2020
DOI: 10.1002/qj.3952
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Which precipitation forecasts to use? Deterministic versus coarser‐resolution ensemble NWP models

Abstract: Deterministic numerical weather prediction (NWP) models and ensemble NWP models are routinely run worldwide to assist weather forecasting. Deterministic forecasts are capable of capturing more detailed spatial features, while ensemble forecasts, often with a coarser resolution, have the ability to predict uncertainty in future conditions. A comparative understanding of the performance of these two types of forecasts is valuable for both users of NWP products and model developers. Past published comparisons ten… Show more

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Cited by 18 publications
(6 citation statements)
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“…(6) MAE , which can be considered as the CRPS for deterministic forecasts (Hersbach, 2000), measures the absolute deviation of forecast ensemble means from observations (Willmott & Matsuura, 2005): italicMAEgoodbreak=1Kk=1K||ftrue¯kgoodbreak−ok MAE has a perfect value of 0 when forecast ensemble means exactly match observations, which is similar to the interpretation of CRPS (Abdulelah Al‐Sudani et al, 2019; Schaake et al, 2007; Zhao et al, 2020a).…”
Section: Verification Of Ensemble Hydroclimatic Forecastsmentioning
confidence: 90%
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“…(6) MAE , which can be considered as the CRPS for deterministic forecasts (Hersbach, 2000), measures the absolute deviation of forecast ensemble means from observations (Willmott & Matsuura, 2005): italicMAEgoodbreak=1Kk=1K||ftrue¯kgoodbreak−ok MAE has a perfect value of 0 when forecast ensemble means exactly match observations, which is similar to the interpretation of CRPS (Abdulelah Al‐Sudani et al, 2019; Schaake et al, 2007; Zhao et al, 2020a).…”
Section: Verification Of Ensemble Hydroclimatic Forecastsmentioning
confidence: 90%
“…(7) MAESS can be interpreted as CRPSS for deterministic forecasts (Hersbach, 2000): italicMAESS()%goodbreak=MAErefMAEensitalicMAErefgoodbreak×100 MAESS evaluates the performance of ensemble means relative to reference forecasts in terms of MAE . Similar to CRPSS , it is positively oriented with a perfect value of 100% (Foster et al, 2018; Zeng et al, 2011; Zhao et al, 2020a).…”
Section: Verification Of Ensemble Hydroclimatic Forecastsmentioning
confidence: 99%
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“…3) The raw daily forecasts were individually calibrated by using the Seasonally Coherent Calibration (SCC) model (Wang et al 2019;Yang et al 2021;Zhao et al 2021) to improve their match with the AWAP data for our study field site, and to generate 100 ensemble forecast members for the future 9-day period. 4) The forecast ensemble members at different lead times were stochastically linked using the Schaake Shuffle technique (Clark et al 2004) to form forecast ensemble time series with appropriate serial correlations between days.…”
Section: Ensemble Short-term Rainfall Forecastsmentioning
confidence: 99%