Journal Pre-proof Pyrolysis of municipal solid waste with iron-based additives: A study on the kinetic, product distribution and catalytic mechanisms Qiang Song, Hongyu Zhao, Jinwei Jia, Li Yang, Wen Lv, Jiuwen Bao, Xinqian Shu, Qiuxiang Gu, Peng Zhang PII:
S0959-6526(20)30729-0
DOI:
https://doi.org/10.1016/j.jclepro.2020.120682
Reference:
JCLP 120682
To appear in:
Journal of Cleaner Production
Received Date: 22 September 2019 Revised Date:
20 November 2019
Accepted Date: 18 February 2020
Please cite this article as: Song Q, Zhao H, Jia J, Yang L, Lv W, Bao J, Shu X, Gu Q, Zhang P, Pyrolysis of municipal solid waste with iron-based additives: A study on the kinetic, product distribution and catalytic mechanisms, Journal of Cleaner Production (2020), doi: https://doi.org/10.1016/ j.jclepro.2020.120682. 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. © 2020 Published by Elsevier Ltd.
Qiang Song: Writing - Original Draft Hongyu Zhao: Resources Jinwei Jia: Investigation Li Yang: Formal analysis Wen Lv: Validation Jiuwen Bao: Methodology Xinqian Shu: Data Curation Qiuxiang Gu: Funding acquisition Peng Zhang: Conceptualization Ideas
Pyrolysis of municipal solid waste with iron-based additives: a study on the kinetic, product distribution and catalytic mechanisms Qiang Song1, Hongyu Zhao2, Jinwei Jia3, Li Yang4, Wen Lv3, Jiuwen Bao1, Xinqian Shu5, Qiuxiang Gu6, Peng Zhang1* 1
Center for Durability & Sustainability Studies of Shandong Province, Qingdao
University of Technology, 266033 Qingdao, P.R. China 2
School of Civil and Resource Engineering, University of Science & Technology
Beijing, 100083 Beijing, P.R. China 3
Central Research Institute of Building and Construction Co., Ltd., MCC Group,
Beijing, 100088 Beijing, P.R. China 4
Chinese Research Academy of Environmental Science, Beijing 100012, P.R. China
5
School of Chemical and Environmental Engineering, China University of Mining &
Technology, Beijing, 100083 Beijing, P.R. China 6
Key Laboratory of Coal Resources Exploration and Comprehensive Utilization,
Ministry of Land and Resources, 710000 Xi'an, P.R. China
Qiang Song1, E-mail:
[email protected] Hongyu Zhao2, E-mail:
[email protected] Jinwei Jia3, E-mail:
[email protected] Li Yang4, E-mail:
[email protected] Wen Lv3, E-mail:
[email protected]
Jiuwen Bao1, E-mail:
[email protected] Xinqian Shu5, E-mail:
[email protected] Qiuxiang Gu6, E-mail:
[email protected] Peng Zhang1*,
[email protected], Tel.: +86 0532-85071202; Conflicts of interest There are no conflicts to declare.
1
Pyrolysis of municipal solid waste with iron-based additives:
2
a study on the kinetic, product distribution and catalytic
3
mechanisms
4
Qiang Song1, Hongyu Zhao2, Jinwei Jia3, Li Yang4, Wen Lv3, Jiuwen Bao1, Xinqian
5
Shu5, Qiuxiang Gu6, Peng Zhang1*
6
1
7
University of Technology, 266033 Qingdao, P.R. China
8
2
9
Beijing, 100083 Beijing, P.R. China
Center for Durability & Sustainability Studies of Shandong Province, Qingdao
School of Civil and Resource Engineering, University of Science & Technology
10
3
11
Beijing, 100088 Beijing, P.R. China
12
4
Chinese Research Academy of Environmental Science, Beijing 100012, P.R. China
13
5
School of Chemical and Environmental Engineering, China University of Mining &
14
Technology, Beijing, 100083 Beijing, P.R. China
15
6
16
Ministry of Land and Resources, 710000 Xi'an, P.R. China
17
* Corresponding author: Zhang Peng. Tel.: +86 0532-85071202;
18
E-mail address:
[email protected]
19
Abstract
20
To realize highly efficient and environmentally friendly utilization of municipal solid
21
waste (MSW) and iron ore, we proposed a novel method for combining MSW
Central Research Institute of Building and Construction Co., Ltd., MCC Group,
Key Laboratory of Coal Resources Exploration and Comprehensive Utilization,
22
pyrolysis and iron ore reduction. The effects of two iron-based additives (iron ore
23
and iron oxide) on the pyrolysis characteristics of MSW were first investigated by
24
using TGA, and the kinetic results illustrated that the average activation energy of
25
MSW pyrolysis was 180.32 kJ/mol. By adding iron ore and iron oxide, the activation
26
energy decreased to 151.76 and 150.18 kJ/mol, respectively. Then, the product yield
27
and product composition of MSW were analyzed by a fixed-bed reactor, GC-MS and
28
GC. The fixed-bed reactor experiments of MSW pyrolysis indicated that the iron ore
29
and iron oxide acted as catalysts to change the yield and composition of pyrolysis
30
gas and tar, thereby promoting thermal cracking of MSW and showing a high
31
conversion rate for MSW pyrolysis (55.81 and 55.05%). The GC-MS and GC
32
analyses demonstrated that the two additives could significantly reduce the
33
heteroatomic compounds of pyrolysis tar and increase H2, CO and CO2 production.
34
Furthermore, the reduction of iron ore and the catalytic mechanism were analyzed by
35
H2-TPR, XPS and BET. The H2-TPR results showed that compared with the peak of
36
iron oxide, the characteristic peaks of iron ore shifted to a high temperature due to
37
being suppressed by minerals in the iron ore. XPS suggested that the MSW volatiles
38
led to an increase in the binding energy of Fe 2p3/2 and Fe 2p1/2 and a decrease in
39
the binding energy of O 1s during the reduction of iron ore. BET analysis indicated
40
that the high activity of the catalyst might be attributed to its high surface area.
41
Key words: Pyrolysis; Municipal solid waste; Iron-based additives Nomenclature MSW Municipal solid waste MSW+1 MSW with iron ore MSW+2 MSW with iron oxide
XRD H2-TPR TGA GC GC-MS HRTEM BET α k EA A R T β m m1 m2 m1 Y1 Y2 Y3 Y4 Y5 ANOVA I ALH ALO PHE PAH HAC MAH ARO 42
X-ray diffraction H2-Temperature programme reduction Thermogravimetric analysis Gas chromatography Gas chromatography-mass spectrometer High resolution transmission electron microscope Brunauer-emmett-teller Fractional conversion Rate constant Activation energy Pre-exponential factor Universal gas constant Temperature Heating rate (K/min) Mass of feedstock in fixed-bed reactor Mass of char Mass of tar Mass of water The yield of char The yield of tar The yield of water The yield of gas The pyrolysis conversion rate Variance analysis Addition rate Aliphatic hydrocarbon Aliphatic oxygenates Phenols Polycyclic aromatic hydrocarbon Heteratomic compounds Monocyclic aromatic hydrocarbon Aromatic oxygenates
1 Introduction
43
The amount of municipal solid waste (MSW) reached 2.15×108 tons in 2017
44
according to the China National Bureau of Statistics. The accumulation of MSW in
45
the open air causes health and environmental issues, such as pollution in the air, land
46
and water, due to bacteria and insects, so it is urgent to develop treatment,
47
management and disposal technologies for MSW (Chen et al. 2015). In general, the
48
disposal methods of MSW are landfill, compost and incineration. The landfill disposal
49
of MSW accounts for more than 90% of the total MSW in Beijing (Yao et al. 2019);
50
however, it has multiple problems, such as the presence of hazardous organic
51
compounds in the leachate and landfill gas (Fang et al. 2017; Bejgarn et al. 2015).
