Optimizing Reinforcement Learning Training over Digital Twin Enabled Multi-fidelity Networks
Hanzhi Yu, Hasan Farooq, Julien Forgeat, Shruti Bothe, Kristijonas Cyras, Md Moin Uddin Chowdhury, Mingzhe Chen

TL;DR
This paper introduces a hierarchical reinforcement learning framework leveraging digital twin technology to optimize antenna tilt angles in wireless networks, reducing data collection delay and improving user data rates.
Contribution
It proposes a novel hierarchical RL approach with robust adversarial loss and PPO to jointly optimize network control and data collection strategy.
Findings
Reduces physical network data collection delay by up to 28.01%.
Improves user data rates through optimized tilt angle adjustment.
Demonstrates effectiveness of digital twin-assisted RL in network management.
Abstract
In this paper, we investigate a novel digital network twin (DNT) assisted deep learning (DL) model training framework. In particular, we consider a physical network where a base station (BS) uses several antennas to serve multiple mobile users, and a DNT that is a virtual representation of the physical network. The BS must adjust its antenna tilt angles to optimize the data rates of all users. Due to user mobility, the BS may not be able to accurately track network dynamics such as wireless channels and user mobilities. Hence, a reinforcement learning (RL) approach is used to dynamically adjust the antenna tilt angles. To train the RL, we can use data collected from the physical network and the DNT. The data collected from the physical network is more accurate but incurs more communication overhead compared to the data collected from the DNT. Therefore, it is necessary to determine the…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Software-Defined Networks and 5G · UAV Applications and Optimization
