Spatial delineation on marine environmental characteristics using fuzzy c-means clustering method

BACKGROUND AND OBJECTIVES: Conservation efforts are often prioritized on a large spatial scale because information about local ecosystems is frequently lacking. Therefore, comprehensive spatial classification of a region’s environmental characteristics is essential for effective marine conservation....

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Main Authors: E.D. Lusiana, S. Astutik, N. Nurjannah, A.B. Sambah
Format: Article
Language:English
Published: GJESM Publisher 2023-07-01
Series:Global Journal of Environmental Science and Management
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Online Access:https://www.gjesm.net/article_701541_08e568ba4758703e658501d32efea5d6.pdf
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author E.D. Lusiana
S. Astutik
N. Nurjannah
A.B. Sambah
author_facet E.D. Lusiana
S. Astutik
N. Nurjannah
A.B. Sambah
author_sort E.D. Lusiana
collection DOAJ
description BACKGROUND AND OBJECTIVES: Conservation efforts are often prioritized on a large spatial scale because information about local ecosystems is frequently lacking. Therefore, comprehensive spatial classification of a region’s environmental characteristics is essential for effective marine conservation. This study aimed to construct geophysical and chemical environmental delineation of the Lesser Sunda Islands which are located in Indonesia. This area is an ecoregion in the coral triangle that has been a primary concern of global biodiversity conservation strategies.METHODS: This study utilized eleven global environmental variables that were accessed from global marine databases. After performing a principal component analysis, a fuzzy C-means clustering technique was used to classify the region into groups based on environmental characteristics in term of seasonal variability. It was expected that the areas within each group would have identical attributes and ecological processes.FINDINGS: The results suggested that the marine environmental factors in Lesser Sunda can be simplified using a principal component analysis technique: 6 principal component factors explained 81.06 percent of the overall raw data variability for the wet season, and 7 principal component variables explained 84.51 percent of the overall raw data variability for the dry season. Then, the area can be delineated into 5 groups (wet season) and 10 groups (dry season) with different environmental characteristics. This method's classified groups principally inferred the Indian Ocean and Bali Sea, Savu Sea and Flores Sea, and Banda Sea as distinct clusters. In particular, the group that included the Indian Ocean had characteristics including lower nitrate and sea surface temperature concentrations, as well as higher potential hydrogen salinity and distance from the shore.CONCLUSION: The findings of this study showed that the single marine conservation area in Lesser Sunda is not sufficient to adequately represent the physicochemical dynamics in the area. The proposed delineation result will supplement the existing bioregion classification of marine areas, such as the Marine Ecoregions of the World. Moreover, it is also consistent with existing conservation programs, including the notable national marine protected areas of the Savu Sea. Nevertheless, the acknowledged biogeographic group of the Indian Ocean indicates that countries must work together to successfully manage marine protected areas and achieve their conservation objectives. This work serves as a baseline for both academic research and ecological assessment, and it will contribute to marine protected areas strategies and conservation efforts in the Lesser Sunda Islands.
