Publication | Open Access
Mobility Management-Based Autonomous Energy-Aware Framework Using Machine Learning Approach in Dense Mobile Networks
16
Citations
28
References
2020
Year
Transport Network AnalysisAutonomous NetworkEngineeringMachine LearningSmart CitySmart Wireless NetworkOn-demand TransportIntelligent Traffic ManagementData ScienceTraffic PredictionMobility ManagementInternet Of ThingsTransportation EngineeringEnergy ConsumptionMobile ComputingComputer ScienceNetwork DensificationDense Mobile NetworksEnergy ManagementEdge ComputingBusiness
A paramount challenge of prohibiting increased CO2 emissions for network densification is to deliver the Fifth Generation (5G) cellular capacity and connectivity demands, while maintaining a greener, healthier and prosperous environment. Energy consumption is a demanding consideration in the 5G era to combat several challenges such as reactive mode of operation, high latency wake up times, incorrect user association with the cells, multiple cross-functional operation of Self-Organising Networks (SON), etc. To address this challenge, we propose a novel Mobility Management-Based Autonomous Energy-Aware Framework for analysing bus passengers ridership through statistical Machine Learning (ML) and proactive energy savings coupled with CO2 emissions in Heterogeneous Network (HetNet) architecture using Reinforcement Learning (RL). Furthermore, we compare and report various ML algorithms using bus passengers ridership obtained from London Overground (LO) dataset. Extensive spatiotemporal simulations show that our proposed framework can achieve up to 98.82% prediction accuracy and CO2 reduction gains of up to 31.83%.
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