Identification of important plant areas using GIS-based multi-criteria decision-making in Peninsular Malaysia

The Important Plant Areas (IPAs) framework developed by Plantlife International in the early 2000s aims to protect wild plants and fungi and contributes to the fifth target of the CBD Global Strategy for Plant Conservation (GSPC). In addition, national implementation contributes to the sixth target...

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Main Author: Mamat, Hamidah
Format: Thesis
Language:English
Published: 2022
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Online Access:http://psasir.upm.edu.my/id/eprint/113126/1/113126.pdf
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spelling my-upm-ir.1131262024-10-25T08:48:26Z Identification of important plant areas using GIS-based multi-criteria decision-making in Peninsular Malaysia 2022-09 Mamat, Hamidah The Important Plant Areas (IPAs) framework developed by Plantlife International in the early 2000s aims to protect wild plants and fungi and contributes to the fifth target of the CBD Global Strategy for Plant Conservation (GSPC). In addition, national implementation contributes to the sixth target of the Malaysian National Policy on Biological Diversity 2016-2025. IPA initiative focused on plant conservation through three key criteria, i.e., presence of threatened species, exceptional botanical richness, and threatened habitats. These criteria were developed for global implementation, hence a likelihood of unsuited use of the criteria and thresholds in Malaysia. A review of studies revealed that the IPA criteria were strict for implementation and the method used for IPA identification was varied and uncertain in determining the criterion weights. The preferred method used in IPA was the scoring method because of its simplicity, ease of use, and comprehensibility. However, the scoring method suffered from judgment uncertainty, the influence of the weighted score on each criterion was not understood, and the limited ability to complement biodiversity-related parameters. Herbarium databases were widely used in IPA identification; however, the database was associated with the biasness towards collections efforts, resulting inaccurate population counts, which would inadvertently classify areas with massive collection data as species-rich areas. IPA identification is divided into two phases. First, identification of all potential IPAs and second, decision-making in selecting the final IPAs. This study moulded a preliminary solution in the first phase in the state of Perak to address issues of criterion weights, judgement uncertainty and biases in herbarium collections by proposing three complementarity techniques, namely multi-criteria decision-making - analytical hierarchy process (MCDM-AHP), species distribution modelling (SDM) and GIS-based multi-criteria decision-making (GIS-MCDM). The MCDM-AHP technique was used to solve criterion weights and judgment uncertainty issues. Collection bias in the herbarium database was reduced using SDM utilising the Maximum Entropy (MaxEnt) to identify the Dipterocarpaceae species richness areas in Perak. GIS-MCDM, which combined MCDM-AHP and SDM to acquire information for decision-making, was used to identify the IPAs. As a result, on the weights and judgment uncertainty issues, threatened habitats were given the highest weight, followed by threatened species, endemism, and botanical richness. The results of species modelling revealed that 65% of the dipterocarp species richness areas were in the centre and south Perak and the remaining 35% were found in northern areas. IPA weights and indexes were incorporated into the GIS-MCDM environment, and as a result, eight dipterocarp IPAs were identified in the state of Perak. Six were in the protected areas, while two IPAs were outside of the protected areas. This study has improved the existing method for site-based plant conservation by providing a smaller-scale map of IPAs with more significant detailed information related to threatened species, botanical richness, threatened habitats, and endemic species. GIS-MCDM used in this study enhanced the IPAs identification technique by incorporating GIS-based decision-making, species modelling, and spatial analysis. This enabled stakeholder to analyse spatial data, maps, charts, and reports in graphical formats for decision-making. Plants - Geographical distribution Geographic information systems - Malaysia 2022-09 Thesis http://psasir.upm.edu.my/id/eprint/113126/ http://psasir.upm.edu.my/id/eprint/113126/1/113126.pdf text en public doctoral Universiti Putra Malaysia Plants - Geographical distribution Geographic information systems - Malaysia Ismail, Mohd Hasmadi
institution Universiti Putra Malaysia
collection PSAS Institutional Repository
language English
advisor Ismail, Mohd Hasmadi
topic Plants - Geographical distribution
Geographic information systems - Malaysia

spellingShingle Plants - Geographical distribution
Geographic information systems - Malaysia

