TY - JOUR
T1 - Learning Reference Signal (LRS)
T2 - Learning Intelligent Radio Access With Meta-Learned Reference Signal
AU - Ye, Neng
AU - Cao, Xinyuan
AU - Pan, Jianxiong
AU - Liu, Wenjia
AU - Hou, Xiaolin
N1 - Publisher Copyright:
© 1994-2012 IEEE.
PY - 2025
Y1 - 2025
N2 - Online adaptation to the dynamic channel conditions requires intelligent receivers with online learning ability as well as efficient training samples. In this letter, we propose a new type of reference signal termed learning reference signal (LRS), which serves as the online training samples for the fast adaptation of the deep neural network (DNN)-aided intelligent receiver. Specifically, we propose a model-agnostic meta-learning (MAML)-based LRS design framework, where the LRS sequence is regarded as the meta parameter and is meta-learned during the offline training. The maximum loss reduction criteria for LRS design is proposed such that the online meta-update based on LRS can maximize the reduction of the symbol error rate (SER). Furthermore, a Matthew effect in gradient-based training of LRS, which causes imbalanced update on different LRS symbols, is identified and then tackled by a novel symbol bundling and multi-stage updating method to ensure convergence. From experiments, we observe that the learned LRS contains both constellation points and non-constellation points, and achieves more than 4 dB SER gain compared to using arbitrary constellation points as training samples.
AB - Online adaptation to the dynamic channel conditions requires intelligent receivers with online learning ability as well as efficient training samples. In this letter, we propose a new type of reference signal termed learning reference signal (LRS), which serves as the online training samples for the fast adaptation of the deep neural network (DNN)-aided intelligent receiver. Specifically, we propose a model-agnostic meta-learning (MAML)-based LRS design framework, where the LRS sequence is regarded as the meta parameter and is meta-learned during the offline training. The maximum loss reduction criteria for LRS design is proposed such that the online meta-update based on LRS can maximize the reduction of the symbol error rate (SER). Furthermore, a Matthew effect in gradient-based training of LRS, which causes imbalanced update on different LRS symbols, is identified and then tackled by a novel symbol bundling and multi-stage updating method to ensure convergence. From experiments, we observe that the learned LRS contains both constellation points and non-constellation points, and achieves more than 4 dB SER gain compared to using arbitrary constellation points as training samples.
KW - Deep learning
KW - meta-learning
KW - reference signal
UR - https://www.scopus.com/pages/publications/105007336311
U2 - 10.1109/LSP.2025.3576666
DO - 10.1109/LSP.2025.3576666
M3 - Article
AN - SCOPUS:105007336311
SN - 1070-9908
VL - 32
SP - 2384
EP - 2388
JO - IEEE Signal Processing Letters
JF - IEEE Signal Processing Letters
ER -