A machine learning based model for gray gas emissivity and absorptivity of H2O-CO2-CO-N2 mixtures

JOURNAL OF QUANTITATIVE SPECTROSCOPY & RADIATIVE TRANSFER(2024)

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摘要
To quickly estimate the radiative transfer of gases, it is common to adapt parameters such as total (gray) emissivity and absorptivity for the calculations. However, existing state-of-the-art models for gray gas mixtures rely on two-dimensional look-up tables and multiple approximation steps, which can result in reduced accuracy and efficiency. This study addresses these limitations by employing a multilayer perceptron neural network approach to develop accurate and efficient absorptivity calculation models. Remarkably, since absorptivity equals emissivity when the absorbing gases and emitting wall surface have the same temperature, a single model can predict both quantities accurately. The training datasets were calculated based on line-by-line integration from HITEMP-2010. Two models were provided based on different spectral line-shape models (pseudo-Lorentz and Alberti cut-off), both of which take care of the strong line mixing effects at higher pressures. To enhance user accessibility and usability, we developed a web-based application that serves as a graphical user interface for the models. The application is conveniently accessible via a web browser.
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关键词
Emissivity,Absorptivity,HITEMP,Machine learning,Hottel's charts
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