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Evaluation of Nitrous Oxide Emission from Sulfide- and Sulfur-based Autotrophic Denitrification Processes Yiwen Liu, Lai Peng, Huu Hao Ngo, Wenshan Guo, Dongbo Wang, Yuting Pan, Jing Sun, and Bing-Jie Ni Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.6b02202 • Publication Date (Web): 08 Aug 2016 Downloaded from http://pubs.acs.org on August 10, 2016
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Evaluation of Nitrous Oxide Emission from Sulfide- and Sulfur-based
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Autotrophic Denitrification Processes
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Yiwen Liu1, Lai Peng2,3, Huu Hao Ngo1,*, Wenshan Guo1, Dongbo Wang4, Yuting
5
Pan5, Jing Sun2, Bing-Jie Ni2,*
6 7
1
Centre for Technology in Water and Wastewater, School of Civil and Environmental
8
Engineering, University of Technology Sydney, Sydney, NSW 2007, Australia
9
2
State Key Laboratory of Pollution Control and Resources Reuse, College of
10
Environmental Science and Engineering, Tongji University, Shanghai 200092, PR
11
China 3
12
Laboratory of Microbial Ecology and Technology (LabMET), Ghent University,
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Coupure Links 653, 9000 Ghent, Belgium 4
14
College of Environmental Science and Engineering, Hunan University, Changsha
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410082, China; Key Laboratory of Environmental Biology and Pollution Control
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(Hunan University), Ministry of Education, Changsha 410082, China
17 18
5
Department of Environmental Science and Engineering, School of Architecture and Environment, Sichuan University, Chengdu, Sichuan 610065, China
19 20
*Corresponding authors:
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Prof Dr. Bing-Jie Ni, Tel.: +86 21 65986849; Fax: +86 21 65983602; E-mail
22
[email protected] 23
Prof Dr. Huu Hao Ngo, Tel.: +61 2 9514 2745; Fax: +61 2 9514 2633; E-mail
24
[email protected] 25
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ABSTRACT
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Recent studies have shown that sulfide- and sulfur-based autotrophic
31
denitrification (AD) process plays an important role in contributing to nitrous oxide
32
(N2O) production and emissions. However, N2O production is not recognized in the
33
current AD models, limiting their ability to predict N2O accumulation during AD. In
34
this work, a mathematical model is developed to describe N2O dynamics during
35
sulfide- and sulfur-based AD processes for the first time. The model is successfully
36
calibrated and validated using N2O data from two independent experimental systems
37
with sulfide or sulfur as electron donors for AD. The model satisfactorily describes
38
nitrogen reductions, sulfide/sulfur oxidation, and N2O accumulation in both systems.
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Modeling results revealed substantial N2O accumulation due to the relatively low N2O
40
reduction rate during both sulfide- and sulfur-based AD processes. Application of the
41
model to simulate long-term operations of activated sludge systems performing
42
sulfide- and sulfur-based AD processes indicates longer sludge retention time reduced
43
N2O emission. For sulfide-based AD process, higher initial S/N ratio also decreased
44
N2O emission but with a higher operational cost. This model can be a useful tool to
45
support process operation optimization for N2O mitigation during AD with sulfide or
46
sulfur as electron donor.
47 48
INTRODUCTION
49
Groundwater is an important water source throughout the world. For example,
50
groundwater accounts more than 65% and 33% of the water used for drinking water
51
supply in Europe and the US, respectively 1, 2. With the increase of nitrogen input into
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environment as a result of intensive use of nitrogen-based fertilizers in agricultural
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activities and inappropriate discharge of wastewater and solid wastes
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, nitrate
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contamination of groundwater has been recognized as a significant environmental
55
problem world widely 6. The elevated nitrate concentrations can cause human health
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problems, i.e., increased risks of methaemoglobinaemia, non-Hodgkin’s lymphoma
57
and cancer 7, 8, as well as ecological disturbances such as the eutrophication of surface
58
water 9. For this reason, a maximum nitrate contaminant level of between 10 and 11.3
59
mg-N/L in potable water has been set by both US Environmental Protection Agency
60
(US EPA) and World Health Organization 6, 10.
61
Biological denitrification (i.e., heterotrophic and autotrophic denitrification (AD))
62
is recognized as one of the most promising and efficient processes for mass nitrate
63
removal
64
organic matter, resulting in large cost of heterotrophic denitrification process that
65
requires massive external organic carbon and subsequent treatment of the produced
66
excessive sludge 6. Alternatively, AD with reduced sulfur compounds (e.g., sulfide
67
and sulfur) as electron donors has attracted more attentions due to the lower sludge
68
production rate and the elimination of the need for exogenous carbon 11-15, which has
69
been demonstrated in aquifers where exists a sulfide or sulfur-rich zone in the nitrate-
70
contaminated groundwater
71
extensive studies have been carried out on the promising AD process, with the focus
72
on the reaction kinetics analysis, effects of S:N ratio, microbial community structure,
73
reactor types and other operation parameters 18-28.
6, 8
. Generally, groundwater contaminated with nitrate is insufficient of
16
or using sulfur-packed bed bioreactors
17
. Therefore,
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Recently, increasing evidences have revealed that nitrous oxide (N2O) can be
75
produced and accumulated as a significant intermediate product during AD process
76
with sulfide or sulfur as electron donors
77
owing to its potent greenhouse gas effect and its ability to deplete stratospheric ozone
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33-35
29-32
, which has raised increasing concerns
. It has been reported that the amount of N2O emission in this process ranged from
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0.5% to 0.9% of the nitrogen load 30, 31. It should be noted that an emission factor of 1%
80
would increase the carbon footprint by about 30% due to the high global warming
81
potential of N2O
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sulfide- or sulfur-based AD is of great significance to the application of such system.
