1
Summer Arctic Cold Anomaly Dynamically Linked to East Asian Heat Waves
2
Bingyi Wu
3 4
Department of Atmospheric and Oceanic Sciences & Institute of Atmospheric Sciences, Fudan University, Shanghai
5 6
Jennifer A. Francis
7
Woods Hole Research Center, Falmouth, Massachusetts USA
8 9
Submitted to Journal of Climate, accepted, Dec. 6, 2018
10 11 12 13 14
Corresponding author:
15
Email:
Bingyi Wu
[email protected]
16 17 18 19 20 21 22 23 1
24
Abstract:
25
During recent years, the rapidly warming Arctic and its impact on winter weather
26
and climate variability in the mid- and low-latitudes have been the focus of many
27
research efforts. In contrast, anomalous cool Arctic summers and their impacts on the
28
large-scale circulation have received little attention. In this study, we use atmospheric
29
re-analysis data to reveal a dominant pattern of summer 1000-500 hPa thickness
30
variability north of 30°N and its association with East Asian heat waves. It is found
31
that the second thickness pattern exhibits strong interannual variability but does not
32
exhibit any trend. Spatially, the positive phase of the second thickness pattern
33
corresponds with significant Arctic cold anomalies in the mid- and low-troposphere,
34
which are surrounded by warm anomalies outside the Arctic. This pattern is the
35
thermodynamic expression of the leading pattern of upper tropospheric westerly
36
variability and significantly correlated with the frequency of East Asian heat waves.
37
The Arctic has experienced frequent summer cold anomalies since 2005,
38
accompanied by strengthened tropospheric westerly winds over most of the Arctic and
39
weakened westerlies over the mid- and low-latitudes of Asia. The former significantly
40
enhances baroclinicity over the Arctic, which dynamically contributes to increased
41
frequency of anomalous low surface-pressure during summer along with decreased
42
frequency over high-latitudes of Eurasia and North America. The latter is exhibited by
43
sustained high-pressure anomalies in the mid- and low-troposphere that dynamically
44
facilitate the occurrence of East Asian heat waves. A systematic northward shift of
45
Asian zonal winds dynamically links Arctic cold anomalies with East Asian heat 2
46
waves and produces a seesaw structure in zonal wind anomalies over the Arctic and
47
the Tibetan Plateau (the third pole). Evidence suggests that enhanced Arctic westerlies
48
may provide a precursor to improve predictions of the East Asian winter monsoon,
49
though the mechanism for this lag association is unclear.
50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 3
68
1. Introduction
69
Over the past two decades, Arctic warming and Arctic sea ice loss are among the
70
most remarkable signals of change in the climate system and have been received a
71
great deal of attention, particularly in summer. The Arctic dipole anomaly, Arctic
72
anticyclonic surface wind anomalies, enhanced downwelling longwave radiation, and
73
increased Atlantic and Pacific water inflow are believed to contribute to Arctic sea ice
74
loss (Shimada et al., 2006; Wang et al., 2009; Ogi et al., 2010; Polyakov et al., 2010;
75
Overland et al., 2012; Wu et al., 2012; Ding et al., 2017). Observations and model
76
simulations demonstrate that anomalies in Arctic sea ice and atmospheric circulation
77
affect summer atmospheric circulation variability over Eurasia (Wu et al., 2009; Wu et
78
al., 2013; Screen et al., 2013). Arctic sea ice loss would reduce (enhance) summer
79
precipitation over the mid- and high-latitudes of East Asia (northern Europe) (Wu et
80
al., 2013; Screen et al., 2013). However, what are dominant features of summer Arctic
81
temperature variability in the mid- and low-troposphere that closely relates to
82
atmospheric variability in the mid- and low-latitudes of East Asia remains unclear.
83
Summer high temperature and heat waves have frequently occurred in the
84
worldwide since the beginning of 2000s, and they directly caused a high fatality and
85
produced widespread economic impacts (Meehl and Tebaldi, 2004; Barriopedro et al.,
86
2011; Bador et al., 2017). Compared with 1991-2000, casualties related with high
87
temperature and heat waves increased by more than 2000% in 2001-2010 (WMO
88
report, 2013). East Asia has experienced frequent heat waves since the 1990s (Ding et
89
al., 2010). The well documented example is the East Asian heat waves of 2013 (Min 4
90
et al., 2014; Imada et al., 2014; Zhou et al., 2014). South Korea had its hottest
91
summer nights and second hottest summer days since 1954 (Min et al., 2014), and
92
China suffered the strongest heat wave since 1951 (Zhou et al., 2014). Anthropogenic
93
global warming generally has been shown to increase the likelihood of summer heat
94
waves over East Asia (Sun et al., 2014; Min et al., 2014; Coumou et al., 2014, 2015;
95
Mann et al., 2017). Additionally, sea surface temperature (SST) anomalies, Arctic sea
96
ice loss/snow cover melting, and precipitation anomalies in India and South China
97
Sea also contribute to East Asian summer high temperature and heat waves (Hu et al.,
98
2011; Sun, 2014; Min et al., 2014; Imada et al., 2014; Tang et al., 2014; Liu et al.,
99
2015). Sun (2014) proposed that SST over the mid-North Atlantic in July 2013 was
100
the warmest in the past 160 years, which connects to weakening of the East Asian
101
upper level westerly and strengthening of the northwest Pacific subtropical high
102
(NWPSH) through a teleconnection wave train. This contributes to surface air
103
temperature variability and heat waves over the Jianghuai-Jiangnan region of China.
