H53A-1652
Diagnosis of North American Multi-Model Ensemble (NMME) skill for predicting floods and droughts over the continental USA

Friday, 18 December 2015
Poster Hall (Moscone South)
Louise J. Slater, Gabriele Villarini and Allen Bradley, IIHR—Hydroscience and Engineering, Iowa City, IA, United States
Abstract:
Model predictions of precipitation and temperature are crucial to mitigate the impacts of major flood and drought events through informed planning and response. However, the potential value and applicability of these predictions is inescapably linked to their forecast quality.

The North-American Multi-Model Ensemble (NMME) is a multi-agency supported forecasting system for intraseasonal to interannual (ISI) climate predictions. Retrospective forecasts and real-time information are provided by each agency free of charge to facilitate collaborative research efforts for predicting future climate conditions as well as extreme weather events such as floods and droughts. Using the PRISM climate mapping system as the reference data, we examine the skill of five General Circulation Models (GCMs) from the NMME project to forecast monthly and seasonal precipitation and temperature over seven sub-regions of the continental United States.

For each model, we quantify the seasonal accuracy of the forecast relative to observed precipitation using the mean square error skill score. This score is decomposed to assess the accuracy of the forecast in the absence of biases (potential skill), and in the presence of conditional (slope reliability) and unconditional (standardized mean error) biases. The quantification of these biases allows us to diagnose each model’s skill over a full range temporal and spatial scales.

Finally, we test each model’s forecasting skill by evaluating its ability to predict extended periods of extreme temperature and precipitation that were conducive to ‘billion-dollar’ historical flood and drought events in different regions of the continental USA. The forecasting skill of the individual climate models is summarized and presented along with a discussion of different multi-model averaging techniques for predicting such events.