83
36
. Therefore, understanding and reducing N2O production during
Mathematical modeling is particularly important toward a full understanding of 33, 37
84
mechanisms involved in biological denitrification systems
85
applied to describe sulfide- or sulfur-based AD process for sulfide or nitrate
86
attenuation purpose
87
N2O dynamics during this process despite of considerable N2O production. To date,
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current existing models only describe sulfide- or sulfur-based AD as a one-step
89
denitrification (NO3- to N2) or two-step denitrification (NO3- to NO2-, and NO2- to N2),
90
without consideration of N2O accumulation (NO2- to N2O, and N2O to N2).
, which has been
38-44
. However, little effort has been dedicated to modeling the
91
This study aims to develop a new model for the prediction of N2O production
92
during sulfide- or sulfur-based AD. The typical experimental N2O data sets from two
93
independent study reports with highly different experimental conditions in different
94
sulfide- and sulfur-based AD process (e.g., different mass transfer processes and
95
different initial electron acceptors conditions) were used to test the validity of the
96
model and the obtained parameters reliably. The model is also applied to investigate
97
the optimal conditions for achieving high level of nitrate removal with relative low
98
N2O emission in AD.
99 100
MATERIALS AND METHODS
101
Model development. Autotrophic denitrifiers use sulfide (S2-) or sulfur (S0) as
102
electron donors to reduce nitrate to nitrogen gas, for their growth and maintenance.
103
The model developed in this work considered the three-step denitrification (NO3- to
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N2 via NO2- and N2O) 45 and two-step sulfide oxidation (S2- to S0 and S0 to SO42-) 40 to
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describe all potential N2O accumulation steps (Figure 1). Nitric oxide (NO) is not
106
taken into account in our model since the NO reduction related parameters are beyond
107
the ability of measurement. Indeed, NO reduction is usually prioritized by bacteria to
108
avoid its toxicity and thus ensure no accumulation of NO as intermediate
109
thiosulfate and sulfite are not considered in the biological model since they are the
110
intermediate products of chemical oxidation rather than biological oxidation 31, 40.
33
. Also,
111
The developed model describes the relationships among seven compounds
112
involved in autotrophic denitrifiers (XSOB), namely NO3- (SNO3), NO2- (SNO2), N2O
113
(SN2O), N2 (SN2), S2- (SS2), S0 (SS0) and SO42- (SSO4). The units are g-N m-3 for all
114
nitrogenous species and g-S m-3 for non-nitrogen compounds (Table S1 in Supporting
115
Information). Two groups of biological processes (Table S2 and S3 in Supporting
116
Information) were considered, namely, sulfide-based denitrification processes
117
(Process 1 – 3) and sulfur-based denitrification processes (Process 4 – 6), each
118
modeled as three sequential denitrification processes from NO3- to N2 via NO2- and
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N2O with individual reaction-specific kinetics (i.e., double Monod-type kinetic
120
equations). In addition, biomass decay (Process 7) was also included. Table S4 in the
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Supporting Information lists the definitions, values, units, and sources of all
122
parameters used in the developed model.
123
Experimental data for model evaluation. Sulfide-based autotrophic denitrifying 31
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culture: Experimental data previously reported by Yang et al.
125
and validate the sulfide-based AD process. A sulfide-based autotrophic denitrifying
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sludge (seeded as flocculent sludge from a local wastewater treatment plant in
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Guangzhou, China) was enriched in a continuous-flow granular sludge reactor with a
128
working volume of 30 L for four months
31
are used to calibrate
. The reactor was fed with synthetic
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wastewater mainly consisting of KNO3 and Na2S•9H2O (detailed composition
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described in Yang et al. 31), leading to the influent nitrate concentration at 70 mg-N/L
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and the sulfide concentration at 100 – 145 mg-S/L, respectively. The hydraulic
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retention time (HRT) varied from 5 – 20 h. The dissolved oxygen (DO) concentration
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in the feed was always maintained below 0.5 mg-O2/L. After 120 days, the average
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particle size of the sulfide-based autotrophic denitrifying sludge reached 700 µm.
135
More details of the reactor operation and performance can be found in Yang et al. 31.
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Batch tests were then carried out with sulfide-based autotrophic denitrifying sludge on
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day 120 in a 1.2-L batch reactor equipped with a N2O microsensor (N2O-100,
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Unisense A/S, Aarhus, Denmark) for real-time monitoring of dissolved N2O in mixed
139
liquid. There was no headspace during the batch tests. Two types of batch tests were
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conducted:
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In Batch test I, N2O accumulation under two different granule sizes (i.e., 700±12
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and 1350±20 µm, screened out by different screen meshes) of sulfide-based
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autotrophic denitrifying sludge was investigated. For each test, approximately 4.2 g of
144
granular sludge was screened from the parent reactor above and added to the batch
145
reactor. A certain amount of sulfide stock and nitrate stock solution were added to
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batch reactor, resulting in an initial total dissolved sulfide (TDS) concentration of 150
147
mg-S/L and nitrate concentration of 30 mg-N/L, in order to ensure the presence of
148
adequate electron donors (sulfide or sulfur) for AD during the batch test as the
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required sulfide for the complete nitrate (30 mg-N/L) reduction to nitrogen gas is
150
about 43 mg-S/L according to the stoichiometric equation: 5 HS-+8 NO3-+3H+ = 5
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SO42-+4 N2+4 H2O.
