Journal Pre-proof Batch and continuous studies for adsorption of anionic dye onto waste tea residue: Kinetic, equilibrium, breakthrough and reusability studies Suyog N. Jain, Shahnoor R. Tamboli, Dipak S. Sutar, Sumeet R. Jadhav, Jayant V. Marathe, Ashraf A. Shaikh, Ajay A. Prajapati PII:
S0959-6526(19)34648-7
DOI:
https://doi.org/10.1016/j.jclepro.2019.119778
Reference:
JCLP 119778
To appear in:
Journal of Cleaner Production
Received Date: 7 May 2019 Revised Date:
13 December 2019
Accepted Date: 16 December 2019
Please cite this article as: Jain SN, Tamboli SR, Sutar DS, Jadhav SR, Marathe JV, Shaikh AA, Prajapati AA, Batch and continuous studies for adsorption of anionic dye onto waste tea residue: Kinetic, equilibrium, breakthrough and reusability studies, Journal of Cleaner Production (2020), doi: https:// doi.org/10.1016/j.jclepro.2019.119778. This is a PDF file of an article that has undergone enhancements after acceptance, such as the addition of a cover page and metadata, and formatting for readability, but it is not yet the definitive version of record. This version will undergo additional copyediting, typesetting and review before it is published in its final form, but we are providing this version to give early visibility of the article. Please note that, during the production process, errors may be discovered which could affect the content, and all legal disclaimers that apply to the journal pertain. © 2019 Published by Elsevier Ltd.
Waste Tea Residue Before Adsorption
Acid Blue 25 Dye Solution
Waste Tea Residue After Adsorption
Aqueous Solution After Dye Removal
1
1
Batch and Continuous Studies for Adsorption of Anionic Dye onto Waste Tea Residue: Kinetic,
2
Equilibrium, Breakthrough and Reusability Studies
3 4 5 6
Suyog N. Jain*, Shahnoor R. Tamboli, Dipak S. Sutar, Sumeet R. Jadhav, Jayant V. Marathe, Ashraf A.
7
Shaikh, Ajay A. Prajapati
8 9 10 11 12 13 14
Department of Chemical Engineering,
15
K. K. Wagh Institute of Engineering Education & Research, Nashik-422003,
16
Maharashtra, India
17 18 19 20 21
*
22
Tel.: +91 253 2221265,
23
E-mail address:
[email protected];
[email protected]
24 25 26 27 28
Corresponding author Fax: +91 253 2515258;
2
29
Abstract
30
In the present article, adsorption of anionic dye (Acid Blue 25) using waste tea residue (WTR) was
31
investigated in batch and continuous operation. Clear insight of functional groups, surface charge,
32
morphology, composition, surface area and particle size of WTR was obtained by the characterization
33
techniques of FTIR, zeta potential, SEM-EDX, BET, and DLS analysis. Influence of operating pH,
34
adsorbent loading, influent concentration, contact duration of adsorption and temperature on dye
35
remediation was investigated in batch studies. Evaluated kinetic data was in better agreement with pseudo
36
2nd order model whereas equilibrium data was in better agreement with Redlich Peterson model. Multiple
37
steps were found to control the mechanism of the studied adsorption. Maximum dye uptake was obtained
38
as 127.14 mg g-1 at optimized pH of 1, loading of 3.5 g L -1 and higher temperature as 318 K. Adsorption
39
process was found to be spontaneous, physical and favored with the rise in temperature. Reusability of
40
WTR in multiple cycles showed a slight drop in dye uptake from 27.95 ± 0.26 mg g-1 at 1st cycle to 26.24
41
± 0.21 mg g-1 at 3rd cycle. Continuous studied were also conducted in packed column and influence of
42
column operating parameters as packing height (3-6 cm), concentration (50-200 mg L-1) and the flow rate
43
of influent (5-9 mL min-1) on the efficacy of dye remediation were investigated. Thomas model was
44
reported to be in better agreement with the evaluated breakthrough data. Maximum uptake in continuous
45
studies was reported as 50.82 mg g-1. The obtained results of batch and continuous studies depicted that
46
WTR could be used effectively for remediation of targeted anionic dye from the aqueous phase.
47
Keywords: Adsorption; Waste Tea Residue; Dye Removal; Regeneration; Nonlinear Regression
48 49
1.
Introduction
50
The availability of sufficient quantity and good quality of water is a major challenge faced nowadays all
51
over the world and it is utmost important to protect this scarce good from the pollution that can be caused
52
by different pollutants. Dyes are one of the major pollutants found in industrial effluents and causing
53
significant water pollution (Stawi et al., 2017). Dyes are available in natural and synthetic forms. The
54
growing population and specific demands of customers have almost replaced natural dyes by a synthetic
55
one. Annually, 1 million tons of dyes are being manufactured worldwide to meet the demand of the
56
industries (Zereshki et al., 2018). Synthetic dyes are applied extensively in different industries like textile,
57
paper, leather, etc. The textile industry generates approximately 54% of the total dye effluent (Katheresan
58
et al., 2018). Dye effluents have drawn great attention nowadays due to their harm to the ecosystem as
59
water pollution in terms of visible nature, carcinogenicity, and accumulation in organisms (Hui et al.,
3
60
2018). The presence of dyes in water occludes penetration of sunlight to the aquatic plants, causes toxicity
61
in water due to the degraded products and increases COD of water bodies (Karimifard et al., 2018).
62
Synthetic origin and complex structure of dyes are making them non-biodegradable, stable and hence it is
63
difficult to treat dye-containing wastewater (Salima et al., 2013). Dye bearing wastewater treatment is of
64
primary concern as even at very low concentrations, dyes decrease water clarity and hence are undesirable
65
(Essandoh and Garcia, 2018).
