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Biofuels and Biomass
Assessment of Chopped Corn Straw Lengths for Combustion in a Fixed Bed using a Numerical Model Xiaoxiao Meng, Rui Sun, Xiang Liu, Tamer Mohamed Ismail, Wei Zhou, M. Abd El-Salam, and Xiaohan Ren Energy Fuels, Just Accepted Manuscript • DOI: 10.1021/acs.energyfuels.8b00162 • Publication Date (Web): 30 Mar 2018 Downloaded from http://pubs.acs.org on March 31, 2018
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Energy & Fuels
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Assessment of Chopped Corn Straw Lengths for Combustion in a Fixed Bed
2
using a Numerical Model
3
Xiaoxiao Meng1, Rui Sun1*, Xiang Liu1, Tamer M. Ismail2*, Wei Zhou1, M. Abd El-Salam3, and
4
Xiaohan Ren1, 4
5
1
School of Energy Science and Engineering, Harbin Institute of Technology, Harbin 150001, PR China
6
2
7
Department of Mechanical Engineering, Suez Canal University, Ismailia, Egypt 3
8
4
Department of Basic Science, Cairo University, Giza, Egypt
Institute of Thermal Science and Technology, Shandong University, Jinan 250061, PR China
9 10
Abstract
11
In this paper, both a numerical model and an experimental study were developed to
12
determine the important parameters of corn length for combustion behavior in a fixed-bed
13
reactor. As an important factor impacting thermal conversion, changes in the burning rate
14
follow variations in corn length, which then affect gas emissions. Due to insufficient
15
knowledge concerning the mechanisms of complex combustion, the development of a
16
combustion system has been restricted. Modeling of this combustion system will
17
complement experimental data; however, improving such a model is challenging due to
18
corn’s unique characteristics, such as its moisture content and porosity. The results show
19
that corn straw with a shorter length has a shorter ignition time, increased bed
20
temperature, and reduced amounts of unburned carbon in the ash residues. Furthermore,
21
the burning of shorter corn straw causes high emission concentrations from pyrolysis
22
products such as CH4, CO, and most prevalently NO near the grate, which indicates the 1
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Page 2 of 42
23
beginning of the char oxidation stage. Corn straw with longer lengths increases the
24
difficulty of accurately modeling the irregular shape of corn straw particles for theoretical
25
calculations. In addition, in an actual bed, local bed structures that have not been
26
uniformly mixed result in uncertainties in the flame propagation as well as the time at
27
which the fuel is ignited. The application of numerical modeling allows for a more
28
detailed description of the corn combustion process and can be used as a reference to
29
develop biomass combustion in a large system.
30
Keywords: corn straw; fixed bed; combustion; numerical model; straw length
31
1. Introduction
32
Of the many techniques using biomass energy, combustion remains the oldest and most
33
common. It is imperative to improve the combustion process to adapt industrial
34
applications and minimize pollutant emissions. Therefore, some of the requirements for a
35
good combustion process are the following: a proper controlling system to allow a
36
homogeneous mixture of devolatilizing gases and air; complete carbon combustion;
37
sustainable development; and reduction of NOx via a primary (staging of an oxidant
38
and/or fuel) or secondary (secondary combustion air flow) technique 1. In addition, the
39
use of biomass has attracted increasing interest as an environmentally friendly renewable
40
energy resource because biomass combustion is considered to be carbon-neutral (a
41
renewable source of fixed carbon) 2,3.
42
The biomass combustion process is composed of four combustion sub-processes: drying,
43
devolatilization and volatile combustion, char combustion, and oxidation
44
the individual physicochemical properties of a biomass, especially for agricultural 2
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4,5,6,7
. However,
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Energy & Fuels
45
residues, render their conditioning and combustion more difficult compared to
46
conventional fossil fuels. Biomass has a low density, high volatile matter content, low ash
47
fusibility, and high moisture content, which result in low flammability and affect the
48
combustion efficiency of boilers; its high humidity can also delay the devolatilization
49
step, which is critical for combustion 8,9.
50
Over the years, the direct combustion of biomass has been considered the primary
51
method for developing the use of biomass, of which the moving grate combustion
52
technique is thought to be the simplest approach, with the lowest cost and highest level of
53
ease for biomass preparation
54
the bed layer in a working biomass chamber are critical to the biomass combustor design
55
and operation. As a smaller laboratory model, a fixed bed can be used for bed layer
56
combustion because it is comparable to a moving grate system due to the limited travel
57
distance. It is easier to collect data for a fixed bed, and the process can be performed with
58
a lower cost. However, when used, there are some overall parameters that influence the
59
fixed bed performance, such as the main air flow parameters, the air distribution system
60
(primary and secondary air flow), the particle size, and the fuel specifications 12,13.
61
In general, the fuel characteristics of a biomass in a fixed bed are significant factors for
62
thermal conversion. Changkook et al.
63
biomasses in a fixed bed. These authors found that large fuel particles can increase the
64
local ignition speed in the bed layer with an unstable flame propagation speed. Yang et al.
65
6
66
burning rate of pine, with smaller sizes showing higher burning rates. Studying the
67
particle size influence in a packed bed, Thunman
10,11
. However, the combustion rate and gas evolution from
14
studied the fuel size and density of different
showed that for pine combustion in a fixed bed, the size had an apparent effect on the
15
showed a significant temperature
3
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68
difference between the particle surface and the gas. In addition, the fuel size can affect
69
flue gas emissions; for example, the combustion of larger particles in a fixed bed will
70
result in a lower burning rate, which leads to a higher level of CO2 emissions 16.
