Applying Limnological Feature-Based Machine Learning Techniques to Chemical State Classification in Marine Transitional Systems

On a global scale, marine transitional waters have been severely impacted by anthropogenic activities. Historically, developing human civilizations have often settled in coastal areas with about 2/3 of the human population inhabiting areas within 20-km range from coastal areas. Environmental managem...

Full description

Bibliographic Details
Main Authors: Ronnie Concepcion, Elmer Dadios, Argel Bandala, Isabel Caçador, Vanessa F. Fonseca, Bernardo Duarte
Format: Article
Language:English
Published: Frontiers Media S.A. 2021-07-01
Series:Frontiers in Marine Science
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/fmars.2021.658434/full
id doaj-e1bb5092e0994c29884c3faa75fde452
record_format Article
collection DOAJ
language English
format Article
sources DOAJ
author Ronnie Concepcion
Ronnie Concepcion
Elmer Dadios
Elmer Dadios
Elmer Dadios
Argel Bandala
Argel Bandala
Argel Bandala
Isabel Caçador
Isabel Caçador
Vanessa F. Fonseca
Vanessa F. Fonseca
Bernardo Duarte
Bernardo Duarte
spellingShingle Ronnie Concepcion
Ronnie Concepcion
Elmer Dadios
Elmer Dadios
Elmer Dadios
Argel Bandala
Argel Bandala
Argel Bandala
Isabel Caçador
Isabel Caçador
Vanessa F. Fonseca
Vanessa F. Fonseca
Bernardo Duarte
Bernardo Duarte
Applying Limnological Feature-Based Machine Learning Techniques to Chemical State Classification in Marine Transitional Systems
Frontiers in Marine Science
computational intelligence
classification
estuarine systems
eutrophication
machine learning
water contamination
author_facet Ronnie Concepcion
Ronnie Concepcion
Elmer Dadios
Elmer Dadios
Elmer Dadios
Argel Bandala
Argel Bandala
Argel Bandala
Isabel Caçador
Isabel Caçador
Vanessa F. Fonseca
Vanessa F. Fonseca
Bernardo Duarte
Bernardo Duarte
author_sort Ronnie Concepcion
title Applying Limnological Feature-Based Machine Learning Techniques to Chemical State Classification in Marine Transitional Systems
title_short Applying Limnological Feature-Based Machine Learning Techniques to Chemical State Classification in Marine Transitional Systems
title_full Applying Limnological Feature-Based Machine Learning Techniques to Chemical State Classification in Marine Transitional Systems
title_fullStr Applying Limnological Feature-Based Machine Learning Techniques to Chemical State Classification in Marine Transitional Systems
title_full_unstemmed Applying Limnological Feature-Based Machine Learning Techniques to Chemical State Classification in Marine Transitional Systems
title_sort applying limnological feature-based machine learning techniques to chemical state classification in marine transitional systems
publisher Frontiers Media S.A.
series Frontiers in Marine Science
issn 2296-7745
publishDate 2021-07-01
description On a global scale, marine transitional waters have been severely impacted by anthropogenic activities. Historically, developing human civilizations have often settled in coastal areas with about 2/3 of the human population inhabiting areas within 20-km range from coastal areas. Environmental management worldwide strives for sustainable development while minimizing impacts to ecosystem integrity and has resulted in several framework directives, management programs, and legislation compelling governments to monitor their coastal systems and improve environmental quality. Among the most significant anthropogenic impacts to these ecosystems are land reclamation, dredging, pollution (sediment discharges, hazardous substances, litter, oil spills, and eutrophication), unsustainable exploitation of marine resources (sand extraction, oil and gas exploitation, and fishing), unmanaged tourism activities, the introduction of non-indigenous species, and climate change. The multitude of stressors is not independent, and as such, the chemical status of marine systems has serious implications on its ecological status and needs to be addressed efficiently. Public monitoring databases provide a large amount of physico-chemical (nutrient, dissolved oxygen, and chlorophyll a concentration) and contaminant (trace metals and polycyclic aromatic hydrocarbons) data for all Portuguese transitional systems (estuaries and coastal lagoons). These data are used to classify the chemical status (eutrophication and contamination level) of these ecosystems considering pre-defined classification thresholds, which facilitates communication to government authorities and management entities. Artificial intelligence and machine learning techniques provide an automated and efficient opportunity to improve simulation accuracy and further advance our understanding of environmental problems in estuarine and coastal waters when dealing with large environmental datasets. In the present work, we applied machine learning models, namely, linear discriminant analysis, classification tree, naive Bayesian, and support vector machine, to nutrient, dissolved oxygen, chlorophyll a, trace metals, and polycyclic aromatic hydrocarbon concentrations to produce a chemical status classification of the Portuguese marine transition systems. This approach allowed us to efficiently classify in an automated way the transitional water’s chemical status within the pre-defined classification thresholds, producing numerical index values that can easily be communicated to the general public and managers alike.
topic computational intelligence
classification
estuarine systems
eutrophication
machine learning
water contamination
url https://www.frontiersin.org/articles/10.3389/fmars.2021.658434/full
work_keys_str_mv AT ronnieconcepcion applyinglimnologicalfeaturebasedmachinelearningtechniquestochemicalstateclassificationinmarinetransitionalsystems
AT ronnieconcepcion applyinglimnologicalfeaturebasedmachinelearningtechniquestochemicalstateclassificationinmarinetransitionalsystems
AT elmerdadios applyinglimnologicalfeaturebasedmachinelearningtechniquestochemicalstateclassificationinmarinetransitionalsystems
AT elmerdadios applyinglimnologicalfeaturebasedmachinelearningtechniquestochemicalstateclassificationinmarinetransitionalsystems
