Accepted Manuscript Heat transfer during pasteurization of fruit pulps stored in containers with arbitrary geometries obtained through revolution of flat areas
Wilton Pereira da Silva, Jair Stefanini Pereira de Ataíde, Maria Elieidy Gomes de Oliveira, Cleide Maria Diniz P. S. e Silva, Jarderlany Sousa Nunes PII:
S0260-8774(17)30345-X
DOI:
10.1016/j.jfoodeng.2017.08.012
Reference:
JFOE 8987
To appear in:
Journal of Food Engineering
Received Date:
16 February 2017
Revised Date:
23 May 2017
Accepted Date:
13 August 2017
Please cite this article as: Wilton Pereira da Silva, Jair Stefanini Pereira de Ataíde, Maria Elieidy Gomes de Oliveira, Cleide Maria Diniz P. S. e Silva, Jarderlany Sousa Nunes, Heat transfer during pasteurization of fruit pulps stored in containers with arbitrary geometries obtained through revolution of flat areas, Journal of Food Engineering (2017), doi: 10.1016/j.jfoodeng.2017.08.012
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ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 1
Heat transfer during pasteurization of fruit pulps stored in containers with
2
arbitrary geometries obtained through revolution of flat areas
3 4
Wilton Pereira da Silva*, Jair Stefanini Pereira de Ataíde, Maria Elieidy Gomes de
5
Oliveira, Cleide Maria Diniz P. S. e Silva, Jarderlany Sousa Nunes
6 7 8
Federal University of Campina Grande, PB, Brazil. *Corresponding
author:
[email protected]
http://orcid.org/0000-0001-5841-6023
9 10
Abstract
11
Thermal diffusivity of papaya pulp, stored in metal container with arbitrary geometry
12
obtained through revolution of flat areas, was determined through optimization using
13
experimental data. To describe heat conduction during pulp pasteurization, the diffusion
14
equation in generalized coordinates was discretized and numerically solved, through the
15
finite volume method, with a fully implicit formulation. Temperature over time during
16
heating was measured by placing a thermocouple at the point of the container where the
17
equilibrium temperature occurs with greatest delay. Once the expression for thermal
18
diffusivity as a function of local temperature was known by optimization, it was
19
possible to determine, through simulation, the minimum time necessary for the pulp
20
stored in a new container, also with arbitrary geometry obtained through revolution of
21
flat areas, to come into thermal equilibrium with the pasteurization temperature.
22
Microbiological analysis performed before and after the second pasteurization showed
23
that there was a strong reduction of the total microorganisms. Since the thermal
24
equilibrium time was determined through simulation for the new container, the use of a
25
thermocouple for its experimental determination became unnecessary.
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 26
Keywords: Food safety; heat conduction; numerical solution; complex geometries;
27
simulation; thermal diffusivity
28 29
List of symbols
30 31
Latin Letters
32
i, j – Indices for the position of points on the grid
33
J – Jacobian of the transformation
34
k – Thermal conductivity (Wm-1K-1)
35
N, S, E, W, NW, NE, SW, SE, P – Nodal points
36
S – Source term
37
t – Time in the physical domain (s)
38
T – Temperature (ºC)
39
x, y – Cartesian axes
40
x ξ , x η , yξ , y η – Derivatives of x and y with respect to and (m)
41
Δξ, Δη – Increment of position in the generalized axes ξ and η
42 43
Greek Letters
44
α ij – Components of the metric tensor
45
α – Thermal diffusivity ( m 2s -1 )
46
– Dependent variable of the diffusion equation
47
P , E , W , N , S , NE , NW , SE , SW – Dependent variables of the
48
discretized diffusion equation
49
Γ Φ , λ – Transport coefficients
2
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 50
ξ, η – Curvilinear axes of the generalized coordinates system
51
τ – Time in the transformed domain (s)
52
χ 2 – Chi-square
53
Δ – Variation
54 55
Superscripts
56
0 – Previous time
57
P – Nodal point of the studied control volume
58 59
Subscripts
60
e, w, s, n – Boundaries of a control volume
61
i – Initial
62 63
1. Introduction
64
It is well known that the description of heat transfer requires the determination
65
of the thermophysical properties of the raw material used (Baïri et al.; 2007;
66
Ukrainczyk, 2009; Betta et al., 2009; Kiziltas et al., 2010; Tres et al., 2011; Silva et al.,
67
2011; Abakarov and Nuñez, 2013; Bhuvaneswari and Anandharamakrishnan, 2014;
68
Cho and Chung, 2016; Ohshima et al., 2016; Santos-González et al., 2016). One of
69
these properties is the thermal diffusivity (Carbonera et al., 2003; Lemmon et al., 2005;
70
Glavina et al., 2006; Kurozawa et al., 2008; Ruiz-Cabrera et al., 2014; Mohamed,
71
2015). However, it should be noted that, in the specific case of heating of food products,
72
many studies available in the literature consider that this property has a constant value
73
along the process, although various authors, such as Kurozawa et al. (2008), determine
74
the thermal diffusivity for products in thermal equilibrium at different temperatures.
3
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 75
However, few studies consider that these properties are variable, for example, as a
76
function of the local temperature, during a heat transfer process in transient regime
77
(Mariani et al., 2009; Silva et al., 2011). In addition, products are generally stored in
78
containers with simple geometry, such as cylinders (Carbonera et al., 2003; Baïri et al.;
79
2007; Ukrainczyk, 2009; Betta et al., 2009; Tres et al., 2011).
