The Prediction of Somatic Cell Count Through Multilayer Perceptron of Deep Machine Learning

The main objective of the research is to generate an alternative approach to classical techniques in the prediction of the somatic cell count (SCC), which is the gold standard indicator of subclinical mastitis. This approach involves using the physical properties of milk such as density, the temper...

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Main Authors: M. İ. Yeşil, S. Göncü
Format: Article
Language:English
Published: IPB University 2024-12-01
Series:Tropical Animal Science Journal
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Online Access:https://journal.ipb.ac.id/index.php/tasj/article/view/54955
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author M. İ. Yeşil
S. Göncü
author_facet M. İ. Yeşil
S. Göncü
author_sort M. İ. Yeşil
collection DOAJ
description The main objective of the research is to generate an alternative approach to classical techniques in the prediction of the somatic cell count (SCC), which is the gold standard indicator of subclinical mastitis. This approach involves using the physical properties of milk such as density, the temperature at fore milking (TFM), pH, and electrical conductivity (EC) with a feed-forward backpropagation multilayer perceptron (MLP) artificial neural networks (ANN) model, which is one of the widely used machine learning techniques. The performance of the model was assessed by test with cross-validation on data that was not introduced to the model before and compared to the classical linear model (multiple linear regression) as the control model. The findings showed that the model has satisfactory results in terms of loss and performance criteria (R2=0.95, RMSE=0.01; AIC=-338). The test model (ANN) had a higher performance (AIC=-338) than the control model (AIC=-240) created with the classical linear model despite using more parameters (81). Using big data from automated milking information—like estrus cycle, lactation stage, and milk yield—on supercomputers can improve the accuracy of performance assessments in dairy farming.
format Article
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institution Kabale University
issn 2615-787X
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language English
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publisher IPB University
record_format Article
series Tropical Animal Science Journal
spelling doaj-art-fbd1f02bace74ec4ba4bc4cbb73273f82024-12-11T06:29:22ZengIPB UniversityTropical Animal Science Journal2615-787X2615-790X2024-12-0147410.5398/tasj.2024.47.4.503The Prediction of Somatic Cell Count Through Multilayer Perceptron of Deep Machine LearningM. İ. Yeşil0S. Göncü1Çukurova University, Agricultural Faculty, Department of Animal ScienceÇukurova University, Agricultural Faculty, Department of Animal Science The main objective of the research is to generate an alternative approach to classical techniques in the prediction of the somatic cell count (SCC), which is the gold standard indicator of subclinical mastitis. This approach involves using the physical properties of milk such as density, the temperature at fore milking (TFM), pH, and electrical conductivity (EC) with a feed-forward backpropagation multilayer perceptron (MLP) artificial neural networks (ANN) model, which is one of the widely used machine learning techniques. The performance of the model was assessed by test with cross-validation on data that was not introduced to the model before and compared to the classical linear model (multiple linear regression) as the control model. The findings showed that the model has satisfactory results in terms of loss and performance criteria (R2=0.95, RMSE=0.01; AIC=-338). The test model (ANN) had a higher performance (AIC=-338) than the control model (AIC=-240) created with the classical linear model despite using more parameters (81). Using big data from automated milking information—like estrus cycle, lactation stage, and milk yield—on supercomputers can improve the accuracy of performance assessments in dairy farming. https://journal.ipb.ac.id/index.php/tasj/article/view/54955artificial neural networks (ANN)deep learningmastitismilksomatic cell count (SCC)
spellingShingle M. İ. Yeşil
S. Göncü
The Prediction of Somatic Cell Count Through Multilayer Perceptron of Deep Machine Learning
Tropical Animal Science Journal
artificial neural networks (ANN)
deep learning
mastitis
milk
somatic cell count (SCC)
title The Prediction of Somatic Cell Count Through Multilayer Perceptron of Deep Machine Learning
title_full The Prediction of Somatic Cell Count Through Multilayer Perceptron of Deep Machine Learning
title_fullStr The Prediction of Somatic Cell Count Through Multilayer Perceptron of Deep Machine Learning
title_full_unstemmed The Prediction of Somatic Cell Count Through Multilayer Perceptron of Deep Machine Learning
title_short The Prediction of Somatic Cell Count Through Multilayer Perceptron of Deep Machine Learning
title_sort prediction of somatic cell count through multilayer perceptron of deep machine learning
topic artificial neural networks (ANN)
deep learning
mastitis
milk
somatic cell count (SCC)
url https://journal.ipb.ac.id/index.php/tasj/article/view/54955
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