RSM/ANN based modeling of methyl esters yield from Anacardium occidentale kernel oil by transesterification, for possible application as transformer fluid
This study is on the modeling of methyl esters production process; obtained by the transesterification of Anacardium occidentale kernel (AOK) oil (AOKO), using artificial neural network (ANN) and response surface methodology (RSM). AOKO was obtained from the kernels/seeds of Anacardium occidentale t...
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Veröffentlicht in: | Current research in green and sustainable chemistry 2022, Vol.5, p.100255, Article 100255 |
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Sprache: | eng |
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Zusammenfassung: | This study is on the modeling of methyl esters production process; obtained by the transesterification of Anacardium occidentale kernel (AOK) oil (AOKO), using artificial neural network (ANN) and response surface methodology (RSM). AOKO was obtained from the kernels/seeds of Anacardium occidentale tree. The oils were extracted from the kernels using solvent extraction method. The physicochemical properties of AOKO and Anacardium occidentale kernel oil methyl esters (MAOKOt) were determined using standard methods. Fatty acids composition was determined using gas chromatography (GC). At modeling conditions of temperature (65 °C), mole ratio (7:1), catalyst concentration (2.5 wt %), stirring speed (600 rpm) and time (150 min), the RSM predicted and validated methyl ester yields were 94.82%, and 94.70%, respectively; while ANN predicted and validated yields were 93.21% and 93.33%, respectively. The physicochemical characterization results of AOKO and MAOKOt samples, show that their respective viscosity, dielectric strength (DS), pour and flash points were (20.01 and 10.97 mm2s-1), (25.34 and 38.60 kV), (11 and 5 °C), and (270 and 288 °C). These results indicated the MAOKOt sample’s potential use as transformer fluid. The GC result indicated that MAOKOt was unsaturated. Finally, on the basis of the gotten model results, ANN was adjudged as a better predictive model, when compared to RSM.
•RSM and ANN were used to model methyl ester yield from Azadirachta Indica seed oil (AISO).•At optimum modeling parameters, RSM and ANN predicted yields were 91.71% and 90.73%, respectively.•Physicochemical properties of methyl ester indicated its feasibility as transformer oil.•Fatty acids compositions of the methyl ester indicated it was unsaturated.•Model results indicate that ANN was a better predictive model. |
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ISSN: | 2666-0865 2666-0865 |
DOI: | 10.1016/j.crgsc.2021.100255 |