Deep Reinforcement Learning for Adaptive Network Slicing in 5G for Intelligent Vehicular Systems and Smart Cities
Almuthanna Nassar, and Yasin Yilmaz

TL;DR
This paper introduces a deep reinforcement learning approach for adaptive network slicing at the edge in 5G networks, optimizing resource allocation for vehicular and smart city IoT applications with heterogeneous demands.
Contribution
It presents a novel DRL-based framework for dynamic network slicing in fog radio access networks, formulated as an MDP, to improve resource utilization and latency management.
Findings
DRL-based slicing outperforms traditional methods in dynamic scenarios.
The proposed method quickly learns optimal policies through environment interaction.
Simulation results show improved resource efficiency and latency reduction.
Abstract
Intelligent vehicular systems and smart city applications are the fastest growing Internet of things (IoT) implementations at a compound annual growth rate of 30%. In view of the recent advances in IoT devices and the emerging new breed of IoT applications driven by artificial intelligence (AI), fog radio access network (F-RAN) has been recently introduced for the fifth generation (5G) wireless communications to overcome the latency limitations of cloud-RAN (C-RAN). We consider the network slicing problem of allocating the limited resources at the network edge (fog nodes) to vehicular and smart city users with heterogeneous latency and computing demands in dynamic environments. We develop a network slicing model based on a cluster of fog nodes (FNs) coordinated with an edge controller (EC) to efficiently utilize the limited resources at the network edge. For each service request in a…
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