A Fuzzy Inference System for Seagrass Distribution Modeling in the Mediterranean Sea: A First Approach

A Mamdani-type fuzzy-logic model was developed to link Mediterranean seagrass presence to the prevailing environmental conditions. UNEP-WCMC (seagrass presence), CMEMS, and EMODnet (oceanographic/environmental) datasets, along with human-impact parameters were utilized for this expert system. The mo...

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Main Authors: Dimitra Papaki, Nikolaos Kokkos, Georgios Sylaios
Format: Article
Language:English
Published: MDPI AG 2020-10-01
Series:Water
Subjects:
Online Access:https://www.mdpi.com/2073-4441/12/10/2949
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spelling doaj-c9edd0c019a84fcd87859ecf7bb975852020-11-25T03:03:53ZengMDPI AGWater2073-44412020-10-01122949294910.3390/w12102949A Fuzzy Inference System for Seagrass Distribution Modeling in the Mediterranean Sea: A First ApproachDimitra Papaki0Nikolaos Kokkos1Georgios Sylaios2Laboratory of Ecological Engineering and Technology, Department of Environmental Engineering, Democritus University of Thrace, 67100 Xanthi, GreeceLaboratory of Ecological Engineering and Technology, Department of Environmental Engineering, Democritus University of Thrace, 67100 Xanthi, GreeceLaboratory of Ecological Engineering and Technology, Department of Environmental Engineering, Democritus University of Thrace, 67100 Xanthi, GreeceA Mamdani-type fuzzy-logic model was developed to link Mediterranean seagrass presence to the prevailing environmental conditions. UNEP-WCMC (seagrass presence), CMEMS, and EMODnet (oceanographic/environmental) datasets, along with human-impact parameters were utilized for this expert system. The model structure and input parameters were tested according to their capacity to accurately predict the presence of seagrass families at specific locations. The optimum Fuzzy Inference System (FIS) comprised four input variables: water depth, sea surface temperature, nitrates, and bottom chlorophyll-a concentration, exhibiting reasonable precision (76%). Results illustrated that Posidoniaceae prefers cooler water (16–18 °C) with low chlorophyll-a levels (<0.2 mg/m<sup>3</sup>); Zosteraceae favors similarly cooler (16–18 °C) and mesotrophic waters (Chl-a > 0.2 mg/m<sup>3</sup>), but also slightly warmer (18–19.5 °C) with lower Chl-a levels (<0.2 mg/m<sup>3</sup>); Cymodoceaceae lives in warm, oligotrophic (19.5–21.0 °C, Chl-a < 0.3 mg/m<sup>3</sup>) to moderately warm mesotrophic sites (18–21.3 °C, 0.3–0.4 mg/m<sup>3</sup> Chl-a). Finally, Hydrocharitaceae thrives in the warm Mediterranean waters (21–23 °C) of low chlorophyll-a content (<0.25 mg/m<sup>3</sup>). Climate change scenarios show that Posidoniaceae and Zosteraceae tolerate bathymetric changes, and Posidoniaceae and Zosteraceae are mostly affected by sea temperature rise, while Hydrocharitaceae exhibits tolerance at higher sea temperatures. This FIS could aid the protection of vulnerable seagrass ecosystems by national and regional policy-makers and public authorities.https://www.mdpi.com/2073-4441/12/10/2949seagrassfuzzy inference systemmodelingspecies distributionMediterranean Sea
collection DOAJ
language English
format Article
sources DOAJ
author Dimitra Papaki
Nikolaos Kokkos
Georgios Sylaios
spellingShingle Dimitra Papaki
Nikolaos Kokkos
Georgios Sylaios
A Fuzzy Inference System for Seagrass Distribution Modeling in the Mediterranean Sea: A First Approach
Water
seagrass
fuzzy inference system
modeling
species distribution
Mediterranean Sea
author_facet Dimitra Papaki
Nikolaos Kokkos
Georgios Sylaios
author_sort Dimitra Papaki
title A Fuzzy Inference System for Seagrass Distribution Modeling in the Mediterranean Sea: A First Approach
title_short A Fuzzy Inference System for Seagrass Distribution Modeling in the Mediterranean Sea: A First Approach
title_full A Fuzzy Inference System for Seagrass Distribution Modeling in the Mediterranean Sea: A First Approach
title_fullStr A Fuzzy Inference System for Seagrass Distribution Modeling in the Mediterranean Sea: A First Approach
title_full_unstemmed A Fuzzy Inference System for Seagrass Distribution Modeling in the Mediterranean Sea: A First Approach
title_sort fuzzy inference system for seagrass distribution modeling in the mediterranean sea: a first approach
publisher MDPI AG
series Water
issn 2073-4441
publishDate 2020-10-01
description A Mamdani-type fuzzy-logic model was developed to link Mediterranean seagrass presence to the prevailing environmental conditions. UNEP-WCMC (seagrass presence), CMEMS, and EMODnet (oceanographic/environmental) datasets, along with human-impact parameters were utilized for this expert system. The model structure and input parameters were tested according to their capacity to accurately predict the presence of seagrass families at specific locations. The optimum Fuzzy Inference System (FIS) comprised four input variables: water depth, sea surface temperature, nitrates, and bottom chlorophyll-a concentration, exhibiting reasonable precision (76%). Results illustrated that Posidoniaceae prefers cooler water (16–18 °C) with low chlorophyll-a levels (<0.2 mg/m<sup>3</sup>); Zosteraceae favors similarly cooler (16–18 °C) and mesotrophic waters (Chl-a > 0.2 mg/m<sup>3</sup>), but also slightly warmer (18–19.5 °C) with lower Chl-a levels (<0.2 mg/m<sup>3</sup>); Cymodoceaceae lives in warm, oligotrophic (19.5–21.0 °C, Chl-a < 0.3 mg/m<sup>3</sup>) to moderately warm mesotrophic sites (18–21.3 °C, 0.3–0.4 mg/m<sup>3</sup> Chl-a). Finally, Hydrocharitaceae thrives in the warm Mediterranean waters (21–23 °C) of low chlorophyll-a content (<0.25 mg/m<sup>3</sup>). Climate change scenarios show that Posidoniaceae and Zosteraceae tolerate bathymetric changes, and Posidoniaceae and Zosteraceae are mostly affected by sea temperature rise, while Hydrocharitaceae exhibits tolerance at higher sea temperatures. This FIS could aid the protection of vulnerable seagrass ecosystems by national and regional policy-makers and public authorities.
topic seagrass
fuzzy inference system
modeling
species distribution
Mediterranean Sea
url https://www.mdpi.com/2073-4441/12/10/2949
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