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In Batch test II, N2O reduction under different initial S/N ratios with 700-µm
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granular sludge was carried out. For each test, approximately 4.2 g of granular sludge
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was screened from the parent reactor above and added to the batch reactor. Oxygen-
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free Milli-Q water was flushed with 99.9% N2O gas for 30 min to achieve N2O
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saturation with a maximum dissolved N2O concentration of 700 mg-N/L (N2O stock
157
solution). The N2O concentration in the stock solution was determined using gas
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chromatograph
159
conductivity detector). Approximately 20 mL of the N2O stock solution (i.e., 700 mg-
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N/L) was added to the batch reactor to achieve an initial N2O concentration of 12 mg-
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N/L. A certain portion of a concentrated sulfide solution was spiked into the batch
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reactor to achieve initial TDS concentrations of 10, 30, and 60 mg-S/L, corresponding
163
to respective S/N mass ratios of 0.8, 2.5 and 5.0.
(GC)
(GC2014C
Shimadzu,
RTX-502.2
column,
electrical
164
In both batch tests, the dissolved N2O concentration was monitored continuously
165
using the real-time microsensor. Mixed liquor samples were taken periodically to
166
determine the nitrate, nitrite, TDS, thiosulfate, sulfite and sulfate concentrations,
167
using an ion chromatograph equipped with a conductivity detector and an IC-AS23 or
168
IC-CS12A analytical column (DIONEX ICS-900). More detailed batch experimental
169
setup and analysis methods can be found in Yang et al. 31.
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Sulfur-based autotrophic denitrifying culture: Experimental data previously
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reported by Zhang et al. 29 and Zhang et al. 30 are used to calibrate and validate sulfur-
172
based AD process. An enriched autotrophic denitrifying culture was employed as the
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inoculum and further developed in a 2.3-L lab-scale continuous-flow anaerobic
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fluidized bed membrane bioreactor. Initially, 200 g of sulfur was added in the reactor
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as electron donor for sulfur-based AD, and additional 50 – 100 g of sulfur was
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supplemented every 2-month, to ensure a stable sulfur concentration. The reactor was
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fed with N2-sparged synthetic wastewater mainly consisting of KNO3 (detailed
178
composition described in Zhang et al. 30), resulting in an influent nitrate concentration
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from 25 to 80 mg-N/L according to the different operational stages (i.e., HRT varied
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from 0.5 – 5 h). More details of the reactor operation and performance can be found in
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Zhang et al. 30.
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Batch experiments with different initial
15
N-NO3- concentrations (30 – 50 mg-
183
N/L) as a sole nitrogen substrate, were conducted with this culture in a 0.5-L glass
184
serum flask supplemented with 0.2 L medium free of NH4+. The experiments were
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incubated with denitrifying culture and elemental sulfur from the bioreactor above.
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The headspace was flushed with helium to exclude oxygen and background nitrogen.
187
Mixed liquor and gas samples were taken periodically for NO3−, NO2−, N2O, N2 and
188
sulfate analysis, respectively. Nitrate, nitrite, and sulfate were determined by ion
189
chromatography (Dionex ICS 2000, USA). 15N-labeled N2O and N2 were determined
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by a Delta V Advantage Isotope Ratio Mass Spectrometer (IRMS, Thermo Fisher
191
Scientific Inc., USA). More detailed batch experimental setup and analysis methods
192
can be found in Zhang et al. 30.
193
Model calibration and validation. The developed model includes 21
194
stoichiometric and kinetic parameters as summarized in Table S4 (Supporting
195
Information). Most of these model parameter values (e.g., 17) are well established in
196
previous studies. Thus, literature values were directly adopted for these parameters.
197
The remaining four parameters,
198
(maximum reaction rate of Process 3), , (maximum reaction rate of Process 5) and
199
,
200
the key parameters relating to the N2O dynamics during AD process, are then
201
calibrated using experimental data.
,
(maximum reaction rate of Process 2), ,
(maximum reaction rate of Process 6), which are unique to this model and are
202
Parameter values were estimated by minimizing the sum of squares of the
203
deviations between the measured data and the model predictions in all cases, using the
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. Experimental data set (NO3-, NO2-,
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secant method embedded in AQUASIM 2.1d
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N2O, TDS, S0 and SO42-) from Batch test I with an average granule size of 700 µm of
206
the sulfide-based autotrophic denitrifying culture were used to calibrate the model.
207
Model validation was then carried out with the calibrated model parameters using the
208
other two sets, i.e., one also from Batch test I but with an average granule size of 1350
209
µm and the other N2O dynamics data under different initial S/N ratios with 700-µm
210
granular sludge from Batch test II. A one-dimension granule-based model was utilized
211
to simulate the granular sulfide-based autotrophic denitrifying culture used in Yang et
212
al.
213
components involved in the biological reactions, the first step is their diffusion into
214
the granule where the reactions take place. Discretization in time of the partial-
215
differential equation was used to describe the reaction-diffusion kinetics in a spherical
216
particle
217
possible difference of N2O production resulting from diffusional limitation in
218
different granule sizes would be properly modeled with the same biological model
219
presented in Table S2 of Supporting Information. A granule diameter (i.e., 700 or
220
1350 µm) was used, depending on the types of batch experiments. The number of
221
granules was calculated according to Gonzalez‐Gil et al. 49.
31
, according to the method previously described in Ni et al.
