NH23C-1911
Optimizing Tsunami Forecast Model Accuracy
Tuesday, 15 December 2015
Poster Hall (Moscone South)
Paul Whitmore1, David L Nyland1 and Paul Y Huang2, (1)NOAA Anchorage, Anchorage, AK, United States, (2)Tsunami Warning Center, Palmer, AK, United States
Abstract:
Recent tsunamis provide a means to determine the accuracy that can be expected of real-time tsunami forecast models. Forecast accuracy using two different tsunami forecast models are compared for seven events since 2006 based on both real-time application and optimized, after-the-fact “forecasts”. Lessons learned by comparing the forecast accuracy determined during an event to modified applications of the models after-the-fact provide improved methods for real-time forecasting for future events. Variables such as source definition, data assimilation, and model scaling factors are examined to optimize forecast accuracy. Forecast accuracy is also compared for direct forward modeling based on earthquake source parameters versus accuracy obtained by assimilating sea level data into the forecast model. Results show that including assimilated sea level data into the models increases accuracy by approximately 15% for the events examined.