4.7 Article

Accurate Attribution and Seasonal Prediction of Climatic Anomalies Using Causal Inference Theory

Journal

JOURNAL OF CLIMATE
Volume 35, Issue 23, Pages 4111-4124

Publisher

AMER METEOROLOGICAL SOC
DOI: 10.1175/JCLI-D-22-0033.1

Keywords

Monsoons; Climate prediction; Climate variability

Funding

  1. National Natural Science Foundation of China [42088101, 41690123, 41690120, 42105156, 41975074]
  2. Innovation Group Project of the Southern Marine Science and Engineering Guangdong Laboratory (Zhuhai) [311021001]
  3. Guangdong Province Key Laboratory for Climate Change and Natural Disaster Studies [2020B1212060025]
  4. Jiangsu Collaborative Innovation Centre for Climate Change

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This study applies causal inference theory to attribute climatic anomalies and demonstrates its advantage in prediction. The results show that even without large-sample-size data and substantial human intervention, the causal inference approach can reveal the causes of climatic anomalies and construct reliable predictive models.
Using features based on correlation or noncausal dependence metrics can lead to false conclusions. However, recent research has shown that applying causal inference theory in conjunction with Bayesian networks to large-sample-size data can accurately attribute synoptic anomalies. Focusing on the East Asian summer monsoon (EASM), this study adopts a causal inference approach with model averaging to investigate causation of interannual climate variability. We attribute the EASM variability to five winter climate phenomena; our result shows that the eastern Pacific El Nino-Southern Oscillation has the largest causal effect. We also show that the causal precursors of the EASM variability are interpretable in terms of physics. Using linear regression, these precursors can predict the EASM one season ahead, outperforming correlation-based empirical models and three climate models. This study shows that even without large-sample-size data and substantial human intervention, even laymen can implement the causal inference approach to investigate the causes of climatic anomalies and construct reliable empirical models for prediction. SIGNIFICANCE STATEMENT: We use causal inference theory to redesign the attribution procedure fundamentally and adjust a causal inference approach to commonly used climate research data. Our study shows that the causal inference approach can exhaustively reveal the causes of climatic anomalies with little human intervention, which is impossible for correlation-based studies. According to this attribution, one can construct models with a better predictive performance than the climate and correlation-based empirical models. Therefore, our causal inference approach will tremendously help both meteorologists and laymen (e.g., stakeholders and policymakers) accurately predict climate phenomena and reveal their interpretable causes. We recommend that it become a standard practice in attribution studies and operational prediction.

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