Deep reinforcement learning for RAN optimization and control

11/09/2020
by   Yu Chen, et al.
21

Due to the high variability of the traffic in the radio access network (RAN), fixed network configurations are not flexible to achieve the optimal performance. Our vendors provide several settings of the eNodeB to optimize the RAN performance, such as media access control scheduler, loading balance, etc. But the detailed mechanisms of the eNodeB configurations are usually very complicated and not disclosed, not to mention the large KPIs space needed to be considered. These make constructing simulator, offline tuning, or rule-based solutions difficult. We aim to build an intelligent controller without strong assumption or domain knowledge about the RAN and can run for 24/7 without supervision. To achieve this goal, we first build a closed-loop control testbed RAN in a lab environment with one eNodeB provided by one of the largest wireless vendors and four smartphones. Next, we build a double Q network agent that is trained with the live feedbacks of the key performance indicators from the RAN. Our work proved the effectiveness of applying deep reinforcement learning to improve network performance in a real RAN network environment.

READ FULL TEXT
research
12/27/2021

Intelligent Traffic Light via Policy-based Deep Reinforcement Learning

Intelligent traffic lights in smart cities can optimally reduce traffic ...
research
09/11/2023

A Comparative Analysis of Deep Reinforcement Learning-based xApps in O-RAN

The highly heterogeneous ecosystem of Next Generation (NextG) wireless c...
research
08/19/2019

Computational Flight Control: A Domain-Knowledge-Aided Deep Reinforcement Learning Approach

This papers aims to examine the potential of using the emerging deep rei...
research
05/20/2020

Deep Reinforcement Learning for High Level Character Control

In this paper, we propose the use of traditional animations, heuristic b...
research
10/27/2018

Cooperative Deep Reinforcement Learning for Multiple-Group NB-IoT Networks Optimization

NarrowBand-Internet of Things (NB-IoT) is an emerging cellular-based tec...
research
01/09/2018

DeepTraffic: Driving Fast through Dense Traffic with Deep Reinforcement Learning

We present a micro-traffic simulation (named "DeepTraffic") where the pe...
research
03/24/2020

Learn to Schedule (LEASCH): A Deep reinforcement learning approach for radio resource scheduling in the 5G MAC layer

Network management tools are usually inherited from one generation to an...

Please sign up or login with your details

Forgot password? Click here to reset