Subscriber access provided by UNIV OF NEWCASTLE
Environmental Processes
Assessment of Indirect N2O Emission Factors from Agricultural River Networks Based on Long-term Study at High Temporal Resolution XIAOBO QIN, Yong Li, Stefanie Goldberg, Yunfan Wan, Meirong Fan, Yulin Liao, Bing Wang, Qingzhu Gao, and Yu'e Li Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.9b03896 • Publication Date (Web): 23 Aug 2019 Downloaded from pubs.acs.org on August 25, 2019
Just Accepted “Just Accepted” manuscripts have been peer-reviewed and accepted for publication. They are posted online prior to technical editing, formatting for publication and author proofing. The American Chemical Society provides “Just Accepted” as a service to the research community to expedite the dissemination of scientific material as soon as possible after acceptance. “Just Accepted” manuscripts appear in full in PDF format accompanied by an HTML abstract. “Just Accepted” manuscripts have been fully peer reviewed, but should not be considered the official version of record. They are citable by the Digital Object Identifier (DOI®). “Just Accepted” is an optional service offered to authors. Therefore, the “Just Accepted” Web site may not include all articles that will be published in the journal. After a manuscript is technically edited and formatted, it will be removed from the “Just Accepted” Web site and published as an ASAP article. Note that technical editing may introduce minor changes to the manuscript text and/or graphics which could affect content, and all legal disclaimers and ethical guidelines that apply to the journal pertain. ACS cannot be held responsible for errors or consequences arising from the use of information contained in these “Just Accepted” manuscripts.
is published by the American Chemical Society. 1155 Sixteenth Street N.W., Washington, DC 20036 Published by American Chemical Society. Copyright © American Chemical Society. However, no copyright claim is made to original U.S. Government works, or works produced by employees of any Commonwealth realm Crown government in the course of their duties.
Page 1 of 36
Environmental Science & Technology
1
Assessment of Indirect N2O Emission Factors from Agricultural River Networks
2
Based on Long-term Study at High Temporal Resolution
3
Xiaobo Qin* , Yong Li , Stefanie Goldberg§, Yunfan Wan , Meirong Fan , Yulin Liao
4
, Bing Wang , Qingzhu Gao , Yu’e Li
‡
||
Institute of Environment and Sustainable Development in Agriculture, Chinese
5 6
Academy of Agricultural Sciences / Key Laboratory for Agro-Environment, Ministry
7
of Agriculture and Rural Affairs. No.12 Zhongguancun South Street, Haidian district,
8
Beijing 100081, China
9
‡
Key Laboratory of Agro-ecological Processes in Subtropical Region, Institute of
10
Subtropical Agriculture, Chinese Academy of Sciences, Changsha 410125, China
11
§
12
China
13
||
Kunming Institute of Botany, Chinese Academy of Sciences, Kunming 6502021,
Changsha Environmental Protection College, Changsha 410004, China Soils and Fertilizer Institute of Hunan Province, Changsha 410125, China
14 15
*
16
Abstract
17
Assessment of indirect emission factors (EF5r) of nitrous oxide (N2O) from agricultural
18
river networks remains challenging and results are uncertain due to limited data
19
availability. This study compared two methods of assessing EF5r using data from long-
20
term observations at high temporal resolution in a typical agricultural catchment in
21
subtropical central China. The concentration method (Method 1) and the
Corresponding author:
[email protected] ACS Paragon Plus Environment
Environmental Science & Technology
22
Intergovernmental Panel on Climate Change (IPCC) 2006 method (Method 2) were
23
employed to evaluate the emission factor. EF5r estimated using Method 1 (i.e., EF5r1)
24
was 0.000 77 ± 0.000 25 (0.000 38–0.000 97). EF5r calculated using Method 2 (i.e.,
25
EF5r2) was lower than EF5r1, with a mean value of 0.000 04 (0.000 015–0.000 12). Both
26
EF5r1 and EF5r2 were significantly lower than the IPCC 2006 default value of 0.0025,
27
suggesting that N2O emissions from China and world river networks may be grossly
28
overestimated. A complex N2O production pathway and diffusion mechanism was
29
responsible for transfer of N2O from sediment to river water and then to the atmosphere.
30
These findings provide essential data for refining national greenhouse gas inventories
31
and contribute evidence for downward revision of indirect emission factors adopted by
32
the IPCC.
33
Keywords: Indirect emission factors; nitrous oxide; agricultural river networks;
34
EF5r; high temporal resolution
35 36
ACS Paragon Plus Environment
Page 2 of 36
Page 3 of 36
Environmental Science & Technology
37
INTRODUCTION
38
Nitrous oxide (N2O) is a powerful (and the third most important) greenhouse gas. The
39
current atmospheric concentration of N2O is 329 ppb1 and this is increasing annually
40
by 0.75 ppb.2 The current N2O concentration is 22% higher than the 270 ppb in the
41
era of industrial revolution.3 N2O not only has a greater global warming potential than
42
other greenhouse gases, but also acts as the dominant destroyer of stratospheric
43
ozone.4 Global N2O emission is currently 17.9 (8.1–30.7) Tg N a-1, which is divided
44
between natural (61.5%, 11.0 (5.4–19.6) Tg N a-1) and anthropogenic sources (38.5%,
45
6.9 (2.7–11.1) Tg N a-1) with regards to nitrogen (N) cycling and human
46
disturbance,5,6 in which cropland-N2O emissions contributed 1.5–5.0 Tg N a-1.7
47
The largest anthropogenic source of N2O is the biological conversion of
48
agricultural fertilizer N (4.1 (1.7–4.8) Tg N a-1), of which direct emissions from soil
49
(46.3%, 1.8–2.1 Tg N a-1) and animal manure (53.7%, 2.1–2.3 Tg N a-1) contribute the
50
most.5–10 However, indirect emissions derived from atmospheric deposition (0.3–0.4
51
Tg N a-1), sewage (0.2–0.3 Tg N a-1) and N leaching and runoff (0.6–1.9 Tg N a-1)11
52
cannot be ignored in efforts to refine the national-scale greenhouse gas inventory by
53
the Intergovernmental Panel on Climate Change (IPCC). Unfortunately, as an
54
important part of indirect N2O emission, little is known about the N2O emissions from
55
streams and rivers of agricultural catchments, and this knowledge gap has caused
56
great uncertainty in the global N2O assessment effort.12–19
57 58
Previous studies have reported major pathways responsible for N2O production, which include nitrification, denitrification, coupled nitrification-denitrification,
ACS Paragon Plus Environment
Environmental Science & Technology
59
nitrifier denitrification and dissimilatory nitrate (NO3--N) reduction to ammonium
60
(NH4+-N) (i.e., DNRA, which is performed by fermentative bacteria).20–22 N2O is the
61
byproduct of aerobic nitrification, in which the predominant autotrophic nitrifiers
62
oxidize the NH4+-N to NO3--N.23–25 Secondly, under low oxygen conditions, N2O is
63
the intermediate product of denitrification through reduction dominated by denitrifiers
64
of NO3--N to gaseous nitrogen (N2).23,24,26 Furthermore, N2O can be augmented by
65
coupled nitrification-denitrification at the aerobic-anaerobic sediment interface, in
66
which denitrifiers utilize NO2--N or NO3--N produced by nitrifiers to generate N2O.
67
Especially in freshwater, NH4+-N transfers upward in the water column and can be
68
nitrified to NO3--N, which can couple with previously existing NO3--N to create a “hot
69
spot” of N2O production.15 Additionally, in an oxygen-deficient environment,
70
anaerobic mineralized NH4+-N can be oxidized to NO2- by autotrophic nitrifiers and
71
continuously converted to N2O, N2 and nitric oxide via the nitrifier denitrification
72
process27, as pointed out by Wrage et al.28
73
The process of DNRA has also been reported in fresh water conditions.29 Kleso
74
et al.30 argued that DNRA is favored when NO3--N is limiting, while denitrification is
75
favored when the supply of carbon is limited. Indeed, previous studies have
76
demonstrated different effect of dissolved organic carbon (DOC),31 temperature32 and
77
dissolved oxygen (DO)33 on N2O production, which is the reflection of their impact
78
on these pathways. For example, nitrifier denitrification is favored under high N and
79
low organic carbon (OC) concentrations in association with low oxygen. Nitrification
80
has been shown to occur in the water column of streams that have high suspended
ACS Paragon Plus Environment
Page 4 of 36
Page 5 of 36
Environmental Science & Technology
81
solids concentration or experience diffusion from oxic sediment layers.34,35 Moreover,
82
coupled nitrification-denitrification at the aerobic-anaerobic sediment interface also
83
can augment N2O production.
84
The indirect N2O emission factor from river networks (EF5r), is one of three
85
factors defined by IPCC (2006)36,37 that must be considered when assessing
86
waterborne contributions of N2O from waterbodies to the atmosphere. IPCC defined
87
indirect N2O emission factor for N leaching and runoff from arable soils as the ratio
88
of N2O-N emitted from leached N and N in runoff divided by the fraction of total N
89
input that is lost by leaching and runoff.38 However, to assess EF5r using this method,
90
a detailed mass balance is required; mass balance data are difficult to obtain and are
91
often missing from many studies.11,33
92
Alternatively, EF5r is commonly calculated using the ratio of dissolved N2O-N
93
and NO3--N concentrations in the waterbody11 (concentration method). Actually, the
94
concept of EF5r is based on assumptions considering the proportion of N that is
95
nitrified and/or denitrified in the aquatic environment and the N2O that is
96
subsequently produced. Originally, EF5r values were generated in 1998 and a value of
97
0.00758 was adopted by the IPCC based on limited available data. Afterwards, the
98
value of EF5r was revised downward in 2006 to the currently used value of 0.0025.38
99
Despite the revision, this default “Tier 1” emission factor is still poorly constrained
100
both by a paucity of field monitoring data and great uncertainty about water-air N2O
101
exchange relationships, as well as by large variability in environmental conditions.16
102
The derivation of EF5r by IPCC has, at least partially, ignored the effect of various
ACS Paragon Plus Environment
Environmental Science & Technology
103
potentially decisive conditions of local climate, land use and soil properties.39
104
Significant spatiotemporal11,15,38 variation of EF5r has been observed, which may be
105
due to seasonal temperature changes, variable dissolved oxygen and hydrogeological
106
factors.11,32
107
Therefore, use of a uniform value for EF5r significantly limits the development of
108
national N2O emission inventories. Surveys such as that conducted by Beaulieu et
109
al.13 point out that ‘the IPCC approach of using one emission factor for all streams
110
may be inappropriate because emission factors are highly variable across streams.’