104
More direct causes can be attributed to sustained high pressure systems, particularly
105
the NWPSH (Wang et al., 2013; Sun, 2014; Imada et al., 2014; Wang et al., 2017;
106
Freychet et al., 2017; Gao et al., 2018). It is not clear whether simultaneous Arctic
107
atmospheric circulation anomalies during summer are linked to summer heat waves in
108
East Asia, and this is the question explored in this study. We use NCEP-NCAR
109
re-analysis data to identify dominant patterns of summer (JJA) atmospheric thickness
110
(1000-500 hPa) variability north of 30ºN and demonstrate the association between
111
summer Arctic cold anomalies and East Asian heat waves. 5
112 113
2. Data and Methods
114
Atmospheric data used in this study include monthly mean sea level pressure
115
(SLP), winds, and geopotential heights from January 1979 to December 2016, and
116
daily surface air temperatures (SATs), SLP, air temperatures and winds at 17 pressure
117
levels from 1 January 1979 to 31 December 2016. Data were obtained from the
118
National Centers for Environmental Prediction/National Center for Atmospheric
119
Research
120
(http://iridl.ldeo.columbia.edu/SOURCES/.NOAA/.NCEP-NCAR/.CDAS-1/), with a
121
horizontal resolution of 2.5º2.5ºand 17 pressure levels (1000 to 10 hPa) in the
122
vertical direction. Daily SATs are used to calculate the frequency of summer
123
(June-July-August) extreme heat wave events, identified when daily SATs are above
124
one standard deviation for a given date and location (note similar results were
125
obtained using a 1.5 standard deviation threshold). Similarly, daily SLP data are used
126
to assess the frequency of summer anomalous low-pressure when daily SLP is below
127
-1.5 standard deviation for a given date and location.
(NCEP/NCAR)
Re-analysis
I
128
This study uses the northwestern Pacific subtropical high (NWPSH) indices,
129
which include intensity, ridge location, and western ridge point, obtained from
130
National
131
(http://cmdp.ncc-cma.net/Monitoring/cn_index_130.php). The NWPSH intensity
132
index is defined as the sum of the grid area with a geopotential height 5880 gpm
133
multiplied by the difference between the geopotential height ( 5880 gpm) minus
Climate
Center
(China)
6
134
5870 gpm within 110º-180ºE and 10º-60ºN. The NWPSH ridge location is defined
135
as the average of the latitudes at each longitude where zonal wind u =0.0 and
136
at 500 hPa within 110º-150ºE and 10º-60ºN. The NWPSH western ridge point is
137
defined as the westernmost location of the isoline with 5880 gpm within 90º-180ºE
138
and 10º-60ºN. This study also uses the monthly mean Arctic Oscillation (AO) index
139
for
140
noaa.gov/products/precip/CWlink/daily_ao_index/monthly.ao.index.b50.current.ascii)
141
.
the
period
from
1979
to
2016
𝜕𝑢 𝜕𝑦
0.0
(http://www.cpc.ncep.
142
We use summer mean 1000-500 hPa atmospheric thickness to approximately
143
represent a vertically averaged air temperature in the mid- and lower-troposphere. The
144
empirical orthogonal function (EOF) analysis method is applied to extract the first
145
two dominant patterns of summer mean 1000-500 hPa atmospheric thickness
146
variability north of 30ºN for the period 1979-2016. The first two patterns account for
147
29% and 10% of the variance. Similarly, EOF analysis is also used to analyze the
148
leading pattern of summer 300 hPa zonal wind variability north of 20ºN, which
149
accounts for 14% of the variance.
150
The maximum Eady growth rate (EGR) relates baroclinic instability to the
151
vertical wind shear (Vallis, 2006; Simmonds and Lim, 2009), characterizing the
152
conduciveness of the environment to synoptic development (Crawford and Serreze,
153
2016). EGR (𝜎𝐸 ) is given by
154 155
𝑓
𝜕𝑈
𝜎𝐸 = 0.3098 |𝑁| | 𝜕𝑧 | where f is the Coriolis parameter, U is the vertical profile of the daily zonal wind, z is 7
𝑔 𝜕𝜃
156
the vertical coordinate, and N is the Brunt-Väisäläfrequency (𝑁 2 =
157
acceleration due to gravity, θ is potential temperature). For EGR at 600 hPa, the
158
vertical profiles of θ are calculated as differences between their daily values at 500
159
and 700 hPa. The vertical shear of U is calculated in terms of the daily meridional
160
temperature gradient using the thermal wind equation.
161
3. Results
162
3.1 Atmospheric thickness variability and Arctic cold anomaly
𝜃 𝜕𝑧
, where g is
163
SATs are generally used to characterize Arctic warming and Arctic amplification.
164
Because SATs are strongly influenced by sea ice concentrations and SST, however,
165
differences in SATs between the Arctic and mid-latitudes may exaggerate the thermal
166
contrast of the column in the mid- and lower-troposphere (Sellevold et al., 2016; Wu,
167
2017). This study uses the summer 1000-500 hPa thickness to represent the mean
168
temperature in the mid- and low-troposphere (Overland and Wang, 2010; Francis and
169
Vavrus, 2015), and its first two dominant patterns are shown in Fig. 1a-c. The leading
170
pattern displays strong interannual variability superposed on an interdecadal shift, i.e.,
171
from frequent negative phases prior to 1998 to more frequent highly positive phases
172
afterward (Fig. 1a). According to the student’s t-test, the significance of the shift
173
exceeds the 99% confidence level. Spatially, positive thickness anomalies cover much
174
of the domain north of 30ºN, particularly over the Arctic, Eurasia and North America
175
where significant positive anomalies are observed (Fig. 1b). This interdecadal shift is
176
generally consistent with changes in surface wind variability over the Arctic Ocean in
177
both spring (AMJ) and summer (JAS): an anomalous cyclone prevailed prior to the 8
178
late 1990s, which was replaced by an anomalous anticyclone over the Arctic Ocean in
179
later years (Wu et al., 2012). This interdecadal shift is consistent with the rapid
180
declining trend in September sea ice extent. Thus, this leading pattern is closely
181
associated with both summer Arctic warming and sea ice loss.
182
Here we focus primarily on the second thickness pattern because it is associated
183
with summer high temperatures and heat waves in Asia and North America. This
184
pattern displays strong interannual variability but does not exhibit any trend or shift
185
(Fig. 1a). Spatially (Fig. 1c), negative thickness anomalies are observed in the Arctic
186
north of 70ºN, indicating Arctic cold anomalies in the mid- and low-troposphere.
