Journal Pre-proof Tropical cyclone enhanced vertical transport in the northwestern South China Sea I: Mooring observation analysis for Washi (2005) Liju Wang, Lingling Xie, Quanan Zheng, Junyi Li, Mingming Li, Yijun Hou PII:
S0272-7714(19)30689-4
DOI:
https://doi.org/10.1016/j.ecss.2020.106599
Reference:
YECSS 106599
To appear in:
Estuarine, Coastal and Shelf Science
Received Date: 25 July 2019 Revised Date:
8 January 2020
Accepted Date: 10 January 2020
Please cite this article as: Wang, L., Xie, L., Zheng, Q., Li, J., Li, M., Hou, Y., Tropical cyclone enhanced vertical transport in the northwestern South China Sea I: Mooring observation analysis for Washi (2005), Estuarine, Coastal and Shelf Science (2020), doi: https://doi.org/10.1016/j.ecss.2020.106599. This is a PDF file of an article that has undergone enhancements after acceptance, such as the addition of a cover page and metadata, and formatting for readability, but it is not yet the definitive version of record. This version will undergo additional copyediting, typesetting and review before it is published in its final form, but we are providing this version to give early visibility of the article. Please note that, during the production process, errors may be discovered which could affect the content, and all legal disclaimers that apply to the journal pertain. © 2020 Published by Elsevier Ltd.
1
Tropical cyclone enhanced vertical transport in the northwestern
2
South China Sea I: Mooring observation analysis for Washi (2005)
3
Liju Wanga, Lingling Xiea, b∗, Quanan Zhengc, Junyi Lia,b, Mingming Lia,b, Yijun Houd
4
a
5
and Meteorology, Guangdong Ocean University, Zhanjiang 524088, China
6
b
7
Guangdong Laboratory (Zhanjiang), Zhanjiang 524025, China
8
c
9
20742, USA
Guangdong Key Laboratory of Coastal Ocean Variation and Disaster Prediction, College of Ocean
Marine Resources Big Data Center of South China Sea, Southern Marine Science and Engineering
Department of Atmospheric and Oceanic Science, University of Maryland, College Park, Maryland
10
d
11
Highlights
12
Storm-induced vertical velocity and transport are diagnosed from mooring
13
observations
14
Geostrophic and unsteady components dominate variation of the vertical velocity
15
Upward velocity was enhanced to O(1×10-3) m s-1 as storm Washi (2005) passed
16
Diagnosed vertical velocity is one order larger and one day later than Ekman pumping
17
Vertical advection transport of O(1×10-5) kg s-1 m-3 is greater than mixing diffusion
18
flux
Institute of Oceanology, Chinese Academy of Sciences, Qingdao 266071, China
∗
Corresponding author at: College of Ocean and Meteorology, Guangdong Ocean
University, Zhanjiang 524088, China. Tel.: +86 759 2396037; fax: +86 759 2396055. E-mail address:
[email protected] 1
19
Abstract
20
Using mooring-observed horizontal velocities and temperature from July 28 to
21
August 2, 2005, this study analyzes the temporal-vertical variation of the diagnostic
22
vertical velocity and mass transport during passage of tropical storm Washi (2005)
23
over the northwestern continental shelf of the South China Sea (SCS). The results
24
show that the total vertical velocity is of the order of O(1×10-4) m s-1 in the mixed
25
layer above 25 m, and of O(1×10-5) m s-1 in the lower layer. Dynamically, the
26
geostrophic advection and unsteady behavior of density induced by near-inertial
27
oscillation are dominant factors in the upper and lower layers, respectively. As
28
tropical storm Washi (2005) passed by from July 29 to 31, 2005, the upward vertical
29
velocity was dominant and significantly enhanced to the order of O(1×10-3) m s-1.
30
The diagnosed vertical velocity in the upper layer is one order greater than the
31
averaged Ekman pumping velocity, which occurred one day earlier. The vertical
32
advection transport calculated from the diagnosed vertical velocity reaches O(1×10-5)
33
kg s-1m-3, one order greater than that induced by turbulent mixing. Time-averaged
34
transports by vertical advection and mixing are both upward in the layer above the
35
thermocline during the storm passage.
36
Keywords: vertical velocity; turbulent mixing; tropical cyclone; mooring observation;
37
South China Sea.
2
38
1. Introduction
39
Tropical cyclone-induced ocean vertical transport is of great importance for
40
coastal bio-geo-physical research (Williams et al., 2007; Li et al., 2010; Barceló-Llull
41
et al., 2016; Wu et al., 2016; Zhan et al., 2018; Aoki et al., 2019; Kashem et al., 2019).
42
It is this vertical motion that transports the subsurface cold water rich in dissolved
43
matters up to the euphotic layer, determining the abundance of phytoplankton (Allen
44
et al., 2005; Lévy et al., 2005), and affecting fishery production in continental shelf
45
seas (Hong et al., 2011; Nowald et al., 2015; Zhang et al., 2018).
46
Ocean vertical velocities are generally smaller than 1×10-3 m s-1 and hard to
47
measure directly using the state-of-the-art cruise observation technologies (Liang et
48
al., 2017; Xie et al., 2017b). As a consequence, dynamic diagnosis methods have been
49
developed to calculate the vertical velocity from hydrographic observations (Hoskin
50
et al., 1978; Bryden, 1980; Halpern et al., 1989; Lindstorm and Watts, 1994). For
51
example, Poulian (1993) obtained an upwelling velocity of 1.5 – 2×10-4 m s-1 at a
52
depth of 50 m in the equatorial Pacific from drifter current measurements. Lindstorm
53
and Watts (1994) derived a vertical velocity of about 1×10-3 m s-1 in the Gulf Stream
54
from float pressure measurements. Using a generalized omega equation, a steady
55
vertical velocity of the order of 5×10-4 m s-1 was derived from 3D observations of the
56
horizontal velocity and the density in the Alboran Sea (Pallàs-Sanz and Viúdez, 2005).
57
Recently, Sévellec et al. (2015) derived a new equation to calculate the variable
58
vertical velocity profiles based on single mooring observations of the horizontal 3
59
velocity and the density. This diagnostic method provides better estimates for the time
60
evolutionary vertical velocity without the requirement for fine-spatial-resolution
61
observations.
62
The northwestern continental shelf of the SCS is an ideal fishery ground due to
63
its high primary productivity (Xie et al., 2012a; Jing et al., 2015; Zheng et al., 2018).
