|
کلیدواژهها
|
Artificial neural network, Cold plasma, Cumin seeds, Drying, Ultrasound
|
|
چکیده
|
In this study, the air drying of cumin seeds was boosted by cold plasma pre-treatment (CPt) followed by
high-power ultrasound waves (USp). To examine the impact of included effects, different CP exposure times (0,
15, and 30 s), sonication powers (0, 60, 120, and 180 W), and drying air temperatures (30, 35, and 40 ºC) were
selected as input variables. A series of well-designed experiments were conducted to evaluate drying time,
effective moisture diffusivity, and energy consumption, as well as color change and rupture force of dried seeds
for each drying program. Numerical investigations can effectively bypass the challenges associated with
experimental analysis. Therefore, the wavelet-based neural network (WNN), the multilayer perceptron neural
network (MLPNN), and the radial-basis function neural network (RBFNN), as three well-known artificial neural
networks models, were used to map the inputs and output data and the results were compared with the Multiple
Quadratic Regression (MQR) analysis. According to the results, the WNN model with an average correlation
coefficient of R2 > 0.92 for the train data set, and R2 > 0.83 for the test data set provided the most beneficial tool
for evaluating the drying process of cumin seeds.
|