On Deep Reinforcement Learning for Traffic Steering Intelligent ORAN

2023 IEEE Globecom Workshops (GC Wkshps)(2023)

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摘要
This paper aims to develop the intelligent traffic steering (TS) framework, which has recently been considered as one of the key developments of 3GPP for advanced 5G. Since achieving key performance indicators (KPIs) for heterogeneous services may not be possible in the monolithic architecture, a novel deep reinforcement learning (DRL)-based TS algorithm is proposed at the non-real-time (non-RT) RAN intelligent controller (RIC) within the open radio access network (ORAN) architecture. To enable ORAN's intelligence, we distribute traffic load onto appropriate paths, which helps efficiently allocate resources to end users in a downlink multi-service scenario. Our proposed approach employs a three-step hierarchical process that involves heuristics, machine learning, and convex optimization to steer traffic flows. Through system-level simulations, we show the superior performance of the proposed intelligent TS scheme, surpassing established benchmark systems by 45.50%.
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关键词
Deep Reinforcement Learning,Open Radio Access Network,Traffic Steering,Convex Optimization,Traffic Flow,Key Performance Indicators,Radio Access Network,System-level Simulation,State Space,Dynamic Environment,Network Performance,Flow Data,Time Slot,Reward Function,Achievable Rate,Channel Gain,Arrival Rate,5G Networks,Distributed Unit,Packet Size,Resource Block,Transmission Time Interval,Double Deep Q-network,Queue Length,Benchmark Schemes,Network Slicing,Time-varying Channel,Deep Q-network,Target Network,Artificial Intelligence Machine Learning
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