52
Composting is recognized as a biological decomposition and stabilization technology
53
for organic MSW, but it also suffers from a long production turnaround time and
54
occupation of land (Doña-Grimaldi et al. 2019; Sánchez et al. 2017). Furthermore,
55
composting MSW presents a large risk of greenhouse gas (e.g., CH4, CO and N2O)
56
emissions (Ermolaev et al. 2019). Although MSW incineration significantly decreases
57
the content of MSW, it also has the risk of releasing dioxin and acidic gas, and the ash
58
from MSW incineration is classified as hazardous for its high content of heavy metals
59
(e.g., Pb, Zn, Cu, Cd and Hg) (Alorro et al. 2008).
60
MSW pyrolysis is taken as a simple and easily conducted technology (Fu et al.
61
2018). MSW is a continual feedstock that provides season-wide usability for pyrolysis
62
production. Because of the versatile composition of MSW, energy is stored in the
63
form of chemical bonds between C, H and O, and cracking those bonds releases
64
energy to produce chemicals and fuels (e.g., gas, liquid and char). It has been reported
65
that the heating value of MSW production is approximately 20 MJ/kg (Sipra et al.
66
2018), which can be used in power generation, transportation and petrochemical
67
industries, and pyrolysis of MSW has higher energy recovery efficiency than those of
68
other thermochemical reactions. In addition, MSW pyrolysis has the characteristics of
69
a low emission of heavy metals, nitrogen oxides and sulfur oxides due to its reductive
70
atmosphere (Shen et al. 2018; Younan et al. 2016). Hence, easy availability, high
71
energy recovery efficiency and environmental friendliness are the advantages of
72
MSW as a feedstock for pyrolysis.
73
To date, studies have been extensively conducted on MSW pyrolysis
74
characteristics and their products, while other studies have focused on the effect of the
75
experimental conditions and feedstock components on MSW pyrolysis (Williams et al.
76
2013;Ramos et al. 2018 Lin et al. 2016). For example, Ma et al. (2019) investigated
77
the pyrolysis characteristics of five typical MSW components and the interaction of a
78
mixture of those components; Xue et al. (2015) studied the effect of pyrolysis
79
temperature on product yield, light gases and cracking of pyrolysis-oil. As an effective
80
pyrolysis method, catalytic pyrolysis of MSW has recently been increasing. For
81
example, Ates et al. (2013) observed the pyrolysis characteristics of MSW in the
82
absence of catalysts (e.g., Y-zeolite, β-zeolite, HZSM-5 and Al(OH)3), and the results
83
showed that the added catalysts promoted the volatile matter of MSW and converted
84
aliphatic hydrocarbons to aromatic; Sebestyen et al. (2017) demonstrated that the
85
decomposition temperature of plastic decreased markedly in the absence of an
86
HZSM-5 catalyst; Fang et al. (2016) compared the pyrolysis characteristics and
87
activation energy of MSW with and without three additives (MgO, Al2O3 and ZnO),
88
and a decreasing trend in the initial temperature and activation energy of MSW
89
pyrolysis was found. In addition to the above catalysts, the addition of biomass and
90
char (biochar and MSW char) to the pyrolysis of MSW has received attention for its
91
easy availability and catalytic reforming (Wang et al. 2017a; Zhao et al. 2017a).
92
Although studies on the catalytic pyrolysis of MSW have been conducted, the above
93
catalysts have suffered from various problems, such as being costly or easily
94
deactivated. The unpaired electrons and spare orbits in Fe cause the absorption of
95
active groups leading to pyrolysis conversion, thus, Fe-based catalysts are widely
96
recognized as an efficient and economic catalyst for the pyrolysis of coal, biomass,
97
sludge and so on. (Xu et al. 2018; Liu et al. 2017; Yu et al. 2018; Xing et al. 2017).
98
For example, Xu et al. (1989) compared the effect of four metal oxides on the volatile
99
cracking of coal. The results revealed that the abilities of metal oxides to crack
100
aliphatic
and
aromatic
hydrocarbons
were
in
the
following
order:
101
Fe2O3 >Al2O3 >CaO >SiO2. Shao et al. (2010) investigated the catalytic effects of
102
metal oxides on the pyrolysis of sewage sludge, and the results proved that the
103
additives accelerated the initial decomposition of sludge samples, and the decreasing
104
order of additives on the weight loss rate of the samples was as follows: Fe2O3 > CaO.
105
Liu et al. (2016) found that Fe2O3 facilitated the decomposition of MSW. Although
106
the application of Fe2O3 in promoting the conversion of coal, biomass and sludge has
107
been sufficiently investigated, the above studies of metal oxides on the effect of
108
sample pyrolysis were mainly focused on the kinetics, and the application of Fe or
109
Fe-based additions on the pyrolysis of MSW needs to be further investigated.
110
Moreover, the application of iron ore on the thermal cracking behaviors and product
111
distribution of MSW has rarely been reported. Iron ore, especially hematite, is widely
112
known to have high availability and low utilization in China due to its weak magnetic
113
strength and low grade (Li et al. 2010a). The disposal of MSW with iron-based
114
additives not only promotes the pyrolysis conversion of MSW by the catalytic effect
115
of iron but also the iron is reduced by the pyrolysis gas.
116
The aim of this paper is to investigate the effect of iron-based additives on the
117
thermal cracking behavior and product composition of MSW. MSW with pure iron
118
oxide and typical iron ore are systemically and comprehensively compared. First, the
119
effects of pyrolysis temperature, heating rate, residence time and rate of catalyst
120
addition on the conversion rate of MSW pyrolysis are conducted on a fixed bed
121
reactor to determine the optimum conditions. It is remarkable that MSW is a similar
122
concept to a supply chain (Hao et al. 2018; Awasthi et al.2019; Sayyadi et al. 2018;
123
Rabbani et al. 2019; Gharaei, et al. 2019a; Sayyadi et al. 2019; Tsao et al. (2015). In
124
this paper, a response surface methodology was proposed to optimize MSW pyrolysis
125
with iron ore. Then, the kinetic parameters, gas and tar composition with iron ore and
126
iron oxide were investigated by TGA, GC and GC-MS. Furthermore, the reduction
127
rules of the two iron-based additives were tested by XRD, H2-TPR and TEM. Finally,
128
the mechanisms of MSW with iron ore and iron oxide were investigated by XPS and
129
BET. The concept of utilizing disposal waste (MSW pyrolysis) with waste (iron ore)
130
as a means of recycling is developed for the high conversion of organic solid waste.
131
The disposal of MSW with iron-based additives can be helpful for obtaining fuels
132
(e.g., pyrolysis tar and syngas) and recycling weak magnetic iron ore with a low
133
grade.
