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Detailed Reference Information |
Harrold, T.I., Sharma, A. and Sheather, S.J. (2003). A nonparametric model for stochastic generation of daily rainfall occurrence. Water Resources Research 39: doi: 10.1029/2003WR002182. issn: 0043-1397. |
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This paper presents a nonparametric model for generating single-site daily rainfall occurrence. The model is formulated to reproduce longer-term variability and low-frequency features such as drought and sustained wet periods, while still reproducing characteristics at daily time scales. Parsimony is achieved within a Markovian framework by using aggregate predictor variables that describe how wet it has been over a period of time. The use of a moving window to give a seasonally representative sample at any given time of year ensures an accurate representation of the seasonal variations present in the rainfall time series. Actual simulation proceeds by resampling from the historical record of rainfall occurrence, conditional to the current values of the associated predictors. The model is applied using historical daily rainfall occurrence from Sydney, Australia. We find that the use of multiple predictors specified at a daily level and at seasonal, annual, and multiyear aggregation levels leads to sequences that more closely reproduce the longer-term variability present in the historic records, compared to sequences produced by models incorporating only one or two predictors. |
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Abstract |
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Keywords
Hydrology, Precipitation, Hydrology, Reservoirs (surface), Hydrology, Stochastic processes |
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Publisher
American Geophysical Union 2000 Florida Avenue N.W. Washington, D.C. 20009-1277 USA 1-202-462-6900 1-202-328-0566 service@agu.org |
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