Optimization of SWAN Wave Model to Improve the Accuracy of Winter Storm Wave Prediction in the East Sea

In recent years, as human casualties and property damage caused by hazardous waves have increased in the East Sea, precise wave prediction skills have become necessary. In this study, the Simulating WAves Nearshore (SWAN) third-generation numerical wave model was calibrated and optimized to enhance...

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Main Authors: Bongkyo Son, Kideok Do
Format: Article
Language:English
Published: The Korean Society of Ocean Engineers 2021-08-01
Series:한국해양공학회지
Subjects:
st6
Online Access:https://www.joet.org/journal/view.php?doi=10.26748/KSOE.2021.019
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spelling doaj-4700982543274f6cbc4ba9b077e998382021-08-31T09:25:58ZengThe Korean Society of Ocean Engineers한국해양공학회지1225-07672287-67152021-08-0135427328610.26748/KSOE.2021.019Optimization of SWAN Wave Model to Improve the Accuracy of Winter Storm Wave Prediction in the East SeaBongkyo Son0https://orcid.org/0000-0002-6328-7286Kideok Do1https://orcid.org/0000-0001-7364-8375Korea Maritime & Ocean UniversityKorea Maritime & Ocean University,In recent years, as human casualties and property damage caused by hazardous waves have increased in the East Sea, precise wave prediction skills have become necessary. In this study, the Simulating WAves Nearshore (SWAN) third-generation numerical wave model was calibrated and optimized to enhance the accuracy of winter storm wave prediction in the East Sea. We used Source Term 6 (ST6) and physical observations from a large-scale experiment conducted in Australia and compared its results to Komen’s formula, a default in SWAN. As input wind data, we used Korean Meteorological Agency's (KMA’s) operational meteorological model called Regional Data Assimilation and Prediction System (RDAPS), the European Centre for Medium Range Weather Forecasts’ newest 5th generation re-analysis data (ERA5), and Japanese Meteorological Agency's (JMA’s) meso-scale forecasting data. We analyzed the accuracy of each model’s results by comparing them to observation data. For quantitative analysis and assessment, the observed wave data for 6 locations from KMA and Korea Hydrographic and Oceanographic Agency (KHOA) were used, and statistical analysis was conducted to assess model accuracy. As a result, ST6 models had a smaller root mean square error and higher correlation coefficient than the default model in significant wave height prediction. However, for peak wave period simulation, the results were incoherent among each model and location. In simulations with different wind data, the simulation using ERA5 for input wind datashowed the most accurate results overall but underestimated the wave height in predicting high wave events compared to the simulation using RDAPS and JMA meso-scale model. In addition, it showed that the spatial resolution of wind plays a more significant role in predicting high wave events. Nevertheless, the numerical model optimized in this study highlighted some limitations in predicting high waves that rise rapidly in time caused by meteorological events. This suggests that further research is necessary to enhance the accuracy of wave prediction in various climate conditions, such as extreme weather.https://www.joet.org/journal/view.php?doi=10.26748/KSOE.2021.019east seaswanst6model skill assessmentwind waves
collection DOAJ
language English
format Article
sources DOAJ
author Bongkyo Son
Kideok Do
spellingShingle Bongkyo Son
Kideok Do
Optimization of SWAN Wave Model to Improve the Accuracy of Winter Storm Wave Prediction in the East Sea
한국해양공학회지
east sea
swan
st6
model skill assessment
wind waves
author_facet Bongkyo Son
Kideok Do
author_sort Bongkyo Son
title Optimization of SWAN Wave Model to Improve the Accuracy of Winter Storm Wave Prediction in the East Sea
title_short Optimization of SWAN Wave Model to Improve the Accuracy of Winter Storm Wave Prediction in the East Sea
title_full Optimization of SWAN Wave Model to Improve the Accuracy of Winter Storm Wave Prediction in the East Sea
title_fullStr Optimization of SWAN Wave Model to Improve the Accuracy of Winter Storm Wave Prediction in the East Sea
title_full_unstemmed Optimization of SWAN Wave Model to Improve the Accuracy of Winter Storm Wave Prediction in the East Sea
title_sort optimization of swan wave model to improve the accuracy of winter storm wave prediction in the east sea
publisher The Korean Society of Ocean Engineers
series 한국해양공학회지
issn 1225-0767
2287-6715
publishDate 2021-08-01
description In recent years, as human casualties and property damage caused by hazardous waves have increased in the East Sea, precise wave prediction skills have become necessary. In this study, the Simulating WAves Nearshore (SWAN) third-generation numerical wave model was calibrated and optimized to enhance the accuracy of winter storm wave prediction in the East Sea. We used Source Term 6 (ST6) and physical observations from a large-scale experiment conducted in Australia and compared its results to Komen’s formula, a default in SWAN. As input wind data, we used Korean Meteorological Agency's (KMA’s) operational meteorological model called Regional Data Assimilation and Prediction System (RDAPS), the European Centre for Medium Range Weather Forecasts’ newest 5th generation re-analysis data (ERA5), and Japanese Meteorological Agency's (JMA’s) meso-scale forecasting data. We analyzed the accuracy of each model’s results by comparing them to observation data. For quantitative analysis and assessment, the observed wave data for 6 locations from KMA and Korea Hydrographic and Oceanographic Agency (KHOA) were used, and statistical analysis was conducted to assess model accuracy. As a result, ST6 models had a smaller root mean square error and higher correlation coefficient than the default model in significant wave height prediction. However, for peak wave period simulation, the results were incoherent among each model and location. In simulations with different wind data, the simulation using ERA5 for input wind datashowed the most accurate results overall but underestimated the wave height in predicting high wave events compared to the simulation using RDAPS and JMA meso-scale model. In addition, it showed that the spatial resolution of wind plays a more significant role in predicting high wave events. Nevertheless, the numerical model optimized in this study highlighted some limitations in predicting high waves that rise rapidly in time caused by meteorological events. This suggests that further research is necessary to enhance the accuracy of wave prediction in various climate conditions, such as extreme weather.
topic east sea
swan
st6
model skill assessment
wind waves
url https://www.joet.org/journal/view.php?doi=10.26748/KSOE.2021.019
work_keys_str_mv AT bongkyoson optimizationofswanwavemodeltoimprovetheaccuracyofwinterstormwavepredictionintheeastsea
AT kideokdo optimizationofswanwavemodeltoimprovetheaccuracyofwinterstormwavepredictionintheeastsea
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