Publicado

2021-03-05

Detecting drainage pitfalls in open-pit mines and haul roads using UAV-photogrammetry

Detección de problemas de drenaje en minas a cielo abierto y caminos de acarreo utilizando fotogrametría UAV

DOI:

https://doi.org/10.15446/dyna.v88n216.90801

Palabras clave:

(drainage, mining, photogrammetry, UAV, water) (en)
(drenaje, minería, fotogrametría, UAV, agua) (es)

Autores/as

Open-pit mines generally have operational problems such as puddling and inappropriate water flow over haul roads, particularly if located in areas with high rainfall indices. These situations increase truck cycle times, promote rapid deterioration of haul-road wearing-course material, reduce productivity due to downtime and increase road maintenance. In addition, operational costs are raised as the frequency of truck maintenance and tire failures also increase. The use of a high-resolution three-dimensional elevation model, created based on Unmanned Aerial Vehicle (UAV) photogrammetry, has been shown to be an effective technique to detect anomalies in a fast and precise way. With the proposed approach, it is possible to diagnose haul-road conditions after rainfall or to anticipate the potential occurrence of such anomalies before they become a greater problem. This diagnosis can then be used to prioritize maintenance activities in open-pit mines. To describe the methodology, a case study is presented demonstrating and validating the results obtained.

Las minas a cielo abierto generalmente tienen problemas operativos, como empozamiento y flujo de agua no apropiados en los caminos de acarreo, principalmente en minas ubicadas en áreas con altos índices de lluvia. Estas situaciones aumentan los tiempos de ciclo de los camiones, promueven el rápido deterioro de las carreteras de transporte ocasionando la reducción de productividad debido al aumento del tiempo de inactividad y de la frecuencia del mantenimiento de las carreteras. Además de eso, los costos operativos se incrementan una vez que aumenta la frecuencia del mantenimiento de los camiones y desgaste de los neumáticos. El uso de un modelo de elevación tridimensional de alta resolución, creado a partir fotogrametría de datos de vehículos aéreos no tripulados (UAV), ha demostrado ser una técnica eficaz para detectar anomalías de forma rápida y precisa. Con el enfoque propuesto, es posible diagnosticar las condiciones de los caminos de acarreo después de la lluvia, o anticipar el potencial de ocurrencia de tales anomalías antes de que se conviertan en un problema mayor. Este diagnóstico se puede utilizar para priorizar las actividades de mantenimiento en minas a cielo abierto. Para describir la metodología, se presenta un estudio de caso que demuestra y valida los resultados obtenidos.

Referencias

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Thompson, R.J, Peroni R.L. and Visser, A.T., Mining Haul Roads: Theory and Practice. CRC Press, UK, 2019, 316 P. DOI: 10.1201/9780429491474

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Awasthi, B. et al., Analyzing the effect of distribution pattern & number of GCPs on overal accuracy of UAV photogrammetric results. International Conference on Unmanned Aerial System in Geomatics, 2019.

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Cómo citar

IEEE

[1]
F. Dille Benevenuti y R. de Lemos Peroni, «Detecting drainage pitfalls in open-pit mines and haul roads using UAV-photogrammetry», DYNA, vol. 88, n.º 216, pp. 190–195, feb. 2021.

ACM

[1]
Dille Benevenuti, F. y de Lemos Peroni, R. 2021. Detecting drainage pitfalls in open-pit mines and haul roads using UAV-photogrammetry. DYNA. 88, 216 (feb. 2021), 190–195. DOI:https://doi.org/10.15446/dyna.v88n216.90801.

ACS

(1)
Dille Benevenuti, F.; de Lemos Peroni, R. Detecting drainage pitfalls in open-pit mines and haul roads using UAV-photogrammetry. DYNA 2021, 88, 190-195.

APA

Dille Benevenuti, F. & de Lemos Peroni, R. (2021). Detecting drainage pitfalls in open-pit mines and haul roads using UAV-photogrammetry. DYNA, 88(216), 190–195. https://doi.org/10.15446/dyna.v88n216.90801

ABNT

DILLE BENEVENUTI, F.; DE LEMOS PERONI, R. Detecting drainage pitfalls in open-pit mines and haul roads using UAV-photogrammetry. DYNA, [S. l.], v. 88, n. 216, p. 190–195, 2021. DOI: 10.15446/dyna.v88n216.90801. Disponível em: https://revistas.unal.edu.co/index.php/dyna/article/view/90801. Acesso em: 22 mar. 2026.

Chicago

Dille Benevenuti, Felipe, y Rodrigo de Lemos Peroni. 2021. «Detecting drainage pitfalls in open-pit mines and haul roads using UAV-photogrammetry». DYNA 88 (216):190-95. https://doi.org/10.15446/dyna.v88n216.90801.

Harvard

Dille Benevenuti, F. y de Lemos Peroni, R. (2021) «Detecting drainage pitfalls in open-pit mines and haul roads using UAV-photogrammetry», DYNA, 88(216), pp. 190–195. doi: 10.15446/dyna.v88n216.90801.

MLA

Dille Benevenuti, F., y R. de Lemos Peroni. «Detecting drainage pitfalls in open-pit mines and haul roads using UAV-photogrammetry». DYNA, vol. 88, n.º 216, febrero de 2021, pp. 190-5, doi:10.15446/dyna.v88n216.90801.

Turabian

Dille Benevenuti, Felipe, y Rodrigo de Lemos Peroni. «Detecting drainage pitfalls in open-pit mines and haul roads using UAV-photogrammetry». DYNA 88, no. 216 (febrero 22, 2021): 190–195. Accedido marzo 22, 2026. https://revistas.unal.edu.co/index.php/dyna/article/view/90801.

Vancouver

1.
Dille Benevenuti F, de Lemos Peroni R. Detecting drainage pitfalls in open-pit mines and haul roads using UAV-photogrammetry. DYNA [Internet]. 22 de febrero de 2021 [citado 22 de marzo de 2026];88(216):190-5. Disponible en: https://revistas.unal.edu.co/index.php/dyna/article/view/90801

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CrossRef citations2

1. Zola Saputra, Anjar Dimara Sakti, Ardila Firmana, Marulitua Ignatius, Arie Naftali Hawu Hede, Asep Saepuloh. (2023). Enhanced mine road monitoring using unmanned aerial vehicles and deep-learning approach. Remote Sensing Applications: Society and Environment, 32, p.101080. https://doi.org/10.1016/j.rsase.2023.101080.

2. Jan Blachowski, Miłosz Becker, Paulina Kujawa, Jacek Koźma, Ewa Warchala, Aleksandra Dynowski, Marcin Pawlik, Jarosław Wajs, Anna Buczyńska. (2023). Transformation processes in lignite post-mining landscape - erosion of anthropogenic formations in the former “Przyjazn Narodow – Szyb Babina” mine (Poland). Zeitschrift der Deutschen Gesellschaft für Geowissenschaften, 173(4), p.565. https://doi.org/10.1127/zdgg/2022/0338.

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