NIAISPFeb 15, 2022

Wireless Resource Management in Intelligent Semantic Communication Networks

arXiv:2202.07632v11 citations
Originality Incremental advance
AI Analysis

This addresses resource management challenges in AI-driven semantic communication networks, representing an incremental improvement for wireless network efficiency.

The paper tackles user association and bandwidth allocation in intelligent semantic communication networks by introducing a new performance metric and a two-stage optimization solution, achieving superior system throughput in message compared to baselines.

The prosperity of artificial intelligence (AI) has laid a promising paradigm of communication system, i.e., intelligent semantic communication (ISC), where semantic contents, instead of traditional bit sequences, are coded by AI models for efficient communication. Due to the unique demand of background knowledge for semantic recovery, wireless resource management faces new challenges in ISC. In this paper, we address the user association (UA) and bandwidth allocation (BA) problems in an ISC-enabled heterogeneous network (ISC-HetNet). We first introduce the auxiliary knowledge base (KB) into the system model, and develop a new performance metric for the ISC-HetNet, named system throughput in message (STM). Joint optimization of UA and BA is then formulated with the aim of STM maximization subject to KB matching and wireless bandwidth constraints. To this end, we propose a two-stage solution, including a stochastic programming method in the first stage to obtain a deterministic objective with semantic confidence, and a heuristic algorithm in the second stage to reach the optimality of UA and BA. Numerical results show great superiority and reliability of our proposed solution on the STM performance when compared with two baseline algorithms.

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