111
Moreover, Hiscock et al.40 also indicated that the IPCC methodology may
112
overestimate the large role of anthropogenic sources. For example, Harrison and
113
Matson41 concluded that the IPCC default method overestimated N2O emission from
114
drainage canals by 2 to19 times. Significantly, available evidence indicates that the
115
magnitude of EF5r should be further revised downward by the IPCC.17,42 Moreover, up
116
to now, little attention has been devoted to assessing EF5r in small-scale river
117
networks using different methodologies; these networks receive large N loads due to
118
intensive farming activities.
119
Clearly, the revision of EF5r magnitude requires credible, intensive long-term
120
observations. Unfortunately, previous published studies are of limited usefulness for
121
evaluating EF5r because most were based on relatively short-term investigations.
122
Furthermore, there remains a lack of sufficient data with high temporal resolution and
123
few studies have compared various assessment methodologies. Therefore, much
124
uncertainty still exists about how to accurately determine the N2O contributions of
ACS Paragon Plus Environment
Page 6 of 36
Page 7 of 36
Environmental Science & Technology
125
rivers, both when refining national greenhouse gas inventories and quantifying the
126
global N2O budget. Hence, the objectives of this study were to assess the values of
127
EF5r generated using two methods (the IPCC 2006 method and the concentration
128
method), and to ascertain the environmental factors and the potential mechanism by
129
which N2O is produced and emitted from river networks in a typical agricultural
130
catchment. The study was based on the following hypotheses: 1) EF5r assessed using
131
two different methods could have different values, 2) significant spatiotemporal
132
variation exists in both dissolved N2O concentration and EF5r, and 3) N2O production
133
and transfer may be controlled by various ecological processes in river networks in
134
typical agricultural catchments.
135
MATERIALS AND METHODS
136 137
Experimental Site. The study was conducted in the Tuojia River network within the
138
Jinjing catchment of the Xiangjiang River watershed in Changsha, Hunan Province,
139
China (Figure 1). The catchment is located approximately 70 km northeast of
140
Changsha City and had a population of 45,000 in 2014. 43 The study area is a typical
141
hilly, agricultural catchment in subtropical central China, and has forest, paddy fields
142
and tea fields as the three primary land use types, accounting for 33%, 61.1% and
143
4.5% of the total catchment area, respectively. The other minor land uses in the
144
catchment include reservoir/ponds, residential areas, rivers and roads, collectively
145
accounting for 1.4% of the total catchment area.43 The climate in the catchment is
ACS Paragon Plus Environment
Environmental Science & Technology
146
subtropical monsoon and humid, with an average annual rainfall of 1300 mm, an
147
annual mean air temperature of 17.2 °C and a prevailing wind direction from the north
148
and northwest throughout the year. More detailed soil type and geology information
149
can be found in Supporting Information (SI Tables S1 and S2).
150 151
Figure 1. Geographical location of Tuojia River catchment in China and sampling points
152 153
Sample Collection and Analysis. Over a four-year period (March 2013 to December
154
2016), a total of 929 water samples were taken from the Tuojia River and analyzed for
155
dissolved N2O concentration and other parameters. Four order reaches44 (W1, W2,
156
W3 and W4) were identified from the origin to outlet of Tuojia River and twelve
157
locations (Figure 1) were selected for sampling along the four reaches, with every
158
three locations representing the upstream, midstream and downstream section in each
159
reach, respectively. Thus, the four reaches (with sampling points) were W1 (1/2/3),
160
W2 (4/5/6), W3 (7/8/9) and W4 (10/11/12) (numbers are as those displayed in figure
161
1), respectively. Samples were collected at weekly intervals. The high frequency of
ACS Paragon Plus Environment
Page 8 of 36
Page 9 of 36
Environmental Science & Technology
162
sampling enabled temporal variability in dissolved N2O concentration and EF5r to be
163
assessed more precisely.
164
Samples for analysis of dissolved N2O concentration were collected from the
165
river (at a depth of 0–20 cm) using 60 mL plastic syringes fitted with a three-way
166
stopcock. Syringes were flushed three times with water from the sampling point and
167
any air bubbles contained in the syringe were carefully expelled before a sample was
168
collected. Triplicate samples were taken at each location and no preservative was
169
added.
170
Samples remained in the syringes and were kept in cold storage at 4 °C for no
171
more than 3 h before further treatment. The headspace equilibrium method45 was used
172
to extract N2O and measure dissolved N2O concentration. A 30-mL volume of water
173
sample in each syringe was accurately displaced by 30 mL ultrahigh purity (>
174
99.999%) helium gas in the laboratory. The retrieved sample was subsequently
175
shaken for 10 minutes and then allowed to stand and equilibrate for 5 minutes.
176
N2O in the headspace was then manually and gently injected into a pre-evacuated
177
vial (12 mL, Labco, UK) and analyzed within 72 h of collection using a gas
178
chromatograph with a micro electron capture detector (μECD). The analytical
179
procedure used 99.999% N2 and 10% CO2 + 90% N2 as the carrier gas and backup
180
gas, respectively. Accuracy of N2O measurements was within ±3% with a detection
181
limit of ~0.0008 μg N L-1. Exchange fluxes of N2O from the river to the atmosphere
182
were estimated using the double-layer diffusion model method as previously reported
183
by Liss et al.46 The original concentration of N2O before equilibrium was calculated
ACS Paragon Plus Environment
Environmental Science & Technology
184
using the headspace balancing method45 and then the N2O flux was calculated based
185
on an estimate of the gas exchange rate (Kw) using wind speed (U10) with the Schmidt
186
coefficient (Sc).47 The detailed calculation processes48–51 for determining the dissolved
187
N2O concentration and its exchange flux are provided in the Supporting Information
188
(SI Tables S3 and S4).
189
Water and sediment samples for NO3--N, NH4+-N and dissolved organic carbon
190
(DOC) analyses were collected in 250 ml plastic bottles and plastic bags with
191
aluminum foil, respectively, at the same time samples for N2O analysis were
192
collected, and were analyzed within 72 h. The sediment samples were collected by
193
standard manual sampling drill set (Eijkelkamp Soil & Water, Netherland). All these
194
variables are sampled with 3 repetitions.
195
Concentrations of NO3--N and NH4+-N were determined using a flow injection
196
automatic analyzer (AA3, Seal, Germany), which had a coefficient of variation of
197
0.2% and a detection limit of 0.003 mg N L-1. DOC content was determined using a
198
total organic carbon analyzer (TOC-Vwp, Shimadzu, Japan), which had a detection
199
range of 0–3000 mg L-1 and a detection limit of 2 μg L-1. Concentration of dissolved
200
oxygen, temperature and conductivity of river water at the time of sampling was
201
measured using a portable multiple meter (AP700, Aquaread Co. LTD., UK).
202
Wind speed, temperature, precipitation and other meteorological data required
203
for calculating diffusive N2O flux were obtained from a weather station installed in
204
the catchment with a record frequency of 3-hour. River discharge was monitored daily
205
using flow meters at three locations along Tuojia River (Fuling in W1, Feiyue in W3
ACS Paragon Plus Environment
Page 10 of 36
Page 11 of 36
Environmental Science & Technology
206
and Tuojia in W4). Additional detailed information can be found in the Supporting
207
Information (SI Figure S1).
208 209
Calculation of EF5r. The EF5r is an index of N2O transfer from river networks to the
210
atmosphere as a fraction of the N loading to the rivers, is one of three factors defined
211
by IPCC (2006)36. According to the provenance of N, the other two factors reflect
212
N2O transfers from groundwater or surface drainage (EF5g) and from estuaries
213
(EF5e).37 In this study, two methods were used to calculate the EF5r (Table 1). The
214
first method was the concentration method38 (hereafter, Method 1), in which the value
215
of EF5r1 is calculated using the dissolved N2O concentration (kg N2O-N L-1) divided
216
by the NO3--N concentration (kg NO3--N L-1) in the water column. The second
217
method (IPCC 2006 method)37 (hereafter, Method 2) estimated the value of EF5r2
218
using the N2O emitted from river waterbodies of the whole catchment to the
219
atmosphere (kg N2O-N a-1) divided by the total N (kg N a-1) input to the catchment
220
adjusted by the N leaching coefficient (kg N kg-1 of N addition a-1).
