Catalytic Upgrading of Bio-oil from Ulva lactuca using Amberlyst-۱۵ Catalyst: Experimental and Kinetic Model

Publish Year: 1402
نوع سند: مقاله ژورنالی
زبان: English
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شناسه ملی سند علمی:

JR_IJE-36-9_012

تاریخ نمایه سازی: 13 مرداد 1402

Abstract:

Catalytic pyrolysis of Ulva lactuca macroalgae was studied over Amberlyst-۱۵ catalyst at temperature ۴۰۰, ۵۰۰, and ۶۰۰ oC. The comparison between catalytic and non-catalytic pyrolysis in the conversion of Ulva lactuca was determined. Intriguingly, it was found that Amberlyst-۱۵ catalyst improved bio-oil production efficiency. The highest bio-oil yield of ۲۹.۵۴ wt% was achieved at ۶۰۰ oC with the presence of an Amberlyst-۱۵ catalyst. Furthermore, Amberlyst-۱۵ catalyst could enhance gas production by over ۷۳.۸۸%. It could be attributed due to the catalytic pyrolysis could promote more small molecules that are more volatile through a cracking process. Elemental and functional groups in pyrolytic bio-oils were identified via GC-MS analysis. The acidity and structure of Amberlyst-۱۵ catalyst significantly affected the distribution of product components, especially the formation of aromatic hydrocarbons, with a ۲۷.۷۸% relative yield. The first-order kinetic model showed that the production of aromatic hydrocarbons follows Arrhenius law.

Authors

A. Amrullah

Department of Mechanical Engineering, Lambung Mangkurat University, Banjarmasin, South Kalimantan, Indonesia

O. Farobie

Department of Mechanical and Biosystem Engineering, Faculty of Agricultural Engineering and Technology, IPB University (Bogor Agricultural University), IPB Darmaga Campus, Bogor, Indonesia

W. Fatriasari

Research Center for Biomass and Bioproducts, National Research and Innovation Agency (BRIN), Jl, Raya Bogor KM. ۴۶ Cibinong, Indonesia

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