1. Introduction
The momentum transfer between the atmosphere and the ocean plays an important role in the evolution of weather and climate [
1,
2,
3]. Parameterization of the momentum transfer across the air–sea interface is essential to the modeling of many air–sea interaction activities, such as tropical cyclones and ocean waves [
4]. In the current applications, the air–sea momentum flux
τ is usually estimated from the drag coefficient
Cd as follows:
where
is the air density,
is the friction velocity, and
is the wind speed at 10 m elevation above the sea surface. The logarithmic wind profile law can be expressed as [
5,
6,
7]:
where
is the von Kármán constant, and
is the sea surface aerodynamic roughness,
is the stratification correction for the logarithmic wind profile, which is a function of the Obukhov length
L, and the function of
can be found in Paulson [
8] for unstable stratification and in Grachev et al. [
9] for stable stratification, respectively. By combining Equations (
1) and (
2), the relationship between
and
is given as:
Thus, there is an one-to-one correspondence between and under a certain stratification, specifying that specifies and vice versa. The sea surface aerodynamic roughness is widely used in the parameterization of the sea surface wind stress.
In current numerical models,
and
are often parameterized as the function of wind speed
. In low and moderate wind conditions (
m/s), the results of many experiments show that
increases linearly with wind speed [
10,
11,
12,
13]. Thus, the function of
in low and moderate wind speed conditions can be expressed as [
14]:
By fitting the coefficients
a and
b to observational data, different results were obtained from different studies (
Table 1); the functions of
in low and moderate wind conditions from different research are qualitatively consistent, but differ significantly in values.
Due to the lack of observational data in high wind speeds, the linear relationship between
and
in low and moderate winds has been extrapolated to high wind conditions in early applications, such as the modeling of tropical cyclones [
25] and waves [
26]. However, some recent experiments from both field and laboratory showed that
tends to saturate [
27,
28] or decrease [
29,
30] with wind speed at extremely high wind speeds. Therefore, in many recent applications of tropical cyclone [
31,
32] and storm surge modeling [
33], the increasing value of
has been replaced by a constant that does not change with wind speed, or a value that decreases with increasing wind speed.
Several mechanisms of
saturation at high wind speeds from different aspects have been proposed, and a summary of them can be found in Bryant and Akbar [
34]. Many researchers ascribed the reduction or saturation of the
to interface slipping and flattening accompanied by intense wave breaking at high wind speeds, which makes the wave steepness decrease or no longer increase, thereby affecting the aerodynamic roughness [
35,
36,
37]. While some other researchers focused on the effect of sea foam on the momentum transfer process [
38,
39,
40], the sea surface is covered by sea foam under high wind speed conditions, which changes the dynamics and thermodynamics of the air–sea interface. In addition to these two mechanisms, several other researchers explain the sea surface drag saturation from the unique airflow caused by breaking waves [
41,
42].
As the dependence of
on wind speed varies significantly (
Table 1), the drag coefficient might depend not only on the wind speed [
43]. Based on the above mentioned mechanisms of
saturation at high wind speeds, the dynamics and thermodynamics properties of the air–sea interface are crucial for the momentum transfer. Hence, it is convincible to parameterize the drag coefficient or the sea surface aerodynamic roughness through factors that describing the characteristic of the air–sea interface, i.e., wave age [
44] and wave steepness [
14].
Wave age and wave steepness are two of the most frequently used parameters to describe the air–sea interface and the development of wind wave. Wave age () is defined as the ratio between spectral peak phase velocity and wind speed , or replace with friction velocity (). Wave age denotes the relative speed of wave to wind, the smaller the , the lower the wave relative to the wind, and thus the more momentum transferred from the air to the sea. Wave steepness () is defined as the ratio between significant wave height and the wavelength at the spectral peak , denotes the physical roughness of the sea surface. In general, describes the relative magnitude of wave speed and wind speed, while describes the characteristic of roughness.