71
Therefore, both experimental and numerical studies should be conducted to evaluate the
72
important parameter of biomass size in fixed bed combustion. CFD modeling is prevalent
73
in simulation applications of biomass combustion in a fixed bed and can describe the
74
combustion process in detail
75
air supply distributions, have been modeled. Proportional evaluations of combustion
76
chamber design are always associated with cold flow experiments using two-dimensional
77
(2D) or three-dimensional (3D) water flow models. Such models are expensive and
78
limited in their applications. Conversely, numerical calculations can rapidly provide
79
accurate results. Such calculations are particularly suitable for complicated geometries
80
and for evaluating the current conditions in a chamber. Currently, simulations allow for
81
detailed parametric alterations to achieve optimal designs.
82
In the combustion process, the elimination of pollutant emissions is the main objective, as
83
well as the mixture of hot gas and cooling air; thus, the organic pollutant needs to be
84
considered in devolatilization. Accordingly, numerical simulations of the flow field
85
within a combustion chamber provide data on the velocity, temperature, and species
86
concentration at each node point of the computational grid. In this study, increased
87
biomass burning is based on detailed mathematical modeling with an understanding of
88
the combustion process, which can be obtained from equations describing the mass, heat
89
transfer, and sub-models
90
SO2, and NOx) by focusing on efficient biomass conversion technologies 18.
21
17,18,19,20
. Currently, various combustor designs, as well as
. This approach will help reduce harmful gas emissions (CO,
4
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Energy & Fuels
22,23,24,25,26
91
In recent years, many researchers
92
of biomass. However, most of the common homogeneous models assume particles with a
93
specific volume, without including the impact of particle shrinkage on the process of
94
pyrolysis during their thermal degradation. Porteiro et al. 27 considered particle shrinkage
95
in their model for large and densified wood combustion during the drying and pyrolysis
96
processes but did not consider char shrinkage due to burning. In addition, fuel size and
97
shape influence the packing level, and changes in porosity arise due to particle shrinkage,
98
which causes a change in the thermal conversion 28. Furthermore, volume shrinkage will
99
occur during all sub-processes of thermal conversion for a single particle inside the 29
have developed models for the combustion
100
burning biomass
101
reaction while ignoring side reactions. Identification of the actual reactions of biomass
102
pyrolysis is extremely complicated due to the formation of several intermediate products.
103
Biomass pyrolysis is generally modeled on the basis of apparent kinetics. Different
104
kinetic patterns are used by different researchers, some of whom were mentioned earlier
105
30,31
106
In a recent study by Menard 32, bed calculations and calculations of the post-combustion
107
chamber were made for wood combustion. This model was written entirely in FLUENT,
108
with user-defined functions to describe the drying, pyrolysis, combustion, and
109
gasification of the bed, considering the interactions between the fuel bed and the gas
110
phase above the bed. However, several critical phenomena are ignored, such as the
111
gasification of the residual carbon and the mixing of the load. In addition, numerous
112
modeling studies on the grid incineration process have been performed 33,34,35,36. The bed
113
model (FLIC software) is coupled to a 3D model of the incineration furnace in FLUENT.
. Some researchers have modeled the pyrolysis process via a single
.
5
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The latest version of the model was applied to an agricultural waste grid (straw)
115
incineration
116
on the characteristics of the flow and temperature, including combustion, and the
117
emissions of pollutants such as NOx and CO.
118
In the present work, a theoretical and experimental study was conducted on a fixed bed
119
for corn straw combustion. Compared to our previous mathematical model and
120
simulations
121
model has been improved and is applied to assess the complicated combustion behavior
122
of corn in a current reactor based on changes in particle size. Using a current
123
experimental furnace, the results were obtained to validate the present COMMENT-Code
124
(Combustion Mathematics and Energy Transport), based on comparisons between the
125
existing experimental and model results. Meanwhile, the challenge of temperature-
126
dependent solid conversion processes was overcome. In addition, a shrink core model
127
was implemented to illustrate the char burning phase inside the particles; this model can
128
be used to predict mass loss during the total conversion process of the biomass particles.
129
In this way, the current study makes it easier to improve our understanding of the
130
biomass combustion processes, including the bed temperature change, gas evolution, and
131
combustion efficiency. Furthermore, this work can aid in the study of other parameters,
132
such as the moisture and ash content of the biomass in detailed models, which can then
133
be used in engineering fields and in the optimization of numerical models.
134
2. Computational modeling approach
37
for a sensitivity study of the operating parameters of an incinerator based
38,39,40,41
and our experimental work on a fixed bed
6
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, the mathematical
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Energy & Fuels
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The results of the fixed bed combustion output are similar to those of the precise moving
136
grate because the slight temperature gradients in the horizontal direction and the slow
137
moving speed for the grate can be ignored. Several assumptions can be made, as follows:
138
•
The model is uniform for fuels moving in the horizontal direction.
139
•
The rate of fuel mass flow entering the grate is steady.
140
•
Mass and heat transfers occur only in the vertical direction.
141
Based on these three points, the model can be used to simulate the biomass combustion
142
process in a continually moving bed layer. It is difficult to model advanced thermal and
143
chemical processes in a straw-burning furnace while including pollutant emissions and
144
different processes (drying, devolatilization, volatile combustion, and char conversion),
145
as shown in Fig. 1. Numerical models are available; however, a comprehensive and
146
sophisticated computer program must be developed to predict the formation of important
147
pollutants 39.