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spelling doaj-art-f7e4bb7b55b14322b42a0287b62a92d72025-02-02T16:57:32ZengGJESM PublisherGlobal Journal of Environmental Science and Management2383-35722383-38662023-07-019346347610.22034/gjesm.2023.03.07701541Spatial delineation on marine environmental characteristics using fuzzy c-means clustering methodE.D. Lusiana0S. Astutik1N. Nurjannah2A.B. Sambah3Department of Mathematics, Faculty of Mathematics and Natural Sciences, Universitas Brawijaya, Jl. Veteran Malang 65145, IndonesiaDepartment of Statistics, Faculty of Mathematics and Natural Sciences, Universitas Brawijaya, Jl. Veteran Malang 65145, IndonesiaDepartment of Statistics, Faculty of Mathematics and Natural Sciences, Universitas Brawijaya, Jl. Veteran Malang 65145, IndonesiaFaculty of Fisheries and Marine Science, Universitas Brawijaya, Jl. Veteran Malang 65145, IndonesiaBACKGROUND AND OBJECTIVES: Conservation efforts are often prioritized on a large spatial scale because information about local ecosystems is frequently lacking. Therefore, comprehensive spatial classification of a region’s environmental characteristics is essential for effective marine conservation. This study aimed to construct geophysical and chemical environmental delineation of the Lesser Sunda Islands which are located in Indonesia. This area is an ecoregion in the coral triangle that has been a primary concern of global biodiversity conservation strategies.METHODS: This study utilized eleven global environmental variables that were accessed from global marine databases. After performing a principal component analysis, a fuzzy C-means clustering technique was used to classify the region into groups based on environmental characteristics in term of seasonal variability. It was expected that the areas within each group would have identical attributes and ecological processes.FINDINGS: The results suggested that the marine environmental factors in Lesser Sunda can be simplified using a principal component analysis technique: 6 principal component factors explained 81.06 percent of the overall raw data variability for the wet season, and 7 principal component variables explained 84.51 percent of the overall raw data variability for the dry season. Then, the area can be delineated into 5 groups (wet season) and 10 groups (dry season) with different environmental characteristics. This method's classified groups principally inferred the Indian Ocean and Bali Sea, Savu Sea and Flores Sea, and Banda Sea as distinct clusters. In particular, the group that included the Indian Ocean had characteristics including lower nitrate and sea surface temperature concentrations, as well as higher potential hydrogen salinity and distance from the shore.CONCLUSION: The findings of this study showed that the single marine conservation area in Lesser Sunda is not sufficient to adequately represent the physicochemical dynamics in the area. The proposed delineation result will supplement the existing bioregion classification of marine areas, such as the Marine Ecoregions of the World. Moreover, it is also consistent with existing conservation programs, including the notable national marine protected areas of the Savu Sea. Nevertheless, the acknowledged biogeographic group of the Indian Ocean indicates that countries must work together to successfully manage marine protected areas and achieve their conservation objectives. This work serves as a baseline for both academic research and ecological assessment, and it will contribute to marine protected areas strategies and conservation efforts in the Lesser Sunda Islands.https://www.gjesm.net/article_701541_08e568ba4758703e658501d32efea5d6.pdfbiogeographyconservationcoral trianglefuzzy c-means (fcm)marine protected area (mpa)principal component analysis (pca)
spellingShingle E.D. Lusiana
S. Astutik
N. Nurjannah
A.B. Sambah
Spatial delineation on marine environmental characteristics using fuzzy c-means clustering method
Global Journal of Environmental Science and Management
biogeography
conservation
coral triangle
fuzzy c-means (fcm)
marine protected area (mpa)
principal component analysis (pca)
title Spatial delineation on marine environmental characteristics using fuzzy c-means clustering method
title_full Spatial delineation on marine environmental characteristics using fuzzy c-means clustering method
title_fullStr Spatial delineation on marine environmental characteristics using fuzzy c-means clustering method
title_full_unstemmed Spatial delineation on marine environmental characteristics using fuzzy c-means clustering method
title_short Spatial delineation on marine environmental characteristics using fuzzy c-means clustering method
title_sort spatial delineation on marine environmental characteristics using fuzzy c means clustering method
topic biogeography
conservation
coral triangle
fuzzy c-means (fcm)
marine protected area (mpa)
principal component analysis (pca)
url https://www.gjesm.net/article_701541_08e568ba4758703e658501d32efea5d6.pdf
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AT sastutik spatialdelineationonmarineenvironmentalcharacteristicsusingfuzzycmeansclusteringmethod
AT nnurjannah spatialdelineationonmarineenvironmentalcharacteristicsusingfuzzycmeansclusteringmethod
AT absambah spatialdelineationonmarineenvironmentalcharacteristicsusingfuzzycmeansclusteringmethod