64
In summer, the southwesterly monsoon prevails and the northeastward flow
65
dominates on the shelf (Qu, 2000; Su, 2004). Meanwhile, strong upwelling appears
66
along the coast accompanied by cross-shelf circulation (Jing et al., 2009; Xie et al.,
67
2012b; Hu and Wang, 2016). Previous investigators have estimated the coastal
68
upwelling velocity from observed isopycnal uplift, salinity flux or numerical models
69
under general weather conditions (Deng et al., 1995; Guo et al., 1998; Su and
70
Pohlmann, 2009). Using the generalized omega equation and high-spatial-resolution
71
cruise observations, Xie et al. (2017b) obtained the steady 3D vertical circulation in
72
the upwelling and front zones east of Hainan Island during the normal summer
73
monsoon period. They found the maximum downward velocity reached –5×10-5 m s-1,
74
accompanied by a maximum upward velocity of 7×10-5 m s-1 on two sides.
75
The northwestern continental shelf of the SCS is also a frequent path of tropical
76
cyclones from the Pacific and the SCS (Liu et al., 2011; Shi et al., 2019). On average,
77
there are 9 – 14 tropical cyclones passing the northwestern SCS every year (Wang et
78
al., 2007; Chen et al., 2012). Most of the tropical cyclones occur in summer months
79
from June to August, and are within intensity categories of tropical storm and severe 4
80
tropical storm (Yang, 2005; Zheng et al., 2015; Xie et al., 2017a). As the tropical
81
storm passes by, chlorophyll-a (Chl-a) concentration is significantly increased by
82
typhoon-induced upwelling and mixing (Gierach and Subrahmanyam, 2008; Lin,
83
2012; Ye et al., 2013; Zhang et al., 2014). Of the vertical velocity induced by tropical
84
cyclones, previous investigators usually calculated the Ekman pumping velocity (EPV)
85
in the upper layer using the wind stress curl (Chang et al., 2008; Sun et al., 2010;
86
Zhao et al., 2017). However, the vertical structure and temporal variation of the
87
cyclone-induced vertical velocity are seldom investigated.
88
This study aims to obtain the time-evolutionary profiles of vertical velocity
89
during tropical cyclone passage over the northwestern SCS, and makes an analysis of
90
the effects of the vertical advection and mixing on the vertical mass transport. In the
91
first part of the study, a diagnostic method is used with mooring-observed temperature
92
and horizontal velocities from July 28 to August 2, 2005 during the passage of
93
tropical storm Washi (2005), a representative case of tropical cyclones over the
94
northwestern SCS. The remainder of the paper is organized as follows. The next
95
section describes the cruise observation program, data processing, and diagnostic
96
equations. Section 3 analyzes the vertical structure of the vertical velocity and the
97
temporal variation during storm passage. The mass transports induced by vertical
98
advection and turbulent mixing are compared in section 4. Sections 5 and 6 contain
99
the discussion and conclusions.
100
2. Data and methodology 5
101
2.1. Data and data processing
102
A mooring observation system was deployed at 19°35′ N, 112° E in the
103
northwestern SCS (red dot in Figure 1a) for 6 days from July 28 to August 2, 2005 by
104
the Institute of Oceanology, Chinese Academy of Sciences. The depth of the mooring
105
station is 117 m, and about 100 km away from the east coast of Hainan Island. During
106
the observational period, the tropical storm Washi (2005) passed over the shelf 130
107
km south of the mooring station from July 29 to 31 as shown in Fig. 1a.
108
Affected by the storm Washi (2005), the wind direction turned anticlockwise
109
with an averaged southeasterly wind at the mooring station as shown in Fig. 1b. The
110
time series of wind speed at the mooring station are shown in Fig. 1c. One can see
111
that the wind speed was within a range of 4 – 8 m s−1 on July 28 before the storm and
112
August 1 – 2 after the storm, but reached a maximum value of 17 m s−1 on July 30
113
during the storm passage. The wind speed decreased on July 29 as the storm center
114
moved closer to the mooring station, and the wind speed was lower inside the
115
maximum wind speed radius of the storm.
116
A mooring system consisting of a downward-looking 190 kHz acoustic Doppler
117
current profiler (ADCP) and a temperature sensor chain was used to measure the
118
horizontal velocity and the temperature, respectively. The measurement range of the
119
ADCP is from 14 m to 114 m with a vertical interval of 2 m and a sampling rate of 10
120
minutes. The accuracy of the derived velocity is 1×10-2 m s-1. The observed vertical
121
velocity component cannot be used as the real ocean vertical velocity due to the 6
122
limited measurement accuracy and the measurement errors as the ADCP swung with
123
the mooring line. Temperature profiles were collected every 10 minutes from 4 m to
124
75 m with a vertical interval of 1 m. With the pre/post-cruise calibration, the accuracy
125
of temperature sensors reached about 0.01 oC (Xu et al., 2011).
126
Figs. 1d – f show the time series of horizontal velocity components
,
and
profiles derived from the mooring observations. One can see that on
127
temperature
128
July 28 before the storm, the horizontal velocities were dominated by the westward
129
flow with a maximum value of −0.4 m s−1 in the upper 40 m. The temperature was
130
higher than 29 ℃. After July 29, the horizontal velocities increased to ±0.5 m s−1 due
131
to passage of tropical storm Washi (2005). Moreover, the velocity directions were
132
opposite in the two layers above 20 m and below 45 m. The temperature in the upper
133
layer decreased to 28 ℃ as the layer depth increased. The isothermals oscillated
134
periodically as negative and positive velocities alternatively appeared.
135
The power spectra of the velocities and temperature are derived from the
136
periodogram method (not shown). We find that most of the energy is distributed at
137
frequencies lower than the inertial frequency (= 4.9 × 10-5 s-1). In the whole water
138
body, the sub-inertial (
139
in the mixed layer above 30 m.
≤ ) energy counts for 65% of the total energy, and up to 82%
140
In order to apply the diagnosis method to the main dynamic processes, we
141
low-pass the mooring observed velocities and temperature time series data using a
142
second-order Butterworth filter. The cutoff frequency is chosen to be 1.25 7
to retain
143
the local inertial frequency and remove high frequency components (Zhang et al.,
144
2014). The low-passed results are shown in Figs. 1g – i. One can see that sub-inertial
145
velocities (
146
reached 29 ℃ before the storm passage. During the passage of Washi (2005) on July
147
30, the sub-inertial velocities increased and the temperature dropped. The velocities
148
and isothermals exhibit a pronounced oscillation with a period of about 1.5 days,
149
which is the main component of the sub-inertial flow.
、 ) were dominated by the westward flow and the temperature ( )
150 151
Fig. 1. a) Study area with mooring station (red dot) and ground tracks of tropical
152
storm Washi (2005). Blue contours are isobaths in m. b) Time averaged wind field
153
during observation. c) Time series of wind speed at the mooring station during the 8
154
observation period. d-f) 2D (z – t) distributions of mooring observed zonal and
155
meridional velocity components u, v and temperature T. g –i) Sub-inertial signal
156
profiles derived from low-pass filtering of (d – f). Black dashed lines in panel (i)
157
represent the thermocline.
