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Slice Reconfiguration based on Demand Prediction with Dueling Deep Reinforcement Learning

机译:基于需求预测的切片重新配置与决斗深层加固学习的需求预测

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Network slicing is capable of satisfying differentiated service demands of vertical industries by tailoring a common infrastructure to multiple logical networks which are isolated. Considering that the dynamic of service demands makes it difficult to maintain high quality of user experience and high revenue of tenants, slice reconfiguration is necessary to avoid performance degradation. Hence, this paper proposes an optimal and fast slice reconfiguration (OFSR) solution by leveraging advanced deep reinforcement Learning. To deal with the uncertain changes in resources requirement, a demand prediction model based on Markov renewal process is introduced in decision-making. Taking into account the operation costs of reconfiguring diversified slices and the constraints of available resources, the proposed OFSR scheme aims at obtaining high long-term revenue with low operation cost. Given that the convergence of the conventional reinforcement learning approach is slow to learn the optimal reconfiguration policy for different classes of slices, deep dueling neural network combined with Q-learning is applied to improve the speed of convergence. Simulation results validate that the proposed framework is effective in achieving long-term revenue for tenants and the dueling deep Q-learning approach performs better than other current approaches.
机译:网络切片能够通过定制普通基础设施到隔离的多个逻辑网络来满足垂直行业的差异化服务需求。考虑到服务需求的动态使得难以保持高质量的用户体验和高收入的租户,因此切片重新配置是必要的,以避免性能下降。因此,本文提出了通过利用先进的深度加强学习来提出最佳和快速的切片重新配置(OFSR)解决方案。为了处理资源要求的不确定变化,在决策中引入了基于马尔可夫更新过程的需求预测模型。考虑到重新配置多元化切片的运营成本以及可用资源的限制,拟议的OFSR计划旨在获得低运营成本的高长期收入。鉴于传统的加强学习方法的收敛性很慢,以了解不同类切片的最佳重新配置策略,应用了与Q学习结合的深度决斗神经网络以提高收敛速度。仿真结果验证了拟议的框架在实现租户的长期收入方面是有效的,并且决斗的深度Q学习方法比其他目前的方法更好。

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