Japan Geoscience Union Meeting 2022

Presentation information

[E] Poster

A (Atmospheric and Hydrospheric Sciences ) » A-OS Ocean Sciences & Ocean Environment

[A-OS15] Waves, Storm Surges, and Related Hazards

Tue. May 31, 2022 11:00 AM - 1:00 PM Online Poster Zoom Room (9) (Ch.09)

convener:Adrean Webb(Kyoto University, Disaster Prevention Research Institute, Coastal Disaster Research), convener:Amin Chabchoub(Kyoto University), Reza Marsooli(Stevens Institute of Technology), Chairperson:Adrean Webb(Kyoto University, Disaster Prevention Research Institute, Coastal Disaster Research), Amin Chabchoub(Kyoto University), Reza Marsooli(Stevens Institute of Technology)

11:00 AM - 1:00 PM

[AOS15-P01] A statistical approach considering ocean current effects in wave scatter diagrams for maritime safety

★Invited Papers

*Wataru Fujimoto1, Tsutomu Fukui1, Rei Miratsu1, Tingyao Zhu1 (1.Nippon Kaiji Kyokai)

Keywords:Wave-Current Interaction, Ocean Wave, Design Condition

Existing studies have pointed out that strong ocean currents, such as the Agulhas Current, may increase wave heights (Ardhuin et al., 2017; Quilfen et al., 2018). Some studies ran wave models with the Agulhas Current and found that the significant wave height increased by several tens of percent compared to the case without the current (Ponce de León & Guedes Soares, 2021; Rautenbach et al., 2020). As many merchant ships navigate coastal area of the Cape of Good Hope where the Agulhas Current flows, the wave-current interaction is an important issue for maritime safety (Lavrenov, 1998).
The International Association of Classification Society (IACS) provides a so-called “Standard Wave Data” in the IACS Recommendation No. 34 (IACS, 2001) for estimating extreme design wave loads at a probability level of approximately 10-8 regarding merchant ships carrying goods at sea (Table 1). This “Standard Wave Data” is a wave scatter diagram which is a histogram of significant wave heights and wave periods based on visual observations of waves by ships since 1949 (Hogben et al., 1986). Here, the North Atlantic Ocean, which is considered as the most severe seas in the world, was chosen. On the other hand, sophisticated wave models have been developed nowadays, it is possible to aggregate the wave scatter diagram from wave hindcast data. Also, the actual shipping routes can be reflected to the wave scatter diagrams. Then, ocean currents should be considered for the wave scatter diagram where the ocean current is strong as the significant wave heights may be increased by current mentioned above.
However, due to influence of small-scale eddies on wave heights (Ardhuin et al., 2017), it is still difficult to verify wave models including ocean currents. The wave model calculations including ocean currents remain at the research level. Operational wave hindcast data do not include ocean currents (Barnes & Rautenbach, 2020), and there should be some errors caused by ocean currents in the data. For example, we compared ERA5 (Hersbach et al., 2020) and satellite-observed significant wave heights (Ribal & Young, 2019) for six years from 2015 to 2020. Figure 1 shows the mean and standard deviation of the difference in the significant wave height in each 0.5-degree grid. The mean and the standard deviation correspond to the bias and the uncertainty of the significant wave heights between the hindcast and satellite data. In fact, Figure 1 indicates that the bias and uncertainty were larger in the area where the Agulhas Current, the Kuroshio Current, and the Gulf Stream.
This study proposes a statistical approach to modify the wave scatter diagram including the ocean current effects. Here, a predicted value and a truth of wave parameters are denoted as X and Y, respectively. The wave scatter diagram obtained from the wave model without ocean current corresponds to the probability distribution p(X) of the predicted value X. Also, we assume that the conditional probability distribution of the predicted value X and the truth Y, i.e., the error distribution p(Y|X) is obtained. From Bayes' theorem, the probability distribution of the truth, p(Y), can be evaluated as the marginal distribution. Since it is impossible to know the truth exactly, we will regard the observed value as the truth. For example, p(X) can be estimated using ERA5, while the error distribution of wave height p(Y|X) can be estimated using ERA5 and the satellite data (Ribal & Young (2019)). By estimating the distribution of wave period errors and the correlation between wave height and wave period errors, we will attempt to analyze wave buoy data in the near future.