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Characterizing the Uncertainty and Assessing the Value of Gap-Filled Daily Rainfall Data in Hawaii

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Ryan J. Longman, Andrew J. Newman, Thomas Giambelluca, and Mathew Lucas, 2020-08-03, Characterizing the Uncertainty and Assessing the Value of Gap-Filled Daily Rainfall Data in Hawaii: Journal of Applied Meteorology and Climatology, v. 59, iss. 7, 1261–1276 p.

Summary

Almost all daily rainfall time series contain gaps in the instrumental record. Various methods can be used to fill in missing data using observations at neighboring sites (predictor stations). In this study, five computationally simple gap-filling approaches—normal ratio (NR), linear regression (LR), inverse distance weighting (ID), quantile mapping (QM), and single best estimator (BE)—are evaluated to 1) determine the optimal method for gap filling daily rainfall in Hawaii, 2) quantify the error associated with filling gaps of various size, and 3) determine the value of gap filling prior to spatial interpolation. Results show that the correlation between a target station and a predictor station is more important than proximity of [...]

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

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citationTypeJournal
journalJournal of Applied Meteorology and Climatology
parts
typeDOI
valuehttps://doi.org/10.1175/JAMC-D-20-0007.1
typePages
value1261–1276
typeVolume
value59
typeIssue
value7

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