66
Several physicochemical treatments as membrane separation (Li et al., 2018), catalytic ozonation (Ghuge
67
and Saroha, 2018), coagulation/flocculation (Yeap et al., 2014), electrochemical oxidation (Jager et al.,
68
2018), etc. are available for decontamination of dyes from wastewater. Most of these aforementioned
69
treatment technologies are costlier due to initial capital cost along with operational/running cost
70
associated with labor, maintenance, sludge disposal, etc. (Azha et al., 2018; Jain and Gogate, 2017a).
71
Dyes are not completely removed from colored wastewater by physicochemical methods as dyes offer
72
resistance to fading under different conditions (L. Dai et al., 2018). These limitations can be overcome by
73
the adsorption technique due to its notable advantages as significant flexible nature to a high polluting
74
load coupled with its effectiveness, versatility, availability of a wide range of adsorbents, the possibility
75
of reusability of spent adsorbent, low cost and energy consumption in comparison with other treatment
76
methods (Saleh et al., 2018, 2017). The adsorption method is found to be inexpensive, effective, could be
77
applied at room temperature and does not form any harmful byproducts (Jain and Gogate, 2019; Li et al.,
78
2017; Toumi et al., 2018). The commonly applied adsorbent is activated carbon due to its attractive
79
features as highly porous nature, significant surface area and strong uptake capacities however high cost
80
coupled with the difficulty in desorption of adsorbed pollutant and subsequent reusability issues of
81
activated carbon limit its applications on a commercial scale, which has prompted to search for alternative
82
adsorbents as a possible replacement to activated carbon (Y. Dai et al., 2018; Jain and Gogate, 2017).
83
Different substrates in raw forms as a waste of pine leaves (Deniz and Karaman, 2011), orange peels and
84
peanut hull (Nascimento et al., 2014), peels of Solanum tuberosum and Musa acuminate (Rehman et al.,
85
2019), coffee residue (Kyzas et al., 2012), spent tree leaves (Hameed, 2009), and also in activated forms
86
as ZnCl2 activated kiwi peels (Mahmoodi et al., 2018), KOH activated sunflower piths (Baysal et al.,
87
2018), H3PO4 activated cassava peel (Rajeswarisivaraj et al., 2001), formaldehyde modified Dalbergia
88
sissoo sawdust (Garg et al., 2004) have been utilized by researchers for the decontamination of dyes from
89
wastewater.
90
The present article is novel in terms of effective utilization of waste tea residue (WTR) as an inexpensive
91
adsorbent with significant uptake of targeted dye in batch and continuous studies. Higher efficiency of
92
separation and repetitive use of WTR in multiple cycles without destructing the structure and functional
4
93
groups during elution ensured applicability of WTR as a potential adsorbent towards targeted dye
94
(Albadarin et al., 2017; Alqadami et al., 2018; Daneshvar et al., 2017). The reason behind applying WTR
95
as an adsorbent is its availability on a large scale as waste and again at zero cost. Targeted dye (Acid Blue
96
25) in the present article is an anionic anthraquinone dye used widely for dyeing leather, polyamide, etc.
97
(Guiso et al., 2014). The reason behind selecting targeted dye is its wide applicability in different
98
industries and also the environmental concerns due to its presence in the industrial effluents.
99
2.
Experimental section
100
2.1
Materials and Instrumentation
101
Dye was obtained from Merck India Ltd. All other used chemicals were of analytical grade. WTR was
102
collected from nearby tea shops in Nasik city. WTR was dried in sunlight, crushed into a fine powder and
103
was then used without any physical/chemical treatment for batch and continuous experimentation.
104
Changes in functional groups of WTR during adsorption were studied using FTIR analyses (IRAffinity-
105
1S Shimadzu). Zeta potential measurements to determine the charge on WTR were performed using Zeta-
106
sizer (Malvern). The particle size distribution of WTR was determined using dynamic light scattering.
107
Morphology of WTR before and after adsorption was studied using SEM analysis (Carl Zeiss Model
108
EVO18 UK). Energy-dispersive X-ray (EDX) analysis was performed to determine the elemental
109
composition of fresh WTR and WTR after adsorption. Brunauer–Emmett–Teller (BET) technique
110
(Quantachrome Novae 2200 USA) was applied to determine the surface area of fresh WTR and WTR
111
after adsorption.
112
2.2
113
Batch studies were performed in a thermostatic shaker (Biotechnics India) using 100 mL Erlenmeyer
114
flasks containing 50 mL of working solutions. Influence of operating parameters as pH (1-10), WTR
115
loading (0.5-5 g L-1), concentration (100-300 mg L ), stirring time (0-360 min) and temperature (288-
116
318 K) on dye remediation was investigated in batch studies. During the adsorption experiments, the
117
flasks were agitated at 150 rpm in a thermostatic shaker. At preset time intervals, samples were removed
118
from the shaker, centrifuged and analyzed spectrophotometrically at 602 nm (maximum wavelength of
119
absorption) to determine the concentration of dye left in the solutions. After the adsorption experiments,
120
samples were centrifuged at 8000 rpm and concentrations of dye left in solutions were determined from
121
the measured values of absorbance in the supernatant using UV spectrophotometer (Shimadzu Model UV
122
mini 1240). Reusability of WTR was tested by first desorbing the dye from dye laden WTR using ethanol
123
and subsequently applying the regenerated WTR for adsorption.
Experimental Procedures
-1
5
124
Dye uptake, qt (mg g-1) was estimated using the following equation: =
125
(
)
(1)
126
Where Ci and Ct are influent and effluent concentrations (mg L-1), respectively and W is loading of WTR
127
(g L-1).
128
Desorption (%) was estimated using the following equation (Leon et al., 2018): (%) =
129
× 100
(2)
130
Where Cd and Ca are the concentration of dye desorbed and adsorbed respectively (mg L-1).
