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Ingeniería, investigación y tecnología

versión On-line ISSN 2594-0732versión impresa ISSN 1405-7743

Resumen

ESCALANTE-SANDOVAL, C.. A Mixed distribution with EV1 and GEV components for analyzing heterogeneous samples. Ing. invest. y tecnol. [online]. 2007, vol.8, n.3, pp.123-133. ISSN 2594-0732.

Flood characteristics are required to solve several water-engineering problems. Traditional flood frequency analysis in volves the as sumption of homogeneity of the flood distribution. How ever, floods are of ten generated by distributions composed of a mixture of two or more populations. Differences between the populations may be the result, for instance, of the ENSO phenomenon. If these physical processes are not considered in conventional flood frequency analysis, the T-year flood estimate can be inefficient for design purposes. In order to model heterogeneous samples, a mixed distribution with Extreme Value Type I (EV1 or Gumbel) and General Extreme Value (GEV) components is proposed. A region in North western Mexico with 35 gauging stations has been selected to apply the model and at-site quantiles were estimated based on the maximum likelihood procedure. Results produced by fitting the EV1-GE V distribution were compared through the use of a goodness-of-fit test with those obtained by the mixed Gumbel and mixed GEV distributions. The EV1 -GEV distribution was the best op tion for the 40% of analyzed samples and thus it is suggested its application when modeling heterogeneous series in flood frequency analysis.

Palabras llave : Heterogeneous samples; flood frequency analysis; mixed distributions; maximum likelihood parameter estimation.

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