Journal article
Compression Ratio Allocation for Probabilistic Semantic Communication with RSMA
IEEE transactions on communications, Vol.73(9), pp.1-1
2025-01-01
Appears in College Of Engineering - Latest Publications
Semantic communication is envisioned as a key technology for future wireless networks due to its high communication efficiency. However, research combining semantic communication and advanced multiple access techniques, such as rate splitting multiple access (RSMA), is still lacking. In this paper, the problem of joint communication and computation resource allocation for probabilistic semantic communication (PSCom) with RSMA is investigated. In the considered model, the base station (BS) needs to transmit a large amount of data to multiple users with 1-layer RSMA. Due to limited communication resources, the BS is required to utilize semantic communication techniques to compress the original data. In this paper, we utilize knowledge graphs to represent semantic information and employ probabilistic graphs, which are shared between the BS and users, to further compress the knowledge graphs. The BS can use the probabilistic graph to compress the data to be transmitted, while the user can recover the compressed semantic information using the same shared probabilistic graph. The additional computation power required for semantic information compression inevitably results in a reduction in transmission power due to the limited total power budget. Considering the effect of semantic compression ratio, the semantic rate expression for RSMA is first obtained. Then, based on the obtained rate expression, an optimization problem is formulated with the aim of maximizing the sum of semantic rates of all users under total power, semantic compression ratio, and rate allocation constraints. To tackle this problem, an iterative algorithm is proposed, where the semantic compression ratio subproblem is addressed using a greedy algorithm, and the rate allocation and transmit beamforming design subproblem is solved using a successive convex approximation method. Numerical results validate the effectiveness of the proposed scheme.
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- Collaboration types
- Domestic collaboration
- International collaboration
- Citation topics
- 4 Electrical Engineering, Electronics & Computer Science
- 4.13 Telecommunications
- 4.13.2202 UAV Communications
- Web Of Science research areas
- Engineering, Electrical & Electronic
- Telecommunications
- ESI research areas
- Computer Science
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Details
- Title
- Compression Ratio Allocation for Probabilistic Semantic Communication with RSMA
- Creators
- Zhouxiang Zhao - Zhejiang UniversityZhaohui Yang - Zhejiang UniversityYe Hu - University of MiamiChen Zhu - Hangzhou Wanxiang PolytechnicMohammad Shikh-Bahaei - King's College LondonWei Xu - Southeast UniversityZhaoyang Zhang - Zhejiang UniversityKaibin Huang - University of Hong Kong
- Publication Details
- IEEE transactions on communications, Vol.73(9), pp.1-1
- Publisher
- IEEE; PISCATAWAY
- Number of pages
- 1
- Grant note
- National Key R&D Program of China: 2023YFB2904804 Young Elite Scientists Sponsorship Program by CAST: 2023QNRC001 Zhejiang Key RD Program: 2023C01021 Fundamental Research Funds for the Central Universities: K2023QA0AL02 Research Grants Council of the Hong Kong Special Administrative Region, China: HKU RFS2122-7S04 NSFC/RGC CRS: NSFC/RGC CRS Areas of Excellence scheme: AoE/E-601/22-R Collaborative Research Fund: C1009-22G, 17212423
This work was supported in partby National Key R&D Program of China (Grant No. 2023YFB2904804),Young Elite Scientists Sponsorship Program by CAST 2023QNRC001,Zhejiang Key R&D Program under Grant 2023C01021, the Fundamental Research Funds for the Central Universities, K2023QA0AL02, in part by the Research Grants Council of the Hong Kong Special Administrative Region, China under a fellowship award (HKU RFS2122-7S04), NSFC/RGC CRS(CRS_HKU702/24), the Areas of Excellence scheme grant (AoE/E-601/22-R), Collaborative Research Fund (C1009-22G), and the Grant 17212423.
- Academic Unit
- CoE - Industrial Engineering; College of Engineering
- Language
- English
- Resource Type
- Journal article
- Record Identifier
- 991032796050602976