Codes of paper: AI-based Robust Resource Allocation in End-to-End Network Slicing under Demand and CSI Uncertainties
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Abstract—Network slicing (NwS) is one of the main technologiesin the
h-generation of mobile communication andbeyond (5G+). One of the important challenges in the NwSis information uncertainty which mainly involves demandand channel state information (CSI). Demand uncertainty isdivided into three types: number of users requests, amountof bandwidth, and requested virtual network functions workloads.Moreover, the CSI uncertainty is modeled by threemethods: worst-case, probabilistic, and hybrid. In this paper,our goal is to maximize the utility of the infrastructureprovider by exploiting deep reinforcement learning algorithmsin end-to-end NwS resource allocation under demandand CSI uncertainties. e proposed formulation is a nonconvexmixed-integer non-linear programming problem. Toperform robust resource allocation in problems that involveuncertainty, we need a history of previous information. Tothis end, we use a recurrent deterministic policy gradient(RDPG) algorithm, a recurrent and memory-based approachin deep reinforcement learning. en, we compare the RDPGmethod in dierent scenarios with so
actor-critic (SAC),deep deterministic policy gradient (DDPG), distributed, andgreedy algorithms. e simulation results show that the SACmethod is better than the DDPG, distributed, and greedymethods, respectively. Moreover, the RDPG method out performsthe SAC approach on average by 70%.Index Terms— End-to-end network slicing, Resource allocation,So
ware-dened networking (SDN), Network functionvirtualization (NFV), Demand uncertainty, Channel state information(CSI) uncertainty, Recurrent deterministic policygradient (RDPG).
提供机构:
IEEE DataPort
创建时间:
2022-01-30