131
The performance of WTR was also tested in a column of 2 cm size by packing WTR in the column
132
between glass wool as supporting layers to prevent loss and clogging of the adsorbent during operation.
133
The schematic diagram of a packed column is depicted in Fig. S1. The dye solution was passed through
134
the packing at different flow rates. A peristaltic pump was used to adjust the flow rate of the solution
135
through the packing. Influence of packing height (3-6 cm), influent concentration (50-200 mg L-1) and
136
flow rate (5-9 mL min-1) on the efficacy of removal was studied and samples withdrawn from the top of
137
the packed bed were analyzed.
138
3.
Results and Discussions
139
3.1
Characterization
140
Fig. 1a and 1b illustrate the obtained FTIR results before and after adsorption respectively. The peak at
141
3311.78 cm-1 in Fig. 1a belonging to the strong stretching band of the O-H or N-H group shifted to
142
3296.35 cm-1 after adsorption indicating an involvement of hydrogen bonding in adsorption (L. Dai et al.,
143
2018; Sharma et al., 2019). The peak at 1041.56 cm-1 belonging to the C-O-C band (Abd-Elhamid et al.,
144
2019) in Fig. 1a shifted to 1029.99 cm-1 after adsorption as depicted in Fig. 1b. The appearance of sharp
145
and strong bands at 2920.23 and 2858.51 cm-1 belongs to C-H asymmetric stretching of alkyl groups
146
(Saleh, 2018) and peak located at 1635.64 cm-1 indicates C=O stretching of carbonyl group (Abubakar et
147
al., 2019; Wong et al., 2019). The peaks at 1529.55 cm-1 and 1442.75 cm-1 belonging to aromatic C=C
148
stretch (Değermenc et al., 2019) in Fig. 1a shifted to 1523.76 cm-1 and 1448.54 cm-1, respectively after
149
adsorption as depicted in Fig. 1b. A small peak at 1236.37 cm-1 belonging to CO stretching (Siddiqui et
150
al., 2018) in Fig. 1a shifted to 1228.66 cm-1 after adsorption as depicted in Fig. 1b. The obtained FTIR
151
results showing changes in frequencies in Fig. 1b and 1b confirmed adsorption of dye on WTR.
152
Zeta potential values were determined at the interval of 1 pH units in the pH range from 1 to 10 and
153
obtained results are depicted in Fig. 2. Zeta potential values were decreased from 20.37 mV at pH of 1 to
154
–23.86 mV at a pH of 10 with zero potential at pH of 5.64. This point of zero potential where the charge
6
155
on the surface is zero is called as an isoelectric point (IEP) and the corresponding pH is termed as pHiep.
156
Average size of WTR particles was estimated as 347.5 nm. SEM images of WTR before and after
157
adsorption are illustrated in Fig. 3a and 3b respectively. The image before adsorption revealed the porous
158
and irregular structure of WTR whereas comparatively fewer cavities are observed in image after
159
adsorption, which revealed penetration of the dye into the pores and hence changes in morphology after
160
adsorption. EDX analysis demonstrated the presence of different elements in fresh WTR as C (65.93%),
161
O (31.55%), Na (0.79%), K (0.85%) and Ca (0.88%) whereas WTR after adsorption was found to contain
162
elements as C (69.11%), O (26.53%), N (3.36%), S (0.62%) and Cl (0.38%). Increase in weight % of
163
carbon along with the presence of nitrogen and sulfur in dye loaded WTR affirmed effective adsorption of
164
dye on WTR. The surface area of fresh WTR obtained as 68.82 m g reduced to 23.47 m g for
165
WTR after adsorption, which further affirmed penetration of dye leading to blockage of pores
166
and hence reduction in surface area.
167
3.2
Batch studies
168
3.2.1
Influence of pH
169
The influence of pH on dye uptake and removal was tested in the pH range of 1 to 10 and other operating
170
conditions were kept constant. The obtained results as depicted in Fig. 4a showed that acidic medium
171
favored dye removal. Removal was reported to fall from 97.84 ± 0.92% at a pH of 1 to 15.61 ± 1.04% at a
172
pH of 10. Higher dye uptake, qt as 27.95 ± 0.26 mg g-1 was obtained at a pH of 1, which decreased to 4.46
173
± 0.29 mg g-1 at a pH of 10. In the alkaline medium, where operating pH is more than 5.64 (pHiep), OH-
174
ion concentrations is higher, leading to anionic charge on WTR and thus reducing anionic dye removal
175
whereas in the acidic medium, where operating pH is less than 5.64 (pHiep), there is corresponding
176
increase in hydrogen ions, leading to development of positive charge on WTR and thus enhancing
177
removal of anionic dye-based on electrostatic attraction (Chaari et al., 2019). A similar trend of maximum
178
dye uptake and removal was investigated earlier for anionic dye remediation using activated leaves
179
powder (Jain and Gogate, 2017b).
2
-1
2
-1
180 181
3.2.2
Influence of adsorbent loading (W)
182
Influence of WTR loading on removal efficacy and dye uptake was tested by varying the loading from 0.5
183
to 5 g L-1 and obtained trends are depicted in Fig. 4b. Increase in the loading from 0.5 to 3.5 g L-1 led to a
184
significant increase in removal from 25.58 ± 1.07 to 97.84 ± 0.92% respectively. The obtained trend of
185
maximum removal could be ascribed to significant increase in the adsorption sites at more quantity of
186
WTR available at higher loading. A very little rise in removal from 97.84 ± 0.92 to 98.46 ± 0.84% was
7
187
observed with further increase in loading from 3.5 to 5 g L-1 as aggregates may be formed due to excess
188
amount of suspended adsorbent in the solution leading to improper utilization of sites and lowering
189
amount of adsorbed dye (Zhou et al., 2019). Hence loading of 3.5 g L-1 was finalized for further batch
190
studies. qt value was reported to drop from 51.17 ± 2.13 mg g-1 at 0.5 g L-1 to 27.95 ± 0.26 mg g-1 at 3.5 g
191
L-1 of loading. Similar trend of less dye uptake and maximum removal was reported for Rhodamine B
192
removal using polynanotubes (Wang et al., 2015).