187
Positive thickness anomalies appear mainly over northern Europe, northeastern
188
Atlantic, western North America, the Bering Sea, north-central Canada, and mid- and
189
low-latitudes of East Asia. Over the eastern Pacific-North America and Northern
190
Pacific-East Asia, positive anomalies form a “comma” structure, which is associated
191
with the upper tropospheric steering flow anomalies (see the following section). All
192
extreme positive anomalies occurred after 2005, i.e., 2006, 2013, and 2016, with
193
values exceeding 1.5 σ, corresponding with Arctic cold anomalies (Figs 1d-f). The
194
negative phases of PC2 dominated during 2007-2012, implying summer Arctic warm
195
anomalies (Fig. 1c), consistent with the well-documented rapid Arctic sea ice loss
196
period. Years exhibiting summer Arctic cold anomalies seem to be become more
197
frequent in the context of Arctic warming. It should be pointed out that two thickness
198
patterns are independent from each other and the leading thickness pattern cannot
199
obscure the expression of the second thickness pattern. Additionally, although summer 9
200
500 hPa height anomalies exhibit a great similarity to 1000-500 hPa thickness
201
anomalies (Figs. 1c, 2), differences are also visible, including extents and amplitudes
202
of positive and negative anomalies.
203
3.2 Dynamic linkages between Arctic cold anomalies and East Asian heat waves
204
Significant correlations between the leading thickness pattern and frequency of
205
summer heat waves are mainly confined to near the Ural Mountains (40-80°E and
206
40-60°N), North America, and the Arctic, rather than over East Asia (not shown).
207
Cold anomalies are also observed over near Alaska, but they are not significant (Fig.
208
1b). This study, therefore, focuses on the second thickness pattern. The positive phase
209
of PC2 correlates significantly with heat waves over the mid- and low-latitudes of
210
Asia, particularly over the Tibetan Plateau (the third pole) and the coast of East Asian
211
(Fig. 3a). Significant correlations also exist over most of Europe, northern Canada,
212
southwestern United States, and northern North Pacific Ocean. Decreased heat waves
213
are observed over the Arctic Ocean, consistent with Arctic cold anomalies (Fig. 1c).
214
Thus, a dipole structure is apparent between the Arctic and several mid-latitude
215
continental areas, particularly with the third pole. Over East Asia, the regionally
216
(80.625 º -135 º E, 25.71 º -39.05 º N) averaged frequency of summer heat waves
217
exhibits an increasing trend at the 99% confidence level (Fig. 3b). The frequency of
218
East Asian heat waves exceeded 1.0 σ in 1994, 2001, 2006, 2010, 2013, and 2016
219
(Fig. 3b). Consequently, East Asian heat waves frequently occurred after 2005. It
10
220
should be pointed out that if the criterion for heat waves is instead defined as 1.5
221
standard deviations, very similar results are obtained (not shown).
222
Why do Arctic cold anomalies correspond with more intense and frequent
223
summer heat waves in the mid- and low-latitudes of East Asia? We find that this
224
association is closely related to the large-scale upper tropospheric zonal wind
225
variability. The positive phase of the second thickness pattern significantly
226
strengthens upper tropospheric westerlies over most of the Arctic (Fig. 4a), while over
227
Eurasia, wind anomalies display a belt structure with significantly weaker westerlies
228
in the mid- and low-latitudes of Asia and Europe. This wind pattern closely resembles
229
the leading pattern of summer 300 hPa zonal wind variability north of 20ºN (not
230
shown, r = 0.81; Fig. 4b). The area-weighted, regionally averaged 300 hPa westerly
231
north of 70ºN (Arctic westerly index) is also significantly correlated with the second
232
thickness pattern (r = 0.88, Fig. 4c). In the upper troposphere, Arctic westerly strength
233
is out of phase with that in the mid- and low-latitudes of Asia. The normalized Arctic
234
westerly indices exceeded 1.5 σ in 2006, 2013, and 2016, corresponding with strong
235
East Asian heat waves (Fig. 3b). Over the mid- and low-latitudes of Asia, weakened
236
upper tropospheric steering flow (Fig. 4d) favors the stagnation of air-masses and
237
dynamically contributes to sustained high pressure anomalies in the mid- and
238
low-troposphere
239
lower-troposphere, thereby reducing cloud cover and enhancing the downwelling
240
surface shortwave radiation, which favors high temperatures and heat waves. Sun
241
(2014) also showed a significantly negative correlation (r = -0.72) between July SAT
(Fig.
4e).
These
anomalies
suppress
convection
in
the
11
242
averaged over the region bounded by 110º-125ºE and 27.5º-32.5ºN and the 200 hPa
243
zonal wind averaged over the same region, consistent with our results here.
244
Positive Arctic westerly anomalies are not confined to the upper troposphere;
245
they are evident throughout the troposphere and stratosphere (Fig. 5). Negative
246
westerly anomalies in the mid- and low-latitudes also penetrate through the
247
troposphere and stratosphere. Such a change is attributed to a systematic northward
248
shift of zonal winds, dominantly characterized by a shift of the East Asian westerly jet.
249
In fact, the Eurasian westerly jet systematically migrates northward (Fig. 4a).
250
Additionally, a dipole structure in zonal wind anomalies is also observed over the
251
Arctic and the third pole (Figs 4a, 4d, 5), similar to the pattern in temperature
252
anomalies discussed previously. Over the Arctic, negative temperature anomalies are
253
completely confined to the below 300 hPa and top level of the stratosphere, with
254
positive temperature anomalies between them (Fig. 6). Tropospheric temperature
255
anomalies in the mid- and low-latitudes are in phase with Arctic temperature
256
anomalies in the upper troposphere and much of stratosphere. Strengthening of
257
tropospheric westerly winds may enhance baroclinicity in the mid- and
258
low-troposphere,
259
low-pressure during summer. Figure 7 supports this deduction. We find that
260
significant increases in baroclinicity are observed over the Arctic Ocean, surrounded
261
by negative anomalies outside the Arctic (Fig. 7a). Decreases in baroclinicity emerge
262
over high-latitudes of Eurasia and North America, northern North Pacific, and East
263
Asia, generally consistent with warm areas shown in Figs 1c, 3a. Significant increases
which
dynamically
favors
the
occurrence
of
anomalous
12
264
in the frequency of anomalous low-pressure are confined to the Arctic Ocean and
265
northern North Atlantic, while negative anomalies cover most of Eurasia and North
266
America (Fig. 7b). Over high-latitudes of the continents, decreases in the frequency
267
of anomalous low-pressure may imply that thermal exchanges between the Arctic
268
Ocean and lower-latitudes weaken. It should be noted that if the threshold used to
269
define anomalous low-pressure is set to below -1.0 or -2.0 standard deviations in daily
270
SLP anomalies, very similar results are obtained (not shown).
