We propose a deep learning-based method that uses spatial and temporal information extracted from the sub-6GHz band to predict/track beams in the millimeter-wave (mmWave) band. In more detail, we consider a dual-band communication system operating in both the sub-6GHz and mmWave bands. The objective is to maximize the achievable mutual information in the mmWave band with a hybrid analog/digital architecture where analog precoders (RF precoders) are taken from a finite codebook. Finding a RF precoder using conventional search methods incurs large signalling overhead, and the signalling scales with the number of RF chains and the resolution of the phase shifters. To overcome the issue of large signalling overhead in the mmWave band, the proposed method exploits the spatiotemporal correlation between sub-6GHz and mmWave bands, and it predicts/tracks the RF precoders in the mmWave band from sub-6GHz channel measurements. The proposed method provides a smaller candidate set so that performing a search over that set significantly reduces the signalling overhead compared with conventional search heuristics. Simulations show that the proposed method can provide reasonable achievable rates while significantly reducing the signalling overhead.
翻译:我们建议一种深层次的学习方法,利用从亚六GHz频带中提取的时空信息预测/跟踪毫米波段(mmWave)的波段。我们更详细地考虑在亚六GHz和mmWave频段运行的双频段通信系统。目的是利用一个混合的模拟/数字结构,在毫米Wave频段中最大限度地提供可实现的相互信息,从一个有限的代码簿中取出模拟预译器(RF 预译器),使用常规搜索方法找到一个RF预译器,产生大型的信号顶部,用RF链数和平流器分辨率的信号尺度。为了克服毫米瓦频段中大型信号顶部的问题,拟议方法利用了亚六GHz和mmWave频段之间的波段相关性,并预测/跟踪MWave频段中的RF预译器(RF 预译器),从亚六GHHz频道测量中采集。拟议方法提供了更小的候选装置,以便进行搜索,从而与传统的搜索率相比,大大降低了信号顶部的信号顶部,同时提供可大幅度降低的搜索率的方法。模拟显示可实现的频率。