158
The climatological mean salinity profile for July and August obtained from
159
World
Ocean
160
https://www.nodc.noaa.gov/cgi-bin/OC5/woa13/woa13.pl?parameter=s) is used to
161
represent the background salinity at the mooring station. Then, 2 m grids of density
162
profiles and squared Brunt-Väisälä frequency
163
temperature, depth and WOA13 salinity data with the International Thermodynamic
164
Equation
165
https://www.io-warnemuende.de/teos-10-2284.html).
of
Seawater
Atlas
2010
(TEOS-10)
2013
(WOA13,
are calculated from the observed
(McDougall
and
Barker
2011,
166
The typhoon track data were downloaded from the Unisys Weather website
167
(http://weather.unisys.com/hurricanes/2005/west-pacific/wash), which is based on the
168
best hurricane track data issued by the Joint Typhoon Warning Center (JTWC). The
169
data include maximum sustained surface wind speeds and the storm center locations
170
every 6 h. The wind data at 10 m above the sea level were downloaded from the
171
European Meteorological Center database (http://apps.ecmwf.int/datasets/), which is a
172
reanalysis product with spatial resolution of 0.125° by 0.125° and temporal resolution
173
of 6 h. The ECWMF wind product has been used in previous studies for storms over
174
the shelf sea (Yang et al., 2005). Compared with the wind from the South China Sea 9
175
Ocean Data Base (SCSDB) (http://www.ocdb.csdb.cn/), the variations of the ECWMF
176
and the SCSDB winds are consistent during the observational period with a maximum
177
difference of less than 2 m s-1, indicating the reliability of the ECWMF wind data.
178
Bottom
179
(http://maps.ngdc.noaa.gov/viewers/wcs-client/).
180
2.2. Dynamic analysis
topographical
data
are
derived
from
ETOPO1
181
According to Sèvellec et al. (2015), for motions with low viscosity (Re =
182
>>1), small inertial term (Ro=
<<1), and low diffusion (Pe =
>>1), i.e.,
183
the viscosity, advection and diffusion terms are negligible, and satisfying the
184
Boussinesq approximation, the vertical velocity
185
thermodynamic equations and momentum equations as follows
186
=−
/
187
"
=−
∅
188
#
=−
∅ ∅
189
$
=−
190 191
where
∅
−
−
∅ ∅
+
can be derived from the
(1a) (1b)
+
(1c)
/
(1d)
is the total vertical velocity, % is time, & is the vertical coordinate, (
= −' * )
is the squared Brunt-Väisälä frequency, +(+- ) is the (reference)
is the Coriolis parameter, g is the gravitational acceleration, / is the
192
density,
193
partial derivative, 0 and ∅ are the amplitude and direction angle of horizontal
194
velocity. We have
195
east. The total vertical velocity
= 0cos∅,
= 0sin∅ as ∅ measured anticlockwise from the can be decomposed into three components: 10
",
196
#
and
$.
As shown in Eq. (1b),
"
mainly depends on the turning of the
197
horizontal velocities with the depth, as that derived from thermal wind relation in
198
geostrophic balance.
199
vertical and temporal variations of the horizontal velocities.
200
unsteady behavior of the density associated with the internal waves (van Aken et al.,
201
2007). These equations indicate that the vertical velocity can be estimated from time
202
series measurements of the density and the horizontal velocities at multiple depths
203
from a single mooring.
#
is the ageostrophic component, which depends on the $
is linked to the
204
In the study case as shown in Fig. 1, the characteristic scale of the sub-inertial
205
velocity is U = O(0.2) m s-1 at the mooring station, the Coriolis parameter f = 4.9×10-5
206
s-1, the depth D = 117 m, the water molecular viscosity coefficient ν = O(1×10-6) m2
207
s-1, then the Reynolds number Re =
208
term is negligible. For the typhoon process, the characteristic scale of vertical velocity
209
W = O(1×10-3) m s-1 (Sun et al., 2010; Tseng et al., 2010), the turbulent eddy
210
diffusivity 9 = O(1×10-3) m2 s-1 (Zhang et al., 2014), therefore, the Rossby number
211
Ro =
212
1.2×102≫1, implying that all dynamic parameters satisfy requirements of the above
213
dynamic diagnosis. For the turbulent friction, the eddy viscosity 9
214
O(1×10-3) m2 s-1 as 9 , and is three orders larger than ν. Then, the ratio of the
215
turbulent friction to the advective term is
= 2.3×107 ≫1, thus, the molecular viscosity
= 0.2≪1, the ratio of advective term to diffusive term Pe =
11
;
=
may reach
= 1 × 10> ≪ 1, and the ratio to the
;
= 2×10-4 ≪1. The turbulent friction is also relatively weak
216
Coriolis force is
217
compared to the other dynamic terms and negligible in the diagnostic equation.
218
3. Diagnostic results of vertical velocity
219
3.1. Vertical distribution
220
From filtered time series of the horizontal velocities and the temperature, 2D (z –
221
t) distribution of the total vertical velocity
can be calculated from Eq. (1a). The
222
results are shown in Fig. 2a, and the probability distribution of the vertical velocity is
223
shown in Fig. 2b. One can see that the value of
224
of the magnitude from 1×10-5 to 1×10-4 m s-1 during the observation period. It is
225
larger in the upper mixed layer above 25 m, where 50-70% of
226
1×10-4 m s-1, and the extreme velocities reach ±2 ×10-3 m s-1. In layers deeper than
227
25 m, the probability on the order of 1×10-4 m s-1 decreases to 20-40%, and the most
228
of
229
upper mixed layer. Similar to the temporal variation of the horizontal velocities, the
230
vertical velocity direction also changes positively and negatively with time. The
231
upward vertical velocity in the mixed layer above 25 m increased significantly as the
232
tropical storm arrived on July 30.
varies within a range of one order
is of the order of
are on the order of 1×10-5 m s-1, one order of magnitude smaller than that in the
233
Furthermore, three components of
234
results of geostrophic vertical velocity
235
in Figs. 2c – d. One can see that
236
value of O(1×10-4) m s-1 is mainly distributed at depths above 25 m, and generally
"
can be calculated from Eqs. (1b – d). The "
and its magnitude distribution are shown
homomorphically varies with
12
. The larger
237
smaller than 1×10-4 m s-1 at depths deeper than 25 m. The probability distribution of
238
the magnitude is the same as
239
O(1×10-4) m s-1 and O(1×10-5) m s-1 in the upper and deeper layers, respectively. The
240
ageostrophic vertical velocity
241
2e-f. The magnitude of
242
40% reaches 1×10-4 m s-1 in the upper 25 m. In the lower layer, 70% is of O(1×10-5)
243
m s-1 at 25 – 40 m, and O(1×10-6) m s-1 below 40 m. The profiles of
244
magnitude distribution are shown in Figs. 2g – h. One can see that 70 – 80% of
245
of the order of 1×10-5 m s-1 at 20 – 35 m, and reaches a larger value of 1×10-4 m s-1
246
below 70 m due to the weak stratification. In general, all the vertical velocity
247
components increased significantly in the upper layer on July 30, 2005, when the
248
tropical storm Washi (2005) passed over.
