The evaluation of regional frequency analyses methods for nonstationary data
Regional frequency analysis is widely used to estimate more reliable quantiles of extreme hydro-meteorological events. The stationarity of data is required for its application. This assumption tends to be violated due to climate change. In this paper, four nonstationary index flood models were u...
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2015-06-01
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doaj-edabf00ec6824af29e99a55a9cd9d3a82020-11-25T00:45:18ZengCopernicus PublicationsProceedings of the International Association of Hydrological Sciences2199-89812199-899X2015-06-01371959810.5194/piahs-371-95-2015The evaluation of regional frequency analyses methods for nonstationary dataW. Nam0S. Kim1H. Kim2K. Joo3J.-H. Heo4School of Civil and Environmental engineering, Yonsei University, Seoul, KoreaSchool of Civil and Environmental engineering, Yonsei University, Seoul, KoreaSchool of Civil and Environmental engineering, Yonsei University, Seoul, KoreaSchool of Civil and Environmental engineering, Yonsei University, Seoul, KoreaSchool of Civil and Environmental engineering, Yonsei University, Seoul, KoreaRegional frequency analysis is widely used to estimate more reliable quantiles of extreme hydro-meteorological events. The stationarity of data is required for its application. This assumption tends to be violated due to climate change. In this paper, four nonstationary index flood models were used to analyze the nonstationary regional data. Monte Carlo simulation was used to evaluate the performances of these models for the generalized extreme value distribution with linearly time varying location parameter and constant scale and shape parameters. As a results, it was found that the index flood model with time-invariant index flood and time-variant growth curve could yield more statistically efficient quantile when record is long enough to show significant nonstationarity.https://www.proc-iahs.net/371/95/2015/piahs-371-95-2015.pdf |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
W. Nam S. Kim H. Kim K. Joo J.-H. Heo |
spellingShingle |
W. Nam S. Kim H. Kim K. Joo J.-H. Heo The evaluation of regional frequency analyses methods for nonstationary data Proceedings of the International Association of Hydrological Sciences |
author_facet |
W. Nam S. Kim H. Kim K. Joo J.-H. Heo |
author_sort |
W. Nam |
title |
The evaluation of regional frequency analyses methods for nonstationary data |
title_short |
The evaluation of regional frequency analyses methods for nonstationary data |
title_full |
The evaluation of regional frequency analyses methods for nonstationary data |
title_fullStr |
The evaluation of regional frequency analyses methods for nonstationary data |
title_full_unstemmed |
The evaluation of regional frequency analyses methods for nonstationary data |
title_sort |
evaluation of regional frequency analyses methods for nonstationary data |
publisher |
Copernicus Publications |
series |
Proceedings of the International Association of Hydrological Sciences |
issn |
2199-8981 2199-899X |
publishDate |
2015-06-01 |
description |
Regional frequency analysis is widely used to estimate more reliable
quantiles of extreme hydro-meteorological events. The stationarity of data
is required for its application. This assumption tends to be violated due to
climate change. In this paper, four nonstationary index flood models were
used to analyze the nonstationary regional data. Monte Carlo simulation was
used to evaluate the performances of these models for the generalized
extreme value distribution with linearly time varying location parameter and
constant scale and shape parameters. As a results, it was found that the
index flood model with time-invariant index flood and time-variant growth
curve could yield more statistically efficient quantile when record is long
enough to show significant nonstationarity. |
url |
https://www.proc-iahs.net/371/95/2015/piahs-371-95-2015.pdf |
work_keys_str_mv |
AT wnam theevaluationofregionalfrequencyanalysesmethodsfornonstationarydata AT skim theevaluationofregionalfrequencyanalysesmethodsfornonstationarydata AT hkim theevaluationofregionalfrequencyanalysesmethodsfornonstationarydata AT kjoo theevaluationofregionalfrequencyanalysesmethodsfornonstationarydata AT jhheo theevaluationofregionalfrequencyanalysesmethodsfornonstationarydata AT wnam evaluationofregionalfrequencyanalysesmethodsfornonstationarydata AT skim evaluationofregionalfrequencyanalysesmethodsfornonstationarydata AT hkim evaluationofregionalfrequencyanalysesmethodsfornonstationarydata AT kjoo evaluationofregionalfrequencyanalysesmethodsfornonstationarydata AT jhheo evaluationofregionalfrequencyanalysesmethodsfornonstationarydata |
_version_ |
1725270954346545152 |