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Towards 6G Joint HAPS-MEC-Cloud 3C Resource Allocation for Delay-Aware Computation Offloading

机译:迈向6G联合HAPS-MEC-CLOW 3C资源分配,用于延迟感知计算卸载

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The past years witnessed the tremendous growth of Internet of things (IoT) service, each of which demands different amounts of physical resources consisting of computation, communication, and caching, which is also recognized as 3C. The fifth-generation (5G) technique is a promising answer to serve delay-sensitive IoT applications with diverse popular emerging techniques such as multi-access edge computing (MEC) and cloud computing. However, when we get to 2030, the requirements will hard to satisfied. The sixth-generation (6G) aims to provide global coverage, enhanced energy and cost efficiency, better intelligence level, and security. A potential solution for the 6G system is the aerial access network (AAN). The high altitude platform system (HAPS) is also a candidate for deploying wireless communications applying the terrestrial communication infrastructure. However, how to efficiently utilize the 3C resources in the HAPS-terrestrial networks is a non-trivial issue. We study the offloading computation problem of the IoT applications which ask 3C resources in the HAPS-MEC-cloud networks with high efficiency. In detail, We formulate the computation offloading problem into an optimization problem to minimize costs under multiple resource constraints. Since the problem is integer linear programming (ILP), it is hard to apply the general exhaustive searching to solve the problem when there are a lot of mobile terminal devices. The column generation algorithm can solve the large-scale ILP problem efficiently. Thus, we propose a column generation computation offloading (CG-CO) algorithm based on it. Meanwhile, we proposed a greedy computation offloading algorithm (G-CO) based on a greedy algorithm for comparison to make the simulation results in more convictive. We use the task acceptance ratio, service providers' total revenue, and cost as the metrics. Experiment results demonstrate that CG-CO can help get good results in both resource-abundant and resource-limited scenarios.
机译:过去几年见证了物联网的巨大增长(物联网)服务,每个人都需要包括计算,通信和高速缓存的不同数量的物理资源,这也被识别为3C。第五代(5G)技术是一个有希望的答案,用于利用多样化的流行新兴技术服务,例如多访问边缘计算(MEC)和云计算。但是,当我们到达2030年时,要求难以满足。第六代(6G)旨在提供全球覆盖,增强能源和成本效率,更好的智力水平和安全性。 6G系统的潜在解决方案是空中接入网络(AAN)。高海拔平台系统(HAPS)也是部署应用地面通信基础设施的无线通信的候选者。但是,如何有效地利用HAPS-地面网络中的3C资源是一个非琐碎的问题。我们研究了IOT应用程序的卸载计算问题,以高效率在HAPS-MEC-Cloud网络中询问3C资源。详细地,我们将计算卸载问题分为优化问题,以最小化多个资源约束下的成本。由于问题是整数线性编程(ILP),因此难以应用一般的详尽搜索来解决问题时有很多移动终端设备。列生成算法可以有效地解决大规模的ILP问题。因此,我们提出了一种基于它的列生成计算卸载(CG-CO)算法。同时,我们提出了一种基于贪婪算法的贪婪计算卸载算法(G-CO),以便使模拟导致更具定罪的仿真结果。我们使用任务验收比率,服务提供商的总收入,以及成本作为指标。实验结果表明,CG-CO可以帮助获得资源丰富和资源有限的情景。

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