221
IPCC defined indirect N2O emission factor (kg N kg-1 of N additions a-1) for N
222
leaching and runoff from arable soils as the ratio of N2O-N emitted from leached N
223
and N in runoff (kg N2O-N a-1) divided by the fraction of total N input that is lost by
224
leaching and runoff (Ninput × FracNLEACH, kg N a-1, where FracNLEACH is the
225
fraction of all N added to, or mineralized within, managed soils that is lost through
226
leaching and runoff).38 In fact, in regions where the water-holding capacity of the soil
227
is exceeded,38,52 30% (ranging from 10% to as much as 80%) of agricultural N is
ACS Paragon Plus Environment
Environmental Science & Technology
228
leached due to precipitation or irrigation.36 By this definition, FracNLEACH is
229
determined from the total loading of dissolved organic and inorganic N in river water,
230
divided by the total N input (fertilizer plus livestock manure). However, in this study
231
we used the default value of 0.3 (0.1–0.8) for FracNLEACH.15 Furthermore, Method
232
2 also requires social economic data, which include the land use information, total
233
fertilizer consumption and livestock production information, etc. social statistical
234
information for Jinjing and the Tuojia catchment (such as livestock production) were
235
obtained from the 2016 Statistic Yearbook of Changsha City.53 The total N input to
236
the catchment from animals was then calculated using the emission factors provided
237
by the Provincial Greenhouse Gas Inventory Guide54 of China. The data for use in a
238
geographic information system to describe the Jinjing catchment and river networks
239
were acquired from the National Geomatics Center of China
240
(http://ngcc.sbsm.gov.cn/). More information about the data used can be found in the
241
Supporting Information (SI Tables S5 and S6).
242
Table 1. Calculation of the indirect emission factor of N2O Name
Method
References
Method 1
N O−N EF5r = 2 NO3 − N
Hama-Aziz et al., 201731
Method 2
EF5r =
N 2O − N N input × FracLEACH
IPCC, 200629
243 244
Data Processing and Statistical Analysis. Spatiotemporal variation of results over
245
the 4-year period were analyzed using SAS PROC MIXED55 (V9.3), using the
246
restricted maximum likelihood option and repeated measures with the autoregressive
247
covariance structure.56 Degrees of freedom were calculated using the Satterthwaite
ACS Paragon Plus Environment
Page 12 of 36
Page 13 of 36
Environmental Science & Technology
248
method.57 Means were separated using Fisher’s protected least significant difference
249
test at the 0.05 significance level,58 and the Tukey-Kramer method was used for p-
250
value adjustment at the significant level of 0.05. The R statistical software59 was used
251
for plotting data (“ggplot2”) and performing correlation analysis (“correplot”).
252
Decision regression tree analysis and factor importance analysis also was conducted
253
using the R software (specifically, “randomForest”, “rpart” and “rpart.plot”).
254
RESULTS AND DISCUSSION
255 256
Assessment of EF5r. Basic information of nutrient content, physicochemical
257
characteristics of water and sediment in Tuojia River are shown in table 2. During the 4-year monitoring period, EF5r1 derived using Method 1 in the four
258 259
reaches of the Tuojia River network varied between 0.0006 and 0.0017, with an
260
overall mean of 0.0012 (for all four reaches). Of all the calculated EF5r1 values using
261
Method 1, more than 90.77% were lower than the IPCC 2006 default value of
262
0.0025;37 furthermore, more than 27% of samples were one order of magnitude lower
263
than the default value. We also modified the EF5r1 estimates using the discharge data
264
of Tuojia River (SI Figure S1). The observed dissolved N2O concentrations were 0.35
265
μg N L-1 (W1), 2.31 μg N L-1 (W2), 1.91 μg N L-1 (W3) and 1.93 μg N L-1 (W4), and
266
the 4-year mean discharges of the Tuojia River at W1, W3 and W4 were 27 678 m3 a-
267
1
268
output from the Tuojia River network (mean of the four reaches) was 17.51 ± 0.78 kg
, 2 497 395 m3 a-1 and 24 703 340 m3 a-1, respectively. As a result, the annual N2O-N
ACS Paragon Plus Environment
Environmental Science & Technology
269
N2O-N a-1. Thus, considering the dissolved NO3--N concentration in the different
270
reaches, we assessed that the mean NO3--N loading into the whole catchment was 18
271
021.13 ± 4083.29 kg N a-1. Consequently, the EF5r1 estimated using Method 1 was
272
modified to 0.000 77 ± 0.000 25 (0.000 38–0.000 97).
273
Detailed calculation method of N2O exchange fluxes, nutrient input and spatial
274
information as well as social statistical data that were required to calculate the EF5r2
275
are listed in Tables S5 and S6. Accordingly, the total N input for the Tuojia catchment
276
was calculated for the year 2015 using available data from the statistical yearbooks of
277
China60 and Changsha City53. The total amount of N fertilizer applied across the
278
whole catchment (including paddy rice fields and tea fields) was 1 433 700 kg N a-1,
279
and the N from animal excreta was 26 640.25 kg N a-1, resulting in a total of 1 460
280
340.25 kg N a-1 of N input for the whole Jinjing catchment. Given a FracNLEACH of
281
0.3, the value of “N × FracNLEACH” was 438 102.08 kg N a-1. As a result, the mean
282
EF5r2 value calculated for the Tuojia River network using Method 2 was 0.000 04
283
(0.000 015–0.000 12).
284 285 286
ACS Paragon Plus Environment
Page 14 of 36
Page 15 of 36
287
Environmental Science & Technology
Table 2. Basic information of nutrient content, physicochemical properties of water and sediment in Tuojia River Variables Water
Unit
Mean ± SD (range)
W1, W2, W3 and W4
1527
1.66 ± 0.29 (0.012–9.59)
0.92, 1.74, 1.98, 1.99
NH4 -N
1.03 ± 0.28 (0.003–8.32)
0.32, 1.35, 1.22, 1.22
DOC
3.63 ± 0.57 (0.33–25.87)
1.67, 3.74, 4.23, 4.88
2.14 ± 0.43 (0.20–121.00)
1.82, 2.15, 2.13, 2.45
20.01 ± 6.91 (-8.33–33.77)
19.15, 20.20, 20.65, 20.04
7.44 ± 2.04 (1.11–15.8)
8.55, 7.38, 6.90, 6.92
134.93 ± 54.46 (9.55–522.04)
77.29, 146.09, 150.59, 165.76
6.39 ± 2.26 (0.03–51.54)
9.31, 6.33, 3.42, 6.50
NH4 -N
8.61 ± 0.93 (0.14–143.69)
9.51, 8.74, 7.28, 8.91
DOC
63.32 ± 14.79 (18.87–350.14)
81.31, 69.62, 52.07, 50.31
10.66 ± 8.52 (0.68–277.07)
8.73, 10.99, 15.19, 7.74
NO3 -N
DOC/NO3
-1
mg L
--
Water temperature Dissolved oxygen content Conductivity Sediment
n
+
-
-
NO3 -N
1560 mg L-1 -1
uS cm
-1
mg kg
398
+
DOC/NO3 Discharge
W1
-3
-1
m d
1461
76.09 (0.43–2494.8)
W3
7259.87 (1.92–60929.34)
W4
67634 (2085–2981264)
288 289 290 291 292
ACS Paragon Plus Environment
Environmental Science & Technology
293
Both of the EF5r values estimated using the two methods were substantially less
294
than the current IPCC default EF5r value of 0.0025. This difference indicates that the
295
previous downward revision of the IPCC 2006 default value (from previous value of
296
0.0075 to 0.0025) may still significantly overestimate indirect N2O emissions in
297
agricultural catchments similar to the one examined in this study. The current IPCC
298
default value is three times higher than the EF5r1 (0.000 77) and an astonishingly 60
299
times greater than the EF5r2 (0.000 04) calculated in this study. Actually, most
300
previous studies have estimated EF5r using Method 1 because the detailed mass
301
balance required in Method 2 is cumbersome to develop. For example, Outram and
302
Hiscock39 compared the EF5r values estimated using Methods 1 and 2 and found large
303
differences between the concentration method (0.0011) and the IPCC 2006 method
304
(0.009). Similarly, Hama-Aziz et al.38 showed a four-fold difference in the EF5r values
305
produced using Methods 1 and 2. Therefore, to achieve a more credible assessment
306
and avoid the miscalculations that arise from different approaches, the IPCC may
307
need to propose a single comprehensive and consistent approach20 via a refinement
308
process.
309
Using the mean of the two EF5r values arising from Methods 1 and 2 (i.e., 0.000
310
41 (0.0002–0.000 55)), we estimated the N2O emissions from China and world river
311
networks. These estimates were based on the research of Beaulieu et al.,264 data from
312
the China Statistical Yearbook 201660 (giving data for the total N fertilizer application
313
in China), and on research by Liang et al.61 (giving the total N from animal excreta in
314
China). Consequently, we estimated that the indirect N2O emissions from river
ACS Paragon Plus Environment
Page 16 of 36
Page 17 of 36
Environmental Science & Technology
315
networks of world amounted to 0.07 Tg N a-1 and those from China amounted to
316
0.0041 Tg N a-1 (Table 3), both of which are much lower than the estimates made by
317
Beaulieu et al.26 Our result is just with in the range of indirect N2O emission from N
318
leaching / runoff in China (24 Gg N2O a-1, i.e. 0.015 Tg N a-1) by Zhou et al.62 As a
319
matter of fact, cropland N2O emissions in China is weakening in growth due to
320
nationwide policy interventions.63 Even so, fertilizer-induced N2O emission from
321
China is still 323.8 ± 60.3 Gg N2O-N a-1,64 hence, mitigation technologies should be
322
enhanced to reduce both direct and indirect N loss simultaneously.