148
Fig. 1
149
2.1 Governing equations
150
In this study, a more detailed scale is applied than in our previous study and the entire
151
bed is divided into several small volumes. The COMMENT (Mathematics of Combustion
152
and Energy Transport) code was built based on the 2D conservation equations for mass,
153
energy, and momentum with a uniform structured mesh. Discrete equations were written
154
using the volume method and were solved using the SIMPLE algorithm. Therefore, the
155
k–ε turbulence model was used. This model has two transport equations for the turbulent
156
kinetic energy and its degree of dissipation. The proposed k–ε model also describes the 7
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Page 8 of 42
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turbulent kinetic energy and the dissipation rate, i.e., the exchange between the amount of
158
turbulence and the computation time 38.
159
This code should achieve a converged solution over 1500 iterations; given the limits of
160
our computer capacity and other issues, we stopped at 1500 iterations. The interactions
161
between the gas and solid phases are simulated, and the convective heat exchange and
162
momentum (the drag in the gas and solid phases) are incorporated into the model. In
163
addition, radiation is important when developing combustion models. The definition of
164
the radiation and convective heat transfer is based on the Rosseland model
165
governing equations, momentum conservation, and heat transfer are given in Tables S1–
166
S3 in the supplementary files.
167
2.2 Chemical reaction model
168
It is assumed that two steps occur during the combustion of corn straw within a fixed bed.
169
First, rapid devolatilization occurs, which transfers the volatile matter to the gaseous
170
phase. Second, char particles are burned by oxygen entering with the air from the bottom
171
of the bed. Throughout the devolatilization phase, volatile components are produced from
172
the fuel, i.e., the CO2, CO, CH4, NO, SO2, and HCN components are computed.
173
2.2.1 Drying
174
The speed of moisture emission from solid particles can be given as 12,40
R = A h C, − C, T < 100℃, or R =
T
43
. The
(1)
= 100℃,
(2)
8
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Energy & Fuels
% Q = A h, T − T + ϵδ#T$ − T% &'.
(3)
175
2.2.2 Devolatilization
176
Devolatilization is a pivotal process in combustion, where the biomass is considered to
177
convert to char and volatile species 44.
)* = −+,-
./0 .1
7
= +,- 2* 3* 456 9 0 '
3* = 1.56 × 10>? @ A> ,
(4)
8:
B* = −16600 D )9
(5)
178
From the rapid pyrolysis, the mass fraction EF of each component in the volatile matter
179
can be calculated as follows. MN O
MN
EGHI = 0.201 − 0.469 >??' + 0.241 >??' EHP
TU TU O = 0.157 − 0.868 S V + 1.388 S V 100 100
EGXP = 0.135 − 0.900 S EGX
TU TU O V + 1.906 S V 100 100
TU TU O = 0.428 − 2.653 S V + 4.845 S V 100 100
EHP X = 0.409 − 2.389
MN
' + 4.554
>??
MN O
'
>??
MN O
MN
E1YZ = −0.325 + 7.279 >??' − 12.880 >??'
(6)
(7)
(8)
(9)
(10)
(11)
180
Moreover, during the devolatilization, the released volatile nitrogen and sulfur can be
181
expressed as described by Fine et al. 45: 9
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Page 10 of 42
T, = 0.001[ − 0.6 g/g (d.b.).
(12)
182
2.2.3 Combustion of volatiles
183
The yielded amount of volatile matter is mixed with the surrounding air before the
184
chemical reaction can occur. The volatile species reaction rates are presented as 40
) = min_)`Fa , )bFc d.
(13)
185
It is assumed that the mixing rate inside the bed is proportional to the energy loss through
186
the bed. Recalling the equations of Ergun, the mixing rate can be calculated as follows 46:
187
)bFc = ebFc +f g150
hi #>Aj&P/l Pj .m
+ 1.75
ni #>Aj&o/l .m j
Gtuvw GyP , p. tuvw xyP
p × qrs gx
(14)
188
The mass diffusion coefficient zf is calculated according to the following empirical
189
equation 38: :i }O~.>{ >.{
zf = 1.5 × 10A{ |
190
O
>.%> .
(15)
The combustion process of the volatile components considers the following reactions: >
(16)
>
(17)
O +
O → O
, O
e
+
O → e
O , O
(18)
>
(19)
e% +
O → e
+ 2O
, O
e
O +
O → e
O , O
10
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Energy & Fuels
{
eO +
O → 2e
+ 3O
.
(20)
O
191
The reaction rates for each species are given by the following expressions 47:
)HP = 9.87 × 10 456
−3.1 × 10~ eXP eHP , )9 [f ->.~?O×>? ?.{ ?.O{ V C C C , P P
R = 2.239 × 10>O exp S
AO×>? ?.~ ?. V eGH e , I XP 89 :i
)GHI = 5.012 × 10>> 456 S
−1.702 × 10 = 5 × 10 456 eGXP , )9 [f
)GXP
)GP H
−6.6512 × 10~ ?.O~ >.O = 1.0729 × 10 456 eGP H eXP . )9 [f >?
(R1)
(R2)
(R3)
(R4)
(R5)
192
In the above equations eGX , eGXP , eGHI , eGP H , and eHP are the gas species concentrations.
