Journal Pre-proofs Research papers Quantifying the impacts of the Three Gorges Reservoir on water temperature in the middle reach of the Yangtze River Yuwei Tao, Yuankun Wang, Bruce Rhoads, Dong Wang, Lingling Ni, Jichun Wu PII: DOI: Reference:
S0022-1694(19)31211-9 https://doi.org/10.1016/j.jhydrol.2019.124476 HYDROL 124476
To appear in:
Journal of Hydrology
Received Date: Revised Date: Accepted Date:
25 July 2019 6 December 2019 15 December 2019
Please cite this article as: Tao, Y., Wang, Y., Rhoads, B., Wang, D., Ni, L., Wu, J., Quantifying the impacts of the Three Gorges Reservoir on water temperature in the middle reach of the Yangtze River, Journal of Hydrology (2019), doi: https://doi.org/10.1016/j.jhydrol.2019.124476
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Quantifying the impacts of the Three Gorges Reservoir on water
2
temperature in the middle reach of the Yangtze River
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Yuwei Taoa, Yuankun Wanga,*, Bruce Rhoadsb, Dong Wanga, Lingling Nia, Jichun
5
Wua
6 7
aKey
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Hydrosciences, School of Earth Sciences and Engineering, State Key Laboratory of
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Pollution Control and Resource Reuse, Nanjing University, Nanjing, PR China.
Laboratory of Surficial Geochemistry, Ministry of Education, Department of
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bDepartment
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Illinois at Urbana-Champaign, Champaign, IL, USA
of Geography and Geographic Information Science, University of
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(*Corresponding author: Yuankun Wang,
[email protected])
1
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Abstract: The flow, sediment and temperature regimes of the Yangtze River have
15
changed greatly due to the construction of the Three Gorges Reservoir (TGR).
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Although past work has focused mainly on the influence of the TGR on water and
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sediment regimes, less attention has been given to temperature effects. Water
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temperature changes have important implications for the quality of aquatic habitat and
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the health of the river ecosystem. This study investigates the impact of the TGR on
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the water temperature regime along the middle reach of the Yangtze River. To
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accurately quantify the impact of TGR on water temperature, a regression-modeling
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framework is employed to reconstruct the temporal pattern of flow and temperature
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variation along the middle reach of the river in the absence of the TGR. Based on this
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modeling, reconstructed water temperatures are compared to observed water
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temperature for the post-impounded period (period 2003-2014) to estimate the
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influence of impoundment on water temperature. Results show that the influence of
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the TGR on water temperature alteration exceeds the influence of natural factors. The
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effect of TGR, relative to unimpounded conditions, is to reduce water temperatures in
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the spring, summer, and autumn, and to increase water temperatures in the winter. The
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results of this study illustrate the pronounced effect of the TGR on the temperature
31
regime of the Yangtze River and provide information that can help guide operation of
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Three Gorges Reservoir to enhance biological conservation.
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Keywords: Water temperature, Three Gorges Reservoir, Reconstruction, Yangtze
34
River
35 2
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1.
Introduction
37
Water temperature is a crucial physical property of rivers, having a direct impact
38
on almost all ecological and biogeochemical processes, including chemical reaction
39
rate, oxygen solubility, primary production and fish habitat (Caissie, 2006; Webb et
40
al., 2008). The complexity of river thermal response is strongly related to large-scale
41
climate changes (e.g., air temperature, precipitation and solar radiation) (Cassie, 2006;
42
Rice and Jastram, 2015; Chen et al., 2016) and human activities (e.g., agricultural
43
irrigation systems, power generation, dam construction etc.) (van Vliet et al., 2011;
44
Ding et al., 2015).
45
Large dams can influence temperature regimes of rivers by impounding water for
46
prolonged periods. Reservoirs in temperate regions often stratify in response to
47
changing atmospheric conditions through heat transfer at the surface and internal
48
thermodynamics (Elçi, 2008). Stratification results in a warm surface (epilimnetic)
49
layer and a cool bottom (hypolimnetic) layer. In view of the development of
50
epilimnetic and hypolimnetic layers in reservoirs, which may have different thermal
51
characteristics than the flowing river upstream of a reservoir, the impact of reservoirs
52
on downstream water temperature can be important if the release of water from the
53
reservoir substantially modifies natural thermal conditions suitable for native aquatic
54
biota (Kedra and Wiejaczka, 2018). Previous work has mainly focused on qualitative
55
evaluation of the role of reservoirs in affecting downstream thermal regimes in river
56
systems (e.g., Erickson and Stefan, 2000; Steel and Lange, 2007; Olden and Naiman,
57
2010; Casado et al., 2013). These studies have revealed that changes occur to all 3
58
aspects of water temperature, including reduction in thermal variability, changed
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frequency and duration of temperature extremes, and weakening of air-water
60
temperature interaction. Quantifying the impact of reservoirs on water temperature is
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vitally important for developing adequate strategies to minimize adverse effects of
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thermal changes on aquatic habitat.
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Temperature in a stream is the product of heat energy exchange between the
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stream and its environment, including the atmosphere and the riverbed (Risley et al.,
65
2010). Air temperature is commonly used as a predictor variable for water
66
temperature because it can be viewed as a surrogate for net changes in heat flux that
67
affect the water surface, and also because it approximates the equilibrium temperature
68
of a water course (Webb et al., 2003, 2008). Alternative modeling approaches used to
69
investigate air-water temperature relationships include linear and nonlinear regression
70
models, wavelet models, a time-varying coefficient, and time series models (Mohseni
71
et al., 1998; Cho and Lee, 2012; Li et al., 2014; Gu et al., 2015; Rice and Jastram,
72
2015; Jackson et al., 2018). Linear regression models linking water temperature and
73
air temperature have been developed successfully at multiple time scales (Erickson
74
and Stefan, 2000; Webb et al., 2003; Jackson et al., 2018). For example, Jackson et al.
75
(2018) formulated a large-scale spatio-temporal model in which a linear function is
76
used to relate maximum daily water temperature to air temperature, showing that the
77
relationship between these two variables is linear. Besides air temperature, changes in
78
runoff volumes are also known to affect water temperature (Langan et al., 2001;
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Webb et al., 2003; van Vliet et al., 2012). However, the relationship between 4
80
discharge and water temperature remains poorly understood. A critical need exists to
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determine how air temperature and discharge influence the water temperature of
82
rivers.
