论文标题
持续基于学习的MIMO渠道估计:基准测试研究
Continual Learning-Based MIMO Channel Estimation: A Benchmarking Study
论文作者
论文摘要
随着无线通信深度学习技术的扩散,几项作品采用了基于学习的方法来解决渠道估计问题。尽管这些方法通常在推理时间的计算效率方面促进,但它们的使用仅限于通信系统参数(例如信噪比(SNR)和相干时间)的特定固定训练设置。因此,当模型在与培训的设置不同的设置上测试时,这些基于学习的解决方案的性能将降低。这激发了我们研究持续监督学习(CL)的工作,以减轻当前方法的缺点。特别是,我们设计了一组通道估计任务,其中我们改变了通道模型的不同参数。我们专注于高斯 - 马尔科夫雷利(Gauss-Markov Rayleigh)褪色通道估计,以评估非平稳性对均方误差(MSE)标准的影响。我们研究了最先进的CL方法的选择,并从经验上展示了在不断发展的通道设置中灾难性遗忘的重要性。我们的结果表明,CL算法可以改善由SNR级别和相干时间变化的两个通道估计任务中的干扰性能。
With the proliferation of deep learning techniques for wireless communication, several works have adopted learning-based approaches to solve the channel estimation problem. While these methods are usually promoted for their computational efficiency at inference time, their use is restricted to specific stationary training settings in terms of communication system parameters, e.g., signal-to-noise ratio (SNR) and coherence time. Therefore, the performance of these learning-based solutions will degrade when the models are tested on different settings than the ones used for training. This motivates our work in which we investigate continual supervised learning (CL) to mitigate the shortcomings of the current approaches. In particular, we design a set of channel estimation tasks wherein we vary different parameters of the channel model. We focus on Gauss-Markov Rayleigh fading channel estimation to assess the impact of non-stationarity on performance in terms of the mean square error (MSE) criterion. We study a selection of state-of-the-art CL methods and we showcase empirically the importance of catastrophic forgetting in continuously evolving channel settings. Our results demonstrate that the CL algorithms can improve the interference performance in two channel estimation tasks governed by changes in the SNR level and coherence time.