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Journal of Food Process Engineering 28 (2005) 107132.All Rights Reserved. Copyright 2005, Blackwell Publishing 107
SOLID FOODS FREEZE-DRYING SIMULATION AND
EXPERIMENTAL DATA
S. KHALLOUFI1, J.-L. ROBERT2 and C. RATTI1,3
1Soils Science and Agri-Food Engineering Department2Civil Engineering Department
Laval UniversitySainte-Foy G1K 7P4
QC Canada
Accepted for Publication June 6, 2004
ABSTRACT
This article presents a mathematical model describing the unsteady heat
and mass transfer during the freeze drying of biological materials. The model
was built from the mass and energy balances in the dried and frozen regions
of the material undergoing freeze drying. A set of coupled nonlinear partial
differential equations permitted the description of the temperature and pres-
sure profiles, together with the position of the sublimation interface. These
equations were transformed to a finite element scheme and numerically solved
using the Newton-Raphson approach to represent the nonlinear problem andthe interface position. Most parameters involved in the model (i.e., thermal
conductivity, specific heat, density, heat and mass transfer coefficients etc.)
were obtained from experimental data cited in the literature. The dehydration
kinetics and the temperature profiles of potato and apple slabs were experi-
mentally determined during freeze drying. The simulation results agreed
closely with the water content experimental data. The prediction of tempera-
ture profiles within the solid was, however, less accurate.
INTRODUCTION
Freeze drying is a dehydration process where water vapor is removed bysublimation from frozen materials, usually under conditions of low pressureand temperature. The advantage of this process is mainly related to the highfinal quality of products (Mellor 1978; Sagara and Ichiba 1994; Krokida andMaroulis 1997). This attribute is due to two main characteristics of freeze
Blackwell Science, LtdOxford, UKJFPEJournal of Food Process Engineering0145-8876Copyright 2005 by Food & Nutrition Press, Inc., Trumbull, Connecticut.282107132Original ArticleFREEZE-DRYING SIMULATIONS. KHALLOUFI,
J.-L. ROBERT and C. RATTI
3 Corresponding author. TEL: 418-656-2131 # 4593; FAX: 418-656-3723; EMAIL:[email protected]
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108 S. KHALLOUFI, J.-L. ROBERT and C. RATTI
drying: (1) Water, representing more than 80% of food products, is frozen andtherefore cannot serve as a solvent reactant throughout the sublimationprocess; (2) Process temperatures are low (product temperatures are between-40 to -20C during sublimation and final temperatures, in the range of2050C, depending on the heating plate temperature), so the deteriorationreactions (i.e., nonenzymatic reactions) are slow or are completely stoppedbecause of weak rate constant (Cheftel et al. 1977).
Despite the excellent quality of final products, the cost of the freeze-drying process is fairly expensive (Lombraa et al. 1997; Sadikoglu et al.1998) and its applicability remains mainly reserved to products of high marketvalue such as pharmaceutical products and some special foods (nutraceutical,baby foods, spices and coffee). This major disadvantage of freeze drying isdirectly related to the long processing times caused by the high materialresistance to heat transfer during the operation (Sagara and Ichiba 1994; Kuuet al. 1995), the sample configuration, its own properties and the operatingconditions. In addition, the condenser temperature and the vacuum levelshould be maintained at their lowest values during the freeze-drying process.Energy constitutes a major cost factor, which is composed of the energynecessary for sublimation and desorption as well as the energy to supportvacuum and refrigeration.
An important part of previous investigations aimed to reduce freeze-drying times and consequently to lower the energy consumption, analyzingthe possibilities of controlling the heat intensity and the vacuum pressure andtherefore investigating possible ways of optimizing the freeze-drying pro-cess. Several studies were carried out in laboratories and in pilot scale plants(Sagara and Ichiba 1994; Kuu et al. 1995; Liapis et al. 1996). Simulation wasalso used as a preliminary tool for the evaluation of the freeze-drying pro-cess. Several theoretical models concerning the heat and mass transferphenomena during freeze drying can be found in the literature (Karel 1975;Mellor 1978; Liapis and Bruttini 1995a; Lombraa and Izkara 1996;Lombraa et al. 1997).
