Ensuring end-to-end quality of service (QoS) for high-value services in satellite networks is challenging due to dynamic network topologies, varying QoS requirements, and the complex resource allocation across satellite beams and inter-satellite links. To this end, we propose a satellite traffic engineering framework with deterministic QoS (SatTED) by jointly optimizing resource allocation across access and bearer subnets.To tackle the complexity of joint scheduling, SatTED adopts a hierarchical logic-based benders decomposition (LBBD) architecture that coordinates access and bearer subnet resources. The master problem optimizes service admission and satellite selection via binary integer programming, while the subproblem handles routing and bandwidth allocation through linear programming relaxation. Key innovat-ions include scenario-cognizant Benders feasibility cuts to accelerate convergence and a critical constraint link preprocessing (CCLP) mechanism that reduces subproblem complexity by 5.15× in large-scale networks. In simulations on a 220-satellite network with 1 000 flows, SatTED improves total service payoff by 32% and increases high-value flow completion rates by 22%.
Space-terrestrial integrated networks (ST-IN) require a trustworthy and auditable environment for multi-party spectrum sharing under dynamic and heterogeneous conditions. Blockchain, as a decentralized ledger, exhibits promising properties such as transparency and tamper resistance, making it a potential enabler for such scenarios. However, conventional blockchain-based approaches tightly couple strategy execution with transaction consensus, resulting in excessive overhead and poor adaptability to fast-changing spectrum semantics. To address these issues, this paper presents a spectrum-semantics-driven meta-consensus framework built upon a directed acyclic graph (DAG) mainchain architecture. By decoupling policy optimization from on-chain coordination and leveraging semantic representations of spectrum states for meta-level consensus and policy migration, the framework enables agile and scalable spectrum sharing across dynamically clustered network agents. Simulation results verify that the proposed design significantly enhances spectrum utilization and adaptability while maintaining decentralized transparency and auditability in large-scale STIN environments.
As the development of 6G accelerates, non-terrestrial networks (NTN) are emerging as a critical component to ensure seamless global coverage communication. This paper systematically reviews the evolution of the third-generation partnership project (3GPP) NTN standardization, from initial discussions in Release 15 to the in-depth optimizations in Release 19 and beyond. Through a detailed gap analysis, we identify key technical and industrial challenges across the wireless, network, and terminal domains that hinder the realization of a fully integrated space-terrestrial network. To address these challenges, we propose a 6G-oriented holistic architecture composed of three segments and three functional layers. We further outline essential enabling technologies, including networking technologies and intelligent resource management technologies. To validate the feasibility and effectiveness of the proposed architecture, we present a case study on integrated sensing and communication in high-speed mobility scenarios. Simulation results demonstrate significant performance gains in robustness, sensing accuracy, and adaptability compared to conventional approaches. Our findings establish a solid foundation for future research and standardization of 6G integrated networks, aiming to achieve intelligent, ubiquitous, and resilient communication infrastructures across space, air, and ground domains.
With the rapid development of Internet of Things (IoT) service, the provision of network connection is vital for data transmission of widely deployed IoT devices. To provide the global coverage for IoT devices, non-terrestrial networks (NTN) has its inherent advantages with the help of satellite communication. In this paper, we propose a Q-learning based intelligent access strategy to make access control for IoT devices in NTN scenario. With satellite assistance, access control is optimized so that IoT devices can get the connection efficiently. IoT devices interact with the environment and learn gradually to find the proper RACH type, preamble and random access (RA) slot for success access. Besides, a novel RACH procedure is also designed with flexible access type selection between 2-step and 4-step RACH. With the corporation between IoT devices and network, access congestion can be avoided. Simulation results validate that the effectiveness of the proposed access strategy in terms of access efficiency, collision rate and access latency.
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).
The rapid advancement of 6G communication has drawn significant attention to non-terrestrial networks (NTN), where accurate modeling of clutter loss (CL) is essential for efficient deployment and system optimization. This paper conducts multi-band channel measurements at 6.5 GHz, 10.2 GHz, 11.8 GHz, and 14.2 GHz to investigate the frequency and elevation angle dependencies of CL. To address the limited physical interpretability of existing standard models, a semi-deterministic approach is proposed based on the single knife-edge diffraction theory. The modeling results and analysis show that the proposed model has lower prediction errors than the standard model in complex environments with building and vegetation obstructions, with a simple formula that effectively captures the variations in CL with frequency and elevation angle. This contributes valuable insights for the design and implementation of NTN communication systems.
The rapid development of the low-altitude economy has imposed unprecedented demands on wireless infrastructure to accommodate large-scale drone deployments and facilitate intelligent services in dynamic airspace environments. However, unlocking its full potential in practical applications presents significant challenges. Traditional aerial systems predominantly focus on air-ground communication services, often neglecting the integration of sensing, computation, control, and energy-delivering functions, which hinders the ability to meet diverse mission-critical demands. Besides, the absence of systematic low-altitude airspace planning and management exacerbates issues regarding dynamic interference in three-dimensional space, coverage instability, and scalability. To overcome these challenges, a comprehensive framework, termed low-altitude wireless network (LAWN), has emerged to seamlessly integrate communication, sensing, computation, control, and air traffic management into a unified design. This article provides a comprehensive overview of LAWN systems, introducing LAWN system fundamentals and performance evaluation metrics. Subsequently, we delve into the evolution of functional designs and review critical concerns surrounding privacy and security in the open-air network environment. We survey advanced artificial intelligence techniques that enhance LAWN functionality and enable increasingly autonomous operations. Finally, we present the cutting-edge developments in airspace structuring, air traffic management, and path planning, providing insights to facilitate the practical deployment of LAWNs.