C08: Predictability from a Multi-input Multi-output Autoencoder-decoder.

Full Title

Assessing Tropical Pacific-induced Predictability of Southern California Precipitation Using a Novel Multi-input Multi-output Autoencoder

First Author

  • @Salil Mahajan

  • mahajans@ornl.gov

All Authors

Salil Mahajan, Linsey Passarella

Topic

Coupled System, AI/ML, Atmosphere

Project

E3SM

Abstract

We construct a novel Multi-Input Multi-Output Autoencoder-decoder (MIMO-AE) to capture the non-linear relationship of Southern California precipitation and tropical Pacific Ocean sea surface temperature. The MIMO-AE is trained on both monthly TP-SST and SC-PRECIP anomalies simultaneously. The co-variability of the two fields in the MIMO-AE shared nonlinear latent space can be condensed into an index, termed the MIMO-AE index. We use a transfer learning approach to train a MIMO-AE on the combined dataset of 100 years of output from a historical simulation with the Energy Exascale Earth Systems Model version 1 and a segment of observational data. We further use Long Short-Term Memory networks to assess sub-seasonal predictability of SC-PRECIP using the MIMO-AE index. We find that the MIMO-AE index provides enhanced predictability of SC-PRECIP for a lead-time of up-to four months as compared to Nino 3.4 index and the El Nino Southern Oscillation Longitudinal Index.

In-person

yes

Poster

 

 

Discussion Link

mahajans@ornl.gov