Abstract
The evolution toward sixth-generation (6G) communication systems
demands advanced multiple access techniques capable of meeting
stringent requirements for massive connectivity, ultra-low latency, and
high spectral efficiency. Non-Orthogonal Multiple Access (NOMA) has
emerged as a promising candidate, enabling simultaneous access for
multiple users by sharing the same frequency resources with different
power levels. However, efficient power allocation and ensuring fairness
among users remain critical challenges. Traditional optimization
based methods often face high computational complexity and limited
adaptability to dynamic environments, making them less suitable for
real-time applications. This study introduces an AI-driven framework
for power allocation and fairness optimization in NOMA-enabled 6G
networks. The proposed method employs machine learning models to
predict optimal power allocation strategies by learning from dynamic
user distributions, channel state information, and traffic demands.
Unlike conventional schemes, the AI model adaptively balances system
throughput and user fairness, reducing the risk of resource
monopolization by users with favorable channel conditions.
Experimental evaluations demonstrate that the proposed framework
achieves up to 18% improvement in spectral efficiency and 22% better
fairness index compared to conventional water-filling and heuristic
based allocation methods. Additionally, the machine learning
approach reduces computation time by nearly 30%, making it viable for
real-time deployment in ultra-dense 6G environments. These results
highlight the potential of integrating AI with NOMA to enhance the
robustness and intelligence of next-generation communication
systems.
Authors
N. Vijayaraghavan1, R. Thiagarajan2
Prathyusha Engineering College, India1, Veltech Multitech Dr Rangarajan Dr Sakunthala Engineering College, India2
Keywords
NOMA, 6G, Power Allocation, User Fairness, Machine Learning