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Three Gorges Reservoir (TGR), the largest water control project in the world,
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provides numerous benefits that contribute to economic prosperity and social
85
well-being. On the other hand, the TGR has substantially altered the hydrological and
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thermal regimes of the Yangtze River by changing the amount and timing of flow and
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by producing thermal stratification within the reservoir that results in the release of
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hypolimnetic water (Wang et al., 2012; Chen et al., 2016; Long et al., 2016; Cai et al.,
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2018). It also markedly affects the behavior and distributions of aquatic species (Long
90
et al., 2016; Wang et al., 2017). For these reasons, water temperature variations
91
downstream associated with the TGR have been of considerable interest. However,
92
previous analysis attributed differences of water temperature downstream and
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upstream of the reservoir to operation of the TGR, without considering effects of
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other factors unrelated to the TGR (e.g., changing climate condition) on changes in
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downstream water temperature (Zou et al., 2011; Long et al., 2016). To fully assess
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the effects of TGR on water temperature, reconstruction of water temperatures from
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meteorological and hydrological data in the absence of the reservoir is necessary. As
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the basis for reconstruction, natural river flow without the reservoir needs to be
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simulated using a general regression neural network (GRNN) which outperforms
100 101
other neural network methods (Kim et al., 2013; Tafur et al., 2014). The main objective of this study is to determine the extent to which construction 5
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of the TGR has changed water temperatures within the Yangtze River downstream of
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the reservoir. To achieve this objective, the study: (1) develops a predictive regression
104
model of water temperature in the river based on air temperature and discharge; (2)
105
uses the model to reconstruct water temperatures for the post-impoundment period in
106
the absence of impoundment; and (3) assesses the influence of the TGR on water
107
temperatures by comparing observed and predicted values of water temperature in the
108
post-impoundment period. Quantitative assessment of the impact of the reservoir on
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river water temperature informs future science-based management of the reservoir
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aimed at minimizing adverse ecological effects.
111
2.
Study area and data
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The Yangtze River is the longest river in Asia and the third longest river in the
113
world. It passes through its source in Qinghai Province eastward to the East China Sea
114
at Shanghai. The river is about 6300 km long and its catchment covers 1,800,000 km2
115
(Xu et al., 2006). The basin includes zones of subtropical and temperate climate (Li et
116
al., 2011). The TGR is located along the main stream of Yangtze River between
117
Chongqing and Yichang (Figure 1). The TGR started to impound water in 2003 and
118
became fully operational in 2009. The reservoir has a water storage capacity of 39.3
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km3 - about 4.5% of Yangtze's annual discharge (Wang et al., 2017). The TGR is
120
operated to accommodate multiple needs, including flood control, irrigation, and
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power generation, with amounts of released water varying seasonally (Cai et al.,
122
2018).
123
Yichang hydrological station, located 44 km downstream of TGR, provided 6
124
information on discharge and water temperature below the reservoir (Figure 1).
125
Discharge data for Cuntan and Wulong hydrological stations located in the upper
126
Yangtze River, were used to reconstruct time series of natural discharge in the
127
absence of the TGR at Yichang since 2003. Daily water temperature at Yichang and
128
discharge at the three hydrological stations for the pre-TGR (1952-2002) and
129
post-TGR (2003-2015) periods were provided by the Yangtze River Water Resources
130
Commission. Daily air temperature data for 1956 to 2015 at Yichang meteorological
131
station were obtained from the National Meteorological Information Center
132
(http://data.cma.cn/).
133
Insert Figure 1 here.
134
3.
Research Design and methods
135
The research design to address the main objective of the study involves several
136
sequential components (Figure 2). First, observed daily data on water temperature
137
(WT), air temperature (Ta), and discharge (Q) were used to develop a set of
138
multivariate regression models predicting water temperature on the basis of air
139
temperature and discharge. Although past work has indicated that multivariate
140
relations between water temperature and independent variables can be nonlinear
141
(Mohseni et al., 1998), the use of multivariate linear regression analysis is justified in
142
this study given linear relationships between water temperature and air temperature
143
and between water temperature and discharge (Table 1). The general model has the
144
form:
145
WT (t ) 0 1Ta (t l ) 2 Q (t ) 7
(1)
146
where β0, β1, and β2 are regression coefficients, t is time, and l is a time lag. The need
147
to include a lag effect for air temperature reflects the tendency for water temperature
148
variations to be delayed relative to air temperature fluctuations at daily time scales
149
(Erickson and Stefan, 2000; Webb et al., 2003). The root mean squared error (RMSE)
150
is used to evaluate how well the regression model fits the data:
RMSE 151
(yˆ t yt ) 2 n
(2)
152
where yˆ t is the simulated value; yt is the observed value and n is the sample size.
153
Insert Table 1 and Figure 2 here
154
Linear multivariate water temperature regression models were estimated for each
155
month with different time lags based on daily air temperature and discharge (Table
156
2). A daily time scale was chosen because compared to monthly or seasonal time
157
scales, exploratory regression analysis based on daily data yielded the lowest RMSE.
158
Separate sets of monthly models were fitted to data for periods before (1983-2002)
159
and after (2003-2014) the construction of the TGR. WTsim,pre-TGR represents estimates
160
of the water temperature derived from the linear water temperature regression models
161
in the pre-TGR period (1983-2002). The corresponding coefficients of these models
162
are β0,pre-TGR, β1,pre-TGR and β2,pre-TGR. Similarly, values of WTsim,post-TGR are post-TGR
163
estimates of water temperature associated with coefficients β0,post-TGR, β1,post-TGR and
164
β2,post-TGR. The optimal time lag was determined by varying the lag and selecting the
165
value that produced the lowest RMSE.
166
Insert Table 2 here
167
The second step in the methodology involves reconstructing what the natural 8
168
variation in discharge at Yichang station would have been since 2003 in the absence
169
of the TGR. This step in the analysis is necessary so that the influence of discharge on
170
water temperature in the post-impoundment period (2003-2013) in the absence of
171
impoundment can be estimated. To accomplish this task, a general regression neural
172
network (GRNN) model was generated using discharge data for Cuntan and Wulong
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hydrological stations, which represent inflows of the TGR and are major components
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of discharge at Yichang.
175
GRNN is a one-pass neural network learning algorithm (Specht, 1991).
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Consistent with the basic principle of all neural networks, GRNN requires training
177
data to train itself based on input-output mapping. After a trained model is developed,
178
it can be used to estimate outputs for test data. The basic equation associated with
179
GRNN is: yi
180
y K ( x, x ) K ( x, x ) k
k
(3)
k
181
where yi the output or prediction, yk is an activation weight, x is the input, and xk is the
182
training sample. The activation function K(x, xk) is:
K ( x, xk ) e
183
d2 i 2 2
(4)
d k ( x xk )T ( x xk ) and is a spread constant. Optimization involves
184
where
185
determining the value of that minimizes the mean square error when outputs are
186
predicted based on the model developed for the training data.
187
To apply GRNN on a daily basis, a lag effect is incorporated because discharge
188
variations at Yichang tend to lag behind those at Cuntan and Wulong by about two 9
189
days on average. For model development, 80% of the data prior to dam construction
190
were used for training (1952-1991) and 20% (1992-2002) were used for testing
191
(Tayfur et al., 2014). The performance of the GRNN model is assessed using the
192
Nash-Sutcliffe efficiency coefficient (NSE):
193
NSE 1
n
t 1 n
(yˆ t yt ) 2
t 1
(yt y) 2
(5)
194
where yˆ t is the simulated value; yt is the observed value and 𝑦 is the mean value of
195
observed data. An NSE of 1.0 corresponds to a perfect match between simulated and
196
observed values; the closer NSE is to 1.0 the more accurate the model is. If NSE >
197
0.5, forecasting is feasible (Moriasi et al., 2007).