80
Frequently, the use of heat aims to eliminate or reduce the levels of
81
microorganisms present in the foods and also denature enzymes, as in the case of
82
pasteurization (Plazl et al., 2006; Huang, 2007; Silva et al., 2014; Abbasnezhad et al.,
83
2016; Hong et al., 2016). To describe the heat transfer processes during the
84
pasteurization, the geometry and dimensions of the containers that contain the product
85
are important, as well as the knowledge on the thermophysical properties of the
86
container and the product inside it.
87
Regarding the determination of thermal diffusivity, it is important to highlight
88
the study of Ukrainczyk (2009), who estimated this property for pasty products stored in
89
long cylindrical containers, using the inverse method and a one-dimensional (1D)
90
numerical solution of the heat conduction equation. Betta et al. (2009) developed a
91
software to solve the equation of heat conduction in cylindrical coordinates, based on
92
the method of finite differences. To estimate thermal diffusivity using the inverse
93
method, these authors measured the temperature of the central point of products stored
94
in cylindrical containers over time, during the heating step of the pasteurization process.
95
The method proposed by the authors assumes a constant or variable heating
96
temperature, but is limited to two-dimensional (2D) cylindrical containers and to the
97
determination of thermal diffusivity with a constant value, not considering possible
98
variations of this parameter with the distribution of temperature inside the product
99
during the heating. On the other hand, Silva et al. (2011) conducted a study to determine
4
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the thermal diffusivity of tomato pulp, stored in cylindrical cans (2D) during the
101
pasteurization, assuming that this parameter varies with the local value of temperature.
102
For this, Silva et al. (2011) numerically solved the diffusion equation, in cylindrical
103
coordinates, for the boundary condition of the first kind. According to this study, the
104
best results were obtained assuming an exponential expression for thermal diffusivity,
105
increasing with the local value of temperature.
106
If the container geometry is a sphere, a cylinder or a parallelepiped, the
107
appropriate systems to analyze heat transfer are spherical, cylindrical and Cartesian
108
coordinates, respectively. This type of domain is sometimes referred in the literature as
109
regular geometry (Patankar, 1980). If the domain geometry is different of those above
110
mentioned, the domain is known as irregular, complex or arbitrary domain (Patankar,
111
1980; Farias et al., 2016). In this case, a boundary-fitted coordinate system (Tannehill et
112
al., 1997; Silva et al., 2009; Da Silva et al, 2014; Farias et al., 2016), also called
113
generalized coordinate system, facilitates studies on heat transfer in this domain. If the
114
arbitrary geometry is completely irregular, with no symmetry, a three-dimensional
115
equation in generalized coordinates must be used to describe a diffusion process. If
116
there is symmetry of revolution in the arbitrary geometry, a two-dimensional equation
117
may be enough to describe the diffusion. The literature consulted in the present study
118
allows to claim that the description of heat transfer in products stored in containers with
119
arbitrary geometry is scarce. In some studies, commercial software developed for the
120
study of computational fluid dynamics (CFD), such as CFX, Ansys, COMSOL
121
Multiphysics and Fluent, are used in the three-dimensional simulation of heat transfer
122
(Kiziltas et al., 2010; Bhuvaneswari and Anandharamakrishnan, 2014). However, due to
123
their complexity and the required computational effort, these programs are not normally
124
used for the determination of thermophysical parameters through algorithms of
5
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 125
optimization. On the other hand, there are only few studies in the literature that propose
126
solutions of the diffusion equation in arbitrary domain, exploring possible symmetries
127
to reduce the computational effort required in the simulations. Nonetheless, it is
128
important to mention that this type of solution can be useful for the determination,
129
through optimization, of thermophysical parameters in heat transfer processes.
130
Silva et al. (2009) proposed a numerical solution of the diffusion equation for
131
geometries obtained through the revolution of arbitrary flat areas, to describe diffusion
132
phenomena. These authors discretized the diffusion equation in generalized coordinates,
133
presuming the boundary condition of the first kind. The researchers explored the
134
revolution symmetry of various containers, which reduced from three- to two-
135
dimensional the geometry to be considered in the solution of the equation. This
136
significantly decreased the computational effort in the solution of the equation, in
137
comparison to the typical three-dimensional solution in arbitrary domain. A similar
138
study was conducted by Da Silva et al. (2014) on drying of bananas, but in this case
139
considering the boundary condition of the third kind. On the other hand, according to
140
Farias et al. (2012), for solid and pasty products, with no heat source and no phase
141
change, in general, only conduction and radiation are involved in the heat transfer
142
processes. Many times, solely a conduction model is used to describe heat transfer and,
143
consequently, the parameters involved in these processes are considered as “apparent”.
144
In this context, the objectives of this paper are defined below.
145
This study aims to propose a model to determine the apparent thermal
146
diffusivity, as a function of the local temperature of pasty products stored in metal
147
containers with arbitrary geometry obtained through revolution of flat areas, using
148
experimental data. In addition, once the expression for the apparent thermal diffusivity
149
is known, this model can also be used to simulate heat transfer in products stored in new
6
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 150
containers, with different arbitrary geometries obtained through revolution of flat areas,
151
without the need for acquisition of new experimental data. Thus, this study can be
152
useful for food industries, in terms of projects of packages for the storage of pasty
153
products subjected to pasteurization.