193
2.2.4 Char burnout
e +
O → 2#1 − &e
+ #2 − 1&e
O = 194
GX
GXP
= 12 × 456
(21)
A?? :
'
(22)
For temperatures between 730 K and 1170 K,
) =
yP o o }
D. =
{.?×>?¡¢
,
.m
(23)
×
:£ }:i ?.~{ O
'
,
(24)
11
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DZ = 3 [, 456 ¤
−B ¥, )[,
Page 12 of 42
(25)
195
where Ac=3 kg/m² s kPa and Ec/R=10,300 K.
196
2.2.5 NOx emissions model
197
In general, nitrogen in the biomass is released in an uncertain way. In addition, there is a
198
slight amount of biomass remaining in the char state based on the characteristics of the
199
fuel. Therefore, the nitrogen emission is unpredictable and complicated. The detailed
200
reactions considered are as follows 48,49:
¦
+ e = 0.5¦O +
O ,
(26)
¦
+ 0.5e = 0.5¦O + 0.5e
O ,
(27)
¦
+ e
= 0.5¦O + e
O ,
(28)
¦
+ ¦ + 0.5
O = ¦O + O O
, )§XA§Hl = 1.07 × 10>O 456
(29)
AO%?? :
' ¨eXP ¨e§Hl ¨e§X .
(R6)
201
2.2.6 SO2 emissions model
202
In this case, the emission of SO2 primarily arises from the volatile matter combustion, as
203
in the following conversion reaction:
© +
O → ©
O.
(30)
204
The main reaction for the above equation is applied to show the formation of SO2 for the
205
considered reaction rate terms, and the Arrhenius expression is employed as follows 50:
12
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Energy & Fuels
)xXP = ª, 4 A7⁄8: ex eXP .
(31)
206
For the SO2 emission process, the reaction rates are heterogeneous and are determined by
207
the Arrhenius equation, with the activation energy values and the pre-exponential factor
208
describing the reaction rate as follows:
)xXP = 7.29 × 10{ 4 A{{??⁄8: ex eXP .
(R7)
209
2.3 Particle shrinkage model
210
Studies of the biomass diameter and char morphology indicate that the value of the
211
swelling coefficient will impact the biomass particle shrinkage and the particle size in the
212
devolatilization process (Fig. 1). For example, the diameter doubles if the swelling
213
coefficient is 2.0. The swelling coefficient is obtained from morphological analysis and
214
can be calculated from Eq. (32). .m #1& .m,¬
#>ANG¬ &bm,¬ Abm
= 1 + #e, − 1& MN
¬ #>ANG¬ &bm,¬
(32)
215
Here, Ue? is the initial corn straw moisture content, and TU? is the initial volatile
216
material content, which can be obtained from a proximate analysis. The term
217
#>ANG¬ &bm,¬ Abm
218
from the particle.
MN¬ #>ANG¬ &bm,¬
e, =
is the ratio between the total volatile mass and the devolatilized mass
®¯ ®¯°
(33)
219
Here, dp is the average diameter of the particles, and dpo is the average diameter of the
220
parent fuel. 13
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Page 14 of 42
221
Based on the morphological results, the studied biomass swelling factor is 0.7. As a
222
result, this parameter is difficult to measure experimentally. For the purposes of this
223
study, ranges from 0.5–1 are considered uncertain.
224
The char oxidation rates are predicted according to the following equation50: .bm .1
= 3¯ ª S±XP ,$ −
.bm >
.1 xm h
a
V ,
(34)
225
where mp is the particle mass; Ap is the external particle surface area, which can be
226
calculated based on the size of the particle dp; PP,$ is the partial pressure of oxygen; k is
227
the apparent kinetic rate; n is the apparent reaction order; and D is the external diffusion
228
rate coefficient and can be calculated as follows 50:
ª = 3Y 456 S−
BY V, )[
(35)
³ [¯ + [$ /2´ z = 2.57 × 10A~ ®¯ 229
.
(36)
The evaluated diameter is modeled based on the following equation: .m
.m,¬
230
?.~{
= #1 − µ&¶ ,
(37)
where 3Y is the apparent pre-exponential factor; BY is the apparent activation energy; ®¯
231
is the particle diameter (the subscript 0 denotes the initial value); and µ is the degree of
232
burnout.
233
The burning mode #& ranges between 0 and . If the mode decreases to the minimum, 0,
234
the situation corresponds to regime I, which has a decreasing density with constant
>
14
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Energy & Fuels
>
235
particle size. Conversely, if the burning mode reaches the maximum of , this situation
236
refers to regime III, which has a constant density with decreasing particle size. In regime
237
II, the burning mode depends on both the combustion conditions and the particle size. In
238
this model, the burning mode is adjusted to
239
prediction at the stages of late combustion 50.