193 194
3.2.3
Influence of stirring time (t) and concentration (Ci)
195
Fig. 4c shows the effect of stirring time and concentration on removal efficacy for the concentrations in
196
the range of 100-300 mg L-1 using WTR. It can be noted from the plot that all the curves of time study are
197
initially steeper indicating faster removal as attributed to abundant availability of free sites and hence
198
more probability of adsorption. All the curves are found to be flatter in later periods, attributed to a
199
decrease in the availability of frees sites as maximum sites were already occupied by the adsorbed dye
200
molecules. Significant removal was observed with an increase in the stirring time up to 210 minute and
201
thereafter till 360 min, very little rise in removal was noted as attributed to the establishment of
202
equilibrium (Alqadami et al., 2017).
203
Dye uptake and removal is significantly affected by concentration. Dye uptake was observed to increase
204
from 30.65 mg g-1 at 100 mg L-1 to 80.10 mg g-1 of 300 mg L-1 of concentration. Naushid et al. (Naushad
205
et al., 2016) reported a similar trend of higher dye uptake at increased Ci values. High concentration
206
gradient at increased Ci values favored the transfer of dye from the bulk to WTR surface due to a decrease
207
in resistance of mass transfer and hence high uptake was obtained at higher Ci values (Sangon et al.,
208
2018). Removal values were obtained as 97.84, 89.23 and 81.45% for 100, 200 and 300 mg L-1 of
209
concentration values, respectively. The observed trend can be explained on the fact that it is not possible
210
to occupy all the molecules of the dye on WTR surface as the amount of adsorbent is same at lower as
211
well as higher Ci values leading to decrease in removal at higher Ci values (Jain and Gogate, 2018).
212 213
3.2.4
Influence of temperature and thermodynamic studies
214
Temperature analysis in the present work was performed in the range of 288-318 K and established
215
results are depicted in Fig. 5. Dye uptake was increased from 111.99 mg g-1 at 288 K to 127.14 mg g-1 at
216
318 K. The obtained trend could be ascribed to fall in the viscosity of the solution and thus favoring better
217
diffusion of dye molecules in the porous structure of the adsorbent at increased temperature (Agarwal et
218
al., 2017), causing significant increase in the dye uptake. A similar trend was also investigated for
219
malachite green adsorption on activated ginger waste (Ahmad and Kumar, 2010).
8
220
Quantification of parameters as free energy change, ∆G0 (kJ mol-1), change in heat of adsorption, ∆H0 (kJ
221
mol-1) and entropy change ∆S0 (kJ mol-1 K-1) has been carried out based on thermodynamic equations.
222
Evaluated thermodynamic parameters of the studied adsorption process are summarized in Table S1.
223
Negative ∆G0 ensured the spontaneity of the studied adsorption process (Ahamad et al., 2019). Adsorption
224
of dye molecules on the adsorbent surface leads to a change in heat of adsorption (∆H0) as a result of
225
various forces. A lower value of ∆H0 (8-25 kJ mol-1) suggests that interaction between dye molecules and
226
adsorbent is weak, which ensures the physisorption process (Zeng et al., 2014). The obtained ∆H0 value is
227
17.59 kJ mol-1, which ensured the physisorption process and thus scope for reusability. ∆H0 value is
228
positive, which confirmed that studied adsorption is endothermic. Positive ∆S0 value indicated enhanced
229
chaos reflecting affinity between the dye and WTR (Ahmad et al., 2014).
230
3.2.5
231
Clear insight in the adsorption kinetics was established based on the fitting of the experiential data to the
232
kinetic models. Pseudo 1st order and 2nd order models are employed for the fitting of experimental data.
233
Pseudo 1st order is described using the following equation (Lagergren, 1898):
234
=
Adsorption mechanism and kinetics
(1 −
)
(3) -1
-1
235
Where, qe is dye uptake at equilibrium (mg g ) and kf is the model rate constant (min ).
236
Pseudo 2nd order is described using the following equation (Ho and Mckay, 1999):
237
=
"# !
!
(4)
238
Where ks is model rate constant (g mg -1 min-1).
239
To support the best fitting of the model to the obtained data, root mean squared error (RMSE) analysis
240
was performed. RMSE values are found as below (Mahmoodi et al., 2018):
241
$%&' = ( ∑+,-.
242
Where ypred is a value calculated using model equation, yexp is an experimental value and n is total
243
experimental points.
244
Obtained experimental data were fitted into pseudo 1st order and 2nd order equations based on nonlinear
245
regression and obtained model parameter values are summarized in Table 1. As illustrated in the Table 1,
246
the regression coefficient (R2) values of 2nd order equation are very close to unity (mean value of 0.9967)
247
in comparison with the 1st order equation. Values of error function as depicted in Table 1, are also very
248
less for 2nd order equation in comparison with 1st order equation. All the obtained findings confirmed
"
)
/
− , 0- 1
2
(5)
9
249
better agreement of 2nd order equation with the kinetic data obtained. Alqadami et al. (Alqadami et al.,
250
2016) reported similar 2nd order fitting for Malachite Green remediation based on nanocomposite
251
adsorbent
252
Weber Morris (WM) model employed to predict steps governing studied adsorption is described as below
253
(Weber and J. Carrell Morris, 1963):
254
= 3/
4.6
+8
(6)
255
Where kd is the WM constant (mg g-1 min-1/2) and I is the intercept (mg g-1).
