2011
DOI: 10.1007/s00382-011-1173-3
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Statistical downscaling of historical monthly mean winds over a coastal region of complex terrain. I. Predicting wind speed

Abstract: Surface wind speed is a key climatic variable of interest in many applications, including assessments of storm-related infrastructure damage and feasibility studies of wind power generation. In this work and a companion paper (van der Kamp et al. 2011), the relationship between local surface wind and large-scale climate variables was studied using multiple regression analysis. The analysis was performed using monthly mean station data from British Columbia, Canada and large-scale climate variables (predictors)… Show more

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Cited by 29 publications
(19 citation statements)
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“…Weibull distribution function is given by (Curry et al 2012;Mohammadi and Mostafaeipour 2013b;Pryor et al 2005;Mohammadi et al 2014): where v, k and c are wind speed (m/s), shape factor (dimensionless) and scale factor (m/s), respectively. k resemble the potential of wind energy in the location and show how peaked the wind distribution is.…”
Section: Weibull Distribution Functionmentioning
confidence: 99%
“…Weibull distribution function is given by (Curry et al 2012;Mohammadi and Mostafaeipour 2013b;Pryor et al 2005;Mohammadi et al 2014): where v, k and c are wind speed (m/s), shape factor (dimensionless) and scale factor (m/s), respectively. k resemble the potential of wind energy in the location and show how peaked the wind distribution is.…”
Section: Weibull Distribution Functionmentioning
confidence: 99%
“…Wind speed has a low level of spatial representativeness (e.g., Droogers and Allen, 2002) because, in complex terrain, it varies within a small area that is influenced by local, dynamically or thermally induced circulations and obstacles or vegetation (e.g., Mengelkamp, 1999;Curry et al, 2012). The accuracy of estimation of the spatial distribution of wind speed is critical for predicting evapotranspiration using the Kondo et al (1992a) model.…”
Section: Differences In Model Performance In a High Dry-canopy Evapotmentioning
confidence: 99%
“…In order to predict wind resources of a local site in a future climate period, an empirically statistical downscaling model [9,22] with independent variables that are obtained from a General Circulation Model (GCM) simulation is involved in the framework. The downscaling model includes a multiple linear regression function which relates the site-specific Weibull parameters to three GCM output variables and their associated regression coefficients.…”
Section: A Statistical Downscaling Frameworkmentioning
confidence: 99%