Constraint-Aware Deep Reinforcement Learning for End-to-End Resource Orchestration in Mobile Networks

Qiang Liu, Nakjung Choi, Tao Han
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引用次数: 6

Abstract

Network slicing is a promising technology that allows mobile network operators to efficiently serve various emerging use cases in 5G. It is challenging to optimize the utilization of network infrastructures while guaranteeing the performance of network slices according to service level agreements (SLAs). To solve this problem, we propose SafeSlicing that introduces a new constraint-aware deep reinforcement learning (CaDRL) algorithm to learn the optimal resource orchestration policy within two steps, i.e., offline training in a simulated environment and online learning with the real network system. On optimizing the resource orchestration, we incorporate the constraints on the statistical performance of slices in the reward function using Lagrangian multipliers, and solve the Lagrangian relaxed problem via a policy network. To satisfy the constraints on the system capacity, we design a constraint network to map the latent actions generated from the policy network to the orchestration actions such that the total resources allocated to network slices do not exceed the system capacity. We prototype SafeSlicing on an end-to-end testbed developed by using OpenAirInterface LTE, OpenDayLight-based SDN, and CUDA GPU computing platform. The experimental results show that SafeSlicing reduces more than 20% resource usage while meeting SLAs of network slices as compared with other solutions.
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面向移动网络端到端资源编排的约束感知深度强化学习
网络切片是一项很有前途的技术,它允许移动网络运营商在5G中有效地服务各种新兴用例。如何根据服务水平协议(sla)在保证网络切片性能的同时优化网络基础设施的利用率是一个挑战。为了解决这一问题,我们提出了SafeSlicing算法,该算法引入了一种新的约束感知深度强化学习(CaDRL)算法,在模拟环境下的离线训练和真实网络系统的在线学习两步内学习到最优的资源编排策略。在优化资源编排方面,我们利用拉格朗日乘子在奖励函数中加入对切片统计性能的约束,并通过策略网络解决拉格朗日松弛问题。为了满足对系统容量的约束,我们设计了一个约束网络,将策略网络生成的潜在动作映射到编排动作,使分配给网络片的总资源不超过系统容量。我们在使用OpenAirInterface LTE、基于opendaylight的SDN和CUDA GPU计算平台开发的端到端测试平台上对SafeSlicing进行了原型设计。实验结果表明,与其他解决方案相比,safesslicing在满足网络切片sla的同时,减少了20%以上的资源使用。
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