基于深q网络的高速安全通信CRN的x层优化

Chowdhury Sajadul Islam, Md. Sarwar Hossain Mollah
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引用次数: 1

摘要

认知无线电网络(crn)为5G技术和物联网设备的发展提供了有效解决无线电频谱稀缺问题和网络安全的方案。在本文中,crn通过从OSI模型的物理层(layer -1)和网络层(layer -3)中寻找参数,进行跨层(x层)优化,推进5G和物联网流量认知的端到端安全传输。该模型遵循本发明的目标,在保持SINR低于主信道确定的阈值的情况下,应用深度q网络(Deep Q-Network, DQN)根据在每个路由器上找到的等待时间选择该跳之后的发送跳。二级用户(su)采用全链接前馈多层感知器(MLP)模型估计活动值函数。activity值包含到第一层主用户(primary user, PU)的SINR,以及到第三层路由器的后续跳数。神经网络(NN)的优点是在5G网络上安全加密的高分辨率视频流量的平均意见分数(Mean Opinion Score, MOS),这取决于传输时应用的丢包率和误码率。通过对物理层DQN学习执行情况的评估,该系统对于具有短队列的路由器的视频质量提高了37%,并且在具有不同服务速率的路由器的网络上达到了均衡负载。
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The X-Layer Optimization in CRN Using Deep Q-Network for Secure High Speed Communication
Cognitive Radio Networks (CRNs) offers an effective solution for radio spectrum scarcity problem and cyber-security to the growth of 5G technologies and the Internet of Things (IoT) devices. In this paper, the CRNs do cross-layer (X-layer) optimization by finding the parameters from the physical layer (Layer-1) of the OSI model and the network layer (Layer-3) of the OSI model so as to progress the end-to-end secure transmission of cognition for 5G and IoT traffic. The proposed model follows the invention target by applying a Deep Q-Network (DQN) to select after that hop for sending based on the waiting duration found on every router when keeping SINR lower than threshold determines by primary channel. A fully linked feed-forward Multilayer Perceptron (MLP) model is applied by secondary users (SUs) to estimate the activity value function. The activity value contains SINR to the primary user (PU) at the layer-1 and following hop to the routers for every packet at the layer-3. The advantage to the neural network (NN) is Mean Opinion Score (MOS) for secure encrypted high-resolution video traffic over 5G network which depends upon the packet drop rate and the bit error rate applied for transmission. As evaluated to the execution of DQN learning at the physical layer, this system gives for 37% gain in the video quality for routers with short queues and besides reaches a balanced load upon a network with routers with different service rates.
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