Evaluation of Fischer-Tropsch synthesis to light olefins over Co- and Fe-based catalysts using artificial neural network

被引:19
作者
Garona, Higor A. [1 ]
Cavalcanti, Fabio M. [1 ]
de Abreu, Thiago F. [1 ]
Schmal, Martin [1 ]
Alves, Rita M. B. [1 ]
机构
[1] Univ Sao Paulo, Escola Politecn, Sao Paulo, Brazil
基金
巴西圣保罗研究基金会;
关键词
Environmental catalysis; Fischer-Tropsch synthesis; Artificial neural networks; Light olefins; Carbon dioxide; IRON-BASED CATALYST; SYNTHESIS GAS; BIMETALLIC CATALYSTS; PRODUCT SELECTIVITY; OXIDE CATALYSTS; NATURAL-GAS; COBALT; CONVERSION; OPTIMIZATION; PERFORMANCE;
D O I
10.1016/j.jclepro.2021.129003
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Currently, energy transition due to fossil fuel negative side effects is taking place. This transition impacts the chemical industry based on light olefins reactions. Plastics, detergents, polymers, and others are mostly produced from such hydrocarbons, which are mainly originated from oil-based and highly energy-consuming processes. Fischer-Tropsch Synthesis (FTS) is a strategic technology capable to transform a given carbon source, including natural gas and biomass, into high added-value hydrocarbons. It is affected by several conditions, such as catalyst design and operating conditions and its feasibility requires a good selection of relevant process variables to optimize light olefins yield. In this work, Machine Learning models were used to predict adequate reaction conditions from the catalytic literature data. Three-layer feedforward neural networks were adjusted using a careful selection of operating conditions and catalyst composition as inputs and carbon monoxide conversion, light olefins selectivity, and carbon dioxide yield as outputs. The results indicate neural network prediction efficacy for FTS most relevant variables, such as temperature and catalyst composition. This work presents the novelty of including more variables in the model compared to recent similar studies, such as catalyst support, active phase, and promoters as inputs; and light olefins selectivity and CO2 yield as outputs. Overall, Fe-based catalyst (standard Fe (1.6 wt%) K/TiO2) presented the highest light olefins selectivity and yield at optimal conditions (T = 500 degrees C and 20 wt% of active phase), despite showing the highest emission of carbon dioxide.
引用
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页数:13
相关论文
共 74 条
[1]   Effect of titania support on Fischer-Tropsch synthesis using cobalt, iron, and ruthenium catalysts in silicon-microchannel microreactor [J].
Abrokwah, Richard Y. ;
Rahman, Mahbubur M. ;
Deshmane, Vishwanath G. ;
Kuila, Debasish .
MOLECULAR CATALYSIS, 2019, 478
[2]   Modeling and optimization of Fischer-Tropsch synthesis in the presence of Co ((III)/Al2O3 catalyst using artificial neural networks and genetic algorithm [J].
Adib, Hooman ;
Haghbakhsh, Reza ;
Saidi, Majid ;
Takassi, Mohammad Ali ;
Sharifi, Fatemeh ;
Koolivand, Mehdi ;
Rahimpour, Mohammad Reza ;
Keshtkari, Simin .
JOURNAL OF NATURAL GAS SCIENCE AND ENGINEERING, 2013, 10 :14-24
[3]   Correlation between Fischer-Tropsch catalytic activity and composition of catalysts [J].
Ali, Sardar ;
Zabidi, Noor Asmawati Mohd ;
Subbarao, Duvvuri .
CHEMISTRY CENTRAL JOURNAL, 2011, 5
[4]   Scavenging carbon deposition on alumina supported cobalt catalyst during renewable hydrogen-rich syngas production by methane dry reforming using artificial intelligence modeling technique [J].
Alsaffar, May Ali ;
Ayodele, Bamidele Victor ;
Mustapa, Siti Indati .
JOURNAL OF CLEANER PRODUCTION, 2020, 247
[5]  
Alves R.M.B., 2004, AICHE ANN MEET C P, P7663
[6]   New Trends in Olefin Production [J].
Amghizar, Ismael ;
Vandewalle, Laurien A. ;
Van Geem, Kevin M. ;
Marin, Guy B. .
ENGINEERING, 2017, 3 (02) :171-178
[7]   Modeling of liquid hydrocarbon products from syngas [J].
Atashi, Hossein ;
Hajisafari, Mohsen ;
Rezaeian, Fatemeh ;
Parnian, Mohammad Javad .
INTERNATIONAL JOURNAL OF COAL SCIENCE & TECHNOLOGY, 2019, 6 (01) :27-36
[8]   Rational design of process parameters for carbon-neutral and sulfur-free motor fuel production from second-generation biomass generated syngas [J].
Bahri, Shashank ;
Basak, Uttaran ;
Upadhyayula, Sreedevi .
JOURNAL OF CLEANER PRODUCTION, 2021, 279
[9]   Preparation of Fischer-Tropsch cobalt catalysts supported on carbon nanofibers and silica using homogeneous deposition-precipitation [J].
Bezemer, GL ;
Radstake, PB ;
Koot, V ;
van Dillen, AJ ;
Geus, JW ;
de Jong, KP .
JOURNAL OF CATALYSIS, 2006, 237 (02) :291-302
[10]  
Cavalcanti F.M., ARTIFICIAL NEURAL NE, P2021