271
4. Discussion
272
4.1 Roles of NWPSH in East Asian heat waves
273
Although the NWPSH is believed to contribute to East Asian heat waves (Luo
274
and Lau, 2017; Gao et al., 2018), some major characteristics of this subtropical high,
275
including intensity and location, are not significantly correlated with the second
276
thickness pattern or with the Arctic westerly index. We find that correlation
277
coefficients of the second thickness pattern with the NWPSH intensity, ridge location,
278
and western ridge point indices are 0.07, -0.09, and -0.24, respectively. While East
279
Asia experienced abnormal high temperature and heat waves in 2013, the NWPSH
280
was in a neutral phase (Fig. 8). The statistical association between the NWPSH and
281
heat waves also differs from that in Fig. 3a (not shown). Thus, increasingly frequent
282
East Asian heat waves cannot be simply attributed to the NWPSH.
283
4.2 Possible dynamic processes linking Arctic cold anomalies 13
284
We assess the statistical relationship between summer Arctic cold anomalies in
285
the mid- and low-troposphere and East Asian heat waves. As previously noted, we
286
find strengthened westerly winds in the Arctic along with weakened zonal winds in
287
the mid- and low-latitudes of East Asia, which we attribute to a systematic northward
288
shift of the zonal wind belts. The present study, however, cannot identify the
289
mechanism responsible for this shift nor for the temporal/spatial behavior of the
290
second thickness pattern. It is possible that natural variability may be a major reason
291
for recent changes in this pattern.
292
Here we carry out the case analysis of summer 2013 (Fig. 1) to explore possible
293
reasons for summer Arctic cold anomalies in terms of wave-flow interactions at 500
294
hPa:
295
̅ 𝜕𝜃 𝜕𝑡
̅ 𝜕𝜃
= −𝑉̅ ∙ ∇𝜃̅ − 𝜔 ̅ 𝜕𝑝 − ̅̅̅̅̅̅̅̅̅̅ ∇ ∙ 𝜃′𝑉′ −
̅̅̅̅̅̅̅ ′ 𝜔′ 𝜕𝜃 𝜕𝑝
+ 𝐹̅
(1)
296
where is potential temperature, V is horizontal wind vector, and 𝐹̅ is the forcing
297
term (Hoskins and Pearce, 1983). The overbar and prime denote time mean and
298
transient eddy terms, respectively. For this case, the time mean is defined as the mean
299
over 2013 JJA (92 days), and the transient eddy is obtained by subtracting the time
300
mean for a given date and location. Summer 500 hPa temperature anomalies are
301
shown in Fig. 9; the spatial pattern closely resembles the thickness anomaly pattern
302
shown in Fig. 1e. Negative anomalies are confined to the Arctic, surrounded by
303
positive anomalies to the south. Summer 500 hPa potential temperature anomalies
304
closely resemble that in Fig. 9 (not shown). We then calculated the contributions of 14
̅̅̅̅̅̅̅ ′ 𝜔′
305
𝜕𝜃 ̅ ̅̅̅̅̅̅̅̅̅̅ each term (−𝑉̅ ∙ ∇𝜃̅, −𝜔 ̅ 𝜕𝜃 , −∇ ∙ 𝑉 ′𝜃′, − 𝜕𝑝
306
tendencies (Fig. 10). We find that both positive and negative contributions from each
307
term occur simultaneously in the Arctic, and negative contributions mean that both
308
mean potential temperature advection by the mean flow as well as transient eddy flux
309
divergence contribute to summer Arctic cold anomalies. Compared to the transient
310
eddy flux divergence, the vertical advection of mean potential temperature plays a
311
more important role in driving Arctic cold anomalies. Over the mid- and low-latitudes
312
of Asia and northwestern Pacific, negative vertical advections are predominant except
313
for central and eastern China where the vertical advection is positive, contributing to
314
increases in mean potential temperature (Figs 6, 9). The summer mean vertical
315
velocities at 500 hPa during 2013 (Fig. 11) suggest that vertical motions dominate the
316
contribution of vertical advection of mean temperature (Fig. 10b). We repeat the same
317
analysis process for 2006 and 2016 summers, producing similar results (not shown).
318
This implies that Arctic upward motion in the mid- and low-troposphere is a major
319
reason for summer Arctic cold anomalies. Ogi et al. (2004) investigated summer
320
annual mode and its association with anomalies in zonal mean temperature and
321
meridional circulation and found that summer Arctic cold anomalies in the mid- and
322
low-troposphere correspond to upward motion anomalies (see their Fig. 3d),
323
consistent with results here. Although anomalous atmospheric circulation patterns
324
discussed by Ogi et al. (2004) exhibit some similarities to the second thickness pattern,
325
their differences are robust (Fig. 12). We also note that downward and upward motion
326
co-exist simultaneously over the Arctic (Fig. 11) and their roles are opposite.
𝜕𝑝
) to the mean potential temperature
15
327
4.3 Precursor to predict East Asian winter monsoon
328
Finally, we find that the strengthened summer Arctic westerly is significantly
329
correlated with the ensuing Asian winter climate variability (Fig. 13). The correlation
330
between the Arctic westerly index and the winter Siberian high index is -0.59,
331
significant at 99% confidence level (Fig. 13a). At 500 hPa, geopotential height
332
anomalies exhibit a tripole structure, and the positive height anomalies cover East
333
Asia, indicating a weakened East trough (Fig. 13b). This configuration resembles the
334
so-called Eurasian pattern (Wallace and Gutsler, 1981; Wang and Zhang, 2015).
