Deep learning and process understanding for data-driven Earth system science

Nature. 2019 Feb;566(7743):195-204. doi: 10.1038/s41586-019-0912-1. Epub 2019 Feb 13.

Abstract

Machine learning approaches are increasingly used to extract patterns and insights from the ever-increasing stream of geospatial data, but current approaches may not be optimal when system behaviour is dominated by spatial or temporal context. Here, rather than amending classical machine learning, we argue that these contextual cues should be used as part of deep learning (an approach that is able to extract spatio-temporal features automatically) to gain further process understanding of Earth system science problems, improving the predictive ability of seasonal forecasting and modelling of long-range spatial connections across multiple timescales, for example. The next step will be a hybrid modelling approach, coupling physical process models with the versatility of data-driven machine learning.

Publication types

  • Research Support, Non-U.S. Gov't
  • Review

MeSH terms

  • Big Data*
  • Computer Simulation*
  • Deep Learning*
  • Earth Sciences / methods*
  • Facial Recognition
  • Female
  • Forecasting / methods*
  • Geographic Mapping
  • Humans
  • Knowledge
  • Pattern Recognition, Automated / methods*
  • Regression, Psychology
  • Reproducibility of Results
  • Seasons
  • Spatio-Temporal Analysis
  • Time Factors
  • Translating
  • Uncertainty
  • Weather