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Remotely Sensed High-Resolution Global Cloud Dynamics for Predicting Ecosystem and Biodiversity Distributions
by
Wilson, Adam M.
, Jetz, Walter
in
Animals
/ Biodiversity
/ Biological diversity
/ Biology and Life Sciences
/ Climate
/ Climatic data
/ Cloud cover
/ Clouds
/ Data processing
/ Earth
/ Earth Sciences
/ Ecology - methods
/ Ecology and Environmental Sciences
/ Ecosystems
/ Environmental aspects
/ Forests
/ Grain
/ Ground stations
/ Heterogeneity
/ Methods
/ Observations
/ Precipitation
/ Remote sensing
/ Remote Sensing Technology
/ Standard deviation
/ Weather
2016
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Remotely Sensed High-Resolution Global Cloud Dynamics for Predicting Ecosystem and Biodiversity Distributions
by
Wilson, Adam M.
, Jetz, Walter
in
Animals
/ Biodiversity
/ Biological diversity
/ Biology and Life Sciences
/ Climate
/ Climatic data
/ Cloud cover
/ Clouds
/ Data processing
/ Earth
/ Earth Sciences
/ Ecology - methods
/ Ecology and Environmental Sciences
/ Ecosystems
/ Environmental aspects
/ Forests
/ Grain
/ Ground stations
/ Heterogeneity
/ Methods
/ Observations
/ Precipitation
/ Remote sensing
/ Remote Sensing Technology
/ Standard deviation
/ Weather
2016
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Remotely Sensed High-Resolution Global Cloud Dynamics for Predicting Ecosystem and Biodiversity Distributions
by
Wilson, Adam M.
, Jetz, Walter
in
Animals
/ Biodiversity
/ Biological diversity
/ Biology and Life Sciences
/ Climate
/ Climatic data
/ Cloud cover
/ Clouds
/ Data processing
/ Earth
/ Earth Sciences
/ Ecology - methods
/ Ecology and Environmental Sciences
/ Ecosystems
/ Environmental aspects
/ Forests
/ Grain
/ Ground stations
/ Heterogeneity
/ Methods
/ Observations
/ Precipitation
/ Remote sensing
/ Remote Sensing Technology
/ Standard deviation
/ Weather
2016
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Remotely Sensed High-Resolution Global Cloud Dynamics for Predicting Ecosystem and Biodiversity Distributions
Journal Article
Remotely Sensed High-Resolution Global Cloud Dynamics for Predicting Ecosystem and Biodiversity Distributions
2016
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Overview
Cloud cover can influence numerous important ecological processes, including reproduction, growth, survival, and behavior, yet our assessment of its importance at the appropriate spatial scales has remained remarkably limited. If captured over a large extent yet at sufficiently fine spatial grain, cloud cover dynamics may provide key information for delineating a variety of habitat types and predicting species distributions. Here, we develop new near-global, fine-grain (≈1 km) monthly cloud frequencies from 15 y of twice-daily Moderate Resolution Imaging Spectroradiometer (MODIS) satellite images that expose spatiotemporal cloud cover dynamics of previously undocumented global complexity. We demonstrate that cloud cover varies strongly in its geographic heterogeneity and that the direct, observation-based nature of cloud-derived metrics can improve predictions of habitats, ecosystem, and species distributions with reduced spatial autocorrelation compared to commonly used interpolated climate data. These findings support the fundamental role of remote sensing as an effective lens through which to understand and globally monitor the fine-grain spatial variability of key biodiversity and ecosystem properties.
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