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Deep Learning in Undeground Mines - a Review
Through the newest advancements in the area of artificial intelligence, the popularity of deep learning has increased in almost every conceivable field. Underground mines are no exception to this trend, and although there is a noticeable delay, new technologies are also being implemented there. In t...
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creator | Skoczylas, Artur Gryncewicz, Wieslawa Rosa, Agnieszka Nadolny, Michal |
description | Through the newest advancements in the area of artificial intelligence, the popularity of deep learning has increased in almost every conceivable field. Underground mines are no exception to this trend, and although there is a noticeable delay, new technologies are also being implemented there. In this paper, we present a review of deep learning applications in research concerning underground mines. The aim of this article is to outline the latest trends in this specific area; thus, only articles from recent years (2020-2024) were considered. Utilizing a Scopus query, initially 47 articles were identified, which were subsequently reduced to a final sample of 31. Through a comprehensive review of each article, the authors established five main lines of research in the field: predictive maintenance, efficiency assessment, localization and autonomous operation, object recognition, and early warning and safety. The article provides a broad overview of ongoing activities and future directions in these domains, along with a detailed catalog of individual research works and achievements. |
doi_str_mv | 10.1109/ACIT62333.2024.10712588 |
format | conference_proceeding |
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subjects | artificial intelligence Deep learning industry applications Laser radar Location awareness Monitoring Object recognition Predictive maintenance review Reviews Rocks Training underground mines |
title | Deep Learning in Undeground Mines - a Review |
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