134
2 Materials and Methods
135
2.1 Materials
136
In this paper, MSW from the Datun transfer station in Beijing of China was
137
obtained. The inorganic part of MSW was sorted out and then dried at 105 °C for 10
138
hours by a vacuum dryer (Zhongxingweiye, DF-6020). Organic components of four
139
samples were homogeneously mixed and broken by a crusher (Tiandishouhe, FS-100),
140
then the samples were sieved by passing through a 100-mesh standard screen. The
141
composition, proximate and element analyses of MSW were performed according to a
142
previous paper (Song et al. 2018), and the results are shown in Table 1. Iron oxide
143
(Fe2O3) was purchased from Sinopharm Chemical Reagent Co., Ltd. (CAS number:
144
309-37-1), and iron ore (hematite) was collected from Tulufan, Xinjiang Uygur
145
Autonomous Region of China. The chemical composition analysis of iron ore was
146
based on the national standard GB/T 6730, and the results are shown in Table 1. The
147
pyrolysis experiments of MSW with iron ore and iron oxide are termed MSW+1 and
148
MSW+2, respectively.
149
2.2 Experiment devices and methods
150
2.2.1. Thermogravimetric experiment
151
In this paper, a thermogravimetric analysis (Mettler Toledo, TGA2-SF) was used
152
to investigate the pyrolysis characteristics of MSW. Before the TG analysis, the MSW
153
was homogeneously mixed with iron ore and iron oxide, and the additive amount of
154
iron ore and iron oxide was both 5%. During the pyrolysis process, approximately 15
155
mg of samples was measured with a high-purity N2 flow of 40 mL/min, and the final
156
temperature was set at 900 °C with a heating rate of 20 °C /min.
157
In this paper, the Flynn-Wall-Ozawa (FWO) and Kissinger-Akahira-Sunose (KAS)
158
methods were applied to obtain the parameters of MSW pyrolysis. The details of the
159
pyrolysis kinetic model were based on a previous study (Fong et al. 2019; Singh et al.
160
2020; Zhao et al. 2018). Equations (1) and (2) represent the FWO and KAS methods.
161
In Equation (2), the activation energy of FWO was obtained by ln(β) against 1/T, and
162
the activation of KAS was obtained by ln(β/T2) against 1/T. A pre-exponential value
163
(A) was obtained from the intercept. The results of the kinetic analysis are shown in
164
Table. 4.
ln(β ) = ln(
ln(
β T
2
0.0048 AEA E ) −1.502 A Rg (a) RT
) = ln
AR E − A EA g (a) RT
(1)
(2)
165
In the above equations, α, β, T are the pyrolysis conversion rate of MSW, heating
166
rate and thermodynamic temperature (K), respectively; A and EA represent the
167
frequency and pyrolysis activation energy, respectively; and R is the universal gas
168
constant 8.314 J/mol•K.
169
2.2.2. Fixed-bed pyrolysis experiments
170
To investigate the effect of iron ore on the yield of MSW and product
171
composition, a laboratory fixed-bed device (Fig. 1) was designed and used, and the
172
parameters of the device can be seen in our previous research (Song et al. 2019a).
173
Before each test, high-purity N2 with a flow rate of 40 ml/min was injected into the
174
quartz tube to maintain an inert atmosphere for reactions. The reaction temperature
175
was set at 300, 375, 450, 525, and 600 °C, respectively, with a heating rate of
176
10-30 °C /min. The pyrolysis samples were incubated for 5-45 min after the final
177
temperature was reached and then cooled down with N2. Char products were collected
178
and weighed after being cooled to room temperature. Pyrolysis tar was collected with
179
dichloromethane and then distilled by a rotary evaporator and analyzed by GC-MS
180
(Thermo Fisher Orbitrap
181
analyzed by GC (Shjinmi GC112A). The detailed parameters of GC-MS and GC can
182
be seen in our previous research (Zhao et al. 2019a). The product yield was calculated
183
as follows:
TM
). The gas products were collected in a gas bag and then
m1 × 100% m m Y2 = 2 × 100% m m Y3 = 3 × 100% m Y1 =
Y4 =100-Y1 −Y2 −Y3 Y5 =100-Y1
(3) (4) (5) (6) (7)
184
Where Y1, Y2, Y3 and Y4 are the yield of pyrolysis char, tar, water and gas,
185
respectively; Y5 is the pyrolysis conversion rate; and m1, m2, m3 and m represent the
186
mass of char, tar, water and feedstock, respectively.
187
2.2.3. Analysis of iron ore and iron oxide characteristics
188
To analyze the mechanistic iron catalysis and its reduction pathway, the crystal
189
structures of the samples were analyzed by X-ray diffraction (XRD, PANalytical
190
X’Pert PRO). To investigate the redox properties of the samples, H2-TPR
191
(Micromeritics, Auto Chem Ⅱ 2920) was conducted in this paper. In addition,
192
transmission electron microscopy (TEM, JEM 2100F) and X-ray photoelectron
193
spectroscopy (XPS, Escalab 250Xi) analyses were used to investigate the surface
194
microstructure and elemental speciation of the samples. In Figs. 8-10 and Table 5, the
195
iron ore and iron oxide before and after the reaction were termed iron ore-0, iron ore-1
196
and iron oxide-0, iron oxide-1, respectively.
197
3 Results and Discussion
198
3.1 Effect of pyrolysis conditions on MSW conversion
199
3.1.1. Fix-bed reactor experiments of MSW pyrolysis
200
Fig. 2(a), (b) and (c) shows the conversion rate as a function of temperature,
201
heating rate, and holding time during MSW pyrolysis. In Fig. 2(a), the pyrolysis
202
temperature was 300, 375, 450, 525 and 600 °C, the heating rate was 10 °C/min, and
203
the residence time was 25 min. As shown in Fig. 2(a), the conversion rate increased as
204
the temperature increased to 525 °C (46.32%). A decrease in the conversion rate was
205
observed after 525 °C owing to a secondary cracking of organic volatiles (Yue et al.
206
2019b; Zhao et al. 2017b). In Fig. 2(b), the conversion rate of pyrolysis initially
207
increased with increasing heating rate (<20 °C/min), reaching a maximum of 49.32%
208
at 20 °C/min. In Fig. 2(c), the conversion rate of pyrolysis started to increase with
209
increasing holding time (<35 min) because promoting the holding time is conducive
210
to the release of volatile matter and thus to increasing the conversion rate (Yu et al.
211
2018); the maximum conversion rate of MSW pyrolysis reached 49.83% at 35 min.
212
The effects of iron ore and iron oxide on the conversion rate of MSW pyrolysis are
213
shown in Fig. 2(d). The results in Fig. 2(d) revealed that both iron ore and iron oxide
214
could promote the conversion rate of MSW pyrolysis. With the addition of up to 7.5%
215
iron ore and iron oxide, the conversion rates of MSW+1 and MSW+2 increased to
216
55.81 and 55.05%, respectively. According to previous research by Fu et al. (2016),
217
the addition of iron oxide significantly influenced thermal cracking of the feedstock,
218
which in turn enhanced its reactivity. In addition, the conversion rate of MSW showed
219
a difference with the same amount of iron ore and iron oxide, which might be
220
attributed to the difference in chemical composition and physical structure between
221
iron ore and iron oxide. As shown in the figure, the promotion effect of iron oxide was
222
greater than that of iron ore under a low concentration of additive, but it was opposite
223
under a high concentration of additive.