323
Table 3. Estimated indirect emission of N2O from river systems of world and China Methodology 24
Beaulieu 2011 IPCC 200629 This study
EF5r (%)
Indirect N2O emissions (River) (Tg N a-1)
0.75 0.25 0.04
World 0.68 0.23 0.07
China 0.08 (0.026–0.202) 0.03 (0.008–0.0067) 0.0041 (0.002–0.019)
324 325
Comparison with Other Studies. A considerable amount of research has been
326
published about EF5r. These studies have used either a single method or at most two
327
methods to evaluate indirect N2O emissions from different river networks around the
328
world. The present study was designed to compare EF5r estimates produced using two
329
widely used methods against the current IPCC EF5r default value. The EF5r values
330
arising from the modified concentration method (Method 1) were similar to those
331
found by Xia et al.,65 but were lower than those of Hinshaw et al.15 and Beaulieu et
332
al.,13 and higher than the findings of Hama-Aziz et al.38 and Clough et al.9,66 The EF5r
333
values arising from the IPCC 2006 method (Method 2) were much lower than the
334
estimates by Hama-Aziz et al.38, Outram and Hiscock39 and Turne et al.16
ACS Paragon Plus Environment
Environmental Science & Technology
Page 18 of 36
335
In addition to the current study, a number of previous investigations also
336
estimated EF5r values that were lower than the IPCC (2006) default value (Table 4).
337
Among these, the lowest EF5r (0.000 006) was reported by Clough et al.9 for a spring-
338
fed river in New Zealand. EF5r values of 0.0001, 0.0003 and 0.000 36 were estimated
339
by Hama-Aziz et al.38 and Clough et al.66 for agricultural drains and headwater
340
streams in the United Kingdom (UK) and a spring-fed river in New Zealand. In
341
contrast to these findings, only a few studies have determined EF5r values that were
342
higher than the IPCC default value. Some researchers16 have suggested based on tall-
343
tower measurements that an appropriate EF5r value should be approximately 0.02 for
344
streams of southeastern Minnesota, USA. A comparatively higher EF5r value of 0.009
345
was estimated by Outram and Hiscock39 for surface waterbodies in a lowland arable
346
catchment in the UK.
347
Table 4. EF5r (%) from different studies Methodology
EF5r
IPCC default
0.25
IPCC 2006
0.9
MIN
MAX
Watershed type
References De Klein et al., 200637
Agricultural drain and headwater
Outram and Hiscock, 201239
streams 2
Agriculture
Turne et al., 201516
0.01
Agricultural drain and headwater
Hama-Aziz et al., 201738
streams 0.004 N2O-N/NO3-N
0.0015
0.012
0.11
Agriculture
This study
Agricultural drain and headwater
Outram and Hiscock, 201239
streams 0.036
0.015
0.067
0.0006 1.01
0.003
25
Spring-fed river
Clough et al., 200666
Spring-fed river
Clough et al., 20079
Agricultural drain and headwater
Beaulieu et al., 200813
streams 0.39
0.34
0.44
Agricultural streams
Baulch et al., 201252
0.14
0.12
0.16
Agricultural streams
Baulch et al., 201235
0.09
Sewage-enriched
Xia et al., 201365
0.078
Agriculture
Xia et al., 201365
ACS Paragon Plus Environment
Page 19 of 36
Environmental Science & Technology
0.03
Agricultural drain and headwater
Hama-Aziz et al., 201738
streams 0.28
0.12
0.69
Agriculture and waste
Hinshaw et al., 201315
0.077
0.038
0.097
Agriculture
This study
348 349
Spatiotemporal Variation of EF5r1. Spatiotemporal variations of EF5r1 values and of
350
dissolved N2O and NO3--N concentrations are shown in Figure 2 and Table S7,
351
respectively.
352
Temporally, sampling time (annual and seasonal) had significant impacts on
353
dissolved N2O and NO3--N concentrations as well as on EF5r1 estimates. From 2013 to
354
2016, the average dissolved N2O concentration ranged from 0.35 ± 0.05 μg N L-1 at
355
location W1 (minimum) to 2.31 ± 0.15 μg N L-1 at location W2 (maximum), and the
356
mean value for all locations in 2015 was significantly greater than the means in the
357
other 3 years (p < 0.05). As a comparison, the mean value of N2O concentrations in
358
2015 is 3.55 μg N L-1 while the other 3 years are 0.58 μg N L-1, 0.68 μg N L-1 and
359
0.68 μg N L-1, respectively. In addition, the N2O concentrations in summer were
360
significantly higher than those in the other three seasons (based on the mean value of
361
4 years) (p < 0.05). As with N2O concentrations, the diffusive flux of N2O was also
362
lowest (6.58 ± 2.92 μg m2 h-1) at location W1 and highest (49.54 ± 17.74 μg m2 h-1) at
363
location W2. The NO3--N concentration exhibited significant inter-annual variations
364
during 2013 to 2016 (p < 0.05), but the effect of sampling season on NO3--N was not
365
statistically significant (p > 0.05). Spatially, the NO3--N concentration varied from
366
0.92 ± 0.14 mg N L-1 (location W1) to 1.99 ± 0.45 mg N L-1 (location W4). The
367
remarkable effect of sample locations on dissolved N2O and NO3--N concentrations as
ACS Paragon Plus Environment
Environmental Science & Technology
Page 20 of 36
368
well as on EF5r values is illustrated in Table S7 and Figure 2. The mean dissolved
369
N2O concentration in reaches W1 to W4 during the 4 years was 0.35 ± 0.05 μg N2O-N
370
L-1, 2.31 ± 0.15 μg N2O-N L-1, 1.91 ± 0.12 μg N2O-N L-1 and 1.93 ± 0.08 μg N2O-N
371
L-1, respectively. The mean dissolved NO3--N concentration in reaches W1–W4 was
372
0.92 ± 0.14 mg N L-1, 1.74 ± 0.12 mg N L-1, 1.98 ± 0.47 mg N L-1 and 1.99 ± 0.45 mg
373
N L-1, respectively. Correspondingly, the mean EF5r1 values were 0.0006 ± 0.00006,
374
0.0017 ± 0.0006, 0.0013 ± 0.0006 and 0.0012 ± 0.0003 for reaches W1 to W4,
375
respectively. W2
Dissovled N2O concentration (μg N/L)
W1 2013 3
W4
●●
2015 ●
●
3
2016
●
● ●
● ●●
30
3
●
2 ●●
● ●● ●● ●
● ● ●● ●
● ● ● ● ● ●
●
● ● ● ● ● ● ● ● ● ● ● ● ● ● ●
●● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ●
● ● ● ●
●
● ● ● ● ●● ● ●
●
●
● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ●
1
● ●●
● ● ● ● ● ● ● ● ● ● ● ● ●
0
spring summer autumn winter
● ● ●● ●● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ●
● ●
● ● ●
● ● ● ● ● ● ● ●● ● ● ● ●
10
●● ●
●
●
● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ●
0
spring summer autumn winter
0.8 ●
●
● ●
● ● ● ● ● ● ●
● ● ●
1
● ● ● ● ●
● ● ● ● ● ● ● ● ● ● ● ● ● ● ●
● ● ● ● ● ● ● ● ● ● ●
●
●● ●
● ● ● ● ●● ● ● ● ● ●
●
● ●● ● ● ●
EF5r (%)
0.6
0.2
Nitrate concentration (mg N/L)
377 378
1
0.2
● ●● ● ●
376
● ●
● ● ● ● ● ●
spring summer autumn winter ●
●
0.15
●
●
●● ● ● ● ● ● ● ● ●
● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ●
●● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ●
● ● ● ●● ● ● ● ● ● ● ● ● ● ●
● ● ● ● ● ● ● ● ●
0.0
spring summer autumn winter
8
●
●
● ● ●● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ●
●● ● ●● ● ● ● ● ● ● ● ● ● ● ● ● ●
●
●
● ● ●
● ● ● ● ●●
●
●
● ● ● ● ● ●
●
4 ●● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ●
● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ●
● ● ● ●
●
2
● ● ● ●
● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ●
● ●● ● ● ● ● ● ● ● ● ● ● ● ● ● ●
spring summer autumn winter
●
●
● ● ● ●
● ● ● ● ● ● ●
0
1
● ● ● ● ● ● ● ● ● ● ● ● ● ●
●● ● ●● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ●
●
● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ●
● ● ●
●
● ● ● ● ● ● ● ● ● ● ● ● ●
●
● ● ● ● ● ● ● ● ● ● ●
●
● ● ● ● ● ● ● ● ● ● ●
●
● ● ● ●● ● ●
● ●
●
● ● ● ● ●
●
● ● ● ● ● ● ●
0.00
● ● ● ● ● ● ● ● ●
● ● ● ● ● ● ●
spring summer autumn winter ●
● ● ●
1
● ● ●
●● ●
2
● ● ● ●
0.05
●
● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ●
● ●
spring summer autumn winter
●
● ● ●
spring summer autumn winter
●
● ●
● ● ● ● ●
● ● ● ●
● ●
3
● ●
●
0.10
●●
● ● ● ● ● ●
spring summer autumn winter
● ●
0
● ●
●
●●
●●
2
●
● ● ● ● ● ● ●
●
2
0.4
0.4
6
● ● ● ● ● ● ●
● ● ●
0.20
●
●●
0.0
● ● ● ● ● ● ● ●
0.25
●●
0.6 ●
0
spring summer autumn winter
3
●●
●
2
●
● ●
● ● ●
● ●
● ● ● ● ● ● ●
20
●●
● ● ● ● ●
●
● ●
●● ● ●
●
● ● ● ● ● ●
●●
● ●
2
●●
1
W3
2014
●
●
●
● ● ● ● ● ● ● ● ● ● ● ●
●
● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ●
● ● ● ●● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ●
● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ● ●
3 ● ●
●
2
● ● ● ● ● ● ●
● ●
● ● ● ● ● ●
spring summer autumn winter
1
● ● ● ● ● ●
● ● ● ● ● ● ● ● ● ● ●
● ● ● ●
● ● ● ●
●
● ● ● ● ● ● ●
● ● ●
spring summer autumn winter
Figure 2. Temporal and spatial variations of EF5r (method 1), dissolved N2O and nitrate concentrations from 2013 to 2016
379 380 381
All three variables followed the same spatial distribution pattern in which the lowest values occurred in reach W1 (furthest upstream), the highest values occurred
ACS Paragon Plus Environment
Page 21 of 36
Environmental Science & Technology
in reach W2, and the values decreased in a downstream direction in reaches W3 and
383
W4. However, according to the Tukey's studentized range (HSD) test in the SAS
384
GLM procedure55, only the values from reach W1 were significantly different from
385
those in other reaches (p < 0.05). This may be mainly due to the remarkable
386
difference of ambient variants and N input50,67 as well as oxygen availability between
387
reach W1 and the other three reaches. In fact, both dissolved N2O concentration
388
(power function) and EF5r1 values (logarithmic function) decreased nonlinearly with
389
the increase of Strahler stream order for reaches W2 to W4 (Figure 3). The nonlinear
390
relationships are in accord with the findings of Turner et al.,16 who showed that N2O
391
emissions from rivers were negatively and exponentially correlated with the increase
392
of Strahler stream order. EF5r
0.17
Dissolved N2O Stream order and EF5r
2.25
EF5r (%)
Stream order and N2O
0.15
0.13
0.11 1.5
393 394
2.10
y = 2.359x-0.18 R2 = 0.9348 y = -0.065ln(x) + 0.2078 R2 = 0.873
1.95
Dissolved N2O concentration (µg N L-1)
382
1.80 2.0
2.5
3.0
3.5
4.0
4.5
Strahler stream order
Figure 3. Relationship between EF5r and Strahler stream order
395 396
Effect of Environmental Factors. Many previous studies (both long-term38 and
397
short-term9) have explored the N2O emissions from river networks and shown that
398
spatiotemporal variation of dissolved N2O concentration and EF5r values exists in
399
various watershed types. Based on a 2-year monitoring study of a headwater ditch in
ACS Paragon Plus Environment
Environmental Science & Technology
400
Sichuan Province, China, Tian et al.68 showed that N2O emissions during the summer
401
and autumn were higher than those in spring and winter; the differences were
402
attributed to the higher NO3--N concentration and sediment-water interface
403
temperature in summer and autumn. Cooper et al.11 demonstrated that dissolved N2O
404
concentrations were highly dependent on hydrogeological conditions in the UK, being
405
greatest during summer and autumn in regions overlying unconfined and semi-
406
confined bedrock and during winter in areas underlain by confined chalk. Cooper et
407
al.11 also found that EF5r values were highest during summer/autumn and lowest
408
during spring across all the topography types they studied.