198
In step three, the set of monthly regressions models for the pre-dam period were
199
used to estimate values of WT in the absence of the TGR (WTnat,post-TGR) based on
200
actual measured air temperatures and the predicted values of discharge derived from
201
the GRNN model (Qna)
202
WTnat,post-TGR(t)=β0,pre-TGR+ β1,pre-TGR Ta,post-TGR(t-l)+ β2,pre-TGR Qna(t)
(6)
203
In the final step, the contributions to the total change in average water
204
temperature (ΔTOT) of the TGR (ΔTGR), of natural changes in air temperature and
205
discharge (ΔNC) and of changes associated with other factors, such as land use change,
206
other dams, and industrial activities (Δβ0) were determined from the model results.
207
These changes can be computed as:
208
ΔTOT = WTobs,post-TGR- WTobs,pre-TGR
209
= Δβ0+(WTnat,post-TGR- WTsim,pre-TGR)+ (WTsim,post-TGR- WTnat,post-TGR-Δβ0) +ε 10
=Δβ0+ ΔNC + ΔTGR + ε
210 211
Δβ0= β0,post-TGR-β0,pre-TGR
212
ΔNC= WTnat,post-TGR- WTsim,pre-TGR
(7) (8)
=β1,pre-TGR*( Ta,post-TGR - Ta,pre-TGR) + β2,pre-TGR*( Qna,post-TGR –Qpre-TGR)
213 214
= β1,pre-TGR*ΔTa +β2,pre-TGR*ΔQnat
215
ΔTGR= WTsim,post-TGR- WTnat,post-TGR-Δβ0
(9)
216
=Ta,post-TGR(t-l pre-TGR )*Δβ1 + ΔTa,lag effect*β1,post-TGR +
217
changed air-water temperature interaction
218
Qna,pre-TGR*Δβ2 +β2,post-TGR*ΔQTGR
219
changed pattern of discharge
(10)
Mean residual error (ε) associated with the linear regression models is zero.
220 221
4.
222
4.1. Basic trends in air temperature, water temperature, and discharge
223
4.1.1 Inter-annual variation
224
Results
Since 1956 mean annual air temperature at Yichang has varied between about 16℃
225
and 18℃. A slight downward trend is evident between 1956 and 1984, whereas an
226
upward trend occurred between 1985 and 2006 (Figure 3). Yichang experienced an
227
extreme hot spell and drought during the summer of 2006 (Wu et al., 2012), followed
228
by a slight downward trend in annual air temperature between 2007 and 2015.
229
The annual water temperature variation at Yichang generally exhibits a similar
230
pattern to air temperature. Between 1956 and 1973, annual water temperature
231
increased slightly, followed by a slight decrease from 1974 to 1985. A sustained 11
232
increasing trend is evident from 1986-2006 at an average rate of 0.04 ℃ per year. As
233
with air temperature, the maximum of water temperature occurred in 2006. The
234
extreme drought in the summer of 2006 apparently affected both air and water
235
temperature at Yichang. This similarity in air and water temperature trends verifies
236
the close correlation between the two variables, which is related to the influence of
237
solar radiation on both water and air temperature (Brown, 1969; Moore, 1967). Since
238
impoundment in 2003, the mean annual water temperature has risen from 18.04 ℃ to
239
18.86 ℃.
240
Discharge at Yichang has exhibited a slow decline since 1956. Annual discharge
241
from 1956-2002 was 13656 m3/s, decreasing to 12668 m3/s after the impoundment of
242
TGR, a reduction of 7.2%.
243
Insert Figure 3 here.
244
4.1.2. Intra-annual variation
245
As seen in Figure 4 (a), monthly air temperature is almost consistent before and
246
after the construction of TGR, with the differences varying from -0.19 ℃ to 1.42 ℃.
247
While monthly water temperature in the heating period from March to June has
248
decreased 0.84 ℃ to 2.39 ℃ after impoundment and it has warmed slightly to 17.77 ℃
249
in the cooling period from September to February (Figure 4 (b)). Overall, the water
250
temperature at Yichang became less variable after impoundment and the lowest water
251
temperature shifted from January and February to February and March.
252
River discharge changes greatly at intra-annual time scales. Because 56% of the
253
storage capacity of the Three Gorges reservoir is used for regulation of water, 12
254
discharges vary in conjunction with the schedule of regulated releases of water.
255
Discharges in April, May and December between 2003 and 2014, the period of
256
impoundment, are nearly the same as those before impoundment (Figure 4 (c)). From
257
June to November, post-impoundment discharges have decreased compared to mean
258
monthly discharges from 1956 to 2002. During every flood season from mid-June to
259
late-September, the reservoir is operated to impound floodwaters and control the
260
discharged flow (Zheng, 2016). After the flood season (early October) TGR impounds
261
water to increase the reservoir water level gradually to a surface elevation of 175 m.
262
During the low-water season from January to March, TGR releases water to sustain
263
power generation and navigation in the reservoir area; thus, the mean monthly
264
discharge has increased to 5195 m3/s - 5597 m3/s higher than pre-TGR period.
265
Insert Figures 4 here.
266
4.2. Performance of regression models
267
Values of RMSE for linear regression models for each month in the pre-TGR
268
period range from 0.71 ℃ to 1.21 ℃ (Table 2). Regression models for the post-TGR
269
period also perform well with RMSE ranging from 0.71 ℃ to 1.67 ℃. The optimal
270
time lags between water temperature and air temperature range from 2 to 30 days. The
271
lag days for May and November are equal to 30, indicating that the relations between
272
the water temperatures of virtually all days in those months are strongly influenced by
273
air temperatures from the preceding month. The average optimal lag is slightly longer
274
(14 days) for the post-dam set of models than for the pre-dam set of models (8 days)
275
(Table 2), consistent with the previous study that water temperature responded more 13
276
slowly to air temperature specifically after dam construction (Kędra and Wiejaczka,
277
2016). Predicted patterns of water temperature over the year for both pre- and
278
post-impoundment match closely the observed pattern (Figure 5), consistent with the
279
lack of model bias ( =0).
280
Insert Table 2 here
281
Insert Figure 5 here.
282
Optimization of the GRNN model yielded a nondimensional spread value () of
283
0.03. NSE value for discharge reached 0.89 higher than the satisfactory level of 0.5
284
and the model performance could be described as very good (Moriasi et al., 2007).
285
The result indicates the model accurately represents variation in the natural discharge
286
at Yichang without the effects of impoundment. As expected, the model predicts that
287
since 2003 peak discharges would be greater and minimum discharges would be less
288
than observed values of discharge if the flow was not regulated by the TGR (Figure
289
6).
290
Insert Figure 6 here.
