Abstract
Drag coefficient (Cd) is an essential metric in the calculation of momentum exchange over the air-sea interface and thus has large impacts on the simulation or forecast of the upper ocean state associated with sea surface winds such as storm surges. Generally, Cd is a function of wind speed. However, the exact relationship between Cd and wind speed is still in dispute, and the widely-used formula that is a linear function of wind speed in an ocean model could lead to large bias at high wind speed. Here we establish a parabolic model of Cd based on storm surge observations and simulation in the South China Sea (SCS) through a number of tropical cyclone cases. Simulation of storm surges for independent Tropical cyclones (TCs) cases indicates that the new parabolic model of Cd outperforms traditional linear models.
Historically, a diversity of the relationship between Cd and wind speed has been employed in numerical models or analysis for the calculation of momentum exchange over the air-sea interface (Fig. 1). Theoretically, Drag coefficient (Cd) is a function of sea surface roughness which is determined by a number of factors, including wind speed, wave, spume, flying spray, and atmospheric stability1,2:
Here κ(=0.40) is the von Kármán constant and z0 is the sea surface roughness length for wind speed.
Practically and historically, however, Cd had commonly been set either as a constant3,4,5 or using an empirical formula that is a linear function of wind speed6,7,8,9,10,11 or leveling off at high wind speed12,13 (Fig. 1). Recently, more and more nonlinear formulas are proposed and applied in practice14,15,16. In real situation, extensive wave-breaking generated by high winds could result in a thin lay of white crest (including spume, flying spray, etc) which acts like a shroud shielding the fine scale wave roughness from the airflow and thus reduces the roughness of sea surface and Cd. In the past decade, field measurements indicate that Cd reaches a maximum near 30–40 m s−1 and then decreases with increasing wind speed17,18,19,20,21,22. The results of Jarosz et al. (2007) and Sahlée et al. (2012) also show that when using most of presented empirical formulas Cd is underestimated under the intermediate wind speed (especially for those linearly-increasing formulas under intermediate wind speed) or overestimated under the very high wind speed (especially for those non-decreasing formulas), inevitably leading to biases in the wind stress calculation. Therefore, to reduce the biases, some nonlinear formulas are proposed and applied in practice in recent years14,15,16.
As shown by Jarosz et al. (2007), the variation of Cd with wind speed seems to be a parabolic function. Because a parabolic function generally produces larger (smaller) values of Cd than a linear function before (after) reaching its maximum, it may represent more accurately the variations of Cd under intermediate and very high wind speeds compared to a linear function. In addition, a parabolic function has only two parameters to be determined, and thus is easier to be estimated using 4-Dimentional Variational Data Assimilation (4DVAR) approach. Therefore, we hypothesize that Cd is a parabolic function of wind speed under intermediate and high wind speeds. Based on an ensemble of typhoon cases, here we establish an “optimal” model of Cd in the frame of parabolic shape for the South China Sea (SCS) through assimilating the observed water level into a storm surge model using 4DVAR technique.
Results
Based on the maximum value of Cd around (32–33 m/s) in the field measurements of Powell et al. (2003) and Jarosz et al. (2007), we propose a parabolic form for the relationship between Cd and wind speed:
where Vp is the sea surface wind speed at 10 m height, and a and c are the two parameters to be determined. The initial values of a and c are set to be (a0, c0) = (2.0 × 10−6, 2.34 × 10−3). Over the continental shelf and the coastal regions, the forced response consists of a strong barotropic component that is not geostrophically balanced and a much weaker baroclinic component, especially during the passage of a TC. Thus, we can use a storm surge model and coastal water level observations to determine the parameters (a, c) through 4DVAR technique.
The 4DVAR technique has been widely employed to optimize both the model initial conditions and physical parameters, which involves forward and backward (adjoint) model integration when minimizing the misfit between model output and observations23,24,25,26,27,28,29,30. To determine and validate Equation (2) at high wind speeds, we select all the relatively strong typhoon cases that originated in or passed through the SCS regions with storm surges induced at least 0.2 m in the coast during 2006–2011, counting a number of 18 (see Table S1 in Supplementary Information Online); Ten of the selected cases (denoted as Cases I) are used to determine the values of a and c in Equation (2), the rest (denoted as Cases II) are used for validation. For each of Cases I, a parabolic function of Cd with respect to wind speed is obtained by optimizing a and c to minimize the distance between the observed and modeled storm surges through 4DVAR (Fig. 2 and Table 1). The mean of the ensemble of the parabolic functions is then adopted as the parabolic model of Cd with respect to the wind speed for the SCS region (Fig. 2 and Table 1). The new parabolic model obtained here has a trend similar to those of Powell et al. (2003) and Jarosz et al. (2007) based on field measurements with slightly large magnitude in the whole band of medium to high wind speed (Fig. 1), and gives larger values of Cd than most of the other models under intermediate wind speed. The storm surge simulations for Cases I using the new model of Cd gain significant improvements with smaller maximum surge biases and Root Mean Square Errors (RMSE) compared to those using other models of Cd (see Supplementary Information online Table S2–3).
