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Developing Spatially Accurate Rainfall Predictions for the San Francisco Bay Area through Case Studies of Atmospheric River and other Synoptic Events
Atmosphere (2019)
  • Alison Bridger, San Jose State University
  • Dung Nguyen, San Jose State University
  • Sen Chiao, San Jose State University
Abstract
Rainfall patterns in the San Francisco Bay Area (SFBA) are highly influenced by local topography. It has been a forecasting challenge for the main US forecast models. This study investigates the ability of the Weather Research and Forecasting (WRF) model to improve upon forecasts, with particular emphasis on the rain shadow common to the southern end of the SFBA. Three rain events were evaluated: a mid-season atmospheric river (AR) event with copious rains; a typical non-AR frontal passage rain event; and an area-wide rain event in which zero rain was recorded in the southern SFBA. The results show that, with suitable choices of parameterizations, the WRF model with a resolution around 1 km can forecast the observed rainfall patterns with good accuracy, and would be suitable for operational use, especially to water and emergency managers. Additionally, the three synoptic situations were investigated for further insight into the common ingredients for either flooding rains or strong rain shadow events.
Keywords
  • WRF,
  • rain shadow,
  • microphysics,
  • California
Publication Date
September 12, 2019
DOI
10.3390/atmos10090541
Publisher Statement
This article was published in Atmosphere, volume 10, issue 9, 2019, and can also be found at this link. Authors retain copyright.

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Citation Information
Alison Bridger, Dung Nguyen and Sen Chiao. "Developing Spatially Accurate Rainfall Predictions for the San Francisco Bay Area through Case Studies of Atmospheric River and other Synoptic Events" Atmosphere Vol. 10 Iss. 9 (2019)
Available at: http://works.bepress.com/alison_bridger/2/
Creative Commons license
Creative Commons License
This work is licensed under a Creative Commons CC_BY International License.