291
To evaluate uncertainties that may be propagated to reconstructed water
292
temperatures based on the use of simulated discharges, data for the pre-dam period
293
(1983-2002) were divided into subsets for training (1983-1996) and testing
294
(1997-2002) periods. Models fitted to data for the training period were then used to
295
estimate water temperatures for the testing period based on predicted discharges and
296
data on air temperature. Reconstructed water temperatures for the testing period
297
(1997-2002) were then compared to corresponding observed water-temperatures. 14
298
Relative errors in predicted monthly averaged water temperatures ranged from -8.3%-
299
1.6% with an average of -3.5%. The NSE for the testing period was 0.99 with an
300
RMSE of only 0.68 ℃. These results indicate that reconstruction of water temperature
301
using simulated discharges is highly accurate and that uncertainties associated with
302
this method have little effect on subsequent analysis.
303
4.3. Assessing the impact of TGR on water temperature
304
The sets of linear water temperature regression models, combined with the
305
prediction of discharge in the absence of TGR at Yichang in 2003-2013 using the
306
GRNN model, provides the basis for accurately quantifying the separate contributions
307
of natural changes versus reservoir-related changes on water temperature at Yichang
308
after the TGR. Seasonal and annual statistics were generated using equation (7) based
309
on the observed and simulated water temperatures (Table 3). Results reveal that total
310
annual change in water temperature at Yichang attributable to TGR (TGR) is larger
311
than change attributable to natural factors (ΔNC). Overall, the annual water
312
temperature has increased by 0.67 ℃ since impoundment. Of this total change, only
313
0.16 ℃ of warming is attributable to natural changes in air temperature and discharge
314
(ΔNC). On the other hand, reservoir operation has independently decreased water
315
temperature by 0.65 ℃ (TGR). Other factors not explicitly accounted for by the model
316
(0) have produced the greatest change, resulting in warming of 1.16 ℃.
317
Insert Tables 3 here.
318
The results also show that the relative impact of the TGR on water temperature
319
varies seasonally. Seasonal impacts of TGR differ significantly (p-value < 0.01) from 15
320
those of natural factors based on a Student’s t test. Absolute differences of changes in
321
water temperature attributable to TGR are 2.78 - 16.83 times those attributable to
322
natural factors. During relatively warm parts of the year (March to November) the
323
TGR has a cooling effect ranging from -0.57 ℃ to -1.29 ℃ on water temperature. This
324
effect is consistent with release of water stored within the reservoir that, because of
325
the high thermal inertia of the stored water, is cooler than expected based on air
326
temperature. Similarly, during the winter (December to February), the TGR has a
327
slight warming effect (0.22 ℃), perhaps reflecting the release of slightly warmer
328
reservoir water compared to the water temperature that would occur if this
329
temperature was strongly controlled by air temperature (Cai et al., 2018). The cooling
330
effect is greatest in the spring (March to May) (-1.29 ℃) and during this season the
331
release of cool water from the TGR has had the greater impact on water temperature
332
relative to natural changes in air temperature or discharge. Other factors reflected in
333
Δβ0 have led to a significant warming of water temperature in autumn and winter.
334
Using equation (10), the contributions of changes in air-water temperature
335
interaction and of changes in discharge to changes in water temperature can be
336
determined. The construction of TGR has resulted in substantial changes in nearby
337
land use, land cover, topography, and evaporation (Wu et al., 2012), which has in turn
338
affected the sensitivity of water temperature to air temperature (Erickson and Stefan,
339
2000; Langan et al., 2001; Webb et al., 2008). Moreover, water storage within the
340
TGR and thermal inertia associated with storage also affect the relationship between
341
air temperature and water temperature. As shown in Table 4, changes in air-water 16
342
temperature interaction following the construction of the TGR have a cooling effect
343
ranging from -0.26 ℃ to -0.94 ℃ in all four seasons. The largest decrease (-2.1 ℃)
344
occur in August, when the water in the river should be quite warm. TGR regulates the
345
amount and timing of water releases for flood prevention, power generation and
346
navigation throughout the year, which can change the relationship between water
347
temperature and discharge, especially given thermal inertia effects of stored water.
348
The results indicate that the altered pattern of discharge exerted different effects on
349
water temperature in the four seasons – a cooling effect in spring and autumn and a
350
warming effect in summer and winter. In March, the changed pattern of flow has its
351
maximum independent effect on water temperature – producing cooling of -3.54 ℃
352
compared to the independent effect of predicted unregulated discharges. At this time
353
of year, flow within the river may normally be warming, but thermal inertial of
354
relatively cool reservoir water may promote cooling.
355
Insert Tables 4 here.
356
TGR experienced three operation stages which may contribute to impacts on
357
water temperature at Yichang through changes in the water volume stored in the
358
reservoir, and hence in its thermal inertia (Cai et al., 2018). In June 2003, the water
359
level of the TGR was raised to an elevation of 135 m and power generation began
360
with the water being retained by a cofferdam. The water level fluctuated seasonally
361
between 136 and 143 m until 2006 (initial stage). From October 2006 to October 2008
362
(transitional stage), the water level rose to between 145 and 156 m and preliminary
363
operations began. By November 2008 (standard normal stage), the level of the 17
364
reservoir reached its normal level of 175 m. Contributions related to TGR vary during
365
different operational stages (Table 5). The results for standard normal stage are
366
roughly consistent with effects throughout the period from 2003-2014. The cooling
367
effect of TGR became enhanced in summer as the stage increased, while warming
368
trends developed in autumn and winter as the water level in the reservoir rose. The
369
clear variations in ΔTGR during different operation stages of TGR reinforce the
370
assumption that TGR brought about significant impacts on water temperature
371
behavior at Yichang.
372
Insert Tables 5 here.
373
5.
Discussion
374
The framework developed and implemented in this study provides an improved
375
method for determining the effects of natural factors versus reservoir impoundment on
376
water temperature. Specifically, it isolates the separate contributions of natural factors
377
versus impoundment using a water temperature regression model that captures the
378
changes induced by varying external conditions. This research has refined the analysis
379
of the effects of dams on water temperature variations by accounting for factors other
380
than the presence of the dam that could produce differences in water-temperature
381
characteristics before and after impoundment.
382
discharge, other factors, such as sewage discharges, land use changes, and industrial
383
pollution, can influence water temperature (Cai et al., 2018). These other influences
384
are accounted for in the modeling by changes in the coefficient β0. The findings of
385
this study reveal that these other factors have had the most important influence on 18
Besides air temperature and
386
water temperature in the river below the TGR which needs further work to identify
387
the way in which these factors influence water temperature. However, the effect of the
388
TGR exceeds the effect related to natural factors with the TGR producing net cooling
389
during all but the coldest parts of the year.
390
Past studies have revealed that reservoirs can substantially change hydrological
391
and thermal regimes downstream and that this impact can extend for tens to hundreds
392
of kilometers (Petts, 1986; Richter et al., 1998; Soja and Wiejaczka, 2014). This study
393
confirms that the construction of the TGR has had an important independent effect on
394
the water temperature regime of the Yangtze River downstream of the TGR,
395
consistent with previous findings. The findings are also consistent with results of
396
previous work indicating that natural synchronization between air temperature and
397
water temperature has changed since initiation of reservoir operation (Kedra and
398
Wiejaczka 2018). The analysis in this study supports the conclusion that the
399
interaction between air temperature and water temperature has weakened following
400
dam construction. Past work has not considered explicitly the linkage between water
401
temperature and discharge, whereas the findings of this study show that the
402
connection between discharge and water temperature is also affected by the operation
403
of the TGR.
