about
A practical guide to the application of the IUCN Red List of Ecosystems criteria.Rapid population decline in migratory shorebirds relying on Yellow Sea tidal mudflats as stopover sitesThe role of satellite remote sensing in structured ecosystem risk assessments.Scaling range sizes to threats for robust predictions of risks to biodiversity.Selecting and applying indicators of ecosystem collapse for risk assessments.Using multiple lines of evidence to assess the risk of ecosystem collapse.Migratory connectivity magnifies the consequences of habitat loss from sea-level rise for shorebird populations.Tracking the rapid loss of tidal wetlands in the Yellow SeaWhy do we map threats? Linking threat mapping with actions to make better conservation decisionsThe IUCN Red List of Ecosystems: Motivations, Challenges, and ApplicationsBiodiversity and China's new Great WallContinental-scale decreases in shorebird populations in AustraliaTidal flats of the Yellow Sea: A review of ecosystem status and anthropogenic threatsContinental Scale Mapping of Tidal Flats across East Asia Using the Landsat ArchiveDeveloping a standardized definition of ecosystem collapse for risk assessmentSatellite remote sensing of ecosystem functions: opportunities, challenges and way forwardThe use of range size to assess risks to biodiversity from stochastic threatsThe large-scale drivers of population declines in a long-distance migratory shorebirdThe distribution and protection of intertidal habitats in AustraliaThe global distribution and trajectory of tidal flatsIdentifying restoration priorities for wetlands based on historical distributions of biodiversity features and restoration suitabilityEstimating changes and trends in ecosystem extent with dense time-series satellite remote sensing
P50
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P50
description
onderzoeker
@nl
researcher
@en
հետազոտող
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name
Nicholas J Murray
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Nicholas J Murray
@en
Nicholas J Murray
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Nicholas J Murray
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label
Nicholas J Murray
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Nicholas J Murray
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Nicholas J Murray
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Nicholas J Murray
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Nicholas J Murray
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Nicholas J Murray
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Nicholas J Murray
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Nicholas J Murray
@nl
P106
P1153
55516662500
P21
P31
P496
0000-0002-4008-3053