Deep autoencoder (DAE) frameworks have demonstrated their effectiveness in reducing channel state information (CSI) feedback overhead in massive multiple-input multiple-output (mMIMO) orthogonal frequency division multiplexing (OFDM) systems. However, existing CSI feedback models struggle to adapt to dynamic environments caused by user mobility, requiring retraining when encountering new CSI distributions. Moreover, returning to previously encountered environments often leads to performance degradation due to catastrophic forgetting. Continual learning involves enabling models to incorporate new information while maintaining performance on previously learned tasks. To address these challenges, we propose a generative adversarial network (GAN)-based learning approach for CSI feedback. By using a GAN generator as a memory unit, our method preserves knowledge from past environments and ensures consistently high performance across diverse scenarios without forgetting. Simulation results show that the proposed approach enhances the generalization capability of the DAE framework while maintaining low memory overhead. Furthermore, it can be seamlessly integrated with other advanced CSI feedback models, highlighting its robustness and adaptability.
翻译:深度自编码器框架已证明其在降低大规模多输入多输出正交频分复用系统中信道状态信息反馈开销方面的有效性。然而,现有CSI反馈模型难以适应由用户移动性引起的动态环境,遇到新的CSI分布时需要重新训练。此外,返回先前遇到的环境常因灾难性遗忘导致性能下降。连续学习旨在使模型能够整合新信息,同时保持对已学习任务的性能。为应对这些挑战,我们提出一种基于生成对抗网络的CSI反馈学习方法。通过使用GAN生成器作为记忆单元,该方法保留过去环境的知识,确保在不同场景下保持持续高性能且不发生遗忘。仿真结果表明,所提方法增强了DAE框架的泛化能力,同时维持较低的内存开销。此外,该方法可与其他先进CSI反馈模型无缝集成,凸显了其鲁棒性和适应性。