Network-Based Approach and Climate Change Benefits for Forecasting the Amount of Indian Monsoon Rainfall

Jingfang Fan, Jun Meng, Josef Ludescher, Zhaoyuan Li, Elena Surovyatkina, Xiaosong Chen, Jürgen Kurths, Hans Joachim Schellnhuber

Research output: Contribution to journalArticlepeer-review

16 Scopus citations

Abstract

Despite the development of sophisticated statistical and dynamical climate models, a relative long-term and reliable prediction of the Indian summer monsoon rainfall (ISMR) has remained a challenging problem. Toward achieving this goal, here we construct a series of dynamical and physical climate networks based on the global near-surface air temperature field. We show that some characteristics of the directed and weighted climate networks can serve as efficient longterm predictors for ISMR forecasting. The developed prediction method produces a forecasting skill of 0.54 (Pearson correlation) with a 5-month lead time by using the previous calendar year's data. The skill of our ISMR forecast is better than that of operational forecasts models, which have, however, quite a short lead time. We discuss the underlying mechanism of our predictor and associate it with network-ENSO and ENSO-monsoon connections. Moreover, our approach allows predicting the all-India rainfall, as well as the rainfall different homogeneous Indian regions, which is crucial for agriculture in India. We reveal that global warming affects the climate network by enhancing cross-equatorial teleconnections between the southwest Atlantic, the western part of the Indian Ocean, and the North Asia-Pacific region, with significant impacts on the precipitation in India. A stronger connection through the chain of the main atmospheric circulations patterns benefits the prediction of the amount of rainfall. We uncover a hotspot area in the midlatitude South Atlantic, which is the basis for our predictor, the southwest Atlantic subtropical index (SWAS index). Remarkably, the significant warming trend in this area yields an improvement of the prediction skill.

Original languageEnglish
Pages (from-to)1009-1020
Number of pages12
JournalJournal of Climate
Volume35
Issue number3
DOIs
StatePublished - 1 Feb 2022
Externally publishedYes

Bibliographical note

Publisher Copyright:
© 2022 American Meteorological Society. All rights reserved.

Funding

Acknowledgments. We acknowledge S. Havlin, Y. Ashkenazy, Y. Zhang, and N. Yuan for their helpful suggestions. We thank the “East Africa Peru India Climate Capacities (EPICC)” project, which is part of the International Climate Initiative (IKI). The Federal Ministry for the Environment, Nature Conservation and Nuclear Safety (BMU) supports this initiative on the basis of a decision adopted by the German Bundestag. E. S. acknowledges the support from the RFBR (20-07-01071). L. Z. acknowledges the support from the PFRSF (PF01001160) and the NSFC (11901492).

FundersFunder number
PFRSFPF01001160
National Natural Science Foundation of China11901492
Russian Foundation for Basic Research20-07-01071

    Keywords

    • Climate change
    • ENSO
    • Monsoons
    • Statistical forecasting

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