Towards Edge-Based Data Lake Architecture for Intelligent Transportation System
This work addresses data processing bottlenecks for urban transportation systems, but it appears incremental as it builds on existing edge and data lake concepts.
The paper tackles the challenge of processing massive and complex data in Intelligent Transportation Systems by proposing an Edge-based Data Lake Architecture, demonstrating its effectiveness through analysis of three use cases.
The rapid urbanization growth has underscored the need for innovative solutions to enhance transportation efficiency and safety. Intelligent Transportation Systems (ITS) have emerged as a promising solution in this context. However, analyzing and processing the massive and intricate data generated by ITS presents significant challenges for traditional data processing systems. This work proposes an Edge-based Data Lake Architecture to integrate and analyze the complex data from ITS efficiently. The architecture offers scalability, fault tolerance, and performance, improving decision-making and enhancing innovative services for a more intelligent transportation ecosystem. We demonstrate the effectiveness of the architecture through an analysis of three different use cases: (i) Vehicular Sensor Network, (ii) Mobile Network, and (iii) Driver Identification applications.