Accepted Manuscript Identification of the pollutants’ removal and mechanism by microalgae in saline wastewater Hoang Nhat Phong Vo, Huu Hao Ngo, Wenshan Guo, Yiwen Liu, Soon Woong Chang, Dinh Duc Nguyen, Phuoc Dan Nguyen, Xuan Thanh Bui, Jiawei Ren PII: DOI: Reference:
S0960-8524(18)31670-5 https://doi.org/10.1016/j.biortech.2018.12.026 BITE 20783
To appear in:
Bioresource Technology
Received Date: Revised Date: Accepted Date:
17 October 2018 7 December 2018 9 December 2018
Please cite this article as: Vo, H.N.P., Ngo, H.H., Guo, W., Liu, Y., Chang, S.W., Nguyen, D.D., Nguyen, P.D., Bui, X.T., Ren, J., Identification of the pollutants’ removal and mechanism by microalgae in saline wastewater, Bioresource Technology (2018), doi: https://doi.org/10.1016/j.biortech.2018.12.026
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Identification of the pollutants’ removal and mechanism by microalgae in
2
saline wastewater
3
Hoang Nhat Phong Voa, Huu Hao Ngoa,*, Wenshan Guoa, Yiwen Liua, Soon Woong Changb,
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Dinh Duc Nguyenb, Phuoc Dan Nguyenc, Xuan Thanh Buic, Jiawei Rena
5 6
aCentre
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University of Technology Sydney, Sydney, NSW 2007, Australia
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bDepartment
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cFaculty
for Technology in Water and Wastewater, School of Civil and Environmental Engineering,
of Environmental Energy Engineering, Kyonggi University, 442-760, Republic of Korea
of Environment & Natural Resources, Ho Chi Minh City University of Technology (HCMUT)-
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Vietnam National University, Dist. 10, Ho Chi Minh city, Vietnam
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*Correspondence
12
Abstract
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This study investigated the growth dynamics of a freshwater and marine microalgae with
14
supported biochemical performance in saline wastewater, the pollutants assimilation by a
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developed method, and the mechanism of salinity’s effect to pollutants assimilation. Maximal
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biomass yield was 400 to 500 mg/L at 0.1 to 1% salinity while the TOC, NO3--N, PO43--P
17
were eliminated 39.5-92.1%, 23-97.4% and 7-30.6%, respectively. The biomass yield and
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pollutants removal efficiencies reduced significantly when salinity rose from 0.1 to 5%. The
19
freshwater Chlorella vulgaris performed its best with a focus on TOC removal at 0.1%
20
salinity. The marine Chlorella sp. was prominent for removing NO3 - N at 0.1 to 1% salinity.
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Through the developed method, the freshwater C. vulgaris competed to the marine
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microalgae referring to pollutants assimilation up to 5% salinity. This study unveiled the
23
mechanism of salinity’s effect with evidence of salt layer formation and salt accumulation in
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microalgae.
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Keywords: saline wastewater, microalgae, pollutants assimilation, salinity
authors: Huu Hao Ngo, Email:
[email protected]
1
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1.
28
Saline wastewater is a recalcitrant source of various pollutants and inorganic salts (Al‐Jaloud
29
et al., 1993). Of the inorganic salts, they encompass NaCl, Na2SO4, MgSO4, KNO3 and
30
NaHCO3 typically (Kester et al., 1967). Those inorganic salts are generated from several
31
sources, including, but not limited to, agricultural run-off in saline soil zones (McCool et al.,
32
2013), coastal areas (Feng et al., 2004), industrial activities (Abou-Elela et al., 2010;
33
Figueroa et al., 2008; Guo et al., 2018; Lefebvre and Moletta, 2006; Lefebvre et al., 2005;
34
Song et al., 2018) and secondary streams, such as concentrated effluent of membrane and
35
physical/chemical processes (Wen et al., 2018). Salinity of saline wastewater varies in a
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broad range and inconsistently of its sources. Most authors report salinity of saline
37
wastewater from 3% (Adenan et al., 2013) to 15% (Kubo et al., 2001). Of the tannery
38
factories in Nigeria, the TDS concentration is from 65.4 to 1281.1 mg/L (Akan et al., 2007).
39
Also, in the soaking and tanning wastewater streams, the TDS concentrations are 22,000 –
40
33000 and 29,000 – 67,000 mg/L, respectively (Sundarapandiyan et al., 2010).
41
Saline wastewater is a major environmental problem occurring in both terrain and water
42
reservoir contexts. Inorganic salts are known to severely compromise crop production, reduce
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water infiltration capacity of saline land and increase salinization of freshwater (NSW
44
Government, 2003; QLD Government, 2013). Furthermore, nutrients, heavy metals and
45
organic pollutants of saline wastewater are responsible for eutrophication and toxic to
46
ecological systems and human health (Lefebvre and Moletta, 2006; Liang et al., 2017). Saline
47
wastewater costs Australian government up to $100 million per year for its consequences
48
(NSW Government, 2003).
Introduction
2
49
For these reasons the treatment of saline wastewater is a very critical issue. The high
50
concentrations of inorganic salts make saline wastewater a refractory one. Interest has grown
51
in developing advanced technologies to manage these concerns. Zeolite (Wen et al., 2018),
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anaerobic processes (Xiao and Roberts, 2010) and membrane process (Nguyen et al., 2018)
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are being increasingly reported as able to treat saline wastewater efficiently. However, saline
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wastewater treatment is a costly process (Wen et al., 2018). For example, the synthetic
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zeolites’ price was US$2,000,000 per metric ton (Wen et al., 2018).
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Among those options, microalgae process is a low cost and ‘green’ or eco-friendly one.