One of the earliest and most known models is that for solids with heatand mass transfer through the dry layer (Karel 1975):
(1)
which, because of simultaneous heat and mass transfer process, is equivalentto:
(2)
tL m X X
Per P P
s f
i s
=-( )
-( )
2
8
r o
tL m X X
k T T
s f
d s i
=-( )
-( )
2
8
r o
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FREEZE-DRYING SIMULATION 109
Although easy to use, Eqs. (1) and (2) have several key assumptions that arenot usually applicable. (1) The maximum allowable surface temperature, Ts isreached instantaneously. (2) The heat output of the external supply is adjustedto maintain Ts constant throughout the drying cycle. (3) Partial pressure in thedrying chamber is constant. (4) All the heat is used for the sublimation ofwater vapor (Karel 1975).
More recently, numerical models with highly detailed equations havebeen developed (Liapis and Bruttini 1995a; Lombraa and Izkara 1996; Lom-braa et al. 1997; Brlls and Rasmuson 2002; George and Datta 2002). How-ever, in most cases, adjustable parameters are needed to match the modelpredictions to experimental data (Liapis and Marchello 1984; Millman et al.1985; Sharma and Arora 1993; Sadikoglu and Liapis 1997; Sheehan andLiapis 1998; George and Datta 2002). In other cases, no comparison withexperimental data is presented (Nastaj 1991; Liapis and Bruttini 1995b). Inaddition, most of the models were developed for liquids and not for solidproducts (Sadikoglu and Liapis 1997; Sheehan and Liapis 1998; Brlls andRasmuson 2002).
It is clear that one way to decrease the costs of freeze drying is to reducethe operation time by increasing the temperature and therefore, a preciseunderstanding of the simultaneous heat and mass transfer occurring duringthe process is required. Thus, the main goal of the present article is toinvestigate the temperature, the vapor pressure and the water remaining withina solid food during the process through a dynamic and unidirectional mathe-matical model of the primary stage of freeze drying.
The structure of the present work is as follows: (1) a brief description ofthe physical phenomena taking place during freeze drying, (2) a theoreticalanalysis of partial differential equations necessary to describe the underlyingphenomena in an elementary volume, (3) the numerical solution with detailson the building of the computer program and (4) an experimental validationof the model and a discussion of the effect of some important freeze-dryingparameters through simulation.
MODEL DEVELOPMENT
Device Description and Problem Formulation
The main components of the freeze-drying device (Fig. 1A) are (1) theheating plates, to ensure the temperature control in the sample; (2) the vacuumpump, to ensure the pressure control in the chamber and (3) the condenser,which condenses the vapor and avoids its passage to the pump.
During the freeze-drying process, the product is placed between theheating plates (Fig. 1B). Therefore, a radiant source, as well as heat by
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110 S. KHALLOUFI, J.-L. ROBERT and C. RATTI
conduction from the bottom, is imposed to the material slab. There are twomechanisms of water elimination during freeze drying: sublimation (whicheliminates the frozen water) and desorption (which eliminates the boundedunfrozen water). Sublimation occurs at the interface of the ice front as aresult of the transferred heat (Simatos et al. 1974). As dehydration proceeds,the ice front retreats and the sublimated water vapor (at the ice front) isremoved by diffusion through the porous layer (Liapis and Bruttini 1995a).The water vapor flows through the dried layer countercurrent to the heat flow.
FIG. 1. (A) COMPONENTS OF A FREEZE-DRYER. (B) DETAILS ABOUT THE MECHANISMSOCCURRING DURING FREEZE DRYING
`SampleCondenser
Upper heating plate
Lower heating plate
Vapor
Ice
Vacuumpump
A
Top
Bottom
Sample
q upper
q bottom
Lower plate
Interfaces
Upper plate
B
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FREEZE-DRYING SIMULATION 111
Then, it passes through the chamber to be finally collected on the condenserplate.
Theoretical Analysis and Governing Equations
The physical model representing the foodstuff being freeze-dried has arectangular cross-section, with thickness 2E much smaller than the length
L and width l (Fig. 2A). The heat and mass transfer occurs in a directionperpendicular to the largest side (Fig. 2A). To simplify the analysis, the fol-lowing key assumptions were made:
(1) One-dimensional heat and mass flow in the normal direction from theice interface and the surface of the product.(2) During freeze drying, sublimation occurs at the ice front interface, par-
allel to both bottom and top surfaces and situated at distance S fromthem (Fig. 2B).