256
Fig. S2 depicts WM plot (qt versus t0.5) for studied adsorption and model parameters as evaluated from the
257
graph are summarized in Table 1. As depicted in plot, nonzero intercept lines for all Ci values from 100-
258
300 mg L-1 indicated multistep adsorption. Sorption mechanism of dye on WTR was governed by three
259
sequential stages. In the first stage, the fastest adsorption rate was noted, followed by the second stage
260
where the slope was decreased due to internal diffusion and finally in third stage saturation occurred as
261
seen by almost horizontal lines (Shittu et al., 2019). The obtained trends confirmed the sorption
262
mechanism of dye on WTR as a multistep process.
263
3.2.6
264
Langmuir, Redlich Peterson, and Temkin models are employed for fitting of equilibrium data.
265
Langmuir model (Langmuir, 1918) is expressed as follow:
266
=
Isotherm fitting
9 :; "#:;
(7)
267
Where qm is maximum dye uptake (mg g-1) and KL is model constant (L mg-1).
268
Redlich-Peterson, a three-parameter model (Redlich and Peterson, 1959) is expressed as follows:
269
=
:<
"# ><
(8)
?
270
Where KR (L mg-1), αR (L mg-1) β and β (dimensionless) are Redlich-Peterson isotherm constants.
271
Temkin model (Temkin and Pyzhev, 1940) is expressed as follows:
272
= @" ln (C" D )
273
-1
Where K1 (L mg ) and B1 (mg g ) are model constants.
274
Obtained equilibrium data were fitted into Langmuir, Redlich Peterson and Temkin equations based on
275
nonlinear regression and obtained model parameter values are summarized in Table 2. As illustrated in
276
the Table 2, R2 values of Redlich Peterson equation are very close to unity (mean value of 0.9763) in
(9) -1
10
277
comparison with Temkin and Langmuir equations, indicating that Redlich Peterson equation is in better
278
agreement with the equilibrium data obtained. Model constant (KR, KL and K1) values are reported to
279
increase with temperature rise, which confirmed favorable process at increased temperature.
280
3.2.7
281
Table 3 summarizes data of maximum dye uptake (qm) along with operational parameters as reported in
282
the literature for remediation of different anionic dyes based on different adsorbents in raw and modified
283
form. As depicted in table, it can be said that the maximum dye uptake (qm) value of WTR in the present
284
research article as 127.14 mg g-1 is comparatively good in comparison with different adsorbents as
285
reported in the literature for remediation of Acid Blue 25 along with other anionic dyes.
286
3.2.8
287
Reusability of WTR in subsequent cycles was tested by first desorbing the dye from dye laden WTR
288
using ethanol and subsequently applying the regenerated WTR for fresh adsorption of dye. Desorption of
289
dye was carried out in shaker wherein dye laden WTR was mixed with ethanol and stirred in a shaker.
290
After desorption, regenerated WTR was again applied for adsorption. The obtained reusability trends for
291
3 cycles are depicted in Fig. S3. Dye uptake was dropped slightly from 27.95 ± 0.26 mg g-1 at 1st cycle to
292
26.24 ± 0.21 mg g-1 at 3rd cycle and % desorption values were reported as 98.97 ± 0.82% at 1st cycle and
293
92.86 ± 0.83% at 3rd cycle. The obtained trends with slight changes in reported values of dye uptake and
294
desorption in multiple cycles ensured the applicability of WTR for repetitive use in dye remediation.
Comparative study of WTR with other adsorbents
Reusability test
295 296
3.3
Packed bed study
297
3.3.1
Influence of packing height (Z)
298
Influence of different packing heights of WTR as 3, 4.5 and 6 cm on breakthrough profiles was analyzed
299
and depicted in Fig. 6a. Established breakthrough values are summarized in Table 4. At the beginning of
300
the column operation, higher dye uptake was observed till the breakthrough time, tb (Ct = 0.1Ci). After the
301
breakthrough, the concentration of dye in the effluent was noted to increase. The obtained trend is
302
attributed to fresh WTR available initially leading to higher uptake. After the exhaustion time, te (Ct =
303
0.9Ci) (Jayalakshmi and Jeyanthi, 2019), curves have become almost flat indicating very little uptake of
304
dye after exhaustion. As depicted in Table 4, the volume of treated effluent (Ve) was noted to increase
305
significantly with an increase in the packing height. Dye uptake (qm) was also noted to increase
306
significantly from 29.77 to 46.79 mg g-1 with an increase in the packing height from 3 to 6 cm
307
respectively. Increase in uptake is attributed to lengthening of mass transfer zone in the bed as more
11
308
amount of WTR is available at higher packing height, leading to more sorption sites and hence longer
309
times for bed exhaustion (Azzaz et al., 2017).
310
3.3.2
311
Influence of concentration of influent as 50, 100 and 200 mg L-1 on breakthrough profiles was analyzed
312
and depicted in Fig. 6b. Established breakthrough values are summarized in Table 4. Values of te are
313
found to be less at higher Ci values as ascribed to shortening of mass transfer zone due to early exhaustion
314
occurring due to quantification of dye at higher values leading to rapid filling of sorption sites (Liu et al.,
315
2019) whereas qe values are noted to increase significantly from 26.04 mg g-1 at 50 mg L-1 to 50.82 mg g-1
316
at 200 mg L-1 of influent concentration, ascribed to the fact that qm is proportional to the concentration of
317
influent and thus higher qm values are obtained at higher values of influent concentration (Charola et al.,
318
2018).
319
3.3.3
320
Influence of flow rate of influent as 5, 7 and 9 mL min-1 on breakthrough profiles was analyzed and
321
depicted in Fig. 6c. Established breakthrough values are summarized in Table 4. Increase in Q caused
322
corresponding decrease te and qm, as ascribed to shortening of dwelling time of WTR in the packed bed,
323
which is prohibiting proper propagation of the dye into the pores of the WTR (Khadhri et al., 2019) hence
324
the exhaustion occurred early and curves as seen from Fig. 6c are moved to the left at higher Q values.