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Microalgae possess prominent characteristics for biofuel, biomaterial production and
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wastewater remediation. Of the biofuel production, they contain abundant feedstocks, such as
59
lipid, fatty acid and carbohydrate (Sudhakar et al., 2017). Microalgae are also a profound
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source of agar, alginates and carrageenan serving for biomaterial production (Mata et al.,
61
2010). Regarding environmental applications, microalgae have been implemented in the
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remediation of wastewater. Those harmful nutrients, micro-pollutants, heavy metals and
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organic pollutants can be removed by microalgae extensively (Escapa et al., 2015; Fan et al.,
64
2018; Qiu et al., 2017). Under saline conditions, microalgae can adjust their biochemical
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identity, change biomass yield, pigment formation, and the efficiency of pollutants removal
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(Babatsouli et al., 2015; Church et al., 2017; Zhou et al., 2017). Unlike other processes,
67
microalgae offer encouraging revenue from their biomass and pigments. Therefore,
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microalgae are the right choice for saline wastewater treatment.
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Although microalgae have been established for saline wastewater treatment, there are still
70
shortcomings identified from the previous researches and they are highlighted as below:
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Limited types of microalgae have been employed for saline wastewater treatment. The
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performance of freshwater and marine strains is also not compared sufficiently. For
3
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instance, Church et al. (2017) and Shen et al. (2015) utilized marine Chlorella
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vulgaris. Zhou et al. (2017) applied freshwater Spirulina platensis while Kim et al.
75
(2016) employed Acutodesmus obliquus, but none information of strain was given.
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Thus, it is not possible to generate an accurate and comprehensive comparison of
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microalgae’s ability for saline wastewater treatment. The pollutants assimilation efficiency of microalgae is inconsistent and deviant
78 79
because of calculation methods. It is computed by the discrepancies of pollutants that
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appear in the influent and effluent concentrations. It ignores other processes such as
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precipitation, biosorption, and hydrolysis which can occur in a reactor. Therefore, it
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would affect the results of assimilation efficiency. Most authors report that salinity impairs the pollutants assimilation of microalgae
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(Chen et al., 2017; Church et al., 2017). Nevertheless, the mechanism of the issue was
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not fully identified.
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Therefore, to clarify these drawbacks, the objectives of this research paper are to: (1)
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investigate the growth dynamics with supported biochemical performance; (2) examine
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pollutants’ assimilation with developed methods; and (3) study the mechanism of salinity
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affected pollutants’ assimilation of freshwater and marine microalgae strains in different
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salinities.
91
2.
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2.1 Materials
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2.1.1 Microalgae strains
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In this research, three types of microalgae were purchased from National Algae Supply
95
Service (Tasmania, Australia). The algae species included Chlorella vulgaris (freshwater
96
microalgae), Chlorella sp. and Stichococcus sp. (marine microalgae) with respective strains
Materials and methods
4
97
of CS-41, CS-436 and CS-437. Those microalgae strains were cultivated in 50 ml mediums
98
and transferred to new cultures every 4 weeks for the purpose of creating stock solutions. The
99
freshwater C. vulgaris was cultured in the MLA medium while the marine microalgae
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Chlorella sp. and Stichococcus sp. were fed in the f/2 medium. AusAqua Company
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(Australia) supplied the mentioned mediums. These stock cultures were operated in the
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following conditions: temperature of 20±1 oC; and continuous illumination intensity of 4.35 ±
103
0.03 klux. The illumination was provided by a LED light bulb (11W, 220-240v) (Philip,
104
Australia). The illumination level was measured by a light meter, model QM1584 (Digitech,
105
Australia).
106
2.1.2 Artificial wastewater
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In this study, artificial wastewater was experimented and it was prepared by distilled water
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with spiked chemicals. The values of total organic carbon (TOC), NO3--N and PO43--P were
109
adjusted to 300, 60 and 15 mg/L in the artificial wastewater, respectively. The chemicals
110
C6H12O6, KH2PO4, NH4Cl were used to create TOC, NO3--N and PO43--P in artificial
111
wastewater. The trace elements were purchased from AusAqua Company (Australia) and it
112
was applied in the artificial wastewater with an advised dose of 1ml per 1000L medium.
113
2.1.3 Chemicals
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The chemicals used here, C6H12O6, KH2PO4, NaNO3, NaCl and Aceton, were purchased from
115
Merck (Australia) and they were of analytical grade quality.
116
2.2
117
The stock microalgae were cultured in media until they were stabilized given that their
118
concentration varied from 50 to 100 mg/L. Subsequently, 25 ml stock microalgae were
119
transferred to experimental bottles of 1 L, which were capped to prevent air penetration.
120
These bottles had been sterilized and filled with artificial wastewater. The magnetic stirrers
Experimental design
5
121
were used to gently mix these cultures at a steady rate of 50 rpm. The applied temperature
122
and light intensity were similar to those of the stock cultures. The hydraulic retention time
123
(HRT) was 10 d with sampling being done every 2 d. The artificial wastewater was spiked
124
with 4 levels of salinity, these being 0.1, 1, 3.5 and 5% NaCl.
125
2.3 Analytical methods
126
2.3.1 Biomass yield, optical density and growth rate
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2.3.1.1 Biomass determination
128
For biomass yield determination, a 150 mL sample was filtered through a pre-weighed 1.2
129
µm glass fiber filter paper GF/C (Whatman, Australia) (m1). The sample was then dried at
130
105 °C in 24 h until a constant weight was achieved and completely dehydrated. The sample
131
was re-weighted (m2). The biomass yield was calculated according to the formula below:
132
Biomass yield =
133
where
134
m2: sample weight after drying (mg)
135
m1: weight of filter paper (mg)
136
v: volume of sample (L)
𝑚2 ‒ 𝑚1 𝑣
(mg/L) (Eq. 1)
137 138
2.3.1.2 Optical density
139
Optical density (OD) at 680 nm was used to quantify cell density by a spectrophotometer
140
(DR1900, Hach). A correlation of OD680 and dry biomass weight in synthetic wastewater was
141
pre-determined as written in Eq. 2-4.