Due to the importance of wave state on the momentum transfer across the air–sea interface, many wave parameter based schemes have been proposed to improve the parameterization of the momentum transfer [
12,
45,
46,
47]. The dimensionless roughness
is often applied in the wave state related parameterization of the momentum transfer, as it has a stronger correlation with
and
than the original
and
[
48]. Smith et al. [
11], Donelan et al. [
46], and Drennan et al. [
49] have proposed their function of
based on
or
, respectively:
These studies demonstrated a decreasing of the dimensionless roughness
with an increasing of wave age. On the other hand, Anctil and Donelan [
50], Taylor and Yelland [
51], and Takagaki et al. [
28] have proposed their functions of
based on
, respectively:
These studies demonstrate an increasing of the dimensionless roughness
with an increasing of wave steepness. The merits and limitations of both wave age based and wave steepness based sea surface roughness parameterization have been examined in several studies. Among them, the wave steepness based scheme proposed by Taylor and Yelland [
51] (see Equation (
9), hereafter TY01) and the wave age based scheme proposed by Drennan et al. [
49] (see Equation (
7), hereafter DN03) have received the most attention [
48,
52,
53]. In general, the wave state related parameterizations present a better performance than the wind speed related bulk parameterizations, wave age based and wave steepness based schemes showed advantages in different wind or wave conditions, but none of them showed a good performance in all situations.
In addition to the wave state, sea foam also has a significant effect on the dynamics and thermodynamics properties of the air–sea interface. Under high wind conditions, the impact of sea foam on momentum transport cannot be ignored [
54]. Owing to the lack of observational wave data under high wind conditions (
m/s), the aforementioned wave state related parameterizations have been proposed based only on the observational wave data under low to moderate wind speeds (
m/s). Note that, since the impact of sea foam on sea surface is minimal at low to moderate wind speeds [
38,
55], the effect of sea foam has not been included in these parameterizations implicitly.
In this study, we have evaluated the performance of two most widely used wave state related parameterizations (TY01 and DN03), using a combination of eight datasets including various wind and wave conditions. Based on the advantages and limitations of two schemes in different conditions, we propose a new wave state related parameteration scheme, by adding the effect of sea foam to the momentum transfer for existing schemes, which is verified to be suitable for low to extreme wind conditions ( m/s).
The paper is organized as follows:
Section 2 describes the observational datasets used to evaluate the performance of two wave state related parameterizations. Based on the different performances of two wave state related parameterizations under different wave states, a combination of them is proposed in
Section 3.
Section 4 introduces the effect of sea foam into the scheme presented in
Section 3; thus, the new parameterization of sea surface roughness based on the wave state and sea foam is proposed.
predicted by the new parameterization under high wind speed conditions is verified by the observational data in
Section 5. Finally,
Section 6 gives a summary of this study.
2. Datasets
To examine the performance of two most widely used wave state related parameterization: wave age based DN03 and wave steepness based TY01, eight observational datasets (published in tabular form) were used in this study. Wind stress in seven datasets was calculated using the direct eddy-correlation (EC) method [
56] and the other dataset adopted the inertial dissipation (ID) method [
57]. These datasets are described below, and a summary of them is given in
Table 2.
- a.
Lake Ontario
The Lake Ontario dataset was collected from the air–sea interaction experiment conducted in the western basin of Lake Ontario in the autumn of 1994 and 1995. A sonic anemometer was deployed on a 7.8 m-height bow mast to measure the wind fluctuations, which were used to calculate wind stress, and the sampling time of each run was 80 min (by pooling four consecutive 20-min averages groups to reduce the sampling error). Wave information was measured using a wave staff array. Here, we use the Lake Ontario data published by Anctil and Donelan [
50].
- b.
AUSWEX
The Australian Shallow Water Experiment (AUSWEX) took place in the eastern basin of Lake George in 1997–2000 [
58]. Two anemometer masts, accommodating wind probes, were mounted at 10-m height. Wind stress was calculated using the 21-Hz velocity data measured from an ultrasonic anemometer. Wave data were measured using eight wave probes. Here, we use the AUSWEX data published by Babanin et al. [
59].
- c.
ERS Validation
The wind stress and wave data in this dataset were the validation data for the Grand Banks Earth Remote Sensing Satelite (ERS-1) Synthetic Aperture Radar (SAR) Wave Validation Experiment, which was collected from the scientific ship
Hudson in the open North Atlantic. Wind data were measured using an anemometer system deployed on the bow of the ship, and the height of the system was 14 m. Wave data were measured using three wave buoys. Data used in this study were published by Dobson et al. [
60].