325
Dye uptake was reported to drop from 43.02 mg g-1 at 5 mL min-1 to 31.61 mg g-1 at 9 mL min-1. A similar
326
finding was investigated earlier for remediation of methylene blue using activated Fox nutshell (Kumar
327
and Jena, 2016).
328
3.3.4
329
Adam Bohart and Thomas models are employed to analyze breakthrough data based on the nonlinear
330
regression approach.
331
The equation describing Adams-Bohart model is as below (Bohart and Adams, 1920):
332
Influence of concentration of influent (Ci)
Influence of the flow rate of influent (Q)
Breakthrough curve modeling
= E F3G DH −
I JK L
MK
N
(10)
333
Where kA is model constant (L mg-1 min-1), N0 is volumetric sorption capacity (mg L-1) and u0 is solution
334
velocity through the packed column (cm min-1).
335
The equation describing Thomas model is as below (Thomas, 1944):
12 =
336
" O Q R "# 0-F P P S
P
(11)
N
337
Where kT is model constant (mL min-1 mg-1), M is WTR packed in column (g) and qT is maximum dye
338
uptake (mg g-1).
339
Obtained model values based on the nonlinear regression approach are depicted in Table 5. R2 values of
340
Thomas model (mean value of 0.9988) are found to approach unity in comparison with R2 values of
341
Adam Bohart model (mean value of 0.8356). The values of qT parameter estimated using Thomas model
342
for all operating column conditions are close to the experimental values (qm). Values of error function
343
calculated using Thomas equation are also very less in comparison with Adam Bohart equation. The
344
obtained results ensured good agreement of Thomas model with the breakthrough data.
345
4.
346
The present research article established the potential of waste tea residue as zero cost adsorbent for
347
decontamination of anionic dye from the aqueous phase in batch and continuous operation. The obtained
348
characterization results ensured the adsorption of anionic dye on waste tea residue. Maximum dye uptake
349
was obtained as 127.14 mg g-1 at optimized pH of 1, loading of 3.5 g L
350
Reusability study confirmed the use of waste tea residue in repetitive cycles as a slight drop in dye uptake
351
from 27.95 ± 0.26 mg g-1 at 1st cycle to 26.24 ± 0.21 mg g-1 at 3rd cycle and desorption values from 98.97
352
± 0.82% at 1st cycle to 92.86 ± 0.83% at 3rd cycle were reported in three cycles. The obtained trends of
353
dye uptake and desorption in multiple cycles ensured the applicability of WTR for repetitive use in dye
354
remediation. Continuous studies conducted in packed bed confirmed the applicability of waste tea residue
355
on a commercial scale. Evaluated breakthrough data were well fitted to Thomas model and maximum
356
uptake in continuous studies was reported as 50.82 mg g-1. In the present work, column study has given
357
satisfactory results and hence the established design of the column in the present work can be scaled up
358
along with the quantity of WTR as an adsorbent depending upon the volume of the targeted anionic dye
359
effluent to be captured. The reusability of spent WTR in multiple cycles for the capture of targeted
360
anionic dye till the saturation of WTR will be taken into account during the scale-up. As tea residue is
361
having the heating value, saturated WTR after drying can then be incinerated and heat generated during
362
incineration can be utilized for steam generation. The overall study confirmed that waste tea residue could
363
be used as a suitable adsorbent for decontamination of targeted anionic dye from the aqueous phase.
364
Acknowledgements
365
The authors are grateful to K.K.W.I.E.E. and R; Nashik for providing support to carry out the present
366
research work.
Conclusions
-1
and temperature as 318 K.
13
367
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Figure Captions Fig.1
FTIR spectra of WTR (a) before adsorption (b) after adsorption
Fig.2
Zeta potential values of WTR
Fig.3
SEM image of WTR (a) before adsorption (b) after adsorption
Fig.4
Influence of operating parameters on Acid Blue 25 remediation using WTR a) pH (Ci = 100 mg L-1, W = 3.5 g L-1, t = 210 min) b) Loading (Ci = 100 mg L-1, pH = 1, t = 210 min) and c) stirring time and concentration (pH = 1, W = 3.5 g L-1, t = 360 min)
Fig.5
Isotherms for Acid Blue 25 remediation using WTR (pH = 1, W = 3.5 g L-1, t = 210 min)
Fig.6
Influence of operating parameters on breakthrough profiles for Acid Blue 25 remediation using WTR a) packing height (pH = 1, Ci = 100 mg L-1, Q = 7 mL min-1) b) influent concentration (pH = 1, Z = 4.5 cm, Q = 7 mL min-1) c) flow rate (pH = 1, Z = 4.5 cm, Ci = 100 mg L-1)