142
C. vulgaris: y = 0.0016x + 0.0075 (R² = 0.95) (Eq. 2) 6
143
Chlorella sp.: y = 0.0021x + 0.0222 (R² = 0.95) (Eq. 3)
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Stichococcus sp.: y = 0.002x - 0.0049 (R² = 0.98) (Eq. 4)
145
where
146
x: biomass yield (mg/L)
147
y: optical density
148
During the experiments, microalgae samples were collected as a scheduled time, analysed for
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OD values and converted to biomass yields via Eq. 2-4.
150
2.3.1.3 Specific growth rate
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The specific growth rate(s) (µ) (SGR(s)) is calculated using the following equation:
152
µ=
153
where
154
X: the dry biomass weight at time t (mg/L)
155
X0: the initial biomass weight at time t0 (mg/L)
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2.3.2 Pollutants’ assimilation rates
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The pollutants’ assimilation rates were computed following Eq. 6 as written below:
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RC, N, P = X (mg/L) %mC, N, P/d (Eq. 6)
159
Where
160
RC, N, P: assimilation rate of C, N, P at time t (mg/d)
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X: biomass weight at time t (mg/L)
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%mC, N, P: portion weight of element C, N, P measured at time t, described in sub-section
163
2.3.5.
(lnX ‒ ln𝑋0) (t ‒ 𝑡0)
(/d) (Eq. 5)
7
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d: desired HRT to estimate assimilation rate (10 d in this case)
165
2.3.3 TOC, NO3--N, PO43--P concentrations
166
The TOC concentration was analysed by Multi N/C 3100 (Analytikjena, Germany). The NO3-
167
-N, PO43--P concentrations were analysed by test kits produced by Merck (Australia), coded
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114942 and 100798, respectively. The Photometer Nova 60 (Merck, Australia) was used for
169
NO3--N, PO43--P analysis accordingly. All the samples were filtered by RC caps filter 0.2
170
microns (Merck, Australia) beforehand.
171
2.3.4 Chlorophyll a content
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The chlorophyll a analysis followed the procedure as recently used by Zhou et al. (2017). A
173
10 ml sample was centrifuged at 10,000 rpm in 10 min. The pellets were re-suspended in 10
174
mL of 90% acetone solution at 4 oC in 24 h in darkness, and then centrifuged at 4 oC, 4000
175
rpm in 15 min. The received supernatant was measured at four wavelengths: 750 nm, 664 nm,
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647 nm and 630 nm with a spectrophotometer. The 90% acetone solution was used as the
177
blank. The level of chlorophyll a was calculated as shown below:
178
Chlorophyll a (mg/L) = 11.64*(OD663-OD750) - 2.16*(OD647-OD750) + 0.1*(OD630-OD750)
179
(Eq. 7)
180
where
181
ODλ: optical density at wavelength λ (nm).
182
2.3.5 SEM and EDS
183
The surface and elemental analyses of microalgae cells were done using Scanning Electron
184
Microscopy (SEM) and Energy Dispersive X-Ray Spectroscopy (EDS), respectively (Zeiss
185
Supra 55VP, Carl Zeiss AG). Samples were filtered through glass fiber filter paper GF/C
186
(Whatman, Australia), heated for 24 h at 105 oC for dehydration, and then coated by Au/Pd 8
187
prior to SEM. The SEM images were operated at an accelerating voltage of 10 kV, and
188
multiple image magnifications at various areas were achieved for each sample. The SEM
189
analyses were employed to investigate the effect of salinities on pollutant’s assimilation of
190
microalgae. The EDS was for quantifying the pollutants’ assimilation rates and salts
191
accumulation.
192
2.3.6 Statistical analyses
193
The analyses of variance (ANOVA) was applied for statistical purposes. In details, the
194
repeated measures ANOVA was employed to examine the effect of salinities on biomass
195
yield, TOC, NO3--N and PO4--P and chlorophyll a according to the cultured time. For
196
pollutants’ assimilation, the factorial ANOVA served to investigate the impact of salinities on
197
C, N, P, Na and Cl assimilation efficiencies. All the data were presented as mean value ±
198
standard deviation (Mean ± SD) with duplicated samples.
199
3.
200
3.1 Biomass yield and growth rate
201
As can be seen from Fig. 1, the biomass yield of microalgae reduced significantly when
202
salinity increased. At 0.1 and 1% salinity, the maximum biomass yields were recorded at a
203
range from 400 to 500 mg/L, which were twice as high than 3.5 and 5% salinity. Of all
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microalgae species, the 5% salinity was observed with the lowest biomass yields that were
205
below 200 mg/L. Similar results were achieved with salinity of 3.5%; however, the biomass
206
yield rose steadily after day 8 indicating that the microalgae could adapt. Looking at the
207
performance of each strain, the salinity of 0.1% was well-suited for C. vulgaris because this
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strain preferred the freshwater environment (F(3,15)= 3.48, p<0.05). A sudden rise was noted
209
on day 4 when the biomass yield reached a maximum of 462 mg/L. The marine microalgae
Results and discussion
9
210
Chlorella sp. (F(3,15)= 5.73, p<0.05) and Stichococcus sp. (F(3,15)= 3.65, p<0.05) grew
211
substantially in saline conditions from 0.1 to 1%.
