4.5 Article

A Landsat-Era Sierra Nevada Snow Reanalysis (1985-2015)

期刊

JOURNAL OF HYDROMETEOROLOGY
卷 17, 期 4, 页码 1203-1221

出版社

AMER METEOROLOGICAL SOC
DOI: 10.1175/JHM-D-15-0177.1

关键词

Physical Meteorology and Climatology; Snowpack; Data assimilation; Observational techniques and algorithms; Geographic location/entity; Bayesian methods; Mathematical and statistical techniques; Remote sensing; Atm/Ocean Structure/ Phenomena; Models and modeling; Complex terrain

资金

  1. NASA NEWS project [NNX15AD16G]
  2. NASA Earth System Science Fellowship [NNX11AL58H]
  3. National Science Foundation [EAR-1246473]
  4. NASA [NNX15AD16G, 809672] Funding Source: Federal RePORTER

向作者/读者索取更多资源

A newly developed state-of-the-art snow water equivalent (SWE) reanalysis dataset over the Sierra Nevada (United States) based on the assimilation of remotely sensed fractional snow-covered area data over the Landsat 5-8 record (1985-2015) is presented. The method (fully Bayesian), resolution (daily and 90 m), temporal extent (31 years), and accuracy provide a unique dataset for investigating snow processes. The verified dataset (based on a comparison with over 9000 station years of in situ data) exhibited mean and root-mean-square errors less than 3 and 13 cm, respectively, and correlation greater than 0.95 compared with in situ SWE observations. The reanalysis dataset was used to characterize the peak SWE climatology to provide a basic accounting of the stored snowpack water in the Sierra Nevada over the last 31 years. The pixel-wise peak SWE volume over the domain was found to be 20.0 km(3) on average with a range of 4.0-40.6 km(3). The ongoing drought in California contains the two lowest snowpack years (water years 2014 and 2015) and three of the four driest years over the examined record. It was found that the basin-average peak SWE, while underestimating the total water storage in snowpack over the year, accurately captures the interannual variability in stored snowpack water. However, the results showed that the assumption that 1 April SWE is representative of the peak SWE can lead to significant underestimation of basin-average peak SWE both on an average (21% across all basins) and on an interannual basis (up to 98% across all basin years).

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