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Tackling Climate Change with Machine Learning (1906.05433v2)

Published 10 Jun 2019 in cs.CY, cs.AI, cs.LG, and stat.ML

Abstract: Climate change is one of the greatest challenges facing humanity, and we, as machine learning experts, may wonder how we can help. Here we describe how machine learning can be a powerful tool in reducing greenhouse gas emissions and helping society adapt to a changing climate. From smart grids to disaster management, we identify high impact problems where existing gaps can be filled by machine learning, in collaboration with other fields. Our recommendations encompass exciting research questions as well as promising business opportunities. We call on the machine learning community to join the global effort against climate change.

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Authors (22)
  1. David Rolnick (68 papers)
  2. Priya L. Donti (13 papers)
  3. Lynn H. Kaack (7 papers)
  4. Kelly Kochanski (3 papers)
  5. Alexandre Lacoste (42 papers)
  6. Kris Sankaran (25 papers)
  7. Andrew Slavin Ross (10 papers)
  8. Nikola Milojevic-Dupont (3 papers)
  9. Natasha Jaques (32 papers)
  10. Anna Waldman-Brown (1 paper)
  11. Alexandra Luccioni (11 papers)
  12. Tegan Maharaj (22 papers)
  13. Evan D. Sherwin (1 paper)
  14. S. Karthik Mukkavilli (10 papers)
  15. Konrad P. Kording (30 papers)
  16. Carla Gomes (26 papers)
  17. Andrew Y. Ng (55 papers)
  18. Demis Hassabis (41 papers)
  19. John C. Platt (7 papers)
  20. Felix Creutzig (8 papers)
Citations (683)

Summary

Tackling Climate Change with Machine Learning

The paper "Tackling Climate Change with Machine Learning" explores the multifaceted application of ML techniques in addressing various challenges associated with climate change. This essay provides an overview of the paper, highlighting significant findings and discussing the potential implications in both practical and theoretical contexts.

Overview

The paper identifies key areas where ML can play a pivotal role, categorized into domains such as electricity systems, transportation, buildings and cities, industry, land use, climate prediction, and individual and societal adaptation strategies. By leveraging the capabilities of ML, the paper articulates methodologies to mitigate greenhouse gas (GHG) emissions and facilitate adaptation to climate-related impacts.

Electricity Systems

ML's potential in electricity systems centers around the enhancement of forecasting and optimization processes. The integration of ML models with existing system operations can lead to improved demand and supply forecasts, which, in turn, can facilitate the transition to low-carbon electricity sources. The paper discusses novel techniques for better grid management and resource allocation, impacting emissions through increased efficiency and reduced dependence on fossil fuels.

Transportation

The paper addresses how ML can improve vehicle efficiency, optimize public transit systems, and advance the development of autonomous vehicles. By enhancing telematics and predictive maintenance strategies, ML systems can contribute significantly to reducing emissions in both passenger and freight transportation sectors. The insights into how AI technologies can aid transitions to electric vehicles and alternative fuels provide further avenues for emissions reduction.

Buildings and Cities

A significant portion of global energy consumption occurs in urban settings. The paper emphasizes the role of ML in optimizing energy efficiency in buildings through advanced modeling techniques and real-time data analysis. By integrating intelligent control systems, ML technologies can reduce energy consumption and enhance urban planning, leading to smarter, more sustainable city infrastructures.

Industry and Land Use

In industrial settings, ML facilitates the optimization of supply chains, predictive maintenance of machinery, and the enhancement of process efficiencies. The paper explores the potential for ML to drive innovations in materials science, with a focus on developing low-carbon alternatives. In agriculture and forestry, precision agriculture enabled by ML can boost productivity and promote sustainable land-use practices. These methods directly impact carbon sequestration capabilities, crucial for mitigating climate change.

Climate Prediction and Societal Impacts

The predictive capabilities of ML are pivotal in climate modeling and forecasting extreme weather events. By improving the accuracy of climate simulations, ML can inform policy and decision-making processes. The paper also discusses the role of ML in enhancing resilience to climate impacts through improved infrastructure maintenance, food security, and public health systems.

Practical and Theoretical Implications

Practically, deploying ML solutions could lead to substantive reductions in emissions and advance global efforts toward achieving climate targets. Theoretically, the integration of ML with traditional climate science presents new research paradigms, fostering interdisciplinary collaborations that can generate novel insights and methodologies.

Future Directions

The paper calls for increased data sharing and collaboration among researchers, policymakers, and industries to better harness the potential of ML in climate applications. Future research should focus on enhancing the interpretability and scalability of ML models, ensuring their efficacy across diverse geographies and contexts.

In conclusion, the paper "Tackling Climate Change with Machine Learning" provides a comprehensive exploration of how ML can serve as a powerful tool in the fight against climate change. By systematically addressing various emission sources and resilience needs, ML holds the promise of transforming our approach to one of the most pressing challenges of our time.

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