224
3.1.2 Response surface methodology experiments of MSW pyrolysis
225
In this paper, a central composite method (by Design Expert 10 software) was
226
applied to evaluate the interactions of the parameters according to previous research
227
(Sulaiman et al. 2018; Yuan et al. 2019). The pyrolysis temperature (T), heating rate
228
(β) and addition rate (I) were explored according to the results of Fig. 2. Table 2
229
shows the experimental design and result of MSW+1 and MSW+2 pyrolysis. As
230
shown in Table 2, the three pyrolysis parameters were categorized into four levels, i.e.,
231
temperature (483, 500, 525 and 550 °C), and 40 experiments were carried out
232
according to the experimental design for MSW+1 and MSW+2.
233
Table 3 is the variance (ANOVA) analysis of the data based on Table 2, and the
234
3D response surface image for conversion rate is shown in Fig. 3. As shown in the
235
table, for MSW+1, the F value of 23.81 revealed that the model fits well, with a
236
P-value Prob>F (P value) of less than 0.0001. The P value>F illustrated that the
237
T-temperature and I-addition rate are significant factors (<0.05), while the β-heating
238
rate is not significant. The P value analysis of Tβ, TI and βI showed that the
239
descending order of combination effects was TI (0.03256), Tβ (0.21558) and βI
240
(0.65963), and the interaction between the T and I factors was significant. For
241
MSW+2, the P value illustrated that T-temperature was a significant factor, while
242
β-heating rate and I-addition were insignificant. Based on the data in Table 2, two
243
quadratic models were proposed as follows: MSW + 1_Conversion rate = 55.71 + 0.97 ∗ T − 0.042 ∗ β + 0.81 ∗ I
244
+0.25 ∗ Tβ − 0.47 ∗ TI + 0.086 ∗ βI − 1.42 ∗ T ! − 0.52 ∗ β! − 0.85 ∗ I! (8) MSW + 2_Conversion rate = 55.79 + 0.85 ∗ T + 0.12 ∗ β − 0092 ∗ I
245
+0.28 ∗ Tβ + 0.29 ∗ TI − 0.034 ∗ βI − 1.34 ∗ T ! − 0.8 ∗ β! − 0.8 ∗ I! (9)
246
The R2 (MSW1, 0.9554 and MSW+2, 0.9572) proved that the quadratic model
247
agreed well with the experimental data (Noordin et al. 2004). Fig. 3 shows the 3D
248
response surface image for the conversion rate, Fig. 3(a)-(c) correspond to MSW+1,
249
and Fig. 3(d)-(f) correspond to MSW+2. The optimal level and interaction of the
250
parameters can be concluded from the image. The convex surface of the 3D response
251
surface image indicated a maximum value for the variable (Gao et al. 2010). The
252
figure suggested that for MSW+1, the interaction between factor T and β was
253
significant, while the interaction between β and I, and between T and I were almost
254
insignificant. According to previous research, the maximum conversion rate could be
255
obtained by the surface confined in the smallest ellipse (Tanyildizi et al. 2005), and
256
the predicted maximum value of the model reached 56.01% (MSW+1) at 532.05 °C
257
with a heating rate of 20.15 °C/min and an addition of 8.01%. The maximum value of
258
the model reached 55.94% (MSW+2) at 533.25 °C with a heating rate of
259
20.33 °C/min and an addition of 7.5%. Then, verification experiments were
260
performed, and the maximum conversion rate of MSW+1 and MSW+2 that could be
261
reached were 56 and 55.9% with the above conditions, which indicated that the
262
experimental data was close to the theoretical data and the quadratic model fit well.
263
3.2 Thermal degradation of MSW and its products
264
3.2.1. TG analysis of MSW pyrolysis
265
The thermal cracking behaviors of MSW with and without the presence of iron
266
ore and iron oxide were tested by TGA, and Fig. 4 shows the TG curves of the
267
samples at heating rates of 10, 20 and 30 °C/min. According to Fig. 4, the pyrolysis
268
process of MSW could be divided into three stages: volatility of small molecular
269
gases and moisture (from room temperature to 200 °C), decomposition of
270
macromolecular organic compounds (from 200 to 600 °C) and decomposition of
271
minerals (from 600 to 800 °C) in MSW. The TG curves of the three samples were the
272
same as the temperature increase. In the first and last stages of MSW pyrolysis, a
273
slight weight loss was observed, while samples exhibited a major weight loss in the
274
second stage. In the first stage, the weight loss of MSW, MSW+1 and MSW+2 were
275
4.11-5.19%, 3.51-5.44% and 1.80-5.51%, respectively. The added iron ore and iron
276
oxide had no significant influence on the vaporization of moisture in MSW. In the
277
second stage, as the temperature reached 600 °C, the weight losses of MSW, MSW+1
278
and MSW+2 were 58.22-59.34%, 59.98-66.75% and 59.98-64.94%, respectively. The
279
above results proved that iron oxide and iron ore could enhance the pyrolysis
280
conversion of macromolecular organic compounds in MSW. Fig. 4(b) and (c) also
281
illustrated that the weight loss of MSW+1 was higher than that of MSW+2, indicating
282
that Fe2O3 had a greater impact than that of the other minerals in iron ore. In addition,
283
a right shift of the TG curve was observed when the heating rate increased from 10 to
284
30 °C/min, which was consistent with previous research (Singh et al. 2020; Song et al.
285
2019b). This might be due to the influence of heat transfer at various heating rates that
286
led to a delayed decomposition (Wu et al. 2019a).
287
The kinetics of MSW were investigated by using two typical kinetic methods
288
(FWO and KAS), and the results are shown in Fig. 5 and Table 4. According to the
289
results of KAS (Table 4), the average EA of MSW was 179.62 kJ/mol, while with the
290
presence of iron oxide and iron ore, the average EA of MSW was 154.56 and 153.99
291
kJ/mol, respectively. The average EA of MSW, MSW+1 and MSW+2 were 180.32,
292
151.76 and 150.18 kJ/mol, respectively (by FWO). These results illustrated that the
293
presence of the two iron-based additives reduced the activation energy of MSW
294
pyrolysis, and the decrease of the activation energy indicated the catalytic influence
295
in the pyrolysis process and the potential for transforming MSW into chemicals and
296
fuels. The value of A represents the degree of collision of the MSW pyrolysis
297
reaction in each minute. As shown in Table 4, for individual MSW pyrolysis, the
298
average A values were 1.01×1019 and 1.60×1019S-1, from the KAS and FWO kinetic
299
models, respectively; the results of MSW with the presence of iron oxide were
300
3.47×1018 and 2.41×1018 S-1, respectively, and the A values of MSW with the
301
presence of iron ore were 1.77×1018 and 9.05×1017 S-1, respectively. A low A value
302
indicated that less heat was required for molecular collision. As shown in Table 4,
303
the correlation coefficients (R2) had a good linear plot between lnβ (and lnβ/T2) and
304
1/T at various conversions from 0.1-0.9, and the average R2 of KWO was higher
305
than that of KAS, which indicated that the FWO model gave the best prediction of
306
MSW pyrolysis.
307
3.2.2. Composition of MSW gas
308
The releasing characteristics of pyrolysis gas are shown in Fig. 6. As shown in the
309
figure, H2, CH4, CO and CO2 were the main components of MSW pyrolysis gases. It
310
has been reported that unpaired electrons and spare orbits in iron cause an absorption
311
of active groups, leading to a release of free radicals and gas (Chareonpanich et al.