409
Our findings are in line with those of Cooper et al.,11 and the patterns we
410
identified are broadly consistent with the temporal variability in dissolved N2O
411
concentrations reported previously15,50,69,70. In our study, the temporal variation of
412
dissolved N2O concentration may probably due to the seasonal change of water
413
temperature and dissolved oxygen content (DO), which direct adjust the process of
414
denitrification under higher loading of NO3--N in summer time as described by Tian
415
et al.69 It is worth noting that, the relationship between dissolved N2O concentration
416
and river discharge is non-significant (p > 0.05), for W1, W3 and W4, the r value is -
417
0.06, -0.1 and 0.08, respectively. So we did not find the dominant effect of discharge
418
on dissolved N2O concentration, which has been discovered by Cooper et al.11 In
419
contrast, however, Hama-Aziz et al.38 reported that dissolved N2O concentrations
420
were lower in summer than the other seasons and ascribed this to the substantial
421
decrease in NO3--N concentrations during the summer as a result of a decline in river
ACS Paragon Plus Environment
Page 22 of 36
Page 23 of 36
Environmental Science & Technology
422
water flow, as well as to a decrease in potentially leachable NO3--N due to nutrient
423
uptake by crops or other plants during the summer. The conclusions reached by
424
Hama-Aziz et al.38 concurred with those of Zhang et al.67 and Cooper et al.,11 who
425
suggested that riverine N2O and NO3--N concentrations were lowest during spring and
426
summer and highest in winter due to higher N leaching rates during the wetter
427
antecedent conditions of winter.
428
Our results also revealed that emission factors were not uniform across all
429
locations (W1 to W4), with W1 exhibiting the smallest EF5r and W2 the largest. This
430
pattern was in accordance with the findings of Starry et al.,71 who demonstrated that
431
the dissolved N concentration in headwater ditches receiving farmland drainage
432
varied spatially. Thus, dissolved N2O concentration and N2O emissions are also likely
433
to exhibit corresponding variations. The results from both studies indicate that the
434
influence of watershed nutrient loading on N cycling may be somewhat greater than
435
the effect of geographical locations. On the contrary, Cooper et al.11 claimed that no
436
evidence exists of a dilution effect (spatially from the origin to the outlet of a
437
catchment) in N2O concentrations at sites in large primary rivers, and that there is no
438
evidence of a strong N2O degassing signal as water moves downstream through a
439
catchment. Therefore, the hydrogeological conditions at sampling sites may remain
440
the dominant determinant of N2O concentration and EF5r, regardless of discharge or
441
stream order.14
442
Variation of N2O concentration and EF5r values also may be attributed to the
443
variation of dissolved organic carbon (DOC),31 temperature32 and DO33 of river water,
ACS Paragon Plus Environment
Environmental Science & Technology
444
both spatially and temporally. The correlation matrix of various variables showed that
445
there was strong correlation between N2O concentration and DO (p < 0.0001)
446
(negative) as well as with temperature (p < 0.0001) (positive) (SI Figure S2).
447
Simultaneously, there were strong relationships among EF5r and the ratio of
448
DOC/NO3 (r = 0.12, p < 0.01), DO (r = -0.24, p < 0.0001) and temperature (r = 0.22,
449
p < 0.0001). Furthermore, decision regression tree and factor importance analysis
450
illustrated the dominance of DO and temperature among the various environmental
451
factors (Figure 4).
452
Carbon is the energy source for denitrification, and higher amounts of available
453
carbon can support higher denitrification rates31,72. As described by Cooper et al., 11
454
denitrification also may be inhibited in sites overlying unconfined bedrock by the
455
relatively low availability of labile carbon, with a mean DOC/NO3 ratio < 1 at
456
unconfined chalk sites and >1 at confined sites.
457
Previous studies demonstrated that increasing temperature can accelerate
458
denitrification73,74 such that N2O production also is expected to be stimulated with
459
increasing temperature.31,74,75 Tian et al.68 found that N2O emissions during summer
460
and autumn were greater than those in spring and winter and ascribed the difference to
461
higher water NO3--N concentration and temperature in summer/autumn.
462
Venkiteswaran et al.32 considered that the increase in N2O fluxes with increasing
463
temperature indicated that microbial N2O production may be temperature sensitive,
464
and/or that high temperature decreases the saturation of dissolved N2O, resulting in a
465
higher flux with more stable N2O production. Moreover, N2O production is strongly
ACS Paragon Plus Environment
Page 24 of 36
Page 25 of 36
Environmental Science & Technology
466
limited by DO, which indicates that most N2O is produced by denitrification in
467
hypoxic areas; this observation suggests the importance of temporal and spatial
468
“hotspots” in the annual N2O flux of a whole river.64 Our results show that most N2O
469
was produced during periods of low oxygen condition (DO < 6.3 mg L-1, Figure 4).
470
Therefore, quantification of the hypoxia extent may be a necessary step to quantifying
471
N2O fluxes in lotic systems.76 (b) Importance of parameter to EF5r
(a) EF5r
0.12 100%
DO >= 6.3 < 6.3 0.066 73%
DO
0.26 27%
DOC/NO3 < 2.2
T < 29 >= 29
●
DOC
>= 2.2 0.33 18%
DOC/NO3
DOC/NO3 >= 3.2 < 3.2 0.51 8%
T < 26
●
DOC
●
CON
●
●
DOC/NO3
●
NO3
T DO
●
●
CON
●
●
>= 26 0.78 4%
T
NH4
●
●
DOC/NO3 < 2.5 >= 2.5
0.062 72%
0.3 1%
0.099 8%
0.18 10%
0.2 4%
0.36 2%
NH4
NO3
●
1.2 2%
8
10
12
14
●
0
1
%IncMSE
3
4
5
6
(d) Importance of parameter to N2O
(c) N2O
1.6 100%
2
IncNodePurity
DO >= 6.3 < 6.3 DO
3.4 27%
DOC/NO3 >= 4.7
●
DOC/NO3
< 4.7 4.4 19%
NO3
T
●
DO
●
●
DOC/NO3
●
●
DOC/NO3 < 2.2 >= 2.2
CON
DOC
●
●
6.8 11%
DOC
T < 26
NO3
●
●
>= 26 3.5 5%
NH4 < 1.2
CON >= 163 < 163
>= 1.2
472
0.87 73%
0.9 7%
1.4 8%
2 3%
NH4
10 5%
5.4 2%
4 2%
15 3%
T
NH4
●
CON
●
9
●
10
11
12
13
14
%IncMSE
15
16
●
0
200
400
600
800 1000
1200
IncNodePurity
473
Figure 4. Decision tree and importance analysis illustrating the relationships among environmental
474
parameters and EF5r (a) (b) or dissolved N2O concentration (c) (d).
