3.8 Proceedings Paper

The Intelligent Mechanism for Data Collection and Data Mining in the Vehicular Ad-Hoc Networks (VANETs) Based on Big-Data-Driven

出版社

IEEE
DOI: 10.1109/GPECOM58364.2023.10175794

关键词

Vehicular ad-hoc networks; Vehicles; Big Data; Hadoop; Map Reduce; Security; Sensors; Traffic Management; Smart Cities; Internet of Things (IoT); Mobile ad-hoc networks

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Big data technology has gained significant attention across various scientific fields. The Vehicular Ad-Hoc Network (VANET) is crucial for road safety and intelligent transportation systems by facilitating information exchange between vehicles, devices, and public networks. VANETs generate large amounts of data that require quick and reliable transmission, which can be enhanced by analyzing diverse data types. By utilizing big data technologies, VANETs can extract valuable insights from operational data for improved traffic management. This paper discusses the incorporation of VANET features into big data and explores methods for utilizing big data to study VANET features, enabling efficient decision-making based on statistical analysis or graphical representations.
Big data technology has attracted the main attention of researchers in almost all sciences. The Vehicular Ad-Hoc Network (VANET) enables information exchange between vehicles, other devices, and public networks, playing a key role in road safety and intelligent transportation systems. With the proliferation of connected vehicles and the development of novel mobile apps and technologies, VANETs will generate vast quantities of data that need to be transmitted quickly and reliably. Furthermore, analyzing a wide range of data types can enhance VANET's performance. By utilizing big data technologies, the Ad-Hoc Vehicular Network can extract valuable insights from a large amount of operational data, thus improving traffic management processes, including planning, engineering, and operations. VANETs have access to big data during real-time operations. This paper presents VANET features as big data features in the literature, followed by a discussion of methods for utilizing big data to study VANET features. Combining automotive ad networks and big data facilitates the easy management of a large number of driving factors, as the data mining process in big data enables quick decision-making based on statistical analysis or graphical representations of data.

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