Publication | Closed Access
Machine-Learning-Based Scenario Identification Using Channel Characteristics in Intelligent Vehicular Communications
50
Citations
58
References
2020
Year
Vehicle CommunicationInternet Of VehicleEngineeringMachine LearningChannel CharacteristicsTraffic PredictionConnected CarSystems EngineeringIntelligent Vehicular CommunicationsVehicular NetworksVehicle NetworkComputer ScienceIntelligent SystemsMobile Communication VehicleScenario IdentificationReal-time Scenario IdentificationSignal Processing
Scenario identification plays an important role in improving communication system performance. Considering that the scenarios of vehicle communications are dynamic due to movements of vehicles, and there are obvious differences in channel characteristics, vehicle speeds, traffic densities between various scenarios, the requirement for real-time scenario identification of vehicular communications is increasingly urgent. Vehicular communication systems can select appropriate channel models and transmission mode by correctly identifying the current scenarios to maintain an effective and reliable operating state. This paper presents a machine-learning-based scenario identification model for intelligent vehicular communications. Channel characteristics extracted from channel measurements in different scenarios form the datasets used to training, then a back-propagation neural network (BPNN) is trained, and a scenario identification model is obtained. Furthermore, the model configuration scheme is explored and presented which can make the proposed identification model achieves optimal performance. Subsequently, identification accuracy is verified by using validation data of the corresponding scenarios. The results show that the identification accuracies are all above 98 % in four typical scenarios of urban areas, highways, tunnels, and vehicle obstructions, which indicates that the model proposed in this paper shows good performance in scenario identification for intelligent vehicular communications.
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