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Increasing Contributions of Peatlands to Boreal Evapotranspiration in a Warming Climate
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The response of evapotranspiration (ET) to warming is of critical importance to the water and carbon cycle of the boreal biome, a mosaic of land cover types dominated by forests and peatlands. The...
Movement Responses of Caribou to Human-Induced Habitat Edges Lead to Their Aggregation near Anthropogenic Features
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This resource is available on an external database and may require a paid subscription to access it. It is included on the CCLM to support our goal of capturing and sharing the breadth of all...
Nonlinear Spatial and Temporal Decomposition Provides Insight for Climate Change Effects on Sub‑Arctic Herbivore Populations
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Global temperatures are increasing, affecting timing and availability of vegetation along with relationships between plants and their consumers. We examined the effect of population density, herd body...
Providing Solutions Using Innovative Technologies
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This presentation centred on the innovative tools and technologies utilized by Vieworx for planning and wetland management.
The Philosophy and Theory of Ecological Restoration
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We are in the midst of an unprecedented crisis of declining biodiversity. Due to the extent of ecosystem devastation and degradation, reversing the trend requires the restoration of natural systems...
Webinar - Climate Variability and Change in the Southern Boreal Forest of Northern Saskatchewan
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Presented by Dave Sauchyn, Director of the Prairie Adaptation Research Collaborative at the University of Regina and Professor of Geography and Environmental Studies. Since the mid 20th century, mean...
Webinar: Flooding Risk Prediction on Agricultural Lands Using Artificial Intelligence Techniques
Event
Event Date and Time
September 27th, 2023 at 12:00pm MST to September 27th, 2023 at 1:00pm MST
The study will employ the latest artificial intelligence methodologies for data processing and predictive risk modeling approach