Comparability Analyses of the SPI and RDI Meteorological Drought Indices in Different Climatic Zones

被引:0
作者
Davar Khalili
Tohid Farnoud
Hamed Jamshidi
Ali Akbar Kamgar-Haghighi
Shahrokh Zand-Parsa
机构
[1] Shiraz University,Water Engineering Department, College of Agriculture
来源
Water Resources Management | 2011年 / 25卷
关键词
Comparability analyses; Drought characteristics; Markov chain ; Log-likelihood; and ; tests;
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中图分类号
学科分类号
摘要
Comparability analyses are performed to investigate similarities/differences of the standard precipitation index (SPI) and the reconnaissance drought index (RDI), respectively, utilizing precipitation and ratio of precipitation over potential evapotranspiration (ET0). Data are from stations with different climatic conditions in Iran. Drought characteristics of the 3-month, 6-month and annual SPI and RDI time series are developed and Markov chain order dependencies are investigated by the Log-likelihood, AIC and BIC tests. Steady state probabilities and Markov chain characteristics, i.e., expected residence time in different drought classes and time to reach “Near Normal” class are investigated. According to results, both indices exhibit an overall similar behaviour; particularly, they follow the first order Markov chain dependency. However, climatic variability may produce some differences. In several cases, the “Extremely Dry” class has received a more critical value by RDI. Furthermore, the expected residence time of “Near Normal” class and expected time to reach “Near Normal” class are quite different in a number of cases. The results show that the RDI by utilizing the ET0 can be very sensitive to climatic variability. This is rather important, since if the drought analyses are for agricultural applications, utilization of the RDI would seem to serve a better purpose.
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页码:1737 / 1757
页数:20
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