標題: Typhoon Rainfall Forecasting by Means of Ensemble Numerical Weather Predictions with a GA-Based Integration Strategy
作者: Wu, Ming-Chang
Yang, Sheng-Chi
Yang, Tsun-Hua
Kao, Hong-Ming
土木工程學系
Department of Civil Engineering
關鍵字: typhoon rainfall forecasting;ensemble numerical weather predictions;GA-based integration strategy;optimal combination
公開日期: 1-Nov-2018
摘要: Rainfall during typhoons is one of the most important water resources in Taiwan, but heavy typhoon rainfall often leads to serious disasters and consequently results in loss of lives and property. Hence, accurate forecasts of typhoon rainfall are always required as important information for water resources management and rainfall-induced disaster warning system. In this study, a methodology is proposed for providing quantitative forecasts of 24 h cumulative rainfall during typhoons. Firstly, ensemble forecasts of typhoon rainfall are obtained from an ensemble numerical weather prediction (NWP) system. Then, an evolutionary algorithm, i.e., genetic algorithm (GA), is adopted to real-time decide the weights for optimally combining these ensemble forecasts. That is, the novelty of this proposed methodology is the effective integration of the NWP-based ensemble forecasts through an evolutionary algorithm-based strategy. An actual application is conducted to verify the forecasts resulting from the proposed methodology, namely NWP-based ensemble forecasts with a GA-based integration strategy. The results confirm that the forecasts from the proposed methodology are in good agreement with observations. Besides, the results from the GA-based strategy are more accurate as compared to those by simply averaging all ensemble forecasts. On average, the root mean square error decreases about 7%. In conclusion, more accurate typhoon rainfall forecasts are obtained by the proposed methodology, and they are expected to be useful for disaster warning system and water resources management during typhoons.
URI: http://dx.doi.org/10.3390/atmos9110425
http://hdl.handle.net/11536/148511
ISSN: 2073-4433
DOI: 10.3390/atmos9110425
期刊: ATMOSPHERE
Volume: 9
Appears in Collections:Articles