Real-Time Calculation of CO[sub.2] Conversion in Radio-Frequency Discharges under Martian Pressure by Introducing Deep Neural Network

In recent years, the in situ resource utilization of CO[sub.2] in the Martian atmosphere by low-temperature plasma technology has garnered significant attention. However, numerical simulation is extremely time-consuming for modeling the complex CO[sub.2] plasma, involving tens of species and hundred...

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Bibliographic Details
Published inApplied sciences Vol. 14; no. 16
Main Authors Li, Ruiyao, Wang, Xucheng, Zhang, Yuantao
Format Journal Article
LanguageEnglish
Published MDPI AG 01.08.2024
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Summary:In recent years, the in situ resource utilization of CO[sub.2] in the Martian atmosphere by low-temperature plasma technology has garnered significant attention. However, numerical simulation is extremely time-consuming for modeling the complex CO[sub.2] plasma, involving tens of species and hundreds of reactions, especially under Martian pressure. In this study, a deep neural network (DNN) with multiple hidden layers is introduced to investigate the CO[sub.2] conversion in radio-frequency (RF) discharges at a given power density under Martian pressure in almost real time. After training on the dataset obtained from the fluid model or experimental measurements, the DNN shows the ability to accurately and efficiently predict the various discharge characteristics and plasma chemistry of RF CO[sub.2] discharge even in seconds. Compared with conventional fluid models, the computational efficiency of the DNN is improved by nearly 10[sup.6] times; thus, a real-time calculation of RF CO[sub.2] discharge can almost be achieved. The DNN can provide an enormous amount of data to enhance the simulation results due to the very high computational efficiency. The numerical data also suggest that the CO[sub.2] conversion increases with driving frequency at a fixed power density. This study shows the ability of the DNN-based approach to investigate CO[sub.2] conversion in RF discharges for various applications, providing a promising tool for the modeling of complex non-thermal plasmas.
ISSN:2076-3417
2076-3417
DOI:10.3390/app14166855