Enhancing NOMA Handover Performance Using Hybrid AI-Driven Modulated Deterministic Sequences

arXiv:2602.13202v1 Announce Type: new
Abstract: Non-Orthogonal Multiple Access (NOMA) is an information-theoretical approach used in 5G networks to improve spectral efficiency, but it is prone to interference during handovers. In this work, we propose a hybrid method that combines Gold-Walsh modulated sequences with Deep Q-Networks (DQN) to intelligently manage interference during NOMA handovers. This method optimizes sequence selection and power allocation dynamically. As a result, it achieves a 95.2% handover success rate, which is an improvement of up to 23.1 percentage points. It also delivers up to 28% throughput gain and reduces interference by up to 41% in various mobility scenarios. All improvements are statistically significant ((p < 0.001)). The DQN trains in (4{,}200 pm 400) episodes with a complexity of (O(N log N + d cdot h + log B)) and can be deployed in real-time.

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