Artificial neural networks in the prediction of fraud in integral milk powder by adding whey powder

ABSTRACT: This research was performed to ascertain the most suitable Artificial Neural Network (ANN) model to quantify the degree of fraud in powdered milk through the addition of powdered whey via regular standard physicochemical analyses. In this study, an evaluation was done on 103 samples with different quantities of added whey powder to whole milk powder. Using Fourier Transform Infrared Spectroscopy the fat, cryoscopy, total solids, defatted dry extract, lactose, protein and casein were analyzed. The hyperbolic tangent transformation function was used with 45 topologies, and the Holdback and K-fold validation methods were tested. In the Holdback method, 75% of the database was employed for training, while 25% was used for validation. In the K-fold method, the database was categorized into five equal sized subsets, which alternated between training and validation. Of the two methods, the K-fold method was proven to have superior efficiency. Next, analysis was done on three models of multilayer perceptron networks with feedforward architecture. In Model 1, the input layer contained all the physicochemical analyses conducted, in model 2 the casein analysis was excluded, and in model 3 the routine analyses performed for dairy products was done (fat, defatted dry extract, cryoscopy and total solids). From Model 3 an ANN was derived which could satisfactorily predict fraud calculated from using the routine and standard analyses for dairy products, containing 64 nodes in the hidden layer, with R2 of 0.9935 and RMSE of 0.5779 for training, and R2 of 0.9964 and RMSE of 0.4358 for validation.

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Main Authors: Alves,Raissa Oliveira Rocha, Tomé,Otávio Chedid, Pereira,Pollyanna Cardoso, Villanoeva,Camila Nair Batista Couto, Silva,Vanelle Maria da
Format: Digital revista
Language:English
Published: Universidade Federal de Santa Maria 2022
Online Access:http://old.scielo.br/scielo.php?script=sci_arttext&pid=S0103-84782022000400754
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spelling oai:scielo:S0103-847820220004007542021-10-08Artificial neural networks in the prediction of fraud in integral milk powder by adding whey powderAlves,Raissa Oliveira RochaTomé,Otávio ChedidPereira,Pollyanna CardosoVillanoeva,Camila Nair Batista CoutoSilva,Vanelle Maria da routine analysis fraud detection quality control ABSTRACT: This research was performed to ascertain the most suitable Artificial Neural Network (ANN) model to quantify the degree of fraud in powdered milk through the addition of powdered whey via regular standard physicochemical analyses. In this study, an evaluation was done on 103 samples with different quantities of added whey powder to whole milk powder. Using Fourier Transform Infrared Spectroscopy the fat, cryoscopy, total solids, defatted dry extract, lactose, protein and casein were analyzed. The hyperbolic tangent transformation function was used with 45 topologies, and the Holdback and K-fold validation methods were tested. In the Holdback method, 75% of the database was employed for training, while 25% was used for validation. In the K-fold method, the database was categorized into five equal sized subsets, which alternated between training and validation. Of the two methods, the K-fold method was proven to have superior efficiency. Next, analysis was done on three models of multilayer perceptron networks with feedforward architecture. In Model 1, the input layer contained all the physicochemical analyses conducted, in model 2 the casein analysis was excluded, and in model 3 the routine analyses performed for dairy products was done (fat, defatted dry extract, cryoscopy and total solids). From Model 3 an ANN was derived which could satisfactorily predict fraud calculated from using the routine and standard analyses for dairy products, containing 64 nodes in the hidden layer, with R2 of 0.9935 and RMSE of 0.5779 for training, and R2 of 0.9964 and RMSE of 0.4358 for validation.info:eu-repo/semantics/openAccessUniversidade Federal de Santa MariaCiência Rural v.52 n.4 20222022-01-01info:eu-repo/semantics/articletext/htmlhttp://old.scielo.br/scielo.php?script=sci_arttext&pid=S0103-84782022000400754en10.1590/0103-8478cr20210109
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countrycode BR
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libraryname SciELO
language English
format Digital
author Alves,Raissa Oliveira Rocha
Tomé,Otávio Chedid
Pereira,Pollyanna Cardoso
Villanoeva,Camila Nair Batista Couto
Silva,Vanelle Maria da
spellingShingle Alves,Raissa Oliveira Rocha
Tomé,Otávio Chedid
Pereira,Pollyanna Cardoso
Villanoeva,Camila Nair Batista Couto
Silva,Vanelle Maria da
Artificial neural networks in the prediction of fraud in integral milk powder by adding whey powder
author_facet Alves,Raissa Oliveira Rocha
Tomé,Otávio Chedid
Pereira,Pollyanna Cardoso
Villanoeva,Camila Nair Batista Couto
Silva,Vanelle Maria da
author_sort Alves,Raissa Oliveira Rocha
title Artificial neural networks in the prediction of fraud in integral milk powder by adding whey powder
title_short Artificial neural networks in the prediction of fraud in integral milk powder by adding whey powder
title_full Artificial neural networks in the prediction of fraud in integral milk powder by adding whey powder
title_fullStr Artificial neural networks in the prediction of fraud in integral milk powder by adding whey powder
title_full_unstemmed Artificial neural networks in the prediction of fraud in integral milk powder by adding whey powder
title_sort artificial neural networks in the prediction of fraud in integral milk powder by adding whey powder
description ABSTRACT: This research was performed to ascertain the most suitable Artificial Neural Network (ANN) model to quantify the degree of fraud in powdered milk through the addition of powdered whey via regular standard physicochemical analyses. In this study, an evaluation was done on 103 samples with different quantities of added whey powder to whole milk powder. Using Fourier Transform Infrared Spectroscopy the fat, cryoscopy, total solids, defatted dry extract, lactose, protein and casein were analyzed. The hyperbolic tangent transformation function was used with 45 topologies, and the Holdback and K-fold validation methods were tested. In the Holdback method, 75% of the database was employed for training, while 25% was used for validation. In the K-fold method, the database was categorized into five equal sized subsets, which alternated between training and validation. Of the two methods, the K-fold method was proven to have superior efficiency. Next, analysis was done on three models of multilayer perceptron networks with feedforward architecture. In Model 1, the input layer contained all the physicochemical analyses conducted, in model 2 the casein analysis was excluded, and in model 3 the routine analyses performed for dairy products was done (fat, defatted dry extract, cryoscopy and total solids). From Model 3 an ANN was derived which could satisfactorily predict fraud calculated from using the routine and standard analyses for dairy products, containing 64 nodes in the hidden layer, with R2 of 0.9935 and RMSE of 0.5779 for training, and R2 of 0.9964 and RMSE of 0.4358 for validation.
publisher Universidade Federal de Santa Maria
publishDate 2022
url http://old.scielo.br/scielo.php?script=sci_arttext&pid=S0103-84782022000400754
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