the flow perception capability was improved by the long short-term memory,and finally the dynamic flow scheduling strategy,which satisfied the specific QoS objectives,were generated in combination with deep reinforcement learning.The experimental results show that,compared with the existing algorithms,the proposed algorithm not only ensures the end-to-end delay and packet loss rate,but also improves the network load balancing by 22.7% and increases the throughput by 8.2%.
Keywords:software-defined networking  deep reinforcement learning  long short-term memory  quality of service  
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