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Optimizing Automated Kriging to Improve Spatial Interpolation of Monthly Rainfall over Complex Terrain

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Matthew P. Lucas, Ryan J. Longman, Thomas Giambelluca, Abby Frazier, Jared Mclean, Sean Cleveland, Yu-Fen Huang, and Jonghyun Lee, 2022-04-11, Optimizing Automated Kriging to Improve Spatial Interpolation of Monthly Rainfall over Complex Terrain: Journal of Hydrometeorology, v. 23, iss. 4, 561–572 p.

Summary

Gridded monthly rainfall estimates can be used for a number of research applications, including hydrologic modeling and weather forecasting. Automated interpolation algorithms, such as the “autoKrige” function in R, can produce gridded rainfall estimates that validate well but produce unrealistic spatial patterns. In this work, an optimized geostatistical kriging approach is used to interpolate relative rainfall anomalies, which are then combined with long-term means to develop the gridded estimates. The optimization consists of the following: 1) determining the most appropriate offset (constant) to use when log-transforming data; 2) eliminating poor quality data prior to interpolation; 3) detecting erroneous maps using a machine learning [...]

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  • National and Regional Climate Adaptation Science Centers
  • Pacific Islands CASC

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citationTypeJournal
journal Journal of Hydrometeorology
parts
typeDOI
valuedoi.org/10.1175/JHM-D-21-0171.1
typeVolume
value23
typeIssue
value4
typePages
value561–572

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