Xiao Dong, Yan Zelin, Li Jian, Fu Yanhua, Li Zhenni, Li Boyan
School of Information Science and Engineering, Northeastern University, Shenyang 110819, China.
Technical Service Parlor, Unit 31434 of the Chinese People's Liberation Army, Shenyang 110000, China.
ACS Omega. 2022 Jun 29;7(27):23919-23928. doi: 10.1021/acsomega.2c02665. eCollection 2022 Jul 12.
Coal plays an indispensable role in the world's energy structure. Coal converts chemical energy into energy such as electricity, heat, and internal energy through combustion. To realize the energy conversion of coal more efficiently, coal needs to be identified during the stages of mining, combustion, and pyrolysis. On this basis, different categories of coal are used according to industrial needs, or different pyrolysis processes are selected according to the category of coal. This paper proposes an approach combining deep learning with reflection spectroscopy for rapid coal identification in mining, combustion, and pyrolysis scenarios. First, spectral data of different coal samples were collected in the field and these spectral data were preprocessed. Then, an identification model combining a multiscale convolutional neural network (CNN) and an extreme learning machine (ELM), named RS_PSOTELM, is proposed. The effective features in the spectral data are extracted by the CNN, and the feature classification is realized utilizing the ELM. To enhance the identification performance of the model, we utilize a particle swarm optimization algorithm to optimize the parameters of the ELM. Experimental results show that RS_PSOTELM achieves 98.3% accuracy on the coal identification task and is able to identify coal quickly and accurately, providing a low-cost, efficient, and reliable approach for coal identification during the mining and application phases, as well as paving the way for efficient combustion and pyrolysis of coal.
煤炭在世界能源结构中发挥着不可或缺的作用。煤炭通过燃烧将化学能转化为电能、热能和内能等能量。为了更高效地实现煤炭的能量转换,需要在开采、燃烧和热解阶段对煤炭进行识别。在此基础上,根据工业需求使用不同类别的煤炭,或者根据煤炭类别选择不同的热解工艺。本文提出一种将深度学习与反射光谱相结合的方法,用于在开采、燃烧和热解场景中快速识别煤炭。首先,在现场收集不同煤样的光谱数据并进行预处理。然后,提出一种结合多尺度卷积神经网络(CNN)和极限学习机(ELM)的识别模型,命名为RS_PSOTELM。通过CNN提取光谱数据中的有效特征,并利用ELM实现特征分类。为了提高模型的识别性能,利用粒子群优化算法对ELM的参数进行优化。实验结果表明,RS_PSOTELM在煤炭识别任务上的准确率达到98.3%,能够快速准确地识别煤炭,为煤炭开采和应用阶段的识别提供了一种低成本、高效且可靠的方法,同时也为煤炭的高效燃烧和热解铺平了道路。