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A gas source declaration scheme based on a tetrahedral sensor structure in three-dimensional airflow environments.

Hui-Rang HouYuan TongChao RenQing-Hao Meng
Published in: The Review of scientific instruments (2019)
A gas source declaration scheme based on a tetrahedral sensor structure in three-dimensional airflow environments is proposed. First, a tetrahedral sensor structure was established. Based on the tetrahedral structure, the gas source declaration problem was converted into a two-class classification issue. Then a classification algorithm combining an extreme learning machine (ELM, a fast neural network classifier) with a gas mass flux criterion is proposed. A novel calculation method for the mass flux through a closed tetrahedral surface is presented, and a mass flux criterion was developed which acts as a training sample filter for the ELM. The source declaration scheme was validated by using both regular and irregular tetrahedron experiments.
Keyphrases
  • deep learning
  • neural network
  • machine learning
  • room temperature
  • carbon dioxide
  • climate change