TY - JOUR
T1 - Use of artificial neural network model for rice quality prediction based on grain physical parameters
AU - Sampaio, Pedro Sousa
AU - Almeida, Ana Sofia
AU - Brites, Carla Moita
N1 - Funding Information:
4.ConclusionsIn this study, the MLR and ANN modeling methods were applied for monitoring rice quality using the experimental data registered along with the study. The Figures 3 ical and pasting parameters based on grain physical data are characterized by significant and 4 show the experimentaland predicted valuesrelated to the biochemical and pasting regression coefficients. These achievements can be considered as an added value for ANN models. The ANN models were most efficient, and the regression line between the rice quality improvement in breeding purposes and processing, being suitable for qualitative and quantitative measurement of different physicochemical features of rice. In both the calibration and the validation sets. High R2and low RMSE values showed that mthoed eAl fNoNr s emveoradleplsa rapmreesteenrstb apsreodmoinsinagla rpgeontuenmtibaelr otof riicmepvraorvieet iethsefr omesdtiimffearteionnt cooufn d- iffer ent biochemical and pasting parameters, being especially abletocope withnonlinearityin the dataset. Furthermore, although ANN models are unable to identify sensible bands due to the natureofthemethod,theyresultedingenerally higherR2values and lower RMSE values thanlinearregressionmodels.Thisimplies thattherelationshipbetween Author Contributions: Conceptualization, P.S.S. and C.M.B.; Methodology, P.S.S., A.S.A. and C.M.B.; biochemical and pasting parameters and biometrics propertiesmay indeed be nonlinear. WBraistiendg —oonr igthinealsed ramftopdreeplas,r atthioisn ,sPt.uS.dS.y; Wrsihtinogw—edre vitehwatantdhee dAitiNngN, P .Sa.Slg.,oAr.iSt.hAm. anwd aCs.Ma.nB.; efficient method for biochemical and pasting prediction based on milling yields and grain Allappauthorsearance paramhave read andeters. agreed to the published version of the manuscript. Funding: Funding for this research has been received from TRACE-RICE—Tracing rice and valorizing side4. Constreamsclusalongions with Mediterranean blockchain, grant no. 1934 (call 2019, Section 1 Agrofood) of the PRIMA Program supported under Horizon 2020, the European Union’s Framework Program The ANN algorithms tested in the development of prediction models for rice Sbuisotcahineambiliitcya).l Pa.Nnd. S pamapsatiiongac kpnaorwalmedegteesrtshebfainsaendc ioalnsugprpaoirnt opf thhyespicosatld odcatotraa larrees ecahrchargarcantetrized by significant regressioncoefficients. These achievements can beconsideredas an added value for rice quality improvement in breeding purposes and processing, being suitable Mfoerd iqteurraalnietaantivbleo caknchda inq.uantitative measurement of different physicochemical features of rice. In the future, based on these promissory results, we intendtodevelop a robust prediction model for several parametersbased on a large numberof rice varieties from different countries and, consequently, to implement an automatic evaluation system for different pasting and biochemical parameters, reducing costs associated with several time-consuming experimental procedures.
Funding Information:
for this research has been received from TRACE-RICE?Tracing rice and valorizing side streams along with Mediterranean blockchain, grant no. 1934 (call 2019, Section 1 Agrofood) of the PRIMA Program supported under Horizon 2020, the European Union?s Framework Program for Research and Innovation, and Research Unit, UIDB/04551/2020 (GREEN-IT, Bioresources for Sustainability). P.N. Sampaio acknowledges the financial support of the postdoctoral research grant included in this project RECI/AGR-TEC/0285/2012, BEST-RICE-4-LIFE project.
Publisher Copyright:
© 2021 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https:// creativecommons.org/licenses/by/ 4.0/).
PY - 2021/12
Y1 - 2021/12
N2 - The main goal of this study was to test the ability of an artificial neural network (ANN) for rice quality prediction based on grain physical parameters and to conduct a comparison with multiple linear regression (MLR) using 66 samples in duplicate. The parameters used for rice quality prediction are related to biochemical composition (starch, amylose, ash, fat, and protein concentration) and pasting parameters (peak viscosity, trough, breakdown, final viscosity, and setback). These parameters were estimated based on grain appearance (length, width, length/width ratio, total whiteness, vitreous whiteness, and chalkiness), and milling yield (husked, milled, head) data. The MLR models were characterized by very low coefficient determination (R2 = 0.27–0.96) and a root-mean-square error (RMSE) (0.08–0.56). Meanwhile, the ANN models presented a range for R2 = 0.97–0.99, being characterized for R2 = 0.98 (training), R2 = 0.88 (validation), and R2 = 0.90 (testing). According to these results, the ANN algorithms could be used to obtain robust models to predict both biochemical and pasting profiles parameters in a fast and accurate form, which makes them suitable for application to simultaneous qualitative and quantitative analysis of rice quality. Moreover, the ANN prediction method represents a promising approach to estimate several targeted biochemical and viscosity parameters with a fast and clean approach that is interesting to industry and consumers, leading to better assessment of rice classification for authenticity purposes.
AB - The main goal of this study was to test the ability of an artificial neural network (ANN) for rice quality prediction based on grain physical parameters and to conduct a comparison with multiple linear regression (MLR) using 66 samples in duplicate. The parameters used for rice quality prediction are related to biochemical composition (starch, amylose, ash, fat, and protein concentration) and pasting parameters (peak viscosity, trough, breakdown, final viscosity, and setback). These parameters were estimated based on grain appearance (length, width, length/width ratio, total whiteness, vitreous whiteness, and chalkiness), and milling yield (husked, milled, head) data. The MLR models were characterized by very low coefficient determination (R2 = 0.27–0.96) and a root-mean-square error (RMSE) (0.08–0.56). Meanwhile, the ANN models presented a range for R2 = 0.97–0.99, being characterized for R2 = 0.98 (training), R2 = 0.88 (validation), and R2 = 0.90 (testing). According to these results, the ANN algorithms could be used to obtain robust models to predict both biochemical and pasting profiles parameters in a fast and accurate form, which makes them suitable for application to simultaneous qualitative and quantitative analysis of rice quality. Moreover, the ANN prediction method represents a promising approach to estimate several targeted biochemical and viscosity parameters with a fast and clean approach that is interesting to industry and consumers, leading to better assessment of rice classification for authenticity purposes.
KW - Artificial neural network
KW - Multi-layer perceptron
KW - Multiple linear regression
KW - Pasting
KW - Rice
UR - http://www.scopus.com/inward/record.url?scp=85121369182&partnerID=8YFLogxK
U2 - 10.3390/foods10123016
DO - 10.3390/foods10123016
M3 - Article
AN - SCOPUS:85121369182
SN - 2304-8158
VL - 10
JO - Foods
JF - Foods
IS - 12
M1 - 3016
ER -