(3) The problem is symmetric and the uniform retreating ice front moves onboth sides to the centerline at the same speed (Fig. 2A). Some experi-ments were done to validate this assumption. The results showed thatthe temperature in the bottom and in the top of the sample were generally
comparable.(4) In the dried porous region, the solid matrix and the enclosed vapor arein thermal equilibrium.
(5) The thickness of the ice front interface is considered to be infinitesimal.(6) At the ice front interface, the water vapor concentration is in equilibrium
with the ice.(7) Each frozen and dried region is considered to be homogenous, having
uniform thermal conductivity, density and specific heat.(8) Only the primary drying period (free water removed by sublimation) was
considered. The secondary drying (removal of the bound water) wasneglected, as suggested by Sharma and Arora (1993), Lombraa et al.(1997) and Sheehan and Liapis (1998). The consideration of the second-ary drying stage would have required, in addition, the knowledge ofsorption isotherms below and above 0C. However, sorption isothermsbelow 0C are not available in the literature.
(9) Conduction was considered as the main energy transfer mechanism inthe frozen region, while both conduction and convection are consideredin the dried portion.
(10) Shrinkage is not considered in this model.Due to the symmetry of the slab, the analysis will be applied only to half ofthe sample. The equations describing the physical system, as applied to theelementary volume that is shown in Fig. 2B, are as follows:
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112 S. KHALLOUFI, J.-L. ROBERT and C. RATTI
Dried Layer
(a) Temperature profile. The complete energy balance presented bySadikoglu and Liapis (1997) for the tray freeze-drying process was applied tothe freeze drying of a food slab under vacuum (the inert gas flow is negligible).
FIG. 2. (A) GEOMETRICAL DIMENSIONS. (B) DISCRETIZATION USED IN THENUMERICAL SOLUTION
E
a
Fr
E
0
dxd
dxf
qxd
mxd+dxd
qxf
qxf+dxf
mxd
qxd+dxd
b
E
y
z
x
A
L
l
Frozen
zone
S(t)
E
0
dxd
dxf
qxd
mxd+dxd
qxf
qxf+dxf
mxd
qxd+dxd
Dried
zone
qxd
mxd+dxd
qxf
qxf+dxf
mxd
qxd+dxd
B
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FREEZE-DRYING SIMULATION 113
The flow of vapor through the dry matrix was represented through a perme-ability-type equation. The resulting equation is thus:
(3)
where
The first term on the right hand side of Eq. (3) refers to energy transferby conduction, while the second refers to the energy that is transferred due to
vapor flow.The permeability coefficient Per, necessary for the determination ofparameter f2 of Eq. (3), was calculated as reported by Simatos et al. (1974)and Liapis and Litchfield (1978):
(4)
The Knudsen (Kn) constant was calculated as follows (Liapis and Litchfield
1978; Mellor 1978):
(5)
C2 is a dimensionless constant, which depends on the internal texture of theproduct (Simatos et al. 1974). According to Gunn et al. (1969), this parametercharacterizes the porous medium but does not depend on the gas speciespresent in the matrix.
The molecular diffusivity (DAB) of the binary mixture was estimated bythe Fuller equation (Skelland 1974):
DAB= 1.16 10-4T1.75 (6)
(b) Pressure profile.
(7)
where
The permeability value Per, required for the determination of theparameter b1 of Eq. (7), was calculated using Eq. (4).
=
+
T
t x
T
x x
P
x
d d vj j1 2
jr
jr
1 2= =k
Cp
PerCp
CpTd
d d
v
d d
dand
PerM
RT
C D Kn
C D Kn P P
AB
AB T v
=+ -( )2
2
Kn CM
RTwhere C r
d
=
=
1
1 2
1
1 22
3
8,
p
=
+
P
t x
P
x
T
t
v v db b1 2
be
b1 2= =PerR
M
P
T
v
d
and
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114 S. KHALLOUFI, J.-L. ROBERT and C. RATTI
Frozen Layer
In the frozen region, there is only heat transfer by conduction. Thus, thetemperature profile is represented by the following differential expression:
(8)
where
Boundary Conditions
At the surface, = 0
(a) Temperature. The boundary condition at the material surface can bedescribed by:
(9)
where hT is the heat transfer coefficient. Two heat transfer coefficients wereconsidered for the simulations:
(1) one was obtained from the following theoretical expression:
(10)
where s is the Stefan-Boltzmann constant and F is the radiation viewfactor.
