Optimization of subcritical carbon dioxide isobaric extraction process
and fatty acid composition analysis of chive seed oil based on response
surface methodology and artificial neural network
Abstract
This article studied the process of subcritical carbon dioxide isobaric
extraction of chive seed oil. Box Behnken design was used for
experimental design and optimization, and the effects of main parameters
such as extraction pressure (11-23 MPa), temperature (50-70 ℃), and
extraction time (60-150 minutes) on the experimental results were
analyzed, the response surface method (RSM) and artificial neural
network (ANN) were applied for modeling and predicting of the extraction
yield. the performance of RSM and ANN models were analyzed and compared
by statistical parameters such as coefficient of determination (R
2), root mean square error (RMSE), mean absolute error
(MAE), and chi-square (χ 2). the RSM model is more
accurate than the ANN model. Subsequently, optimization was carried by
two different approaches viz. RSM and ANN-GA, by comparing the RSM and
ANN models and the results of RSM and ANN-GA optimization, the RSM model
is closer to perfection than the predictions of ANN. the optimal
extraction conditions obtained by the RSM model were: extraction
pressure of 15.63 MPa, separation temperature of 57.3°C, extraction time
of 121.2 min,and predicted value 15.89%, mean value of three sets of
parallel experiments 15.79%, the fatty acid composition analysis of
leek seed oil optimized by RSM showed that linoleic acid (60.871%),
oleic acid (19.185%), palmitic acid (11.517%) and stearic acid
(3.174%) were the main components, and the content of four fatty acids
was more than 94%.