312
1995). As shown in Fig. 6(a), both the addition of iron ore and iron oxide promoted
313
the yield of H2, which was consistent with that of previous research (Sato et al. 1989).
314
Furthermore, the addition of iron oxide had a greater effect on promoting H2 yield
315
than that of iron ore, which indicated that Fe2O3 was more active on promoting the
316
polycondensation of aromatic rings than that of the other minerals in iron ore. The
317
maximum H2 yield of MSW+1 and MSW+2 reached 10.41 and 11.32% at 10% iron
318
ore and 10% iron oxide, respectively. The CH4 of the pyrolysis gas mainly came from
319
the cracking of the aliphatic side chain (Wu et al. 2019b), and the addition of iron ore
320
and iron oxide had an insignificant influence on the CH4 yield.
321
The addition of iron ore and iron oxide significantly enhanced the yield of CO
322
and CO2. As the addition rate of iron ore and iron oxide reached 10 and 7.5%,
323
respectively, the CO yields of MSW+1 and MSW+2 reached maximum values of
324
25.88 and 24.84%, respectively. For CO2, the maximum values of MSW+1 (with 10%
325
iron ore) and MSW+2 (with 10% iron oxide) reached 22.77 and 21.03%, respectively.
326
CO and CO2 mainly came from the decomposition of oxygen-containing functional
327
groups, and the yield of CO and CO2 was higher than that of H2 and CH4, which
328
indicated that MSW contained a relatively high content of oxygen. In addition, the
329
changing trend of gas production was not in accordance with the conversion rate of
330
MSW in Fig. 2(d), which illustrated that the gas of MSW pyrolysis came not only
331
from the primary pyrolysis process but also from the secondary thermal cracking of
332
the volatiles.
333
3.2.3. Chemical composition of MSW tar
334
The products of MSW, MSW+1 and MSW+2 with better pyrolysis conversion
335
rates were selected for further analysis by GC-MS and GC. Fig. 7 shows the GC-MS
336
analysis of MSW pyrolysis tar, and the chemical compounds of MSW, MSW+1 and
337
MSW+2 are shown in Appendix A. Concentration information from GC-MS is given
338
with the help of pure standards. In Fig. 7(b), the chemical compounds of MSW
339
pyrolysis tar were divided into seven kinds: aliphatic hydrocarbon (ALH), monocyclic
340
aromatic hydrocarbon (MAH), polycyclic aromatic hydrocarbon (PAH), phenols
341
(PHE), heteroatomic compounds (HAC), aliphatic oxygenates (ALO) and aromatic
342
oxygenates (ARO). As shown in Fig. 7(b), the tar mainly consisted of ALH, MAH and
343
HAC (nitrogen-containing compounds and sulfur-containing compounds). The
344
addition of iron ore and iron oxide both enhanced the concentration of ALH and MAH
345
and decreased the concentration of HAC, indicating that the addition of iron ore and
346
iron oxide were beneficial to the decomposition of HAC and that HAC decomposed
347
to form ALH and MAH. Virginie et al. (2010) found that iron could break the C-C and
348
C-H bonds, and Kandel et al. (2014) reported that short-chain aliphatic hydrocarbons
349
underwent cyclization and aromatization to form aromatics with the presence of iron.
350
Therefore, the reaction pathway of HAC, ALH and MAH might be that the addition of
351
iron ore and iron oxide increased the cracking of the C-C and C-H of HAC, which
352
caused the enhancement of ALH and MAH. Thus, the cyclization and aromatization
353
of ALH contributed to the increase of MAH (Fig. 7d). From Fig. 7(b), we can also
354
conclude that the addition of iron ore decreased the concentrations of PHE, ALO and
355
ARO. The concentrations of PHE, ALO and ARO in MSW were 2.39, 5.14 and 2.96
356
×107, respectively, while the concentrations of PHE, ALO and ARO in MSW+2 were
357
0.20, 1.82 and 0×107, respectively. The decrease of the above three oxygen-containing
358
compounds might be caused by direct deoxygenation or hydrogenation and then
359
deoxygenation over iron oxide (Bunch et al. 2002; Zeng et al. 2018). As shown in Fig.
360
7(b), a low concentration of PAH was detected in MSW+2, while no PAH was
361
detected in MSW and MSW+1, indicating that the iron oxide had an effect on
362
promoting the condensation of MAH, thus accelerating PAH performance (Zhang et
363
al. 2019b). For ALO and ARO, the addition of iron oxide enhanced the concentration,
364
which can be attributed to the cracking reaction of HAC over iron oxide (Zhang et al.
365
2019c). Fig. 7(c) shows that the relative concentration of carbon chains with less than
366
5, 5-10 and higher than 10 carbons in MSW was 40.44, 22.17 and 5.77×107,
367
respectively. MSW exhibited a higher fraction of carbon chains with less than five
368
carbons compared to those of MSW+1 and MSW+2. Compounds with carbon chains
369
with less than 5 carbons in MSW were mainly composed of acethydrazide (C2H6N2O),
370
and the compounds with carbon chains with higher than 5 and less than 10 carbons in
371
MSW+1 and MSW+2 were mainly composed of ALH and MAH, which indicated that
372
the breaking of acethydrazide contributed to the production of ALH and MAH with
373
the presence of iron ore and iron oxide.
374
3. 3 Mechanism analysis
375
3.3.1 Phase transformation of iron ore and iron oxide
376
XRD and TPR were applied in this part to investigate the effect of pyrolysis
377
volatiles on the phase composition of the additives; the results are shown in Fig. 8. In
378
Fig. 8(a), the iron ore and iron oxide before and after the reaction were termed iron
379
ore-0, iron ore-1, and iron oxide-0, iron oxide-1, respectively. The XRD results
380
demonstrated minerals consisting of SiO2 and Fe2O3 in the iron ore. The iron-based
381
oxides underwent reduction with the presence of reductive gases (e.g., H2, CO and
382
CH4), and the resulting phase transformation caused the appearance of Fe3O4 and Fe;
383
thus, the reduction process of Fe2O3 was in the sequence of Fe2O3→Fe3O4 →FeO
384
→Fe (Wang et al. 2017b). From Fig. 8(a), we can learn that during the synergistic
385
disposal of MSW and the iron-based catalyst, the Fe3O4 and Fe intensity of iron oxide
386
was higher than that of iron ore, which revealed that a deeper reduction of iron oxide
387
occurred than that of iron ore by the reductive gases. To understand the redox
388
properties of the samples, H2-TPR was conducted in Fig. 8(b). As shown in the figure,
389
the pure iron oxide sample had reduction peaks belonging to Fe2O3 (Kim et al. 2010).
390
Two obvious peaks at 341 and 548 °C occurred in the H2-TPR, and they represented
391
the reduction of Fe2O3 into Fe3O4 and the reduction of Fe3O4 → FeO→ Fe,
392
respectively (Zhou et al. 2017). Compared with the peak of iron oxide, the
393
characteristic peaks of iron ore shifted to a high temperature. The reduction of Fe2O3
394
into Fe3O4 and the reduction of Fe3O4 → FeO→ Fe were at 577 and 877 °C,
395
respectively, which indicated that the minerals (e.g., CaO, Al2O3 and SiO2) in iron ore
396
inhibited the reduction of Fe2O3. In this paper, the pyrolysis temperature was set at
397
approximately 550 °C, so the reduction of Fe2O3 into Fe3O4 and the reduction of
398
Fe3O4 → FeO→ Fe occurred in iron oxide, while only the reduction of Fe2O3 into
399
Fe3O4 occurred in iron oxide, so this might explain the occurrence of Fe in the iron
400
oxide by XRD (Fig. 8a).