47
. For the soluble
48
. Biomass in the granules is fixed without migration. In this way, any
222
To further verify the validity and applicability of the model, we also applied the
223
model to evaluate the batch experimental data sets of NO3-, NO2-, N2O and SO42- from
224
the sulfur-based autotrophic denitrifying culture. For this culture, Processes 1 – 3
225
were not considered in the model due to the absence of sulfide in batch tests (Figure
226
1). Therefore, only two model parameters , (maximum reaction rate of Process 5)
227
and , (maximum reaction rate of Process 6) were calibrated for this culture using
228
the batch experimental data at initial nitrate concentrations of 50 mg-N/L. The
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obtained parameter values and the model were then validated using the dada sets at
230
different initial nitrate concentrations (i.e., 30 and 40 mg-N/L).
231 232
RESULTS
233
N2O production in sulfide-based AD. The calibration of the new model
234
involved optimizing four key parameter values (Table 1) by fitting simulation results
235
to the experimental data from Batch test I of sulfide-based autotrophic denitrifying
236
sludge with an average granule size of 700 µm. The predicted NO3-, NO2-, N2O, TDS,
237
S0 and SO42- profiles with the established model are shown in Figure 2a and 2b, along
238
with the experimental results. Sulfide was used up via anoxic autotrophic sulfide
239
oxidation within the first 15 min, along with accumulation of sulfur, nitrite and N2O.
240
During this period, anoxic autotrophic sulfur oxidation occurred simultaneously, as
241
indicated by sulfate production. Afterwards, anoxic sulfur oxidation continued, but
242
accompanied with a much lower nitrate consumption rate as compared to the previous
243
step. Accordingly, N2O concentrations gradually decreased to undetectable ranges in
244
the next 1 h. The developed model captured all these trends well. The good agreement
245
between these simulated and measured data supported that the developed model
246
properly captures the relationships among N2O dynamics, nitrogen reduction and
247
sulfide oxidation during sulfide-driven AD process.
248
The calibrated parameter values giving the optimum model fittings with the
249
experimental data are listed in Table 1. Maximum reaction rates of sulfide-driven AD
250
(i.e., ,
, 2 and , for Processes 1, 2, and 3, respectively) are about one order ,2
251
magnitude higher than those of sulfur-driven AD (i.e.,
252
Processes 4, 5, and 6, respectively), in agreement with the fact that anoxic autotrophic
253
sulfide oxidation is a faster reaction than that of sulfur oxidation
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, 0 ,2
50
and
,
for
. The calibrated
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,
255
Process 5) values are 0.317 and 0.021 h-1, which are in the same order of magnitude
256
with the literature reported values of 0.135 – 0.218 and 0.083 – 0.093 h-1, respectively
257
41, 43
258
than those of
259
reaction rate of Process 2), thus leading to a substantial N2O accumulation under the
260
experimental conditions of S:N ratio of 5 during sulfide-driven denitrification process;
261
while no N2O accumulation was observed during sulfur-driven denitrification process
262
due to the comparable values of ,
, 0 and , (maximum reaction rates for ,2
263
Processes 4, 5, and 6, respectively).
(maximum reaction rate of Process 2) and
,
(maximum reaction rate of
. The estimated , (maximum reaction rate of Process 3) value is much lower
,
(maximum reaction rate of Process 1) and
,
(maximum
264
The developed model and the calibrated parameter set (Table 1) were then further
265
tested for their ability to predict N2O dynamics in another data set from Batch test I of
266
sulfide-based autotrophic denitrifying sludge but with an average granule size of 1350
267
µm. The model predictions and the experimental results are shown in Figure 2c and
268
2d. Overall, a slightly lower nitrate consumption as well as nitrite and N2O
269
accumulation rates were observed, due to the impacts of granule size on mass transfer
270
51
271
measured data of concentrations in the validation experiment, which supports the
272
validity of the developed model.
. The validation results showed that the model predictions well matched the
273
The experimental results (i.e., N2O reduction under different initial S/N ratios)
274
obtained from Batch test II of sulfide-based autotrophic denitrifying sludge were also
275
used to evaluate the developed model with the calibrated parameter set (Table 1) and
276
the same parameters in Table S4 in terms of N2O dynamics (Figure 3). The required
277
sulfide for the complete N2O (12 mg-N/L) reduction to nitrogen gas is about 3.43 mg-
278
S/L with sulfide being oxidized to sulfate according to the stoichiometric equation:
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HS-+4 N2O+7H+ = SO42-+4 N2+4 H2O, corresponding to a S:N ratio of 0.29. S:N
280
ratios of 0.8, 2.5 and 5.0 used in batch tests would ensure the complete N2O reduction
281
during AD. Rather than suppression, higher S:N ratio (i.e., 5.0 g-S/g-N) promoted
282
N2O reduction and thus enhanced sulfide-based AD process as compared to lower S:N
283
ratios (i.e., 0.8 and 2.5 g-S/g-N). Overall, the model predictions matched the
284
experimental results in Figure 3, again supporting the validity of the developed model.