240
2.4 Numerical method and boundary conditions
241
The finite volume method was used to discretize and solve the governing equations in the
242
present model. The model was executed using a large step of 0.15 mm in both
243
dimensions. The time step used was 0.5 × 10−3 s. The numerical model calculated the bed
244
shrinkage. In addition, an iterative scheme was used to approximate the discrete solution
245
value for the new positions of each node
246
part of model development, and this mesh density was found to be a reasonable
247
compromise between the competing requirements of manageable accuracy and timing. In
248
general, a continuously increasing mesh density will result in slightly different results,
249
depending on the network. Based on previous studies of one-dimensional (1D) or 2D
250
simulations, a medium-sized grid can be applied to save computational time with
251
relatively good accuracy. Conversely, finer meshes result in better computational results
252
with higher calculation times. The currently available Eulerian–Eulerian model is
253
generally closed, with behavioral laws based on the assumption of homogeneity at the
254
level of the computational cells. In addition, there is no need to provide the oxidants of
255
the oxidizing models for mixed gas and mixtures due to the uniform air rate. The gas
256
phase is only allowed to leave the reactor due to the assumption of uniformly sized
51
> %
due to its influence on the burnout
. Mesh sensitivity studies were performed as
15
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particles and ash in the gas phase. The output pressure is equal to normal atmospheric
258
pressure.
259
3. Experimental test rig
260
The 1D experimental system is shown in Fig. 2, hanging in a weighing sensor with a 1%
261
measure error. The 1.3-m-high vertical cylinder combustion chamber has a 180-mm inner
262
diameter and consists of three layers of material: the inner layer is a 50-mm-thick high
263
alumina refractory material and can withstand a flame temperature of 1300°C; the middle
264
layer is a 150-mm-thick refractory silicate cotton; and the outer layer is a 5-mm-thick arm
265
protector made of stainless steel 1Cr18Ni9Ti. The grate was placed at the bottom of the
266
chamber and was made of porous stainless-steel plates with 178-mm diameters. The total
267
grid hole surface represents 14.7% of the grate, with a diameter of 7 mm for each hole 42.
268
Table 1 shows the positions of K layer thermocouples, T1 to T10, with a measuring range
269
of 0–1390°C and an accuracy of ±2.5°C. The primary air was supplied through the grate
270
surface, whose temperature is represented by T1. The temperature changes in each layer
271
can be recorded via a digital controller.
272
Tab. 1
273
Throughout the entire experiment process, a Fourier transform infra-red (FTIR) Gasmet
274
4000 analyzer monitored the variations in flue gas emissions from a freeboard above the
275
bed and the layers in the bed. A stainless-steel sampling gun is used to continue to extract
276
gas samples from the bed layers. This approach is used to correct the device and to ensure
277
that the test data are reliable before using the gas measurements. The measured gas
278
species concentration error is approximately ±5% for the entire measurement range. 16
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Fig. 2
280
4. Preparation of raw materials
281
Corn feedstock, which is a major agricultural waste, was selected for our experiments. In
282
this experiment, the total corn straws were collected from North China. The harvested
283
corn straw was dried in a natural atmosphere and was regularly turned to prevent the
284
growth of microorganisms and uneven drying. Once the quality of the straw changed by
285
less than 1% per day, the external moisture of the corn straw was regarded as being
286
uniform under room conditions. The basic properties of the prepared corn straw are
287
presented in Table 2, along with the analysis methods used. Based on the actual biomass
288
combustion conditions, the prepared corn straw was prepared at three different lengths,
289
and the quality of the biomass was measured after the biomass was poured into a 5000-ml
290
plastic cylinder and then divided by 5000 ml. Therefore, the natural stacking densities of
291
the various sizes of corn straw can be calculated, as shown in Table 3.
292
Tab. 2
293
Tab. 3
294
5. Results and Discussion
295
5.1. Main flame front characteristics for different corn straw lengths
296
The different sizes of corn straw affect the combustion process at three principal points in
297
the equations. (1) In the heat transfer calculations, the main effects are included via the
298
effective conductivity and the gas–solid convective exchange area, and in the kinetics of 17
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299
the reaction, the effects are included via the specific surface area. (2) For the heat
300
exchange, only the outer surface of the particles is important. (3) For the chemical
301
reactions, the internal volume of the particles should be taken into account. Moreover,
302
compared to a shorter length, corn straw with a longer length results in a small natural
303
bulk density in the chamber; in general, the void volume for the particles becomes large.
304
Therefore, much greater cooling effects of the primary air are exerted based on the
305
increasing average air flow between samples, as well as the decreased global temperature
306
near the grate. In addition, it can be shown that a closer radiation source leads to more
307
heat being absorbed and that the heat from the upper layer ash can be accumulated layer
308
by layer 28.
309
Fig. 3
310
As seen in Fig. 3, which shows the theoretical results for the temperature contour
311
variations of the bed layers in cases 1 and 2, as the length of the corn straw decreases, the
312
times to reach the peak temperature and burnout become shorter, i.e., less than 2000 s for
313
the 5-cm corn straw burnout. It can be seen that high temperatures have a longer duration
314
due to stable combustion in the zone with shorter flames
315
good agreement between the experiment and the present model of the bed temperature
316
variation, which is desirable for model validation. When the flame front reaches each
317
layer, the temperature sharply increases to the peak temperature, which indicates that the
318
mass and heat transfer between the volatiles and the particle surfaces occurs rapidly.
319
Yang et al.
320
moisture inside the solid at a temperature of 100℃, with a long time for drying. Once the
18
42
. In addition, Fig. 4 shows
reported that heat radiation from an upper bed layer could drive out the
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321
moisture evaporation in the drying process is complete, the local temperature quickly
322
rises to the temperature of devolatilization and the mass starts to burn.