212
Compared to other studies, the achieved biomass yield was competitive. As such, Zhou et al.
213
(2017) explored the biomass yield of Spirulina platensis in salinities from 0.93 to 3.2%. After
214
10 d, the maximum biomass yield was approximately 800 mg/L, which corresponded to a
215
salinity of 2.24%. Although Zhou et al. (2017) applied the higher nutrient concentrations
216
(COD=900 mg/L, TN=130 mg/L, TP=15 mg/L) and different light:dark cycle of 14:10 h, the
217
resulting biomass yield was comparable. In another study, Kim et al. (2016) witnessed a
218
biomass yield of A. obliquus as being 6 g/L at 4 d HRT with salinity of 5.2%. This biomass
219
yield was significantly higher than reported in this study; it could be reasonably explained
220
because Kim et al. (2016) experimented with piggery wastewater of the extremely high
221
nutrient concentration (TOC = 3935 mg/L, TN = 981 mg/L, TP = 81 mg/L). Thus, the effect
222
of salinity could be alleviated by utilizing high-loading nutrient concentration. To ensure its
223
accuracy and validation, this observation requires more in-depth research. Church et al.
224
(2017) also remarked that higher salinity decreased biomass yield accordingly and it agreed
225
to the findings of this present study.
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[Insert Fig. 1]
227
With reference to SGR, a similar trend was reported wherein an increase of salinity would
228
reduce SGR of microalgae (Fig. 2) (Pandit et al., 2017; Shen et al., 2015) .
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The correlation of SGRs and saline levels fitted well with high reliability (R2>0.81). The
230
achieved SGRs were in the range of 0.1 to 0.6/d. For C. vulgaris, Church et al. (2017)
231
discovered its SGR was from 0.06 to 0.27/d which was lower than that reported in this study.
232
When salinity ranged from 0 to 2.3%, Pandit et al. (2017) also explored the highest SGRs of
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C. vulgaris and A. obliquus were 0.127/d. Based on this data, this suggests that C. vulgaris is 10
234
a better option for removing saline wastewater, and especially when the salinity ranged from
235
0.1 to 1%. Alternatively, Chlorella sp. and Stichococcus sp. are applicable for higher salinity
236
application.
237
[Insert Fig. 2]
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3.2 Performance of the biochemical system
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The photosynthesis process of microalgae includes photosystem (PSI) and photosystem II
240
(PSII) (Kebede, 1997). For PS I, the light-harvesting efficiency of photosynthetic activity is
241
related to chlorophyll a pigment. The performance of chlorophyll a is important for
242
evaluating the adaptation of microalgae in environmental stress conditions, including salinity.
243
In this study, the production of chlorophyll a was initiated actively on day 2 of three
244
microalgae; however, chlorophyll a concentrations of each microalga were different (Fig. 3).
245
For C. vulgaris, its maximum chlorophyll a concentration was 13.6 mg/L at 0.1% salinity
246
indicating it preferred this saline level (F(3,15)= 7.66, p<0.05). Regarding Chlorella sp., the
247
gradual increase of chlorophyll a was identified at salinity of 0.1 and 1% (F(3,15)= 6.57,
248
p<0.05). Likewise, Stichococcus sp. produced a significant amount of chlorophyll a at
249
salinity of 0.1 and 1%. Its chlorophyll a concentration was higher compared to the other
250
microalgae (F(3,15)= 8.44, p<0.05). After day 8, chlorophyll a concentration started to impair
251
which coincided with the reduction of biomass yield. At 3.5 and 5% salinity, the chlorophyll
252
a concentration of microalgae was very low and this explained the low nutrient consumption
253
of those salinities.
254
[Insert Fig. 3]
255
It was previously highlighted that the chlorophyll a and c concentrations in brackish algae
256
were higher than the marine one of 25% and 60%, respectively (Gylle et al., 2009). Based on
257
this evidence, marine algae were more adaptable to salinity stress because their biochemical 11
258
systems fluctuated less. According to Gu et al. (2012), the increment of salinity diminished
259
Nannochloropsis oculata’s growth rate and pigment contents (e.g., chlorophyll a, and
260
carotenoid), especially from 45 to 55 g/L of salinity concentration. The chlorophyll a
261
concentration decreased to 2.03 mg/g (Gu et al., 2012). In this study, the results explored that
262
salinity exerted a great impact on biomass yield and pigment concentration. In addition, the
263
combined effect of salinity and other environmental stresses (e.g., temperature, acid rain)
264
could worsen the effect. For example, low salinity and acid rain inhibited the
265
photosynthesis process through the reduction of chlorophyll a concentration in Ulva
266
prolifera (Li et al., 2017).
267
3.3 Pollutants’ removal
268
3.3.1 TOC removal
269
For microalgae, organic carbon is an important nutrient source of cell build up and it presents
270
in numerous saline wastewater types, such as food processing (Qin et al., 2017), agricultural
271
run-off (Karimov et al., 2009) and mariculture (Feng et al., 2004). The TOC removal
272
efficiency of microalgae differs among salinities that illustrates in Fig. 4.
273
The observed trend of TOC removal efficiency was consistent with received biomass yield.
274
The highest TOC removal efficiency happened for salinities of 0.1 and 1%. Typically for C.
275
vulgaris, 92% of TOC was removed in 10 d and this corresponded to 0.1% salinity (F(3,15)=
276
14.15, p<0.05). At 1% salinity and similar HRT, it eliminated approximately 50% of TOC.
