Agent Tuning & Optimization 相关度: 6/10

LOREN: Low Rank-Based Code-Rate Adaptation in Neural Receivers

Bram Van Bolderik, Vlado Menkovski, Sonia Heemstra de Groot, Manil Dev Gomony
arXiv: 2602.10770v1 发布: 2026-02-11 更新: 2026-02-11

AI 摘要

提出一种基于低秩适配的神经接收机LOREN,降低了多码率支持的硬件开销。

主要贡献

  • 提出了LOREN:一种低秩适配神经接收机
  • 实现了多码率的硬件开销降低
  • 在真实无线信道下验证了LOREN的有效性

方法论

通过在卷积层中集成低秩适配器,冻结共享基础网络,只为每个码率训练小型适配器。

原文摘要

Neural network based receivers have recently demonstrated superior system-level performance compared to traditional receivers. However, their practicality is limited by high memory and power requirements, as separate weight sets must be stored for each code rate. To address this challenge, we propose LOREN, a Low Rank-Based Code-Rate Adaptation Neural Receiver that achieves adaptability with minimal overhead. LOREN integrates lightweight low rank adaptation adapters (LOREN adapters) into convolutional layers, freezing a shared base network while training only small adapters per code rate. An end-to-end training framework over 3GPP CDL channels ensures robustness across realistic wireless environments. LOREN achieves comparable or superior performance relative to fully retrained base neural receivers. The hardware implementation of LOREN in 22nm technology shows more than 65% savings in silicon area and up to 15% power reduction when supporting three code rates.

标签

神经接收机 低秩适配 硬件实现 无线通信

arXiv 分类

cs.LG cs.AI cs.AR eess.SP