285
N2O production in sulfur-based AD. Due to the absence of sulfide, only two
286
parameter values, i.e.,
287
(maximum reaction rate of Process 6) (Table 1) were calibrated for sulfur-based
288
denitrification process, by comparing simulation results to the batch experimental data
289
from Zhang et al. 29 with an initial nitrate of 50 mg-N/L (Figure 4). At the beginning 7
290
h of the batch test for this culture, both nitrite and N2O gradually accumulated along
291
with the reduction of nitrate. After nitrate depletion, nitrite was consumed up within
292
ca. 10 h. Afterwards, N2O was the only electron acceptor for sulfur oxidation and
293
used up within ca. 24 h. Accordingly, higher sulfate production rates were observed in
294
the first 10 h while lower rates afterwards, coincident with the lower sulfur conversion
295
rate by N2O as compared to nitrate and nitrite. The model captured these trends
296
reasonably well. The long sampling interval of nitrite and N2O (ca. 2 hours per
297
sample) and N2O sampling method (manually rather than using N2O microsensor)
298
during sulfur-based AD might decrease the data resolution and lead to slight
299
mismatches between model prediction and experimental data. However, the model
300
has captured the overall trends of both nitrite and N2O reasonably well. In addition,
301
the accuracy of prediction of nitrite accumulation is highly important for the
302
simulation of N2O emission in the developed 3-step AD model due to the fact the N2O
303
production kinetics would be directly regulated by the availability of nitrite in the
,
(maximum reaction rate of Process 5) and
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system as indicated in Tables S2 and S3 of Supporting Information, which has been
305
also confirmed by our modeling results in this work.
306
The obtained , (maximum reaction rate of Process 5) and , (maximum
307
reaction rate of Process 6) for sulfur-based denitrifying culture were 0.035 and 0.010
308
h-1, comparable to those of 0.021 and 0.017 h-1 for sulfide-based denitrifying culture
309
respectively (Table 1), again supporting the validity of the developed model for
310
different autotrophic denitrifying cultures. The relative low standard deviations of the
311
estimated , and , for sulfur-based denitrifying culture (Table 1) also indicates
312
the reliability of the obtained parameter values. However, a larger difference between
313
,
314
this case.
and , (i.e., 3.5 times) led to a much higher and longer N2O accumulation in
315
The developed model was then validated with experimental data of NO3-, NO2-
316
and N2O from batch tests of sulfur-based denitrifying culture with an initial nitrate
317
concentration of 30 and 40 mg-N/L, respectively (Figure 5). As shown in Figure 5,
318
substrate dynamics were similar to those at the initial nitrate concentration of 50 mg-
319
N/L, except for the higher N-species consumption rates (Figure 5) due to lower initial
320
nitrate concentrations. The good agreement between simulations and measured results
321
further demonstrated the validity of the developed model.
322 323 324
DISCUSSION
Sulfide- or sulfur-based AD process is a promising and efficient process for 6, 12, 13
325
nitrate removal from contaminated groundwater insufficient of organic matter
326
However, recent studies have revealed substantial N2O accumulation during this
327
process
328
and predicting N2O emission
29-32
.
. Modeling of N2O production is of great importance for understanding 36, 37
, therefore being a powerful tool to support
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operation optimization for mitigation purpose during AD process with sulfide or
330
sulfur as electron donors. However, the previously developed AD models have not
331
recognized N2O formation and thus are not capable to describe N2O dynamics during
332
this process 39-41, 43.
333
In this work, a new mathematical model is developed to predict N2O production
334
in sulfide- and sulfur-based AD process for the first time. The model validity was
335
confirmed by several independent data sets from two different cultures
336
different operating conditions. The set of best-fit parameter values are shown in Table
337
1, which are consistently within a relatively narrow range. The parameter values
338
obtained were robust in their ability to predict nitrate, nitrite, N2O, and S-species
339
dynamics under different operational conditions, indicating that the developed model
340
is applicable for different AD systems. It should be note that the parameter value of
341
yield coefficient for sulfide-based autotrophic denitrifiers (YSOB) was directly adapted
342
from that of sulfide-based autotrophic denitrifiers to avoid over-parameterisation, in
343
order to construct a practically applicable N2O model that is able to predict N2O
344
emissions from sulfide- and sulfur-based AD processes. This is acceptable as the yield
345
coefficient for SOB is not significantly thermodynamically variable during sulfide-
346
and sulfur-based AD processes due to the similar microbial community groups, which
347
has been confirmed in previous studies 8, 43. In addition, the sensitive analysis on YSOB
348
revealed that the parameter value of YSOB is not sensitive in terms of N2O production
349
in the system.
29-31
with
350
Modeling results demonstrated that a substantial amount of N2O could
351
accumulate during the initial stage of sulfide-based AD process due to the relatively
352
lower autotrophic N2O reduction rate when utilizing sulfide. Correspondingly, the
353
estimated , (maximum reaction rate of Process 3) value is much lower than those
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354
of ,
(maximum reaction rate of Process 1) and , (maximum reaction rate of
355
Process 2) (Table 1). Therefore, great care should be taken to avoid turbulence
356
induced N2O emission during the fast autotrophic nitrogen reduction with sulfide as
357
electron donor. It has been reported that sulfide inhibition on N2O reduction could be
358
due to sulfide precipitation of copper needed for nitrous oxide reductase activity
359
However, sulfide-quinone reductase is a membrane-bound enzyme 53, and the sulfide
360
oxidase produced by sulfide-driven autotrophic denitrifiers can instantly oxidize
361
sulfide into sulfur and store the sulfur globules in the periplasmic space, leading to
362
continuous electron transport that is mediated by membrane bound electron transport
363
54
364
dissolved sulfide in the cell periplasm and thus likely not affecting the N2O reduction
365
activity in sulfide-based AD processes
366
reaction rate of Process 6) value is lower than those of ,
(maximum reaction rate
367
of Process 4) and , (maximum reaction rate of Process 5) (Table 1), thus resulting
368
in substantial N2O accumulation during sulfur-based AD process. Such difference was
369
not observed in sulfide-based denitrifying culture ( ,
, 0 and , values are ,2
370
comparable, Table 1), likely due to the differences in autotrophic denitrifying
371
community under different feeding conditions (i.e., sulfide or sulfur). For sulfur-based
372
AD, Thiobacillus and Sulfurimonas formed the dominant sulfur-oxidizing autotrophic
373
denitrifiers according to Zhang et al.