594 595 596 597 598 599 600 601 602 603 604
22
605
Table Captions Table 1
Kinetic parameters for Acid Blue 25 remediation using WTR (pH = 1, W = 3.5 g L-1, t = 360 min)
Table 2
Isotherm parameters for Acid Blue 25 remediation using WTR (pH = 1, W = 3.5 g L-1, t = 210 min)
Table 3
Maximum dye uptake (qm) and operating values for removal different anionic dyes
Table 4
Breakthrough parameters for different packing heights (Z), flow rates (Q) and influent concentrations (Ci)
Table 5
Adam-Bohart and Thomas parameters at different operating parameters for Acid Blue 25 remediation dye using WTR
606 607 608 609 610 611 612 613 614 615 616 617 618
23
619 620
Fig. 1a.FTIR spectra of WTR before adsorption
621
Fig. 1b.FTIR spectra of WTR after adsorption
24
30
Zeta Potential (mV)
20 10 0 0 -10
2
4
6
8
pH
-20
622 623 624 625 626 627 628 629 630 631
-30 Fig. 2. Zeta potential values of WTR
10
25
632
633 634
Fig. 3. SEM image of WTR (a) before adsorption (b) after adsorption
26
635
a)
100
% Removal
80
60
40
20
0 0
2
4
6
8
10
pH 636 637
b)
100
% Removal
80
60
40
20 0
2 Loading (g L-1)
638
4
6
27
639
c)
100
% Removal
80
60
40 Cᵢ = 100 mg L¯¹ Cᵢ = 200 mg L¯¹ Cᵢ = 300 mg L¯¹
20
0 0
60
120
180
240
300
360
Time (min) 640 641 642
Fig. 4. Influence of operating parameters on Acid Blue 25 remediation using WTR a) pH (Ci = 100 mg L-1, W = 3.5 g L-1, t = 210 min) b) Loading (Ci = 100 mg L-1, pH = 1, t = 210 min) and c) stirring time and concentration (pH = 1, W = 3.5 g L-1, t = 360 min)
643 644
28
120
qe (mg g-1)
90
T = 288 K
60
T = 303 K T = 318 K 30 0
648 649 650 651 652 653 654 655 656 657 658
450
L-1)
Fig. 5. Isotherms for Acid Blue 25 remediation using WTR (pH = 1, W = 3.5 g L-1, t = 210 min)
647
300 Ce (mg
645 646
150
29
659
a)
1 0.8
Ct/Ci
0.6 0.4 Z = 3 cm Z = 4.5 cm
0.2
Z = 6 cm 0 0
200
600
800
1000
Time (min)
660 661
400
b)
1
0.8
Ct/Ci
0.6
0.4 Cᵢ = 50 mg L¯¹ 0.2
Cᵢ = 100 mg L¯¹ Cᵢ = 200 mg L¯¹
0 0 662
200
400
600
Time (min)
800
1000
30
663
c)
1
0.8
Ct/Ci
0.6
0.4 Q = 5 mL min¯¹ 0.2
Q = 7 mL min¯¹ Q = 9 mL min¯¹
0 0 664
200
400
600
800
1000
Time (min)
665
Fig. 6. Influence of operating parameters on breakthrough profiles for Acid Blue 25 remediation 666 667 668 669 670 671 672 673 674 675
using WTR a) packing height (pH = 1, Ci = 100 mg L-1, Q = 7 mL min-1) b) influent concentration (pH = 1, Z = 4.5 cm, Q = 7 mL min-1) c) flow rate (pH = 1, Z = 4.5 cm, Ci = 100 mg L-1)
31
676
Table 1
677
Kinetic parameters for Acid Blue 25 remediation using WTR (pH = 1, W = 3.5 g L-1, t = 360 min) Model
Parameter st
Pseudo 1 order
Values
-1
Ci (mg L )
100
200
300
qcal (mg g-1)
27.67
50.92
70.19
kf (min-1)
0.0302
0.0239
0.0222
0.9890
0.9869
0.9896
0.8005
1.6494
1.8047
100
200
300
30.65
57.57
80.10
ks (g mg min )
0.0015
0.0006
0.0004
R2
0.9975
0.9972
0.9961
R
2
Error
Pseudo 2nd order
Ci (mg L-1) -1
qcal (mg g ) -1
-1
0.3777
0.7629
1.1092
Intra particle
-1
Ci (mg L )
100
200
300
First stage
Kd (mg g-1 min -1/2)
2.59
4.10
5.54
2.55
5.05
5.82
0.9931
0.9916
0.9846
0.71
1.02
1.08
18.11
36.03
53.97
0.9451
0.9323
0.9705
0.01
0.23
0.39
I (mg g )
27.92
47.73
64.02
R2
0.964
0.9682
0.9835
Error
-1
I (mg g ) R
Second stage
2
Kd (mg g-1 min -1/2) -1
I (mg g ) R
Third stage
2
Kd (mg g-1 min -1/2) -1
678 679 680 681 682 683
32
684
Table 2
685
Isotherm parameters for Acid Blue 25 remediation using WTR (pH = 1, W = 3.5 g L-1, t = 210 min) Isotherm
Parameter
Values
Temkin
T (K)
288
303
318
B1 (mg g-1)
16.74
17.46
17.94
K1 (L mg-1)
1.24
1.51
1.98
R2
0.9590
0.9599
0.9535
T (K)
288
303
318
qm (mg g-1)
111.99
118.91
127.14
KL (L mg-1)
0.029
0.032
0.034
R2
0.9197
0.9267
0.9309
T (K)
288
303
318
KR (L mg-1)
38.44
46.03
77.36
αR (L mg-1)β
1.44
1.56
2.51
β
0.7650
0.7685
0.7627
R2
0.9762
0.9770
0.9755
Langmuir
Redlich Peterson
686 687 688 689 690
33
691
Table 3
692
Maximum dye uptake (qm) and operating values for removal different anionic dyes Anionic dye
Adsorbent
pH
qm -1
Loading
Reference
-1
(mg g )
(g L )
Acid Blue 25
Waste tea residue
127.14
1
3.5
Present study
Acid Orange 7
Waste tea residue
5.73
2
4
(Khosla et al., 2013)
Acid Blue 25
Bagasse pith
17.50
-
5
(Chen et al., 2001)
Acid Blue 25
Water lettuce
24.50
2
-
(Kooh et al., 2018)
Acid Blue 25
Amine modified Populus
69.44
4
1
(Tka et al., 2018)
tremula
Acid Blue 113
Waste of potato peel
11.71
2
2.4
(Hoseinzadeh et al., 2014)
Acid Black 1
Waste of potato peel
1.79
3
2.4
(Hoseinzadeh et al., 2014)
Orange 2
Raw custard apple
2.15
4
8
(Sonawane and Shrivastava, 2011)
Congo red
Bengal gram seed husk
41.66
5.85
6
(Reddy et al., 2017)
Congo red
Cashew nut shells
5.18
3
20
(Kumar et al., 2010)
Reactive orange-
