Multi-Domain Resource Management for Space–Air–Ground Integrated Sensing, Communication, and Computation Networks

Sun Mao;Lei Liu;Xiangwang Hou;Mohammed Atiquzzaman;Kun Yang
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Abstract

To support emerging environmentally-aware intelligent applications, a massive amount of data needs to be collected by sensor devices and transmitted to edge/cloud servers for further computation and analysis. However, due to the high deployment and operational cost, only depending on terrestrial infrastructures cannot satisfy the communication and computation requirements of sensor devices in the unexpected and emergency situations. To tackle this issue, this paper presents a digital twin-enabled space-air-ground integrated sensing, communication and computation network framework, where unmanned aerial vehicles (UAVs) serve as aerial edge access point to provide wireless access and edge computing services for ground sensor devices, and satellites provide access to cloud data center. In order to tackle the complex network environments and coupled multi-dimensional resources, the digital twin technique is utilized to realize real-time network monitoring and resource management, and the mapping deviation is also considered. To realize real-time data sensing and analysis, we formulate a maximum execution latency minimization problem while satisfying the energy consumption constraints and network resource restrictions. Based on the block coordinate descent method and successive convex approximation technique, we develop an efficient algorithm to obtain the optimal sensing time, transmit power, bandwidth allocation, UAV deployment position, data assignment strategy, and computation capability allocation scheme. Simulation results demonstrate that the proposed method outperforms several benchmark methods in terms of maximum execution latency among all sensor devices.
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天-空-地一体化传感、通信和计算网络的多域资源管理
为了支持新兴的环保智能应用,传感器设备需要收集大量数据,并将其传输到边缘/云服务器,以进行进一步的计算和分析。然而,由于部署和运行成本高,仅依靠地面基础设施无法满足突发和紧急情况下传感器设备的通信和计算需求。为了解决这一问题,本文提出了一种数字双启用的空间-空气-地面集成传感、通信和计算网络框架,其中无人机(uav)作为空中边缘接入点,为地面传感器设备提供无线接入和边缘计算服务,卫星提供对云数据中心的访问。针对复杂的网络环境和耦合的多维资源,利用数字孪生技术实现网络实时监控和资源管理,并考虑映射偏差。为了实现实时数据感知和分析,我们在满足能耗约束和网络资源限制的情况下,制定了最大执行延迟最小化问题。基于分块坐标下降法和逐次凸逼近技术,提出了一种有效的算法来获得最优的感知时间、发射功率、带宽分配、无人机部署位置、数据分配策略和计算能力分配方案。仿真结果表明,该方法在所有传感器设备的最大执行延迟方面优于几种基准方法。
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Table of Contents IEEE Communications Society Information Corrections to “Coverage Rate Analysis for Integrated Sensing and Communication Networks” IEEE Journal on Selected Areas in Communications Publication Information Guest Editorial: Integrated Ground-Air-Space Wireless Networks for 6G Mobile—Part II
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