404
It may be feasible to produce river water temperatures sufficiently close to
405
natural temperatures using adaptive management strategies designed to restore
406
environmental river flows (Gu et al., 1999; Richter and Thomas, 2007). For that
407
purpose, monitoring river flow and air temperature downstream of dams and 19
408
quantifying the respective contributions of these factors to thermal regime are
409
necessary to facilitate modeling of future scenarios based on modification of reservoir
410
outflows. Different from other statistical methods for water temperature
411
reconstruction that seek to quantify the separate contributions of climate and human
412
interventions (e.g., air2stream model), this study has used a linear regression model to
413
isolate the effects of changes in air-water temperature interaction and the pattern of
414
discharge produced by dam construction on the river water temperature. This
415
approach leads to an improved understanding of the mechanisms by which reservoirs
416
influence thermal regimes.
417
Dams change natural stream temperatures and water quality which in turn affect
418
the existing aquatic populations and species composition (Carron and Rajaram, 2001).
419
Downstream changes in water temperature related to impoundment can alter the
420
abundance of warm-water versus cold-water fish species, thereby changing the
421
characteristics of fish communities (Lessard and Hayes 2003). In the Yangtze River,
422
changes in temperature have affected the spawning of four major Chinese carp and
423
Chinese sturgeon (Zhang et al., 2016). Changes in thermal regime produced by dams
424
have led to declines in adult abundance of Chinese sturgeon and in the breeding
425
activity of these fish (Huang and Wang, 2018). Optimization of the operating rules of
426
the TGR may be necessary to minimize negative impacts of thermal regime changes
427
on the river ecosystem and the modeling approach presented here can contribute to
428
this goal.
429
6.
Conclusions 20
430
This study has reconstructed water temperature in the absence of the Three
431
Gorges Reservoir to examine the separate impacts of natural change in air temperature
432
and discharge versus dam construction on the water temperature of the middle reach
433
of the Yangtze River following impoundment. The results reveal that the TGR has
434
had a greater impact on water temperature than natural changes in air temperature and
435
discharge. However, factors not explicitly accounted for by the model (0) have
436
produced the greatest warming effect, greater than the effects of the TGR or of
437
changes in air temperature and discharge. The reservoir acts as a source of cold water
438
in spring, summer and autumn and a warm source in winter. The enhanced impacts of
439
TGR as the operation stage of TGR was completed confirm that changes of water
440
temperature can be attributed primarily to the TGR.
441
By reliably identifying the independent influence of the TGR on water
442
temperature, this study provides useful information on the extent to which the
443
reservoir has altered an important characteristic of the river ecosystem. The
444
information can also be used to assess the long-term impact of the TGR on thermal
445
regime and to guide river conservation planning strategies aimed at mitigating the
446
impact of impoundment on the ecosystem of the Yangtze River.
447
Acknowledgments
448
This study was supported by the National Key Research and Development
449
Program of China (2017YFC1502704, 2016YFC0401501), and the National Natural
450
Science Fund of China (51679118, 41571017, and 91647203), and Jiangsu
451
Province"333 Project" (BRA2018060). 21
452 453 454 455 456 457 458 459
22
460
References
461
Brown, G.W., 1969. Predicting temperatures of small streams. Water Resour.
462
Res. 5(1), 68-75. https://doi.org/10.1029/WR005i001p00068
463
Cai, H.Y., Piccolroaz, S., Huang, J.Z., Liu, Z.Y., Liu, F., Toffolon, M., 2018.
464
Quantifying the impact of the Three Gorges Dam on the thermal dynamics of the
465
Yangtze
466
https://doi.org/10.1088/1748-9326/aab9e0
467 468
River.
Environ.
Res.
Lett.
13(0540165).
Caissie, D., 2006. The thermal regime of rivers: a review. Freshw. Biol. 51(8), 1389-1406. https://doi.org/10.1111/j.1365-2427.2006.01597.x
469
Cao, G.J., Hui, E.Q., Hu, X.E., 2012. Analysis of the vertical structure of water
470
temperature in the vicinity area of Three Gorges Dam since the Three Gorges
471
Reservoir impounds. J. Hydraul. Eng. 43(10), 1254-1259. (in Chinese)
472
Carron, J.C., Rajaram, H., 2001. Impact of variable reservoir releases on management
473
of downstream water temperatures. Water Resour. Res. 37(6), 1733-1744.
474
https://doi.org/10.1029/2000WR900390
475
Casado, A., Hannah, D. M., Peiry, J. L., Campo, A. M., 2013. Influence of
476
dam-induced hydrological regulation on summer water temperature: sauce grande
477
river, argentina. Ecohydrology, 6(4), 523-535. https://doi.org/10.1002/eco.1375
478
Chen, J., Finlayson, B. L., Wei, T.Y., Sun, Q.L., Webber, M., Li, M.T., Chen, Z.Y.,
479
2016. Changes in monthly flows in the Yangtze River, China-With special
480
reference
481
https://doi.org/10.1016/j.jhydrol.2016.03.008
to
the
Three
Gorges
23
Dam. J.
Hydrol. 536,
293-301.
482
Chen, L., Singh, V.P., Guo, S.L., Zhou, J.Z., Ye, L., 2014. Copula entropy coupled
483
with artificial neural network for rainfall-runoff simulation. Stoch. Environ. Res.
484
Risk Assess. 28(7), 1755-1767. https://doi.org/10.1007/s00477-013-0838-3
485
Cho, H. Y., and K. H. Lee, 2012, Development of an air–water temperature
486
relationship model to predict climate-induced future water temperature in estuaries,
487
J.
488
https://doi.org/10.1061/(ASCE)EE.1943-7870.0000499
Environ.
Eng.,
138,
570–577.
489
Ding, J., Jiang, Y., Fu, L., Liu, Q., Peng, Q.Z, Kang, M.Y., 2015. Impacts of land use
490
on surface water quality in a subtropical river basin: a case study of the Dongjiang
491
River
492
https://doi.org/10.3390/w7084427
493 494 495
Basin,
Southeastern
China. Water. 7(8),
4427-4445.
Elçi, Ş., 2008. Effects of thermal stratification and mixing on reservoir water quality. Limnology, 9(2), 135–142. https://doi.org/10.1007/s10201-008-0240-x Erickson, T.R., Stefan, H.G., 2000. Linear air/water temperature correlations for
496
streams
during
open
water
periods,
J.
Hydrol.
497
https://doi.org/10.1061/(ASCE)1084-0699(2000)5:3(317)
Eng.
5(3),
317-322.
498
Frost, F., Karri, V., 1999. Performance comparison of BP and GRNN models of the
499
neural network paradigm using a practical industrial application. International
500
Conference
501
https://doi.org/10.1109/ICONIP.1999.844684
on
Neural
Information
Processing.