#
. One can see that the most of
#
"
are of the orders of
and its magnitude distribution are shown in Figs.
is mostly within a range from 1×10-6 to 1×10-5 m s-1, but
13
$
and its $
is
249 14
250 251
Fig. 2. 2D (z – t) distribution and probability distribution of the total vertical velocity
252
(a, b), the geostrophic component
(e, f) and the unsteady density component
#
253
254
"
(c, d), the ageostrophic component
$
(g, h). Black dashed lines represent
the thermocline.
3.2. Dynamic term analysis
255
We define the thermocline as a temperature gradient larger than 0.15 ℃/m,
256
which is at depths of about 25 – 45 m as shown by dashed lines in Fig. 1i (State
257
Bureau of Technical Supervision, 1992). The layers with relatively-uniform
258
temperature above and below the thermocline are defined as the mixed layer and the
259
deep layer, respectively. For the layer average, we choose the typical depths available,
260
which are (z1, 14 – 25 m) for the mixed layer, (z2, 30 – 40 m) for the thermocline and
261
(z3, 50 – 70 m) for the deep layer to gain insight into the relations of the total vertical
262
velocity to three components at different depths. The results are shown in Figs. 3a – c.
263
One can see that in the upper mixed layer (Fig. 3a), the average total vertical velocity
264
@
265
storm passed over on July 29, all vertical velocities began to increase, and reached the
266
maximum upward value greater than 1 ×10-3 m s-1 on July 30. In particular, the
267
geostrophic component BBBB"
268
velocity @
269
velocity @
270
near-inertial oscillation. The geostrophic component BBBB"
A
was within a range of ±2×10-4 m s-1 before Washi (2005) arrived. When the
A
A
became the main component of the total vertical
in the mixed layer. In the thermocline (Fig. 3b), the total vertical was mainly controlled by the unsteady component BBBB$
15
behaving like
was dominant with a
271
maximum value of 1 ×10-4 m s-1 on July 30, and the ageostrophic component BBBB#
272
increased to ±1×10-4 m s-1 after August 1. In the deeper layer (Fig. 3c), the total
273
vertical velocity @
274
the same magnitude and variable trend, which began to increase after July 29, and
275
reached the maximum value on August 2.
C
significantly depended on the unsteady component BBBB$
C
with
276
In the comparison of the three layers, the layer-averaged total vertical velocity @
277
is the largest in the mixed layer with the maximum value as 1×10-3 m s-1, and the
278
minimum value smaller than ±2 × 10-4 m s-1 appears in the deep layer. The
279
geostrophic component BBBB" reaches the maximum value of 7×10-4 m s-1 in the mixed
280
layer, and the minimum value of ±1 ×10-5 m s-1 below the thermocline. The
281
ageostrophic component BBBB# has the largest values of ±3.5×10-4 m s-1 in the upper
282
mixed layer, which is seven times of the value in the thermocline, and one order of the
283
magnitude larger than that in the deeper layer. The magnitudes of the unsteady
284
component BBBB$ in the three layers do not change much, and fluctuate within ±2×10-4
285
m s-1.
16
286 287
Fig. 3. Temporal variation of depth-mean vertical velocities in different layers. a)
288
mixed layer (14 – 25 m), b) thermocline (30 – 40 m) and c) deep layer (50 – 70 m).
289
Red, black, blue and green lines represent the total vertical velocity, the geostrophic,
290
ageostrophic and unsteady components, respectively. Magenta dotted line in panel (a)
17
291
represents the averaged Ekman pumping velocity in the upper layer. Note that the
292
y-axis for EPV is one order smaller than that for the diagnostic results.
293
3.3. Typhoon effects
294
Figure 4a shows the time-averaged profiles of vertical velocity during the entire
295
observation period. One can see that the averaged total velocity @ is upwelling at
296
depths above 35 m. Specifically, @ follows the time-averaged ageostrophic vertical
297
velocity BBBB# at depths above 15 m, and reaches the maximum value of 1.5 ×10-4 m
298
s-1 in the surface layer, and rapidly decreases with the depth. In the layer of 15 – 25 m,
299
@ decreases from 1×10-4 m s-1 to 1×10-5 m s-1. Its vertical decreasing trend is
300
similar to that of the geostrophic component BBBB" . Meanwhile, the unsteady
301
component BBBB$ decreases from 5×10-5 m s-1 to below 5×10-6 m s-1. However, the
302
ageostrophic BBBB# is negative, against with @ . At 25 – 50 m, @
303
smaller than ±5×10-5 m s-1, as that of BBBB" . BBBB# and BBBB$ are smaller than 1×10-5 m
304
s-1, and contribute only slightly to w @ G . Below 50 m, @ and three components are
305
less than 1×10-6 m s-1.
is generally
306
Furthermore, the observation period is divided into three stages: pre-storm (t1,
307
July 28), storm period (t2, July 29 – 31) and post-storm (t3, August 1 – 2), then the
308
vertical distributions of time-averaged vertical velocities are shown in Figs. 4b – d.
309
One can see that at the pre-storm stage (Fig. 4b), the averaged total vertical velocity
310
@
311
in the surface layer. Above 30 m, @
A
is mainly downwelling, and the maximum velocity of −1.2 ×10-4 m s-1 appears
18
A
mainly depends on the geostrophic
A
312
component BBBB"
and the unsteady component BBBB$
313
variable trend. BBBB$
314
ageostrophic component BBBB#
A
A
as they have similar vertical
becomes a dominant component below 40 m, and the A
is positive to against @
A
at the whole depth.
At the stage of storm (Fig. 4c), the total vertical velocity @
315
converts to
316
upwelling at the whole depth, with magnitudes larger than that before the storm. The
317
maximum @
318
dominated by BBBB#
319
25 m. Then it follows the geostrophic component BBBB"
320
mainly on the unsteady component BBBB$
321
component BBBB#
322
m s-1, and becomes downwelling below 15 m with the maximum value of –5 ×10-5 m
323
s-1 at 20 m.
is 4×10-4 m s-1, and decreases to 5×10-5 m s-1 below 30 m. @ in the upper 15 m, and by BBBB"
and BBBB$
in the layer of 15 –
in 25 – 40 m, and depends
in the deep layer. The ageostrophic
is positive in the surface layer with the maximum value of 2×10-4
At the post-storm stage (Fig. 4d), the total vertical velocity @
324
is
C
is negative at
325
upper 25 m with the maximum value of −1.5×10-4 m s-1, and mainly controlled by
326
the negative components BBBB#
327
@
328
s-1 at 40 m. The unsteady component BBBB$
329
positive value of about 1×10-5 m s-1.