475
Note: Parameters entering the model were dissolved oxygen (DO), temperature (T), ratio of dissolved
476
organic carbon to nitrate (DOC/NO3), DOC, conductivity (CON), ammonium nitrogen (NH4) and
477
nitrate nitrogen (NO3). In figure (a) and (c), values at the ends of each terminal node indicate the EF5r
478
or N2O concentration (μg N L-1) and their percentage of the total observations (%). In figure (b) and (d)
479
(parameter scores based on random forest with 1000 trees), random forest computes two qualitative
480
measures that describe the predictive power of the original measures: the Increased Mean Square Error
481
(%IncMSE) and Increased Impurity Index (IncNodePurity). %IncMSE measures the effect on the
ACS Paragon Plus Environment
Environmental Science & Technology
482
predictive power when the value of a specific original parameter is randomly permuted. If the random
483
permutation drastically changes the predicted value (as measured by the mean squared error), then the
484
original parameter is considered critical. IncNodePurity measures the total increase in the homogeneity
485
of the data samples from splitting them on a given parameter.
486 487
N2O Production Pathway. Denitrification has been identified as the main process
488
responsible for the production of N2O in soil,68 while fewer studies have measured
489
N2O yield from denitrification in streams and rivers. In the present study, we did not
490
find a significant positive linear relationship between dissolved N2O concentration
491
and NO3--N (SI Figure S2). Rather, the variation of EF5r1 values showed that a non-
492
linear correlation between dissolved N2O and NO3--N existed (Figure 2 and SI Figure
493
S2), which indicated that denitrification may not dominate N2O production, at least
494
not in agricultural river networks such as the one studied in this research. Our results
495
showed that there was an inverse trend for the distribution of NH4+-N, NO3--N, DOC
496
and DOC/NO3 in river water and sediment at all four reaches (W1–W4) of the Tuojia
497
River network (Figure 5). In water column samples, all of the parameters (NO3--N,
498
DOC and DOC/NO3) increased in the downstream direction at river reaches from W1
499
to W4, whilst in sediment NO3--N and DOC decreased in the downstream direction at
500
the different reaches except W4. As a result, the ratio DOC/NO3 in both water and
501
sediment exhibited an increasing trend in the downstream direction. Additionally, the
502
non-negligible NH4+-N concentrations in both sediment and river water (Figure 5)
503
suggested that DNRA may occur and contribute to N2O loading as well as NO3--N
ACS Paragon Plus Environment
Page 26 of 36
Page 27 of 36
Environmental Science & Technology
504
reduction. Consequently, we speculated that DNRA contributed a large part of N2O
505
production in the reaches of W2 to W4 (DOC/NO3 = 2.26 ± 0.48 (0.36–121.00))
506
while denitrification dominated the N2O production in reach W1 (DOC/NO3 = 1.82 ±
507
0.30 (0.19–37.41)). Therefore, there may be a spatial variation of oxygen throughout
508
the river network as well as in the N2O production pathway within the catchment (SI
509
Figure S3). 6
Water
mg L-1
5 4 3 2 1 0 NH4
NO3
DOC
DOC/NO3
0
mg kg-1
20 40 60 80
W1
W2
W3
W4
Sediment
510
100
511
Figure 5. Distribution of NH4-N, NO3-N, DOC, DOC/NO3 in water and sediment from four reaches
512
(W1, W2, W3 and W4) of Tuojia river systems during 2013 to 2016
513 514
Implications for Future Studies. Two methods for assessing EF5r based on long-
515
term (4 years) river monitoring conducted at high temporal resolution were evaluated
516
to address the existing uncertainty in estimating indirect N2O emission factors for
ACS Paragon Plus Environment
Environmental Science & Technology
517
river networks in agricultural catchments. The key findings from this work and
518
implications for future studies can be summarized as follows.
519
1) Comparisons of assessment methodologies and long-term observations with
520
high temporal resolution are not only necessary for reducing uncertainty in evaluating
521
the global N2O budget, but also for refining the values of EF5r used by the IPCC.
522
Moreover, remarkable spatiotemporal variation of EF5r indicates that various
523
regionally specific EF5r values, instead of a single fixed value, are essential for
524
developing accurate national greenhouse gas inventories.
525
2) Local climatic variables and geographical factors cause the variation in EF5r
526
estimates. Dissolved N2O concentration in river waterbodies is traditionally
527
considered derived from anoxic environments, via various sources, such as vertical
528
and lateral transport from profundal and littoral sediments. Among various
529
environmental elements in this study, dissolved oxygen and temperature controlled
530
the diffusion of N2O from rivers to the atmosphere as well as the variation of EF5r.
531
Although the relationship between dissolved N2O concentration and NO3--N as well
532
as NH4+-N was statistically non-significant, it delineated a complex and variable
533
production pathway of N2O (nitrification, denitrification, DNRA and/or their
534
coupling) in both sediment and the river water column. Thus, a more detailed
535
elucidation of the mechanism by which N2O is produced and transferred in river
536
networks, consider sediment and water column simultaneously, is necessary in future
537
research.
538
ACS Paragon Plus Environment
Page 28 of 36
Page 29 of 36
Environmental Science & Technology
539
ASSOCIATED CONTENT
540
Supporting Information
541
1) Geological and soil and information of Tuojia River catchment
542
2) Seven additional tables and 3 figures supporting the main text. Geographical information of sampling points; Soil chemical and physical
543 544
properties of the different reaches in Tuojia River; Calculation of the exchange flux of
545
N2O; Estimation of gas exchange rate (Kw) of N2O; Detailed nutrient input and spatial
546
information of Tuojia Catchment; Animal excretion nitrogen outlet in Changsha,
547
Jinjing and Tuojia; Statistic analysis by PROC MIXED of SAS; Windspeed (a), air
548
temperature and precipitation (b), discharge of Fuling (W1) (c), Feiyue (W3) (d) and
549
Tuojia (W4) (e) in Jinjing catchment; Correlation matrix of various environmental
550
factors with dissolved N2O and NO3--N concentration and EF5r; Spatial vriation of
551
oxygen condition and N2O production pathway in the catchment scale.
552
553
AUTHOR INFORMATION
554
Corresponding Author
555
*
556
Notes
557
The authors declare no competing financial interests.
E-mail:
[email protected] 558
ACS Paragon Plus Environment
Environmental Science & Technology
559
ACKNOWLEDGEMENTS
560
The authors thank the journal editor and reviewers for their hard work and
561
constructive suggestions. The financial support from National Natural Science
562
Foundation of China (41775157, 41475129) are gratefully acknowledged.
563 564
ACS Paragon Plus Environment
Page 30 of 36
Page 31 of 36
Environmental Science & Technology
565
REFERENCES
566
(1) Laboratory, N. E. S. R.,
567
https://www.esrl.noaa.gov/gmd/dv/data/?parameter_name=Nitrous%2BOxide (Accessed July 1,
568
2019). 2019.
569
(2) Hartmann, D. L.; Klein Tank, A. M. G.; Rusticucci, M.; Alexander, L. V.; Brönnimann, S.;
570
Charabi, Y.; Dentener, F. J.; Dlugokencky, E. J.; Easterling, D. R.; Kaplan, A.; Soden, B. J.;
571
Thorne, P. W.; Wild, M.; Zhai, P. M., Observations: Atmosphere and Surface. In Climate Change
572
2013: The Physical Science Basis. Contribution of Working Group I to the Fifth Assessment
573
Report of the Intergovernmental Panel on Climate Change; Stocker, T. F., Qin, D., Plattner, G.-
574
K., Tignor, M., Allen, S. K., Boschung, J., Nauels, A., Xia, Y., Bex, V., Midgley, P. M., Eds.;
575 576 577 578 579 580 581 582
Cambridge University Press: Cambridge 2013. (3) Davidson, E. A., The contribution of manure and fertilizer nitrogen to atmospheric nitrous oxide since 1860. Nature Geoscience 2009, 2, (4), 659–662. (4) Ravishankara, A. R.; Daniel, J. S.; Portmann, R. W., Nitrous Oxide (N2O): The Dominant OzoneDepleting Substance Emitted in the 21st Century. Science 2009, 326, (5949), 123–125. (5) Syakila, A.; Kroeze, C., The global nitrous oxide budget revisited. Greenh. Gas. Meas. Manage 2011, 1, (1), 17–26. (6) Ciais, P., C. Sabine, G. Bala, L. Bopp, V. Brovkin, J. Canadell, A. Chhabra, R. DeFries, J.
583
Galloway, M. Heimann, C. Jones, C. Le Quéré, R.B. Myneni, S. Piao and P. Thornton, 2013:
584
Carbon and Other Biogeochemical Cycles. In: Climate Change 2013: The Physical Science Basis.
585
Contribution of Working Group I to the Fifth Assessment Report of the Intergovernmental Panel
586
on Climate Change [Stocker, T.F., D. Qin, G.-K. Plattner, M. Tignor, S.K. Allen, J. Boschung, A.
587
Nauels, Y. Xia, V. Bex and P.M. Midgley (eds.)]. Cambridge University Press, Cambridge,
588
United Kingdom and New York, NY, USA.
589
(7) Wang, Q., Zhou, F., Shang, Z., Ciais, P., Winiwarter, W., Jackson, R. B., Tubiello, F., Janssens-
590
Maenhout, G., Tian, H., Cui, X., Canadell, J., Piao, S., Tao, S., Data-driven estimates of global
591
nitrous oxide emissions from croplands. National Science Review 2019. doi:10.1093/nsr/nwz087.
592
(8) Mosier, A. R.; Duxbury, J. M.; Freney, J. R.; Heinemeyer, O.; Minami, K.; Johnson, D. E.,
593
Mitigating Agricultural Emissions of Methane. Climatic Change 1998, 40, (1), 39–80.
594
(9) Clough, T. J.; Buckthought, L. E.; Kelliher, F. M.; Sherlock, R. R., Diurnal fluctuations of
595
dissolved nitrous oxide (N2O) concentrations and estimates of N2O emissions from a spring-fed
596
river: implications for IPCC methodology. Global. Change. Biolo. 2007, 13, (5), 1016–1027.