401
The microstructure of the four samples was tested using a high-resolution
402
transmission electron microscope (HRTEM), and the results are shown in Fig. 9. Fig.
403
9(a) and Fig. 9(b) revealed that nanoparticles of pure iron oxide and iron ore before
404
the reaction had similar shapes and strong lattice fringes, indicating high crystallinity
405
of the formed Fe2O3. The interplanar spacings of the (311) and (220) planes of iron
406
oxide-0 and iron ore-0 were 0.258 and 0.294 mm, respectively. In Fig. 9(c) and Fig.
407
9(d), the interplanar spacings of the (311) and (220) planes of iron oxide-1 and iron
408
ore-1 were 0.268 and 0.305 mm, respectively. The interplanar spacings of the (311)
409
and (220) planes were in accordance with those of previous research results (Yue et al.
410
2019a). The XRD analysis of the iron oxide-1 and iron ore-1 showed that the main
411
contributor of Fe-bearing phases was Fe3O4, and the similarity between the XRD
412
patterns of Fe2O3 and Fe3O4 indicated a similar crystal structure. The (440) planes of
413
iron ore-1 were observed with interplanar spacings of 0.158 nm in Fig. 9(d).
414
Compared with those of iron oxide-0 and iron ore-0, iron oxide-1 and iron ore-1
415
showed irregular surface lattice fringes, which indicated that the reduction of surface
416
FexOy-bearing phases occurred with the help of CO, CH4 and H2.
417
3.3.2 XPS analysis of iron ore and iron oxide
418
XPS was applied in this section to investigate the surface chemical state and
419
bonds of Fe and O; the results are shown in Fig. 10. The results of the Fe 2p spectra
420
show that the peaks of Fe 2p3/2 in iron ore-0, iron ore-1, iron oxide-0 and iron
421
oxide-1 are 710.70, 710.65, 710.58, and 710.56 eV, respectively. Compared with those
422
of iron ore-0 and iron oxide-0, iron ore-1 and iron oxide-1 have low intensity and low
423
binding energy. The decrease of intensity in iron ore-1 and iron oxide-1 may be due to
424
an absence of Fe on the surface of the samples and a valence state change of Fe. It has
425
been widely accepted that lower valence states of Fe have lower binding energies.
426
Therefore, the decreased binding energy of iron ore-1 and iron oxide-1 indicated that
427
a reduction reaction occurred in the iron oxide and iron ore. It is noteworthy that the
428
satellite peaks of Fe 2p3/2 and Fe 2p1/2 disappear in iron ore-1 and iron oxide-1, and
429
this may account for the counteraction of the satellite peak of an Fe2+O octahedron at
430
approximately 717 eV. The reduction of iron ore and iron oxide contributed to the
431
formation of Fe3O4, and the XPS analysis showed that iron ore-1 and iron oxide-1 are
432
composed of an Fe2+O octahedron, Fe3+O octahedron, and Fe3+O tetrahedron, while
433
iron ore-1 and iron oxide-1 consist of an Fe3+O octahedron and Fe3+O tetrahedron
434
(Yue et al. 2019a). The O 1s spectra are shown in Fig. 10(b). As shown in the figure,
435
the peaks of O 1s in iron ore-0 and iron oxide-0 were both 531.51 eV, and the peaks of
436
O 1s in iron ore-1 and iron oxide-1 were 531.90 eV. It has been reported that a shift of
437
O 1s peaks is associated with the content of Fe2O3 and Fe3O4 in the samples.
438
According to Fig. 10(b), the spectrum of the samples was symmetrical except for iron
439
ore-0, which indicated that goethite (FeHO2) existed with a lower electron density on
440
the surface of the iron ore (Rodríguez-Padrón et al. 2019).
441
3.3.3 BET analysis of iron ore and iron oxide
442
Table 5 shows the surface area and average pore diameter of iron ore and iron
443
oxide. The surface areas of iron oxide-0 and iron ore-0 were calculated as 23.466 and
444
9.677 m2/g, respectively, while the surface areas of iron oxide-1 and iron ore-1 were
445
calculated as 79.671 and 61.932 m2/g, respectively. From the results of the BET
446
analysis, we could infer that the high reactivity of iron oxide on promoting the
447
conversion of MSW might be attributed to its high surface area. The enhancement of
448
the surface area in iron ore and iron oxide was due to a carbon deposition on the
449
catalytic surface, and the carbon deposition on the surface of iron ore reduced the
450
active sites, thus reducing its reactivity (Loy et al. 2018). Table 5 also showed that the
451
reaction of MSW volatile matter with the catalysts reduced the average pore diameter,
452
and the decrease of average pore diameter indicated that the internal micropores of the
453
iron oxide and iron ore were blocked by carbon. From the above results, we could
454
conclude that the reaction of volatile matter with the catalysts not only produced a
455
carbon deposition on the catalytic surface but also in the micropores. The change of
456
surface area and pore diameter eventually reduced the activity of the catalysts.
457
MSW is a continual feedstock that provides season-wide usability for pyrolysis
458
production. The above results imply the potential reliability of MSW pyrolysis with
459
iron-based additives to produce high quality liquid fuel, high calorific value gas and
460
high-grade iron ore. Thus, MSW could be an alternative renewable resource to take
461
over traditional feedstocks for obtaining fuel. However, it is notable that a highly
462
effective utilization of MSW with iron-based additives desires to establish an
463
optimized supply chain model that can not only reduce uncertain feedstock supplies
464
but also ensure a low price and environmentally friendly treatment process. Although
465
an MSW supply chain has been extensively investigated in the past ten years (Dubey
466
et al. 2015; Duan et al. 2018; Gharaei et al. 2018; Kazemi et al. 2018; Rabbani et al.
467
2019), it also faces many problems. For example, for the MSW supply chain, the
468
challenge is a high cost, especially in areas where long distance transportation is
469
needed (Alizadeh et al. 2019; Gharaei et al. 2019b; Gharaei et al. 2019c; Giri et al
470
2014; Giri et al.2018; Sarkar et al. 2019; Shah et al. 2018; Shekarabi et al. 2019; Yin
471
et al. 2016), and the environmental impacts of MSW have also been the subject of
472
increasing attention. Therefore, further study will take into account all of the above
473
problems and extend the current scope of MSW pyrolysis.
474
4 Conclusions
475
The cooperative disposal of MSW with iron-based additives is reported in this
476
paper to realize highly efficient pyrolysis of MSW. The weight loss of MSW is
477
increased by the addition of iron ore and iron oxide, and the kinetic analysis indicates
478
that the FWO model gives the best prediction of MSW pyrolysis; the iron oxide
479
(151.76 kJ/mol) has a higher catalytic effect on MSW pyrolysis compared to that of
480
iron ore (150.18 kJ/mol). The response surface methodology experiments predicted
481
that the maximum value of pyrolysis conversion can reach 56.01% (with an addition
482
of 7.5% iron ore). Moreover, the added iron ore and iron oxide significantly promote
483
the concentration of aliphatic hydrocarbons and monocyclic aromatic hydrocarbons.
