Abstract:
In the contemporary landscape of vehicular communications, the role of vehicular ad-hoc networks (VANETs) has become increasingly pivotal, transcending the capabilities o...Show MoreMetadata
Abstract:
In the contemporary landscape of vehicular communications, the role of vehicular ad-hoc networks (VANETs) has become increasingly pivotal, transcending the capabilities of traditional mobile ad-hoc networks (MANETs). These advancements in VANETs play a critical role in enhancing traffic management systems, promoting collision prevention, bolstering road safety, and efficiently handling emergency scenarios. Modern vehicles, equipped with advanced data collection tools, accumulate extensive information encompassing vehicle health, fuel requirements, and comprehensive location histories. This rich data repository is instrumental in forecasting future destinations and facilitating timely arrangements, embodying the essence of ambient intelligence within the Internet of Things (IoT) framework. In emergency contexts, the rapid analysis of vehicle data is crucial for identifying the nearest emergency facilities. This paper proposes an innovative approach that leverages machine learning and edge computing techniques to predict vehicles' subsequent locations using large-scale data, concurrently prioritizing user privacy. We employ federated learning for processing at the network's edge and integrate a blockchain-based distributed database to ensure robust data privacy and security. The application of blockchain and federated learning in training models on expansive datasets is particularly effective in estimating the proximity to medical facilities and emergency services. Furthermore, this study introduces an optimization method to monitor vehicle speed and outlines a comprehensive attack model, along with effective protection measures. Our research contributes to illustrate the transformative potential of extensive data models and sophisticated machine learning methodologies in reshaping transportation systems, with a particular focus on safety and emergency response optimization.
Published in: IEEE Transactions on Vehicular Technology ( Volume: 74, Issue: 2, February 2025)
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- IEEE Keywords
- Index Terms
- Internet Of Things ,
- Localization Prediction ,
- Location Prediction Model ,
- Machine Learning ,
- Learning Models ,
- Transport System ,
- Data Privacy ,
- Large-scale Data ,
- Mobile Network ,
- Road Safety ,
- Edge Computing ,
- Federated Learning ,
- Ad Hoc Networks ,
- Vehicular Communication ,
- Vehicular Ad Hoc Networks ,
- Leveraging Machine Learning ,
- Local Data ,
- Global Model ,
- Long Short-term Memory ,
- End Devices ,
- Roadside Units ,
- Blockchain Technology ,
- Local Updates ,
- Mobile Edge Computing ,
- On-board Unit ,
- Internet Of Vehicles ,
- Vehicle Position ,
- Input Factors ,
- Privacy Preservation
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Internet Of Things ,
- Localization Prediction ,
- Location Prediction Model ,
- Machine Learning ,
- Learning Models ,
- Transport System ,
- Data Privacy ,
- Large-scale Data ,
- Mobile Network ,
- Road Safety ,
- Edge Computing ,
- Federated Learning ,
- Ad Hoc Networks ,
- Vehicular Communication ,
- Vehicular Ad Hoc Networks ,
- Leveraging Machine Learning ,
- Local Data ,
- Global Model ,
- Long Short-term Memory ,
- End Devices ,
- Roadside Units ,
- Blockchain Technology ,
- Local Updates ,
- Mobile Edge Computing ,
- On-board Unit ,
- Internet Of Vehicles ,
- Vehicle Position ,
- Input Factors ,
- Privacy Preservation
- Author Keywords