SPAIITFeb 15, 2023

Performance Limits of a Deep Learning-Enabled Text Semantic Communication under Interference

arXiv:2302.14702v319 citationsh-index: 102
Originality Incremental advance
AI Analysis

This work addresses the vulnerability of semantic communication systems to interference, which is crucial for reliable 6G networks, though it is incremental as it builds on existing DeepSC methods.

The paper investigates the performance limits of DeepSC, a deep learning-based text semantic communication system, under radio frequency interference, showing that it produces semantically irrelevant sentences as interference power increases and deriving its practical limits and outage probability lower bound.

Although deep learning (DL)-enabled semantic communication (SemCom) has emerged as a 6G enabler by minimizing irrelevant information transmission -- minimizing power usage, bandwidth consumption, and transmission delay, its benefits can be limited by radio frequency interference (RFI) that causes substantial semantic noise. Such semantic noise's impact can be alleviated using an interference-resistant and robust (IR$^2$) SemCom design, though no such design exists yet. To stimulate fundamental research on IR2 SemCom, the performance limits of a popular text SemCom system named DeepSC are studied in the presence of (multi-interferer) RFI. By introducing a principled probabilistic framework for SemCom, we show that DeepSC produces semantically irrelevant sentences as the power of (multi-interferer) RFI gets very large. We also derive DeepSC's practical limits and a lower bound on its outage probability under multi-interferer RFI, and propose a (generic) lifelong DL-based IR$^2$ SemCom system. We corroborate the derived limits with simulations and computer experiments, which also affirm the vulnerability of DeepSC to a wireless attack using RFI.

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