154 155
2. Material and Methods
156
In the present paper, the transient process of heat transfer was studied in the
157
pasteurization of papaya (Carica papaya), in pasty state, stored in metal containers with
158
arbitrary geometry obtained through revolution of flat areas. In this study, the following
159
assumptions are assumed for the mathematical model: (1) the product can be considered
160
as homogeneous and isotropic; (2) the distribution of temperature in the product is
161
axisymmetric; (3) the transport of heat in the product occurs through conduction; (4) the
162
boundary condition for heat transfer is of the first kind.
163 164
2.1. Diffusion equation in generalized coordinates
165
According to Silva et al. (2009), a revolution solid is generated by the rotation,
166
in relation to an axis (for example, y), of a flat area (defined by lines ξ and η , in
167
generalized coordinates), contained in the physical space xy, as is shown in Figure 1(a).
168
Hence, if an axisymmetric diffusion occurs in relation to the y-axis of the volume
169
generated by the revolution, there will be no flow perpendicular to the generating area
170
of this volume (axis ). Thus, for a domain with these characteristics, the diffusion
171
equation can be written in only two dimensions, in generalized coordinates ξ and η
172
contained on the same xy plane (Silva et al., 2009), as follows:
173
Φ Φ S J J 11 12 22 J 21 J
7
(1a)
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 174
Equation (1a) is known as two-dimensional diffusion equation in the
175
transformed domain ( ξ , η ), where: and λ are transport coefficients; is the
176
dependent variable; τ is the time; J is the Jacobian of the transformation from Cartesian
177
coordinates (x,y) to generalized coordinates ( ξ , η ) and S is the source term. The
178
expressions for the components of the metric tensor α ij and for the Jacobian J can be
179
viewed in Silva et al. (2009). For the use of the finite volume method (Patankar, 1980)
180
to discretize the Equation (1a) with a fully implicit formulation, such equation must be
181
integrated in the transformed space for each control volume Δξ Δη (from west (w) to
182
east (e) and from south (s) to north (n)), in the time interval Δτ (from τ to τ Δτ ). This
183
integration results in Equation (1b):
184
185
p p P0 0P Jp
12 e J e e 11e J e e e e
186
11w J ww 12 w J ww w w 21n J n n 22 n J n n n n
187
S p 21s J s s 22 s J s s . s s J p
(1b)
188
It should be noted that the fully implicit formulation was chosen because of the
189
following reason: the obtained solution is unconditionally stable for any time interval
190
established (Farias et al., 2012). As additional information, before the integration that
191
resulted in Equation (1b), the partial derivatives of Equation (1a) were approximated as
192
follows:
f f f1 f10 ; f 1 f2 2 e 2
8
w
and
f f f3 3 n 3 s . The terms
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 193
with zero in the superscript are evaluated in a time prior to the time of interest, while the
194
terms that do not have superscript are evaluated at the time of interest.
195
For complete discretization of Equation (1b), it is necessary to define the control
196
volume for which the partial derivatives of the dependent variable in relation to ξ
197
and η will be calculated. Thus, the two-dimensional domain must be divided into
198
control volumes, which are differentiated from each other by their location on the
199
generated grid. The distinction between the types of control volumes is given by their
200
position and the number of faces in contact with the external medium. Therefore, for a
201
two-dimensional domain, there are 9 types of control volumes: internal, north, south,
202
east, west, northwest, northeast, southwest and southeast.
203 204
2.1.1. Discretization in generalized coordinates: control volume to the southeast.
205
As an example of the discretization of Equation (1), the control volume to
206
southeast, presented in the transformed domain through Figure 1(b), will be used
207
supposing boundary condition of the first kind. The nodal point P of this control volume
208
(as well as the nodal points of the neighboring control volumes) can be observed in the
209
grid fragment of the two-dimensional transformed domain. For this control volume, the
210
direct derivatives of the dependent variable are given by the following equations:
211
P e ; e / 2
w
P
W
P s N P ; . n s / 2
;
212
(2a-d)
213 The expressions for the cross derivatives are defined as follows: 214
215
ne e s 2 ; e
w
N P NW W s sw 4 2
9
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 216
(3a-d)
ne e N P NW W sw s e 2 4 2 ; n s
217 218 219 220 221
With the substitution of the partial derivatives given by Equations (2a-d) and (3a-d) in Equation (1b), the following algebraic equation is obtained:
Ap P AwW An N Anw NW B
(4)
where:
p 11w J w w 22 n J n n 2 11e J e e 2 22 s J s s J p
222
Ap
223
1 1 12 w J w w 21n J n n ; 4 4
An 22 n J nn
1 1 12 w J ww 21n J nn 4 4
(5a-b)
1 1 1 1 12 w J ww 21n J n n ; Anw 12 w J ww 21n J nn ; (6a-b) 4 4 4 4
224
Aw 11w J ww
225
0P 0P S p 1 B 211e J e e e 2 22 s J s s s 12 w J w w ( s sw ) JP Jp 2
226
1 1 1 21n J n n ( ne e ) 12 e J e e ( ne e 2 s ) 21s J s s 2 e ( s sw ) (7) 2 2 2
227
The terms with zero in the superscript are evaluated in a time prior to the time of
228
interest, while the terms that do not have superscript are evaluated at the time of
229
interest. The subscripts “n”, “s”, “e”, “w”, “ne”, “se”, “nw” and “sw” represent the
230
interfaces north, south, east, west, northeast, southeast, northwest and southwest,
231
respectively, of any control volume considered.
