Artificial neural networks (ANN)-genetic algorithm (GA) optimization on thermosonicated achocha juice: kinetic and thermodynamic perspectives of retained phytocompounds.
Journal:
Preparative biochemistry & biotechnology
PMID:
38995873
Abstract
The extraction of phytocompounds from Achocha () vegetable juice using traditional methods often results in suboptimal yields and efficiency. This study aimed to enhance the extraction process through the application of thermosonication (TS). To achieve this, an artificial neural network (ANN) and a genetic algorithm (GA) were utilized to simulate and optimize the process parameters. The study investigated the influence of ultrasonic amplitude (30%-50%), temperature (30 °C-50 °C), and sonication duration (15-60 min) on total polyphenolic content (TPC), total flavonoid content (TFC), antioxidant activity (AOA), and ascorbic acid content (AA). Remarkably, the ANN-GA optimization resulted in optimal TS conditions: an ultrasonic amplitude of 40%, a temperature of 40 °C, and a sonication duration of 30 min. Subsequent analysis of extraction kinetics and thermodynamics across various temperatures (30 °C-50 °C) and extraction times (0-30 min) demonstrated (0.98821) and χ (1.74773) for TPC with activation energy (E) 26.0456, (0.99906) and χ (0.07215) for TFC with E 26.2336, (0.99867) and χ (0.03003) for AOA with E 26.0987, (0.99731) and χ (0.13719) for AA with E 26.0984, validating the pseudo second-order kinetic model. These findings indicate that increased temperature enhances the saturation concentration and rate constant of phytochemical extraction.