323
Fig. 4
324
Fig. 5 presents the combustion characteristics of corn straw for the experimental and
325
theoretical studies in a fixed bed. As the corn length increased continuously, the time of
326
corn ignition increased and then decreased when the length reached 15 cm, which is too
327
long to pack uniformly in the chamber, as shown in Fig. 5a. In addition, Figs. 5b and 5c
328
present the average ignition rate (or average ignition flame front velocity) and burning
329
rate in the bed. The average ignition rate can be calculated from the time spent on the
330
ignition flame front to reach a specific pre-determined temperature difference between
331
the top and bottom thermocouple
332
the mass per cross-sectional area unit according to the ignition 52. The results show that
333
the longest corn straw takes the shortest time to burn, with a remarkably higher average
334
ignition rate than the other cases. Because the 15-cm corn straw was packed irregularly
335
into the chamber, some samples closer to the radiation source started to ignite faster. In
336
addition, there is an increasing trend for the average burning rate of the 15-cm corn straw,
337
with a value of 0.034 kg·m−2s−1. The larger void volume also makes it easier to react with
338
the air, leading to a faster burnout rate.
339
In addition, the shortest corn straw (5 cm) started ignition faster than the 10-cm corn
340
straw, as shown in Fig. 5a. This result occurred primarily because the corn straw with the
341
shortest length (5 cm) in the upper bed layer can enhance the heat transfer area from the
342
thermal radiation flux, which accelerates the heat transfer and drying processes. The
343
small straw size can then accelerate devolatilization when the thermal source is the same
42
. The burning rate can be defined as the velocity of
19
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16
344
in the freeboard space
345
increase in the corn straw length may result from rapid combustion of the local bed layer
346
in the chamber, as shown in Figs. 5b and 5c. According to Ref. 41, large material particles
347
cause unstable bed phenomena, such as ducting, and these elements enhance the local bed
348
flame speed and combustion. In general, there is agreement between the experiment and
349
the theoretical calculations. However, all of the predictions in Fig. 5 present slightly
350
lower values compared to the experiment data, likely because it is difficult to accurately
351
model the irregular particle shapes of corn straw 16.
352
The present mathematical model can be evaluated by comparing the results from the
353
present model and the experimental data. This comparison illustrates the contrast between
354
the numerical model and the existing experimental results for different corn straw lengths.
355
There is good agreement between the model results and the experimental results based on
356
the bed temperatures, average ignition rate, ignition time, and average burning rate.
357
Based on the above comparisons, the numerical model presented is valid and provides a
358
promising method for simulating the combustion of a solid biomass in a fixed bed, which
359
is the dominant technique for combustion.
360
. In addition, the increasing ignition and burning rates with an
Fig. 5
361
5.2. Effects of corn straw length on gas species emissions
362
Figs. 6 shows that the emission concentration contours of CO2 and CO gradually
363
decreased with an increase in the corn straw length. The primary reason for this trend is
364
the concentration of O2 around the corn straw. In addition, the burning rate is another
365
factor that impacts the variation in CO2 and CO; the rate increased and then slightly 20
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decreased as the corn straw length was increased. When the length is shorter, the average
367
concentrations of CO2 and CO primarily resulted from the chemical reaction in the
368
pyrolysis and volatile combustion processes. However, the properties of heat exchange
369
between the volatile matter and the raw materials have a dominant effect on the release of
370
CO2 and CO in the chamber once the corn straw length is increased beyond a limited
371
level.
372
The shorter corn straw generated more CO, in contrast to the findings of Yang et al.
373
The main reason for this finding is that the shorter length corn straw in the bed
374
accelerates the pyrolysis reaction, which results in the release of volatile substances,
375
including an emission increase of CO from the fuels. In addition, the high consumption of
376
O2 by the smaller corn straw generates CO2. A lack of O2 into the reactants causes
377
incomplete combustion, producing CO
378
variation, which nearly reached zero at the primary combustion stage, as shown in Fig. 7.
379
In addition, when the length of the fuel particles increases, the density of the sample
380
decreases and the void fraction increases, which increases the O2 supply time between
381
particles for the CO reaction with O2.
53
16
.
, as in the case of the 5-cm O2 concentration
382
Fig. 6
383
Fig. 7
384
Fig. 8 presents experimental and theoretical results for the unburned carbon content in the
385
ash residues. With increasing corn length, a larger amount of unburned carbon remained
386
in the ash residue; the incomplete burning level for the corn straw increased because large
387
amounts of unburned carbon were packed at the bottom in the char oxidation stage, 21
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388
compared to the emission of CO2 and CO. The reasons for this result are as follows: the
389
porosity can be enhanced by the shorter corn straw, which accelerates the processes of
390
heat transfer and drying, and the shorter corn straw can accelerate pyrolysis and
391
combustion when the thermal source is the same in the freeboard space 15.
392
Fig. 8
393
It can be deduced from Fig. 9 that according to the changes in the corn straw length, the
394
peak value of the CH4 concentration first increases and then decreases. The emission of
395
CH4 can be used to indicate the end of devolatilization and the beginning of the char
396
oxidization stage. The pyrolysis reaction rate increased with decreasing corn straw length,
397
which can rapidly accelerate volatile matter emissions from fuels. In addition, a higher
398
temperature was recorded in the chamber when smaller corn straw was burning, which
399
caused a secondary reaction of tar decomposition 54, with more CH4 released. Meanwhile,
400
a smaller corn straw can enhance volatile oxidization because char burning releases more
401
heat beyond the bed layer, contributing to tar cracking from pyrolysis.