(2) another was an experimental heat transfer coefficient, which was reportedby Wang and Shi (1997, 1998).
(b) Pressure. A convection resistance coefficient (hP), which depends on thetotal pressure (Lombraa and Izkara 1996), was considered for mass transferat the surface:
(11)
At the interface,=S(t)S(t) represents the interface position of the sublimation front, which
depends on time. At this position, an additional equation was obtained fromthe energy balance on a differential element of thickness dS:
=
T
t
T
x
T
x
f f f w
wr
=k
Cp
f
f f
kT
xh T T t d
dT d
= - - [ ]( ) 0,
h F T T t T T t T d d= + [ ]( ) + [ ]( ) s2 2 0 0, ,
PerP
xh P P t v T v
= - [ ]( ) 0,
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FREEZE-DRYING SIMULATION 115
(12)
The term on the left-hand side corresponds to the latent heat of sublimation.The right-hand side terms are the conductive heat fluxes in and out of thedifferential element. The mass flux of sublimated vapor can be expressed asfollows:
(13)
There should be no discontinuity in temperature at the interface (S[t]), thus:(14)
For vapor pressure calculation, the thermodynamic equilibrium existingbetween the water vapor and the frozen product. was used at the interface(Clapeyron equation):
(15)
At the center,=EAt the matrix center, because of the symmetry, adiabatic or zero heat flux
condition can be supposed.
(16)
Initial Conditions
Uniform temperature and vapor pressure are chosen as initial conditions,
thus:
0 < x < E T(x,0) =Tini (17)
0 < x < S(0) P(x,0) =Pini (18)
Calculation of Water Remaining
(a) Initial water. The initial water, (X0) existing in the matrix before freezedrying, is:
(19)(b) Sublimated water. The sublimated water represents the frozen water thatis eliminated from the matrix at each moment. This amount depends on theposition of the interface and can be expressed by:
DH m k T
x
kT
xd
d
s
f
f
s
sub sub = -
+
m WC FF dS
dtfsub = r
T Td S t f S t( ) ( )=
P AB
Tv S t
S t
( )
( )
= +
exp
=T
x
f 0
X WC V f T0 = r
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116 S. KHALLOUFI, J.-L. ROBERT and C. RATTI
(20)
(c) Remaining water. The amount of remaining water (Xr) is the sum of thefrozen water that has not been sublimated yet and the bound water, therefore:
(21)
The progress of remaining water can be followed by its comparison to theinitial water content (water remaining/initial water content, %):
(22)
MATERIALS AND METHODS
Experimental Data
Slabs (14-mm and 8-mm thickness) of potato and apple were chosen forfreeze-drying kinetic experiments. The samples were frozen in a medicalfreezer at -40C (Sanyo MDF-235, Japan) and freeze-dried in a Unitop 400 L(Virtis, NY) drying chamber connected to freezemobile 25 EL (Virtis). Thefrozen samples were placed on the freeze-dryer shelf, initially at -40C. Whenthe condenser temperature was less than -85C, the vacuum pump was turnedon. The heating system (1C/min) was started after the total pressure was lessthan 10 mtorr. The shelf temperature was set at 40C. Each experimentaldetermination of water content, after different process times, was done inde-pendently from the others. At the initial time, the 8- or 14-mm-thick food slabwas weighed and introduced into the freeze drier. It was left inside the freezedrier for a predetermined process time (18, 10, 12, 14 or 16 h) and then itwas removed and weighed. Then the experiment started all over again foranother predetermined process time. The experimental data for each processtime and for the slab thickness was obtained in triplicate. The maximumprocess times were 8 and 16 h for an 8-mm or 14-mm-thick slab, respectively.
