4.7 Article

On temporal stochastic modeling of precipitation, nesting models across scales

期刊

ADVANCES IN WATER RESOURCES
卷 63, 期 -, 页码 152-166

出版社

ELSEVIER SCI LTD
DOI: 10.1016/j.advwatres.2013.11.006

关键词

Stochastic rainfall models; Poisson cluster model; Multiplicative Random Cascade; Markov chain; Alternating renewal process

资金

  1. Swiss National Science Foundation [20021-120310]

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We analyze the performance of composite stochastic models of temporal precipitation which can satisfactorily reproduce precipitation properties across a wide range of temporal scales. The rationale is that a combination of stochastic precipitation models which are most appropriate for specific limited temporal scales leads to better overall performance across a wider range of scales than single models alone. We investigate different model combinations. For the coarse (daily) scale these are models based on Alternating renewal processes, Markov chains, and Poisson cluster models, which are then combined with a microcanonical Multiplicative Random Cascade model to disaggregate precipitation to finer (minute) scales. The composite models were tested on data at four sites in different climates. The results show that model combinations improve the performance in key statistics such as probability distributions of precipitation depth, autocorrelation structure, intermittency, reproduction of extremes, compared to single models. At the same time they remain reasonably parsimonious. No model combination was found to outperform the others at all sites and for all statistics, however we provide insight on the capabilities of specific model combinations. The results for the four different climates are similar, which suggests a degree of generality and wider applicability of the approach. (C) 2013 Elsevier Ltd. All rights reserved.

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