School of Mechanical and Electrical Engineering, China University of Mining and Technology, Xuzhou, 221116, China.
Jiangsu Province and Education Ministry Co-sponsored Collaborative Innovation Center of Intelligent Mining Equipment, China University of Mining and Technology, Xuzhou, 221116, China.
Sci Data. 2024 Jun 14;11(1):628. doi: 10.1038/s41597-024-03422-w.
The identification technology for coal and coal-measure rock is required across multiple stages of coal exploration, mining, separation, and tailings management. However, the construction of identification models necessitates substantial data support. To this end, we have established a near-infrared spectral dataset for coal and coal-measure rock, which includes the reflectance spectra of 24 different types of coal and coal-measure rock. For each type of sample, 11 sub-samples of different granularities were created, and reflectance spectra were collected from sub-samples at five different detection azimuths, 18 different detection zeniths, and under eight different light source zenith conditions. The quality and usability of the dataset were verified using quantitative regression and classification machine learning algorithms. Primarily, this dataset is used to train artificial intelligence-based models for identifying coal and coal-measure rock. Still, it can also be utilized for regression studies using the industrial analysis results contained within the dataset.
煤炭及煤系岩的识别技术贯穿于煤炭勘探、开采、分选和尾矿管理的多个阶段。然而,识别模型的构建需要大量的数据支持。为此,我们建立了一个煤炭及煤系岩的近红外光谱数据集,其中包括 24 种不同类型的煤炭及煤系岩的反射率光谱。对于每一种类型的样本,我们创建了 11 个不同粒度的子样本,并从五个不同的检测方位、18 个不同的检测天顶角以及八个不同的光源天顶角条件下的子样本中采集了反射率光谱。我们使用定量回归和分类机器学习算法验证了数据集的质量和可用性。这个数据集主要用于训练基于人工智能的煤炭及煤系岩识别模型,但它也可以用于使用数据集内包含的工业分析结果进行回归研究。