- d.
SWADE
The data presented by Drennan et al. [
61] were taken as part of the Surface Waves Dynamics Experiment (SWADE), which was conducted in 1990–1991 off the coast of Virginia. A 20-m swath ship was deployed to provide a high-resolution measurements near the air–sea interface [
62]. Wind fluctuations were measured from an 12-m height anemometer, from which the wind stress was calculated, the sampling time was 17 min. Wave information was obtained using a wave staff array.
- e.
FPN
The North Sea Platform (FPN) experiment in 1985 was carried out on a platform located 65 km southwest of West Strand. Wind fluctuations were measured using a 33-m height sonic anemometer to calculate wind stress, and the sampling time was 30 min. Wave data were collected by a rider buoy located 800 m southwest of the platform, and were recorded on the platform. Data used in our study were released by Geernaert et al. [
12] in tabular form.
- f.
HEXOS
The Humidity Exchange over the Sea (HEXOS) experiment was carried out on the Dutch research platform
Meetpost Noordwijk (MPN) in the autumn of 1986. Wind fluctuations were obtained using a sonic and a pressure anemometer concurrently to calculated wind stress, height of them was 6 m, data collected from the pressure anemometer were adopted in this study, the sampling time for each run was 20 min. Wave data were collected by a rider buoy which was 150 m away from the platform. Here, we use the HEXOS data published by Janssen et al. [
63].
- g.
RASEX
The Risø Air–Sea Exchange (RASEX) field experiment was performed at a shallow-water site near Denmark. In this experiment, wind fluctuation data were obtained from a 3 m height sonic anemometer, accompanied by the mean wind speed data collected from a cup anemometer located at 7 m, the sampling time for each run was 30 min. Wave data were gathered from the wave gauge near the tower. Data used here were obtained from Johnson et al. [
64].
- h.
GOTEX
The Gulf of Tehuantepec Experiment (GOTEX) was carried out in February 2004. Data used in this study were presented by Romero and Melville [
65], which were obtained from the National Science Foundation/National Center for Atmospheric Research (NSF/NCAR) C-130 aircraft. Vector winds were measured by the airborne detector at 25 Hz frequency, from which wind stress was calculated [
66]. Frictional velocity
was estimated from the lowest-height runs (about 40 m above the water surface) with a time average of 50 s. The sea surface elevation data were measured using a lidar system.
Table 2.
Summary of eight datasets. The method EC denotes the wind stress was measured using direct eddy-correlation method, ID denotes the inertial dissipation method.
Table 2.
Summary of eight datasets. The method EC denotes the wind stress was measured using direct eddy-correlation method, ID denotes the inertial dissipation method.
Dataset | Lake Ontario | AUSWEX | ERS Validation | SWADE |
---|
Reference | Anctil and Donelan [50] | Babanin et al. [59] | Dobson et al. [60] | Drennan et al. [61] |
Platform | tower | suspended bridge | ship | ship |
Location | Lake Ontario | Lake George | North Atlantic | Atlantic shelf |
Method | EC | EC | ID | EC |
Height | 7.8 m | 10 m | 14 m | 12 m |
Sampling time | 80 min | 10 min | 10∼30 min | 17 min |
Dataset | FPN | HEXOS | RASEX | GOTEX |
Reference | Geernaert et al. [12] | Janssen et al. [63] | Johnson et al. [64] | Romero and Melville [65] |
Platform | FPN platform | MPN platform | tower | aircraft |
Location | North Sea | North Sea | Baltic coast | Gulf of Tehuantepec |
Method | EC | EC | EC | EC |
Height | 33 m | 6 m | 7 m | about 40 m |
Sampling time | 30 min | 20 min | 30 min | 50 s |
In several datasets, the wavelength at the spectral peak
was not measured directly. We calculate it using the dispersion relationship:
where
is the angular frequency,
g is the gravitational acceleration,
k is the wavenumber, and
h denotes the depth of water. For deep water (
, where
L is the wavelength),
can be calculated from:
where
denotes the period of wave at the spectral peak. If deep water conditions are not met, by substituting
and
into Equation (
11),
can be calculated from
and
h. When both
and
(frequency of wave at the spectral peak) were not presented by the dataset,
can be determined using the equations developed by Carter [
67], which were derived from the Joint North Sea Wave Project (JONSWAP). For fetch limited seas:
where
X is the fetch in kilometers. For duration limited seas:
where
D is the duration in hours.