335
Negative SLP anomalies occupy the mid- and high-latitudes of Eurasia (Fig. 13c).
336
Thus, winter atmospheric circulation anomalies associated with strengthened Arctic
337
westerly winds result in anomalous winter warming and a weakened winter monsoon
338
over East Asia (Fig. 13d). Thus, the summer Arctic westerly index is an important
339
precursor for winter surface air temperature anomalies over East Asia and it may
340
prove to be useful predictor. It is not clear, however, which mechanisms are
341
responsible for this lagged relationship. It is possible that summer high temperatures
342
and strong heat waves in central and eastern Asia produce anomalies in soil
343
temperature and moisture that lead to a weakened East Asian winter monsoon. This
344
question requires further investigation.
345
5. Conclusions
346
This study reveals the first two dominant patterns of summer 1000-500 hPa
347
thickness variability north of 30°N, and they respectively account for 29% and 10% 16
348
of the variance. The leading thickness pattern displays strong interannual variability
349
superposed on an interdecadal shift that occurred in the late 1990s, consistent with
350
summer Arctic warming and rapid Arctic sea ice loss. Spatially, positive thickness
351
anomalies cover much domain north of 30ºN, particularly over the Arctic, Eurasia
352
and North America where significant positive anomalies are observed. The second
353
thickness pattern exhibits strong interannual variability but does not exhibit any trend
354
or shift. The positive phase of the second thickness pattern corresponds with
355
significant Arctic cold anomalies in the mid- and low-troposphere, which are
356
surrounded by warm anomalies outside the Arctic. Arctic cold anomalies have
357
occurred more frequently in the context of Arctic warming (2005-2016).
358
The second thickness pattern is the thermodynamic expression of the leading
359
pattern of upper tropospheric westerly variability and shows significant positive
360
correlations with frequencies of East Asian heat waves. In the upper troposphere,
361
enhanced Arctic westerly winds are out of phase with winds in the mid- and
362
low-latitudes of Asia. The stronger Arctic westerly winds significantly enhance
363
baroclinicity, which dynamically contributes to increased frequency of anomalous
364
low-pressure over the Arctic. The weaker westerly winds favor stagnation of warm air
365
and dynamically contributes to sustained high pressure anomalies in the mid- and
366
low-troposphere, increasing the likelihood of East Asian heat waves. These wind
367
anomalies can be attributed to a systematic northward shift of zonal winds,
368
dominantly characterized by a shift of the East Asian westerly jet. This shift
369
dynamically produces a dipole structure in zonal wind anomalies over the Arctic and 17
370
the third pole. Dynamic analysis indicates that Arctic upward motion in the mid- and
371
low-troposphere is a major reason for summer Arctic cold anomalies. The enhanced
372
Arctic westerly and Arctic cold anomalies during summer may provide a precursor to
373
predict East Asian winter monsoon.
374
Acknowledgements
375
We thank Prof. Jianqi Sun, and two anonymous reviewers for their insightful
376
comments, which significantly improved this manuscript. The authors are grateful to
377
NCEP/NCEP for providing atmospheric re-analysis data. BW was supported by the
378
National Natural Science Foundation of China (41730959, 41790472, and 41475080)
379
and the National Key Basic Research Project of China (2015CB453200), and JF was
380
supported by NASA grant NNX14AH896 and funding from the Woods Hole Research
381
Center.
382 383
384
References
385
Bador, M., L. Terray, J. Boe, S. Somot, A. Alias, A. Gibelin, and B. Dubuisson, 2017:
386
Future summer mega-heatwave and record-breaking temperatures in a warmer
387
France climate. Environmental Research Letters. 12(7), 074025.
388
Barriopedro, D., E. Fischer, J. Luterbacher, R. Trigo, and R. García-Herrera, 2011:
389
The hot summer of 2010: Redrawing the temperature record map of Europe.
390
Science, 332, 220-224.
18
391
Coumou, D., V. Petoukhov, S. Rahmstorf, S. Petri, and H. Schellnhuber, 2014:
392
Quasi-resonant circulation regimes and hemispheric synchronization of ex-
393
treme weather in boreal summer. Proc. Natl. Acad. Sci. USA, 111, 12331–
394
12336.
395
Coumou, D., J. Lehmann, and J. Beckmann, 2015: The weakening summer circulation
396
in the Northern Hemisphere mid-latitudes. Science, 348(6232), 324-327.
397 398 399
Crawford, A.D., and M.C. Serreze, 2016: Does the summer arctic frontal zone influence arctic ocean cyclone activity? J. Climate, 29, 4977-4993. Ding, Q., and coauthors, 2017: Influence of high-latitude atmospheric circulation
400
changes on summertime Arctic sea ice. Nature Climate Change, 7, 289-295.
401
Ding, T., W. Qian, and Z. Yan, 2010: Changes in hot days and heat waves in China
402 403 404 405
during 1961-2007. International Journal of Climatology, 30(10), 1452-1462. Francis, J., and S. Vavrus, 2015: Evidence for a wavier jet stream in response to rapid Arctic warming. Environ. Res. Lett., 10, 014005. Freychet, N., S. Tett, J. Wang, and G. Hegerl, 2017: Summer heat waves over Eastern
406
China: Dynamical processes and trend attribution. Environmental Research
407
Letters, 12(2), 024015.
408
Gao, M., B. Wang, J. Yang, and W. Dong, 2018: Are peak summer sultry heat wave
409
days over the Yangtze-Huaihe river basin predictable? J. Clim., 31,
410
2185-2196.
411 412
Hoskins, B.J., and R.P. Pearce, 1983: Large-scale Dynamical Processes in the Atmosphere. Academic Press (London), PP397. 19
413
Hu, K., G. Huang, and R. Huang, 2011: The impact of tropical Indian Ocean
414
variability on summer surface air temperature in China. J. Clim., 24(20),
415
5365-5377.
416
Imada, Y., H. Shiogama, M. Watanabe, M. Mori, M. Ishii, and M. Kimoto, 2014: The
417
contribution of anthropogenic forcing to the Japaness heat waves of 2013. Bull.