330
C
is consistent with BBBB"
C
C
and BBBB$ C . Meanwhile BBBB"
C
is positive. At 30 – 50 m,
and has the maximum negative value up to −5×10-5 m C
plays a major role below 50 m with the
Comparing the vertical velocities at three stages of pre-storm, storm period and
331
post-storm, one can see that the total vertical velocity
332
maximum value of 4×10-4 m s-1 during the storm period, while downwelling at the 19
is upwelling with the
333
pre-storm and post-storm stages with the magnitude of about −1×10-4 m s-1.
334
Considering the time series of wind fields (not shown), downwelling might be
335
induced by onshore transports associated with the southwestward and northwestward
336
winds before and after the storm, respectively.
337 338
Fig. 4. Vertical distributions of time-averaged vertical velocities. a) Entire observation
339
period, b) pre-storm, c) storm period and d) post-storm. Red, black, blue and green
340
lines represent total vertical velocity, geostrophic, ageostrophic and unsteady
341
component, respectively.
20
342
4. Vertical mass transport
343
The vertical advection induced by the vertical velocity and the vertical turbulent
344
diffusion term induced by diapycnal mixing are the two main control mechanisms for
345
vertical mass transport (Munk, 1966). Both the vertical velocity and the turbulent
346
mixing are enhanced during the typhoon passage (Price et al., 1994). Their effects on
347
vertical mass transport are worth investigating.
348
4.1. Vertical advection transport
349 350
Based on the vertical velocity
from section 3 and the density gradient −
the vertical advection mass transport rate can be calculated as H#IJ = −
,
.
351
2D (z – t) distribution of H#IJ is shown in Fig. 5a. One can see that H#IJ
352
appears as periodic oscillation signature. Before the tropical storm arrived, there were
353
mainly downward transport with amplitudes of − 4×10-5 kg s-1 m-³. During the storm
354
passage from July 29 to 31, the transports were mainly upward. At upper 45 m, the
355
peak value reached 4×10-5 kg s-1 m-³, and 1×10-5 kg s-1 m-³ in the deeper layer. After
356
the storm on August 1, H#IJ was affected by the unsteady vertical velocity (Fig. 3),
357
and the magnitude reached to ±3×10-5 kg s-1 m-³ in the upper layer.
358
4.2. Transport by turbulent mixing
359
The vertical diffusive transport rate HKLM induced by turbulent mixing is (9
), where 9 = 0.2
N
is the turbulent eddy diffusivity, and ε
360
calculated as
361
the turbulent kinetic energy dissipation rate (Osborn, 1980). We use the 21
362
parameterization scheme proposed by Mackinnon and Gregg (2003) to derive ε from
363
the buoyancy frequency N and the sub-inertial horizontal velocity shear. Zhang et al.
364
(2014) investigated the enhanced mixing by Washi (2005) in the study area. As shown
365
in Fig. 10d in Zhang et al. (2014), 9 dramatically increased from 3×10-5 m-2 s-1 on
366
July 28 before the storm to about 2 ×10-4 m-2 s-1 on July 31 at depths above 50 m.
367
2D (z – t) distribution of diffusion transport rate HKLM is shown as in Fig. 5b.
368
One can see that in the mixed layer and the thermocline above 45 m, the mixing
369
transport is mainly upward, and the value of HKLM is larger than 1×10-6 kg s-1 m-³.
370
HKLM increased significantly when the tropical storm passed on July 29. The
371
maximum value reached 4×10-6 kg s-1 m-³. Below 50 m, HKLM is negative and
372
smaller than −5 ×10-7 kg s-1 m-³.
373
4.3. Comparison of advection and mixing transports
374
The variations of vertical convection transport rate H#IJ and turbulent mixing
375
transport rate HKLM , at three stages, i.e., pre-storm, storm passage and post-storm, are
376
shown in Figs. 5c and d. One can see that H#IJ is generally one order larger than
377
HKLM . In particular, at the pre-storm stage, the time-averaged advection mass transport
378
BBBBBB H#IJ
379
A BBBBBBB HKPM . The maximum of BBBBBB H#IJ
380
the maximum of BBBBBBB HKPM
381
decreases rapidly to −4 ×10-6 kg s-1 m-³, and BBBBBBB HKPM
382
BBBBBB During storm passage, H #IJ
A
is downward (negative), in contrary to upward of the mixing transport
A
A
reaches −6×10-6 kg s-1 m-³ at the upper 25 m, and
is 3 ×10-7 kg s-1 m-³ at about 20 m. Below 25 m, BBBBBB H#IJ A
A
turns to −4 ×10-7 kg s-1 m-³.
turns to upward with the maximum of 4 ×10-6 kg s-1 22
383
m-³, and BBBBBBB HKPM
384
of post-storm, BBBBBB H#IJ
385
BBBBBB KPM
386
thermocline rises up with respect to that during the storm passage. The larger values
387
in the mixed layer after the storm further indicates the delayed strong mixing after
388
storm forcing (Zhang et al., 2014; Zhang and Tian, 2014).
C
is upward with the maximum of 4 ×10-7 kg s-1 m-³ at 25 m. At stage C
tends to recover the case of pre-storm. On the other hand,
is enhanced to the maximum of 6.2 ×10-7 kg s-1 m-³ at 20 m, implying that the
389 390
Fig. 5. a-b) 2D (z – t) distribution of vertical convection mass transport rate H#IJ and
391
the mixing transport rate HKLM . c-d) Vertical distributions of time-averaged BBBBBB H#IJ
392
and BBBBBBB HKPM at three stages: pre-storm (black lines), storm passage (red lines) and
393
post-storm (blue lines). Black dashed lines represent the thermocline. 23
394
5. Discussion
395
5.1. Ekman pumping velocity (EPV)
396
As mentioned in the Introduction, previous investigators mostly calculated the
397
EPV as the main vertical motion induced by tropical cyclones (Chang et al., 2008;
398
Sun et al., 2010; Chen et al., 2012). In this paper, we derived the total vertical velocity
399
profiles during the tropic storm passage using the diagnostic equation developed by
400
Sèvellec et al. (2015). Here, the diagnostic total vertical velocity is compared with the
401
wind stress curl determined EPV.