277
For Chlorella sp., a similar amount of TOC was removed (60-80%) when salinity was 0.1
278
and 1% (F(3,15)= 14.84, p<0.05), while Stichococcus sp. illustrated better TOC removal at 1%
279
salinity (F(3,15)= 9.35, p<0.05). With regard to 3.5 and 5% salinity, TOC removal efficiency
280
improved gradually in 10 d; however, its values were less than 50%. The TOC removal
12
281
efficiency could increase after 10 d but this increased the HRT, reactor volume and
282
associated costs.
283
From those results, it can be seen that salinity wielded a critical influence on TOC removal
284
efficiency of all microalgae species. Evidently, each microalga strain adopted its own
285
particular salinity. The freshwater microalgae removed TOC competitively at high salinity
286
(e.g., 3.5 and 5%) compared to marine microalgae. In another study, Kim et al. (2016)
287
discovered that Acutodesmus obliquus eliminated 70% of dissolved organic carbon in piggery
288
wastewater at a salinity of 5.2%. Elsewhere, S. platensis removed 62 to 96% COD in mixed
289
saline wastewater (Zhou et al., 2017). As mentioned earlier, the nutrient concentrations in
290
influent wastewaters documented by Kim et al. (2016) and Zhou et al. (2017) were much
291
higher than in this study. Thus, the comparison was relatively easy to make. Pollutants’
292
removal efficiencies undertaken in our study provided better outcomes because the effects of
293
different salinities were considered.
294
[Insert Fig. 4]
295
3.3.2 NO3--N removal
296
Apart from C, N is a much needed element for microalgae growth in which NO3--N was used
297
in this work as a nutrient source. Both C. vulgaris (F(3,15)= 17.8, p<0.05) and Chlorella sp.
298
(F(3,15)= 19.5, p<0.05) removed 95% NO3--N at salinity of 0.1 and 1% (Fig. 5). During the
299
first two days, Chlorella sp. consumed NO3--N rapidly while C. vulgaris only did so
300
gradually. Stichococcus sp. utilized more NO3--N at salinity of 0.1% compared to 1% (F(3,15)=
301
12.43, p<0.05). Therefore, it can be suggested that Chlorella sp. has the potential to treat
302
NO3--N because its rapid consumption rate reduces the reactor/pond volume substantially.
303
Referring to von Alvensleben et al. (2013), Picochlorum atomus was stated as removing NO3-
304
-N more than 85% (Co=60-70 mg/L) in a saline environment of 0.2 to 3.6% salinity. Notably,
13
305
the used microalgae strain was halo-tolerant and the optimal salinity for microalgae was
306
1.1%. Congruent to von Alvensleben et al. (2013), the marine microalgae of this work
307
performed their best at a salinity of around 1% even though they associated with salinity of
308
3%.
309
[Insert Fig. 5]
310
3.3.3 PO43--P removal
311
In this study, the best removal efficiency of PO43--P was 30% that being moderately low (Fig.
312
6). With reference to C. vulgaris (F(3,15)= 18.86, p<0.05) and Chlorella sp. (F(3,15)= 13.12,
313
p<0.05), the effect of salinity on PO43--P removal efficiency was the same as TOC and NO3--
314
N. Specifically, they removed 30% of PO43--P at salinity of 0.1% which was higher than other
315
salinity. However, Stichococcus sp. consumed PO43--P differently. Among salinities of 0.1 to
316
5%, PO43--P removal efficiencies were unlikely different (F(3,15)= 3.25
0.05). It
317
can be concluded that Stichococcus sp. removed PO43--P independently to a wide range of
318
salinity from 0.1 to 5%.
319
[Insert Fig. 6]
320
To date, regarding PO43--P removal by microalgae, the results have been controversial and
321
non-conclusive. For example, after 5 d, C. vulgaris and Chlamydomonas reinhardtii removed
322
dissolved inorganic phosphorus in very small amounts at the initial concentration of 15 mg/L
323
(Shriwastav et al., 2017). Later on, in 3 d, the bacteria and microalgae consortium increased P
324
removal efficiency to 100% with an initial concentration of 6.53 mg/L (Shriwastav et al.,
325
2018). Thus, the bacterial consortium played an important part in P consumption and it was
326
more significant than microalgae. Compared to Shriwastav et al. (2017), Al Ketife et al.
327
(2016) remarked that P removal performance was notably better given that, within 10 d,
328
microalgae removed 90% of initial P concentrations of 4 to 6 mg P/L. This was due to the 14
329
higher biomass concentration of 200-500 mg/L whereas Shriwastav et al. (2017) could only
330
generate a biomass yield less than 120 mg/L. Interestingly enough, both studies used a model
331
with the same microalgae, that is C. vulgaris (Al Ketife et al., 2016; Shriwastav et al., 2017).
332
Other authors agreed with Al Ketife et al. (2016) in that P was removed substantially
333
regardless of the microalgae species involved (Shen et al., 2015; von Alvensleben et al.,
334
2013; Zhou et al., 2017).
335
This study agreed with Shriwastav et al. (2017) in that P removal by microalgae was limited.
336
As mentioned previously, calculating the efficiency of removing P through the difference
337
between influent and effluent concentration could entail errors being hidden (Vo et al., 2018).
338
Hence, the EDS technique was employed in this study to explain the issue. Additionally, the
339
Redfield constant also noted the C:N:P ratio for microalgae consumption was 106:16:1. In
340
this study, the moderate P removal efficiency complied with the Redfield ratio accordingly.
341
3.3.4 Pollutants’ assimilation rates
342
The pollutants’ assimilation rates as supported by EDS are illustrated in Table 1. Generally,
343
these assimilation rates decreased when the saline levels increased (F(3,24) = 6.15, p<0.05).
