Litcius/Paper detail

Artificial Neural Networks to Optimize Oil-in-Water Emulsion Stability with Orange By-Products

Mónica Umaña, Laura Llull, J. Bon, Valeria Eim, Susana Simal

2022Foods12 citationsDOIOpen Access PDF

Abstract

The use of artificial neural networks (ANNs) is proposed to optimize the formulation of stable oil-in-water emulsions (oil 6% w/w) with a flour made from orange by-products (OBF), rich in pectins (21 g/100 g fresh matter), in different concentrations (0.95, 2.38, and 3.40% w/w), combined with or without soy proteins (0.3 and 0.6% w/w). Emulsions containing OBF were stable against coalescence and flocculation (with 2.4 and 3.4% OBF) and creaming (3.4% OBF) for 24 h; the droplets’ diameter decreased up to 44% and the viscosity increased up to 37% with higher concentrations of OBF. With the protein addition, the droplets’ diameter decreased by up to 70%, and flocculation increased. Compared with emulsions produced with purified citrus pectins (0.2 and 0.5% w/w), OBF emulsions exhibited up to 32% lower viscosities, 129% larger droplets, and 45% smaller Z potential values. Optimization solved with ANNs minimizing the droplet size and the emulsion instability resulted in OBF and protein concentrations of 3.16 and 0.14%, respectively. The experimental characteristics of the optimum emulsion closely matched those predicted by ANNs demonstrating the usefulness of the proposed method.

Topics & Concepts

CreamingEmulsionFlocculationCoalescence (physics)ChemistryOil dropletChromatographyChemical engineeringViscosityMaterials scienceOrganic chemistryComposite materialPhysicsEngineeringAstrobiologyProteins in Food SystemsMicroencapsulation and Drying ProcessesFood Chemistry and Fat Analysis