Peng Sun, Hai Lin, H. Yu, You Zhong, Xiaoping Wu, Bing Sun
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引用次数: 0
摘要
未来,业务场景将变得多样化,但现有的网络架构难以提供强有力的支持。NFV (Network function virtualization)技术将网络功能与专用硬件设备解耦,以业务功能链(SFC)的形式为用户提供定制化服务。目前,SFC的部署已被证明是一个NP-hard问题。大多数的解决方案是整数线性规划算法,但算法的过程是复杂的。当网络拓扑规模变大时,计算过程非常耗时,结果有时会陷入局部最优解,难以达到预期效果。在这种情况下,强化学习(RL)算法显示出巨大的优势,通过与环境的交互来学习策略,以最大化奖励或实现特定的目标。因此,本文提出了一种基于近端策略优化(PPO)强化学习的SFC部署算法,以最大访问速率和最小资源消耗为目标。仿真结果表明,该算法具有良好的收敛性和稳定性,更有利于SFC的实际部署。
Research on Service Function Chain Deployment Algorithm Based on Proximal Policy Optimization
In the future, business scenarios will become diversified, but it is difficult for the existing network architecture to provide strong support for them. Network function virtualization (NFV) technology decouples network functions from dedicated hardware devices and provides customized services for users in the form of service function chain (SFC). At present, the deployment of SFC has been proved to be a NP-hard problem. Most of the solutions are integer linear programming algorithms, but the process of such algorithms is complex. When the network topology scale becomes larger, the calculation process is very time-consuming, and the results sometimes fall into local optimal solutions, which makes it difficult to achieve the desired effect. In this case, reinforcement learning (RL) algorithms show great advantages, learning strategies through interaction with the environment to maximize rewards or achieve specific goals. Therefore, this paper proposes a SFC deployment algorithm based on proximal policy optimization (PPO) reinforcement learning, which aims at maximizing access rate and minimizing resource consumption. The simulation results show that the proposed algorithm has good convergence and stability, which is more conducive to the actual deployment of the SFC.