Table 1. The “optimal” values of parameters (a, c) and their mean after data assimilation.
No. | Typhoon | a | c |
---|---|---|---|
1 | Chanchu | 0.00212 | 2.787 |
2 | Prapiroon | 0.00188 | 3.146 |
3 | Durian | 0.00231 | 2.593 |
4 | Lekima | 0.00226 | 2.839 |
5 | Neoguri | 0.00241 | 2.495 |
6 | Nuri | 0.00236 | 2.376 |
7 | Hagupit | 0.00210 | 3.003 |
8 | Nangka | 0.00240 | 2.503 |
9 | Koppu | 0.00176 | 3.287 |
10 | Ketsana | 0.00188 | 2.945 |
Mean | 0.00215 | 2.797 |
The new model of Cd is then employed in the storm surge model for the 8 typhoons of Cases II to validate its effect on improving storm surge simulations in the SCS. Compared to other models of Cd, the parabolic model of Cd statistically produces better storm surge simulations with smaller maximum surge biases and RMSE (see Table 2).
Table 2. Biases and Standard Deviation (SD) of maximum storm surge (Units: m) and Root-Mean-Squared-Errors (RMSE) of storm surge (Units: m) (in parenthesis) simulated by different C d models for TC Cases II.
No. | Typhoon | Large& Pond(1981) | Donelan(2004) | Large &Yagger(2009) | Fairall et al.(2003) | Mueller andVeron(2009) | Hersbach(2011) | Edsonet al.(2013) | Firstguess | Optimal |
---|---|---|---|---|---|---|---|---|---|---|
1 | Conson | 0.129(0.096) | 0.110(0.097) | 0.125(0.094) | 0.161(0.092) | 0.121(0.095) | 0.237(0.088) | 0.208(0.105) | 0.152(0.099) | 0.115(0.095) |
2 | Meranti | −0.07(0.076) | −0.075(0.08) | −0.071(0.074) | −0.063(0.067) | −0.072(0.08) | −0.043(0.064) | −0.064(0.072) | −0.067(0.071) | −0.053(0.065) |
3 | Megi | −0.153(0.138) | −0.191(0.151) | −0.201(0.141) | −0.138(0.129) | −0.19(0.147) | −0.036(0.148) | −0.147(0.128) | −0.207(0.133) | −0.171(0.112) |
4 | Haima | −0.222(0.141) | −0.222(0.141) | −0.212(0.179) | −0.204(0.173) | −0.228(0.149) | −0.203(0.163) | −0.221(0.138) | −0.209(0.174) | −0.193(0.139) |
5 | Nock-ten | −0.07(0.055) | −0.087(0.065) | −0.063(0.05) | −0.044(0.043) | −0.1(0.077) | −0.04(0.043) | −0.075(0.059) | −0.056(0.049) | −0.012(0.04) |
6 | Nanmadol | −0.097(0.112) | −0.116(0.121) | −0.109(0.117) | −0.079(0.108) | −0.109(0.129) | −0.029(0.099) | −0.063(0.122) | −0.101(0.12) | −0.064(0.11) |
7 | Nesat | −0.233(0.167) | −0.259(0.168) | −0.231(0.169) | −0.192(0.166) | −0.254(0.162) | −0.166(0.168) | −0.186(0.158) | −0.2(0.164) | −0.13(0.168) |
8 | Nalgae | −0.017(0.136) | −0.052(0.14) | −0.016(0.137) | 0.037(0.14) | −0.034(0.137) | 0.092(0.144) | 0.082(0.14) | 0.034(0.134) | 0.072(0.142) |
SD(Mean RMSE) | 0.143(0.115) | 0.155(0.120) | 0.148(0.120) | 0.131(0.115) | 0.156(0.122) | 0.132(0.115) | 0.145(0.115) | 0.145(0.118) | 0.117(0.109) |
Shown in the bottom are the Standard Deviation (SD) of maximum storm surge and the mean RMSE (in parenthesis).
It should be aware that the values of parameters a and c in the parabolic model are determined based on the storm surge observations associated with relatively strong typhoons in the SCS region. For other regions, the parabolic relationship between Cd and wind speed can be still applicable but the values of parameters a and c should be determined based on observations in those regions using the same method. Therefore, our results reported here provide not only a new parabolic model of Cd applicable for the SCS region, but also a practical way to establish a parabolic model of Cd for other coastal regions.
