ITITApr 26

Distributed Electromagnetic Neural Networks for Task-Oriented Semantic Communications

arXiv:2604.2390131.6
AI Analysis

This work addresses computational efficiency and spatial flexibility limitations in semantic communication systems for image recognition tasks.

The paper proposes a UAV-enabled distributed electromagnetic neural network (EMNN) for task-oriented semantic communications, achieving an average 8% accuracy improvement over a single-SIM baseline across multiple datasets.

Semantic communications (SemCom) is a promising paradigm that prioritizes the transmission of task-relevant information, thereby enabling superior communication efficiency over traditional bit-centric systems. However, most existing SemCom systems face critical limitations in computational efficiency and spatial flexibility. To overcome these limitations, we propose a novel unmanned aerial vehicles (UAV)-enabled distributed electromagnetic neural network (EMNN) for a task-oriented SemCom system. Specifically, the proposed distributed EMNN is composed of multiple UAV-mounted stacked intelligent metasurfaces (SIM) and a ground receiving station (GRS), where multiple SIMs collaboratively encode image semantics in the wave domain, and the GRS performs decoding based on the received power distribution. Moreover, we employ a temperature-adaptive gradient optimization algorithm to train the distributed EMNN, which mitigates gradient vanishing and enhances learning stability. Finally, the numerical simulation results demonstrate the effectiveness of distributed EMNN in image recognition task-oriented SemCom, achieving an average $8\%$ accuracy improvement over the single-SIM baseline across multiple datasets.

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