The duration of the freeze drying was calculated from the momentwhen the heating system was started. To calculate the amount of water thatwas eliminated, the samples were weighed using a Mettler Toledo balance(PB 1502, 0.01 g, Switzerland) before and after the freeze-drying opera-tion. Once freeze drying ended, the dry matter of each sample was deter-mined in a vacuum oven. The moisture contents of the samples wereestimated from the differences between the final freeze-dried weight and thedry matter. A comparison of the experimental data with the simulationresults was done using the ratio percentage Xr(t)/X0 (water remaining/initialwater content, %).
m t WC FF l L S t fsub ( ) = ( )r
X t WC L l E FF S t r f( ) = - ( )( )r
X t
X
S t
EFFr
( )( ) = -
( )
0
100 1%
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FREEZE-DRYING SIMULATION 117
The temperature profiles during the freeze drying of a 28-mm-thicksample were obtained by placing five standard 1-mm diameter K-type ther-mocouples in the product at different locations (shown in Fig. 3): one at thecenter, two inside the product very close to each bottom and top surface andthe last two at half of the thickness. The thermocouple insertion was per-formed in a fresh food slab before freezing and then the product, with theinserted thermocuple, was frozen. Before the thermocouple insertion, a tiny
FIG. 3. EXPERIMENTAL PROTOCOL FOR MONITORING TEMPERATURE EVOLUTION INTHE SAMPLE DURING THE FREEZE-DRYING PROCESS
Bottom
Sample
Lower plate
Upper plate
Top
1 2 3 4 5 6
Data
Logger
Thermocouples
Computer
1 2 3 4 5 6
Data
logger
Computer
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118 S. KHALLOUFI, J.-L. ROBERT and C. RATTI
needle was inserted in the product where the thermocouple was to be placed(to serve as a guide in order to ease the thermocouple insertion) up to theposition where the thermocouple was supposed to be (i.e., 7 mm for themeasurement of the center temperature in a 14-mm-thick slab) and then adetermined length of the thermocouple was inserted. The placements of thethermocouples were supposed to be the length up to where the needle guidewas inserted. All measures of position and distances were determined by usinga micrometer Digimatic (CD 6 B, Mitutoyo Corporation, Japan). Duringfreeze drying, temperature variations were recorded by a digital data logger(21X Micrologger, Campbell Scientific Inc., UT), which was directly pluggedto the computer. The temperature acquisition was done at 1-min intervals.
Numerical Solution
To obtain a finite element (characterized by two node linear 1D element)form of the governing Eqs. (3), (7), (8) and (12), each region (frozen anddried) was divided into n elements of thickness dxdand dxf(Fig. 2B). Eqs. (3),(7) and (8) can be organized in a matrix form (Eq. 23):
(23)
The application of the finite element method transforms the matrices m andk into discrete forms, whose size depends on the number of elements chosen.Then an implicit Euler time marching method is applied, in which the non-linearity is treated by a Newton-Raphson method. Eventually, the condition
(14) is applied (Eq. 24):
(24)
where DFd and DFf are the discrete variable increment vectors (Td and Pd forthe dried part and T
ffor the frozen part),
DT
iis the increment of the common
temperature of the dried and frozen parts, Rd andRf are the residuals, Kd andKf are matrices obtained from m and k. Originally, the sizes of the matriceswere (n+ 1) (n+ 1) and (l+ 1) (l+ 1). By the introduction of thecondition (14), the last temperature equation of Kd and the first of Kf are
1 01 02
1 2
1-
=
b
j j
bm
d
v
k
d
v
T
dt
P
t
x x x x
x x
T
P124 34
1 244444 344444
K K
K K
K K
T
R
r n
k n n
d n n d n n l
d n f l
l n f l f l l
d n
i
f l
d n
d
d
[ ] { } [ ]
[ ] { } [ ]
{ }
{ }
= -
{ }
+( )+ +
1
1 1
1
1
1
10
0
0
1
1 1
DF
D
DF,(( )
-( )
( )
{ }
r
k
R
f
f
f l
1
1 1
1
,
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FREEZE-DRYING SIMULATION 119
combined to give the central equation of the system (24), which ensures thecoupling of the system. Indeed, the matrix system allows calculating thevariation of the two parameters (DTand DPv) at a given node as a function ofthe temperature and the vapor pressure values at the same node and at theneighborhood nodes.
