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Machine Learning-Based Wetland Vulnerability Assessment in the Sindh Province Ramsar Site Using Remote Sensing Data
by
Gulshad, Khansa
, Quddoos, Abdul
, Alarifi, Saad S.
, Shu, Hong
, Aslam, Rana Waqar
, Yaseen, Andaleeb
, Naz, Iram
in
Accuracy
/ Algorithms
/ Anthropogenic factors
/ Aquatic ecosystems
/ Biodiversity
/ Cellular automata
/ cellular automata and artificial neural network (CA-ANN)
/ Classification
/ Climate change
/ Conservation
/ data analysis
/ Data science
/ Drought
/ Ecosystems
/ Effectiveness
/ Environmental aspects
/ Environmental economics
/ environmental health
/ face
/ humans
/ Hydrology
/ inventories
/ Lakes
/ Land cover
/ Land use
/ Learning algorithms
/ Machine learning
/ Modelling
/ Neural networks
/ Pakistan
/ Population
/ Population growth
/ Ramsar Convention on Wetlands
/ Remote sensing
/ risk
/ risk assessment
/ Satellites
/ shrinkage
/ Spatial data
/ Sustainability management
/ Water shortages
/ Wetland conservation
/ Wetlands
2024
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Machine Learning-Based Wetland Vulnerability Assessment in the Sindh Province Ramsar Site Using Remote Sensing Data
by
Gulshad, Khansa
, Quddoos, Abdul
, Alarifi, Saad S.
, Shu, Hong
, Aslam, Rana Waqar
, Yaseen, Andaleeb
, Naz, Iram
in
Accuracy
/ Algorithms
/ Anthropogenic factors
/ Aquatic ecosystems
/ Biodiversity
/ Cellular automata
/ cellular automata and artificial neural network (CA-ANN)
/ Classification
/ Climate change
/ Conservation
/ data analysis
/ Data science
/ Drought
/ Ecosystems
/ Effectiveness
/ Environmental aspects
/ Environmental economics
/ environmental health
/ face
/ humans
/ Hydrology
/ inventories
/ Lakes
/ Land cover
/ Land use
/ Learning algorithms
/ Machine learning
/ Modelling
/ Neural networks
/ Pakistan
/ Population
/ Population growth
/ Ramsar Convention on Wetlands
/ Remote sensing
/ risk
/ risk assessment
/ Satellites
/ shrinkage
/ Spatial data
/ Sustainability management
/ Water shortages
/ Wetland conservation
/ Wetlands
2024
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Do you wish to request the book?
Machine Learning-Based Wetland Vulnerability Assessment in the Sindh Province Ramsar Site Using Remote Sensing Data
by
Gulshad, Khansa
, Quddoos, Abdul
, Alarifi, Saad S.
, Shu, Hong
, Aslam, Rana Waqar
, Yaseen, Andaleeb
, Naz, Iram
in
Accuracy
/ Algorithms
/ Anthropogenic factors
/ Aquatic ecosystems
/ Biodiversity
/ Cellular automata
/ cellular automata and artificial neural network (CA-ANN)
/ Classification
/ Climate change
/ Conservation
/ data analysis
/ Data science
/ Drought
/ Ecosystems
/ Effectiveness
/ Environmental aspects
/ Environmental economics
/ environmental health
/ face
/ humans
/ Hydrology
/ inventories
/ Lakes
/ Land cover
/ Land use
/ Learning algorithms
/ Machine learning
/ Modelling
/ Neural networks
/ Pakistan
/ Population
/ Population growth
/ Ramsar Convention on Wetlands
/ Remote sensing
/ risk
/ risk assessment
/ Satellites
/ shrinkage
/ Spatial data
/ Sustainability management
/ Water shortages
/ Wetland conservation
/ Wetlands
2024
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Machine Learning-Based Wetland Vulnerability Assessment in the Sindh Province Ramsar Site Using Remote Sensing Data
Journal Article
Machine Learning-Based Wetland Vulnerability Assessment in the Sindh Province Ramsar Site Using Remote Sensing Data
2024
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Overview
Wetlands provide vital ecological and socioeconomic services but face escalating pressures worldwide. This study undertakes an integrated spatiotemporal assessment of the multifaceted vulnerabilities shaping Khinjhir Lake, an ecologically significant wetland ecosystem in Pakistan, using advanced geospatial and machine learning techniques. Multi-temporal optical remote sensing data from 2000 to 2020 was analyzed through spectral water indices, land cover classification, change detection and risk mapping to examine moisture variability, land cover modifications, area changes and proximity-based threats over two decades. The random forest algorithm attained the highest accuracy (89.5%) for land cover classification based on rigorous k-fold cross-validation, with a training accuracy of 91.2% and a testing accuracy of 87.3%. This demonstrates the model’s effectiveness and robustness for wetland vulnerability modeling in the study area, showing 11% shrinkage in open water bodies since 2000. Inventory risk zoning revealed 30% of present-day wetland areas under moderate to high vulnerability. The cellular automata–Markov (CA–Markov) model predicted continued long-term declines driven by swelling anthropogenic pressures like the 29 million population growth surrounding Khinjhir Lake. The research demonstrates the effectiveness of integrating satellite data analytics, machine learning algorithms and spatial modeling to generate actionable insights into wetland vulnerability to guide conservation planning. The findings provide a robust baseline to inform policies aimed at ensuring the health and sustainable management and conservation of Khinjhir Lake wetlands in the face of escalating human and climatic pressures that threaten the ecological health and functioning of these vital ecosystems.
Publisher
MDPI AG
Subject
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