An Empirical Blowing Snow Forecast Technique for the Canadian Arctic and the Prairie Provinces

Author:

Baggaley David G.1,Hanesiak John M.2

Affiliation:

1. Prairie and Arctic Storm Prediction Centre, Meteorological Service of Canada, Winnipeg, Manitoba, Canada

2. Centre for Earth Observation Science, Faculty of Environment, University of Manitoba, Winnipeg, Manitoba, Canada

Abstract

Abstract Blowing snow has a major impact on transportation and public safety. The goal of this study is to provide an operational technique for forecasting high-impact blowing snow on the Canadian arctic and the Prairie provinces using historical meteorological data. The focus is to provide some guidance as to the probability of reduced visibilities (e.g., less than 1 km) in blowing snow given a forecast wind speed and direction. The wind character associated with blowing snow was examined using a large database consisting of up to 40 yr of hourly observations at 15 locations in the Prairie provinces and at 17 locations in the arctic. Instances of blowing snow were divided into cases with and without concurrent falling snow. The latter group was subdivided by the time since the last snowfall in an attempt to account for aging processes of the snowpack. An empirical scheme was developed that could discriminate conditions that produce significantly reduced visibility in blowing snow using wind speed, air temperature, and time since last snowfall as predictors. This process was evaluated using actual hourly observations to compute the probability of detection, false alarm ratio, credibility, and critical success index. A critical success index as high as 66% was achieved. This technique can be used to give an objective first guess of the likelihood of high-impact blowing snow using common forecast parameters.

Publisher

American Meteorological Society

Subject

Atmospheric Science

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3. Simulation of an arctic ground blizzard using a coupled blowing snow–atmosphere model.;Dery;J. Hydrometeor.,2001

4. Wind Energy Resource Atlas of the United States.;Elliot,1986

5. The role of diurnal processes in the seasonal evolution of sea ice and its snow cover.;Hanesiak;J. Geophys. Res.,1999

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