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Federated Learning for Terahertz Wireless Communication

Published: December 4, 2025 | arXiv ID: 2512.04984v1

By: O. Tansel Baydas, Ozgur B. Akan

Potential Business Impact:

Fixes slow learning in super-fast wireless networks.

Business Areas:
RFID Hardware

The convergence of Terahertz (THz) communications and Federated Learning (FL) promises ultra-fast distributed learning, yet the impact of realistic wideband impairments on optimization dynamics remains theoretically uncharacterized. This paper bridges this gap by developing a multicarrier stochastic framework that explicitly couples local gradient updates with frequency-selective THz effects, including beam squint, molecular absorption, and jitter. Our analysis uncovers a critical diversity trap: under standard unbiased aggregation, the convergence error floor is driven by the harmonic mean of subcarrier SNRs. Consequently, a single spectral hole caused by severe beam squint can render the entire bandwidth useless for reliable model updates. We further identify a fundamental bandwidth limit, revealing that expanding the spectrum beyond a critical point degrades convergence due to the integration of thermal noise and gain collapse at band edges. Finally, we demonstrate that an SNR-weighted aggregation strategy is necessary to suppress the variance singularity at these spectral holes, effectively recovering convergence in high-squint regimes where standard averaging fails. Numerical results validate the expected impact of the discussed physical layer parameters' on performance of THz-FL systems.

Country of Origin
🇹🇷 🇬🇧 United Kingdom, Turkey

Page Count
10 pages

Category
Computer Science:
Distributed, Parallel, and Cluster Computing