Inner Mongolia University of Technology, School of science, Hohhot, China.
Anhui University of Science and Technology, School of Electrical and Information Engineering, Huainan, China.
PLoS One. 2023 Jan 19;18(1):e0279955. doi: 10.1371/journal.pone.0279955. eCollection 2023.
The identification of coal gangue is of great significance for its intelligent separation. To overcome the interference of visible light, we propose coal gangue recognition based on multispectral imaging and Extreme Gradient Boosting (XGBoost). The data acquisition system is built in the laboratory, and 280 groups of spectral data of coal and coal gangue are collected respectively through the imager. The spectral intensities of all channels of each group of spectral data are averaged, and then the dimensionality is reduced by principal component analysis. XGBoost is used to identify coal and coal gangue based on the reduced dimension spectral data. The results show that PCA combined with XGBoost has the relatively best classification performance, and its recognition accuracy of coal and coal gangue is 98.33%. In this paper, the ensemble-learning algorithm XGBoost is combined with spectral imaging technology to realize the rapid and accurate identification of coal and coal gangue, which is of great significance to the intelligent separation of coal gangue and the intelligent construction of coal mines.
煤矸石的识别对于其智能分离具有重要意义。为了克服可见光的干扰,我们提出了基于多光谱成像和极端梯度提升(XGBoost)的煤矸石识别方法。该数据采集系统在实验室中构建,通过成像仪分别采集了 280 组煤和煤矸石的光谱数据。对每组光谱数据的所有通道的光谱强度进行平均,然后通过主成分分析降低维度。基于降维光谱数据,使用 XGBoost 识别煤和煤矸石。结果表明,PCA 与 XGBoost 相结合具有相对较好的分类性能,其对煤和煤矸石的识别准确率为 98.33%。本文将集成学习算法 XGBoost 与光谱成像技术相结合,实现了煤和煤矸石的快速准确识别,对煤矸石的智能分离和煤矿的智能建设具有重要意义。