Area-covering postprocessing of ensemble precipitation forecasts using topographical and seasonal conditions

12/26/2019
by   Lea Friedli, et al.
0

Probabilistic weather forecasts from ensemble systems require statistical postprocessing to yield calibrated and sharp predictive distributions. This paper presents an area-covering postprocessing method for ensemble precipitation predictions. We rely on the ensemble model output statistics (EMOS) approach, which generates probabilistic forecasts with a parametric distribution whose parameters depend on (statistics of) the ensemble prediction. A case study with daily precipitation predictions across Switzerland highlights that postprocessing at observation locations indeed improves high-resolution ensemble forecasts, with 4.5 average in the case of a lead time of 1 day. Our main aim is to achieve such an improvement without binding the model to stations, by leveraging topographical covariates. Specifically, regression coefficients are estimated by weighting the training data in relation to the topographical similarity between their station of origin and the prediction location. In our case study, this approach is found to reproduce the performance of the local model without using local historical data for calibration. We further identify that one key difficulty is that postprocessing often degrades the performance of the ensemble forecast during summer and early autumn. To mitigate, we additionally estimate on the training set whether postprocessing at a specific location is expected to improve the prediction. If not, the direct model output is used. This extension reduces the CRPS of the topographical model by up to another 1.7 the price of a slight degradation in calibration. In this case, the highest improvement is achieved for a lead time of 4 days.

READ FULL TEXT

page 13

page 20

research
08/18/2020

Seamless multi-model postprocessing for air temperature forecasts in complex topography

Statistical postprocessing is routinely applied to correct systematic er...
research
03/15/2019

Probabilistic Temperature Forecasting with a Heteroscedastic Autoregressive Ensemble Postprocessing model

Weather prediction today is performed with numerical weather prediction ...
research
09/11/2018

Statistical post-processing of ensemble forecasts of temperature in Santiago de Chile

Currently all major meteorological centres generate ensemble forecasts u...
research
01/04/2022

Probabilistic prediction of the time to hard freeze using seasonal weather forecasts and survival time methods

Agricultural food production and natural ecological systems depend on a ...
research
03/11/2020

Probabilistic prediction of COVID-19 infections for China and Italy, using an ensemble of stochastically-perturbed logistic curves

The spread of COVID-19 has put countries under enormous strain, and any ...
research
10/24/2018

Local calibration of verbal autopsy algorithms

Computer-coded-verbal-autopsy (CCVA) algorithms used to generate burden-...
research
03/16/2021

Self-Validated Ensemble Models for Design of Experiments

In this paper we introduce a new model building algorithm called self-va...

Please sign up or login with your details

Forgot password? Click here to reset