344
The C and N assimilations were affected slightly by salinity, especially at 5%, in which the
345
assimilation rate reduced by 35 to 50% compared to assimilation rates of 0.1% salinity. For
346
C. vulgaris and Chlorella sp., the C and N assimilation rates were the highest of the 0.1 and
347
1% salinity. With reference to Stichococcus sp., the assimilation rates were the most
348
significant when salinity ranged from 1 to 3.5%.
349
Regarding P uptake, C. vulgaris and Chlorella sp. suffered severely from salinity given that
350
the assimilation rates diminished from 50 to 77%. Nevertheless, it was observed that
351
Stichococcus sp. wielded only a slight influence, specifically, the assimilation rate reduced by
15
352
35%. This confirmed the P removal efficiency described in sub-section 3.3.3. Salinity had a
353
much less significant impact on P uptake of Stichococcus sp.
354
According to Kim et al. (2016), the respective N and P assimilation rates of A. obliquus were
355
175 and 1.5 mg/g biomass.d. As noted earlier, the applied N and P concentrations in the
356
influent were higher, these being 981 and 81 mg/L, respectively. Also, the N and P
357
consumption rates as summarized by Shriwastav et al. (2017) were 600 and 80 mg/g
358
biomass.d. Elsewhere, Al Ketife et al. (2016) modelled pollutants’ assimilation with total C,
359
N, P yield coefficiencies of 500, 200 and 24 mg/g biomass. It should be noted that this study
360
investigated the assimilation rates of pollutants based on the EDS technique. The
361
experimental platform and calculated unit were, consequently, different. Doing this
362
eliminated the potential errors due to the involvement of other processes such as biosorption
363
and precipitation. The influence of inlet organic loading levels on pollutants’ assimilation
364
rates needed to be examined extensively.
365
[Insert Table 1]
366
3.4 Effect of salinity on pollutants’ assimilation
367
Most authors have agreed that salinity hindered the pollutants’ assimilation by microalgae
368
(Borecka et al., 2016; Zhang et al., 2016). Previously, the numerous hypotheses and findings
369
on this issue are not conclusive (Pandit et al., 2017; Shen et al., 2015; von Alvensleben et al.,
370
2013; Zhou et al., 2017). Through the literature, the effects of salinity on pollutants’ removal
371
efficiency were highlighted with an emphasis on two major topics: (i) the competition of salt
372
ions and pollutants in the bulk liquid; and (ii) the internal accumulation of salt ions in
373
microalgae cells.
16
374
With reference to the first assumption, via the SEM technique, an unsaturated salt layer was
375
found as attached on microalgae cells’ surface at salinity levels of 3.5 and 5%. These layers
376
might be responsible for the reduction of pollutants’ accumulation efficiency. For instance,
377
salinity increased from 0.5 to 3% and its ionic strength rose from 0.10 to 0.61 mol/L, which
378
diminished the activity coefficient of Cu2+ from 0.35 to 0.23 (Chen et al., 2017). The
379
increment of ionic strength probably caused salt crystal attached on microalgae surface and
380
impaired the pollutants assimilation. Also, Zhang et al. (2016) reported that the organic
381
matters layer reduced 5 - 10% the pollutant assimilation efficiency of microalgae, being
382
similar to the salt layer of this study.
383
For the second mechanism, Na+ has been known to be involved in the co-transport of P into
384
microalgae cells; however, this was limited to a salinity below 100 mg/L (Mohleji and
385
Verhoff, 1980). Church et al. (2017) agreed that Na+ would impair the assimilation rate,
386
especially at 4.5% salinity because Na+ would stream into microalgae cells and inhibited the
387
photosynthesis reaction accordingly. The high Na+ ion concentration in the chloroplasts
388
would reduce the quantum yield of photosystem II, diminish the protein synthesis and reduce
389
the biomass yield (Müller et al., 2014). In the chloroplast of plant, the concentration of ion Cl-
390
was from 1-50 mM (Schroppel-Meier and Kaiser, 1988). The over increase of Cl- can lead to
391
cells toxic.
392
Of the Na+ and Cl- concentration in microalgae cell, the solid evidence is provided in Table 2.
393
Of Stichococcus sp., the highest Na+ and Cl- accumulations were 15.77 and 25.66 mg/L,
394
respectively. The concentration of Na+ and Cl- ions in cells increased steadily when the
395
salinity rose accordingly (F(3,15)= 28.29, p<0.05). C. vulgaris accumulated those ions
396
competitively with Chlorella sp. and Stichococcus sp (F(5,15)= 0.59, p>0.05) until salinity of
397
5%. At 5% salinity, the broken cells of C. vulgaris were found. On the other hand, the cells of
17
398
Chlorella sp. and Stichococcus sp. stayed normal and this underlines their good adaptation in
399
salinity of 5%.
400
[Insert Table 2]
401
This work is the first to unlock the salt layer on microalgae cells’ surface. It updates previous
402
assumptions and observations and also establishes a background for extensive research on
403
saline wastewater treatment by microalgae. Saline wastewater removal includes two major
404
objectives which are: the removal of pollutants and desalination. Salinity is the main obstacle
405
to pollutants’ removal undertaken by biological processes. To remove pollutants efficiently,
406
the salts in wastewater need to be eliminated simultaneously. Although bioprocesses such as
407
activated sludge and anaerobic processes have been commented on as having great capability
408
in removing pollutants’ in saline wastewater (Ahmadi et al., 2017; Gebauer and Eikebrokk,
409
2006; Lefebvre et al., 2005), desalination is still a major technical challenge.
