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Biodiesel yield optimisation from a third-generation feedstock (microalgae spirulina) using a hybrid statistical approach

Aqueel Ahmad, Ashok Kumar Yadav, Achhaibar Singh

2023International Journal of Ambient Energy19 citationsDOI

Abstract

The current study aims to find the optimum input parameters for high-quality biodiesel synthesis utilising response surface methodology (RSM), a genetic algorithm (GA), and the cuckoo search algorithm (CSA) approach. The L30 pre-designed and executed experiments explored the significance of four process parameters: the methanol to oil molar ratio, catalyst concentration, reaction temperature, reaction time, and their combined effect on biodiesel production. The optimum conditions for biodiesel production were a molar ratio of 7.54:1 (methanol to oil), a KOH catalyst concentration of 0.5 wt. %, a reaction temperature of 65 °C for 102.57 min of reaction time, and a corresponding value of yield of 97.76%. With a correlation coefficient (R2) of 98.23 and a root-mean-squared error (RMSE) of 0.9995, it was seen that RSM gave a robust and consistent model. Microalgae methyl ester fuel characteristics were evaluated and compared to ASTM standards and found acceptable. Thus, the synthesis of high-quality, high-yield biodiesel from microalgae is a feasible alternative.

Topics & Concepts

BiodieselResponse surface methodologyBiodiesel productionMethanolYield (engineering)Raw materialPulp and paper industryCorrelation coefficientCoefficient of determinationCatalysisMaterials scienceFatty acid methyl esterEnvironmental scienceProcess engineeringChemistryMathematicsOrganic chemistryChromatographyEngineeringComposite materialStatisticsBiodiesel Production and ApplicationsAlgal biology and biofuel productionElectrohydrodynamics and Fluid Dynamics
Biodiesel yield optimisation from a third-generation feedstock (microalgae spirulina) using a hybrid statistical approach | Litcius