Extreme Precipitation Seasonal Forecast Using a Transformer Neural
Network
- URL: http://arxiv.org/abs/2107.06846v1
- Date: Wed, 14 Jul 2021 17:02:15 GMT
- Title: Extreme Precipitation Seasonal Forecast Using a Transformer Neural
Network
- Authors: Daniel Salles Civitarese, Daniela Szwarcman, Bianca Zadrozny, Campbell
Watson
- Abstract summary: We present an approach to forecasting the quantiles of the maximum daily precipitation in each week up to six months ahead using the temporal fusion transformer (TFT) model.
Our results show that, in terms of quantile risk at six month lead time, the TFT predictions significantly outperform those from S5 and show an overall small improvement compared to climatology.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: An impact of climate change is the increase in frequency and intensity of
extreme precipitation events. However, confidently predicting the likelihood of
extreme precipitation at seasonal scales remains an outstanding challenge.
Here, we present an approach to forecasting the quantiles of the maximum daily
precipitation in each week up to six months ahead using the temporal fusion
transformer (TFT) model. Through experiments in two regions, we compare TFT
predictions with those of two baselines: climatology and a calibrated ECMWF
SEAS5 ensemble forecast (S5). Our results show that, in terms of quantile risk
at six month lead time, the TFT predictions significantly outperform those from
S5 and show an overall small improvement compared to climatology. The TFT also
responds positively to departures from normal that climatology cannot.
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