232
The determination of the components of the metric tensor α11 , α12 α 21 , α 22
233
and of the Jacobian J assumes the knowledge on the metrics of the transformation, i.e.,
234
of the partial derivatives x ξ , x η , yξ and y η . Hence, expressions must be established
235
for these derivatives, for both the nodal point P in the control volume under analysis and 10
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 236
the interfaces to the north, south, east and west. Looking again at Figure 1, it can be
237
noted that the control volume with nodal point P is limited, in the transformed domain,
238
by the lines ξ = j and ξ = j+1 and by the lines η = i and η = i+1. It should be observed
239
that each intersection of the lines ξ and η has coordinates x and y in the physical
240
domain. Thus, it is possible to determine approximate expressions for the derivatives of
241
the Cartesian coordinates x and y of the nodal point P in relation to the generalized
242
coordinates ξ and η . For the coordinate x, for example:
243
xP
xe xw xi , j 1 xi 1, j 1 xi , j xi 1, j 1 2 2
(8)
xP
xn xs xi 1, j xi 1, j 1 xi , j xi , j 1 1 2 2
(9)
244 245 246
Similar expressions can be obtained for the coordinate y. It must be observed
247
that, for the case of the control volume on the southeast boundary, the partial derivatives
248
on the internal interfaces (west and north) are calculated similar to the presented
249
derivatives, but not those in the boundaries east and south: xe ; ye ; xs and ys . For
250
these four derivatives, one can impose: xe xP ; ye yP ; xs xP and ys yP . With
251
a similar reasoning, discretized equations can be obtained for the other types of control
252
volumes (Silva et al., 2009). At the end of the discretization, a system of equations for
253
was obtained (one equation for each control volume) and this system was solved for
254
each time step through the Gauss-Seidel method, with a tolerance of convergence of 10-
255
8.
256
the interface of two control volumes through the harmonic mean of the values obtained
257
for the nodal points of these control volumes (Silva et al., 2009; 2010; 2011).
On the other hand, it must be observed that the process parameter is calculated on
11
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 258
In this work, the parameter can be considered constant or variable,
259
depending on the local value of in accordance with a function f, with two parameters
260
a and b, as seen in Equation (10):
261
f ( , a , b ) .
(10)
262
Equation (10) gives the value of on the nodal points of the control volumes.
263
However, as seen in Equations (5a-b), (6a-b) and (7), the value of this parameter at the
264
interface of two neighboring control volumes is required. For this, the following
265
equation was used (Patankar, 1980):
266
fr
P Q
f d Q (1 f d ) P
,
(11)
267
in which fr represents the value of on the interface fr of the control volume with
268
nodal point P and a control volume with nodal point Q. In Equation (11) fd is defined as
269
fd
dP , d P dQ
(12)
270
and dP and dQ are the distances from the interface “fr” to the nodal points P and Q,
271
respectively. At the nodal points, should be calculated by an appropriate function
272
which relates that parameter with the value of at each node as presented in Equation
273
(10).
274
Many expressions involving two fit parameters (a and b) were tested for the
275
apparent thermal diffusivity as a function of the local temperature (polynomials,
276
exponential, hyperbolic, constant, etc.), and both fitting parameters were determined
277
through optimizations, using experimental data of temperature measured by
278
thermocouple over time, through the robust method described by Silva et al. (2011).
279 280
2.2. Raw material and preparation of samples
12
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 281
The raw material was papaya (Carica papaya), obtained at the local market of
282
Campina Grande-PB, Brazil. Healthy ripe fruits, free from spots on the skin and with
283
firm pulp were selected. Initially, the entire bench, containers and instruments were
284
subjected to asepsis and sterilization. Gloves and masks were used to avoid undesirable
285
contaminations during the experimental procedure. The fruits were washed in running
286
water, sanitized in 0.2% (200 mg/L) sodium hypochlorite solution for 15 min and
287
washed again in running water. After asepsis, the fruits were peeled, cut and placed in a
288
multiprocessor (model Cadence Efficace Plus–600W), with no addition of water, to
289
obtain the pulp. Part of the pulp was placed in the freezer (with temperature of -18 ºC)
290
to be used in the physicochemical and microbiological analyses of the fresh papaya. The
291
other part was left on the bench to come into thermal equilibrium with the environment
292
(temperature of 22 ºC) before being subjected to the process of pasteurization.
293 294
2.2.1. Physicochemical and microbiological analyses of the samples
295
The physicochemical analysis for fresh pulp papaya was performed in triplicate
296
according to IAL (2005), Folch et al. (1957) and AOAC (2000). The microbiological
297
analysis (total count of microorganisms on the plate) was performed according to
298
Vanderzant and Spilttstoesser (1992) and also Brazil (2003). The count of
299
microorganisms, in log CFU/g, was made in a manual colony counter (Phoenix - model
300
CP608). These analyses were carried out at the Laboratory of Bromatology and Food
301
Microbiology of the Center of Education and Health of the Federal University of
302
Campina Grande, before and after the process of pasteurization, as a measure of the
303
efficiency of this conservation method.
