In this paper, the problem of wireless resource allocation and semantic information extraction for energy efficient semantic communications over wireless networks with rate splitting is investigated. In the considered model, a base station (BS) first extracts semantic information from its large-scale data, and then transmits the small-sized semantic information to each user which recovers the original data based on its local common knowledge. At the BS side, the probability graph is used to extract multi-level semantic information. In the downlink transmission, a rate splitting scheme is adopted, while the private small-sized semantic information is transmitted through private message and the common knowledge is transmitted through common message. Due to limited wireless resource, both computation energy and transmission energy are considered. This joint computation and communication problem is formulated as an optimization problem aiming to minimize the total communication and computation energy consumption of the network under computation, latency, and transmit power constraints. To solve this problem, an alternating algorithm is proposed where the closed-form solutions for semantic information extraction ratio and computation frequency are obtained at each step. Numerical results verify the effectiveness of the proposed algorithm.
翻译:在本文中,对无线资源分配和无线网络中节能语义通信的语义信息提取问题进行了调查。在考虑的模型中,一个基站(BS)首先从其大规模数据中提取语义信息,然后将小型语义信息传输给每个用户,这些用户根据当地共同的知识恢复原始数据。在BS一侧,概率图用于提取多层次语义信息。在下行传输中,采用了比例分割办法,而私人小型语义信息通过私人信息传递,共同知识通过共同信息传输。由于无线资源有限,计算能源和传输能源都被视为一个优化问题,目的是尽量减少计算中的网络通信总量和计算能源消耗量,以及传输电力限制。为了解决这一问题,在每步都获得语义信息提取比率和计算频率的封闭式解决方案的情况下,建议采用一种交替算法。数字结果证实了拟议算法的有效性。