Multi-sensor Data Fusion Based on Big Data Modelling

2026-99-0568

To be published on 07/10/2026

Authors
Abstract
Content
The collection of road high-frequency data often involves inputs from multiple sensors, such as stress and strain, and sampling of these data features a high sampling rate of up to 2,000 Hz. High-frequency sampling enables capturing of the internal stress and strain of the pavements when vehicles are passing and facilitates the analysis of the pavement structure and prediction of its long-term service performance. However, while the sensors are continuously collecting data, the time the vehicles pass is discrete and unpredictable, resulting in a large number of low information density or irrelevant data. Even when the massive high-frequency data are collected, challenges remain in data transmission, storage, and analysis—the challenges are attributable not only to the massive quantity and complexity of data from multiple sensors, but also to the inconsistent data formats, misaligned timestamps, and multi-sensor data fusion difficulties. In response to the challenges specified above, a new approach combining traditional road observation data with deep learning models is proposed here to efficiently process and analyze massive sensor data. This method not only improves the data processing efficiency but also provides new insights into innovation of road engineering technologies.
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Citation
Gang, J., Zhang, Y., Chen, Y., Zheng, X., et al., "Multi-sensor Data Fusion Based on Big Data Modelling," The 1st International Academic Conference on Intelligent Transportation and Low-Altitude Transport (ITLAT2025), Nantong, China, June 20, 2025, .
Additional Details
Publisher
Published
To be published on Jul 10, 2026
Product Code
2026-99-0568
Content Type
Technical Paper
Language
English