Comparative Evaluation of Three Schaake Shuffle Schemes in Postprocessing GEFS Precipitation Ensemble Forecasts

Author:

Wu Limin1,Zhang Yu2,Adams Thomas3,Lee Haksu4,Liu Yuqiong4,Schaake John5

Affiliation:

1. Lynker Technologies, and Office of Water Prediction, Silver Spring, Maryland

2. The University of Texas at Arlington, Arlington, Texas

3. TerraPredictions, Blacksburg, Virginia

4. LEN Technologies, and Office of Water Prediction, Silver Spring, Maryland

5. Consultant, Annapolis, Maryland

Abstract

Abstract Natural weather systems possess certain spatiotemporal variability and correlations. Preserving these spatiotemporal properties is a significant challenge in postprocessing ensemble weather forecasts. To address this challenge, several rank-based methods, the Schaake Shuffle and its variants, have been developed in recent years. This paper presents an extensive assessment of the Schaake Shuffle and its two variants. These schemes differ in how the reference multivariate rank structure is established. The first scheme (SS-CLM), an implementation of the original Schaake Shuffle method, relies on climatological observations to construct rank structures. The second scheme (SS-ANA) utilizes precipitation event analogs obtained from a historical archive of observations. The third scheme (SS-ENS) employs ensemble members from the Global Ensemble Forecast System (GEFS). Each of the three schemes is applied to postprocess precipitation ensemble forecasts from the GEFS for its first three forecast days over the mid-Atlantic region of the United States. In general, the effectiveness of these schemes depends on several factors, including the season (or precipitation pattern) and the level of gridcell aggregation. It is found that 1) the SS-CLM and SS-ANA behave similarly in spatial and temporal correlations; 2) by a measure for capturing spatial variability, the SS-ENS outperforms the SS-ANA, which in turn outperforms the SS-CLM; and 3), overall, the SS-ANA performs better than the SS-CLM. The study also reveals that it is important to choose a proper size for the postprocessed ensembles in order to capture extreme precipitation events.

Funder

The Centralized Water Forecasting Demonstration program and the Advanced Hydrologic Prediction Service program of the Office of Water Prediction of the National Oceanic and Atmospheric Administration

Publisher

American Meteorological Society

Subject

Atmospheric Science

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