410
4. Future perspectives and practical applications
411
In this study, the results have fixed the shortcomings of previous research and offered the
412
practical applications. Firstly, the appropriate microalgae species for saline wastewater
413
treatment have been identified. C. vulgaris was implemented in salinity of 0.1% with the
414
focus on TOC removal. If the saline wastewater contained high N concentration and salinity
415
from 0.1 to 1%, Chlorella sp. was the ideal candidate. The fast N consumption rate by
416
Chlorella sp. will help in reducing reactor volume and operational costs. When microalgae
417
are employed for pigment, instead of removing the pollutants, Stichococcus sp. produces
418
superior chlorophyll a content.
419
Those microalgae are applicable to petrochemical wastewater treatment. The petrochemical
420
wastewater contained salinity of 3% and COD of 1100 – 1300 mg/L (Ahmadi et al., 2017). 18
421
Microalgae process is an option compared to the activated sludge process of Ahmadi et al.
422
(2017) because it would reduce the operation cost. The microalgae can also combine with a
423
sponge biocarrier osmotic membrane bioreactor of Nguyen et al. (2018). The influent
424
wastewater contained 2.4% NaCl, 300 mg/L dissolved organic carbon, 36 mg/L NH4+-N and
425
22 mg/L PO43--P, given it fits microalgae process. With mariculture saline wastewater, it
426
possessed the respective TOC, TN and salinity of 100-125 mg/L, 40-50 mg/L and 3.45% (Song
427
et al., 2018). Similarly, those microalgae are feasible for treatment of this mariculture saline
428
wastewater
429
Furthermore, the pollutants’ assimilation rates and SGR estimated in this study can serve as a
430
manual for future saline wastewater treatment designs. The HRT, biomass retention time
431
(BRT) and reactor/pond volume can be calculated accordingly. In continuous operation, the
432
BRT, which was calculated from the maximum specific growth rate (1/μmax ~ BRT), was
433
computed. The μmax could be retrieved with a known influent salinity of wastewater from Fig.
434
2. The BRT should be maintained in the reactor/pond by harvesting the excess microalgae
435
biomass in order to sustain the maximum microalgae growth rate.
436
This study clearly describes the impact of salinity with evidence of salt layer formation and
437
salinity accumulation in microalgae cells. This established a platform for in-depth research
438
tailored at reducing salinity’s influence and enhancing biomass yield and pollutants’
439
assimilation efficiency. Another objective is to achieve higher organic loading because the
440
literature and some prior studies’ comparisons have indicated that the impact of salinity can
441
be alleviated.
442
5.
443
Saline wastewater treatment by microalgae is proved feasible. However, high salinity
444
concentration resulted in low removal efficiency of TOC, NO3--N, PO43--P. The freshwater C.
Conclusion
19
445
vulgaris demonstrated its capability to compete in assimilating pollutants’ compared to
446
marine microalgae. The new approach to explore microalgae’s assimilation of pollutants
447
could help to document the underlying effects of salinity. Future research of investigating the
448
efficiency of assimilating pollutants in high saline conditions is necessary.
449 450
E-supplementary data for this work can be found in e-version of this paper online.
451 452
Acknowledgement
453
This research was supported by the Centre for Technology in Water and Wastewater,
454
University of Technology, Sydney, Australia (UTS, RIA NGO) and “Korean Ministry of
455
Environment as a “Global Top Project”, Project No. 2016002200005” .
456 457 458 459 460 461 462
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593
26
594
[Figure captions]
595
Fig. 1. Biomass yield of (a) C. vulgaris, (b) Chlorella sp. and (c) Stichococcus sp. at various
596
salinities (0.1, 1, 3.5, 5%). Value and error bars are the average and standard deviation of two
597
samples
598
Fig. 2. Correlation of SGRs and salinities (0.1, 1, 3.5, 5%).
599
Fig. 3. Chlorophyll a performance of (a) C. vulgaris, (b) Chlorella sp. and (c) Stichococcus
600
sp. at various salinities (0.1, 1, 3.5, 5%). Value and error bars are the average and standard
601
deviation of two samples
602
Fig. 4. Remained TOC removed by (a) C. vulgaris, (b) Chlorella sp. and (c) Stichococcus sp.
603
at various salinities (0.1, 1, 3.5, 5%). Value and error bars are the average and standard
604
deviation of two samples
605
Fig. 5. Remained NO3--N removed by (a) C. vulgaris, (b) Chlorella sp. and (c) Stichococcus
606
sp. at various salinities (0.1, 1, 3.5, 5%). Value and error bars are the average and standard
607
deviation of two samples
608
Fig. 6. Remained PO43--P removed by (a) C. vulgaris, (b) Chlorella sp. and (c) Stichococcus
609
sp. at various salinities (0.1, 1, 3.5, 5%). Value and error bars are the average and standard
610
deviation of two samples
611
27
612
Table 1. Pollutants assimilation rates at day 10th (mg/d) Element/
C. vulgaris
Chlorella sp.
Stichococcus sp.
Salinity (%)
C
N
P
0.1
1
3.5
5
0.1
1
3.5
5
0.1
1
3.5
5
15.55
15.41
14.72
3.32
18.82
19.8 ±
16.06
2.00 ±
9.01 ±
9.51 ±
17.32
6.00 ±
± 0.19
± 0.14
± 0.18
0.03
± 0.13
0.16
± 0.21
0.03
0.8
0.5
± 0.23
0.4
5.29 ±
5.35 ±
4.91 ±
0.77 ±
6.25 ±
5.41 ±
5.40 ±
0.71 ±
3.14 ±
2.98 ±
5.86 ±
1.79 ±
0.06
0.01
0.04
0.02
0.08
0.07
0.04
0.03
0.07
0.1
0.08
0.04
0.64 ±
0.58 ±
0.28 ±
0.05 ±
0.77 ±
0.39 ±
0.45 ±
0.05 ±
0.31 ±
0.21 ±
0.39 ±
0.13 ±
0.05
0.04
0.02
0.003
0.03
0.02
0.04
0.004
0.01
0.01
0.02
0.01
613
28
614 615
Table 2. Weight of salts accumulation in microalgae cells (mg/L) Salt ion/
C. vulgaris
Chlorella sp.