374
Arcobacter sp., and Thiobacillus were the dominant autotrophic denitrifiers
375
Another study reported the dominant autotrophic denitrifiers were Thiobacillus,
376
Azoarcus, and Sulfurovum
377
structure likely determines the difference in terms of their kinetic parameters between
378
sulfide- and sulfur-based AD. In addition, the surface area, morphology, particle size
52
.
. Hence, the copper co-factor in N2O reductase might not be precipitated by
31
. Similarly, the obtained
,
(maximum
30
. For sulfide-based AD, Thiomicrospira, 55
.
56
. Therefore, the difference in microbial community
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379
and source (in-situ generation or external addition) of sulfur might also affect sulfur
380
mass transfer and thus influence the reaction rates of sulfur oxidation during both
381
sulfide- and sulfur-based AD 12. For example, AD rates were shown to increase with
382
surface area when considering a range of coarse sulfur particles from 2.8 to 16 mm in
383
diameter 39. Also, the dependence of AD rates on sulfur concentration occurred up to
384
a relatively high concentration of sulfur with coarse particles, but such dependence
385
was only evident up to much lower sulfur concentrations with fine particles
386
AD rates were also reported to depend on the particle size, i.e., increasing with the
387
decrease of sulfur granule size 58. In addition, in-situ sulfur generated during sulfide-
388
driven AD can be instantly stored in the periplasmic space of the cell and lead to
389
better electron transport, and thus likely exhibiting higher AD rates than that of
390
externally dosed sulfur
391
an appropriate reaction time is required to maintain in order to achieve complete
392
denitrification for N2O mitigation purpose. In addition,
393
(0.010 – 0.017 h-1) for autotrophic N2O reduction are smaller than widely used anoxic
394
growth rate on N2O by heterotrophic denitrifiers, e.g., 0.134 h-1 33, likely due to the
395
fact that heterotrophic and autotrophic denitrifying cultures utilize completely
396
different substrates as electron donors (carbon and sulfide/sulphur, respectively) for
397
growth, thus resulting in distinct denitrifying microbial community with different
398
growth kinetics on nitrogen. This again suggests the important role of sulfide- and
399
sulfur-based AD process in N2O production and emission.
57
. The
53, 54
. Overall, for both sulfide- and sulfur-based AD process,
,
(0.076 h-1) and
,
400
The developed model in this work is useful to design and optimize sulfide- or
401
sulfur-based AD process in terms of N2O emission. In particular, sludge retention
402
time (SRT) is an important process parameter determining the nitrate removal
403
efficiency and N2O emission of the AD process. To reveal the detailed role of SRT,
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404
model simulations were conducted to study the effect of SRT on N2O emission in
405
both continuous-flow sulfide-based and sulfur-based AD systems through varying the
406
ratio between the return and waste sludge. The simulation system was designed
407
according to that used in Liu et al.
408
which is a typical concentration in contaminated groundwater 19. The influent sulfide
409
concentration was 175 mg-S/L for sulfide-based system, while the influent sulfur was
410
set at 1000 mg-S/L for sulfur-based system as sulfur is not a limiting factor in such
411
system operation. Figure 6 shows N2O emission factors in both systems with >95%
412
nitrate removal at a HRT of 2 h and SRTs ranging from 25 to 400 d, similar to actual
413
groundwater AD field applications
414
investigated in order to provide an overall insight into the SRT impact, which is
415
valuable as there is an increasing trend applying prolonged SRT reactors, e.g.,
416
membrane bioreactors, for nitrogen removal from groundwater and wastewater
417
59, 60
418
optimum nitrate removal efficiency (i.e., >95%) along with the enhanced nitrate
419
removal efficiency due to the increase of activated sludge concentration (data not
420
shown), while achieving a significant N2O mitigation, i.e., 2% to 0.2% for sulfide-
421
based AD process, and 18% to 2% for sulfur-based AD process. However, such an
422
extended SRT might induce a lower active biomass fraction in the sludge and a higher
423
organic substance in the effluent due to the increasing production of soluble microbial
424
products 61.
33
. The influent nitrate was fixed at 35 mg-N/L,
20, 30
. Such a broad SRT ranges have been
18, 30,
. With the increase of SRT from 25 to 250 d, both systems could retain the
425
For sulfide-based AD process, initial S/N ratio also plays an important role in
426
regulating N2O emission, as indicated by model simulation results from this
427
continuous-flow system with varying sulfide concentrations at an influent nitrate of
428
35 mg-N/L, a SRT of 250 d and a HRT of 2 h while achieving >95% nitrate removal
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429
(Figure 7). As expected, increasing S/N (e.g., 2.5 to 6 g-S/g-N) ratio led to a
430
substantial decrease in N2O emission (e.g., 1.9% to 0.1%), due to the relative fast
431
autotrophic N2O reduction rate by sulfide. However, increasing S/N ratio also resulted
432
in the more extent of incomplete sulfide oxidation, i.e., more percentage of sulfur in
433
the effluent. Therefore, considerations should be taken on the optimum S/N ratio, in
434
order to simultaneously minimize operation cost and N2O emission. Alternatively, an
435
effective way to recover extra sulfur during this process should be adopted 62.
