Rapid Assessment of Tsunami Offshore Propagation and Inundation with D-FLOW Flexible Mesh and SFINCS for the 2011 Tōhoku Tsunami in Japan
Abstract
:1. Introduction
2. Materials and Methods
- (1)
- Based on an all-in-one FM model, both the tsunami propagation in the north-eastern Pacific and inundation at the coast of the Sendai Bay are simulated within a single model domain (no nesting required; Figure 2A).
- (2)
- Based on the all-in-one FM model, the tsunami propagation is simulated, while the inundation is simulated with a nested SFINCS model (a similar approach as needed for the D3D reference model; Figure 2B), which is forced with hydrodynamic boundary conditions derived from the all-in-one FM model.
- (3)
- Same as (2) but the nested SFINCS model is forced with hydrodynamic boundary conditions derived from an overall SFINCS model in order to also test the ability of SFINCS to reproduce deep-water tsunami wave propagation (Figure 2B).
- (4)
- The D3D reference model is a further developed model based on [7] (separated in an overall and nested model; Figure 2B), using updated topography data, bottom roughness and initial tsunami water levels as applied in the other models of this study (Section 2.1).
2.1. Delft3D-FLOW Reference Model
- In order to increase the accuracy of the model’s topography, the onshore elevation data were changed from SRTM (Shuttle Radar Topography Mission; [34]) data to more accurate ALOS (Advanced Land Observing Satellite, [35]) data with a spatial resolution of 30 m. The ALOS data were referenced to local mean sea level (MSL) using the DTU10 Mean Dynamic Topography dataset [36]. The ALOS topography data were merged with GEBCO (General Bathymetric Chart of the Oceans) bathymetry data [37] as used by [7].
- It was found that to simulate the maximum onshore water levels more accurately, the bottom roughness had to be increased, as suggested by [38] for the application of depth-integrated tsunami inundation models. Based on this and on several tests with different bottom roughness fields in the FM model (Section 2.2), we therefore applied a Manning’s n coefficient of 0.025 s m−1/3 offshore and a higher value of 0.1 s m−1/3 onshore in the D3D, FM and SFINCS models. These values yielded the best reproduction of the observed water levels and inland penetration at the coast of the Sendai Bay over the three applied models.
- Finally, the initial displacement of the water column was calculated more accurately based on fault segment data by [28]. These data contain information on the location, depth, slip, rake, strike and dip for 190 separate fault segments. The total length of the applied fault line amounts to approximately 500 km [28]. The fault segment data were processed using the DDB Tsunami Toolbox [7]. This toolbox makes use of a set of analytical expressions by [39] (referred to as the Okada model) to model fluid surface deformation fields (in two dimensions) caused by seafloor displacement during earthquakes. Based on this input, the DDB tool generates a spatially varying initial water level field interpolated on the computational grid/mesh of the D3D/SFINCS/FM models, representing the initial tsunami wave. The use of the fault segment data by [28] results in a steeper and higher initial tsunami wave with a shorter wave period compared to [7].
2.2. D-FLOW Flexible Mesh Model
2.3. SFINCS Model
3. Results
3.1. Tsunami Propagation
3.2. Tsunami Inundation
3.3. Computational Time
4. Discussion
- The Okada model applied for the generation of the initial tsunami wave does—in contrast to the finite-fault model used, e.g., by [46,47]—not account for the slip time history over the prescribed rupture plane (i.e., the chronology of the individual ruptures of the earthquake), which can be important for the tsunami wave excitation.
- The applied Okada model does—in contrast to the finite-fault model used, e.g., by [46,47]—not account for the velocity of the individual ruptures of the earthquake which determines to which degree the water column responds to the crust movement and to which degree the wave energy is beamed at a right angle to the fault lines, cf. [3,48]. This is likely important for the tsunami wave excitation due to the relatively slow rupture velocity of the Tōhoku earthquake [26].
- inaccuracies of the applied initial displacement of the water column due to the reasons mentioned above,
- inaccuracies of the nearshore and onshore elevation data (inaccuracies related to the crustal deformation due to the earthquake are assumed to have a minor impact since the subsidence in the area of the Sendai coast was limited to 0.18 m to 0.31 m [49]) and/or
- the fact that both models do not account for the tidal water levels in the Sendai Bay at the time of the tsunami impact, which may affect the tsunami propagation and inundation in the models (tidal elevations were subtracted from the observed inundation water levels but not applied in the model; cf. Section 2).
5. Conclusions
- The DDB Tsunami Toolbox with the implemented Okada model allows for an efficient determination of the initial tsunami wave, cf. [7].
- FM and SFINCS can simulate the tsunami propagation and inundation within minutes to seconds respectively, i.e., much shorter than real-time. Nevertheless, it has to be stressed that real-time prediction would rely on the information of the seafloor displacement provided by either a moment tensor solution or a finite fault solution, both of which were not available before the tsunami hit the Japanese coast in 2011.
- The use of an unstructured computational mesh by the D-FLOW Flexible Mesh module allows for the simulation of both the tsunami propagation and inundation within an all-in-one domain with high resolution in the area of interest, allowing for a fast and efficient model setup. An additional feature of this module is the possibility to include the simulation of sediment transport and morphodynamics associated with the tsunami inundation, cf. [14,50], which makes it a broadly applicable tool for the numerical simulation of tsunamis.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Delft3D-FLOW | D-FLOW Flexible Mesh | SFINCS | |
---|---|---|---|
Computational time per domain | Overall: 25 min | All-in-one domain: 20 min Total: 20 min | Overall: 1 min 19 s |
Nest: 15 min | Nest: 1 s | ||
Total: 40 min | Total: 1 min 20 s | ||
Number of grid cells/mesh nodes | Overall 472,888 | All-in-one domain: 1,195,114 Total: 1,195,114 | Overall: 9,452,582 |
Nest: 400,000 | Nest: 168,966 | ||
Total: 872,888 | Total: 9,621,548 |
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Röbke, B.R.; Leijnse, T.; Winter, G.; van Ormondt, M.; van Nieuwkoop, J.; de Graaff, R. Rapid Assessment of Tsunami Offshore Propagation and Inundation with D-FLOW Flexible Mesh and SFINCS for the 2011 Tōhoku Tsunami in Japan. J. Mar. Sci. Eng. 2021, 9, 453. https://doi.org/10.3390/jmse9050453
Röbke BR, Leijnse T, Winter G, van Ormondt M, van Nieuwkoop J, de Graaff R. Rapid Assessment of Tsunami Offshore Propagation and Inundation with D-FLOW Flexible Mesh and SFINCS for the 2011 Tōhoku Tsunami in Japan. Journal of Marine Science and Engineering. 2021; 9(5):453. https://doi.org/10.3390/jmse9050453
Chicago/Turabian StyleRöbke, Björn R., Tim Leijnse, Gundula Winter, Maarten van Ormondt, Joana van Nieuwkoop, and Reimer de Graaff. 2021. "Rapid Assessment of Tsunami Offshore Propagation and Inundation with D-FLOW Flexible Mesh and SFINCS for the 2011 Tōhoku Tsunami in Japan" Journal of Marine Science and Engineering 9, no. 5: 453. https://doi.org/10.3390/jmse9050453
APA StyleRöbke, B. R., Leijnse, T., Winter, G., van Ormondt, M., van Nieuwkoop, J., & de Graaff, R. (2021). Rapid Assessment of Tsunami Offshore Propagation and Inundation with D-FLOW Flexible Mesh and SFINCS for the 2011 Tōhoku Tsunami in Japan. Journal of Marine Science and Engineering, 9(5), 453. https://doi.org/10.3390/jmse9050453