AT elmerdadios applyinglimnologicalfeaturebasedmachinelearningtechniquestochemicalstateclassificationinmarinetransitionalsystems
AT argelbandala applyinglimnologicalfeaturebasedmachinelearningtechniquestochemicalstateclassificationinmarinetransitionalsystems
AT argelbandala applyinglimnologicalfeaturebasedmachinelearningtechniquestochemicalstateclassificationinmarinetransitionalsystems
AT argelbandala applyinglimnologicalfeaturebasedmachinelearningtechniquestochemicalstateclassificationinmarinetransitionalsystems
AT isabelcacador applyinglimnologicalfeaturebasedmachinelearningtechniquestochemicalstateclassificationinmarinetransitionalsystems
AT isabelcacador applyinglimnologicalfeaturebasedmachinelearningtechniquestochemicalstateclassificationinmarinetransitionalsystems
AT vanessaffonseca applyinglimnologicalfeaturebasedmachinelearningtechniquestochemicalstateclassificationinmarinetransitionalsystems
AT vanessaffonseca applyinglimnologicalfeaturebasedmachinelearningtechniquestochemicalstateclassificationinmarinetransitionalsystems
AT bernardoduarte applyinglimnologicalfeaturebasedmachinelearningtechniquestochemicalstateclassificationinmarinetransitionalsystems
AT bernardoduarte applyinglimnologicalfeaturebasedmachinelearningtechniquestochemicalstateclassificationinmarinetransitionalsystems
_version_ 1721311458208251904
spelling doaj-e1bb5092e0994c29884c3faa75fde4522021-07-09T09:59:54ZengFrontiers Media S.A.Frontiers in Marine Science2296-77452021-07-01810.3389/fmars.2021.658434658434Applying Limnological Feature-Based Machine Learning Techniques to Chemical State Classification in Marine Transitional SystemsRonnie Concepcion0Ronnie Concepcion1Elmer Dadios2Elmer Dadios3Elmer Dadios4Argel Bandala5Argel Bandala6Argel Bandala7Isabel Caçador8Isabel Caçador9Vanessa F. Fonseca10Vanessa F. Fonseca11Bernardo Duarte12Bernardo Duarte13Electronics and Communications Engineering Department, De La Salle University, Manila, PhilippinesIntelligent Systems Laboratory, John Gokongwei Jr. College of Engineering, De La Salle University, Manila, PhilippinesIntelligent Systems Laboratory, John Gokongwei Jr. College of Engineering, De La Salle University, Manila, PhilippinesManufacturing Engineering and Management Department, De La Salle University, Manila, PhilippinesCenter for Engineering and Sustainable Development Research, De La Salle University, Manila, PhilippinesElectronics and Communications Engineering Department, De La Salle University, Manila, PhilippinesIntelligent Systems Laboratory, John Gokongwei Jr. College of Engineering, De La Salle University, Manila, PhilippinesCenter for Engineering and Sustainable Development Research, De La Salle University, Manila, PhilippinesMarine and Environmental Sciences Centre (MARE), Faculdade de Ciências, Universidade de Lisboa, Lisbon, PortugalDepartamento de Biologia Vegetal, Faculdade de Ciências, Universidade de Lisboa, Lisbon, PortugalMarine and Environmental Sciences Centre (MARE), Faculdade de Ciências, Universidade de Lisboa, Lisbon, PortugalDepartamento de Biologia Animal, Faculdade de Ciências, Universidade de Lisboa, Lisbon, PortugalMarine and Environmental Sciences Centre (MARE), Faculdade de Ciências, Universidade de Lisboa, Lisbon, PortugalDepartamento de Biologia Vegetal, Faculdade de Ciências, Universidade de Lisboa, Lisbon, PortugalOn a global scale, marine transitional waters have been severely impacted by anthropogenic activities. Historically, developing human civilizations have often settled in coastal areas with about 2/3 of the human population inhabiting areas within 20-km range from coastal areas. Environmental management worldwide strives for sustainable development while minimizing impacts to ecosystem integrity and has resulted in several framework directives, management programs, and legislation compelling governments to monitor their coastal systems and improve environmental quality. Among the most significant anthropogenic impacts to these ecosystems are land reclamation, dredging, pollution (sediment discharges, hazardous substances, litter, oil spills, and eutrophication), unsustainable exploitation of marine resources (sand extraction, oil and gas exploitation, and fishing), unmanaged tourism activities, the introduction of non-indigenous species, and climate change. The multitude of stressors is not independent, and as such, the chemical status of marine systems has serious implications on its ecological status and needs to be addressed efficiently. Public monitoring databases provide a large amount of physico-chemical (nutrient, dissolved oxygen, and chlorophyll a concentration) and contaminant (trace metals and polycyclic aromatic hydrocarbons) data for all Portuguese transitional systems (estuaries and coastal lagoons). These data are used to classify the chemical status (eutrophication and contamination level) of these ecosystems considering pre-defined classification thresholds, which facilitates communication to government authorities and management entities. Artificial intelligence and machine learning techniques provide an automated and efficient opportunity to improve simulation accuracy and further advance our understanding of environmental problems in estuarine and coastal waters when dealing with large environmental datasets. In the present work, we applied machine learning models, namely, linear discriminant analysis, classification tree, naive Bayesian, and support vector machine, to nutrient, dissolved oxygen, chlorophyll a, trace metals, and polycyclic aromatic hydrocarbon concentrations to produce a chemical status classification of the Portuguese marine transition systems. This approach allowed us to efficiently classify in an automated way the transitional water’s chemical status within the pre-defined classification thresholds, producing numerical index values that can easily be communicated to the general public and managers alike.https://www.frontiersin.org/articles/10.3389/fmars.2021.658434/fullcomputational intelligenceclassificationestuarine systemseutrophicationmachine learningwater contamination