An investigation of ensemble-based assimilation of satellite altimetry and tide gauge data in storm surge prediction

被引:0
作者
Paula Etala
Martín Saraceno
Pablo Echevarría
机构
[1] Servicio de Hidrografía Naval,Centro de Inv. del Mar y la Atmosfera (CIMA)/UBA/FCEN
[2] Ciudad Universitaria,CONICET, UMI3351
[3] Servicio Meteorológico Nacional,IFAECI/CNRS
来源
Ocean Dynamics | 2015年 / 65卷
关键词
Storm surge prediction; Data assimilation; Ensemble Kalman filter;
D O I
暂无
中图分类号
学科分类号
摘要
Cyclogenesis and long-fetched winds along the southeastern coast of South America may lead to floods in populated areas, as the Buenos Aires Province, with important economic and social impacts. A numerical model (SMARA) has already been implemented in the region to forecast storm surges. The propagation time of the surge in such extensive and shallow area allows the detection of anomalies based on observations from several hours up to the order of a day prior to the event. Here, we investigate the impact and potential benefit of storm surge level data assimilation into the SMARA model, with the objective of improving the forecast. In the experiments, the surface wind stress from an ensemble prediction system drives a storm surge model ensemble, based on the operational 2-D depth-averaged SMARA model. A 4-D Local Ensemble Transform Kalman Filter (4D-LETKF) initializes the ensemble in a 6-h cycle, assimilating the very few tide gauge observations available along the northern coast and satellite altimeter data. The sparse coverage of the altimeters is a challenge to data assimilation; however, the 4D-LETKF evolving covariance of the ensemble perturbations provides realistic cross-track analysis increments. Improvements on the forecast ensemble mean show the potential of an effective use of the sparse satellite altimeter and tidal gauges observations in the data assimilation prototype. Furthermore, the effects of the localization scale and of the observational errors of coastal altimetry and tidal gauges in the data assimilation approach are assessed.
引用
收藏
页码:435 / 447
页数:12
相关论文
共 68 条
[1]  
Altaf MU(2014)A comparison of ensemble Kalman filters for storm surge assimilation Mon Weather Rev 142 2899-2914
[2]  
Butler T(2012)Data assimilation within the advanced circulation (ADCIRC) modeling framework for hurricane storm surge forecasting Mon Weather Rev 140 2215-2231
[3]  
Mayo T(1998)Application of advanced data assimilation methods for the initialisation of storm surge models J Hydraul Res 36 655-674
[4]  
Luo X(2009)Dynamic issues in the SE South America storm surge modeling Nat Hazards 51 79-95
[5]  
Dawson C(2009)On the accuracy of atmospheric forcing for extra-tropical storm surge prediction Nat Hazards 51 49-61
[6]  
Heemink AW(1994)Sequential data assimilation with a nonlinear quasigeostrophic model using Monte Carlo methods to forecast error statistics J Geophys Res 99 10143-10162
[7]  
Hoteit I(1990)Data assimilation for non-linear tidal models Int J Numer Methods Fluids 11 1097-1112
[8]  
Butler T(2007)Efficient data assimilation for spatiotemporal chaos: a local ensemble transform Kalman filter Physica D: Nonlinear Phenomena 230 112-126
[9]  
Altaf MU(2007)4DVar or ensemble Kalman filter? Tellus 59 758-773
[10]  
Dawson C(2013)On improving storm surge forecasting using an adjoint optimal technique Ocean Modelling 72 185-197