IEEE.
502
Gu, R., McCutcheon, S., Chen, C.J., 1999. Development of weather dependent flow
503
requirements for river temperature control. Environ. Manag. 24, 529–540. 24
504
https://doi.org/10.1007/s002679900252
505
Gu, C., Anderson, W. P., Colby, J. D., Coffey, C. L., 2015. Air-stream temperature
506
correlation in forested and urban headwater streams in the southern appalachians.
507
Hydrol. Processes. 29(6), 1110-1118. https://doi.org/10.1002/hyp.10225
508
Huang, Z.L., Wang, L.H., 2018. Yangtze dams increasingly threaten the survival of
509
the
Chinese
Sturgeon.
Current
510
https://doi.org/10.1016/j.cub.2018.09.032
Biol.
28,
3640-3647.
511
Islam, M.N., Liong, S.-Y., Phoon, K.K., Liaw, C.-Y., 2001. Forecasting of river flow
512
data with a general regression neutral network. IAHS-AISH Publication. (272),
513
285-590.
514
Jackson, F. L., Fryer, R. J., Hannah, D. M., Millar, C. P., Malcolm, I. A., 2018. A
515
spatio-temporal statistical model of maximum daily river temperatures to inform the
516
management of Scotland’s Atlantic salmon rivers under climate change. Sci. Total
517
Environ. 612, 1543-1558. http://dx.doi.org/10.1016/j.scitotenv.2017.09.010Jiang,
518
B., Wang, F.S., Ni, G.H., 2018. Heating impact of a tropical reservoir on
519
downstream water temperature: A case study of the Jinghong Dam on the Lancang
520
River. Water, 10(951). https://doi.org/10.3390/w10070951
521
Karpik, S.R., Raithby, G.D., 1990. Laterally averaged hydrodynamics model for
522
reservoir
predictions.
J.
Hydraul.
Eng.
523
https://doi.org/10.1061/(ASCE)0733-9429(1990)116:6(783)
116,
783–798.
524
Kedra, M., Wiejaczka, L., 2018. Climatic and dam-induced impacts on river water
525
temperature: Assessment and management implications. Sci. Total Environ. 626, 25
526
1474-1483. https://doi.org/10.1016/j.scitotenv.2017.10.044
527
Kim, S., Shiri, J., Kisi, O., Singh, V.P., 2013. Estimating daily pan evaporation using
528
different data-driven methods and lag-time patterns. Water Resour. Manage 27,
529
2267–2286. https://doi.org/10.1007/s11269-013-0287-2
530
Langan, S.J., Donaghy, M.J., Youngson, A.F., Hay, D.W., Soulsby, C., 2001.
531
Variation in river water temperatures in an upland stream over a 30-year
532
period. Sci.
533
195-207.https://doi.org/10.1016/S0048-9697(00)00659-8
Total
Environ. 265(1),
534
Lessard, J. A. L., Hayes, D. B., 2003. Effects of elevated water temperature on fish
535
and macroinvertebrate communities below small dams. River Res. Appl. 19(7),
536
721-732. https://doi.org/10.1002/rra.713
537
Li, H., Deng, X., Kim, D.Y., Smith, E.P., 2014. Modeling maximum daily
538
temperature using a varying coefficient regression model. Water Resour. Res.
539
50(4), 3073-3087. https://doi.org/10.1002/2013WR014243
540
Li, Q.F., Yu, M.X., Lu, G.B., Cai, T., Bai, X., Xia, Z.Q., 2011. Impacts of the
541
Gezhouba and Three Gorges reservoirs on the sediment regime in the Yangtze
542
River,
543
10.1016/j.jhydrol.2011.03.043
China.
J.
Hydrol.
403(4-3),
224-233.
https://doi.org/
544
Liu, D.F., Wang, D., Singh, V.P., Wang, Y.K., Wu, J.C., Wang, L.C., et al., 2017.
545
Optimal moment determination in pome-copula based hydrometeorological
546
dependence
547
https://doi.org/10.1016/j.advwatres.2017.04.016
modelling.
Adv.
Water
26
Resour.
105,
28-50.
548
Long, L.H., Xu, H., Ji, D.B., Cui, Y.J., Liu, D.F., Song, L.X., 2016. Characteristic of
549
the water temperature lag in Three Gorges Reservoir and its effect on the water
550
temperature
551
https://doi.org/10.1007/s12665-016-6266-1
552
structure
of
tributaries. Environ.
weekly
554
https://doi.org/10.1029/98wr01877
556
Sci. 75(22),
1459.
Mohseni, O., Stefan, H. G., Erickson, T. R., 1998. A nonlinear regression model for
553
555
Earth
stream
temperatures.
Water
Resour.
Res.
34(10),
2685-2692.
Moore, A.M., 1967. Correlation and analysis of water-temperature data for oregon streams. Br. J. Surg. 73(2), 118-120. https://doi.org/10.1002/bjs.1800730213
557
Moriasi, D.N., Arnold, J.G., Liew, M.W.V., Bingner, R.L., Harmel, R.D., Veith, T.L.,
558
2007. Model evaluation guidelines for systematic quantification of accuracy in
559
watershed simulations. Transactions of the ASABE, 50(3), 885-900. https://doi.org/
560
10.13031/2013.23153
561
Olden, J.D., Naiman, R.J., 2010. Incorporating thermal regimes into environmental
562
flows assessments: Modifying dam operations to restore freshwater ecosystem
563
integrity.
564
https://doi.org/10.1111/j.1365-2427.2009.02179.x
565 566 567
Freshw.
Biol.
55,
86–107.
Petts, G.E., 1986. Water quality characteristics of regulated rivers. Prog. Phys. Geogr. 10, 492–516. Rice, K.C., Jastram, J.D., 2015. Rising air and stream-water temperatures in
568
Chesapeake
Bay
region,
USA. Climatic
569
https://doi.org/10.1007/s10584-014-1295-9 27
Change. 128(1-2),
127-138.
570
Richter, B.D., Baumgartner, J.V., Braun, D.P., Powell, J., 1998. A spatial assessment
571
of hydrologic alteration within a river system. Regul. Rivers Res. Manag. 14, 329–
572
340.
573 574
Richter, B.D., Thomas, G.A., 2007. Restoring environmental flows by modifying dam operations. Ecol. Soc. 12 (1), 12. https://doi.org/10.5751/es-02014-120112
575
Risley, J.C., Constantz, J., Essaid, H., Rounds, S., 2010. Effects of upstream dams
576
versus groundwater pumping on stream temperature under varying climate
577
conditions. Water
578
https://doi.org/10.1029/2009WR008587
Resour.
Res. 46(W06517).
579
Soja, R., Wiejaczka, Ł., 2014. The impact of a reservoir on the physicochemical
580
properties of water in a mountain river. Water Environ. J. 28, 473–482.