436
In addition to SRT and S:N ratio, pH may also influence the AD system
437
performance as lower pH could result in more free nitrous acid and thus possibly have
438
an inhibition on AD process, likely leading to higher nitrite accumulation and thus
439
more N2O emissions 31, 32, 63.
440
Both sulfide- and sulfur-based AD processes produce a large amount of sulfate.
441
The US EPA allowable sulfate limit in drinking water is 250 mg/L 19. Theoretically,
442
about 58 mg-N/L and 33 mg-N/L nitrate in groundwater can be denitrified with
443
sulfide and sulfur, respectively, without exceeding the above sulfate limit if
444
groundwater does not contain background sulfate. Therefore, for high-concentration
445
nitrate removal from groundwater, carbon source is often supplied to achieve
446
simultaneous heterotrophic and AD process in order to control sulfate formation 19, 29.
447
Under such circumstances, the competition for nitrogen compound between
448
heterotrophic and autotrophic could induce a different scenario on N2O emission,
449
which is not accounted for in current study. However, the developed model is based
450
on the activated sludge model (ASM) and thus can be readily integrated with the
451
ASM-based heterotrophic denitrifying N2O models
452
of overall N2O dynamics if simultaneous heterotrophic and AD processes are applied
453
for high-concentration nitrate removal.
33, 37
for achieving the prediction
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454
In summary, a new mathematical model is proposed to describe N2O production
455
in sulfide- and sulfur-based AD process for the first time. The developed model was
456
successfully applied to reproduce experimental data obtained from two AD systems
457
with different conditions, and clearly showed the potential wide applicability of the
458
developed model. Modeling results demonstrated substantial N2O accumulation due
459
to the relatively low N2O reduction rate during sulfide- and sulfur-based AD
460
processes. The increasing SRT would substantially reduce N2O emission in both
461
systems. The increasing S/N ratio would also lead to a substantial decrease in N2O
462
emission from the sulfide-based AD process.
463 464
ACKNOWLEDGEMENTS
465
This work was partially supported by the Recruitment Program of Global Experts
466
and the Natural Science Foundation of China (No. 51578391). Dr. Yiwen
467
Liu acknowledges the support from the UTS Chancellor's Postdoctoral Research
468
Fellowship. The authors are grateful to the research collaboration among University
469
of Technology Sydney, Tongji University, Ghent University, Hunan University and
470
Sichuan University.
471 472
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670
Table Caption
671
Table 1. Best-Fit Parameters with 95% Confidence Intervals (h-1).
672 673
Figure Captions
674
Figure 1. Schematic representation of the proposed N2O model concept in AD
675
processes.
676 677
Figure 2. Model calibration and validation with experimental data from Batch test I
678
of the sulfide-based autotrophic denitrifying culture: (a) NO3-, NO2- and N2O profiles
679
with 700-µm granular sludge; (b) TDS, S0 and SO42- dynamics with 700-µm granular
680
sludge; (c) NO3-, NO2- and N2O profiles with 1350-µm granular sludge; and (d) TDS,
681
S0 and SO42- dynamics with 1350-µm granular sludge.
682 683
Figure 3. Model evaluation with experimental data obtained from Batch test II of
684
sulfide-based autotrophic denitrifying sludge on N2O reduction under different initial
685
S/N ratios.
686 687
Figure 4. Model calibration with experimental data on (a) NO3-, NO2-, N2O and (b)
688
SO42- from batch test of sulfur-based denitrifying culture with an initial nitrate
689
concentration of 50 mg-N/L.
690 691
Figure 5. Model validation with experimental data on NO3-, NO2- and N2O from
692
batch tests of sulfur-based denitrifying culture with an initial nitrate concentration of
693
(a) 30 mg-N/L; and (b) 40 mg-N/L.
694 695
Figure 6. Model simulation of the effect of SRT (25 – 400 d) on N2O accumulation
696
while achieving >95% nitrate removal during continuous-flow (a) sulfide-based and
25 Environment ACS Paragon Plus
Environmental Science & Technology
697
(b) sulfur-based AD processes at steady state. The simulation conditions for both
698
systems are: HRT = 2 h and influent nitrate = 35 mg-N/L. The influent sulfide
699
concentration is 175 mg-S/L for (a) sulfide-based system, while the influent sulfur is
700
set at 1000 mg-S/L for (b) sulfur-based system as sulfur is not a limiting factor in such
701
system operation.
702 703
Figure 7. Model simulation of the steady-state N2O accumulation and residual
704
effluent sulfur percentage while achieving >95% nitrate removal in a continuous-flow
705
sulfide-based autotrophic denitrifying system as a function of S/N ratio. The
706
simulation conditions are: HRT = 2 h, SRT = 250 d and influent nitrate = 35 mg-N/L.
707
Such simulation is not performed for sulfur-based autotrophic denitrifying system
708
since it is not feasible to control S/N ratio with sulfur as electron donor.
26 Environment ACS Paragon Plus
Page 26 of 34
Page 27 of 34
Environmental Science & Technology
709
710
Table 1. Best-Fit Parameters with 95% Confidence Intervals (h-1).
d
Process
Parameter
1 2 3 4 5 6
,
, , ,
, ,
Sulfide-based autotrophic denitrifying culture 0.245 d 0.317±0.024 0.076±0.002 0.02 d 0.021±0.002 0.017±0.001
Sulfur-based autotrophic denitrifying culture ------0.02 d 0.035±0.002 0.010±0.001
default value adapted from literature.
711
27 Environment ACS Paragon Plus
Environmental Science & Technology
712 713
Figure 1. Schematic representation of the proposed N2O model concept in AD
714
processes.
