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Learning During Detection: Continual Learning for Neural OFDM Receivers via DMRS

Mohanad Obeed, Ming Jian

TL;DR

A zero-overhead online and continual learning framework for orthogonal frequency-division multiplexing neural receivers that directly detect the soft bits of received signals and develops two receiver architectures that separates inference and fine-tuning for uninterrupted operation.

Abstract

Deep neural networks (DNNs) have been increasingly explored for receiver design because they can handle complex environments without relying on explicit channel models. Nevertheless, because communication channels change rapidly, their distributions can shift over time, often making periodic retraining necessary. This paper proposes a zero-overhead online and continual learning framework for orthogonal frequency-division multiplexing (OFDM) neural receivers that directly detect the soft bits of received signals. Unlike conventional fine-tuning methods that rely on dedicated training intervals or full resource grids, our approach leverages existing demodulation reference signals (DMRS) to simultaneously enable signal demodulation and model adaptation. We introduce three pilot designs: fully randomized, hybrid, and additional pilots that flexibly support joint demodulation and learning. To accommodate these pilot designs, we develop two receiver architectures: (i) a parallel design that separates inference and fine-tuning for uninterrupted operation, and (ii) a forward-pass reusing design that reduces computational complexity. Simulation results show that the proposed method effectively tracks both slow and fast channel distribution variations without additional overhead, service interruption, or catastrophic performance degradation under distribution shift.

Learning During Detection: Continual Learning for Neural OFDM Receivers via DMRS

TL;DR

A zero-overhead online and continual learning framework for orthogonal frequency-division multiplexing neural receivers that directly detect the soft bits of received signals and develops two receiver architectures that separates inference and fine-tuning for uninterrupted operation.

Abstract

Deep neural networks (DNNs) have been increasingly explored for receiver design because they can handle complex environments without relying on explicit channel models. Nevertheless, because communication channels change rapidly, their distributions can shift over time, often making periodic retraining necessary. This paper proposes a zero-overhead online and continual learning framework for orthogonal frequency-division multiplexing (OFDM) neural receivers that directly detect the soft bits of received signals. Unlike conventional fine-tuning methods that rely on dedicated training intervals or full resource grids, our approach leverages existing demodulation reference signals (DMRS) to simultaneously enable signal demodulation and model adaptation. We introduce three pilot designs: fully randomized, hybrid, and additional pilots that flexibly support joint demodulation and learning. To accommodate these pilot designs, we develop two receiver architectures: (i) a parallel design that separates inference and fine-tuning for uninterrupted operation, and (ii) a forward-pass reusing design that reduces computational complexity. Simulation results show that the proposed method effectively tracks both slow and fast channel distribution variations without additional overhead, service interruption, or catastrophic performance degradation under distribution shift.
Paper Structure (8 sections, 4 equations, 9 figures)

This paper contains 8 sections, 4 equations, 9 figures.

Figures (9)

  • Figure 1: An example of CoNet architecture when depth = 3.
  • Figure 2: Proposed OFDM frame structures.
  • Figure 3: Proposed receivers that enable continual learning.
  • Figure 4: BER versus SNR to show the effect of distribution shift.
  • Figure 5: BER versus SNR to show how the fine-tuned (FT) models track the channel distribution shift.
  • ...and 4 more figures