581
https://doi.org/10.1111/wej.12059
582 583
Specht, D.F., 1991. A general regression neural network. IEEE Trans. Neural Netw. 2(6), 568–576. https://doi.org/10.1109/72.97934
584
Tayfur, G., Zucco, G., Brocca, L., Moramarco, T., 2014. Coupling soil moisture and
585
precipitation observations for predicting hourly runoff at small catchment scale. J.
586
Hydrol. 510, 363-371. https://doi.org/10.1016/j.jhydrol.2013.12.045
587
Toffolon, M., Piccolroaz, S., 2015. A hybrid model for river water temperature as a
588
function of air temperature and discharge. Environ. Res. Lett. 10(11).
589
https://doi.org/10.1088/1748-9326/10/11/114011
590
van Vliet, M.T.H., Ludwig, F., Zwolsman, J.J.G., Weedon, G.P., Kabat, P., 2011.
591
Global river temperatures and sensitivity to atmospheric warming and changes in 28
592
river
flow. Water
Resour.
593
https://doi.org/10.1029/2010WR009198
Res. 47(2),
247-255.
594
van Vliet, M.T.H., Yearsley, J.R., Franssen, W.H.P., Ludwig, F., Haddeland, I.,
595
Lettenmaier, D.P., Kabat, P., 2012. Coupled daily streamflow and water
596
temperature modelling in large river basins. Hydrol. Earth Syst. Sci. 16, 4303–
597
4321. https://doi.org/10.5194/hess-16-4303-2012
598
Wang, Y.K., Xia, Z.Q., Wang, D., 2012. A transitional region concept for assessing
599
the effects of reservoirs on river habitats: a case of Yangtze River, China.
600
Ecohydrol. 5(1): 28-35. https://doi.org/10.1002/eco.186
601
Wang, Y.K., Wang, D., Lewis, Q.W., Wu, J.C., Huang, F., 2017. A framework to
602
assess the cumulative impacts of dams on hydrological regime: a case study of the
603
Yangtze River. Hydrol. Processes. 31, 3045-3055. https://doi.org/10.1002/hyp.11239
604
Ward, J.V., 1985. Thermal characteristics of running waters. Hydrobiologia. 125(1),
605
31–46. https://doi.org/10.1007/BF00045924
606
Webb, B.W., Clack, P.D., Walling, D.E., 2003. Water-air temperature relationships in
607
a Devon river system and the role of flow. Hydrol. Processes. 17(15), 3069-3084.
608
https://doi.org/10.1002/hyp.1280
609
Webb, B.W., Hannah, D.M., Moore, R.D., Brown, L.E., Nobilis, F., 2008. Recent
610
advances in stream and river temperature research. Hydrol. Processes. 22(7),
611
902-918. https://doi.org/10.1002/hyp.6994
612
Wu, J., Gao, X.J., Giorgi, F., Chen, Z.H., Yu, D.F., 2012. Climate effects of the Three
613
Gorges Reservoir as simulated by a high resolution double nested regional climate 29
614
model. Quat. Int. 282, 27-36. https://doi.org/10.1016/j.quaint.2012.04.028
615
Xu, C.Y., Gong, L.B., Jiang, T., Chen, D.C, Singh, V.P., 2006. Analysis of spatial
616
distribution and temporal trend of reference evapotranspiration and pan evaporation
617
in Changjiang (Yangtze River) catchment. J. Hydrol. (Amsterdam). 327(1-2), 0-93.
618
https://doi.org/10.1016/j.jhydrol.2005.11.029
619
Yu, Z.Z., Wang, L.L., 2011. Factors influencing thermal structure in a tributary bay of
620
Three
621
https://doi.org/10.1016/s1001-6058(10)60130-8
622 623
Gorges
reservoir.
J.
Hydrodynam.
23(4),
407-415.
Zeng, X., 1990. Fishery Resources of the Yangtze River Basin. – Marine Press, Beijing, China.
624
Zhang, H., Wu, J.M., Wang, C.Y., Du, H., Liu, Z.G., Shen, L., Chen, D., Wei, Q.W.,
625
2016. River temperature variations and potential effects on fish in a typical Yangtze
626
River reach: implications for management. Appl. Ecol. Environ. Res. 14(4),
627
553-567. https://doi.org/10.15666/aeer/1404_553567
628 629
Zheng, S.R., 2016. Reflections on the Three Gorges Project since its operation. Eng. 2(4), 389-397. https://doi.org/10.1016/j.eng.2016.04.002
630
Zheng, T.G., Mao, J.Q., Dai, H.C., Liu, D.F., 2011. Impacts of water release
631
operations on algal blooms in a tributary bay of three gorges reservoir. Sci. China
632
Ser. E. 54(6), 1588-1598. https://doi.org/10.1007/s11431-011-4371-7
633
Zou, Z.H., Lu, G.B., Li, Q.F., Xia, Z.Q., Bing, J.P., 2011. Water temperature change
634
caused by large-scale water projects on the Yangtze River mainstream. J.
635
Hydroelectr. Eng. 30(5), 139-144. https://doi.org/10.1080/00405000.2010.522047 30
636
(in Chinese)
637 638 639
31
640
List of Tables
641
Table 1. Linear correlation coefficients*
642
Table 2. Parameters for the linear water temperature regression models*
643
Table 3. The contributions to water temperature at Yichang station in the post-TGR
644
period compared to the pre-TGR period*
645
Table 4 Refinement of contributions related to natural factors and TGR in the
646
post-TGR period compared to the pre-TGR period
647
Table 5. The contributions related to TGR during different operation stages of TGR
648 649
32
650
List of Figures
651
Figure 1. Location of hydrological stations and the Three Gorges Reservoir in the
652
Yangtze River
653
Figure 2. Flowchart of the regression-modeling framework
654
Figure 3. Variations of annual air temperature, discharge, water temperature at
655
Yichang station*
656
Figure 4. Monthly changes at Yichang station before and after building the TGR
657
Figure 5. Comparison between observed and simulated water temperature at Yichang
658
station in the pre-TGR and post-TGR periods
659
Figure 6. Comparison between observed and simulated discharge at Yichang station
660
in the post-TGR period
661 662
33
Table 1 Linear correlation coefficients*
663
Correlation coefficient Pearson
Air-water temperature pre-TGR 0.93 (High)
post-TGR 0.73 (Middle)
Discharge-water temperature pre-TGR 0.81 (High)
post-TGR 0.72 (Middle)
664
*Note: Three levels for traditional correlations: High (> 0.8); Middle (0.6-0.8); Low
665
(< 0.6) (Liu et al., 2017).
666 667
34
668
Table 2 Parameters for the linear water temperature regression models* l for lag (days)
669
β0
RMSE (℃)
β2 (10-5)
β1
Month
preTGR
postTGR
preTGR
postTGR
preTGR
postTGR
difference
preTGR
postTGR
difference
preTGR
postTGR
difference
Jan.
18
24
0.71
1.09
6.44
7.46
1.02
0.16
0.17
0.01
62.84
89.20
26.36
Feb.
3
8
0.82
0.79
7.61
8.95
1.34
0.18
0.08
-0.10
34.13
40.92
6.79
Mar.