484
In particular, the addition of iron oxide significantly promotes the breaking of
485
acethydrazide. Furthermore, XRD analysis illustrates that the reduction of iron ore
486
and iron oxide are in the sequence of Fe2O3→Fe3O4 and Fe3O4→FeO→Fe, which has
487
also been verified by TEM, H2-TPR, and XPS analyses.
488
In the future, it is suggested that several types of uncertainties (e.g., seasonal
489
supplies, transportation cost and demand) exist in the disposal of MSW with
490
iron-based additives and should be considered. Therefore, a supply chain concept for
491
MSW should be considered to resolve the above problems.
492
Acknowledgements
493
This work was supported by the National Natural Science Foundation of China
494
(51922052, 51778309, 51704016, 51908307), Natural Science Foundation of
495
Shandong Province (ZR2018JL018), National Key Laboratory of Environmental
496
Protection in the Iron and Steel Industry (Yzc2017Ky03), Key Laboratory of Coal
497
Resources Exploration and Comprehensive Utilization, Ministry of Land and
498
Resources
(KF2019-6)
and
State
Key
Laboratory
of
Hydroscience
and
499
Engineering-Tsinghua University (SKLHSE-2019-C-04).
500
Declaration of interest
501
None
502
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Table 1. The composition, proximate and element analysis of the sample (wt %) MSW Proximate analysis (dry-basis) V A FC Ultimate analysis (daf) C H O* N S Main composition Kitchen waste Plastic Paper Fabric Bamboo Iron ore Total Fe FeO SiO2 Al2O3 CaO MgO MnO K 2O P S
*by difference
55.21 8.85 35.94 45.64 5.92 45.86 2.14 0.44 47.63 25.44 16.13 3.95 6.85
40.48 1.39 20.01 5.82 1.03 0.65 0.10 0.07 0.06 0.08
Table 2. Response surface experimental design and results run 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20
T:temperature( ℃) 500 483 550 525 525 525 500 525 525 500 525 500 550 525 550 567 525 525 550 525
β:heating rate(℃/min) 17.5 20 17.5 20 20 20 22.5 20 20 17.5 15.8 22.5 17.5 20 22.5 20 20 24.2 22.5 20
I: addition rate (%) 8.75 7.5 8.75 7.5 7.5 7.5 8.75 5.4 7.5 6.25 7.5 6.25 6.25 9.6 8.75 7.5 7.5 7.5 6.25 7.5
MSW+1_Conversi on rate (%) 52.98 50.24 53.41 55.72 55.67 56 52.83 52.03 56.02 51.01 54.86 50.23 53.04 55.41 53.98 54 55.19 54.43 53.55 55.53
MSW+2-Conversi on rate (%) 51.56 50.45 53.04 56.22 55.88 56.07 51.54 53.76 55.8 52.46 53.92 52.45 52.64 53.77 54 54.04 55.28 53.63 53.86 55.43
Table 3. ANOVA results of MSW+1 and MSW+2 pyrolysis MSW+1
Sum of squares
df
Model T-temperature β-heating rate I-addition rate T2 β2 I2 Tβ TI βI residual Lack of fit Pure erroe Cor tal R2 Adj R-Squared C.V. %
61.91 12.86 0.02 8.95 28.91 3.95 10.43 0.51 1.78 0.06 2.89 2.41 0.48 64.80
9 1 1 1 1 1 1 1 1 1 10 5 5 19 0.9554 0.9153 1.00
6.88 12.86 0.02 8.95 28.91 3.95 10.43 0.51 1.78 0.06 0.29 0.48 0.10
23.81 44.52 0.08 30.97 100.06 13.67 36.09 1.75 6.15 0.21
P-value Prob>F <0.0001 <0.0001 0.7788 0.0002 <0.0001 0.0041 0.0001 0.21558 0.03256 0.65963
5.00
0.05105
49.03 9.80 0.20 0.11 25.78 9.14 9.22 0.61 0.69 0.01 2.19 1.53 0.66 51.22
9 1 1 1 1 1 1 1 1 1 10 5 5 19 0.9572 0.9187 0.87
5.45 9.80 0.20 0.11 25.78 9.14 9.22 0.61 0.69 0.01 0.22 0.31 0.13
24.85 44.71 0.92 0.52 117.61 41.71 42.08 2.79 3.15 0.04
<0.0001 <0.0001 0.35930 0.48545 <0.0001 <0.0001 <0.0001 0.12608 0.10633 0.84252
2.32
0.18881
MSW+2 Model T-temperature β-heating rate I-addition rate T2 β2 I2 Tβ TI βI residual Lack of fit Pure erroe Cor tal R2 Adj R-Squared C.V. %
Mean square F value
Table 4. Activation energy of sample pyrolysis according to TG analysis Sample
MSW
MSW+1
MSW+2
a 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 Average 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 Average 0.1 0.2 0.3 0.4 0.5 0.6 0.7 0.8 0.9 Average
KAS
FWO 8 -1
2
EA(KJ/mol)
A(10 S )
R
103.95 105.78 148.65 175.50 167.81 192.98 205.50 242.98 273.41 179.62 92.77 86.49 138.62 131.72 142.95 159.68 155.82 231.52 251.42 154.56 98.32 98.98 115.14 136.69 154.17 184.24 191.25 204.62 202.49 153.99
1.15×102 2.36×102 4.35×103 9.34×106 4.56×106 6.13×107 5.47×1010 2.07×1011 3.44×1011 1.01×1011 7.36 3.86 7.36×102 4.44×102 2.62×103 8.33×105 6.76×105 9.32×1010 1.15×1011 3.47×1010 9.85 9.92 1.06×102 6.89×102 6.36×105 3.13×107 5.17×107 5.40×1010 5.21×1010 1.77×1010
0.9763 0.9700 0.9772 0.9798 0.9788 0.9885 0.9750 0.9165 0.8930 0.9617 0.9774 0.9381 0.9950 0.9884 0.9823 1.0000 0.9738 0.9467 0.9137 0.9684 0.9995 0.9963 0.9521 0.8916 0.9926 0.9971 0.9992 0.8774 0.9896 0.9662
-1
EA (KJ/mol )
A(108S-1)
R2
104.48 92.20 155.32 172.53 184.08 198.02 201.71 231.63 282.88 180.32 88.14 92.47 134.88 136.38 144.86 166.49 163.63 226.08 212.94 151.76 86.24 105.81 125.40 134.04 152.70 171.41 175.89 195.30 204.82 150.18
1.57×102 6.32 6.19×105 8.62×106 2.78×107 7.32×107 5.15×1010 1.29×1011 7.81×1011 1.60×1011 4.09 6.14 5.51×102 6.78×102 4.10×103 5.15×106 4.12×106 8.17×1010 6.28×1010 2.41×1010 3.22 2.42×102 3.85×102 6.32×102 5.52×105 7.11×106 9.78×106 7.74×107 5.42×1010 9.05×109
