A resampling procedure for generating conditioned daily weather sequences

Martyn P. Clark, Subhrendu Gangopadhyay, David Brandon, Kevin Werner, Lauren Hay, Balaji Rajagopalan, David Yates

Research output: Contribution to journalArticlepeer-review

55 Scopus citations

Abstract

[1] A method is introduced to generate conditioned daily precipitation and temperature time series at multiple stations. The method resamples data from the historical record "nens" times for the period of interest (nens = number of ensemble members) and reorders the ensemble members to reconstruct the observed spatial (intersite) and temporal correlation statistics. The weather generator model is applied to 2307 stations in the contiguous United States and is shown to reproduce the observed spatial correlation between neighboring stations, the observed correlation between variables (e.g., between precipitation and temperature), and the observed temporal correlation between subsequent days in the generated weather sequence. The weather generator model is extended to produce sequences of weather that are conditioned on climate indices (in this case the Niño 3.4 index). Example illustrations of conditioned weather sequences are provided for a station in Arizona (Petrified Forest, 34.8°N, 109.9°W), where El Niño and La Niña conditions have a strong effect on winter precipitation. The conditioned weather sequences generated using the methods described in this paper are appropriate for use as input to hydrologic models to produce multiseason forecasts of streamflow.

Original languageEnglish
Pages (from-to)W043041-W0430415
JournalWater Resources Research
Volume40
Issue number4
DOIs
StatePublished - Apr 2004

Keywords

  • Hydroclimatology
  • Prediction
  • Stochastic hydrology

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