首页|Artificial neural networks modeling ethanol oxidation reaction kinetics catalysed by platinum-ruthenium nanohybrid electrocatalyst

Artificial neural networks modeling ethanol oxidation reaction kinetics catalysed by platinum-ruthenium nanohybrid electrocatalyst

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The electrochemical and physicochemical properties of the anode catalyst used in alcohol fuel cells affect the efficiency of the fuel cell due to both its effect on the cell potential and its direct relationship with the reaction stoichiometry. It is possible to determine these parameters from polarization curves (current vs. cell potential) of the cells. At low potentials, Tafel plots offer kinetic information, whereas currents at high potentials reveal the average number of electrons released per ethanol molecule and their potential dependency. Herein, bearing the chemical engineering research and design aspects, it was aimed to model the kinetics of ethanol electrooxidation reaction catalyzed by PANI-MnFe2O4/Pt/Ru nanocomposite by an artificial neural network (ANN) approach, specifically by Differential Evolution (DE) algorithm for the first time. The different parts of the Tafel plots were condensed into a single and efficient model to illustrate the generalization potential of ANN. The findings demonstrated that the best model with a single hidden layer with 18 neurons offered the highest correlation metrics of 0.997476, and the lowest mean-square-error value of 0.000428 at the testing phase. Furthermore, the average absolute error was calculated, with 0.773% in the training phase and 0.66% in the testing phase. These outstanding results indicated that the best model is capable of accurately capturing the dynamics of all instances analyzed.

Ethanol oxidation reactionTafel plotsArtificial neural networkDifferential evolution algorithm

Abbasali Abouei Mehrizi、Hamed Jafarzadeh、Mohammad Soleimani Lashkenari

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Department of Physics, University of Electronic Science and Technology of China, 611731 Chengdu, PR China

Department of Physics, Quchan University of Technology, Quchan, Iran

Fuel Cell Electrochemistry and Advanced Material Research Laboratory, Faculty of Engineering Modern Technologies, Amol University of Special Modern Technologies, Amol 4616849767, Iran

2022

Chemical Engineering Research & Design

Chemical Engineering Research & Design

SCI
ISSN:0263-8762
年,卷(期):2022.184
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