Application of Recurrent Neural Networks on El Nino Impact on California Climate
Abstract
Following our successful paper on the application for the El Nino season of 2015-2016 over Southern California, we use recurrent neural networks (RNNs) to investigate the complex interactions between the long-term trend in dryness and a projected, short but intense, period of wetness due to the 2015-2016 El Niño. Although it was forecasted that this El Niño season would bring significant rainfall to the region, our long-term projections of the Palmer Z Index (PZI) showed a continuing drought trend. We achieved a statistically significant correlation of 0.610 between forecasted and observed PZI on the validation set for a lead time of 1 month. This gives strong confidence to the forecasted precipitation indicator. These predictions were bourne out in the resulting data. This paper details the expansion of our system to the climate of the entire California climate as a whole, dealing with inter-relationships and spatial variations within the state.
- Publication:
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AGU Fall Meeting Abstracts
- Pub Date:
- December 2017
- Bibcode:
- 2017AGUFM.A41H2391L
- Keywords:
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- 3315 Data assimilation;
- ATMOSPHERIC PROCESSES;
- 0430 Computational methods and data processing;
- BIOGEOSCIENCES;
- 1816 Estimation and forecasting;
- HYDROLOGY;
- 7212 Earthquake ground motions and engineering seismology;
- SEISMOLOGY