论文标题

带宽和功率分配,用于以任务为导向的语义通信

Bandwidth and Power Allocation for Task-Oriented SemanticCommunication

论文作者

Liu, Chuanhong, Guo, Caili, Yang, Yang, Chen, Jiujiu

论文摘要

已经研究了启用深度学习的语义沟通,以提高沟通效率,同时保证智能任务绩效。与传统的通信系统不同,语义通信中的资源分配不再只是追求位传输速率,而是重点是如何更好地压缩和传输语义以完成随后的智能任务。本文旨在适当地分配人工智能的带宽和功率(AI),以任务为导向的语义通信,并提出联合压缩​​比率和资源分配(CRRA)算法。我们首先分析AI任务的性能与语义信息之间的关系。然后,为了在资源限制下优化AI任务的完整性,制定了带宽和功率分配问题。由于非跨性别性,该问题首先分为两个子问题。第一个子问题是给定资源分配方案的压缩比优化问题,该问题通过枚举算法解决。第二个子问题是找到最佳资源分配方案,该方案通过连续的凸近似方法转化为凸问题,并通过凸优化方法求解。最佳的语义压缩率和资源分配方案是通过迭代解决这两个子问题而获得的。仿真结果表明,所提出的算法可以有效地提高AI任务的性能,最多可以由基准组成30 \%。

Deep learning enabled semantic communication has been studied to improve communication efficiency while guaranteeing intelligent task performance. Different from conventional communications systems, the resource allocation in semantic communications no longer just pursues the bit transmission rate, but focuses on how to better compress and transmit semantic to complete subsequent intelligent tasks. This paper aims to appropriately allocate the bandwidth and power for artificial intelligence (AI) task-oriented semantic communication and proposes a joint compressiom ratio and resource allocation (CRRA) algorithm. We first analyze the relationship between the AI task's performance and the semantic information. Then, to optimize the AI task's perfomance under resource constraints, a bandwidth and power allocation problem is formulated. The problem is first separated into two subproblems due to the non-convexity. The first subproblem is a compression ratio optimization problem with a given resource allocation scheme, which is solved by a enumeration algorithm. The second subproblem is to find the optimal resource allocation scheme, which is transformed into a convex problem by successive convex approximation method, and solved by a convex optimization method. The optimal semantic compression ratio and resource allocation scheme are obtained by iteratively solving these two subproblems. Simulation results show that the proposed algorithm can efficiently improve the AI task's performance by up to 30\% comprared with baselines.

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