论文标题
VNE用于网络差异QoS和安全要求的解决方案:从深度强化学习的角度来看
VNE Solution for Network Differentiated QoS and Security Requirements: From the Perspective of Deep Reinforcement Learning
论文作者
论文摘要
网络服务的快速发展和部署为研究人员带来了一系列挑战。一方面,互联网最终用户/应用程序的需求反映了旅行疏远的特征,他们追求了服务质量的不同观点。另一方面,随着大数据时代的信息的爆炸性增长,网络中存储了许多私人信息。最终用户/应用程序自然会开始关注网络安全性。为了解决差异化服务质量(QoS)和安全性的要求,本文提出了基于深钢筋学习(DRL)的虚拟网络嵌入(VNE)算法,旨在针对CPU,带宽,延迟,延迟和安全属性。 DRL代理在由上述属性构建的网络环境中进行了训练。目的是推断每个底物节点的映射概率,并根据此概率映射虚拟节点。最后,广度的第一策略(BFS)用于映射虚拟链接。在实验阶段,将基于DRL的算法与三个方面的其他代表性算法进行了比较:长期平均收入,长期收入消耗率和接受率。结果表明,本文提出的算法已取得了良好的实验结果,这证明该算法可以有效地应用于解决最终用户/应用程序差异化的QoS和安全要求。
The rapid development and deployment of network services has brought a series of challenges to researchers. On the one hand, the needs of Internet end users/applications reflect the characteristics of travel alienation, and they pursue different perspectives of service quality. On the other hand, with the explosive growth of information in the era of big data, a lot of private information is stored in the network. End users/applications naturally start to pay attention to network security. In order to solve the requirements of differentiated quality of service (QoS) and security, this paper proposes a virtual network embedding (VNE) algorithm based on deep reinforcement learning (DRL), aiming at the CPU, bandwidth, delay and security attributes of substrate network. DRL agent is trained in the network environment constructed by the above attributes. The purpose is to deduce the mapping probability of each substrate node and map the virtual node according to this probability. Finally, the breadth first strategy (BFS) is used to map the virtual links. In the experimental stage, the algorithm based on DRL is compared with other representative algorithms in three aspects: long term average revenue, long term revenue consumption ratio and acceptance rate. The results show that the algorithm proposed in this paper has achieved good experimental results, which proves that the algorithm can be effectively applied to solve the end user/application differentiated QoS and security requirements.