A Heterogeneous Graph Cooperative Representation Approach for Multidimensional Coupling Resources in High-Dynamic Satellite-Terrestrial Integrated Networks
SPACE-TERRESTRIAL INTEGRATED 6G NETWORK: ARCHITECTURE, NETWORKING, AND TRANSMISSION TECHNOLOGIES|更新时间:2026-05-01
|
A Heterogeneous Graph Cooperative Representation Approach for Multidimensional Coupling Resources in High-Dynamic Satellite-Terrestrial Integrated Networks
Vol. 23, Issue 3, Pages: 68-86(2026)
作者机构:
1 State Key Laboratory of Networking and Switching Technology, Beijing University of Posts and Telecommunications,Beijing,China,100876
Fan Tian, Hu Bo, Zhou Jizhe, Chen Shanzhi, Wang Guangchao. A Heterogeneous Graph Cooperative Representation Approach for Multidimensional Coupling Resources in High-Dynamic Satellite-Terrestrial Integrated Networks. China Communications. 2026, 23(3): 68-86 https://doi.
org/10.23919/JCC.fa.2025-0353.202603
Fan Tian, Hu Bo, Zhou Jizhe, Chen Shanzhi, Wang Guangchao. A Heterogeneous Graph Cooperative Representation Approach for Multidimensional Coupling Resources in High-Dynamic Satellite-Terrestrial Integrated Networks. China Communications. 2026, 23(3): 68-86 https://doi. DOI: 10.23919/JCC.fa.2025-0353.202603.
org/10.23919/JCC.fa.2025-0353.202603DOI:
A Heterogeneous Graph Cooperative Representation Approach for Multidimensional Coupling Resources in High-Dynamic Satellite-Terrestrial Integrated Networks
摘要
Abstract
Satellite-terrestrial integrated networks (S-TINs) are a key enabler for ubiquitous coverage in 6G communication services. However
the satellite-terrestrial resources exhibit multi-dimensional heterogeneity and inherent conflicts
and the rapid topology variations caused by the high-speed motion of low earth orbit (LEO) satellites lead to the difficulty of maintaining a stable mapping of satellite-terrestrial resources. This dynamic nature ultimately reduces the overall resource utilization efficiency. In this paper
we propose a heterogeneous graph cooperative representation approach for satellite-terrestrial resources and a joint optimization method of transmission-computation resources. Firstly
we construct a heterogeneous graph that achieves mapping between multidimensional resources
dynamic topology
and conflict constraints through typed nodes and edges
where resource cooperativeness is explicitly encoded. Secondly
an STIN transmission-computation model is constructed
and an optimization problem is formulated to jointly resolve conflicts between four objectives. Finally
the proposed many-objective double deep Q-network (DDQN) algorithm achieves the cooperative strategy optimization of task transmission-computation scheduling globally. Simulation experiments show that the proposed algorithm improves the overall resource utilization by up to 11.7% under various access points (APs) and user sizes. Meanwhile
the performance is more stable compared with five algorithms
including deep Q-network (DQN)
and a Lyapunov-based optimization method (LyaOpt).
Dynamic Resource Allocation for Multi-Priority Requests Based on Deep Reinforcement Learning in Elastic Optical Network
Deep Reinforcement Learning-Based Throughput Optimization for Energy Harvesting IoT Communication
A Two-Layer UAV Cooperative Computing Offloading Strategy Based on Deep Reinforcement Learning
Vertical Handover Algorithm Based on Network State Prediction
Downlink Resource Allocation for NOMA-Based Hybrid Spectrum Access in Cognitive Network
Related Author
Zhou Yang
Yang Xin
Sun Qiang
Yang Zhuojia
Gong Yu
Jiang He
Gong Pengwei
Xie Wen
Related Institution
School of Electronic and Information Engineering, Beijing Jiaotong University
Beijing Institute of Radio Metrology and Measurement
<sup>1</sup>School of Computer and Control Engineering, Qiqihar University
<sup>2</sup>National Demonstration Center for Experimental Electronic Information and Communications Engineering Education, Xidian University
<sup>3</sup>School of Computer Science and Engineering, University of Electronic Science and Technology of China, Chengdu 611731, China, and also with the Faculty of Information Technology, University of Jyvä