4.6 Review

Review of deep learning approaches in solving rock fragmentation problems

Journal

AIMS MATHEMATICS
Volume 8, Issue 10, Pages 23900-23940

Publisher

AMER INST MATHEMATICAL SCIENCES-AIMS
DOI: 10.3934/math.20231219

Keywords

computer vision; deep learning; convolutional neural networks; rock fragmentation; blast; quality estimation; real-time performance; parallel computing

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One of the major challenges in the mining industry is estimating resource yield from visual data. This task, known as rock fragmentation estimation, involves identifying rock chunk distribution parameters to estimate blasting quality and other mining parameters. It is crucial for achieving optimal operational efficiency, cost reduction, and profit maximization. Most recent advancements in computer vision and neural networks have been applied to solve this task and the efficient utilization of computing power is essential for real-time operation.
One of the most significant challenges of the mining industry is resource yield estimation from visual data. An example would be identification of the rock chunk distribution parameters in an open pit. Solution of this task allows one to estimate blasting quality and other parameters of open pit mining. This task is of the utmost importance, as it is critical to achieving optimal operational efficiency, reducing costs and maximizing profits in the mining industry. The mentioned task is known as rock fragmentation estimation and is typically tackled using computer vision techniques like instance segmentation or semantic segmentation. These problems are often solved using deep learning convolutional neural networks. One of the key requirements for an industrial application is often the need for real-time operation. Fast computation and accurate results are required for practical tasks. Thus, the efficient utilization of computing power to process high-resolution images and large datasets is essential. Our survey is focused on the recent advancements in rock fragmentation, blast quality estimation, particle size distribution estimation and other related tasks. We consider most of the recent results in this field applied to open-pit, conveyor belts and other types of work conditions. Most of the reviewed papers cover the period of 2018-2023. However, the most significant of the older publications are also considered. A review of publications reveals their specificity, promising trends and best practices in this field. To place the rock fragmentation problems in a broader context and propose future research topics, we also discuss state-of-the-art achievements in real-time computer vision and parallel implementations of neural networks.

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