402
The EPV induced by the wind stress curl is given by -
T>X
403
UV
Y U
d& =
Z
=
U
U[
\]
' *−
U
U^
\
' _*
(2)
404
where
405
Coriolis parameter, +(= 1.025 × 10C `a ∙ c>C ) is the mean density in the Ekman
406
layer, d[ and d^ are zonal and meridional components of the wind stress, eZ =
407
fgh /
408
averaged 9 in the upper layer is about 5 × 10>i m s >A (Zhang et al., 2014), so
409
that the Ekman layer thickness is about 30 m, close to the thickness of the mixed layer
410
as shown in Fig. 1. The sea surface wind stresses d[ and d^ are calculated by the
411
bulk formulas:
Z
is the Ekman pumping vertical velocity at the Ekman layer depth,
is the
is Ekman layer thickness. Assuming that the viscosity h = 9 , and the
412
d[ = +# kI
A- A-
(3a)
413
d^ = +# kI
A- A-
(3b)
24
414
where +# = 1.293 kg ∙ m>C is the air density,
415
and
416
calculated by (Large and Pond, 1981)
417
is the wind speed at 10 m,
are zonal and meridional wind components, and kI is the drag coefficient
kI × 10C =1.2
< 11 m s >A
418
=0.49+0.065
419
=1.364+0.0234
420
A-
11 <
AA-
−0.00023158
A- 19
<
< 19 m s >A
AA-
< 100 m s >A
Using the wind stress curl during the storm passages,
Z
at the Ekman depth is
421
calculated assuming the vertical velocity as 0 m s-1 on the surface. In comparison, we
422
calculate the averaged EPV in the upper layer as BBBBZ =
423
are shown in Fig. 3a. One can see that BBBBZ was mainly positive with values within a
424
range from −1×10-5 to 1×10-4 m s-1 during the observation period. Before the storm
425
passage on July 29, the maximum BBBBZ reached 1×10-4 m s-1, and gradually reduced to
426
−1×10-5 m s-1 after July 30. In comparison, the averaged diagnostic vertical velocity
427
in the upper layer @
428
peak value of @
429
the change in the wind speed as shown in Fig. 1c.
430
A
A
-pVY XY
. The time series of BBBBZ
reached a higher peak value of 1×10-3 m s-1. Furthermore, the
occurred one day later than that of the averaged EPV BBBB, Z but to
According to geostrophic adjustment theory, an upwelling process requires a = 1/
431
geostrophic adjustment time of at least
432
storm Washi (2005) had a longer forcing time (>60 h) than the required time (~35 h),
433
thus, the EPV can be achieved for the upwelling velocity. On the other hand, if the
434
forcing time lasts long enough, the upwelling velocity should be greater than EPV
#
25
to be well established. The tropical
435
(Sun et al., 2010). In our case, as mentioned above, the diagnostic total upwelling
436
velocity is one order larger than the EPV of the Ekman layer, indicating that
437
geostrophic movements have been developed. This is true that
438
the total vertical velocity
"
is important for
as mentioned in section 3.
439
Due to the limitations of the mooring observations, the vertical velocities are
440
missing in the surface layer above 14 m. According to the Ekman pumping theory, the
441
EPV is set to be zero at the sea surface and reaches a maximum at the bottom of the
442
Ekman layer. Assuming that the vertical velocity increases linearly with the depth, the
443
depth-mean vertical velocity at depth 0 – 14 m should be less than that in the lower
444
layer. As shown by previous numerical model studies, the total vertical velocities
445
were stronger near the thermocline and decreased upward to the surface (Zhang et al.,
446
2016; Prakash and Pant, 2017). Thus, we propose that the depth-mean vertical
447
velocity in the surface layer (0-14 m) might be smaller than the average value of
448
O(1×10-3) m s-1 in the mixed layer.
449
5.2. Accuracy assessment of diagnostic vertical velocity
450 451
As suggested by Sèvellec et al. (2015), convergence of the vertical velocities can be used to assess the accuracy of the method used in this study, i.e., A
q = \T
452
r p\ r
@ d%
(4)
453
where @
is the depth-averaged vertical velocity and d is the time interval for
454
integration. From Fig. 6, one can see that the variability of the estimated vertical
455
velocity depends greatly on the number of samples. If the number of samples is less 26
456
than 144, the maximum variability of vertical velocity may reach −1.8 ×10-4 m s-1.
457
When the number of samples are more than 300, the total vertical velocity
458
components tend to be stable.
and its
459
For the impact of measurement uncertainty, we propagate the uncertainty of
460
temperature and horizontal velocity in Eq. (1). The overall errors are about 5.6×10-6
461
m s-1 for the total vertical velocity w and 7.3×10-7 m s-1, 6.7×10-5 m s-1, and 7.4×10-5
462
m s-1 for three components
463
values, the errors are scaled by sample number as
464
more than 100, the errors of the vertical velocity are about 1×10-8 - 1×10-6m s-1,
465
which are one to two orders of magnitude lower than the calculated vertical velocities.
466
On the other hand, the calculated values of
467
the magnitude from 1×10-5 to 1×10-4 m s-1 before the storm and reached the
468
maximum upwelling of O(1×10-3) m s-1 as Washi (2005) passed by. The magnitude
469
and direction of vertical velocity are consistent with previous studies (Pallàs-Sanz and
470
Viúdez, 2005; Liang et al., 2017; Xie et al., 2017b), implying the reliability of the
471
diagnostic method. Thus, this study provides a new test for the method of vertical
472
velocity estimation based on single mooring observation of horizontal velocity and
473
density.
",
#
and
27
$,
respectively. For the time-averaged A
√u
. When sample numbers are
varied within a range of one order of
474 475
Fig. 6. Convergence of the depth-averaged vertical velocity vs. the number of
476
samples. Red, black, blue and green lines represent qV , qVv , qVw , and qVx ,
477
respectively.
478
A climatologically mean profile is used to calculate the density and the buoyancy
479
frequency profiles due to the missing salinity observations in section 2. The possible
480
uncertainties induced by the salinity data are discussed here. It is true that the salinity
481
may differ from the climatological values during the storm passage. However, such
482
differences may have little effect on the calculated vertical velocities. As shown in Eq.
483
(1), the vertical velocity depends mainly on the density variations of
484
rather than on the density itself. Previous observations of time series of salinity and
485
temperature have shown that the density variation mainly followed that of
486
temperature during the typhoon passage (Pan et al., 2012; Zhang and Tian, 2014; Wu
487
et al., 2016; Song and Tang, 2017). Furthermore, the previous salinity observations
488
near the mooring station have showed that the salinity variation was less than 0.3 28
U
U
and
U
U
,
489
during storm passage (Zhang and Tian, 2014). Assuming a lager salinity variation of
490
0.1 – 1 from climatology values, the overall errors propagating into the diagnosed
491
vertical velocity are within a range of 7.2×10-8 – 7.2×10-7 m s-1, which are more than
492
two orders of magnitude lower than the diagnostic vertical velocities. The
493
salinity-induced density errors have tiny increment with the depth (<0.0005 kg m-3
494
within 100 m for the salinity error of 1) and such variation can be ignored. On the
495
other hand, the salinity variation from the climatological values with the depths is
496
smaller and the overall errors propagating into the vertical velocity is also smaller
497
compared to the variation with time series during storm passage. Thus, the
498
uncertainties due to the use of climatological salinity profile are negligible in this
499
study.
