Automated road damage detection using neural network and maintenance system in an open pit coal mining environment APCOM 2021

The Southern African Institute of Mining and Metallurgy
M. R. Pratama F. M. Ramadhan
Organization:
The Southern African Institute of Mining and Metallurgy
Pages:
10
File Size:
1901 KB
Publication Date:
Sep 1, 2021

Abstract

Monitoring open-pit mine road conditions has become very critical nowadays. There are several benefits to in conducting research on this field such as opportunity to improve truck’s speed which directly influences truck’s productivity. This research aims to provide a semi real-time, and sensors-based automatic road damage detector that predicts the road quality through road damage exact location tracing, road damages auto-classification, and real-time instruction in the form of work order format to mining road maintenance, and repair authorities through mobile apps and maintenance unit’s in-cabin display. It will also provide the maintenance/repair activity performance evaluation via integrated dashboards. The artificial neural network algorithm is applied during the process of data training regarding classifying road damages and severities which resulted in a valid model. The road damage classification model has a precision level of 80.5% in predicting whether the road is damaged or not. Using this approach, we are expecting to visualise a road quality map of all active roads on mine site.
Citation

APA: M. R. Pratama F. M. Ramadhan  (2021)  Automated road damage detection using neural network and maintenance system in an open pit coal mining environment APCOM 2021

MLA: M. R. Pratama F. M. Ramadhan Automated road damage detection using neural network and maintenance system in an open pit coal mining environment APCOM 2021. The Southern African Institute of Mining and Metallurgy, 2021.

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