597
(10) Nevison, C., Review of the IPCC methodology for estimating nitrous oxide emissions associated
598 599
with agricultural leaching and runoff. Chemos – Global. Change. Sci. 2000, 2, (3–4), 493–500. (11) Cooper, R. J.; Wexler, S. K.; Adams, C.; Hiscock, K. M., Hydrogeological controls on regional-
600
scale indirect nitrous oxide (N2O) emission factors for rivers. Environ. Sci. Technol. 2017, 51,
601
(18), 10440–10448.
602 603 604
(12) Reay, D. S.; Smith, K. A.; Edwards, A. C., Nitrous oxide emission from agricultural drainage waters. Global. Change. Biolo. 2003, 9, (2), 195–203. (13) Beaulieu, J. J.; Arango, C. P.; Hamilton, S. K.; Tank, J. L., The production and emission of
605
nitrous oxide from headwater streams in the Midwestern United States. Global. Change. Biolo.
606
2008, 14, (4), 878–894.
ACS Paragon Plus Environment
Environmental Science & Technology
607 608
(14) Reay, D.; Davidson, E.; Smith, K.; Smith, P.; Melillo, J.; Dentener, F.; Crutzen, P., Global agriculture and nitrous oxide emissions. Nat. Clim. Change. 2012, 2, (6), 410–416.
609
(15) Hinshaw, S. E.; Dahlgren, R. A., Dissolved Nitrous Oxide Concentrations and Fluxes from the
610
Eutrophic San Joaquin River, California. Environ. Sci. Technol. 2013, 47, (3), 1313–1322.
611
(16) Turner, P. A.; Griffis, T. J.; Lee, X.; Baker, J. M.; Venterea, R. T.; Wood, J. D., Indirect nitrous
612
oxide emissions from streams within the US Corn Belt scale with stream order. P. Natl. Acad. Sci.
613
Usa. 2015, 112, (32), 9839–43.
614 615 616
(17) Well, R.; Flessa, D. W.; H., Recent research progress on the significance of aquatic systems for indirect agricultural N2O emissions. Environ. Sci. 2005, 2, (2–3), 143–151. (18) Yu, Z.; Deng, H.; Wang, D.; Ye, M.; Tan, Y.; Li, Y.; Chen, Z.; Xu, S., Nitrous oxide emissions in
617
the Shanghai river network: implications for the effects of urban sewage and IPCC methodology.
618
Global. Change. Biol. 2013, 19, (10), 2999–3010.
619
(19) Chen, N.; Wu, J.; Zhou, X.; Chen, Z.; Lu, T., Riverine N2O production, emissions and export
620
from a region dominated by agriculture in Southeast Asia (Jiulong River). Agri. Ecosyst. Environ.
621
2015, 208, 37–47.
622
(20) Wrage, N.; Velthof, G. L.; Laanbroek, H. J.; Oenema, O., Nitrous oxide production in grassland
623
soils: assessing the contribution of nitrifier denitrification. Soil. Biol. Biochem. 2004, 36, (2), 229–
624
236.
625
(21) Rütting, T.; Boeckx, P.; Müller, C.; Klemedtsson, L., Assessment of the importance of
626
dissimilatory nitrate reduction to ammonium for the terrestrial nitrogen cycle. Biogeosciences
627
2011, 8, (7), 1779–1791.
628 629 630
(22) Smith, M. S.; Zimmerman, K., Nitrous Oxide Production by Nondenitrifying Soil Nitrate Reducers. Soil. Sci. Soc. Am. J. 1981, 45, (5), 865–871. (23) Mulholland, P. J.; Helton, A. M.; Poole, G. C.; Hall, R. O.; Hamilton, S. K.; Peterson, B. J.; Tank,
631
J. L.; Ashkenas, L. R.; Cooper, L. W.; Dahm, C. N., Stream denitrification across biomes and its
632
response to anthropogenic nitrate loading. Nature 2008, 452, (7184), 202–205.
633 634 635
(24) Bremner, J. M.; Blackmer, A. M., Nitrous oxide: emission from soils during nitrification of fertilizer nitrogen. Science 1978, 199, (4326), 295–6. (25) Strauss, E. A.; Richardson, W. B.; Bartsch, L. A.; Cavanaugh, J. C.; Bruesewitz, D. A.; Imker, H.;
636
Heinz, J. A.; Soballe, D. M., Nitrification in the Upper Mississippi River: patterns, controls, and
637
contribution to the NO3− budget. J. N. Am. Benthol. Soc. 2014, 23, (1), 1–14.
638
(26) Beaulieu, J. J.; Tank, J. L.; Hamilton, S. K.; Wollheim, W. M.; Jr, H. R.; Mulholland, P. J.;
639
Peterson, B. J.; Ashkenas, L. R.; Cooper, L. W.; Dahm, C. N., Nitrous oxide emission from
640
denitrification in stream and river networks. P. Natl. Acad. Sci. Usa. 2011, 108, (1), 214.
641
(27) Kool, D. M.; Dolfing, J.; Wrage, N.; van Groenigen, J. W., Nitrifier denitrification as a distinct
642 643 644 645 646 647
and significant source of nitrous oxide from soil. Soil. Biol. Biochem. 2011, 43, (1), 174–178. (28) Wrage, N.; Velthof, G. L.; van Beusichem, M. L.; Oenema, O., Role of nitrifier denitrification in the production of nitrous oxide. Soil. Biol. Biochem. 2001, 33, 1723–1732. (29) Bhl, K.; Smith, R. V.; Laughlin, R. J., Effects of Carbon Substrates on Nitrite Accumulation in Freshwater Sediments. Appl. Environ. Microb. 1999, 65, (1), 61–66. (30) Kelso, B.; Smith, R. V.; Laughlin, R. J.; Lennox, S. D., Dissimilatory nitrate reduction in
648
anaerobic sediments leading to river nitrite accumulation. Appl. Environ. Microb. 1997, 63, (12),
649
4679–4685.
ACS Paragon Plus Environment
Page 32 of 36
Page 33 of 36
650 651 652 653 654 655 656 657 658 659 660
Environmental Science & Technology
(31) Stow, C. A.; Qian, S. S.; Craig, J. K., Declining threshold for hypoxia in the Gulf of Mexico. Environ. Sci. Technol. 2005, 39, (3), 716–23. (32) Venkiteswaran, J. J.; Rosamond, M. S.; Schiff, S. L., Nonlinear Response of Riverine N2O Fluxes to Oxygen and Temperature. Environ. Sci. Technol. 2014, 48, (3), 1566–1573. (33) Rosamond, M. S.; Thuss, S. J.; Schiff, S. L., Dependence of riverine nitrous oxide emissions on dissolved oxygen levels. Nat. Geosci. 2012, 5, (10), 715–718. (34) Chesterikoff, A.; Garban, B.; Billen, G.; Poulin, M., Inorganic nitrogen dynamics in the River Seine downstream from Paris (France). Biogeochemistry 1992, 17, (3), 147–164. (35) Rysgaard, S.; Nielsen, L. P., Oxygen regulation of nitrification and denitrification in sediments. Limnol. Oceanogr. 1994, 39, (7), 1643–1652. (36) IPCC, 2006 IPCC Guidelines for National Greenhouse Gas Inventories Prepared by the National
661
Greenhouse Gas Inventories Programme, Eggleston H.S., Buendia L., Miwa K., Ngara T. and
662
Tanabe K. (eds). Published: IGES, Japan 2006.
663
(37) De Klein, C.; Novoa, R. S. A.; Ogle, S.; Smith, K. A.; Rochette, P.; Wirth, T. C.; McConkey, B.
664
G.; Mosier, A. R.; Rypdal, K., Chapter 11: N2O Emissions from Managed Soils, and CO2
665
Emissions from Lime and Urea Application. 2006.
666
(38) Hamaaziz, Z. Q.; Hiscock, K. M.; Cooper, R. J., Indirect nitrous oxide emission factors for
667
agricultural field drains and headwater streams. Environ. Sci. Technol. 2017, 51, (1), 301–307.
668
(39) Outram, F. N.; Hiscock, K. M., Indirect nitrous oxide emissions from surface water bodies in a
669
lowland arable catchment: a significant contribution to agricultural greenhouse gas budgets?
670
Environ. Sci. Technol. 2012, 46, (15), 8156–63.
671
(40) Baulch, H. M.; Dillon, P. J.; Maranger, R.; Venkiteswaran, J. J.; Wilson, H. F.; Schiff, S. L.,
672
Night and day: short‐term variation in nitrogen chemistry and nitrous oxide emissions from
673
streams. Freshwater. Biol. 2012, 57, (3), 509–525.
674
(41) Hiscock, K. M.; Bateman, A. S.; I. H. M.; T. Fukada, A.; Dennis, P. F., Indirect Emissions of
675
Nitrous Oxide from Regional Aquifers in the United Kingdom. Environ. Sci. Technol. 2003, 37,
676
(16), 3507–12.
677
(42) Harrison, J.; Matson, P., Patterns and controls of nitrous oxide emissions from waters draining a
678
subtropical agricultural valley. Global. Biogeochem. Cy. 2003, 17, (3), 1080,
679
DOI: :10.1029/2002GB001991.
680
(43) Reay, D. S.; Smith, K. A.; Edwards, A. C.; Hiscock, K. M.; Dong, L. F.; Nedwell, D. B.; Amstel,
681
A. V., Indirect nitrous oxide emissions: revised emission factors. Environ. Sci. 2005, 2, (2–3),
682
153–158.