Mamat, Hamidah
Identification of important plant areas using GIS-based multi-criteria decision-making in Peninsular Malaysia
description The Important Plant Areas (IPAs) framework developed by Plantlife International in the early 2000s aims to protect wild plants and fungi and contributes to the fifth target of the CBD Global Strategy for Plant Conservation (GSPC). In addition, national implementation contributes to the sixth target of the Malaysian National Policy on Biological Diversity 2016-2025. IPA initiative focused on plant conservation through three key criteria, i.e., presence of threatened species, exceptional botanical richness, and threatened habitats. These criteria were developed for global implementation, hence a likelihood of unsuited use of the criteria and thresholds in Malaysia. A review of studies revealed that the IPA criteria were strict for implementation and the method used for IPA identification was varied and uncertain in determining the criterion weights. The preferred method used in IPA was the scoring method because of its simplicity, ease of use, and comprehensibility. However, the scoring method suffered from judgment uncertainty, the influence of the weighted score on each criterion was not understood, and the limited ability to complement biodiversity-related parameters. Herbarium databases were widely used in IPA identification; however, the database was associated with the biasness towards collections efforts, resulting inaccurate population counts, which would inadvertently classify areas with massive collection data as species-rich areas. IPA identification is divided into two phases. First, identification of all potential IPAs and second, decision-making in selecting the final IPAs. This study moulded a preliminary solution in the first phase in the state of Perak to address issues of criterion weights, judgement uncertainty and biases in herbarium collections by proposing three complementarity techniques, namely multi-criteria decision-making - analytical hierarchy process (MCDM-AHP), species distribution modelling (SDM) and GIS-based multi-criteria decision-making (GIS-MCDM). The MCDM-AHP technique was used to solve criterion weights and judgment uncertainty issues. Collection bias in the herbarium database was reduced using SDM utilising the Maximum Entropy (MaxEnt) to identify the Dipterocarpaceae species richness areas in Perak. GIS-MCDM, which combined MCDM-AHP and SDM to acquire information for decision-making, was used to identify the IPAs. As a result, on the weights and judgment uncertainty issues, threatened habitats were given the highest weight, followed by threatened species, endemism, and botanical richness. The results of species modelling revealed that 65% of the dipterocarp species richness areas were in the centre and south Perak and the remaining 35% were found in northern areas. IPA weights and indexes were incorporated into the GIS-MCDM environment, and as a result, eight dipterocarp IPAs were identified in the state of Perak. Six were in the protected areas, while two IPAs were outside of the protected areas. This study has improved the existing method for site-based plant conservation by providing a smaller-scale map of IPAs with more significant detailed information related to threatened species, botanical richness, threatened habitats, and endemic species. GIS-MCDM used in this study enhanced the IPAs identification technique by incorporating GIS-based decision-making, species modelling, and spatial analysis. This enabled stakeholder to analyse spatial data, maps, charts, and reports in graphical formats for decision-making.
format Thesis
qualification_level Doctorate
author Mamat, Hamidah
author_facet Mamat, Hamidah
author_sort Mamat, Hamidah
title Identification of important plant areas using GIS-based multi-criteria decision-making in Peninsular Malaysia
title_short Identification of important plant areas using GIS-based multi-criteria decision-making in Peninsular Malaysia
title_full Identification of important plant areas using GIS-based multi-criteria decision-making in Peninsular Malaysia
title_fullStr Identification of important plant areas using GIS-based multi-criteria decision-making in Peninsular Malaysia
title_full_unstemmed Identification of important plant areas using GIS-based multi-criteria decision-making in Peninsular Malaysia
title_sort identification of important plant areas using gis-based multi-criteria decision-making in peninsular malaysia
granting_institution Universiti Putra Malaysia
publishDate 2022
url http://psasir.upm.edu.my/id/eprint/113126/1/113126.pdf
_version_ 1818586140585754624