500
5.3. Comparison to similar studies
501
In the study area east of Hainan Island, previous investigators have estimated the
502
vertical velocity under general wind conditions based on conservation of the salinity
503
flux, generalized omega equation or numerical models (Deng et al., 1995; Su et al.,
504
2009; Xie et al., 2017b). As shown in Table 1, the results vary within a range of one
505
order of magnitude from 3×10-5 to 3×10-4 m s-1, generally consistent with the
506
calculated values of
before passage of Washi (2005) in this study.
507
For typhoon processes, the vertical velocity in the upper layer is usually
508
estimated based on the Ekman pumping theory. The EPVs are generally of the order
509
of O(1×10-3) m s-1 during typhoon passage (Table 1), similar to the calculated vertical 29
510
velocity in the upper layer in this study. However, the EPV can only give the values at
511
the bottom of the Ekman layer, the vertical structure and temporal variation of the
512
vertical velocity profile were lack of investigation. Despite the use of numerical
513
models of ocean response to tropical cyclones, discussion of the vertical velocity is
514
scarce. Using a 3D Price-Weller-Pinkel model (3DPWP), Zhang et al. (2016) derived
515
the 3D circulation in response to severe tropical storm Kalmaegi (2014) in the
516
northern SCS. They found alternately appearing upwelling and downwelling
517
velocities with amplitudes of 1×10-3 m s-1 along the typhoon track, which are close to
518
the results obtained in this study. Prakash and Pant (2017) investigated the upper
519
ocean response to severe tropical storm Phailin (2013) in the southeastern Bay of
520
Bengal with the Coupled Atmosphere-Ocean-Wave-Sediment Transport (COAWST)
521
modelling system. They obtained a maximum upwelling velocity of 2.5×10-3 m s-1
522
when the storm passed by. Their results also show negative vertical velocities at a
523
short period before the arrival of tropical cyclone, probably due to shoreward water
524
transport.
525
Previous estimations of the vertical velocity in the coastal ocean or during
526
passage of tropical cyclones are summarized in Table 1. One can see that the
527
magnitude and direction of the vertical velocity are generally consistent with our
528
calculations, of which the values are generally less than 1×10-4 m s-1 under the
529
ordinary weather conditions and increase to larger than 1×10-3 m s-1 when moderate
530
tropical cyclone passes by. 30
531
Table 1 Estimation of vertical velocities in coastal ocean or under tropical cyclone in
532
previous studies
Ocean area
Method
Weather condition
Maximum vertical velocity (m s-1)
East of Hainan Island
Conservation of salinity flux
Summer monsoon
4.51 ×10-5
Deng et al., 1995
East of Hainan Island
Generalized omega equation
Summer monsoon
–5 ~ 7×10-5
Xie et al. 2017b
East of Hainan Island
2D nonlinear model
Summer monsoon
0 ~3.2 ×10-5
Guo et al., 1998
East of Hainan Island
HAMburg Shelf Ocean Model (HAMSOM)
Summer monsoon
-1 ~ 3 ×10
Su and Pohlmann, 2009
Southern East China Sea
EPV
Central South China Sea
EPV
West of Luzon Strait
EPV
Northern South China Sea
3D Price-Weller-Pinkel model (3DPWP)
Southeastern Bay of Bengal
Coupled atmosphere-ocean model
Super typhoon Hai-Tang (2005) Typhoon ‘Hagibis’ (2007) Typhoon Kai-Tak (2000)
-4
Authors, year
-1 ~ 6.8 ×10-5
Chang et al., 2008
3 ~ 6×10-3
Sun et al., 2010
-2 ~ 5×10-3
Lin et al., 2003
Severe tropical storm Kalmaegi (2014)
-1 ~ 1×10-3
Zhang et al., 2016
Severe tropical storm Phailin (2013)
2.5 ×10
Prakash and Pant, 2017
-3
533 534
5.4. Dynamic processes associated with storm
535
As mentioned above, the diagnosed vertical velocity from mooring observations
536
shows significant change as the storm passes by. The reason why the storm would 31
537
change the vertical velocity is implicitly explained by the storm-induced variations of
538
horizontal velocity and stratification. As shown in Fig. 1a, the mooring station is on
539
the right side of the storm track. According to previous observational and numerical
540
studies, there would be strong two-layer near-inertial motions on the right side of the
541
storm track (Price, 1983; Zhang et al., 2016). In our case, as shown in Figs. 1d and 1e,
542
the magnitudes of zonal and meridional velocities 0 increased after the storm passed
543
by on July 29, 2005 and the velocity directions were opposite in the upper mixed layer
544
and the deep layer. This implies that the horizontal advection and the rotation of the
545
horizontal velocities with the depth
546
stir the ocean, enhance the mixing and decreased the stratification as shown in Figs. 1f
547
and 1i. Thus, the squared Brunt-Väisälä frequency
548
passes by. As indicated by Eq. (1), the increase of 0 and
549
result in the increase of the geostrophic vertical velocity
550
vertical velocity
551
component
552
horizontal velocities indicate that
553
the storm passage because of smaller
554
isopycnal undulation associated with the internal waves has larger values in the
555
deeper layer.
556 557
#,
∅
are increased. Furthermore, the storm winds
decreases after the storm ∅
and the decrease of "
and thus the total
in the mixed layer. For the ageostrophic vertical velocity
the calculation of
and the vertical and temporal gradients of the #
is mainly controlled by
. It increases during
due to homogeneous mixing. For
$,
the
Zhang et al. (2016) investigated the dynamic responses to storm Kalmaegi (2014) in the northern SCS using the 3DPWP model. They found that the mixed layer 32
558
currents are directly wind driven in the beginning, while the opposite currents below
559
are driven by the pressure gradient generated by inertial pumping. Thus, strong
560
upwelling and downwelling occur in accordance with the horizontal flow convergence
561
and divergence.
562
As discussed above, the interaction of storm-induced strong near-inertial motion,
563
the derived geostrophic motion from pressure gradient, and the ageostrophic motions
564
driven by winds together change the vertical velocity, and thus the vertical transport.
