Louis T. SteyaertSharon K. LeDucN. D. StrommenM. Lawrence NicodemusNathaniel B. Guttman
Engineering design must take into consideration natural loads and stresses caused by meteorological elements, such as, wind, snow, precipitation and temperature. The purpose of this study was to determine a relationship of water equivalent snow depth measurements to meteorological variables. Several predictor models were evaluated for use in estimating water equivalent values. These models include linear regression, principal component regression, and non-linear regression models. Linear, non-linear and Scandanavian models are used to generate annual water equivalent estimates for approximately 1100 cooperative data stations where predictor variables are available, but which have no water equivalent measurements. These estimates are used to develop probability estimates of snow load for each station. Map analyses for 3 probability levels are presented.
D. F. HillElizabeth A. BurakowskiRyan CrumleyJulia KeonJ. Michelle HuA. A. ArendtKatreen Wikstrom JonesG. J. Wolken
Nicolas GuyennonMauro ValtFranco SalernoAnna Bruna PetrangeliEmanuele Romano
Tobias JonasChristoph MartyJan Magnusson
Zhiwei YangRensheng ChenZhangwen LiuWei Zhang
Matthew SturmBrian D. TarasGlen E. ListonChris DerksenTobias JonasJon Lea