Stichococcus sp.
Salinity (%)
0.1
1
3.5
5
0.1
1
3.5
5
0.1
5.19
Na
3.5
5
3.39
3.26 ±
4.77 ±
15.77
7.90 ±
5.87 ±
±
14.08
5.79 ±
4.75 ±
±
15.79
8.94 ±
0.27
0.35
± 0.63
0.58
0.34
0.47
± 1.13
0.36
0.51
1.73
± 1.06
0.61
3.42
Cl
1
1.73
0.87 ±
3.71 ±
20.93
15.57
1.57 ±
±
18.68
8.75 ±
0.51 ±
±
25.66
14.77 ±
0.05
0.27
± 0.86
± 0.93
0.09
0.39
± 0.72
0.47
0.06
0.17
± 1.26
0.94
616 617
29
[List of figures] Biomass Yield (mg/L)
618
600 500 400 300 200 100 0 0
2
4
6
8
10
HRT (d)
0.10%
1%
3.50%
5%
Biomass Yield (mg/L)
(a) 600 500 400 300 200 100 0 0
2
4
6
8
10
HRT (d)
Biomass Yield (mg/L)
0.10%
1%
3.50%
5%
(b) 600 500 400 300 200 100 0 0
2
4
6
8
10
HRT (d)
0.10%
1%
3.50%
5%
(c) 619
Fig. 1. Biomass yield of (a) C. vulgaris, (b) Chlorella sp. and (c) Stichococcus sp at various
620
salinities (0.1, 1, 3.5, 5%). Value and error bars are the average and standard deviation of two
621
samples 30
0.7
SGRs (/d)
0.6 0.5 0.4 0.3 0.2 0.1 0 0.00
0.50
1.00
1.50
2.00
2.50
3.00
3.50
4.00
4.50
Salinity (%)
622 623
C. vulgaris
Chlorella sp.
Stichococcus sp.
Fig. 2. Correlation of SGRs and salinities (0.1, 1, 3.5, 5%).
624
31
5.00
Chlorophyll content (mg/L)
625
25 20 15 10 5 0 0
2
4
6
8
10
HRT (d)
Chlorophyll content (mg/L)
0.10%
1%
3.50%
5%
(a) 25 20 15 10 5 0 0
2
4
6
8
10
HRT (d)
Chlorophyll content (mg/L)
0.10%
1%
3.50%
5%
(b) 25 20 15 10 5 0 0
2
4
6
8
10
HRT (d)
0.10%
1%
3.50%
5%
(c) 626
Fig. 3. Chlorophyll a performance of (a) C. vulgaris, (b) Chlorella sp. and (c) Stichococcus
627
sp at various salinities (0.1, 1, 3.5, 5%). Value and error bars are the average and standard
628
deviation of two samples 32
Remained Concentration (%)
120 100 80 60 40 20 0 0
2
4
6
8
10
HRT (d)
Remained Concentration (%)
0.10%
1%
3.50%
5%
(a) 120 100 80 60 40 20 0 0
2
4
6
8
10
HRT (d)
Remained Concentration (%)
0.10%
1%
3.50%
5%
(b) 120 100 80 60 40 20 0 0
2
4
6
8
10
HRT (d)
0.10%
1%
3.50%
5%
(c) 629
Fig. 4. Remained TOC removed by (a) C. vulgaris, (b) Chlorella sp. and (c) Stichococcus sp.
630
at various salinities (0.1, 1, 3.5, 5%). Value and error bars are the average and standard
631
deviation of two samples
632
33
Remained Concentration (%)
120 100 80 60 40 20 0 0
2
4
6
8
10
HRT (d)
Remained Concentration (%)
0.10%
1%
3.50%
5%
(a) 120 100 80 60 40 20 0 0
2
4
6
8
10
HRT (d)
Remained Concentration (%)
0.10%
1%
3.50%
5%
(b) 120 100 80 60 40 20 0 0
2
4
6
8
10
HRT (d)
0.10%
1%
3.50%
5%
(c) removed by (a) C. vulgaris, (b) Chlorella sp. and (c) Stichococcus
633
Fig. 5. Remained NO3
634
sp. at various salinities (0.1, 1, 3.5, 5%). Value and error bars are the average and standard
635
deviation of two samples
--N
636
34
Remained Concentration (%)
110 90 70 50 0
2
4
6
8
10
HRT (d)
0.10%
1%
3.50%
5%
Remained Concentration (%)
(a)
110 90 70 50 0
2
4
6
8
10
HRT (d)
0.10%
1%
3.50%
5%
Remained Concentration (%)
(b)
110 90 70 50 0
2
4
6
8
10
HRT (d)
0.10%
1%
3.50%
5%
(c) 637
Fig. 6. Remained PO43--P removed by (a) C. vulgaris, (b) Chlorella sp. and (c) Stichococcus
638
sp. at various salinities (0.1, 1, 3.5, 5%). Value and error bars are the average and standard
639
deviation of two samples. 35
640
Highlights
641
Freshwater C. vulgaris is comparable to marine microalgae in pollutants removal.
642
Unsaturated salt forms layer on microalgae cells’ surface.
643
Microalgae accumulate salt ions in cells proportionally to salinities in culture.
644
Statistic well-confirms the negative effect of salinities on pollutant assimilation.
645
Organic loading levels might alleviate salinities effect but not yet proved.
646 647
36