Tsunami Prediction and Earthquake Parameters Estimation in the Red Sea

Tsunami concerns have increased in the world after the 2004 Indian Ocean tsunami and the 2011 Tohoku tsunami. Consequently, tsunami models have been developed rapidly in the last few years. One of the advanced tsunami models is the GeoClaw tsunami model introduced by LeVeque (2011). This model is ad...

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Bibliographic Details
Main Author: Sawlan, Zaid A
Other Authors: Hoteit, Ibrahim
Language:en
Published: 2012
Subjects:
Online Access:http://hdl.handle.net/10754/255453
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spelling ndltd-kaust.edu.sa-oai-repository.kaust.edu.sa-10754-2554532015-10-22T03:36:33Z Tsunami Prediction and Earthquake Parameters Estimation in the Red Sea Sawlan, Zaid A Hoteit, Ibrahim Computer, Electrical and Mathematical Sciences and Engineering (CEMSE) Division Laleg-Kirati, Taous-Meriem Scavino, Marco Tsunami Prediction and Earthquake Kalman Filter and Kalman Smoother Tsunami Predictions in the Red Sea Data Assimilation Parameter Estimation Ensemble Kalman Filter Tsunami concerns have increased in the world after the 2004 Indian Ocean tsunami and the 2011 Tohoku tsunami. Consequently, tsunami models have been developed rapidly in the last few years. One of the advanced tsunami models is the GeoClaw tsunami model introduced by LeVeque (2011). This model is adaptive and consistent. Because of different sources of uncertainties in the model, observations are needed to improve model prediction through a data assimilation framework. Model inputs are earthquake parameters and topography. This thesis introduces a real-time tsunami forecasting method that combines tsunami model with observations using a hybrid ensemble Kalman filter and ensemble Kalman smoother. The filter is used for state prediction while the smoother operates smoothing to estimate the earthquake parameters. This method reduces the error produced by uncertain inputs. In addition, state-parameter EnKF is implemented to estimate earthquake parameters. Although number of observations is small, estimated parameters generates a better tsunami prediction than the model. Methods and results of prediction experiments in the Red Sea are presented and the prospect of developing an operational tsunami prediction system in the Red Sea is discussed. 2012-12 Thesis http://hdl.handle.net/10754/255453 en
collection NDLTD
language en
sources NDLTD
topic Tsunami Prediction and Earthquake
Kalman Filter and Kalman Smoother
Tsunami Predictions in the Red Sea
Data Assimilation
Parameter Estimation
Ensemble Kalman Filter
spellingShingle Tsunami Prediction and Earthquake
Kalman Filter and Kalman Smoother
Tsunami Predictions in the Red Sea
Data Assimilation
Parameter Estimation
Ensemble Kalman Filter
Sawlan, Zaid A
Tsunami Prediction and Earthquake Parameters Estimation in the Red Sea
description Tsunami concerns have increased in the world after the 2004 Indian Ocean tsunami and the 2011 Tohoku tsunami. Consequently, tsunami models have been developed rapidly in the last few years. One of the advanced tsunami models is the GeoClaw tsunami model introduced by LeVeque (2011). This model is adaptive and consistent. Because of different sources of uncertainties in the model, observations are needed to improve model prediction through a data assimilation framework. Model inputs are earthquake parameters and topography. This thesis introduces a real-time tsunami forecasting method that combines tsunami model with observations using a hybrid ensemble Kalman filter and ensemble Kalman smoother. The filter is used for state prediction while the smoother operates smoothing to estimate the earthquake parameters. This method reduces the error produced by uncertain inputs. In addition, state-parameter EnKF is implemented to estimate earthquake parameters. Although number of observations is small, estimated parameters generates a better tsunami prediction than the model. Methods and results of prediction experiments in the Red Sea are presented and the prospect of developing an operational tsunami prediction system in the Red Sea is discussed.
author2 Hoteit, Ibrahim
author_facet Hoteit, Ibrahim
Sawlan, Zaid A
author Sawlan, Zaid A
author_sort Sawlan, Zaid A
title Tsunami Prediction and Earthquake Parameters Estimation in the Red Sea
title_short Tsunami Prediction and Earthquake Parameters Estimation in the Red Sea
title_full Tsunami Prediction and Earthquake Parameters Estimation in the Red Sea
title_fullStr Tsunami Prediction and Earthquake Parameters Estimation in the Red Sea
title_full_unstemmed Tsunami Prediction and Earthquake Parameters Estimation in the Red Sea
title_sort tsunami prediction and earthquake parameters estimation in the red sea
publishDate 2012
url http://hdl.handle.net/10754/255453
work_keys_str_mv AT sawlanzaida tsunamipredictionandearthquakeparametersestimationintheredsea
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