Litcius/Paper detail

MIMO-GAN: Generative MIMO Channel Modeling

Tribhuvanesh Orekondy, Arash Behboodi, Joseph B. Soriaga

2022ICC 2022 - IEEE International Conference on Communications22 citationsDOI

Abstract

We propose generative channel modeling to learn statistical channel models from channel input-output measurements. Generative channel models can learn more complicated distributions and represent the field data more faithfully. They are tractable and easy to sample from, which can potentially speed up the simulation rounds. To achieve this, we leverage advances in generative adversarial network (GAN), which helps us learn an implicit distribution over stochastic MIMO channels from observed measurements. In particular, our approach MIMO-GAN implicitly models the wireless channel as a distribution of time-domain band-limited impulse responses. We evaluate MIMO-GAN on 3GPP TDL MIMO channels and observe high-consistency in capturing power, delay and spatial correlation statistics of the underlying channel. In particular, we observe MIMO-GAN achieve errors of under 3.57 ns average delay and -18.7 dB power.

Topics & Concepts

MIMOComputer scienceSpatial correlationChannel (broadcasting)3G MIMOLeverage (statistics)Electronic engineeringAlgorithmTelecommunicationsMachine learningEngineeringWireless Signal Modulation ClassificationHate Speech and Cyberbullying DetectionPlant Virus Research Studies