Improved subseasonal prediction of South Asian monsoon rainfall using data-driven forecasts of oscillatory modes.

Proc Natl Acad Sci U S A

Geosciences Department and Laboratoire de Météorologie Dynamique (CNRS and Institut Pierre-Simon Laplace), École Normale Supérieure and Paris Sciences et Lettres University, Paris, France 75005.

Published: April 2024

AI Article Synopsis

  • Predicting South Asian monsoon rainfall is crucial for agriculture, water supply, and flood management, with the monsoon intraseasonal oscillation (MISO) playing a key role in rainfall patterns.
  • Current atmospheric models struggle with MISO prediction, while data-driven methods have shown more success but only cover part of the rainfall signal.
  • This study combines advanced atmospheric model forecasts with data-driven MISO predictions to improve rainfall forecasting accuracy in the region, particularly for 10- to 30-day lead times, demonstrating the benefits of integrating different forecasting approaches.

Article Abstract

Predicting the temporal and spatial patterns of South Asian monsoon rainfall within a season is of critical importance due to its impact on agriculture, water availability, and flooding. The monsoon intraseasonal oscillation (MISO) is a robust northward-propagating mode that determines the active and break phases of the monsoon and much of the regional distribution of rainfall. However, dynamical atmospheric forecast models predict this mode poorly. Data-driven methods for MISO prediction have shown more skill, but only predict the portion of the rainfall corresponding to MISO rather than the full rainfall signal. Here, we combine state-of-the-art ensemble precipitation forecasts from a high-resolution atmospheric model with data-driven forecasts of MISO. The ensemble members of the detailed atmospheric model are projected onto a lower-dimensional subspace corresponding to the MISO dynamics and are then weighted according to their distance from the data-driven MISO forecast in this subspace. We thereby achieve improvements in rainfall forecasts over India, as well as the broader monsoon region, at 10- to 30-d lead times, an interval that is generally considered to be a predictability gap. The temporal correlation of rainfall forecasts is improved by up to 0.28 in this time range. Our results demonstrate the potential of leveraging the predictability of intraseasonal oscillations to improve extended-range forecasts; more generally, they point toward a future of combining dynamical and data-driven forecasts for Earth system prediction.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11009656PMC
http://dx.doi.org/10.1073/pnas.2312573121DOI Listing

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