418
Amer. Meteor. Soc., S52-54.
419
Liu, G., R. Wu, S. Sun, and H. Wang, 2015: Synergistic contribution of precipitation
420
anomalies over northwestern India and the South China Sea to high
421
temperature over the Yangtze River valley. Advances in Atmospheric Sciences,
422
32, 1255-1265.
423 424
425
Luo, M., and N. Lau, 2017: Heat waves in southern China: Synoptic behavior, long-term change and urbanization effects. J. Clim., 30(2), 703–720. Mann, M., S. Rahmstorf, K. Kornhuber, B. Steinman, S. Miller, and D. Coumou,
426
2017: Influence of anthropogenic climate change on planetary wave resonance
427
and extreme weather events. Sci. Rep., 7, 45242.
428 429
Meehl, G., and C. Tebaldi, 2004: More intense, more frequent, and longer lasting heat waves in the 21st century. Science. 305, 994-997.
430
Min, S.-K., Y.-H. Kim, M.-K. Kim, and C. Park, 2014: Assessing human contribution
431
to the summer 2013 Korea heat wave. Bull. Amer. Meteor. Soc., S48-51.
432
Ogi, M., K. Yamazaki, and Y. Tachibana, 2004: The summertime annular mode in the
433
Northern Hemisphere and its linkage to the winter mode, J. Geophys. Res.,
434
109, D20114, doi:10.1029/2004JD004514. 20
435
Ogi, M., K. Yamazaki, and J. Wallace, 2010: Influence of winter and summer surface
436
wind anomalies on summer Arctic sea ice extent. Geophys. Res. Lett., 37,
437
L07701. DOI: 10.1029/ 2009GL042356.
438 439
Overland, J., and M. Wang, 2010: Large-scale atmospheric circulation changes are associated with the recent loss of Arctic sea ice. Tellus, 62A, 1-9.
440
Overland, J., J. Francis, H. Edward, and M. Wang, 2012: The recent shift in early
441
summer Arctic atmospheric circulation. Geophys. Res. Lett., 39, L19804,
442
doi:10.1029/2012GL053268.
443 444 445 446 447 448
Polyakov, I., and co-authors, 2010: Arctic Ocean warming contributes to reduced polar ice cap. J. Phys. Oceanogr., 40, 2743-2756. Screen, J., 2013: Influence of Arctic sea ice on European summer precipitation. Environ. Res. Lett., 8, doi: 10.1088/1748-9326/8/4/044015. Sellevold, R., S. Sobolowski, and C. Li, 2016: Investigating possible Arctic– midlatitude teleconnections in a linear framework. J. Clim., 29, 7329–7343.
449
Shimada, K., T. Kamoshida, M. Itoh, S. Nishino, E. Carmack, and co-authors, 2006:
450
Pacific Ocean inflow: influence on catastrophic reduction of sea ice cover in
451
the
452
10.1029/2005GL025624.
Arctic
Ocean.
Geophys.
Res.
Lett.,
33,
L08605.
DOI:
453
Simmonds, I., and E.P. Lim, 2009: Biases in the calculation of South Hemisphere
454
mean baroclinic eddy growth rate. Geophys. Res. Lett., 36, L01707,
455
doi:10.1029/2008GL036320.
456
Sun, J. Q., 2014: Record-breaking SST over mid-North Atlantic and extreme high 21
457
temperature over the Jianghuai-Jiangnan region of China in 2013. Chin. Sci.
458
Bull., 59(27), 3465-3470, doi:10.1007/s11434-014-0425-0.
459 460 461 462
Sun, Y. et al., 2014: Rapid increase in the risk of extreme summer heat in Eastern China. Nat. Clim. Change, 4(12), 1082-1085. Tang, Q., X. Zhang, and J. Francis, 2014: Extreme summer weather in northern mid-latitudes linked to a vanishing cryosphere. Nat. Clim. Change, 4, 45-50.
463
Vallis, G.K., 2006: Atmospheric and Oceanic Dynamics: Fundamentals and
464
Large-Scale Circulation. Cambridge Univ. Press, New York.
465
Wallace, J.M., and D.S. Gutzler, 1981: Teleconnections in geopotential height field
466
during the Northern Hemisphere winter. Monthly Weather Review, 109,
467
784-812.
468
Wang, J., J. Zhang, E. Watanabe, M. Ikeda, K. Mizobata, and co-authors, 2009: Is the
469
dipole anomaly a major driver to record lows in Arctic summer sea ice extent?
470
Geophys. Res. Lett., 36, L05706. DOI: 10.1029/2008GL036706.
471
Wang, N., and Y. Zhang, 2015: Evolution of Eurasian teleconnection pattern and its
472
relationship to climate anomalies in China. Climate Dynamics, 44, 1017-1028.
473
Wang, P., J. Tang, X. Sun, S. Wang, J. Wu, X. Dong, and J. Fang, 2017: Heat waves
474
in China: definitions, leading patterns, and connections to large-scale
475
atmospheric circulation and SSTs. J. Geophys. Res. Atmos., 122,
476
10679-10699.
477 478
Wang, W., W. Zhou, X. Wang, S. Fong, and K. Leong, 2013: Summer high temperature extremes in Southeast China associated with the East Asian jet 22
479
stream and circumglobal teleconnection. J. Geophys. Res. Atmos., 118,
480
8306-8319.
481 482 483
WMO, 2013: The global climate 2001-2010, a decade of climate extremes. WMO-No.1103, 119pp. Wu, B., R. Zhang, B. Wang, and R. D’Arrigo, 2009: On the association between
484
spring Arctic sea ice concentration and Chinese summer rainfall. Geophys. Res.
485
Lett., 36, L09501, doi:10.1029/2009GL037299.
486
Wu, B., J. Overland, and R. D’Arrigo, 2012: Anomalous arctic surface wind patterns
487
and their impacts on September sea ice minima and trend. Tellus, 64A, 18590,
488
doi:10.3402/tellusa.v64i0.18590.
