Search Results
Displaying:
1 - 9 of 9
C-PEAT
Resource
C-PEAT, in collaboration with PAGES and Future Earth, is taking part in the United Nations’ Framework Convention on Climate Change ( COP26) in Glasgow, Scotland, in November 2021. Our team is...
Global Peatlands Assessment: The State of the World’s Peatlands
Resource
Peatlands are unique and rare ecosystems that, despite only covering around 3-4% of the planet’s land surface, they contain up to one-third of the world’s soil carbon, which is twice the amount of...
Peatland Atlas: Facts and Figures About Wet Climate Guardians
News
Organization
Although peatlands cover only 3% of the world's land, they store about twice as much carbon as in the biomass of all the world's forests combined. Thus, they are incredibly important especially for...
Peatland Atlas: Facts and Figures About Wet Climate Guardians
Resource
Although peatlands cover only 3% of the world's land, they store about twice as much carbon as in the biomass of all the world's forests combined. Thus, they are incredibly important especially for...
Peatlands & climate commitments: Enhancing climate action through peatlands
Event
Event Date and Time
June 23rd, 2022 at 1:30am MST to June 23rd, 2022 at 9:00am MST
The session will be organized in 2 different occasions on Thursday 23 June 2022 Morning session: 9:30 – 11:30 a.m. CEST/UTC +2 (Rome time) Afternoon session: 15:00 – 17:00 p.m. CEST/UTC +2 (Rome time)...
Webinar - Climate Variability and Change in the Southern Boreal Forest of Northern Saskatchewan
Resource
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