A computer program was developed in Matlab 5.2 based on the previ-ously described numerical scheme. The program calculates for each value oftime, the temperature and vapor pressure spatial distributions, their averagevalues as well as the ice front position. It also calculates the instantaneous andthe cumulative values of the sublimating water. The specific heat, thermalconductivity, density and porosity of the complete physical model were con-sidered constant, but the developed numerical scheme could be easily adaptedto use complex expressions involving temperature, pressure- and/or humidity-dependent terms.
The knowledge of the interface position S(t) has a fundamental impor-tance in solving the freeze-drying problem. Since this position recedes con-tinuously, it adds additional calculations and complexity to the problem.Equation 13 was used to calculate the interface position at each time step (Dt).For this, the program considers the S value as a variable and its calculation isdone by iteration using the Newton Raphson method. This method was chosenupon the more traditional methods of evaluating S because it avoids interpo-lation without increasing the running time.
To avoid pronounced gradients and consequently, a high number ofiterations, the total pressure variation in the chamber and the vapor pressurein the condenser were approximated at the beginning of each simulation bythe following equation:
(25)
where Pmax is the pressure at the beginning, Pmin the pressure at the end of theprocess, Dtthe time required for P to be Pmin, tthe time and G, a constant. Itcan be seen from Eq. (25) that if the value of G is low, the end value ofpressure will be reached quicker. Several tests were made to assure that thisequation does not affect the final solution. The proposed technique allowedachieving the final results in reasonable computation times.
In addition, preliminary tests showed that in the vicinity of the physicalmodel surface and in the neighborhood of the sublimation front, the temper-ature (in both zones) and the vapor pressure (in the dried zone) gradients couldbe very pronounced. This strongly affects the number of iterations. To find aremedy for this situation, the network-refining technique was used. Thismethod involves more nodes where the gradient is steep and less nodes where
P t P P Pt G
t t G
t( ) = - -( )+( )
+( )max max min
D
D
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120 S. KHALLOUFI, J.-L. ROBERT and C. RATTI
the gradient is flat, through an exponential function. Therefore, the networkwas refined at each small displacement of the sublimation front.
Even if an implicit scheme was used to solve the coupled equations(temperature and vapor pressure), the numerical solution stability was foundto be strongly dependent on initial conditions and particularly on the choiceof time step (Dt). To avoid the divergence of the solution, the time step (Dt)was continuously adjusted while running the program. After each solution,the Dtwas reevaluated as a function of the number of iterations (from an initial0.01 s step up to 100 s or more) without affecting the solution convergence.
To be able to start the numerical calculation, an arbitrary initial thicknessof the dried layer was chosen (0.5% of the slab thickness), thus:
S(0) = 0.01E (26)
This initial thickness of dry layer should be considered as formed during thestart-up of the process before energy is supplied to the sample. This periodrepresents the time required for passing from the atmospheric to the vacuumpressure.
Physical Properties and Other Parameters
Table 1 shows all the parameters and expressions for physical propertiesused for the simulations, obtained from published values of similar materialsin the literature. It should be signaled, however, that some parameters such asC2 (see Eq. 4) were not easily available in the literature and, in addition,physical properties generally depend on the product composition, the freeze-drying device and on operating conditions. Therefore, the value C2 was esti-mated through preliminary simulations. The final values of permeability thatwere obtained using Eq. (4) for the two products (apple and potato) werefound to fall within the range of those reported by Kessler (1981) for somefood products, corroborating the predictions done on C2.
RESULTS AND DISCUSSION
Comparison with Experimental Results
Figure 4 shows the experimental freeze-drying curves for 14- and 8-mm-thick apple and potato slabs at 40C. As expected, the effect of thickness onthe freeze-drying time was marked. Indeed, the sublimation of 50% of the icein the apple requires about 240 min if the thickness is 8 mm and about 400 minfor 14-mm thickness. As can be seen, freeze-drying times did not vary withthe square of the thickness. Other authors previously found a linear relation-
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FREEZE-DRYING SIMULATION 121
TABLE1
.
