• 05: AI & Energy Transitions in Asia

  • Feb 3 2025
  • Durée: 1 h et 3 min
  • Podcast

05: AI & Energy Transitions in Asia

  • Résumé

  • For many countries in Asia, pathways to clean energy transitions are complex with continued reliance on coal and legacy infrastructure, a rapidly urbanising economy, and a booming data centre industry. How can we ensure that AI adoption is both safe and sustainable while also fostering equitable energy transitions? In this episode, we hear from John Cotton & Priya Donti on the enthusiasm of governments in Asia in using AI to improve the efficiency of energy systems & manage energy demand & supply. We discuss AI’s potential to help integrate renewable energy sources into the grid, challenges in the area, environmental impacts & ways to manage them, and the need to invest in capacity building & skill development. You can read the transcript for this episode ⁠here. Speakers John Cotton John Cotton is Senior Program Manager for the Southeast Asia Energy Transition Partnership, UNOPS with a demonstrated history of project development in energy transition, renewables, IT and mining industries. John is educated in the UK at Manchester and Sussex Universities with a B.Sc (Hons) in Mathematics, Software Engineering, and an M.Sc in Energy Policy, respectively. John has been based in Southeast Asia for 20 years and has overseen projects ranging from EPC contracts for hydropower and solar projects, through policy analysis and recommendations for the multi-disciplinary energy transition challenges faced across the region. Before ETP, he was Climate Change Policy Officer at the British Embassy, Vientiane of Lao PDR, and draws on extensive experience from both the public and private sectors. Priya Donti Priya Donti is an Assistant Professor at MIT EECS and LIDS, whose research focuses on machine learning for forecasting, optimisation, and control in high-renewables power grids. Specifically, her work explores methods to incorporate the physics and hard constraints associated with electric power systems into deep learning workflows. Priya is also the co-founder and Chair of Climate Change AI, a global non-profit initiative to catalyse impactful work at the intersection of climate change and machine learning. She received her Ph.D. in Computer Science and Public Policy from Carnegie Mellon University. Show Notes COP26: What Asia pledged, from China to Vietnam and Philippines PT PLN Indonesia’s State Utility Company A comprehensive overview on demand-side energy management towards smart grids: challenges, solutions, and future direction Upgrading and Modernising the Java-Madura-Bali Electricity Control Centre Renewable Integration - Energy System - IEA Development of Vietnam Smart Grid Roadmap for period up to year 2030, with a vision to 2050 Review on Machine Learning for Sustainable Energy Systems Aligning artificial intelligence with climate change mitigation (overview of the multi-faceted relationship between AI and climate) Climate Change and AI: Recommendations for Government Action (Global Partnership on AI report) French grid operator RTE Learning to Run a Power Network challenge SCADA/EMS Electricity 2024 – Analysis - IEA What Are Renewable Energy Certificates (RECs)? Global Brands Say Future Orders at Risk Given Cambodia’s Increasing Coal Power UNFCCC (United Nations Framework Convention on Climate Change) Microsoft deal propels Three Mile Island restart Tiny machine learning OpenSynth - LF Energy Check out the Code Green glossary for more terms. This podcast series is accompanied by a monthly newsletter - sign up for updates ⁠⁠here⁠⁠. For more about this project, visit our website ⁠⁠codegreen.asia Credits Audio Editing: Creator Studio Goa by Winfluence Media Production Support: Shivranjana Rathore, Tammanna Aurora, Dona Mathew, Meredith Stinger Cover Design: Nayantara Surendranath Attributions Intro and Outro: ⁠⁠Retro Sounds⁠⁠, ⁠⁠Alban_Gogh⁠⁠ Transitions - ⁠⁠Meditative Background Music⁠⁠, ⁠⁠white_records⁠
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