Appropriate application of the standardized precipitation index in arid locations and dry seasons

The Standardized Precipitation Index (SPI) is now widely used throughout the world in both a research and an operational mode. For arid climates, or those with a distinct dry season where zero values are common, the SPI at short time scales is lower bounded, referring to non-normally distributed in this study. In these cases, the SPI is always greater than a certain value and fails to indicate a drought occurrence. The nationwide statistics based on our study suggest that the non-normality rates are closely related to local precipitation climates. In the eastern United States, SPI values at short time scales can be used in drought/flood monitoring and research in any season, while in the western United States, because of its distinct seasonal precipitation distribution, the appropriate usage and interpretation of this index becomes complicated. This would also be the case for all arid climates. From a mathematical point of view, the non-normally distributed SPI is caused by a high probability of no-rain cases represented in the mixed distribution that is employed in the SPI construction. From a statistical point of view, the 2-parameter gamma model used to estimate the precipitation probability density function and the limited sample size in dry areas and times would also reduce the confidence of the SPI values. On the basis of the results identified within this study, we recommend that the SPI user be cautious when applying short-time-scale SPIs in arid climatic regimes, and interpret the SPI values appropriately. In dry climates, the user should focus on the duration of the drought rather than on just its severity. It is also worth noting that the SPI results from a statistical product of the input data. This character makes it difficult to link the SPI data to the physical functioning of the Earth system. Copyright © 2006 Royal Meteorological Society.

[1]  Milton Abramowitz,et al.  Handbook of Mathematical Functions with Formulas, Graphs, and Mathematical Tables , 1964 .

[2]  H. Thom Some methods of climatological analysis , 1966 .

[3]  H. Madsen,et al.  Estimation of regional intensity-duration-frequency curves for extreme precipitation , 1998 .

[4]  R. Geary Testing for normality. , 1947, Biometrika.

[5]  Michael J. Hayes,et al.  The effect of the length of record on the standardized precipitation index calculation , 2005 .

[6]  F. KEMAL. SÖNMEZ,et al.  An Analysis of Spatial and Temporal Dimension of Drought Vulnerability in Turkey Using the Standardized Precipitation Index , 2005 .

[7]  D. C. Edwards,et al.  Characteristics of 20th Century Drought in the United States at Multiple Time Scales. , 1997 .

[8]  G. Brier,et al.  Some applications of statistics to meteorology , 1958 .

[9]  T. McKee,et al.  THE RELATIONSHIP OF DROUGHT FREQUENCY AND DURATION TO TIME SCALES , 1993 .

[10]  N. Guttman ACCEPTING THE STANDARDIZED PRECIPITATION INDEX: A CALCULATION ALGORITHM 1 , 1999 .

[11]  N. Guttman COMPARING THE PALMER DROUGHT INDEX AND THE STANDARDIZED PRECIPITATION INDEX 1 , 1998 .

[12]  N. Guttman On the Sensitivity of Sample L Moments to Sample Size , 1994 .

[13]  D. Wilks Maximum Likelihood Estimation for the Gamma Distribution Using Data Containing Zeros , 1990 .

[14]  H. Thode Testing For Normality , 2002 .

[15]  B. Lloyd‐Hughes,et al.  A drought climatology for Europe , 2002 .