A Survey on Deep Learning based Channel Estimation in Doubly Dispersive
Environments
- URL: http://arxiv.org/abs/2206.02165v1
- Date: Sun, 5 Jun 2022 12:44:50 GMT
- Title: A Survey on Deep Learning based Channel Estimation in Doubly Dispersive
Environments
- Authors: Abdul Karim Gizzini, Marwa Chafii
- Abstract summary: Wireless communications systems are impacted by multi-path fading and Doppler shift in dynamic environments.
Only a few pilots are used for channel estimation in conventional approaches to preserve high data rate transmission.
Deep learning has been employed for doubly-dispersive channel estimation due to its low-complexity, robustness, and good generalization ability.
- Score: 7.310043452300738
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: 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.
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