Mixed geometric truncated poisson model for sequences of wet days

Present study is aimed to propose the mixture of geometric distribution with the truncated Poisson model (MGTPD) as the alternative probability model to describe the distribution of wet (dry) spells in daily rainfall events. In order to compare the performance of this new model with the other five e...

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Published in:Journal of Applied Sciences
Main Author: Deni S.M.; Jemain A.A.
Format: Article
Language:English
Published: 2008
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-67650087612&doi=10.3923%2fjas.2008.3975.3980&partnerID=40&md5=e89a2cddc65a47a3e78eee02e2bce914
id 2-s2.0-67650087612
spelling 2-s2.0-67650087612
Deni S.M.; Jemain A.A.
Mixed geometric truncated poisson model for sequences of wet days
2008
Journal of Applied Sciences
8
21
10.3923/jas.2008.3975.3980
https://www.scopus.com/inward/record.uri?eid=2-s2.0-67650087612&doi=10.3923%2fjas.2008.3975.3980&partnerID=40&md5=e89a2cddc65a47a3e78eee02e2bce914
Present study is aimed to propose the mixture of geometric distribution with the truncated Poisson model (MGTPD) as the alternative probability model to describe the distribution of wet (dry) spells in daily rainfall events. In order to compare the performance of this new model with the other five existing probability models in fitting the distribution of wet spells, daily rainfall data from five stations over Peninsular Malaysia for the period of 1975 to 2004 was considered. In determining the most successfully fitted and the best fitting model to represent the observed distribution of wet spells at each station, a Chi-square goodness-of-fit test was used. The results demonstrated that all the data sets were found to successfully fit the new proposed model, the MGTPD. Moreover, this model was also found to produce a better fit than the existing mixed geometric with Poisson model (MGPD) in describing the distribution of wet spells over the five selected stations. © 2008 Asian Network for Scientific Information.

18125662
English
Article

author Deni S.M.; Jemain A.A.
spellingShingle Deni S.M.; Jemain A.A.
Mixed geometric truncated poisson model for sequences of wet days
author_facet Deni S.M.; Jemain A.A.
author_sort Deni S.M.; Jemain A.A.
title Mixed geometric truncated poisson model for sequences of wet days
title_short Mixed geometric truncated poisson model for sequences of wet days
title_full Mixed geometric truncated poisson model for sequences of wet days
title_fullStr Mixed geometric truncated poisson model for sequences of wet days
title_full_unstemmed Mixed geometric truncated poisson model for sequences of wet days
title_sort Mixed geometric truncated poisson model for sequences of wet days
publishDate 2008
container_title Journal of Applied Sciences
container_volume 8
container_issue 21
doi_str_mv 10.3923/jas.2008.3975.3980
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-67650087612&doi=10.3923%2fjas.2008.3975.3980&partnerID=40&md5=e89a2cddc65a47a3e78eee02e2bce914
description Present study is aimed to propose the mixture of geometric distribution with the truncated Poisson model (MGTPD) as the alternative probability model to describe the distribution of wet (dry) spells in daily rainfall events. In order to compare the performance of this new model with the other five existing probability models in fitting the distribution of wet spells, daily rainfall data from five stations over Peninsular Malaysia for the period of 1975 to 2004 was considered. In determining the most successfully fitted and the best fitting model to represent the observed distribution of wet spells at each station, a Chi-square goodness-of-fit test was used. The results demonstrated that all the data sets were found to successfully fit the new proposed model, the MGTPD. Moreover, this model was also found to produce a better fit than the existing mixed geometric with Poisson model (MGPD) in describing the distribution of wet spells over the five selected stations. © 2008 Asian Network for Scientific Information.
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