1. SPI Drought Class Predictions Driven by the North Atlantic Oscillation Index Using Log-Linear Modeling
- Author
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Elsa Moreira, Carlos L. Pires, and Luis S. Pereira
- Subjects
Index (economics) ,lcsh:Hydraulic engineering ,010504 meteorology & atmospheric sciences ,0208 environmental biotechnology ,Geography, Planning and Development ,Forecast skill ,02 engineering and technology ,Forcing (mathematics) ,Aquatic Science ,01 natural sciences ,Biochemistry ,Odds ,3-dimensional log-linear models ,lcsh:Water supply for domestic and industrial purposes ,lcsh:TC1-978 ,Statistics ,Precipitation ,confidence intervals ,0105 earth and related environmental sciences ,Water Science and Technology ,Mathematics ,lcsh:TD201-500 ,drought class transitions ,odds ,Confidence interval ,020801 environmental engineering ,13. Climate action ,North Atlantic oscillation ,Climatology ,Log-linear model - Abstract
This study aims at predicting the Standard Precipitation Index (SPI) drought class transitions in Portugal, considering the influence of the North Atlantic Oscillation (NAO) as one of the main large-scale atmospheric drivers of precipitation and drought fields across the Western European and Mediterranean areas. Log-linear modeling of the drought class transition probabilities on three temporal steps (dimensions) was used in an SPI time series of six- and 12-month time scales (SPI6 and SPI12) obtained from Global Precipitation Climatology Centre (GPCC) precipitation datasets with 1.0 degree of spatial resolution for 10 grid points over Portugal and a length of 112 years (1902–2014). The aim was to model two monthly transitions of SPI drought classes under the influence of the NAO index in its negative and positive phase in order to obtain improvements in the predictions relative to the modeling not including the NAO index. The ratios (odds ratio) between transitional probabilities and their confidence intervals were computed in order to estimate the probability of one drought class transition over another. The prediction results produced by the model with the forcing of NAO were compared with the results produced by the same model without that forcing, using skill scores computed for the entire time series length. Overall results have shown good prediction performance, ranging from 73% to 76% in the percentage of corrects (PC) and 56%–62% in the Heidke skill score (HSS) regarding the SPI6 application and ranging from 82% to 85% in the PC and 72%–76% in the HSS for the SPI12 application. The model with the NAO forcing led to improvements in predictions of about 1%–6% (PC) and 1%–8% (HSS), when applied to SPI6, but regarding SPI12 only seven of the locations presented slight improvements of about 0.4%–1.8% (PC) and 0.7%–3% (HSS).
- Published
- 2016