In addition to eight wind and wave datasets measured in low and moderate wind conditions, four datasets of
in high wind speed conditions are also used in the validation of our new sea surface roughness parameterization in
Section 5, two of them are field observations: Powell et al. [
29] and Jarosz et al. [
68], and the other two are laboratory observations: Donelan et al. [
27] and Takagaki et al. [
28]. Here, we make a brief introduction to them.
Powell et al. [
29] measured the wind profile in tropical cyclone boundary layer using Global Positioning System, from the intercept and slope of the wind profile,
and
for winds up to 50 m/s are measured.
Due to the difficulties of direct stress measurements at high wind speeds caused by the spray droplets and the damages of winds to the instruments, Jarosz et al. [
68] estimated the air–sea momentum transfer from the ocean side, namely the bottom-up method [
27]. Using currents’ observations recorded by the Acoustic Doppler current profiler during Hurricane Ivan,
is calculated from:
where
and
are the density for water and air, respectively;
f is the Coriolis parameter;
and
are the depth-integrated along and across the continental shelf current velocity components, respectively;
is the along-shelf component of 10 m wind speed; and
r is a constant resistance coefficient at the sea floor, which describes the degree of the bottom friction, and it usually ranges from 0.0001 cm/s to 0.1 cm/s. Using the bottom-up method,
is estimated under different
r for winds between 20 and 48 m/s.
Donelan et al. [
27] measured
in laboratory conditions for winds up to 53 m/s using the Air–Sea Interaction Facility at the University of Miami, three methods were compared in the calculation of
: momentum budget (MB), profile method (PM), and Reynolds stress (RS), the results from which were only slightly different. Tools for measuring stress include hot-film anemometry, digital particle image velocimetry (DPIV), and laser/line scan cameras for measuring the water surface elevation.
Using a high-speed wind-wave tank, Takagaki et al. [
28] measured
and
for winds up to 64 m/s from wind velocity components collected by laser Doppler and phase Doppler anemometers; the eddy correlation method was utilized in their measurements to calculate
and
.
3. Evaluation of Two Wave State Related Parameterizations
The dimensionless roughness
of data points from eight datasets are plotted in
Figure 1a against wave steepness
, the curve of TY01 is also shown as the solid line. It is shown that TY01 is able to describe the positive correlation between
and
in general, but the data points are quite scattered.
For comparison, we plot the same data points using the wave age scaling in
Figure 1b, i.e.,
versus
. The curve of DN03 provides a better prediction of the dimensionless roughness
than TY01, the data points are more concentrated near the curve than in
Figure 1a.
Although the plots of dimensionless roughness
for all data points show the overall performance of two parameterizations, it is more instructive to test how they predict the drag coefficient.
can be converted to
by Equation (
3). A comparison between measured and predicted
has been made for each dataset, and the results of TY01 and DN03 are presented in
Figure 2 and
Figure 3, respectively. Note that the data points that fall within the 90% confidence regions are denoted as black points.
The 90% confidence regions for datasets using the EC method are calculated based on the sampling errors
[
69], where the sampling errors of six EC datasets can be calculated following Donelan [
70]:
where
is the sampling time (s),
U is the mean wind speed for an experiment, and
z is the height of the anemometer above the water level. The sampling errors of eight datasets are summarized in
Table 3. It is worth mentioning that the wind stress in the ERS Validation dataset was calculated using the ID method, Equation (
16) is not applicable, and, following Drennan et al. [
52], we assume an error equal to the mean sampling error of the EC data (25.77%). Similarly, data from GOTEX were collected from the aircraft, and the measuring instrument and post-processing method were inconsistent from other datasets. Equation (
16) is suitable mainly for traditional platforms, i.e., buoy and tower. Thus, the sampling error for GOTEX dataset was also assumed as the mean sampling error for the EC data (25.77%).
