Fast Storm Surge Ensemble Prediction using Searching Optimization of a Numerical Scenario Database

Author:

XIE YANSHUANG123,SHANG SHAOPING123,CHEN JINQUAN1,ZHANG FENG1,HE ZHIGAN123,WEI GUOMEI123,WU JINYU123,ZHU BENLU4,ZENG YINDONG4

Affiliation:

1. 1 College of Ocean and Earth Sciences, Xiamen University, Xiamen 361005, China

2. 2 Research and Development Center for Ocean Observation Technologies, Xiamen University, Xiamen 361005, China

3. 3 Laboratory of Underwater Acoustic Communication and Marine Information Technology Ministry of Education, Xiamen University, Xiamen 361005, China

4. 4 Fujian Marine Forecasts, Fuzhou 350003, China

Abstract

AbstractAccurate storm surge forecasts provided rapidly could support timely decision-making with consideration of tropical cyclone (TC) forecasting error. This study developed a fast storm surge ensemble prediction method based on TC track probability forecasting and searching optimization of a numerical scenario database (SONSD). In a case study of the Fujian Province coast (China), a storm surge scenario database was established using numerical simulations generated by 93,150 hypothetical TCs. In a GIS-based visualization system, a single surge forecast representing 2562 distinct typhoon tracks and the occurrence probability of overflow of seawalls along the coast could be achieved in 1–2 min. Application to the cases of Typhoon Soudelor (2015) and Typhoon Maria (2018) demonstrated that the proposed method is feasible and effective. Storm surge calculated by SONSD had excellent agreement with numerical model results (i.e., mean MAE/RMSE: 7.1/10.7 cm, correlation coefficient: >0.9). Tide prediction also performed well with MAE/RMSE of 9.7/11.6 cm versus the harmonic tide, and MAE/RMSE of phase prediction for all high waters of 0.25/0.31 h versus observations. The predicted high-water level was satisfactory (MAE of 10.8 cm versus observations) when the forecasted and actual positions of the typhoon were close. When the forecasted typhoon position error was large, the ensemble surge prediction effectively reduced prediction error (i.e., the negative bias of −58.5 cm reduced to −5.2 cm versus observations), which helped avoid missed alert warnings. The proposed method could be applied in other regions to provide rapid and accurate decision-making support for government departments.

Publisher

American Meteorological Society

Subject

Atmospheric Science

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