Navigating Change: AI in Arctic Sea Ice Forecasting
Description
The Arctic is undergoing rapid changes due to climate change, making sea ice forecasting increasingly important. In this episode of the Turing Podcast, hosts Amelia Jabry and Dr. Sophie Arana discuss the critical role of AI models like IceNet in predicting sea ice conditions and aiding conservation efforts. Featuring Dr. Ellie Bowler from the British Antarctic Survey, the conversation dives into the technical details of IceNet, its applications for wildlife conservation, and the challenges of predicting sea ice dynamics. The discussion also covers the importance of these predictions for indigenous communities and wildlife that rely on the frozen Arctic landscape. Learn how AI is revolutionising our approach to these urgent environmental challenges.
Read more about our environmental forecasting work here: https://www.turing.ac.uk/blog/democratising-environmental-forecasting-age-ai
Explore IceNet: https://icenet.ai/
Find out more about Dr Ellie Bowler's publications: https://www.bas.ac.uk/profile/eller/
Read more about Dr Sophie Arana here: https://www.turing.ac.uk/people/dr-sophie-arana
Chapters:
00:00 Introduction to Arctic Climate Change
00:39 Meet the your host Amelia and co-host Dr Sophie Arana
00:57 Understanding the Role of a Research Application Manager
01:47 Introduction to ICE Net
02:47 AI vs. Traditional Physics-based Forecasting Models
03:40 Human Expertise and AI Collaboration
04:56 Introducing Dr. Ellie Bowler and her sea ice and caribou migration forecasting research
06:21 Challenges in Sea Ice Forecasting
10:01 Caribou Migration and Conservation
12:30 Impact of Human Activities on Arctic Wildlife
16:38 Innovative Conservation Methods
23:25 Future of ICE Net and AI in Conservation
26:54 Conclusion and Further Resources



