In modern communication systems, channel state information is of paramount importance to achieve capacity. It is then crucial to accurately estimate the channel. It is possible to perform SISO-OFDM channel estimation using sparse recovery techniques. However, this approach relies on the use of a physical wave propagation model to build a dictionary, which requires perfect knowledge of the system's parameters. In this paper, an unfolded neural network is used to lighten this constraint. Its architecture, based on a sparse recovery algorithm, allows SISO-OFDM channel estimation even if the system's parameters are not perfectly known. Indeed, its unsupervised online learning allows to learn the system's imperfections in order to enhance the estimation performance. The practicality of the proposed method is improved with respect to the state of the art in two aspects: constrained dictionaries are introduced in order to reduce sample complexity and hierarchical search within dictionaries is proposed in order to reduce time complexity. Finally, the performance of the proposed unfolded network is evaluated and compared to several baselines using realistic channel data, showing the great potential of the approach.
翻译:在现代通信系统中,频道状态信息对于实现能力至关重要,然后对频道进行准确估计至关重要。可以使用稀有的回收技术进行SISO-OFDM频道估计。但是,这种方法依赖于使用物理波传播模型来建立字典,这要求对系统的参数有完全的了解。在本文中,一个展开的神经网络被用来减轻这一限制。其结构基于一种稀疏的恢复算法,允许SISO-OFDM频道估计,即使该系统的参数并不完全为人所知。事实上,它未经监督的在线学习能够了解系统的不完善之处,以提高估计性能。拟议方法的实用性在两个方面得到了改进:采用限制词典是为了减少样本复杂性和在词典内进行分级搜索,以降低时间复杂性。最后,对拟议展开的网络的性能进行了评估,并将使用现实的频道数据与若干基线进行比较,展示了该方法的巨大潜力。