304 305
2.2.2. Pasteurization
13
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 306
The process of pasteurization was performed at the Food Technology Laboratory
307
of the Center of Education and Health of the Federal University of Campina Grande.
308
The containers to store the pulp were obtained by putting together two identical metal
309
cups, made of stainless steel. In one of the cups, two holes were made to pass two
310
thermocouples (k-type). One thermocouple was positioned on the internal surface of the
311
metal cup, using a transparent acetic silicone adhesive (resistant to temperatures from -
312
50 to 150 ºC). The other thermocouple was positioned in the center of the upper part of
313
the same cup, as shown in Figure 2(a). Both cups, previously filled with papaya pulp
314
(Figure 2(b)), were united and glued with fast-drying liquid adhesive (Figure 2(c)). Both
315
holes to pass the thermocouples were sealed with silicone adhesive to improve their
316
fixation and avoid pulp leaking or even water entry during the process of pasteurization.
317
After that, the thermocouples were connected to the portable digital thermometer
318
(model TH – 095), which has two channels. In this assembly, the data are
319
instantaneously transmitted from the thermometer to a computer, through RS – 232
320
cable, and recorded in regular time intervals in a file with ‘.txt’ extension.
321
With the Etiel PP – 30 L pasteurizer/processor correctly installed, water was
322
placed in the internal tank to be heated to the temperature of 65 ºC. When this
323
temperature was achieved, the container filled with the pulp was placed in the
324
pasteurizer. The pasteurization procedure was performed four times and the water
325
temperature along the entire process was manually controlled, with the aid of probe
326
thermometer (model WT – 1), with reading capacity from -50 to 300 ºC. In the
327
experiments, the initial temperature of the product was the ambient temperature,
328
approximately 22 ºC.
329
The minimum heating time was established in such a way to guarantee that the
330
coldest point of container could come into thermal equilibrium with all other points of
14
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 331
the sample. The cooling step was performed immediately after the container with the
332
pulp was removed from the pasteurizer, by inserting it in a thermal box containing a
333
mixture of water and ice at temperature of approximately 1 ºC. The process was
334
considered as finished when the thermocouple located in the point of greatest delay of
335
cooling achieved the temperature of 22 ºC. Then, the pasteurized pulps were stored in
336
plastic containers with lids and placed in the freezer (-18 ºC) for microbiological
337
analysis.
338 339
3. Results and discussion
340
Physicochemical analysis performed in the pulp of fresh papaya presented
341
moisture content (%, w.b.), proteins (g/100 g), lipids (g/100 g) and total sugar (g/100 g)
342
of (86.4 ± 0.7), (0.36 ± 0.06), (0.89 ± 0.05) and (11.7 ± 0.6), respectively.
343
In this study, the two-dimensional diffusion equation was solved in generalized
344
coordinates, with the objective of studying the kinetics of heat transfer in ripe papaya
345
pulp, placed in containers with arbitrary geometry obtained through revolution of flat
346
areas,
347
k / ( c p ) , S=0 and T . In the previous expressions, and k are
348
thermal diffusivity and conductivity, respectively, while is the density and c p is the
349
specific heat at constant pressure of the papaya pulp. The simplification above
350
mentioned for was considered reasonable for heating of papaya pulp because
351
empirical equations available in the literature (presented, for instance, by Fricke and
352
Becker, 2001) indicate that, for the main components of the pulp, c p varies less than
353
1% between 22.4 and 65.4 oC (time interval of 2286 s). This type of simplification for
354
the diffusion equation, given by
considering
the
following
simplifications
in
Equation
(1a):
λ=1 ,
T . (T )T , is sometimes found in the
15
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 355
literature as, for instance, in Mariani et al. (2008). To describe heat conduction in the
356
pulp using generalized coordinates, two-dimensional, non-orthogonal, structured grids
357
were created for the generating area of each container, using the software “2D Grid
358
Generation” (Silva, 2008). It was observed that grids with 24 x 32 control volumes are
359
sufficiently refined to solve the diffusion equation numerically, especially because they
360
explore the symmetry of revolution of the containers, and also the symmetry of the
361
generating areas of these containers. As to the refinement of the time interval,
362
preliminary studies indicated that the division of the total time of heating into 2000
363
steps was sufficient, since a relative tolerance of 10-4 was established for the parameters
364
to be determined through optimization.
365 366
3.1. Determination of apparent thermal diffusivity
367
The container used for the determination of the thermal diffusivity of papaya
368
pulp during the heating period, its symmetric half, generating area and also the
369
generated grid are presented in Figure 3. The part (d) of this figure highlights, through
370
the control volume to the southeast of the grid, the central point of the container, which
371
is the last one to achieve the equilibrium temperature, where the thermocouple was
372
placed for data acquisition. This figure also highlights the boundary conditions used for
373
the simulation. To determine the process parameters, the numerical solution was
374
coupled to an optimization algorithm described by Silva et al. (2011). The arithmetic
375
mean of four experimental data sets was used in the optimization process. Various
376
expressions for thermal diffusivity as a function of the local temperature were
377
investigated (Table 1). According to the obtained results, the best function to describe
378
the heating kinetics of the central point of the container was:
379
(T ) b cosh(aT 2 ) ,
(13)
16
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 380
with a = 1.756x10-4 ºC-2 and b = 1.243x10-7 m2 s-1. For the thermal diffusivity given by
381
Equation (13), it was obtained: χ² = 13.625 and R² = 0.99952. Additionally, F-test
382
(Fisher-Snedecor) was calculated, with F = 1.401x105 indicating that, for 2 fitting
383
parameters and 88 experimental points, P(F) = 0.0. The least favorable result was
384
obtained for the apparent thermal diffusivity expressed by a constant value. This value,
385
obtained through optimization, was α = 1.37x10-7 m² s-1, which is a result close to those
386
obtained by Carbonera et al. (2003), Plazl et al. (2006) and Betta et al. (2009) for tomato
387
pulp. The statistical indicators obtained for this last result were χ² = 38.279 and R² =
388
0.99922. Despite a chi-square with a value approximately three times higher than that
389
obtained for the best result, this latter can also be considered as reasonable. In addition,
390
it can be observed that there is compatibility between the values obtained for constant
391
thermal diffusivity and the mean value of the variable thermal diffusivity expressed by
392
Equation (13): αaverage = 1.35x10-7 m² s-1.
