Predicting global patterns of long-term climate change from short-term simulations using machine learning

被引:0
|
作者
L. A. Mansfield
P. J. Nowack
M. Kasoar
R. G. Everitt
W. J. Collins
A. Voulgarakis
机构
[1] Imperial College London,Department of Physics
[2] South Kensington Campus,School of Mathematics and Statistics
[3] University of Reading,Grantham Institute
[4] Whiteknights,Climatic Research Unit, Data Science Institute
[5] Imperial College London,School of Environmental Sciences
[6] South Kensington Campus,Department of Statistics
[7] Imperial College London,Department of Meteorology
[8] South Kensington Campus,School of Environmental Engineering
[9] University of East Anglia,undefined
[10] Norwich,undefined
[11] Leverhulme Centre for Wildfires,undefined
[12] Environment and Society,undefined
[13] Department of Physics,undefined
[14] Imperial College London,undefined
[15] South Kensington Campus,undefined
[16] University of Warwick,undefined
[17] University of Reading,undefined
[18] Whiteknights,undefined
[19] Technical University of Crete,undefined
[20] Chania,undefined
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Understanding and estimating regional climate change under different anthropogenic emission scenarios is pivotal for informing societal adaptation and mitigation measures. However, the high computational complexity of state-of-the-art climate models remains a central bottleneck in this endeavour. Here we introduce a machine learning approach, which utilises a unique dataset of existing climate model simulations to learn relationships between short-term and long-term temperature responses to different climate forcing scenarios. This approach not only has the potential to accelerate climate change projections by reducing the costs of scenario computations, but also helps uncover early indicators of modelled long-term climate responses, which is of relevance to climate change detection, predictability, and attribution. Our results highlight challenges and opportunities for data-driven climate modelling, especially concerning the incorporation of even larger model datasets in the future. We therefore encourage extensive data sharing among research institutes to build ever more powerful climate response emulators, and thus to enable faster climate change projections.
引用
收藏
相关论文
共 50 条
  • [1] Predicting global patterns of long-term climate change from short-term simulations using machine learning
    Mansfield, L. A.
    Nowack, P. J.
    Kasoar, M.
    Everitt, R. G.
    Collins, W. J.
    Voulgarakis, A.
    [J]. NPJ CLIMATE AND ATMOSPHERIC SCIENCE, 2020, 3 (01)
  • [2] Predicting long-term trends in physical properties from short-term molecular dynamics simulations using long short-term memory
    Noda, Kota
    Shibuta, Yasushi
    [J]. JOURNAL OF PHYSICS-CONDENSED MATTER, 2024, 36 (38)
  • [3] CLIMATE CHANGE:LONG-TERM TRENDS AND SHORT-TERM OSCILLATIONS
    高新全
    张欣
    钱维宏
    [J]. Journal of Tropical Meteorology, 2006, (02) : 139 - 149
  • [4] Climate change:: long-term targets and short-term commitments
    Corfee-Morlot, J
    Höhne, N
    [J]. GLOBAL ENVIRONMENTAL CHANGE-HUMAN AND POLICY DIMENSIONS, 2003, 13 (04): : 277 - 293
  • [5] Predicting climate change using an autoregressive long short-term memory model
    Chin, Seokhyun
    Lloyd, Victoria
    [J]. FRONTIERS IN ENVIRONMENTAL SCIENCE, 2024, 12
  • [6] Short-term tests validate long-term estimates of climate change
    Tim Palmer
    [J]. Nature, 2020, 582 : 185 - 186
  • [7] Short-term tests validate long-term estimates of climate change
    Palmer, Tim
    [J]. NATURE, 2020, 582 (7811) : 185 - 186
  • [8] SHORT-TERM VERSUS LONG-TERM PATTERNS
    MEURSINGE, JH
    [J]. TECHNOLOGY AND CULTURE, 1977, 18 (03) : 508 - 508
  • [9] Extinction risk controlled by interaction of long-term and short-term climate change
    Gregor H. Mathes
    Jeroen van Dijk
    Wolfgang Kiessling
    Manuel J. Steinbauer
    [J]. Nature Ecology & Evolution, 2021, 5 : 304 - 310
  • [10] Extinction risk controlled by interaction of long-term and short-term climate change
    Mathes, Gregor H.
    van Dijk, Jeroen
    Kiessling, Wolfgang
    Steinbauer, Manuel J.
    [J]. NATURE ECOLOGY & EVOLUTION, 2021, 5 (03) : 304 - 310