Title of article :
A QoS Optimization Technique with Deep Reinforcement Learning in SDN-Based IoT
Author/Authors :
Moslehi, Mohammadreza Department of Computer Engineering - University of Kashan, Kashan , Ebrahimpor-Komleh, Hossein Department of Computer Engineering - University of Kashan, Kashan , Goli, Salman Department of Computer Engineering - University of Kashan, Kashan , Taji, Reza Independent Researcher in the Field of AI and Neural Networking
Pages :
9
From page :
105
To page :
113
Abstract :
In recent years, exponential growth of communication devices in Internet of Things (IoT) has become an emerging technology which facilitates heterogeneous devices to connect with each other in heterogeneous networks. This communication requires different level of Quality-of-Service (QoS) and policies depending on the device type and location. To provide a specific level of QoS, we can utilize emerging new technological concepts in IoT infrastructure, software-defined network (SDN) and, machine learning algorithms. We use deep reinforcement learning in the process of resource management and allocation in control plane. We present an algorithm that aims to optimize resource allocation. Simulation results show that the proposed algorithm improved network performances in terms of QoS parameters, including delay and throughput compared to Random and Round Robin methods. Compared to similar methods the performance of the proposed method is also as good as the fuzzy and predictive methods.
Keywords :
Internet of Things , Software-Defined Networking (SDN) , Deep Reinforcement Learning , QoS
Journal title :
Majlesi Journal of Electrical Engineering
Serial Year :
2021
Record number :
2690654
Link To Document :
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