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Using Deep Convolutional Neural Networks and Infrared Thermography to Identify Coal Quality and Gangue

Refat Mohammed Abdullah Eshaq, Eryi Hu, Hamzah A. A. M. Qaid, Yao Zhang, Tonggang Liu

2021IEEE Access28 citationsDOIOpen Access PDF

Abstract

Owing to the enormous demand for and growing large-scale use of coal in the China, India and USA speculation has arisen about possible hazards to environmental quality and human health. The contents of fly ash and volatile matter in low-quality coal are extremely harmful to the environment. As a result, there is still much to be explored regarding known hazards and harms to the natural environment of the Earth. For the detection of high-quality coal, we propose a new method of distinguishing coal quality or types (i.e., anthracite, bituminous coal, subbituminous coal and lignite) and efficiently separating gangue and rock from the production lines of coal preparation plants (CPPs) by exploiting infrared machine vision and convolutional neural networks (CNNs) for deep learning, which can make coal use less harmful to humans and nature and/or more useful for general welfare. In this paper, we carried out two experiments. First experiment to study the reaction coal types, gangue and rock with infrared radiation at temperatures of 50°C, 70°C, 90°C, 110°C, and 150°C. Second experiment, several common CNN models (i.e., AlexNet, DarkNet-58, GoogLeNet, NasNet_Mobileb, ResNet-18, MobileNet-v2, Inception-v3 and DenseNet-201) are trained and tested to classify coal types and distinguish gangue and rock. We achieve a remarkable classification accuracy of 100% in these training and testing processes when employing the ResNet-18 and DenseNet-201 models.

Topics & Concepts

CoalAnthraciteBituminous coalEnvironmental scienceCoal miningConvolutional neural networkComputer scienceDeep learningResidual neural networkGangueMining engineeringArtificial intelligenceGeologyWaste managementEngineeringMaterials scienceMetallurgyMineral Processing and GrindingThermography and Photoacoustic TechniquesCoal Properties and Utilization
Using Deep Convolutional Neural Networks and Infrared Thermography to Identify Coal Quality and Gangue | Litcius