Enhancing Pavement Sensor Data Acquisition for AI-Driven Transportation Research
Manish Kumar Krishne Gowda, Andrew Balmos, Shin Boonam, James V., Krogmeier

TL;DR
This paper offers comprehensive guidelines for managing transportation sensor data, integrating real-time and static data handling, storage, and visualization to enhance AI-driven transportation research.
Contribution
It introduces a unified framework combining open-source tools, cloud storage, and standards for effective sensor data management in transportation research.
Findings
Successful application in real-world case studies
Improved data reliability and accessibility
Enhanced pattern detection from complex datasets
Abstract
Effective strategies for sensor data management are essential for advancing transportation research, especially in the current data-driven era, due to the advent of novel applications in artificial intelligence. This paper presents comprehensive guidelines for managing transportation sensor data, encompassing both archived static data and real-time data streams. The real-time system architecture integrates various applications with data acquisition systems (DAQ). By deploying the in-house designed, open-source Avena software platform alongside the NATS messaging system as a secure communication broker, reliable data exchange is ensured. While robust databases like TimescaleDB facilitate organized storage, visualization platforms like Grafana provide real-time monitoring capabilities. In contrast, static data standards address the challenges in handling unstructured, voluminous…
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Taxonomy
TopicsTraffic Prediction and Management Techniques
