介质阻挡放电
材料科学
阴极
化学
放电
分析化学(期刊)
气体放电
甲烷
局部放电
化学工程
作者
Danhua Mei,Gehui Duan,Junhui Fu,Shiyun Liu,Renwu Zhou,Rusen Zhou,Zhi Fang,Patrick J. Cullen,Kostya Ostrikov
出处
期刊:Journal of CO 2 Utilization
日期:2021-11-01
卷期号:53: 101703-
标识
DOI:10.1016/j.jcou.2021.101703
摘要
Abstract CO2 reforming of CH4 in a non-thermal plasma process (e.g., dielectric barrier discharge, DBD) possesses dual benefits for our environment and energy needs. However, this process is strongly influenced by the dielectric structure of the DBD. Here, plasma CO2 reforming of CH4 has been performed in both single-dielectric and double-dielectric DBD (DBD-SD and DBD-DD) reactors under atmospheric pressure. Electrical and optical characterization, along with temperature measurements are performed to understand the influence of the DBD-SD and DBD-DD designs. Reactor performance for reforming is compared under different discharge powers. The results show that CO2/CH4 discharges in both DBD-SD and DBD-DD display typical filamentary microdischarges. Compared with the DBD-DD, the DBD-SD reactor exhibits a larger number and higher intensity of current pulses, which leads to a higher electron density and formation of reactive species. The highest conversion of CO2 (24.1 %) and CH4 (49.2 %) are achieved in the DBD-SD at a high discharge power (75 W). Moreover, higher selectivities of gaseous products are obtained in the DBD-DD, while the DBD-SD reactor shows a higher selectivity for liquid products, mainly including methanol and acetic acid. The highest energy efficiencies for reactant conversion (0.34 mmol/kJ), gaseous and liquid production formation (0.26 mmol/kJ and 0.015 mmol/kJ) are achieved in the DBD-SD reactor at a low discharge power (22 W), resulting from the low energy loss to the environment. However, the carbon deposited on the inner electrode surface in the DBD-SD would have an adverse influence on the reactor’s performance. Further research on the optimization of the DBD reactor to establish an efficient plasma-catalysis system is required for industrial applications.
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