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Road pavement health monitoring system using smartphone sensing with a two-stage machine learning model

  • Insight Centre for Data Analytics
  • University College Cork
  • McCurdy Associates

Research output: Contribution to journalArticlepeer-review

Abstract

Drive-by road pavement monitoring, using smartphone sensing, has faced longstanding challenges in adoption due to low accuracy and limited applicability. This stems from significant uncertainties during data collection in real-world scenarios, making it prohibitively difficult in applying conventional machine learning models to the detection of road pavement anomalies. This paper presents a two-stage machine learning approach that extracts potential anomalies from the dataset and classifies them into four typical road feature categories. Unlike time-series data analysis, this approach transforms time-series into geospatial series, allowing the analysis to be time-independent thereby capable of detecting road anomalies regardless of driving speeds. Additionally, a framework for a road pavement health monitoring system is proposed to collect data, integrate the machine learning engine, and visualise road anomalies. The developed system was tested on two shuttle buses with normal smartphones, which achieved 87% overall accuracy compared against manual inspection.

Original languageEnglish
Article number105664
JournalAutomation in Construction
Volume167
DOIs
Publication statusPublished - Nov 2024

Keywords

  • 2-stage machine learning
  • Drive-by road pavement monitoring
  • Smartphone sensing
  • Structural health monitoring

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