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Comparison of ANN and ANFIS modeling for predicting drying kinetics of <i>Stevia rebaudiana</i> leaves in a hot-air dryer and characterization of dried powder

Baldev Singh Kalsi, Sandhya Singh, Mohammed Shafiq Alam, Gagandeep Kaur Sidhu

2023International Journal of Food Properties21 citationsDOIOpen Access PDF

Abstract

In this investigation, the drying of Stevia rebaudiana leaves was carried out in a lab scale convective hot-air dryer at a varying temperature of 30-80C to analyze the drying behavior, fit mathematical, Artificial Neural Networks (ANNs), and Adaptive Neuro-Fuzzy System (ANFIS) models to predict the drying kinetics of leaves.Further, dried leaf powders were analyzed for color properties, ascorbic acid and total phenol contents, antioxidant activity, water activity (a w ), water solubility index (WSI), hygroscopicity (HG), density (bulk, tapped, and particle), bulk porosity, and flowability indices (Hausner ratio (HR), Carr index (CI), and angle of repose ()).The results showed that ANFIS model with R 2 of 0.9998, offers a more accurate forecast of the drying kinetics of leaves dried in a convective hot-air dryer in comparison to mathematical and ANN modeling.The convective drying significantly (p < .05)effected the L*, a*, b*, hue angle and chroma values of dried leaves.Increase in the drying temperature from 30 to 80C resulted in a decrement of 50.90% in a w, 10.10% in tapped density, while enhancement of 23.26% in WSI, 32.93% in HG, 54% in particle density, and 10.59% in bulk porosity of dried leaf powder.Notably, ascorbic acid and antioxidant activity decreased with rising temperatures, while total phenols enhanced up to 50C.The bulk density of dried samples remained largely unchanged with increasing temperature, while the flowability of the Stevia powder improved.Thus, these findings provide valuable insights for producers regarding the drying characteristics and properties of Stevia leaf powder.

Topics & Concepts

Angle of reposeStevia rebaudianaWater activityBulk densityParticle densityChemistryMaltodextrinAir dryerAscorbic acidRelative humidityPorositySpray dryingAdaptive neuro fuzzy inference systemMaterials scienceChromatographyWater contentFood scienceComposite materialThermodynamicsOrganic chemistrySoil scienceEnvironmental scienceVolume (thermodynamics)EngineeringFuzzy control systemPhysicsSoil waterFuzzy logicPhilosophyGeotechnical engineeringLinguisticsFood Drying and ModelingMicroencapsulation and Drying ProcessesFreezing and Crystallization Processes
Comparison of ANN and ANFIS modeling for predicting drying kinetics of <i>Stevia rebaudiana</i> leaves in a hot-air dryer and characterization of dried powder | Litcius