Interference-Robust Non-Coherent Over-the-Air Computation for Decentralized Optimization
- URL: http://arxiv.org/abs/2602.12426v1
- Date: Thu, 12 Feb 2026 21:30:51 GMT
- Title: Interference-Robust Non-Coherent Over-the-Air Computation for Decentralized Optimization
- Authors: Nicolò Michelusi,
- Abstract summary: Non-coherent over-the-air (NCOTA) computation enables low-latency and bandwidth-efficient decentralized optimization.<n>In this paper, we propose a novel interference-robust (IR-)NCOTA scheme.
- Score: 8.071989780397692
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Non-coherent over-the-air (NCOTA) computation enables low-latency and bandwidth-efficient decentralized optimization by exploiting the average energy superposition property of wireless channels. It has recently been proposed as a powerful tool for executing consensus-based optimization algorithms in fully decentralized systems. A key advantage of NCOTA is that it enables unbiased consensus estimation without channel state information at either transmitters or receivers, requires no transmission scheduling, and scales efficiently to dense network deployments. However, NCOTA is inherently susceptible to external interference, which can bias the consensus estimate and deteriorate the convergence of the underlying decentralized optimization algorithm. In this paper, we propose a novel interference-robust (IR-)NCOTA scheme. The core idea is to apply a coordinated random rotation of the frame of reference across all nodes, and transmit a pseudo-random pilot signal, allowing to transform external interference into a circularly symmetric distribution with zero mean relative to the rotated frame. This ensures that the consensus estimates remain unbiased, preserving the convergence guarantees of the underlying optimization algorithm. Through numerical results on a classification task, it is demonstrated that IR-NCOTA exhibits superior performance over the baseline NCOTA algorithm in the presence of external interference.
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