Smart City Gnosys

Smart city article details

Title Reinforcement Learning Driven Energy Efficient Mobile Communication And Applications
ID_Doc 44879
Authors Asad S.M.; Ozturk M.; Bin Rais R.N.; Zoha A.; Hussain S.; Abbasi Q.H.; Imran M.A.
Year 2019
Published 2019 IEEE 19th International Symposium on Signal Processing and Information Technology, ISSPIT 2019
DOI http://dx.doi.org/10.1109/ISSPIT47144.2019.9001888
Abstract Smart city planning is envisaged as advance technology based independent and autonomous environment enabled by optimal utilisation of resources to meet the short and long run needs of its citizens. It is therefore, preeminent area of research to improve the energy consumption as a potential solution in multi-tier 5G Heterogeneous Networks (HetNets). This article predominantly focuses on energy consumption coupled with CO2 emissions in cellular networks in the context of smart cities. We use Reinforcement Learning (RL) vertical traffic offloading algorithm to optimize energy consumption in Base Stations (BSs) and to reduce carbon footprint by applying widely accepted strategy of cell switching and traffic offloading. The algorithm relies on a macro cell and multiple small cells traffic load information to determine the cell offloading strategy in most energy efficient way while maintaining quality of service demands and fulfilling users applications. Spatio-temporal simulations are performed to determine a cell switch on/off operation and offload strategy using varying traffic conditions in control data separated architecture. The simulation results of the proposed scheme prove to achieve reasonable percentage of energy and CO2 reduction. © 2019 IEEE.
Author Keywords 5G; Energy Efficiency; Green Communications; Machine Learning; Smart City Planning; Vertical Offloading


Similar Articles


Id Similarity Authors Title Published
18069 View0.868Li W.; Chen X.; Jiao L.; Wang Y.Deep Reinforcement Learning-Based Intelligent Task Offloading And Dynamic Resource Allocation In 6G Smart CityProceedings - IEEE Symposium on Computers and Communications, 2023-July (2023)
34433 View0.862Yao R.; Liu L.; Zuo X.; Yu L.; Xu J.; Fan Y.; Li W.Joint Task Offloading And Power Control Optimization For Iot-Enabled Smart Cities: An Energy-Efficient Coordination Via Deep Reinforcement LearningIEEE Transactions on Consumer Electronics (2025)
38090 View0.86Jiao T.; Feng X.; Guo C.; Wang D.; Song J.Multi-Agent Deep Reinforcement Learning For Efficient Computation Offloading In Mobile Edge ComputingComputers, Materials and Continua, 76, 3 (2023)
23443 View0.857Pramod M.S.; Balodi A.; Pratik A.; Satya Sankalp G.; Varshita B.; Amrit R.Energy-Effcient Reinforcement Learning In Wireless Sensor Networks Using 5G For Smart CitiesApplications of 5G and Beyond in Smart Cities (2023)
18051 View0.855Agbaje P.; Nwafor E.; Olufowobi H.Deep Reinforcement Learning For Energy-Efficient Task Offloading In Cooperative Vehicular Edge NetworksIEEE International Conference on Industrial Informatics (INDIN), 2023-July (2023)
20702 View0.855Kumar P.L.; Jayanthi M.; Singh J.; Gupta M.; Bobba P.B.; Albawi A.; ShubhraDistributed Reinforcement Learning Framework For Collaborative Energy Management In Connected Hybrid Electric Vehicle Ecosystems2025 International Conference on Intelligent Control, Computing and Communications, IC3 2025 (2025)
4083 View0.852Hong S.; Kim J.; Kim G.; Cho S.A Research Trends Of Reinforcement Learning Algorithms For C-V2X Network Resource AllocationInternational Conference on Ubiquitous and Future Networks, ICUFN (2024)
40828 View0.852Rani A.J.M.; Lakshmisridevi S.; Sangeetha J.; Aswinrani M.; Ramu T.B.; Mariammal R.Optimizing Inter-Cell Resource Partitioning In Network Slicing: A Game-Theoretic Approach2024 5th IEEE Global Conference for Advancement in Technology, GCAT 2024 (2024)