TY - JOUR
T1 - Chocolate quality assessment based on chemical fingerprinting using near infra-red and machine learning modeling
AU - Gunaratne, Thejani M.
AU - Viejo, Claudia Gonzalez
AU - Gunaratne, Nadeesha M.
AU - Torrico, Damir D.
AU - Dunshea, Frank R.
AU - Fuentes, Sigfredo
N1 - Publisher Copyright:
© 2019 by the authors.
PY - 2019
Y1 - 2019
N2 - Chocolates are the most common confectionery and most popular dessert and snack across the globe. The quality of chocolate plays a major role in sensory evaluation. In this study, a rapid and non-destructive method was developed to predict the quality of chocolate based on physicochemical data, and sensory properties, using the five basic tastes. Data for physicochemical analysis (pH, Brix, viscosity, and color), and sensory properties (basic taste intensities) of chocolate were recorded. These data and results obtained from near-infrared spectroscopy were used to develop two machine learning models to predict the physicochemical parameters (Model 1) and sensory descriptors (Model 2) of chocolate. The results show that the models developed had high accuracy, with R = 0.99 for Model 1 and R = 0.93 for Model 2. The thus-developed models can be used as an alternative to consumer panels to determine the sensory properties of chocolate more accurately with lower cost using the chemical parameters.
AB - Chocolates are the most common confectionery and most popular dessert and snack across the globe. The quality of chocolate plays a major role in sensory evaluation. In this study, a rapid and non-destructive method was developed to predict the quality of chocolate based on physicochemical data, and sensory properties, using the five basic tastes. Data for physicochemical analysis (pH, Brix, viscosity, and color), and sensory properties (basic taste intensities) of chocolate were recorded. These data and results obtained from near-infrared spectroscopy were used to develop two machine learning models to predict the physicochemical parameters (Model 1) and sensory descriptors (Model 2) of chocolate. The results show that the models developed had high accuracy, with R = 0.99 for Model 1 and R = 0.93 for Model 2. The thus-developed models can be used as an alternative to consumer panels to determine the sensory properties of chocolate more accurately with lower cost using the chemical parameters.
KW - Artificial neural networks
KW - Near infra-red spectroscopy
KW - Physicochemical measurements
KW - Sensory
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U2 - 10.3390/foods8100426
DO - 10.3390/foods8100426
M3 - Article
AN - SCOPUS:85074091683
SN - 2304-8158
VL - 8
JO - Foods
JF - Foods
IS - 10
M1 - 426
ER -