Improving probabilistic ensemble forecasts of convection through the application of QPF-POP relationships

Thumbnail Image
Date
2010-01-01
Authors
Schaffer, Christopher
Major Professor
Advisor
William A. Gallus
Committee Member
Journal Title
Journal ISSN
Volume Title
Publisher
Altmetrics
Authors
Research Projects
Organizational Units
Organizational Unit
Geological and Atmospheric Sciences

The Department of Geological and Atmospheric Sciences offers majors in three areas: Geology (traditional, environmental, or hydrogeology, for work as a surveyor or in mineral exploration), Meteorology (studies in global atmosphere, weather technology, and modeling for work as a meteorologist), and Earth Sciences (interdisciplinary mixture of geology, meteorology, and other natural sciences, with option of teacher-licensure).

History
The Department of Geology and Mining was founded in 1898. In 1902 its name changed to the Department of Geology. In 1965 its name changed to the Department of Earth Science. In 1977 its name changed to the Department of Earth Sciences. In 1989 its name changed to the Department of Geological and Atmospheric Sciences.

Dates of Existence
1898-present

Historical Names

  • Department of Geology and Mining (1898-1902)
  • Department of Geology (1902-1965)
  • Department of Earth Science (1965-1977)
  • Department of Earth Sciences (1977-1989)

Related Units

Journal Issue
Is Version Of
Versions
Series
Department
Geological and Atmospheric Sciences
Abstract

Quantitative precipitation forecasts provide an accumulated precipitation amount for a given

time period, and accurate forecasts depend on the correct prediction of areal coverage,

timing, and intensity of precipitation. These forecasts are important to a variety of people for

many different purposes, so expressing a likelihood of precipitation is also useful. Most

simply, probabilities of precipitation are determined by considering the percentage of

ensemble members forecasting precipitation greater than a specified threshold amount.

Probabilities of precipitation can also be formed from quantitative precipitation forecasts

through statistical post-processing. Past research has shown that there are many ways to

post-process precipitation data, such as by binning the precipitation amounts, applying

statistical calibration, and/or considering the percentage of an area receiving precipitation.

The main goal of this study was to expand upon relationships between quantitative

precipitation forecasts and probabilities of precipitation by developing new approaches that

yield more accurate probabilities of precipitation than methods that are currently more

commonly used. Ensemble forecasts from the 2007 and 2008 NOAA Hazardous Weather

Testbed Spring Experiments were used to provide quantitative precipitation forecasts for

various days. In the study, four main approaches were developed and tested extensively

using Brier scores and other statistics. Brier scores for different approaches were compared

to traditional methods of calculating probabilities of precipitation. It was shown at both 20

km and 4 km grid spacings that new approaches were able to produce statistically significantly better forecasts than a traditional method that relies upon calibration of POP forecasts derived using equal-weighting of ensemble members. A deterministic approach developed during the study was also able to produce forecasts comparable to those of the calibrated traditional method.

Comments
Description
Keywords
Citation
Source
Subject Categories
Copyright
Fri Jan 01 00:00:00 UTC 2010