Processing slightly resolved ro-vibrational spectra during chemical vapor deposition of carbon materials: machine learning approach for plasma thermometry

Abstract

A fast optical spectroscopic method for determination rotational (Trot) and vibrational (Tvib) temperatures in two-temperature Boltzmann distribution of the excited state by using machine learning approach is presented. The method is applied to estimate molecular gas temperatures in a direct current glow discharge in hydrogen-methane gas mixture during plasma-enhanced chemical vapor deposition of carbon film materials. Slightly resolved ro-vibrational optical emission spectrum of the C2 ('=0 ''=0) Swan band system was used for local temperature measurements in plasma ball. Random Forest algorithm of machine learning was explored for determination of temperature distribution maps. In addition to the Trot , Tvib maps, distribution maps and their gradients for electron temperature (Te) and for the emission intensity of the spectral line 516,5nm corresponding to C2 species is presented and is discussed in detail.

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