Reliable Beamforming at Terahertz Bands: Are Causal Representations the
Way Forward?
- URL: http://arxiv.org/abs/2303.08017v1
- Date: Tue, 14 Mar 2023 16:02:46 GMT
- Title: Reliable Beamforming at Terahertz Bands: Are Causal Representations the
Way Forward?
- Authors: Christo Kurisummoottil Thomas, Walid Saad
- Abstract summary: Multi-user wireless systems can meet metaverse requirements by utilizing terahertz bandwidth with massive number of antennas.
Existing solutions lack proper modeling of channel dynamics, resulting in inaccurate beamforming solutions in high-mobility scenarios.
Herein, a dynamic, semantically aware beamforming solution is proposed for the first time, utilizing novel artificial intelligence algorithms in variational causal inference.
- Score: 85.06664206117088
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Future wireless services, such as the metaverse require high information
rate, reliability, and low latency. Multi-user wireless systems can meet such
requirements by utilizing the abundant terahertz bandwidth with a massive
number of antennas, creating narrow beamforming solutions. However, existing
solutions lack proper modeling of channel dynamics, resulting in inaccurate
beamforming solutions in high-mobility scenarios. Herein, a dynamic,
semantically aware beamforming solution is proposed for the first time,
utilizing novel artificial intelligence algorithms in variational causal
inference to compute the time-varying dynamics of the causal representation of
multi-modal data and the beamforming. Simulations show that the proposed
causality-guided approach for Terahertz (THz) beamforming outperforms classical
MIMO beamforming techniques.
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