Probability Models and Statistical Tests for Extreme Precipitation Based on Generalized Negative Binomial Distributions

Mathematical models are proposed for statistical regularities of maximum daily precipitation within a wet period and total precipitation volume per wet period. The proposed models are based on the generalized negative binomial (GNB) distribution of the duration of a wet period. The GNB distribution...

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Main Authors: Victor Korolev, Andrey Gorshenin
Format: Article
Language:English
Published: MDPI AG 2020-04-01
Series:Mathematics
Subjects:
Online Access:https://www.mdpi.com/2227-7390/8/4/604
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spelling doaj-816eaddde0774b12842b999b926048122020-11-25T03:10:43ZengMDPI AGMathematics2227-73902020-04-01860460410.3390/math8040604Probability Models and Statistical Tests for Extreme Precipitation Based on Generalized Negative Binomial DistributionsVictor Korolev0Andrey Gorshenin1Moscow Center for Fundamental and Applied Mathematics, Lomonosov Moscow State University, 119991 Moscow, RussiaMoscow Center for Fundamental and Applied Mathematics, Lomonosov Moscow State University, 119991 Moscow, RussiaMathematical models are proposed for statistical regularities of maximum daily precipitation within a wet period and total precipitation volume per wet period. The proposed models are based on the generalized negative binomial (GNB) distribution of the duration of a wet period. The GNB distribution is a mixed Poisson distribution, the mixing distribution being generalized gamma (GG). The GNB distribution demonstrates excellent fit with real data of durations of wet periods measured in days. By means of limit theorems for statistics constructed from samples with random sizes having the GNB distribution, asymptotic approximations are proposed for the distributions of maximum daily precipitation volume within a wet period and total precipitation volume for a wet period. It is shown that the exponent power parameter in the mixing GG distribution matches slow global climate trends. The bounds for the accuracy of the proposed approximations are presented. Several tests for daily precipitation, total precipitation volume and precipitation intensities to be abnormally extremal are proposed and compared to the traditional PoT-method. The results of the application of this test to real data are presented.https://www.mdpi.com/2227-7390/8/4/604precipitationlimit theoremsstatistical testgeneralized negative binomial distributiongeneralized gamma distributionasymptotic approximations
collection DOAJ
language English
format Article
sources DOAJ
author Victor Korolev
Andrey Gorshenin
spellingShingle Victor Korolev
Andrey Gorshenin
Probability Models and Statistical Tests for Extreme Precipitation Based on Generalized Negative Binomial Distributions
Mathematics
precipitation
limit theorems
statistical test
generalized negative binomial distribution
generalized gamma distribution
asymptotic approximations
author_facet Victor Korolev
Andrey Gorshenin
author_sort Victor Korolev
title Probability Models and Statistical Tests for Extreme Precipitation Based on Generalized Negative Binomial Distributions
title_short Probability Models and Statistical Tests for Extreme Precipitation Based on Generalized Negative Binomial Distributions
title_full Probability Models and Statistical Tests for Extreme Precipitation Based on Generalized Negative Binomial Distributions
title_fullStr Probability Models and Statistical Tests for Extreme Precipitation Based on Generalized Negative Binomial Distributions
title_full_unstemmed Probability Models and Statistical Tests for Extreme Precipitation Based on Generalized Negative Binomial Distributions
title_sort probability models and statistical tests for extreme precipitation based on generalized negative binomial distributions
publisher MDPI AG
series Mathematics
issn 2227-7390
publishDate 2020-04-01
description Mathematical models are proposed for statistical regularities of maximum daily precipitation within a wet period and total precipitation volume per wet period. The proposed models are based on the generalized negative binomial (GNB) distribution of the duration of a wet period. The GNB distribution is a mixed Poisson distribution, the mixing distribution being generalized gamma (GG). The GNB distribution demonstrates excellent fit with real data of durations of wet periods measured in days. By means of limit theorems for statistics constructed from samples with random sizes having the GNB distribution, asymptotic approximations are proposed for the distributions of maximum daily precipitation volume within a wet period and total precipitation volume for a wet period. It is shown that the exponent power parameter in the mixing GG distribution matches slow global climate trends. The bounds for the accuracy of the proposed approximations are presented. Several tests for daily precipitation, total precipitation volume and precipitation intensities to be abnormally extremal are proposed and compared to the traditional PoT-method. The results of the application of this test to real data are presented.
topic precipitation
limit theorems
statistical test
generalized negative binomial distribution
generalized gamma distribution
asymptotic approximations
url https://www.mdpi.com/2227-7390/8/4/604
work_keys_str_mv AT victorkorolev probabilitymodelsandstatisticaltestsforextremeprecipitationbasedongeneralizednegativebinomialdistributions
AT andreygorshenin probabilitymodelsandstatisticaltestsforextremeprecipitationbasedongeneralizednegativebinomialdistributions
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