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Uncertainty analysis of the Standardized Precipitation Index in the presence of trend

Date

2009

Authors

Cancelliere, Antonino, author
Bonaccorso, Brunella, author
Colorado State University, publisher

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Abstract

The Standardized Precipitation Index (SPI) is an index widely used for drought monitoring purposes. Since its computation requires the preliminary fitting of a probability distribution to monthly precipitation aggregated at different time scales, the SPI value for a given year and a given month will depend on the particular sample of observed precipitation adopted for its estimation and in particular on the sample size. Furthermore, the presence of trend in the underlying precipitation will affect adversely the estimation of parameters, and therefore the computation of SPI. Objective of the present paper is to investigate the variability of the SPI with respect to the size of the sample used for estimating its parameters, either in the case of stationary or non stationary precipitation series. In particular, sampling properties of SPI, such as bias and root mean squared error (RMSE), are analytically derived assuming the underlying precipitation series without trend and normally distributed. Results related to the normal case can find application also in the case of other distributions, namely when sample data can be transformed into normal values (i.e. lognormal or cube root normal distributed data). Moreover, sampling properties when precipitation is affected by trend are investigated by means of Monte Carlo simulation. Results indicate that SPI values are significantly affected by the size of the sample adopted for its estimation. In particular, while for the case of underlying stationary series, RMSE tends asymptotically to zero as sample size increases as expected, in the presence of a linear trend a minimum RMSE value can be determined corresponding to a specific sample size. This suggests that an optimal sample size (in RMSE sense) can be determined, when the underlying series is affected by trend.

Description

2009 annual AGU hydrology days was held at Colorado State University on March 25 - March 27, 2009.
Includes bibliographical references.

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