14
2
1.10
0.71
9.78
13.41
3.63
0.23
0.08
-0.15
19.48
-45.52
-65.00
Apr.
4
2
1.21
1.33
11.41
8.72
-2.69
0.28
0.28
0.00
15.50
12.11
-3.39
May.
8
30
1.05
1.67
16.30
13.27
-3.03
0.23
0.25
0.02
1.84
15.55
13.71
Jun.
8
12
0.81
0.94
19.75
18.8
-0.95
0.18
0.17
-0.01
-2.17
0.77
2.94
Jul.
7
13
0.80
0.87
21.11
19.99
-1.12
0.21
0.2
-0.01
-6.64
-2.57
4.07
Aug.
7
18
0.82
0.77
22.17
24.55
2.38
0.20
0.12
-0.08
-7.69
-9.69
-2.00
Sep.
9
18
0.95
1.05
18.19
21.02
2.83
0.27
0.19
-0.08
-6.87
-7.31
-0.44
Oct.
9
2
0.99
0.81
15.45
19.13
3.68
0.23
0.18
-0.05
-0.34
-3.91
-3.57
Nov.
2
30
0.82
1.05
12.95
14.66
1.71
0.18
0.22
0.04
15.57
5.19
-10.38
Dec.
9
11
0.92
1.07
7.76
12.82
5.06
0.20
0.18
-0.02
55.42
33.39
-22.03
*Note:β0, β1 and β2 are regression coefficients.
35
670
Table 3 The contributions to water temperature at Yichang station in the post-TGR
671
period compared to the pre-TGR period* Period Mar.-May (Spring) Jun.-Aug. (Summer) Sep.-Nov. (Autumn) Dec.-Feb. (Winter) Annual
ΔTOT (℃)
Δβ0 (℃)
ΔNC (℃)
ΔTGR (℃)
-1.75
-0.70
0.24
-1.29
-0.15
0.10
0.32
-0.57
1.86
2.74
0.06
-0.95
2.72
2.47
0.03
0.22
0.67
1.16
0.16
-0.65
672
*Note:
673
ΔTOT: the total change in water temperature before and after the TGR operation
674
Δβ0: the contribution related to other factors, such as land use changes, industrial
675
facilities and sewage discharges.
676
ΔNC: the contribution related to changes in the natural factors (air temperature and
677
discharge).
678
ΔTGR: the contribution ascribed to the TGR impacts.
679 680 681
36
682
Table 4 Refinement of contributions related to natural factors and TGR in the post-TGR period compared to the pre-TGR period ΔNC (℃) Period Mar.-May (Spring) Jun.-Aug. (Summer) Sep.-Nov. (Autumn) Dec.-Feb. (Winter) Annual
ΔTGR (℃)
ΔTa(℃)
ΔQna(℃)
0.25 0.13
Changed air-water temperature interaction(℃)
Changed pattern of discharge(℃)
Total(℃)
Δβ1(℃)
ΔTa,lag effect(℃)
Total(℃)
Δβ2(℃)
ΔQTGR (℃)
-0.01
-0.63
-0.42
-0.21
-0.67
-0.68
0.01
0.19
-0.94
-0.82
-0.12
0.37
0.37
0.00
0.07
0.00
-0.48
-0.83
0.35
-0.46
-0.53
0.07
-0.01
0.03
-0.26
-0.27
0.02
0.47
0.13
0.34
0.11
0.05
-0.77
-0.59
-0.18
0.12
0.01
0.11
683 684 685 686
37
687
Table 5 The contributions related to TGR during different operation stages of TGR Period Mar.-May (Spring) Jun.-Aug. (Summer) Sep.-Nov. (Autumn) Dec.-Feb. (Winter)
Initial stage (℃)
Transitional stage (℃)
Standard normal stage (℃)
-1.30
-1.39
-1.30
-0.53
-0.52
-0.62
-1.11
-0.88
-0.87
-0.24
-0.24
0.56
688 689 690
38
691
692 693
Figure 1 Location of hydrological stations and the Three Gorges Reservoir in the
694
Yangtze River
695 696 697
39
698 699
Figure 2 Flowchart of the regression-modeling framework
700 701
40
Discharge Air temperature Water temperature
20
38000
18
28000 23000
16
18000
Discharge (m3/s)
Temperature (℃)
33000
13000 14
8000 1955
702
1965
1975
1985 Year
1995
2005
2015
703
Figure 3 Variations of annual air temperature, discharge and water temperature at
704
Yichang station*
705
Note*: dashed lines refer to the 7-years moving average of annual variations.
706 707 708 709
41
1983-2002 2003-2015 Difference
30.00
Air temperature (℃)
25.00 20.00 15.00 10.00 5.00 0.00 1
-5.00
710
2
3
4
5
6
7
8
9
10
11
12
11
12
Month
(a) Air temperature
711
Water temperature (℃)
25.00
1983-2002 2003-2015 Difference
20.00 15.00 10.00 5.00 0.00 1
712
2
3
4
5
6
-5.00
7
8
9
10
Month
(b) Water temperature
713 50000
1956-2002 2003-2014
40000
Discharge (m3/s)
Difference 30000 20000 10000 0 1
2
3
4
5
-10000
716
7
8
9
10
11
12
Month
714 715
6
(c) Discharge Figure 4 Monthly changes at Yichang station before and after building the TGR 42
28
WTobs ( Post-TGR)
WTsim ( Post-TGR)
WTobs ( Pre-TGR)
WTsim ( Pre-TGR)
Water temperatrue (℃)
24
20
16
12
8 Jan
Feb
Mar
Apr
May
Jun
Jul
Aug
Sep
Oct
Nov
Dec
Time
717 718
Figure 5 Comparison between observed and simulated water temperature at Yichang
719
station in the pre-TGR and post-TGR periods
720
43
Simulated
Observed
60000
50000
Discharge (m3/s)
40000
30000
20000
10000
0 2003/1/1
2005/1/1
2007/1/1
721
2009/1/1 Time
2011/1/1
2013/1/1
722
Figure 6 Comparison between observed and simulated discharge at Yichang station
723
in the post-TGR period
724 725 726 727 728 729
Yuwei Tao: Methodology, Formal analysis, Writing - Original Draft, Writing -
730
Review & Editing
731
Yuankun Wang: Conceptualization, Writing - Review & Editing, Supervision
732
Bruce Rhoads: Validation, Formal analysis, Writing - Review & Editing
733
Dong Wang: Writing - Review & Editing, Project administration
734
Lingling Ni: Data Curation, Investigation
735
Jichun Wu: Project administration
736 737
Highlights 44
738 739 740 741 742
A framework for quantifying reservoir effects on water temperature in river is developed Impact of the Three Gorges Reservoir on water temperature in the Yangtze River is isolated
743
TGR operation led to the warming effects in winter and cooling effects in spring
744
Influence of TGR on water temperature exceeds the influence of natural factors
745 746 747 748
Declaration of interests
749 750 751
☒ The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.
752 753 754
☐The authors declare the following financial interests/personal relationships which may be considered as potential competing interests:
755 756 757 758 759
45