During the extraction
and processing of coal, a large amount of
solid waste, collectively known as gangue, is produced. This gangue
has a low carbon content but a high ash content, accounting for approximately
15 to 20% of the total coal yield. Before coal is used, coal and gangue
must be effectively separated to reduce the gangue content in the
raw coal and improve the efficiency of coal utilization. This study
introduces a classification method for coal and gangue based on a
combination of laser-induced breakdown spectroscopy (LIBS) and deep
learning. The method employs Gramian angular summation fields (GASF)
to convert 1D spectral data into 2D time-series data, visualizing
them as 2D images, before employing a novel deep learning model—GASF-CNN—for
coal and gangue classification. GASF-CNN enhances model focus on critical
features by introducing the SimAM attention mechanism, and additionally,
the fusion of various levels of spectral features is achieved through
the introduction of residual connectivity. GASF-CNN was trained and
tested using a spectral data set containing coal and gangue. Comparative
experimental results demonstrate that GASF-CNN outperforms other machine
learning and deep learning models across four evaluation metrics.
Specifically, it achieves 98.33, 97.06, 100, and 98.51% in the accuracy,
recall, precision, and F1 score metrics, respectively, thereby achieving
an accurate classification of coal and gangue.