Comparing Methods for the Regionalization of Intensity−Duration−Frequency (IDF) Curve Parameters in Sparsely-Gauged and Ungauged Areas of Central Chile
Creators
- 1. UNESCO Chair Surface Hydrology, University of Talca, Talca 3467769, Chile
- 2. Centro Nacional de Excelencia Para la Industria de la Madera (CENAMAD), Pontificia Universidad Católica de Chile, Santiago 7810128, Chile
- 3. Instituto Interdisciplinario Para la Innovación, Universidad de Talca, Talca 3467769, Chile
- 4. Facultad de Ciencias Forestales y de la Conservación de la Naturaleza, Universidad de Chile, La Pintana, Santiago 8820808, Chile
- 5. University of Chile
- 6. School of Water, Energy and Environment, Cranfield University, Cranfield MK43 0AL, UK
- 7. Facultad de Ingeniería, Universidad del Desarrollo, Avenida Plaza 600, Santiago 7610687, Chile
- 8. Department of Civil and Environmental Engineering, Colorado School of Mines, Golden, CO 80401, USA
- 9. Dirección de Transferencia Tecnológica, Universidad Tecnológica Metropolitana, Santiago 8330367, Chile
- 10. Dirección General de Aguas, Ministerio de Obras Públicas, Santiago 8340652, Chile
- 11. Ecosystems, Productivity and Climate Change, Bioforest SA, Camino a Coronel km 15, Coronel 413000, Chile
Description
Estimating intensity−duration−frequency (IDF) curves requires local historical information of precipitation intensity. When such information is unavailable, as in areas without rain gauges, it is necessary to consider other methods to estimate curve parameters. In this study, three methods were explored to estimate IDF curves in ungauged areas: Kriging (KG), Inverse Distance Weighting (IDW), and Storm Index (SI). To test the viability of these methods, historical data collected from 31 rain gauges distributed in central Chile, 35° S to 38° S, are used. As a result of the reduced number of rain gauges to evaluate the performance of each method, we used LOOCV (Leaving One Out Cross Validation). The results indicate that KG was limited due to the sparse distribution of rain gauges in central Chile. SI (a linear scaling method) showed the smallest prediction error in all of the ungauged locations, and outperformed both KG and IDW. However, the SI method does not provide estimates of uncertainty, as is possible with KG. The simplicity of SI renders it a viable method for extrapolating IDF curves to locations without data in the central zone of Chile.
Open Access
Licence Attribution (CC BY)
Publisher Website
Access full text
Publication Details
Journal article
Persistent Identifiers
DOI
10.3390/hydrology10090179
Read more
References
Singh . IDF Curves Using the Frank Archimedean Copula, J. Hydrol. Eng.. 2007; 12...
Read more
Cressie, N.A.C. (1993). Statistics for Spatial Data, John Wiley & Sons, Inc.
Read more
Fagerland, M.W. (2012). T-Tests, Non-Parametric Tests, and Large Studies\u2014A ...
Read more
Alila . A Hierarchical Approach for the Regionalization of Precipitation Annual ...
Read more
Willems . Compound Intensity/Duration/Frequency-Relationships of Extreme Precipi...
Read more
Showing first 5 of 64 references.