4.7 Article

Study on liquid dispersion characteristics in trickle bed reactor based on image processing

期刊

FUEL
卷 351, 期 -, 页码 -

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ELSEVIER SCI LTD
DOI: 10.1016/j.fuel.2023.128912

关键词

Trickle bed reactor; Liquid dispersion characteristics; Image processing method; Wetting efficiency

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This study conducted experimental research to investigate the impact of gas/liquid velocity, particle packing method, and liquid properties on the characteristics of liquid dispersion in a pseudo-two-dimensional trickle bed reactor. By utilizing a high-speed camera system and an image processing method, the researchers were able to record and quantify the liquid flow and distribution in the reactor. The combination of qualitative information from liquid distribution images and quantitative information from particle surface wetting efficiency allowed for a detailed evaluation of liquid dispersion in the trickle bed reactor.
The liquid flow and distribution are key factors in determining the performance of a trickle bed reactor. It is highly challenging to examine the characteristics of liquid dispersion due to the complexity of the liquid flow mechanism in the trickle bed reactor. In this study, experimental research was performed to determine the impacts of gas/liquid velocity, particle packing method, and liquid properties on the characteristics of liquid dispersion in a pseudo-two-dimensional trickle bed reactor. A high-speed camera system was utilized to record the liquid flow and distribution in the reactor. An image processing method was proposed to obtain the particle surface wetting efficiency for quantifying the liquid distribution in the reactor. By combining liquid distribution images (qualitative information) and particle surface wetting efficiency (quantitative information) in the reactor under different conditions, it is feasible to evaluate the liquid dispersion in the trickle bed reactor in great detail.

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