ML4Comm-Netw / Paper-with-Code-of-Wireless-communication-Based-on-DL

无线与深度学习结合的论文代码整理/Paper-with-Code-of-Wireless-communication-Based-on-DL
1.91k stars 648 forks source link

Online Meta-Learning For Hybrid Model-Based Deep Receivers #35

Closed gaze-wu closed 1 year ago

gaze-wu commented 1 year ago

摘要: Recent years have witnessed growing interest in the application of deep neural networks (DNNs) for receiver design, which can potentially be applied in complex environments without relying on knowledge of the channel model. However, the dynamic nature of communication channels often leads to rapid distribution shifts, which may require periodically retraining. This paper formulates a data-efficient two-stage training method that facilitates rapid online adaptation. Our training mechanism uses a predictive meta-learning scheme to train rapidly from data corresponding to both current and past channel realizations. Our method is applicable to any deep neural network (DNN)-based receiver, and does not require transmission of new pilot data for training. To illustrate the proposed approach, we study DNN-aided receivers that utilize an interpretable model-based architecture, and introduce a modular training strategy based on predictive meta-learning. We demonstrate our techniques in simulations on a synthetic linear channel, a synthetic non-linear channel, and a COST 2100 channel. Our results demonstrate that the proposed online training scheme allows receivers to outperform previous techniques based on self-supervision and joint-learning by a margin of up to 2.5 dB in coded bit error rate in rapidly-varying scenarios.

论文链接:https://arxiv.org/abs/2203.14359

代码链接:https://github.com/tomerraviv95/meta-deepsic

liyiq5 commented 1 year ago

邮件已经收到,谢谢,祝好~!

Charlie258 commented 1 year ago

你好,你的邮件已经收到,谢谢。

zhuwenxing commented 1 year ago

Done