论文标题

语义通信网络的Qoe感知资源分配

QoE-Aware Resource Allocation for Semantic Communication Networks

论文作者

Yan, Lei, Qin, Zhijin, Zhang, Rui, Li, Yongzhao, Li, Geoffrey Ye

论文摘要

为了完成情报任务,语义沟通仅传输与任务相关的信息,从而对传统通信产生显着的性能。为了确保用户对不同类型任务的要求,我们在本文中执行多单元“多任务网络”中的语义感知资源分配。具体而言,首先开发了语义熵的大概度量,以量化不同任务的语义信息,这是基于新型体验质量(QOE)模型的。我们根据传输的语义符号,通道分配和功率分配的数量来制定Qoe感知的语义资源分配。为了解决这个问题,我们首先将其分解为两个独立的子问题。第一个是通过给定的通道分配和功率分配优化传输语义符号的数量,该符号通过详尽的搜索方法来解决。第二个是频道分配和功率分配子问题,该子问题被建模为一对一的匹配游戏,并通过拟议的低复杂性匹配算法解决。仿真结果证明了所提出的方法对整个QoE的有效性和优越性。

With the aim of accomplishing intelligence tasks, semantic communications transmit task-related information only, yielding significant performance gains over conventional communications. To guarantee user requirements for different types of tasks, we perform the semantic-aware resource allocation in a multi-cell multi-task network in this paper. Specifically, an approximate measure of semantic entropy is first developed to quantify the semantic information for different tasks, based on which a novel quality-of-experience (QoE) model is proposed. We formulate the QoE-aware semantic resource allocation in terms of the number of transmitted semantic symbols, channel assignment, and power allocation. To solve this problem, we first decouple it into two independent subproblems. The first one is to optimize the number of transmitted semantic symbols with given channel assignment and power allocation, which is solved by the exhaustive searching method. The second one is the channel assignment and power allocation subproblem, which is modeled as a many-to-one matching game and solved by the proposed low-complexity matching algorithm. Simulation results demonstrate the effectiveness and superiority of the proposed method on the overall QoE.

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