715
28 Environment ACS Paragon Plus
Page 28 of 34
Environmental Science & Technology
Concentration (mg-N/L)
40
a
300
measured N2O modelled N2O
30
measured NO3modelled NO3measured NO2-
20
modelled NO2
10 0 0.0
0.5
1.0
1.5
2.0
-
2.5
Concentration (mg-S/L)
Page 29 of 34
200 150 100 50 0 0.0
3.0
modelled TDS measured TDS modelled S0 measured S0 modelled SO42measured SO42-
b
250
0.5
1.0
Time (h)
30
716
measured NO3modelled NO3measured NO2-
20
modelled NO2-
10 0 0.0
300
measured N2O modelled N2O
c
0.5
1.0
1.5
2.0
2.5
3.0
Concentration (mg-S/L)
Concentration (mg-N/L)
40
1.5
2.0
2.5
3.0
Time (h)
d
modelled TDS measured TDS modelled S0 measured S0 modelled SO42measured SO42-
250 200 150 100 50 0 0.0
0.5
Time (h)
1.0
1.5
2.0
2.5
3.0
Time (h)
717
Figure 2. Model calibration and validation with experimental data from Batch test I
718
of the sulfide-based autotrophic denitrifying culture: (a) NO3-, NO2- and N2O profiles
719
with 700-µm granular sludge; (b) TDS, S0 and SO42- dynamics with 700-µm granular
720
sludge; (c) NO3-, NO2- and N2O profiles with 1350-µm granular sludge; and (d) TDS,
721
S0 and SO42- dynamics with 1350-µm granular sludge.
722
29 Environment ACS Paragon Plus
Environmental Science & Technology
Page 30 of 34
30 measured at 0.8 g-S/g-N modelled at 0.8 g-S/g-N measured at 2.5 g-S/g-N modelled at 2.5 g-S/g-N measured at 5.0 g-S/g-N modelled at 5.0 g-S/g-N
N2O (mg-N/L)
25 20 15 10 5 0
0
1
2
3
4
5
6
7
8
Time (h)
723 724
Figure 3. Model evaluation with experimental data obtained from Batch test II of
725
sulfide-based autotrophic denitrifying sludge on N2O reduction under different initial
726
S/N ratios.
30 Environment ACS Paragon Plus
Environmental Science & Technology
Concentration (mg-N/L)
60 50
measured N2O modelled N2O
40
measured NO3-
30
modelled NO3measured NO2-
20
modelled NO2-
10 0
727
a
0
5
10
15
20
25
Sulfate concentration (mg/L)
Page 31 of 34
1000
b
modelled SO42measured SO42-
800 600 400 200 0
0
5
Time (d)
10
15
20
25
Time (d)
728
Figure 4. Model calibration with experimental data on (a) NO3-, NO2-, N2O and (b)
729
SO42- from batch test of sulfur-based denitrifying culture with an initial nitrate
730
concentration of 50 mg-N/L.
31 Environment ACS Paragon Plus
Environmental Science & Technology
60
50
measured N2O modelled N2O
40
measured NO3-
30
modelled NO3measured NO2-
20
modelled NO2-
10 0
731
a
0
5
10
15
20
25
Concentration (mg-N/L)
Concentration (mg-N/L)
60
Page 32 of 34
b
50
measured N2O modelled N2O
40
measured NO3-
30
modelled NO3measured NO2-
20
modelled NO2-
10 0
0
5
Time (h)
10
15
20
25
Time (h)
732
Figure 5. Model validation with experimental data on NO3-, NO2- and N2O from
733
batch tests of sulfur-based denitrifying culture with an initial nitrate concentration of
734
(a) 30 mg-N/L; and (b) 40 mg-N/L.
32 Environment ACS Paragon Plus
5
100
a
80
3
60 N2O emission factor
2
Effluent S0
1 0
0
40 20
0 50 100 150 200 250 300 350 400
Effluent S0 ratio (%)
4
N2O emission per N load (%)
Environmental Science & Technology
N2O emission per N load (%)
Page 33 of 34
20
b
15 10 5 0
0
50 100 150 200 250 300 350 400
SRT (d)
735
SRT (d)
736
Figure 6. Model simulation of the effect of SRT (25 – 400 d) on N2O accumulation
737
while achieving >95% nitrate removal during continuous-flow (a) sulfide-based and
738
(b) sulfur-based AD processes at steady state. The simulation conditions for both
739
systems are: HRT = 2 h and influent nitrate = 35 mg-N/L. The influent sulfide
740
concentration is 175 mg-S/L for (a) sulfide-based system, while the influent sulfur is
741
set at 1000 mg-S/L for (b) sulfur-based system as sulfur is not a limiting factor in such
742
system operation.
33 Environment ACS Paragon Plus
743
Page 34 of 34
5
100
4
80
3
60
2
N2O emission factor Effluent S0
1 0 2.5
3.0
3.5
4.0
4.5
5.0
40 20
5.5
Effluent S0 ratio (%)
N2O emission per N load (%)
Environmental Science & Technology
0 6.0
S:N
744
Figure 7. Model simulation of the steady-state N2O accumulation and residual
745
effluent sulfur percentage while achieving >95% nitrate removal in a continuous-flow
746
sulfide-based autotrophic denitrifying system as a function of S/N ratio. The
747
simulation conditions are: HRT = 2 h, SRT = 250 d and influent nitrate = 35 mg-N/L.
748
Such simulation is not performed for sulfur-based autotrophic denitrifying system
749
since it is not feasible to control S/N ratio with sulfur as electron donor.
34 Environment ACS Paragon Plus