Environment-Aware Transfer Reinforcement Learning for Sustainable Beam Selection
By: Dariush Salami , Ramin Hashemi , Parham Kazemi and more
Potential Business Impact:
Makes wireless signals faster and use less power.
This paper presents a novel and sustainable approach for improving beam selection in 5G and beyond networks using transfer learning and Reinforcement Learning (RL). Traditional RL-based beam selection models require extensive training time and computational resources, particularly when deployed in diverse environments with varying propagation characteristics posing a major challenge for scalability and energy efficiency. To address this, we propose modeling the environment as a point cloud, where each point represents the locations of gNodeBs (gNBs) and surrounding scatterers. By computing the Chamfer distance between point clouds, structurally similar environments can be efficiently identified, enabling the reuse of pre-trained models through transfer learning. This methodology leads to a 16x reduction in training time and computational overhead, directly contributing to energy efficiency. By minimizing the need for retraining in each new deployment, our approach significantly lowers power consumption and supports the development of green and sustainable Artificial Intelligence (AI) in wireless systems. Furthermore, it accelerates time-to-deployment, reduces carbon emissions associated with training, and enhances the viability of deploying AI-driven communication systems at the edge. Simulation results confirm that our approach maintains high performance while drastically cutting energy costs, demonstrating the potential of transfer learning to enable scalable, adaptive, and environmentally conscious RL-based beam selection strategies in dynamic and diverse propagation environments.
Similar Papers
Online Learning-based Adaptive Beam Switching for 6G Networks: Enhancing Efficiency and Resilience
Networking and Internet Architecture
Makes wireless internet faster and more reliable.
A TinyML Reinforcement Learning Approach for Energy-Efficient Light Control in Low-Cost Greenhouse Systems
Machine Learning (CS)
Makes lights automatically adjust to save energy.
Diffusion-RL for Scalable Resource Allocation for 6G Networks
Networking and Internet Architecture
Makes phone networks faster and more reliable.