Methods
The surge observations and the reconstructed wind data are used for adjusting initial conditions (ICs) and parameters (a, c) to obtain the ensemble of “optimal” parameters. The sea level data are from the research quality data set of Joint Archive for Sea level (JASL) which is provided by the University of Hawaii Sea-level Center (UHSLC)31. The JASL receives hourly data from regional and national sea level networks. The data were inspected and obvious errors such as data spikes and time shifts were corrected. Gaps less than 25 hours were interpolated. In this study, we focus on the storm surges caused by Tropical cyclones (TCs) in the SCS. Thus, 7 stations are selected for the optimization of Cd and validation (Fig. 3 and Table S4 in Supplementary Information Online). Three of the selected stations (number 1–3) are used for optimizing Cd through 4DVAR and the rest (number 4–7) are used for the validation. The tidal information in the observations is removed by subtracting tidal component (obtained by the harmonic analysis) from the original sea level. After that, there is still high frequency information in the data, thus a filtration with 3-hour period is performed before the optimization of Cd and further analysis.
As the wind biases are large for satellite analysis data around the center of TC and for the empirical TC wind model far from TC center, we reconstruct a sea surface wind data by combining the satellite analysis wind and the empirical model wind. In this study, Holland model is used for the calculation of empirical TC wind32. The tangential wind speed from the empirical Holland model, which is based on the balance between the pressure gradient and centrifugal forces, can be expressed as
where A and B are the scaling parameters, pn and pc are the ambient and central pressure of the storm, respectively, ρa is the air density, r is the distance from the storm center, and RMW is the radius of the maximum wind (RMW, the distance between the center of a cyclone and its band of the strongest wind). Here, the best track data from Joint Typhoon Warning Center (JTWC) are used33. Empirically, B lies between 1 and 2.5. In this study, B is set to be 1.7 which is the median of the range. The satellite analysis wind is from the 6-hourly Cross-Calibrated Multi-Platform (CCMP) wind data with a spatial resolution of 0.25°. The CCMP data set combines data derived from SSM/I, AMSRE, TRMM TMI, QuikSCAT, and other missions using a variational analysis method (VAM) to produce a consistent climatological record of ocean surface vector winds at 25-km resolution34. To combine the two data sets we introduce a weight coefficient,
where VH is the wind data from Holland model, VCCMP is the wind data from CCMP. The weight coefficient e is defined as e = C4/(1 + C4), and C = r/(nRMW) is a coefficient measuring the area affected by a TC. r is the distance between the center of a cyclone and the calculation point. Empirically, parameter n is set to 9 or 10 (compared with the maximum wind speed of JTWC, n is set to be 9 in this study). Vnew is assumed to be the realistic wind and used for the adjustment of Cd.
The 4DVAR system used for the adjustment of Cd is based on the 2002 version of Princeton Ocean Model (POM2k)35 as well as its tangent linear and adjoint models29. The POM2k is a three dimensional, fully nonlinear, primitive equation ocean model, and the 2.5-order turbulence closure scheme of Mellor and Yamada (1982) to calculate turbulence viscosity and diffusivity36. Due to the limited space here, we refer the readers to Peng and Xie (2006) for details on the linearization of the vertical turbulence scheme as well as other issues related to the tangent linear and adjoint models of POM2k. In this study, ICs and parameters a and c of Cd are chosen as the control variables in the adjoint model (as proposed by Li et al. (2013)). The cost function with ICs and parameters a and c being the control variables is defined as a misfit between the model and the observations, i.e.
where x0 represents the ICs, M nonlinear ocean model, H the observation operator, yobs the observation variables, and T the assimilation time window. The cost function is calculated when observations are available and the absolute value of surge is over 0.1 m. In addition, the wind speed data used for the estimation range from 10 m s−1 to 70 m s−1 for the selected cases. In order to find the optimal values for a and c, the minimization of cost function is performed. It is achieved by obtaining its gradient with respect to the control variables X0, a and c by integrating the adjoint model of POM2k backward in time. The limited memory Broyden-Fletcher-Goldfarb -Shanno (BFGS) quasi-Newton minimization algorithm37 is employed to obtain the optimal control variables. The optimization process is illustrated by the flowchart shown in Fig. S1 of the Supplementary Information online.
Additional Information
How to cite this article: Peng, S. and Li, Y. A parabolic model of drag coefficient for storm surge simulation in the South China Sea. Sci. Rep. 5, 15496; doi: 10.1038/srep15496 (2015).
Supplementary Material
Acknowledgments
This work was jointly supported by the MOST of China (Grant Nos. 2014CB953904, 2011CB403505), China Special Fund for Meteorological Research in the Public Interest (No. GYHY201406008), the Strategic Priority Research Program of the Chinese Academy of Sciences (Grant No. XDA11010304), National Natural Science Foundation of China (Grants Nos. 41376021 and 41306013) and Guangdong Marine’s disaster emergency response technology research center (2012A032100004). Thanks also go to the graphic software packages, i.e., Microsoft excel and Matlab, which were employed to plot the figures. The authors gratefully acknowledge the use of the HPCC at the South China Sea Institute of Oceanology, Chinese Academy of Sciences.
Footnotes
Author Contributions S.P. designed the study. Y.L. performed the experiments and analysis. S.P. wrote the manuscript.
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