In
Figure 2 and
Figure 3, the 90% confidence regions are shown as the areas between the dotted lines, and the slope of the upper and the lower boundary line is
and
, respectively. To evaluate the performance of TY01 and DN03 quantitatively,
was defined as the percentage of data points that fall within the 90% confidence regions. The normalized bias (
) is defined as:
and the normalized root-mean-square-error (
) is defined as:
where
is the observation, and
is the corresponding value calculated from parameterization schemes [
71]. In addition,
,
, and
predicted by TY01 and DN03 for each dataset are shown in
Table 4, also shown are the mean
, mean
, and mean
for each dataset. From
Table 4, we can see that the correlation between
and
or
is strong, and datasets with larger
tend to have smaller
and
, and datasets in which TY01 performs better under
are consistent with that under
. Considering that
is consistent with
and
qualitatively, and has the advantage of being able to take into account the sampling error of each dataset, we mainly focus on
in the following analysis.
We first consider the results predicted by TY01 shown in
Figure 2 and
Table 4. TY01 is seen to work well for the AUSWEX, HEXOS, RASEX, and GOTEX datasets with a
larger than 0.65, but
measured in ERA Validation, SWADE, and FPN datasets was poorly predicted with a
less than 0.4, especially in the FPN dataset (
). As we can see from
Figure 2,
in ERS Validation and FPN datasets were extremely overpredicted by TY01, it is worth noticing that the mean
of ERS Validation and FPN datasets were the largest two among eight datasets (both larger than 20), corresponding to a mature wave field. Moreover, TY01 underpredicted
from AUSWEX and RASEX datasets, whose mean
was the smallest two among eight datasets. The performance of TY01 shows an obvious sensitivity to
; for datasets having a larger
, TY01 tend to overpredict
from them; but, for datasets having a smaller
,
from them was underpredicted.
The results of DN03 were shown in
Figure 3 and
Table 4. The overall performance of DN03 is better than TY01. The results of DN03 from ERS Validation, SWADE, and FPN datasets are much better than TY01, but
measured in AUSWEX, HEXOS, and RASEX was poorly predicted and worse than TY01. For datasets in which DN03 performs well, the mean
was seen to be large (20.89, 18.88, 27.43, and 17.69 for ERS Validation, SWADE, FPN, and GOTEX, respectively), and in two datasets that have a smaller
(7.54 for AUSWEX and 12.68 for RASEX), the performance of DN03 is quite worse. Therefore, the performance of DN03 also shows a sensitivity to
.
In order to analyze the applicability of TY01 and DN03 in different conditions, we examine the sensitivity of their performance to
,
, and
. Here, we use TY01_in to denote the data points predicted by TY01 that fall within the 90% confidence regions, corresponding to those data accurately predicted by TY01; and TY01_out to denote the data points predicted by TY01 that fall outside the 90% confidence regions, corresponding to those data that are not accurately predicted by TY01. DN03_in and DN03_out are the same, but for data points predicted by DN03.
Table 5 shows the mean
, mean
, and mean
of TY01_in, TY01_out, DN03_in, and DN03_out.
The mean and of TY01_in is much smaller than that of TY01_out, demonstrating that TY01 tends to have better performance at younger wave conditions. The mean of TY01_in is close to the mean of TY01_out, indicating that the performance of TY01 is not sensitive to . The difference of the mean between DN03_in and DN03_out is not as obvious as between TY01_in and TY01_out, but the difference of the mean between DN03_in and DN03_out is non-negligible. The difference of the mean between DN03_in and DN03_out is not obvious, demonstrating that the performance of DN03 is also not sensitive to the wave steepness.