489
Wu, B., R. Zhang, R. D’Arrigo, and J. Su, 2013: On the relationship between winter
490
sea ice and summer atmospheric circulation over Eurasia. Journal of Climate,
491
26, 5523-5536.
492 493 494
Wu, B., 2017: Winter atmospheric circulation anomaly associated with recent Arctic winter warm anomalies. J. Clim., 30, 8469-8479. Zhou, T., S. Ma, and L. Zou, 2014: Understanding a hot summer in central Eastern
495
China: summer 2013 in contest of multimodel trend analysis. Bull. Amer.
496
Meteor. Soc., S54-57.
497
498
499
Figure captions
23
500
Figure 1 The first two patterns of summer (June-July-August, JJA) 1000-500 hPa
501
thickness variability north of 30ºN. (a) Normalized PC time series (red: PC1; blue:
502
PC2), the red dashed line represents a linear trend in PC1, and the blue dashed line
503
indicates the mean of PC2 averaged over 2007-2012. (b) Summer 1000-500 hPa
504
thickness anomalies, derived from a linear regression on the detrended PC1, the
505
white and black contours represent thickness anomalies at 95% and 99%
506
confidence levels, respectively. (c) As in (b), but for the regression on the
507
normalized PC2. (d)-(f) summer 1000-500 hPa thickness anomalies (relative to the
508
mean averaged over 1979-2016) in 2006 (d), 2013 (e), and 2016 (f). The first two
509
patterns respectively account for 29% and 10% of the variance.
510
Figure 2 summer mean 500 hPa geopotential height anomalies, derived from a linear
511
regression on the normalized PC2. White and black contours represent anomalies at
512
95% and 99% confidence levels, respectively.
513
Figure 3 (a) Regression map of the frequency of summer heat wave events, regressed
514
on the normalized PC2 of atmospheric thickness variability. White and black
515
contours denote 95% and 99% confidence levels, respectively. (b) Regionally
516
averaged heat wave frequencies (normalized time series) over the domain bounded
517
by the green box in (a). The dashed line represents a linear trend at 99% confidence
518
level in (b).
519
Figure 4 Weakened tropospheric westerly steering flow links East Asian heat waves
520
to Arctic cold anomalies. (a) Spatial distribution of summer 300 hPa zonal wind
521
anomalies, derived from a linear regression on the normalized PC2. White and 24
522
black contours represent anomalies at 95% and 99% confidence levels, respectively;
523
the green line represents 0º-180ºE at 30ºN. (b) Normalized PC2 (blue line) and
524
PC1 of summer 300 hPa zonal wind variability north of 20ºN (red line; the leading
525
wind pattern accounts for 14% of the variance; r=0.81 ). (c) As in (b), but for
526
normalized, area-weighted, and regionally averaged 300 hPa zonal winds north of
527
70ºN (red line). Correlation between the two time series is 0.88. (d) As in (a), but
528
for zonal wind anomalies along the longitude-pressure cross section at 30ºN (green
529
line in (a)). The gray area indicates topography along 30ºN. (e) As in (d), but for
530
geopotential height anomalies.
531
Figure 5 A systematic shift northward of zonal winds in the troposphere and
532
stratosphere. Zonal wind anomalies along the latitude–pressure cross section at 110
533
ºE, derived from a linear regression on the normalized PC2. White and black
534
contours represent anomalies at 95% and 99% confidence levels, respectively.
535
Green contours denote zonal winds averaged over 1979-2016, and purple contours
536
are zonal winds averaged over Arctic cold summers, with the normalized PC2 1,
537
i.e., 1989, 1994, 1996, 2006, 2013, and 2016.
538
Figure 6 Air temperature anomalies along the latitude–pressure cross section at 110º
539
E, derived from a linear regression on the normalized PC2. White and black
540
contours represent anomalies at 95% and 99% confidence levels, respectively.
541
Figure 7 (a) Spatial distribution of summer mean EGR anomalies at 600 hPa (day-1),
542
derived from a linear regression on the normalized Arctic westerly index. White
543
and black contours denote anomalies at 95% and 99% confidence levels, 25
544
respectively. (b) As in (a), but for anomalies in the frequency of summer anomalous
545
low-pressure.
546
Figure 8 (a) Normalized time series of the NWPSH intensity index, (b)-(c), As in (a),
547
but for the ridge location (latitude) and western ridge point (longitude), respectively.
548
All
549
(http://cmdp.ncc-cma.net/Monitoring/cn_index_130.php).
550 551
552
data
obtained
from
National
Climate
Center
in
Figure 9 2013 summer mean 500 hPa temperature anomalies (relative to the summer mean averaged over 1979-2016) (ºC). Figure 10 500 hPa mean temperature advection and time mean of transient eddy flux ̅
553
𝜕𝜃 ̅̅̅̅̅̅̅̅̅̅ divergence for summer of 2013: (a) −𝑉̅ ∙ ∇𝜃̅, (b) −𝜔 ̅ 𝜕𝑝, (c) −∇ ∙ 𝜃 ′ 𝑉 ′ , (d)
554
−
̅̅̅̅̅̅̅ ′ 𝜔′ 𝜕𝜃 𝜕𝑝
, and (e) sum of (a)-(d). Units are K day-1.
555
Figure 11 Mean vertical velocity at 500 hPa (Pa s-1) for summer of 2013.
556
Figure 12 Normalized time series: summer mean AO index (red) and second
557
China
thickness pattern (blue), and their correlation is 0.54.
558
Figure 13 (a) Normalized time series of the summer Arctic westerly index (red line)
559
and the ensuing winter (DJF) Siberian high index (blue line). Their correlation is
560
-0.59, significant at 99% confidence level. (b) Winter 500 hPa geopotential height
561
anomalies (gpm), derived from a linear regression on the normalized summer
562
Arctic westerly index. White and black contours represent anomalies at 95% and 99%
563
confidence levels, respectively. (c)-(d), As in (b), but for winter SLP (hPa) and SAT
564
(ºC) anomalies, respectively.