PARAMETERSANDPHYSICALPROPERTIESUSEDFORSIMULATION
Parameters
Potato
Apple
Values
References
Values
Re
ferences
rf(kg/m3)
1022
Kerretal.(1996)
787.93
Kh
alloufiandRatti(2002)
Cpf(J/kgK)
1.8
103
Lewis(1987)
2.84
103
RaoandRizvi(1995)
Kf(W/m.K)
1.09
Mujumdar(
1995)
1.289
RaoandRizvi(1995)
rd(kg/m3)
180
Krokidaand
Maroulis(1997)
123.17
Kh
alloufiandRatti(2002)
Cpd(J/kgK)
1.66
103
a=
1.351
0-7.KostaropoulosandSaravacos(1997)
a=
1.65
10-7
Ko
staropoulosandSaravacos(1997)
Kd(W/m.K)
0.0404
Kessler(1975)
0.0337
Ke
ssler(1981)
(%)
88
Krokidaand
Maroulis(1997)
90
Kh
alloufiandRatti(2002)
FF(g/g)
4
RaoandRizvi(1995)
5
RaoandRizvi(1995)
WC(g/g)
78.62
Determined
forthisstudy
84.36
De
terminedforthisstudy
r(m)
48
10-6
Estimated
43
10-6
Mellor(1978)
C2(dimensionless)
0.07
Determined
inordertoobtainedthevalueof
permeabilitycitedbyKessler(1981)
0.05
De
terminedinordertoobtainedthe
value
ofpermeabilitycitedbyKessler(
1981)
F(dimensionle
ss)
0.95
Given
Commonexpressionsandparameter
Expressions
References
Equilibriumeq
uation(vapor-glass)(PinPaand
TinK)
A=28.80073andB=-6142
.89
Polingetal.(2001)
Latentheatofsublimation(DHsub)(kJ/kg).
TinK
DHsub=
-0.0037
T2 +
1.7502T+
2630.4
Polingetal.(2001)
Externalmasstransfercoefficient(hP)(kg/Pam
2.s)PinPa
hP=
15.9121
0-3 P-0.7731
LombraaandIzkara(
1996)
hT(W/m2.K)
6.7
WangandShi(1997,1
998)
Cpv(J/kgK)
1.6747
103
LitchfieldandLiapis(1982)
s
(W/m2.K4)
5.676
10-8
LiapisandMarchello(
1984)
R(J/kmol.K)
8.314
103
SadikogluandLiapis(1997)
M(kg/kmol)
18
Sadikogluetal.(1998)
P
T
sat
sat
=
+
expA
B
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122 S. KHALLOUFI, J.-L. ROBERT and C. RATTI
FIG. 4. COMPARISON BETWEEN EXPERIMENTAL DATA AND MODEL PREDICTIONS OFFREEZE DRYING OF APPLE AND POTATO (8 AND 14 mm THICKNESS) AT 40C HEATING
PLATE TEMPERATURE
0
10
20
30
40
50
60
70
80
90
100
0 100 200 300 400 500 600 700 800 900 1000
Wate
rremaining(X/X0)x100
Time (min)
Experimental data (14mm) Experimental data (8mm)
Model predictions (14mm) Model predictions (8mm)
0
10
20
30
40
50
60
70
80
90
100
0 200 400 600 800 1000 1200
Water
remaining(X/X0)x100
Potato
Apple
14mm
8mm
14mm
8mm
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FREEZE-DRYING SIMULATION 123
ship between freeze-drying time and thickness, as Sharma and Arora (1995),for yoghurt under different heating transfer modes and Saravacos (1967), inthe case of apple and potato. In the literature, however, freeze-drying time isoften presented as proportional to the square of the piece size (see Eqs. 1 and2), because the process is usually explained from the diffusion theory. King(1968) explained the anomaly with respect to pure diffusion theory, based onan externally controlled (boundary layer) freeze-drying process, which couldclearly explain the linear relationship between freeze-drying time and productthickness.
The simulation of apple and potato freeze-drying kinetics was done bysolving the proposed model with the values listed in Table 1. Figure 4 showsa comparison between predicted and experimental results on water remainingin apple and potato as a function of freeze-drying time. As can be seen, theagreement between both values is close, indicating that the present one-dimensional model gives reasonably accurate results to predict freeze-dryingcurves. The RSMEs (root square mean errors) between predicted and exper-imental data were determined as 18.6 and 45.3 min for 8- and 14-mm-thickapple slabs and 9.7 and 50.8 min for 8- and 14-mm-thick potato slabs, respec-tively. The main differences between experimental and predicted values werefound for thicker slabs at the end of the process. An explanation for this couldbe (1) the absence of desorption in the model and/or (2) the mass transfer,happening by lateral surfaces, which could be more significant in the case ofthicker slabs.
