Trophic state assessment using hybrid classification tree-artificial neural network

The trophic state is one of the significant environmental impacts that must be monitored and controlled in any aquatic environment. This phenomenon due to nutrient imbalance in water strengthened with global warming, inhibits the natural system to progress. With eutrophication, the mass of algae in...

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Main Authors: Concepcion, Ronnie Sabino, Loresco, Pocholo James M., Bedruz, Rhen Anjerome Rañola, Dadios, Elmer Jose P., Lauguico, Sandy C., Sybingco, Edwin
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Published: Animo Repository 2020
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Online Access:https://animorepository.dlsu.edu.ph/faculty_research/1832
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spelling oai:animorepository.dlsu.edu.ph:faculty_research-28312023-01-16T06:23:39Z Trophic state assessment using hybrid classification tree-artificial neural network Concepcion, Ronnie Sabino Loresco, Pocholo James M. Bedruz, Rhen Anjerome Rañola Dadios, Elmer Jose P. Lauguico, Sandy C. Sybingco, Edwin The trophic state is one of the significant environmental impacts that must be monitored and controlled in any aquatic environment. This phenomenon due to nutrient imbalance in water strengthened with global warming, inhibits the natural system to progress. With eutrophication, the mass of algae in the water surface increases and results to lower dissolved oxygen in the water that is essential for fishes. Numerous limnological and physical features affect the trophic state and thus require extensive analysis to asses it. This paper proposed a model of hybrid classification tree-artificial neural network (CT-ANN) to assess the trophic state based on the selected significant features. The classification tree was used as a multidimensional reduction technique for feature selection, which eliminates eight original features. The remaining predictors having high impacts are chlorophyll-a, phosphorus and Secchi depth. The two-layer ANN with 20 artificial neurons was constructed to assess the trophic state of input features. The neural network was modeled based on the key parameters of learning time, cross-entropy, and regression coefficient. The ANN model used to assess trophic state based on 11 predictors resulted in 81.3% accuracy. The modeled hybrid classification tree-ANN based on 3 predictors resulted to 88.8% accuracy with a cross-entropy performance of 0.096495. Based on the obtained result, the modeled hybrid classification tree-ANN provides higher accuracy in assessing the trophic state of the aquaponic system. © 2020, Universitas Ahmad Dahlan. All rights reserved. 2020-03-01T08:00:00Z text text/html https://animorepository.dlsu.edu.ph/faculty_research/1832 https://animorepository.dlsu.edu.ph/context/faculty_research/article/2831/type/native/viewcontent Faculty Research Work Animo Repository Aquaponics Neural networks (Computer science) Manufacturing
institution De La Salle University
building De La Salle University Library
continent Asia
country Philippines
Philippines
content_provider De La Salle University Library
collection DLSU Institutional Repository
topic Aquaponics
Neural networks (Computer science)
Manufacturing
spellingShingle Aquaponics
Neural networks (Computer science)
Manufacturing
Concepcion, Ronnie Sabino
Loresco, Pocholo James M.
Bedruz, Rhen Anjerome Rañola
Dadios, Elmer Jose P.
Lauguico, Sandy C.
Sybingco, Edwin
Trophic state assessment using hybrid classification tree-artificial neural network
description The trophic state is one of the significant environmental impacts that must be monitored and controlled in any aquatic environment. This phenomenon due to nutrient imbalance in water strengthened with global warming, inhibits the natural system to progress. With eutrophication, the mass of algae in the water surface increases and results to lower dissolved oxygen in the water that is essential for fishes. Numerous limnological and physical features affect the trophic state and thus require extensive analysis to asses it. This paper proposed a model of hybrid classification tree-artificial neural network (CT-ANN) to assess the trophic state based on the selected significant features. The classification tree was used as a multidimensional reduction technique for feature selection, which eliminates eight original features. The remaining predictors having high impacts are chlorophyll-a, phosphorus and Secchi depth. The two-layer ANN with 20 artificial neurons was constructed to assess the trophic state of input features. The neural network was modeled based on the key parameters of learning time, cross-entropy, and regression coefficient. The ANN model used to assess trophic state based on 11 predictors resulted in 81.3% accuracy. The modeled hybrid classification tree-ANN based on 3 predictors resulted to 88.8% accuracy with a cross-entropy performance of 0.096495. Based on the obtained result, the modeled hybrid classification tree-ANN provides higher accuracy in assessing the trophic state of the aquaponic system. © 2020, Universitas Ahmad Dahlan. All rights reserved.
format text
author Concepcion, Ronnie Sabino
Loresco, Pocholo James M.
Bedruz, Rhen Anjerome Rañola
Dadios, Elmer Jose P.
Lauguico, Sandy C.
Sybingco, Edwin
author_facet Concepcion, Ronnie Sabino
Loresco, Pocholo James M.
Bedruz, Rhen Anjerome Rañola
Dadios, Elmer Jose P.
Lauguico, Sandy C.
Sybingco, Edwin
author_sort Concepcion, Ronnie Sabino
title Trophic state assessment using hybrid classification tree-artificial neural network
title_short Trophic state assessment using hybrid classification tree-artificial neural network
title_full Trophic state assessment using hybrid classification tree-artificial neural network
title_fullStr Trophic state assessment using hybrid classification tree-artificial neural network
title_full_unstemmed Trophic state assessment using hybrid classification tree-artificial neural network
title_sort trophic state assessment using hybrid classification tree-artificial neural network
publisher Animo Repository
publishDate 2020
url https://animorepository.dlsu.edu.ph/faculty_research/1832
https://animorepository.dlsu.edu.ph/context/faculty_research/article/2831/type/native/viewcontent
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