402
Therefore, in an actual biomass combustion process, to cause the feedstock to combust as
403
thoroughly as possible, the corn straw length should not be too short during the
404
pretreatment stage. Conversely, the corn straw should not be too long either. If so, an
405
incomplete combustion process may occur and the content of unburned carbon may
406
increase the ash residue, as shown in Fig. 8. In summary, a greater oxidation speed can be
407
obtained for the carbon residues by decreasing the initial length of the corn straw, in
408
agreement with the observations of Shin and Choi 55.
409
Fig. 9 22
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Energy & Fuels
410
In addition, the nitrogen-containing compounds were studied, with NO being the most
411
prevalent. Therefore, we primarily focused on the emission of NO, as shown in Fig. 10.
412
The influence of corn length on the formation of NO is extremely variable according to
413
the simulations. As the straw length increases, NO emissions decrease due to a very
414
limited heterogeneous reduction by the thin layer of residual carbon above the pyrolysis
415
front and the absence of a second reduction zone in which the base case overcomes the
416
residual carbon oxidation front. NO emissions also decrease because the heterogeneous
417
reduction becomes more efficient due to the presence of many inlets at high temperature.
418
The reduction of NO emission is attributed to a larger residual carbon reduction zone,
419
especially in the hottest burning region. In addition, all cases showed a high
420
concentration near the grate layer because the volatile-N and char-N reactions occurred at
421
the same time.
422
Fig. 10
423
In the current study, the emission of SO2 from the burning corn straw is relatively small.
424
The SO2 concentration variation with increasing corn length can be seen in Fig. 11.
425
Knuden et al.
426
fuels to be released. Meanwhile, once the temperature rises to 850℃, there is a
427
remarkably high release rate of sulfur. In general, there are two existing forms for sulfur,
428
organic and inorganic S, in the feedstock; organic S is emitted at low-temperature
429
conditions, while inorganic S can crack via interactions with a carbonized matrix at
430
temperatures beyond 850°C
431
adsorption effects due to char, which results in organic sulfur formation at temperatures
56
found that temperatures above 1150℃ cause most of the sulfur in the
57
. Reporters
58
also mentioned that there are some SO2
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432
from 700°C to 900°C; these effects will decrease at temperatures above 800°C.
433
Consequently, corn straw longer than 10 cm releasing SO2 has only a low conversion of
434
sulfur to SO2 throughout the entire corn combustion process, due to incomplete
435
combustion and higher biochar. In addition, at increasing straw length, large amounts of
436
semi-char are produced by combustion and pyrolysis in comparison to the other cases;
437
the semi-char can be used to adsorb SO2, and then the SO2 formation decreases.
438
For a corn length of 5 cm, the results of the experimental and theoretical studies can be
439
compared, as shown in Fig. 12; these studies obtained satisfactory agreement for the
440
average emission of gas species. However, the calculated average CO concentration is
441
lower than the measured value, which might be concentrated in the channeling
442
phenomenon in an actual bed. Therefore, some local bed parameters, such as the porosity,
443
particle size distribution, and particle orientation, are not uniform in an actual bed, which
444
results in some air flow passing the particles without a reaction 52. Thus, it is challenging
445
to analyze the experiments and simulations because large particles can increase the
446
instability. In summary, it can be seen that the theoretical results agree with the available
447
experimental data, which validates the numerical model study, and thus, gas species can
448
be compared to obtain a basis in the model.
449
Fig. 11
450
Fig. 12
451
Conclusions
452
Both simulations and experiments are important to study the effects of different corn
453
straw lengths on combustion characteristics. The currently available Eulerian–Eulerian 24
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model is generally closed, with behavioral laws based on the assumption of homogeneity
455
at the level of the computational cells. Good agreement between the experimental and
456
theoretical studies was observed in the current study.
457
(1) A decreased corn straw length can shorten the ignition time and increase the bed
458
temperature, with less unburned carbon in the ash residues. Higher bed temperatures
459
lead to larger amounts of pyrolysis CH4 and CO products released in later
460
combustion; meanwhile, the most prevalent NO showed high concentrations due to
461
the concurrent volatile-N and char-N reactions.
462
(2) Compared to experimental studies, there are slightly different values for the
463
theoretical calculations because it is difficult to accurately model the irregular shapes
464
of the particles and some local bed structures are not uniformly mixed in the actual
465
bed. In addition, the extra-long corn (15 cm) packed in the bed led to uncertainties in
466
the flame propagation as well as the time at which the fuel ignited.
467
(3) The presented code can be used to evaluate the different parameters of corn straw
468
combustion. Therefore, the presented model represents a useful way to visualize and
469
evaluate the complicated behavior of the gas–solid flow and the chemical reactions
470
that occur in the biomass combustion process. This study provides a detailed
471
description of the corn combustion process that can be used as a reference for
472
developing biomass combustion in a large system.
473
Acknowledgements
25
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This work has been financed by Innovative Research Groups of the National Natural
475
Science Foundation of China (Grant No. 51476046). In addition, thanks for Prof. Yiannis
476
Angelo Levendis’ valuable suggestions and comments on this paper.
