Sustainable Energy Technologies and Assessments, Volume 52 , 01/08/2022

Performance evaluation of artificial neural networks in sustainable modelling biodiesel synthesis

Mark Treve, Indrajit Patra, P. Prabu, S. Rama Sree, N. Keerthi Kumar, Yousef Methkal Abd Algani, B. Kiran Bala, S. Balaji

Abstract

Biodiesel is a characteristic and inexhaustible homegrown fuel removed from creature fats or vegetable oil and liquor through a transesterification response. The exploration work means to assess the exhibition of biodiesel blend. In this paper, biodiesel was displayed and improved by utilizing a hereditary calculation and Artificial Neural Network (ANN). In AI, hereditary calculations and counterfeit neural organizations assume a significant part in displaying biodiesel blend. To upgrade an excellent arrangement hereditary calculation was created. The mix of ANN and Genetic Algorithm gives the ideal condition as the temperature of methanol molar proportion, impetus fixation. It tentatively decides the exhibition trademark like the Coefficient of determination and Absolute Average deviation (AAD). It predicts the Fatty Acid Methyl Ester (FAME) model productively than Response Surface Methodology (RSM). The exhibition examination is reenacted and hypothetical outcomes are recorded then it is contrasted with constant information to decide the exactness of ANN.

Document Type

Article

Source Type

Journal

Keywords

Absolute average deviation (AAD)BiodieselCatalyst concentrationFatty acid methyl ester (FAME)Genetic algorithmMachine learning (ML)Response surface methodology (RSM)Transesterification

ASJC Subject Area

Energy : Energy Engineering and Power TechnologyEnergy : Renewable Energy, Sustainability and the Environment


Bibliography


Treve, M., Patra, I., Prabu, P., Rama Sree, S., Keerthi Kumar, N., Abd Algani, Y., Kiran Bala, B., ... Balaji, S. (2022). Performance evaluation of artificial neural networks in sustainable modelling biodiesel synthesis. Sustainable Energy Technologies and Assessments, 52doi:10.1016/j.seta.2022.102098

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