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Deep Reinforcement Learning for Computation Offloading and Resource Allocation in Blockchain-Based Multi-UAV-Enabled Mobile Edge Computing

机译:基于区块基的多UAV的移动边缘计算中的计算卸载和资源分配的深度增强学习

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In the current fifth-generation (5G) and Beyond 5G (B5G) era, the Unmanned Aerial Vehicles (UAVs) have been playing a vital role and attracting interest in different application areas in the military, and civil applications such as communications, disaster management, search and rescue, security, control, agriculture, Internet of things (IoT), etc. In these networks, ultra-heterogeneous IoT devices generate time-sensitive traffic. However, those devices have limited resources to compute tasks. Recently, Mobile Edge Computation Offloading (MECO) has been considered as an encouraging model to enable the computation tasks of IoT devices to be performed by MEC servers and support ultra-low latency IoT applications to ensure Quality of services (QoS). However, terrestrial network failure due to natural and human-made disasters has been increasing, and difficult to provide reliable computation offloading and resource allocation services to IoT networks. Nowadays, UAVs have been promising technology to quickly deploy and recover the system to provide efficient services to edge nodes. The offloading and resource allocation problems in current network technology are complex, and offloading task to edge server is vulnerable to security risks. Hence, we utilize a deep reinforcement learning method to handle a complex problem for computation offloading and resource allocations in a dynamic environment. And also, we explore a blockchain-based multi-UAV-assisted MEC architecture in securing and optimizing the offloading problems.
机译:在目前的第五代(5G)及超过5G(B5G)时代,无人驾驶飞行器(无人机)一直在发挥重要作用和吸引军队中不同应用领域的兴趣,以及通信,灾害管理等民用应用在这些网络中,搜索和救援,安全,控制,农业,物联网(IOT)等。超异构物联网设备产生时间敏感的流量。但是,这些设备的资源有限,可以计算任务。最近,移动边缘计算卸载(MECO)被认为是一种励志模型,以使MEC服务器能够执行IOT设备的计算任务,并支持超低延迟IOT应用程序以确保服务质量(QoS)。然而,由于自然和人为灾害导致的地面网络失败一直在增加,并且难以为IOT网络提供可靠的计算卸载和资源分配服务。如今,无人机一直很有希望能够快速部署和恢复系统,以提供对边缘节点的有效服务。当前网络技术中的卸载和资源分配问题是复杂的,并且卸载到Edge Server的任务容易受到安全风险的影响。因此,我们利用深度加强学习方法来处理动态环境中的计算卸载和资源分配的复杂问题。而且,我们探索基于区块链的多UV辅助MEC架构,用于确保和优化卸载问题。

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