The recent emergence of 6G raises the challenge of increasing the transmission data rate even further in order to overcome the Shannon limit. Traditional communication methods fall short of the 6G goals, paving the way for Semantic Communication (SemCom) systems that have applications in the metaverse, healthcare, economics, etc. In SemCom systems, only the relevant keywords from the data are extracted and used for transmission. In this paper, we design an auto-encoder and auto-decoder that only transmit these keywords and, respectively, recover the data using the received keywords and the shared knowledge. This SemCom system is used in a setup in which the receiver allocates various categories of the same dataset collected from the transmitter, which differ in size and accuracy, to a number of users. This scenario is formulated using an optimization problem called the data allocation problem (DAP). We show that it is NP-complete and propose a greedy algorithm to solve it. Using simulations, we show that the proposed methods for SemCom system design outperform state-of-the-art methods in terms of average number of words per sentence for a given accuracy, and that the proposed greedy algorithm solution of the DAP performs significantly close to the optimal solution.
翻译:最近出现的6G系统提出了进一步提高传输数据率以进一步克服香农限制的挑战。传统的通信方法没有达到6G目标,为在元数据、保健、经济学等应用的语义通信系统铺平了道路。在SemCom系统中,只提取数据的相关关键字并用于传输。在本文件中,我们设计了一个自动编码器和自动解码器,仅传输这些关键字,并分别利用收到的关键字和共享的知识来恢复数据。这个SemCom系统用于一个设置,接收器将从发报机收集的不同类别的数据集(大小和准确性各不相同)分配给一些用户。这个设想是使用称为数据分配问题(DAP)的优化问题来拟订的。我们表明,它已经完成,并提出了一种贪婪的算法来解决这个问题。我们用模拟来显示,SemCom系统设计的拟议方法在每句平均字数中超越了最接近的状态-艺术方法,以便找到最精确的解决方案,并采用提议的贪婪的算法解决方案。