Convection-allowing models offer forecasters unique insight into convective hazards relative to numerical models using parameterized convection. However, methods to best characterize the uncertainty of guidance derived from convection-allowing models are still unrefined. This paper proposes a method of deriving calibrated probabilistic forecasts of rare events from deterministic forecasts by fitting a parametric kernel density function to the model's historical spatial error characteristics. This kernel density function is then applied to individual forecast fields to produce probabilistic forecasts.
CITATION STYLE
Marsh, P. T., Kain, J. S., Lakshmanan, V., Clark, A. J., Hitchens, N. M., & Hardy, J. (2012). A Method for calibrating deterministic forecasts of rare events. Weather and Forecasting, 27(2), 531–538. https://doi.org/10.1175/WAF-D-11-00074.1
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