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A Novel ABRM Model for Predicting Coal Moisture Content.

Fan ZhangHao LiZhiChao XuWei Chen
Published in: Journal of intelligent & robotic systems (2022)
Coal moisture content monitoring plays an important role in carbon reduction and clean energy decisions of coal transportation-storage aspects. Traditional coal moisture content detection mechanisms rely heavily on detection equipment, which can be expensive or difficult to deploy under field conditions. To achieve fast prediction of coal moisture content, a novel neural network model based on attention mechanism and bidirectional ResNet-LSTM structure (ABRM) is proposed in this paper. The prediction of coal moisture content is achieved by training the model to learn the relationship between changes of coal moisture content and meteorological conditions. The experimental results show that the proposed method has superior performance in terms of moisture content prediction accuracy compared with other state-of-the-art methods, and that ABRM model approaches appear to have the greatest potential for predicting coal moisture content shifts in the face of meteorological elements.
Keyphrases
  • particulate matter
  • heavy metals
  • air pollution
  • neural network
  • risk assessment
  • working memory
  • climate change
  • label free
  • human health
  • sensitive detection