Strychnos
9.00
2
2
(Sankar et al., 2015)
M2R
potatorum Linn seeds
Acid Blue 129
Almond shell
11.95
2
16
(Fat’hi et al., 2014)
Reactive red 141
Sesame waste
27.55
1.1
4
(Sohrabi and Ameri, 2016)
Acid Orange 52
Paulownia tomentosa
10.50
2
0.5
Steud. leaf powder
(Deniz and Saygideger, 2010)
Reactive Blue 19
Corn silk
71.60
2
5
(Değermenc et al., 2019)
Reactive Red 218
Corn silk
63.30
2
5
(Değermenc et al., 2019)
Acid Yellow 220
Pine leaves
40.00
2
1
(Deniz and Karaman, 2011)
693
34
694
Table 4
695
Breakthrough parameters for different packing heights (Z), flow rates (Q) and influent concentrations (Ci)
696 697 698 699 700 701 702 703 704 705 706 707 708 709
Z
Q
Ci
tb
te
Ve
qm
(cm)
(mL min-1)
(mg L-1)
(min)
(min)
(L)
(mg g-1)
3
7
100
105
280
1.96
29.77
4.5
7
100
225
515
3.61
38.20
6
7
100
420
775
5.43
46.79
4.5
9
100
140
330
2.31
31.61
4.5
5
100
420
680
4.76
43.02
4.5
7
50
330
690
4.83
26.04
4.5
7
200
165
345
2.42
50.82
35
710
Table 5
711
Adam-Bohart and Thomas parameters at different operating parameters for Acid Blue 25 remediation dye
712
using WTR 3
4.5
6
4.5
4.5
4.5
4.5
7
7
7
9
5
7
7
100
100
100
100
100
50
200
5.71
4.55
4.04
5.42
2.71
5.38
2.74
26892
30398
33587
27838
32984
21314
41986
R2
0.8306
0.8449
0.8664
0.8182
0.8335
0.8310
0.8245
Error
0.1540
0.1562
0.1361
0.1614
0.1707
0.1718
0.1647
0.2512
0.1520
0.1226
0.2384
0.1377
0.2675
0.1263
qT (mg g-1)
30.70
38.69
47.46
31.95
42.74
26.02
51.18
qm (mg g-1)
29.77
38.20
46.79
31.61
43.02
26.04
50.82
R2
0.9988
0.9986
0.9986
0.9990
0.9985
0.9994
0.9990
Error
0.0130
0.0149
0.0139
0.0024
0.0023
0.0102
0.0122
Column
Z
operating
(cm)
parameters
Q
(mL min-1) Ci -1
(mg L ) Adams-
kA × 105 -1
-1
Bohart
(L mg min )
parameters
N0
(mg L-1)
Thomas parameters
713 714 715
kT -1
-1
(mL min mg )
Highlights •
Acid Blue 25 remediation using waste tea residue in batch and continuous study.
•
Maximum dye uptake obtained as 127.14 mg g-1 using waste tea residue.
•
Kinetic data fitted to pseudo second order model and equilibrium data fitted to Redlich Peterson model.
•
Breakthrough data of column study fitted to Thomas model.
•
Desorption and reusability confirmed effectiveness of waste tea residue in Acid Blue 25 remediation.
AUTHORSHIP STATEMENT
Manuscript Title: Batch and Continuous Studies for Adsorption of Anionic Dye onto Waste Tea Residue: Kinetic, Equilibrium, Breakthrough and Reusability Studies
All persons who meet authorship criteria are listed as authors, and all authors certify that they have participated sufficiently in the work to take public responsibility for the content, including participation in the concept, design, analysis, writing, or revision of the manuscript, etc.
Authorship’s contributions: Suyog N. Jain: Conceptualization, Methodology, Resources, Investigation, Writing-Original Draft, Writing-Review & Editing, Supervision and Proof reading Shahnoor R. Tamboli: Conceptualization, Methodology, Resources, Validation, Formal analysis, Investigation, Supervision and Proof reading Dipak S. Sutar: Conceptualization, Methodology, Resources, Validation, Formal analysis, Investigation, Supervision and Proof reading Sumeet R. Jadhav: Conceptualization, Methodology, Validation, Formal analysis, Investigation, Data Curation and Proof reading Jayant
V.
Marathe:
Conceptualization,
Methodology,
Validation,
Formal
analysis,
Investigation, Data Curation and Proof reading Ashraf A. Shaikh: Conceptualization, Methodology, Validation, Formal analysis, Investigation and Proof reading Ajay A. Prajapati: Conceptualization, Methodology, Validation, Formal analysis, Investigation and Proof reading
Thanking you with regards.
Dr. Suyog N. Jain Assistant Professor Department of Chemical Engineering
K. K. Wagh Institute of Engineering Education & Research, Nashik-422003, Maharashtra, India Phone: 91-253-2221265 E-mail address:
[email protected];
[email protected]
To, Editor Journal of Cleaner Production
Subject: Declaration of Interest statement
Dear Editor, I am submitting the revised manuscript entitled, “Batch and Continuous Studies for Adsorption of Anionic Dye onto Waste Tea Residue: Kinetic, Equilibrium, Breakthrough and Reusability Studies” for possible publication in Journal of Cleaner Production. On behalf of all authors, I declare that we have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.
Thanking you with regards.
Dr. Suyog N. Jain Assistant Professor Department of Chemical Engineering K. K. Wagh Institute of Engineering Education & Research, Nashik-422003, Maharashtra, India Phone: 91-253-2221265 E-mail address:
[email protected];
[email protected]