393
Using the result of this research for the thermal diffusivity of papaya pulp, it was
394
obtained a range from 1.25x10-7 to 1.61x10-7 m2 s-1 corresponding to 22.4 and 65.4 oC,
395
respectively. The lower value is compatible with the value obtained by Kurozawa et al.
396
(2008) for the same fruit. These authors, using line heat source probe methodology,
397
determined an empirical equation for α(T), between 20 and 40 oC, which results in
398
1.15x10-7 m2 s-1 for the temperature of 22.4 oC. On the other hand, the value obtained in
399
the present article for α(22.4 oC), of 1.25x10-7 m2 s-1, is significantly lower than that
400
obtained for water at the same temperature (about 1.46x10-7 m2 s-1). According to
401
several researchers, including Azoubel et al. (2005), this type of result is explained by
402
the influence of the solid soluble content. These authors, using line heat source probe,
403
investigated the influence of the soluble solids concentration on the thermal diffusivity
17
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 404
of cashew juice at 30 oC. The researchers observed that, when the concentration varies
405
from 5.5 to 25 oBrix, α varies from 1.43x10-7 to 1.32x10-7 m2 s-1.
406
Using the expression given by Equation (13) for the apparent thermal diffusivity,
407
it was possible to describe the heating kinetics of the central point of the container
408
(Figure 4) and determine the distribution of temperature in the generating area predicted
409
by proposed mathematical model, at various times (Figure 5). As additional
410
information, these figures were obtained using the software developed in the present
411
study. The graph of Figure 4 demonstrates that the heating time of the central point of
412
the container with pulp was about 2300 s. In this figure, the standard deviation of the
413
simulated curve was approximately 0.4 oC, i.e., a little less than half degree Celsius.
414
Visually, it is possible to observe a good agreement between the experimental data and
415
the curve obtained through simulation, which allows to claim that the boundary
416
condition of the first kind is certainly adequate for the type of container used to store the
417
pulp (Plazl et al., 2006; Ukrainczyk, 2009; Betta et al., 2009; Silva et al., 2011; Silva et
418
al., 2014; Ruiz-Cabrera et al., 2014; Mohamed, 2015), and this fact was confirmed by
419
thermocouple placed in contact with the internal surface of the container.
420
Through an inspection of Figures 4 and 5, it is possible to observe the behavior
421
of temperature in the geometric center of the container with papaya pulp. It can be noted
422
that, at the beginning of the process, there is a certain delay in the heating of this point
423
and, consequently, its equilibrium temperature is achieved in a longer time, compared
424
with the points closer to the surface. The isothermal curves of Figure 5 also indicate that
425
the propagation of heat occurs, obviously, from the external surface to the center of the
426
container. Because of this, for many containers, the central point is selected so that its
427
transient state is monitored during the heating (Carbonera et al., 2003; Baïri et al.; 2007;
428
Ukrainczyk, 2009; Betta et al., 2009; Kiziltas et al., 2010; Tres et al., 2011; Silva et al.,
18
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 429
2011). However, depending on the generating area, the coldest point cannot be
430
determined so intuitively, and the model proposed in the present study allows to
431
determine this point through a simple simulation, as will be seen below, in a new
432
simulation, for another container.
433 434
3.2. Estimate of heating time using another container
435
Using the best result obtained for the apparent thermal diffusivity of papaya
436
pulp, given by (T ) 1.243 107 cosh(1.756 104 T 2 ) , a new simulation of the heating
437
of the product was performed for a new geometry, in order to determine the equilibrium
438
time of the coldest point. The new geometry and the two-dimensional, non-orthogonal,
439
structured grid of the symmetric half, with 24 x 32 control volumes, can be viewed in
440
Figure 6. With a simple initial simulation (with the same previous boundary conditions),
441
the developed software indicated that the coldest point is that whose control volume was
442
highlighted on the grid created in one of the symmetric halves of the generating area of
443
the container. Such point is located on the revolution axis (y-axis, west boundary), as
444
demonstrated in Figure 6(b). It is interesting to note that, for the new geometry chosen
445
for the container, the coldest point is not located in its geometric center. Nevertheless,
446
the heating kinetics of this point can be simulated through the proposed model, as will
447
be demonstrated below.