Considering that the performance of TY01 and DN03 is both sensitive to
, to further investigate the sensitivities of the performance of TY01 and DN03 to
, we divide the 471 data from eight datasets into 10 groups of roughly equal numbers (47 or 48 per group) according to
from low to high, and calculate the
of each group, the results are shown in
Table 6. Changes in performance of TY01 and DN03 with
are clearly demonstrated, when
exceeds 16, the performance of TY01 drops significantly; when
is smaller than 10, the performance of DN03 is relatively poor. Considering the different performance of TY01 and DN03 in different conditions, it is reasonable to combine them by using TY01 in small
conditions and using DN03 in large
conditions. Another issue is the choice of the demarcation point between TY01 and DN03, since the datasets used in this study do not cover all wind and wave conditions, and there are inconsistencies between datasets due to different observation and processing methods, we cannot determine the demarcation points arbitrarily as the point where the performance of DN03 exceeds TY01. Therefore, we use the
relationship derived from
Toba’s [
72] 3/2 power law to determine the demarcation points between TY01 and DN03. The well-known 3/2 power law is given as:
where
and
are non-dimensional significant wave height and period, and
is a constant. The 3/2 power law has been verified by many studies [
64,
73,
74], which is suitable for low to extreme wind conditions [
48]. Multiplying Equation (
19) by
, we get:
by using the relation between significant wave period
and peak wave period
[
75,
76]:
and by calling the relation
, Equation (
20) can be rewritten as:
By combining Equation (
7) (function of DN03), Equation (
9) (function of TY01), and Equation (
22), we work out that the curves of TY01 and DN03 intersect at
. According to the above inference,
is selected as the demarcation point between TY01 and DN03, TY01 is adopted when
, and DN03 is adopted when
:
To verify the validity of the combination of TY01 and DN03 given in Equation (
23),
Figure 4 plotted a comparison between the measured
and the corresponding values predicted by Equation (
23) as in
Figure 2 and
Figure 3. By comparing
Figure 2 and
Figure 4, we can see that the performance of the combined scheme is much better than that of TY01, especially in ERS Validation and FPN datasets. By comparing
Figure 3 and
Figure 4, the improvement of the combined scheme compared to DN03 mainly comes from the RASEX dataset; most of the RASEX data overestimated by DN03 have been improved in the combined scheme. We further compared the
,
, and
predicted by TY01, DN03, and the combined scheme for the total eight datasets (
Table 7); the results show that the performance of the combined scheme is much better than TY01 in
and
, and slightly better than that of DN03,
predicted by the combined scheme is slightly worse than DN03. Considering that
mainly describes the overestimation or underestimation of the prediction, and can be offset if both overestimation and underestimation exist, while
and
are the key parameters to show the overall performance; the results in
Table 7 prove that the performance of the combined scheme is better than TY01 and DN03.
4. Effect of Sea Foam
TY01 was developed using three datasets: HEXOS, RASEX, and Lake Ontario, and DN03 was developed using the pure wind sea subsets of five datasets: AGILE (measured from the 15-m research vessel
AGILE) [
77], FETCH (Flux, sea state and remote sensing in conditions of variable fetch) [
78], HEXOS, SWADE, and WAVES (Water–Air Vertical Exchange Study) [
79]; these datasets were collected under low and moderate wind conditions (
m/s). Compared to low and moderate wind conditions, a significant change in high wind conditions (
m/s) is the generation of sea foam due to intense wave breaking, which plays an important role in the leveling off or decrease of
and
. Since the effect of sea foam on sea surface roughness is minimal at low to moderate wind speeds [
38,
55], the effect of sea foam was not implicitly included in the proposing of TY01 and DN03, and an introduction of the effect of sea foam to TY01 and DN03 will enhance their applicability for high wind speed conditions.
