ABSTRACT
This study
investigated the modelling of soft sensors for the prediction of turmeric
thermal properties using data-driven methodology. The study examined the effect of drying time, drying
temperature and air velocity during turmeric drying using exhaustive search
technique; estimated the thermal properties of dried turmeric rhizome using
existing empirical relations; developed soft sensors using Artificial Neural Network (ANN), Regression
Tree (RT), Support Vector Machine (SVM), Gaussian Process Regression (GPR)
method for the prediction of the thermal properties; and statistically compared
the goodness of the models and select a model with better prediction. Proximate
composition analysis was conducted for each of the dried samples of the
turmeric to determine the nutritional composition. The soft computing methods
were deployed in estimating specific heat, thermal conductivity, and thermal
diffusivity of the dried turmeric using four input variables time, temperature,
air velocity, and relative humidity individually and collectively. Two hundred
and ninety-five (295) data set out of the three hundred data set obtained from
the experiment, were used to develop, train and test the models using five-fold
cross-validation with five (5) of the remaining data set aside and used for
independent validation of the predictive model result. The average nutritional
composition of the dried turmeric rhizomes were crude fibre (2.9%), crude
protein of 4.22, and carbohydrate of 33.56%. Other nutrients include nitrogen
4.22%, ash 1.6%, and fat 2.9%, with a moisture content of 4.4% and 40.4% dry
matter. The result of the model indicated that the square exponential of the
GPR models has the best convergence for specific heat with the combination of
all the input variables. Quadratic SVM have the best prediction for thermal
conductivity with the combination of all input variable. Matern S/2 with all
inputs is the model with the best estimation of specific heat, having an MSE of
0.000164 and R2 of 1. Quadratic SVM with all inputs best estimate
the thermal conductivity with R2 of 0.98 and MSE of 0.0000864. Fine
Gaussian SVM is the model with the best estimate for ther9mal diffusivity
having using the input variables of Time, Air velocity and temperature having
MSE and R2 values of 0.00037461 and 0.09, respectively. The study
concluded that ANN has the best prediction for thermal properties for a single
input, whereas, for all input variants, the models differ in their estimation
capabilities.
-- (2023). Soft Sensor Model For Prediction Of Dried Turmeric Thermal Properties Using Tray Dryer. Repository.mouau.edu.ng: Retrieved Nov 21, 2024, from https://repository.mouau.edu.ng/work/view/soft-sensor-model-for-prediction-of-dried-turmeric-thermal-properties-using-tray-dryer-7-2
--. "Soft Sensor Model For Prediction Of Dried Turmeric Thermal Properties Using Tray Dryer" Repository.mouau.edu.ng. Repository.mouau.edu.ng, 20 Jun. 2023, https://repository.mouau.edu.ng/work/view/soft-sensor-model-for-prediction-of-dried-turmeric-thermal-properties-using-tray-dryer-7-2. Accessed 21 Nov. 2024.
--. "Soft Sensor Model For Prediction Of Dried Turmeric Thermal Properties Using Tray Dryer". Repository.mouau.edu.ng, Repository.mouau.edu.ng, 20 Jun. 2023. Web. 21 Nov. 2024. < https://repository.mouau.edu.ng/work/view/soft-sensor-model-for-prediction-of-dried-turmeric-thermal-properties-using-tray-dryer-7-2 >.
--. "Soft Sensor Model For Prediction Of Dried Turmeric Thermal Properties Using Tray Dryer" Repository.mouau.edu.ng (2023). Accessed 21 Nov. 2024. https://repository.mouau.edu.ng/work/view/soft-sensor-model-for-prediction-of-dried-turmeric-thermal-properties-using-tray-dryer-7-2