683
(44) Shen, J.; Tang, H.; Liu, J.; Wang, C.; Li, Y.; Ge, T.; Jones, D. L.; Wu, J., Contrasting effects of
684
straw and straw-derived biochar amendments on greenhouse gas emissions within double rice
685
cropping systems. Agri. Ecosyst. Environ. 2014, 188, 264–274.
686
(45) Gao, J.; Zheng, X. H.; Wang, R.; Liao, T. T.; Zou, J. W., Preliminary comparison of the static
687
floating chamber and the diffusion model methods for measuring water−atmosphere exchanges of
688
methane and nitrous oxide from inland water bodies. Clim. Environ. Res 2014, 19, (3), 290−302.
689
(in Chinese with English abstract).
690 691 692 693
(46) Liss, P. S.; Slater, P. G., Flux of Gases across the Air-Sea Interface. Nature 1974, 247, (5438), 181–184. (47) Strahler, A. N., Quantitative analysis of watershed geomorphology. Eos. Transactions. Am. Geophys. Union. 1957, 38, (6), 913–920.
ACS Paragon Plus Environment
Environmental Science & Technology
694 695
(48) Raymond, P. A.; Cole, J. J., Gas exchange in rivers and estuaries: Choosing a gas transfer velocity. Estuaries 2001, 24, (2), 312–317.
696
(49) Zhang, Y.; Li, Y.; Qin, X.; Kong, F.; Chi, M.; Li, Y. e., Dissolved Methane Concentration and
697
Diffusion Flux in Agricultural Watershed of Subtropics. Scientia Agricultura Sinica 2016, 49,
698
(20), 3968–3980. (in Chinese with English abstract).
699
(50) Wu, H.; Qin, X.; Lv, C.; Li, Y. e.; Liao, Y.; Wan, Y.; Gao, Q.; Li, Y., Spatial and temporal
700
distribution of dissolved organic carbon in Tuojia River watershed. J. Agro-Environ. Sci. 2016,
701
35, 1968–1976. (in Chinese with English abstract).
702
(51) Wu, H.; Lv, C.; Li, Y. e.; Qin, X.; Liao, Y.; Li, Y., The spatial-temporal distribution of nitrogen
703
and N2O emission from soil and sediment in agricultural watershed of Tuojia River. Acta
704
Scientiae Circumstantiae 2017, 37, (4), 1539–1546. (in Chinese with English abstract).
705
(52) Zhang, Y.; Qin, X.; Liao, Y.; Fan, M.; Li, Y.; Chi, M.; Li, Y. e.; Wan, Y., Diffusion flux of N2O
706
and its influencing factor in agricultural watershed of subtropics. Transactions of the CSAE 2016,
707
32, (7), 2015–223 (in Chinese with English abstract).
708
(53) Changsha statistical yearbook 2016
709
(http://tongji.cnki.net/kns55/navi/HomePage.aspx?id=N2013110088&name=YXCJH&floor=1).
710
China statistics press 2016.
711
(54) NDRC, Provincial Greenhouse Gas Inventory Guide. 2011.
712
(55) SAS, I. I., SAS/STAT 9.2 User's Guide: The LOGISTIC Procedure. SAS Publishing: 2009; p 231–
713 714 715 716 717 718 719 720 721 722
241. (56) Littell, R. C.; Henry, P. R.; Ammerman, C. B., Statistical analysis of repeated measures data using SAS procedures. J. Anim Sci. 1998, 76, (4), 1216–1231. (57) Littell, R. C.; Milliken, G. A.; Stroup, W. W.; Wolfinger, R. D., SAS system for mixed models. SAS Institute. Cary, NC (USA). 633 pp 1996. (58) Steel, R. G.; Torrie, J. H., Principles and procedures of statistics: A biometrical approach. 2nd edition. McGraw-Hill (New York) 1980, 663 pp. (59) Team, R. C., R: A language and environment for statistical computing. R Foundation for Statistical Computing, Vienna, Austria. URL https://www.R-project.org/. Version 3.3 2016. (60) China statistical yearbook 2016
723
(http://tongji.cnki.net/kns55/navi/YearBook.aspx?id=N2017030066&floor=1). China statistics
724
press 2016.
725
(61) Liang, H. D.; He, X.; Gong, X. M.; Liu, F.; Deng, C. Y., China's livestock and poultry excrement
726
pollution problems, harmless treatment and development and production of organic fertilizer
727
technology and policy. Chi. Agri. Sci. Bullet. 2014, 30, 75–80. (in Chinese with English abstract).
728
(62) Zhou, F., Shang, Z., Ciais, P., Tao, S., Piao, S., Raymond, P., He, C., Li, B., Wang, R., Wang, X.,
729
Peng, S., Zeng, Z., Chen, H., Ying, N., Hou, X., Xu, P., A New High-Resolution N2O Emission
730
Inventory for China in 2008. Environ. Sci. Technol. 2014, 48, (15), 8538–8547.
731
doi:10.1021/es5018027.
732
(63) Shang, Z., Zhou, F., Smith, P., Saikawa, E., Ciais, P., Chang, J., Tian, H., Del Grosso, S., Ito, A.,
733
Chen, M., Wang, Q., Bo, Y., Cui, X., Castaldi, S., Juszczak, R., Kasimir, Å., Magliulo, V.,
734
Medinets, S., Medinets, V., Rees, R., Wohlfahrt, G., Sabbatini, S., Weakened growth of cropland
735
N2O emissions in China associated with nationwide policy interventions. Global. Change. Biolo.
736
2019, doi:10.1111/gcb.14741.
ACS Paragon Plus Environment
Page 34 of 36
Page 35 of 36
737
Environmental Science & Technology
(64) Zhou, F., Shang, Z., Zeng, Z., Piao, S., Ciais, P., Raymond, P. A., Wang, X., Wang, R., Chen, M.,
738
Yang, C., Tao, S., Zhao, Y., Meng, Q., Gao, S., Mao, Q., New model for capturing the variations
739
of fertilizer-induced emission factors of N2O. Global. Biogeochem. Cy. 2015, 29, (6), 885–897.
740
doi:10.1002/2014gb005046.
741
(65) Xia, Y.; Li, Y.; Ti, C.; Li, X.; Zhao, Y.; Yan, X., Is indirect N2O emission a significant
742
contributor to the agricultural greenhouse gas budget? A case study of a rice paddy-dominated
743
agricultural watershed in eastern China. Atmos. Environ. 2013, 77, (3), 943–950.
744
(66) Clough, T. J.; Bertram, J. E.; Sherlock, R. R.; Leonard, R. L.; Nowicki, B. L., Comparison of
745
measured and EF5-r-derived N₂O fluxes from a spring-fed river. Global. Change. Biol. 2006, 12,
746
(3), 477–488.
747 748 749 750 751 752 753 754 755 756
(67) Yu, Z.; Xiaobo, Q.; Yulin, L.; Meirong, F.; Yue, L.; Min, C.; Yu’e, L.; Yunfan, W., Diffusion flux of N2O and its influencing factor in agricultural watershed of subtropics. Transactions of the CSAE 2016, 32, (7), 215 223. (in Chinese with English abstract). (68) Tian, L.; Zhu, B.; Akiyama, H., Seasonal variations in indirect N2O emissions from an agricultural headwater ditch. Biol. Fert. Soils. 2017, 53, (6), 1–12. (69) Beaulieu, J. J.; Shuster, W. D.; Rebholz, J. A., Nitrous oxide emissions from a large, impounded river: the Ohio River. Environ. Sci. Technol. 2010, 44, (19), 7527. (70) Wang, H.; Wang, W.; Yin, C.; Wang, Y.; Lu, J., Littoral zones as the “hotspots” of nitrous oxide (NO) emission in a hyper-eutrophic lake in China. Atmos. Environ. 2006, 40, (28), 5522–5527. (71) Starry, O. S.; Valett, H. M.; Schreiber, M. E., Nitrification rates in a headwater stream: influences
757
of seasonal variation in C and N supply. J. N. Am. Benthol. Soc. 2005, 24, (4), 753–768.
758
(72) Schipper, L. A.; Robertson, W. D.; Gold, A. J.; Dan, B. J.; Cameron, S. C., Denitrifying
759
bioreactors—An approach for reducing nitrate loads to receiving waters. Ecol. Eng. 2010, 36,
760
(11), 1532–1543.
761 762 763 764 765 766 767
(73) Holmes, R. M.; Jr, J. B. J.; Fisher, S. G.; Grimm, N. B., Denitrification in a nitrogen-limited stream ecosystem. Biogeochemistry 1996, 33, (2), 125–146. (74) Herrman, K. S.; Bouchard, V.; Moore, R. H., Factors affecting denitrification in agricultural headwater streams in Northeast Ohio, USA. Hydrobiologia 2008, 598, (1), 305–314. (75) Mcmahon, P. B.; Böhlke, J. K.; Bruce, B. W., Denitrification in marine shales in northeastern Colorado. Water. Resour. Res. 1999, 35, (5), 1629–1642. (76) Huygens, D.; Rutting, T.; Boeckx, P.; Ovan, C.; Godoy, R.; Muller, C., Soil nitrogen conservation
768
mechanisms in a pristine south Chilean Nothofagus forest ecosystem. Soil. Biol. Biochem. 2007,
769
39, (10), 2448–2458.
ACS Paragon Plus Environment
Environmental Science & Technology
Low N2O & EF5r
Page 36 of 36
Low N2O & EF5r
Low N2O & EF5r
N gh
Hi
High N2O & EF5r
& EF 5 r
Medium N2O & EF5r
Oxygen rich
Low N2O & EF5r
O
2
Low N2O & EF5r
Anthropogenic intervention
Denitrification
mixed process
ACS Paragon Plus Environment
Hypoxia
DNRA