0.9906 0.9294 0.9753 0.9975 0.9735 0.9553 0.9975 0.9455 0.9056 0.9634 0.9810 0.9971 0.9895 0.9994 0.9600 0.9749 0.9612 0.9381 0.9457 0.9719 0.9959 0.9991 0.9669 0.9623 0.9978 0.9873 0.9600 0.9999 0.9129 0.9758
Table 5. BET analysis of iron ore and iron oxide Sample
BET surface area (m2/g)
Average pore diameter (nm)
Iron oxide-0 Iron ore-0 Iron oxide-1 Iron ore-1
23.466 9.677 79.671 61.932
5.01516 10.9736 4.91564 5.48349
N2
Quartz tube
Electric furnace
MSW
GC
Drying tower Catalyst
Ice-water mixture
Liquid nitrogen
Fig. 1. Schematic diagram of the self-design pyrolysis reactor
50
MSW
MSW 50
Conversion rate(%)
Conversion rate(%)
45
40
35
30
48
46
25 44
300
400
500
Temperature(
600
10
)
15
20
25
Heating rate(
(a)
30
/min)
(b) 57
MSW 50
MSW+1 MSW+2
56
Conversion rate(%)
Conversion rate(%)
55
49
48
47
54 53 52 51 50
46
49
0
10
20
30
40
Holding time(min)
(c)
0
2
4
6
8
10
Addition rate(%)
(d)
Fig. 2. Effect of experimental conditions on pyrolysis of MSW (a) temperature, (b) heating rate, (c) holding time, (d) addition rate
β
T
(a)
β
β
I
(b)
T
(d)
T
I
(c)
T
I
(e)
I
β
(f)
Fig. 3. 3D response surface image for conversion rate (a) heating rate and temperature (MSW+1), (b) addition rate and temperature (MSW+1), (c) addition rate and heating rate (MSW+1), (d) heating rate and temperature (MSW+2), (e) addition rate and temperature (MSW+2), (f) addition rate and heating rate (MSW+2)
100
10 20 30
MSW
/min /min /min
Weight loss(%)
80
60
40
20 0
200
400
600
Temperature(
100
800
)
10 20 30
MSW+1
/min /min /min
Weight loss(%)
80
60
40
20 0
200
400
Temperature(
100
600
800
)
10 20 30
MSW+2
/min /min /min
Weight loss(%)
80
60
40
20 0
200
400
Temperature(
600
800
)
Fig. 4. Thermogravimetric analysis of (a) pyrolysis of MSW, (b) pyrolysis of MSW with iron oxide, (c) pyrolysis of MSW with iron ore
-9.0
MSW a=0.1 a=0.2 a=0.3 a=0.4 a=0.5 a=0.6 a=0.7 a=0.8 a=0.9
Ln(β/T2)
-10.0
-10.5
-11.0
MSW
3.4
a=0.1 a=0.2 a=0.3 a=0.4 a=0.5 a=0.6 a=0.7 a=0.8 a=0.9
3.2
3.0
Lnβ
-9.5
2.8
2.6
2.4
2.2
-11.5 0.0012
0.0016
0.0020
0.0010 0.0012 0.0014 0.0016 0.0018 0.0020 0.0022 0.0024
0.0024
1/T(K-1)
-1
1/T(K ) -9.0
MSW+1 a=0.1 a=0.2 a=0.3 a=0.4 a=0.5 a=0.6 a=0.7 a=0.8 a=0.9
Ln(β/T2)
-10.0
-10.5
MSW+1
3.4
a=0.1 a=0.2 a=0.3 a=0.4 a=0.5 a=0.6 a=0.7 a=0.8 a=0.9
3.2
3.0
Lnβ
-9.5
2.8
2.6
-11.0
2.4
2.2
-11.5 0.0012
0.0016
0.0020
0.0010 0.0012 0.0014 0.0016 0.0018 0.0020 0.0022 0.0024
0.0024
1/T(K-1)
-1
1/T(K ) -9.0
MSW+2 a=0.1 a=0.2 a=0.3 a=0.4 a=0.5 a=0.6 a=0.7 a=0.8 a=0.9
Ln(β/T2)
-10.0
-10.5
-11.0
MSW+2
3.4
a=0.1 a=0.2 a=0.3 a=0.4 a=0.5 a=0.6 a=0.7 a=0.8 a=0.9
3.2
3.0
Lnβ
-9.5
2.8
2.6
2.4
2.2
-11.5 0.0012
0.0016
0.0020 -1
1/T(K )
0.0024
0.0010 0.0012 0.0014 0.0016 0.0018 0.0020 0.0022 0.0024
1/T(K-1)
Fig. 5. Kinetic plots of the samples using (a), (b) and (c) KAS, (d), (e) and (f) FWO
12
12
MSW+1 MSW+2
MSW+1 MSW+2
11
11
CH4(mL/g)
H2(mL/g)
10
9
8
10
9
8
7
6
7 0
2
4
6
8
10
0
Addition rate(%)
2
4
6
8
10
Addition rate(%) 24
MSW+1 MSW+2
26
MSW+1 MSW+2 22
24 20
CO2(mL/g)
CO(mL/g)
22
20
18
18
16
14
16
14
12
0
2
4
6
8
Addition rate(%)
10
0
2
4
6
8
Addition rate(%)
Fig. 6. The gas composition of MSW pyrolysis (a) H2, (b) CH4, (c) CO, (d) CO2
10
45
35
80
MSW MSW+1 MSW+2
25 20 15 10
10
15
20
25
Time(min)
30
35
50 40 30 20 10
0 5
MSW MSW+1 MSW+2
60
30
5
0
70
Concentration(107)
40
Concentration (107)
Relative abundance
MSW MSW+1 MSW+2
0 ALH MAH PAH PHE HAC ALO ARO
Chemical compouds
-5
6--10
10-
Carbon atom number
Fig. 7. The GC-MS analysis of samples (a) GC–MS total ion chromatogram, (b) chemical compounds, (c) carbon atom number of samples
1 Fe2O3 3 Fe 5 CaO 2 Fe3O4 4 SiO2 6 Al2O3
Iron oxide-0 Iron ore-0 Iron oxide-1 Iron ore-1
100
1
1
Intensity(a.u.)
Intensity(a.u.)
2
2
3
11
1
4 5
5
4
6
4
548 877
80
2 2
iron oxide-0 iron ore-0
60
341
577
40
20
4
0 20
30
40
50
2θ(°)
60
70
80
200
400
600
800
Temperature( )
Fig.8. Phase analysis of iron oxide and iron ore (a) XRD, (b) H2-TPR
1000
(a)
(b) Fe2O3
(c)
Fe3O4
(311)
0.268nm
(d)
Fig.9. HRTEM images of the samples (a) Iron oxide-0, (b) Iron ore-0, (c) Iron oxide-1, (d) Iron ore-1
50000
Iron ore-0 Iron oxide-0 Iron oxide-1 Iron ore-1
Intensity(a.u.)
40000
2p3/2 2p1/2
35000
2p3/2
30000
2p1/2 satellite
satellite
25000 20000
Iron ore-0 Iron oxide-0 Iron oxide-1 Iron ore-1
80000 70000 60000
Intensity(a.u.)
45000
50000 40000 30000 20000
15000 10000
10000 0
700
710
720
730
740
Binding energy(eV)
Fig.10. XPS spectra of the samples (a) Fe2p, (b) O1s
530
535
Binding energy(eV)
Iron-based additives significantly promote the pyrolysis conversion of MSW MSW with iron oxide shows lower activation energy compared to that with iron ore Iron-based additives lead to a decrease in heteroatomic compounds MSW volatiles lead to an increase in the binding energy of Fe 2p3/2 The high activity of the catalysts may be attributed to their high surface area
Declaration of interests ☒ The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper. ☐The authors declare the following financial interests/personal relationships which may be considered as potential competing interests: