Channel estimation and equalisation using generative adversarial networks
Abstract
Channel State Information (CSI) estimators are used in everyday communication systems
to estimate channel impairments that affect transmitted data, and to equalise the impaired
data to a more accurate state. However, this can be a complex task as channels cause
many non-linear impairments to transmitted data.
In this study, we construct a simulated environment to investigate the effects of channel
impairments on CSI data in Long Term Evolution (LTE) environments. Using the
simulated environment, we also generate datasets with which we investigate the ability
of several deep learning architectures to estimate CSI. We extend this investigation to
adversarial training techniques that have had success on computer vision tasks that are
similar to CSI estimation. These trained deep learning networks are evaluated in several
wireless communication environments to investigate the effect of adversarial training on
network performance. We start this analysis by investigating networks in the Single-In
Single-Out (SISO) environment before moving to Multi-Antenna (MA) environments. In
this process, we find that the performance of adversarially trained networks in an MA
environment deviates from the expected performance indicated in the SISO training environment.
Finally, we show that adversarial training has the potential to train better
performing CSI estimators without increasing the computational complexity of the network
when implemented in a wireless communications system.
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