Wireless communications systems are impacted by multi-path fading and Doppler shift in dynamic environments, where the channel becomes doubly-dispersive and its estimation becomes an arduous task. Only a few pilots are used for channel estimation in conventional approaches to preserve high data rate transmission. Consequently, such estimators experience a significant performance degradation in high mobility scenarios. Recently, deep learning has been employed for doubly-dispersive channel estimation due to its low-complexity, robustness, and good generalization ability. Against this backdrop, the current paper presents a comprehensive survey on channel estimation techniques based on deep learning by deeply investigating different methods. The study also provides extensive experimental simulations followed by a computational complexity analysis. After considering different parameters such as modulation order, mobility, frame length, and deep learning architecture, the performance of the studied estimators is evaluated in several mobility scenarios. In addition, the source codes are made available online in order to make the results reproducible.
翻译:无线通信系统在动态环境中受到多路径衰减和多普勒转换的影响,在这种环境中,频道变得双向分散,其估计成为一项艰巨的任务;只有几个试点项目用于传统方法的频道估计,以保存高数据速率传输;因此,在高流动性情景下,这种估计员的性能显著退化;最近,利用深层次的学习进行双向分散的频道估计,因为其复杂性低、稳健性和良好的概括能力;在此背景下,本文件介绍了基于深入调查不同方法的深层学习的频道估计技术的全面调查;该研究还提供了广泛的实验模拟,随后进行了计算复杂性分析;在考虑了不同的参数,例如调制、流动性、框架长度和深学习结构之后,研究的估量员的性能在若干流动性情景中得到了评估;此外,源代码在网上提供,以使结果可以重新传播。