477
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Nomenclatures
A
pre-exponent factor, particle surface area
1/s, m²
Cp
specific heat capacity
J/kg K
Cmix mixing rate constant Cw,g moisture concentration in the gas phase
kg/m³
Cw,s moisture concentration at the solid phase
kg/m³
Dg
mass diffusion coefficient of gas
m²/s
DO2 mass diffusion coefficient of oxygen dp
m²/s
particle diameter
m
31
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E
activation energy
e
coefficient of restitution for particle collisions
·¸
radial distribution function
Page 32 of 42
kJ/mol
Hevp evaporation heat of the solid material
J/kg
hf
enthalpy of formation
J/kg
ℎZ,
radiation heat transfer coefficient
m/s
ℎZ* effective radiation heat transfer coefficient of the voids
m/s
hs
convective mass transfer coefficient
hs'
convection heat transfer coefficient
K
turbulent kinetic energy
kd
diffusion rates
kf
thermal conductivity of the fluid
W/mK
ks
thermal conductivity of the pure
W/mK
kp
absorption coefficient
keff
effective thermal conductivity
W/m² K m²/s² kg/atm m² s
W/mK
keff,0 thermal conductivity for no fluid flow
º,
W/mK
equivalent thickness a layer of solid
m
32
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Energy & Fuels
M
molecular weight
N
number of particles in each control volume
(–)
Qcr
heat absorbed by the solid
W
»Z
radiative flux density
W
)9
gas universal constant
J/kmol K
kg/kmol
Revp moisture evaporation rate
kg/s
Rc
char consumption rate
kg/s
Rv
volatile matter in solid rate
kg/s
©
Source term
Tenv environment temperature
K
Tg
gas temperature
K
Ts
solid temperature
K
U
velocity component
m/s
Greek Letters
absorption coefficient
¼
Interphase exchange coefficient
Θ,
granular temperature
kg/m3 s m2/s2
33
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¾
dynamic viscosity
void fraction
¿
dissipation rate of turbulent kinetic energy
À
emissivity
Á¯
scattering coefficient
δ
Boltzmann constant
+
density
Âf
thermal dispersion coefficient
Ã
dependent variable
φ
combustion stoichiometry
Ä,
stress tensor
kg/m s
Bulk
C
char burnout
eff
Effective
f
Fluid
g
Gas
m-2s-3
W/m² K4 kg/m³
Pa
Subscripts b
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Energy & Fuels
p
Particle
s
Solid
sg
solid to gas
584 585
Tables
586
Tab. 1 Position to grate surface of each thermocouples No.
Position to grate surface (mm)
No.
Position to grate surface (mm)
1
-90
6
388
2
28
7
478
3
118
8
560
4
208
9
748
5
298
10
968
587 588
Tab. 2 Proximate analysis and ultimate analysis. Value
Method
Reference
/
/
GB/T 476-2001
44.46
Carbon dioxide absorption
/
Har%
5.997
Water absorption
/
Oar%
30.35
Calculation
/
Nar%
0.455
Pyrolysis and titration
/
0.11
Pyrolysis and coulometer
GB/T 214-1996
/
/
GB/T 211-1996
Ultimate analysis/wt% (as received basis) Car%
Sar% Proximate analysis /wt%(drybasis)
35
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Aad%
12.39
Slow ashing
/
Mad%
6.23
Air drying
GB/T 212-2001
FCad%
6.23
Calculation
GB/T 213-2003
Vad%
75.15
Thermostatic firing
/
Heating value (MJ/kg)
16.8
calorimeter
GB/T 213-2008
589 590 Tab. 3 Stacking density of different lengths/kg·m-3.
591 Case no.
length/cm
Stacking density/kg·m-3
1
5
81.07
2
10
70.46
3
15
61.61
592 593
Figures
594 36
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Corn straw type
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595
Energy & Fuels
Fig. 1 Modeling of solid particles in a packed bed.
596 597
Fig. 2 The schematic of the one-dimensional fixed bed experimental reactor.
598
599 600
Fig. 3 Effect of different lengths on temperature, T3, versus time along a fixed-bed
601
reactor: (a) 5 cm and (b) 10 cm.
602
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603 604
Fig. 4 Experimental and theoretical bed temperatures versus time along a fixed-bed
605
reactor at different height from the gate (corn straw length as 5 cm).
606
607 608
Fig. 5 Combustion characteristics between experimental and predicted of different
609
parameters within a fixed-bed reactor: (a) ignition time, (b) average ignition rate, (c)
610
average burning rate. 38
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Energy & Fuels
611
612 613
Fig. 6 Concentration of CO2/CO contour (% vol.) inside the fuel bed versus time for
614
different lengths: (a) 5 cm and (b) 10 cm.
615 616
Fig. 7 Concentration of O2 contour (% vol.) inside the fuel bed versus time for the case of
617
5 cm corn straw.
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618 619
Fig. 8 Experimental work and theoretical work of unburned carbon content comparison
620
in the ash residues at different corn length combustion.
621
622 623
Fig. 9 Concentration of CH4 contour (% vol.) inside the fuel bed versus time for different
624
lengths: (a) 5 cm, (b) 10 cm and (c) 15 cm. 40
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Energy & Fuels
625
626 627
Fig. 10 Concentration of NOx contour (% vol.) inside the fuel bed versus time for
628
different lengths: (a) 5 cm, (b) 10 cm and (c) 15 cm.
629
630 631
Fig. 11 Concentration of SO2 contour (% vol.) inside the fuel bed versus time for
632
different lengths: (a) 5 cm, (b) 10 cm and (c) 15 cm. 41
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633 634
Fig. 12 Experimental and theoretical average concentrations of gas species in a fixed-bed
635
(corn straw length as 5 cm).
636
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