A semi-empirical model is proposed by [
55] to estimate the influence of sea foam on aerodynamic roughness. Their model treats the effective air–sea aerodynamic roughness (
) as the weighted sum of two parts: one is the foam-free (
) part and the other is the foam-covered (
) part. The average
under area
S is assumed as follows:
Here,
is the total area, in which
and
are the foam-free and foam-cover areas, respectively. Thus, Equation (
24) can be rewritten as:
by defining
as the fractional foam coverage, we obtain:
The fractional foam coverage
is highly related to
[
80]. The function between
and
can be approximated from the observational data as in Holthuijsen et al. [
80]:
with
,
, and
. To demonstrate the different patterns of
in different situations, a universal dimensionless form of Equation (
27) is given as:
where
,
is the saturation speed, defined as the value where the difference between
and its saturation limit
is less than 2%. The curve of foam coverage
versus
from Equation (
28) varies and
is presented in
Figure 5, the results show that, when the wind speed
exceeds 40 m/s, the foam coverage
is very close to 0.98, while
is minimal when
is less than 20 m/s. Observational data collected from the open ocean by Holthuijsen et al. [
80] suggest a value of
m/s. According to the open-ocean experimental data for
or, alternatively,
[
29], it is assumed that the minimum value for
or,
m is reached at the same wind speed
m/s (see
Figure 2 and
Figure 3 in Golbraikh and Shtemler [
55]). Because the relation between
and
in laboratory conditions is quite different from that of the open ocean, Golbraikh and Shtemler [
55] suggested a different minimum value for
in laboratory conditions, which is
m. Then, we adopt
m/s as the saturation velocity, and the minimum value of
m as the foam-covered aerodynamic roughness
in Equation (
26) for open ocean conditions, and the minimum value of
m for laboratory conditions. As the effect of sea foam was not implicitly included in the proposing of TY01 and DN03, the aerodynamic roughness predicted by Equation (
23) can be taken as the foam-free aerodynamic roughness
in Equation (
26), substituting Equation (
23) into Equation (
26), a new parameterization of sea surface roughness including the impact of sea foam is obtained:
where
is the aerodynamic roughness,
is wave steepness,
is wave age,
is the significant wave height,
is the foam coverage (calculated from Equation (
28)), and
is the foam-covered aerodynamic roughness (taken as 0.0003 m for open ocean conditions, and 0.0028 m for laboratory conditions in this study). By combining TY01 and DN03 in the form of a piecewise function, the new proposed parameterization is able to make better predictions of
in various wind and wave conditions. By adding the impact of sea foam, the predictions of
in high wind speed conditions are improved.
6. Conclusions
An accurate estimate of momentum transfer across the air–sea interface is vital for atmospheric, oceanic, and surface wave prediction models. Compared with parameterization of momentum flux based on wind speed, parameterization based on wave state can describe the nature of the air–sea interface more directly. Wave age (
, or
) and wave steepness (
) are two of the most frequently used parameters to describe the air–sea interface and the development of wind wave. Using eight observational datasets, the performances of two most widely used wave state related parameterizations: TY01 and DN03, are examined under various wave conditions. TY01 shows a better performance for the younger waves (smaller
), while DN03 is more suitable for wave fields with medium or large wave age. Hence, we use a combination of them to get a better performance under various wave conditions: for
, TY01 is adopted; and, for
, DN03 is adopted. The demarcation point
is selected from the
relationship derived from
Toba’s [
72] 3/2 power law (see Equation (
22)). Considering that TY01 and DN03 were developed using observational data under low and moderate wind speed conditions (
m/s), the effect of sea foam was not included explicitly or implicitly in the proposing of TY01 and DN03. By introducing the effect of sea foam into the scheme presented in
Section 3 (see Equation (
23)), a new parameterization of sea surface roughness based on the wave state and sea foam is proposed (see Equation (
29)).
predicted by the new parameterization increases with wind speed in the range of 0∼30 m/s; the maximum values are reached at about 30∼35 m/s and then decrease at the wind speed about 35∼45 m/s under the effect of sea foam; its behavior is also supported by the field observations from [
29,
68]. The saturation values of
in laboratory measurements from [
27,
28] is also reproduced by the new parameterization.
Due to the vital role of wave state and sea foam on the momentum transfer across the air–sea interface, the new proposed sea surface roughness parameterization is suitable for the coupled atmosphere-ocean-wave modeling systems. Furthermore, as the effects of sea foam are included in the presented parameterization, it is also applicable for the modeling of some severe air–sea interaction activities accompanied with extreme winds, such as tropical cyclones, and the wave modeling of storm surge.
Finally, it should be emphasized that, due to the lack of simultaneous wave state measurements under high wind speed conditions, the values predicted by the new parameterization have not been compared with the observational data directly. Thus, more field and laboratory experiments containing simultaneous wind and wave state measurements, especially for high wind speed conditions, are needed to further verify the performance of the new parameterization, and to investigate the specific mechanism of air–sea interaction. However, although a direct comparison between the new parameterization with the observational data at high wind speeds is difficult, assessing it in the numerical weather prediction system is more realistic. It is our plan to implement the new parameterization in numerical models, including large-eddy simulations and coupled atmosphere-wave models, and to evaluate the performance of our parameterization from the model results.