448
The graph in Figure 7 presents the evolution of temperature numerically
449
simulated for the control volume with greatest delay of heating, using the apparent
450
thermal diffusivity obtained through Equation (13). For this new geometry, it is noted
451
that the equilibrium temperature in the least favorable point is achieved in a time
452
slightly shorter than 1800 s. This information was used to perform the complete process
453
of pasteurization of the papaya pulp placed in the new container, but without the
19
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 454
acquisition of data using thermocouples, only relying on the heating time predicted by
455
the simulation presented in Figure 7. With the purpose of promoting a better
456
interpretation of the heating process for the new geometry, contour graphs with
457
isotherms were generated (Figure 8) for four times of the heating process. For the four
458
different times, it is possible to observe that the control volume with greatest delay in
459
the heating process is located in the west boundary of the generating area (where the y-
460
axis, of revolution, is located) and that it really must be located in the position indicated
461
in Figure 6(b).
462
As an additional information, the results obtained in the microbiological analysis
463
of fresh papaya pulp showed a count on plates of (6.38 ± 0.11), expressed in log CFU/g.
464
However, after pasteurization, the microbiological analysis was performed again and the
465
new count was (2.70 ± 0.01).
466 467
3.3. Overview of the results
468
Proposed model allowed to determine, for a new container with symmetry of
469
revolution, the coldest point and also the time necessary for the thermal equilibrium of
470
the product, both obtained through simulation. It constitutes an important result,
471
because it guarantees that the least favorable region during the heating of the product
472
achieves the temperature stipulated for the inactivation of the pathogenic agents,
473
without the need for direct measurement of the temperature in this point using
474
thermocouples. Thus, the model proposed in the present study allows to alter the
475
geometry of containers for the storage of pasty products, defining the heating time
476
through rapid computer simulations.
477
The apparent thermal diffusivity of a product is influenced by its composition,
478
temperature, density and specific heat, among others. Nevertheless, it is very common
20
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 479
to find in the literature various studies that consider the apparent thermal diffusivity
480
with a constant value, solving the equation of heat conduction with the diffusion term
481
given in the form of 2T (Lemmon et al., 2005; Glavina et al., 2006; Plazl et al.,
482
2006; Baïri et al., 2007; Huang, 2007; Ukrainczyk, 2009; Betta et al., 2009; Mohamed,
483
2015; Muramatsu et et al., 2017). Obviously, model proposed in the present study
484
allows to consider the thermal diffusivity with constant value and, for this case, the
485
result obtained in this study was compatible with others found in the literature for
486
similar products (Carbonera et al., 2003; Plazl et al., 2006; Kurozawa et al., 2008; Betta
487
et al., 2009). However, in the present study, it was observed that a constant value does
488
not express the apparent thermal diffusivity with accuracy in a transient process, as can
489
be observed through the statistical indicators obtained for this case. A simple
490
observation of Figure 5(a), for instance, indicates that after 100 s the outermost part of
491
the pulp, close to the container surface, had already reached the temperature of 65 ºC,
492
whereas the central region continued with 22.4 oC. Hence, one cannot expect that the
493
product, at such different temperatures, to have the same thermal diffusivity in different
494
points. Despite this observation, few studies in the literature, such as Mariani et al.
495
(2009) and Silva et al. (2011), determine expressions for α(T), in which T is the local
496
temperature during a transient process of heat transfer. However, it should be pointed
497
out that model proposed in these two studies was applied only to products stored in
498
cylindrical containers. In the present study, besides the apparent thermal diffusivity
499
being determined by an expression given as a function of the local temperature, the
500
container to store the pasty product can have any irregular geometry, provided that there
501
is symmetry of revolution. This generalization, obtained through simple simulations, is
502
an advance for food industries, in terms of projects of packages for the storage of pasty
503
products subjected to pasteurization.
21
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 504 505 506 507
4. Conclusion It was possible to conclude that the apparent thermal diffusivity of the papaya pulp must be given by increasing expressions, as a function of the local temperature.
508
Once the expression of thermal diffusivity as a function of the local temperature
509
was known, it was possible to determine the coldest point and also the time necessary
510
for the pulp to come into thermal equilibrium with a temperature previously defined,
511
through simulations. Hence, it became unnecessary the experimental determination of
512
this point and the use of thermocouple to measure this time of equilibrium every time a
513
container with new geometry is used to store the product. Thus, this study can be useful
514
for food industries, in terms of projects of packages for the storage of pasty products
515
subjected to pasteurization.
516
Regarding the microbiological analysis of papaya pulp stored in the new
517
container with symmetry of revolution, it was possible to claim that the pasteurization,
518
with the coldest point and the heating time determined through simulation, promoted a
519
significant reduction of the microorganisms.
520 521
Acknowledgment
522
The first author would like to thank CNPq (Conselho Nacional de
523
Desenvolvimento Científico e Tecnológico) for the support given to this research and
524
for his research grant (Processes Number 302480/2015-3 and 444053/2014-0).
525 526
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27
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 652
Figure and table caption
653
Figure 1. (a) Control volume with a nodal point P obtained by rotation about y of an
654
elementary cell of a two-dimensional structured grid in a vertical plane. (b)
655
Fragment of the grid in the transformed domain showing the control volume P to
656
southeast and its neighbors to the north (N), west (W) and northwest (NW).
657
Figure 2. (a) Positions of the thermocouples: internal surface and center of the upper
658
part of the cup; (b) Papaya pulp placed in both cups that compose the
659
container; (c) Container obtained by the junction of both cups with papaya
660
pulp.