26
565
566
Figures
567
568
27
569 570
Figure 1 The first two patterns of summer (June-July-August, JJA) 1000-500 hPa
571
thickness variability north of 30ºN. (a) Normalized PC time series (red: PC1; blue:
572
PC2), the red dashed line represents a linear trend in PC1, and the blue dashed line
573
indicates the mean of PC2 averaged over 2007-2012. (b) Summer 1000-500 hPa
574
thickness anomalies, derived from a linear regression on the normalized detrended
575
PC1, the white and black contours represent thickness anomalies at 95% and 99%
576
confidence levels, respectively. (c) As in (b), but for the regression on the
577
normalized PC2. (d)-(f) summer 1000-500 hPa thickness anomalies (relative to the 28
578
mean averaged over 1979-2016) in 2006 (d), 2013 (e), and 2016 (f). The first two
579
patterns respectively account for 29% and 10% of the variance.
580 581 582 583 584 585 586 587 588 589 590 591 592 593 594 595 596 597 598 599 600 601 602 603 604
29
605 606
Figure 2 summer mean 500 hPa geopotential height anomalies, derived from a linear
607
regression on the normalized PC2. White and black contours represent anomalies at
608
95% and 99% confidence levels, respectively.
609 610 611 612 613 614 615 616 617 618 619 620 621 622 623 624 625 626 627 30
628
629 630
631 632
Figure 3 (a) Regression map of the frequency of summer heat wave events, regressed
633
on the normalized PC2 of atmospheric thickness variability. White and black
634
contours denote 95% and 99% confidence levels, respectively. (b) Regionally
635
averaged heat wave frequencies (normalized time series) over the domain bounded
636
by the green box in (a). The dashed line represents a linear trend at 99% confidence
637
level in (b). 31
638 639
640
641
642 32
643
644
645 646 647 648 33
649
Figure 4 Weakened tropospheric westerly steering flow links East Asian heat waves
650
to Arctic cold anomalies. (a) Spatial distribution of summer 300 hPa zonal wind
651
anomalies, derived from a linear regression on the normalized PC2. White and
652
black contours represent anomalies at 95% and 99% confidence levels, respectively;
653
the green line represents 0º-180ºE at 30ºN. (b) Normalized PC2 (blue line) and
654
PC1 of summer 300 hPa zonal wind variability north of 20ºN (red line; the leading
655
wind pattern accounts for 14% of the variance; r=0.81 ). (c) As in (b), but for
656
normalized, area-weighted, and regionally averaged 300 hPa zonal winds north of
657
70ºN (red line). Correlation between the two time series is 0.88. (d) As in (a), but
658
for zonal wind anomalies along the longitude-pressure cross section at 30ºN (green
659
line in (a)). The gray area indicates topography along 30ºN. (e) As in (d), but for
660
geopotential height anomalies.
661 662 663 664 665 666 667 668 669 670 671 672 673 674 675 676 677 678 679 680 34
681 682 683 684 685 686
687 688 689
Figure 5 A systematic shift northward of zonal winds in the troposphere and
690
stratosphere. Zonal wind anomalies along the latitude–pressure cross section at 110
691
ºE, derived from a linear regression on the normalized PC2. White and black
692
contours represent anomalies at 95% and 99% confidence levels, respectively.
693
Green contours denote zonal winds averaged over 1979-2016, and purple contours
694
are zonal winds averaged over Arctic cold summers, with the normalized PC2 1,
695
i.e., 1989, 1994, 1996, 2006, 2013, and 2016.
696
35
697
698
699 700
Figure 6 Air temperature anomalies along the latitude–pressure cross section at 110º
701
E, derived from a linear regression on the normalized PC2. White and black
702
contours represent anomalies at 95% and 99% confidence levels, respectively.
703 704 705
36
706 707 708
Figure 7 (a) Spatial distribution of summer mean EGR anomalies at 600 hPa (day-1),
709
derived from a linear regression on the normalized Arctic westerly index. White
710
and black contours denote anomalies at 95% and 99% confidence levels,
711
respectively. (b) As in (a), but for anomalies in the frequency of the anomalous
712
low-pressure.
713
37
714 715
Figure 8 (a) Normalized time series of the NWPSH intensity index, (b)-(c), As in (a),
716
but for the ridge location (latitude) and western ridge point (longitude), respectively.
717
All
718
(http://cmdp.ncc-cma.net/Monitoring/cn_index_130.php).
data
obtained
from
National
Climate
Center
in
China
719
720
721
722
38
723
724 725
Figure 9 2013 summer mean 500 hPa temperature anomalies (relative to the summer mean averaged over 1979-2016) (ºC).
39
726 727
Figure 10 500 hPa mean potential temperature advection and time mean of transient
728
𝜕𝜃 ̅̅̅̅̅̅̅̅̅̅ eddy flux divergence for summer of 2013: (a) −𝑉̅ ∙ ∇𝜃̅, (b) −𝜔 ̅ 𝜕𝑝, (c) −∇ ∙ 𝜃′𝑉 ′,
729
(d) −
̅
̅̅̅̅̅̅̅ ′ 𝜔′ 𝜕𝜃 𝜕𝑝
, and (e) sum of (a)-(d). Units are K day-1.
730 40
731
732
733
Figure 11 Mean vertical velocity at 500 hPa (Pa s-1) for summer of 2013.
734
735
736
737
738
739
740 41
741
742
743
744
745
746
747 748
Figure 12 Normalized time series: summer mean AO index (red) and second thickness pattern (blue), and their correlation is 0.54.
749
750
751
752
753
754
755
42
756
757
758
759
760
43
761
762 763
Figure 13 (a) Normalized time series of the summer Arctic westerly index (red line)
764
and the ensuing winter (DJF) Siberian high index (blue line). Their correlation is
765
-0.59, significant at 99% confidence level. (b) Winter 500 hPa geopotential height
766
anomalies (gpm), derived from a linear regression on the normalized summer 44
767
Arctic westerly index. White and black contours represent anomalies at 95% and 99%
768
confidence levels, respectively. (c)-(d), As in (b), but for winter SLP (hPa) and SAT
769
(ºC) anomalies, respectively.
770
45