565
5.5 Effects of turbulent friction
566
As indicated by the scale analysis in section 2.2, the turbulent friction term is
567
ignored in the dynamic equation diagnosed vertical velocity. It is reasonable to
568
consider the friction is relatively weaker than the other dynamic terms discussed
569
above. Near the upper boundary, the EPV associated with the surface wind friction
570
and the turbulent viscosity in the upper ocean is calculated in section 5.1. The
571
comparison shows that the averaged EPV in the upper layer is one order smaller than
572
the diagnosed vertical velocity without the turbulent friction. In the deep layer, the
573
studied water column is 42 m far from the bottom, and the bottom friction may have
574
little effect. Furthermore, the vertical velocity derived from the advection-turbulent
575
diffusion equation (not shown) is also one order smaller than the diagnostic vertical
576
velocity without the friction. This implies that the turbulent forcing has weak direct
577
influence on
578
turbulent friction and mixing may have been implicitly included in the diagnosis since
in the study case. On the other hand, the indirect effects of the
33
579
the observed horizontal velocity and density had been changed by the turbulent
580
friction and mixing.
581
5.6 Broad impacts
582
As mentioned in the Introduction, tropical cyclone-induced vertical velocity and
583
mass transport are of great importance for ocean biogeochemical processes and
584
primary productivity. Thus, tropical cyclones are not only hazardous for the coastal
585
ocean but favor the raising of the concentration of phytoplankton and the fishery
586
production (Hong et al., 2011; Lachkar and Gruber, 2013; Di Lorenzo, 2015; Nowald
587
et al., 2015; Zhang et al., 2018). In this study, we provide quantitative estimates of the
588
vertical velocity and mass transport induced by a typical tropical storm Washi (2005)
589
in the northwestern SCS. The upward transport was enhanced at least one order of
590
magnitude during storm passage, implying possible phytoplankton bloom after storm
591
passage. In fact, the concentration of Chl-a around the mooring station indeed
592
increased 23% after Washi (2005) passed by (Zhang et al., 2014). Furthermore, we
593
find that the vertical advection is the dominant factor for the cyclone-induced vertical
594
mass transport, instead of the vertical mixing. Thus, diagnosing the vertical velocities
595
is crucial for studies of biogeochemical response to and variation of coastal ecosystem
596
due to tropical cyclone passage.
597
The diagnostic method used in this study is derived from the general
598
thermodynamic and momentum equations with assumptions of negligible viscosity,
599
advection and diffusion terms. Thus, it can be applied to cases with low viscosity, 34
600
small inertial term and low diffusion. As estimated in section 2.3, the dynamic
601
parameters during tropical cyclone processes generally satisfy the assumption,
602
implying the applicability of the method for other typhoon processes. For the coastal
603
ocean where Ro <<1 and Pe >> 1, the method can also be used. This study provides a
604
test for obtaining vertical velocity from mooring observations in the coastal ocean and
605
tropical cyclone processes. Furthermore, considering difficulties of in-situ
606
measurements under harsh weather conditions, the vertical velocity derived from
607
mooring observations of horizontal velocity and stratification is valuable for better
608
understanding of 3D dynamic and biogeochemical responses of the ocean to tropical
609
cyclones.
610
6. Conclusions
611
Based on mooring observations of the horizontal velocities and the temperature
612
on the northwestern continental shelf of the SCS during the period from July 28 to
613
August 2, 2005, variations of the vertical velocity and the mass transport are analyzed
614
using the dynamic diagnostic method. The major findings are summarized as follows:
615
1) During the observation period, 80% of the vertical velocity was of the order of
616
O(1×10-4) m s-1 in the upper mixed layer above 25 m, with the maximum
617
upwelling of O(1×10-3) m s-1 as tropical storm Wash (2005) passed by on July 30 –
618
31, 2005. Below 25 m, the vertical velocity decreased one order of magnitude to
619
O(1×10-5) m s-1.
35
620
2) The governing mechanisms of the vertical velocity are distinct in different layers.
621
Near the surface, the ageostrophic component
622
layer, the geostrophic component
623
velocity with the maximum of 4.2×10-4 m s-1. Below the thermocline, the vertical
624
velocity component is mainly induced by the unsteady behavior of the density
625
associated with the near-inertial internal waves.
"
#
is significant. In the deep mixed
is the dominant component of the vertical
626
3) The vertical advection and the mixing transport are calculated from the diagnostic
627
vertical velocity and the parameterized mixing rate. The results are of the order of
628
O(1×10-5) kg s-1 m-3 and O(1×10-6) kg s-1 m-3, respectively. Both transports are
629
upward during the storm passage.
630
4) The Ekman pumping rate caused by wind forcing is calculated. The maximum
631
depth-averaged EPV was 1.1×10-4 m s-1 at the upper 30 m, which occurred on July
632
29 before the maximum wind speed arrived and one order smaller than the total
633
diagnosed vertical velocity of 1×10-3 m s-1 during the storm Washi (2005) passage
634
on July 30 – 31, 2005.
635
Acknowledgments
636
This work is supported by the National Nature Science Foundation of China
637
[Grants 41776034, and 41476009], the National Program on Global Change and
638
Air-Sea Interaction [Grants GASI-02-SCS-YGST2-02, and GASI-IPOVAI-01-02]
639
and the Innovation program of Guangdong Ocean University [Grant CYL231419012]. 36
640
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641
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Affiliations Guangdong Key Laboratory of Coastal Ocean Variation and Disaster Prediction, College of Ocean and Meteorology, Guangdong Ocean University, Zhanjiang 524088, China Liju Wang, Lingling Xie, Junyi Li, Mingming Li Marine Resources Big Data Center of South China Sea, Southern Marine Science and Engineering Guangdong Laboratory (Zhanjiang), Zhanjiang 524025, China Lingling Xie, Junyi Li, Mingming Li Department of Atmospheric and Oceanic Science, University of Maryland, College Park, Maryland 20742, USA Quanan Zheng Institute of Oceanology, Chinese Academy of Sciences, Qingdao 266071, China Yijun Hou
Contributions Liju Wang analyzed the data and prepared the manuscript. Lingling Xie initiated the idea, designed the study and revised the manuscript. Quanan Zheng contributed to the design of the study and revised the manuscript. Junyi Li and Mingming Li contributed to the data analysis and discussion. Yijun Hou contributed the raw data. All of the authors have read and approved the final manuscript.
Corresponding author Correspondence to Lingling Xie.
January 8, 2020 Editor Estuarine, Coastal and Shelf Science
Dear Editor: We declare that we have no conflicts of interest to this work entitled “Tropical cyclone enhanced vertical transport in the northwestern South China Sea I: Mooring observation analysis for Washi (2005)” authored by Liju Wang, myself, Quanan Zheng, Junyi Li, Mingming Li and Yijun Hou. We appreciate your help with our manuscript. If you have further questions, please contact me at Dr. Lingling Xie College of Ocean and Meteorology Guangdong Ocean University 1 Haida Road, Mazhang District Zhanjiang, Guangdong 524088 Tel.: 0759-2396037 e-mail:
[email protected] Sincerely yours,
Lingling Xie, Ph.D. Professor