661
Figure 3. (a) Container where the papaya pulp was stored; (b) Symmetric half of the
662
container; (c) Generating area of the symmetric half of the container; (d) Two-
663
dimensional grid generated with 24 x 32 control volumes, highlighting the point
664
where the thermocouple was placed.
665
Figure 4. Temperature versus time in the center of the container with papaya pulp.
666
Figure 5. Isotherms representing the distribution of temperature in the generating area of
667
the container with papaya pulp at the instant: (a) 100 s; (b) 200 s; (c) 400 s; (d)
668
600 s.
669
Figure 6. (a) New container to store papaya pulp; (b) Two-dimensional grid generated
670
with 24 x 32 control volumes for the symmetric half of the new container,
671
highlighting the control volume with greatest delay of heating.
672 673
Figure 7. Temperature versus time in the coldest point, obtained through numerical simulation for the new arbitrary geometry.
674
Figure 8. Isotherms representing the distribution of temperature in the generating area of
675
the new container with papaya pulp at the instant: (a) 100 s; (b) 200 s; (c) 400 s;
676
(d) 600 s.
28
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 677
Figure 1
678
679
(a)
680
681
(b)
682
Figure 1. (a) Control volume with a nodal point P obtained by rotation about y of an
683
elementary cell of a two-dimensional structured grid in a vertical plane. (b) Fragment of
684
the grid in the transformed domain showing the control volume P to southeast and its
685
neighbors to the north (N), west (W) and northwest (NW).
686 29
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 687
Figure 2
688
689 690
Figure 2. (a) Positions of the thermocouples: internal surface and center of the upper
691
part of the cup; (b) Papaya pulp placed in both cups that compose the container; (c)
692
Container obtained by the junction of both cups with papaya pulp.
693 694 695 696 697 698 699 700 701 702 703 704 705 706
30
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 707
Figure 3
708
709 710
Figure 3. (a) Container where the papaya pulp was stored; (b) Symmetric half of the
711
container; (c) Generating area of the symmetric half of the container; (d) Two-
712
dimensional grid generated with 24 x 32 control volumes, highlighting the point where
713
the thermocouple was placed.
714 715 716 717 718 719 720 721 722 723 31
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 724
Figure 4
725
726 727
Figure 4. Temperature versus time in the center of the container with papaya pulp.
728 729 730 731 732 733 734 735 736 737 738 739 740 741 742 32
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 743
Figure 5
744
745
(a)
(b)
(c)
(d)
746
Figure 5. Isotherms representing the distribution of temperature in the generating area of
747
the container with papaya pulp at the instant: (a) 100 s; (b) 200 s; (c) 400 s; (d) 600 s.
748 749 750 751 752 753 754 755 756 757 758 759 760 761 762
33
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 763
Figure 6
764
765 766
Figure 6. (a) New container to store papaya pulp; (b) Two-dimensional grid generated
767
with 24 x 32 control volumes for the symmetric half of the new container, highlighting
768
the control volume with greatest delay of heating.
769 770 771 772 773 774 775 776 777 778 779 780
34
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 781
Figure 7
782
783 784
Figure 7. Temperature versus time in the coldest point, obtained through numerical
785
simulation for the new arbitrary geometry.
786 787 788 789 790 791 792 793 794 795 796 797 798 799 35
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 800
Figure 8
801
802 803
(a)
(b)
(c)
(d)
804
Figure 8. Isotherms representing the distribution of temperature in the generating area of
805
the new container with papaya pulp at the instant: (a) 100 s; (b) 200 s; (c) 400 s; (d) 600
806
s.
807 808 809 810 811 812 813 814 815 816 817 818 819
36
ACCEPTED Pasteurization of products stored inMANUSCRIPT containers with arbitrary geometries 820
Table 1
821 822
Table 1 – Functions for thermal diffusivity, parameters and statistical indicators. Rank
Function
a
b (m²s-1)
1
bcosh(aT²)
1.7563526x10-4
1.2433716x10-7
13.62506 0.9995167
2
be(aT²)
6.6771485x10-5
1.1695271x10-7
15.21006 0.9994777
3
bcosh(aT)
1.2118561x10-2
1.1635159x10-7
15.42183 0.9994757
4
aT²+b
8.9616890x10-12
1.1606156x10-7
15.53946 0.9994724
5
be(aT)
5.9826118x10-3
1.0314034x10-7
16.37410 0.9994482
6
bcosh( aT¹/²)
0.1169689
1.0217830x10-7
16.58376 0.9994557
7
aT+b
7.9637591x10-10
9.9493597x10-8
16.71353 0.9994436
8
be(aT¹/²)
7.9968914x10-2
7.9282870x10-8
17.05604 0.9994293
9
be(a/T)
-9.979097
1.7144248x10-7
19.27716 0.9993911
10
aT1/2+b
4.6032218x10-9
1.0587759x10-7
23.84062 0.9994333
11
b
-
1.3737640x10-7
38.27939 0.9992166
823 824 825 826 827 828 829 830 831
37
χ²
R²
ACCEPTED MANUSCRIPT A model was proposed to determine thermal diffusivity of fruit pulps Model was applied to products stored in containers with arbitrary geometry Model enables to determine the coldest point during heating The thermal equilibrium time during heating was predicted by simulation.