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. 1
Probabilistic forecast plays a major role in many applications where forecast is needed together wit...
A mesoscale model is used to investigate the mesoscale predictability of an extreme precipitation ev...
The verification of probabilistic forecasts in hydro-climatology is integral to their development, u...
One aim of the Warn-on-Forecast initiative is to transform the warning paradigm of rare convective e...
It is being increasingly recognized that the uncertainty in weather forecasts should be quantified a...
This study uses both traditional and newer verification methods to evaluate two 4-km grid-spacingWea...
AbstractMany operational weather services use ensembles of forecasts to generate probabilistic predi...
The current neighborhood probability (NP) method mainly considers the spatial displacement error in ...
Severe convective storms and associated hazards pose significant threats to life and property. There...
Since numerical weather prediction models are unable to accurately forecast the severity and the loc...
to diagnose persistent contrail occurrence from numerical weather prediction data is hindered by sig...
Convection-permitting weather forecasting models allow for prediction of rainfall events with increa...
As computer technology continues to improve, resources are becoming increasingly available for runni...
Computer models are often deterministic simulators used to predict several environmental phenomena. ...
[eng] The design of convection-permitting ensemble prediction systems capable of producing accurate ...
Probabilistic forecast plays a major role in many applications where forecast is needed together wit...
A mesoscale model is used to investigate the mesoscale predictability of an extreme precipitation ev...
The verification of probabilistic forecasts in hydro-climatology is integral to their development, u...
One aim of the Warn-on-Forecast initiative is to transform the warning paradigm of rare convective e...
It is being increasingly recognized that the uncertainty in weather forecasts should be quantified a...
This study uses both traditional and newer verification methods to evaluate two 4-km grid-spacingWea...
AbstractMany operational weather services use ensembles of forecasts to generate probabilistic predi...
The current neighborhood probability (NP) method mainly considers the spatial displacement error in ...
Severe convective storms and associated hazards pose significant threats to life and property. There...
Since numerical weather prediction models are unable to accurately forecast the severity and the loc...
to diagnose persistent contrail occurrence from numerical weather prediction data is hindered by sig...
Convection-permitting weather forecasting models allow for prediction of rainfall events with increa...
As computer technology continues to improve, resources are becoming increasingly available for runni...
Computer models are often deterministic simulators used to predict several environmental phenomena. ...
[eng] The design of convection-permitting ensemble prediction systems capable of producing accurate ...
Probabilistic forecast plays a major role in many applications where forecast is needed together wit...
A mesoscale model is used to investigate the mesoscale predictability of an extreme precipitation ev...
The verification of probabilistic forecasts in hydro-climatology is integral to their development, u...