Figure 5 shows the experimental and predicted temperature profiles for28-mm-thick apple and potato slabs. It should be noted that because thepresent model does not take into account the desorption phase (assumption8), the comparison will be limited only to the first stage of freeze drying (fromthe start of the heating until the complete disappearance of ice). From Fig. 5,it can be seen that
(1) The sublimation temperature is seen as a plateau at the first stage offreeze drying (x=E). The model gives a reasonably good prediction ofthe sublimation temperature for both products.
(2) The temperature predictions, at different locations within the product,substantially underestimates the obtained experimental data. This dis-agreement can be interpreted from different viewpoints:
most physical parameters used in the model were obtained from the litera-ture or predicted from theoretical expressions (hT,ketc.)
there was a clear difficulty encountered during the experiments to measurean accurate frozen core temperature in specific locations within the sampleduring freeze drying, particularly because the heat passing through the probe
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124 S. KHALLOUFI, J.-L. ROBERT and C. RATTI
generated some freeze drying around the thermocouple, which probably didnot help in reflecting the real temperature.
the model did not take into account all the phenomena involved (i.e.,desorption)
the sample was too thick to assume unidirectional heat transfer.
FIG. 5. EXPERIMENTAL AND PREDICTED TEMPERATURE PROFILES DURING FREEZEDRYING OF APPLE AND POTATO
25
35
00 00
Po
tato
0 500 10 1500 20 25
45
35
25
15
5
5
15
00
Temperature(C)
Desorp onSublimation
x=0
x=E/2
x=E
temperatures
Predicted
temperatures
ti
25
35
00 00
App
le
0 500 10 1500 20 25
45
35
25
15
5
5
15
00 0030 3500 4000
Temperature(C)
Desorp onSublimation
x=0
x=E/2
x=EExperimental
Experimental
temperatures
Predicted
temperatures
ti
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FREEZE-DRYING SIMULATION 125
Figure 6 shows the comparison between freeze-dying kinetics that wasobtained using theoretical (pure ideal radiation) and experimental heattransfer coefficients. It can be seen that the coefficient, which was experi-mentally found by Wang and Shi (1997, 1998) and which includes the totalheat transfer including radiation, gives much better predictions than theuse of the equation for ideal blackbody radiation. For the freeze-dryingprocess, Wolf and Gibert (1998) reported that the heat transfer coefficient
FIG. 6. COMPARISON BETWEEN PREDICTIONS CONSIDERING AND EXPERIMENTALHEAT TRANSFER COEFFICIENT AND PURE THEORETICAL RADIATION (8 AND 14 mm
THICKNESS APPLE SLABS)
0
10
20
30
40
50
60
70
80
90
100
0 200 400 600 800 1000 1200
0
10
20
30
40
50
60
70
80
90
100
0 100 200 300 400 500 600
Time (min)
Waterremaining(X/X0
)100
Waterremaining(X/X0
)100
2E=8mm
2E=14mm
Radiation transfer
Thermal resistance transfer
Experimental data
Radiation transfer
Thermal resistance transfer
Experimental data
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126 S. KHALLOUFI, J.-L. ROBERT and C. RATTI
(hT) depends on pressure and its value varies from 4 W/m2.K at 1 Pa to50 W/m2.K at 100 Pa.
Figure 7A shows that the heating plate temperature significantly affectsthe freeze-drying kinetics. The sublimation process finishes at 12.6 h for aheating plate temperature of 70C, while only 47% of sublimation is achievedduring the same period if the heating plate temperature is 10C. The impact ofthe heating temperature on the surface and sublimation temperatures of thesample is given in Fig. 7B. It can be seen that, while increasing the heatingplate temperature does not markedly increase the frozen core temperature, theproduct surface temperature does. This finding can greatly help when opti-mizing the product quality during freeze drying. Hammami and Ren (1998)indicated that to avoid the collapse phenomena and the quality problemsduring freeze drying, the temperature of the frozen solid should be below themelting onset temperature and the temperature of the product in the dry zone,below the glass transition of the dry solids (Tgs). Two temperature limits wereshown to be essential during the freeze drying of a particular product: the icemelting onset temperature (Tm) and the glass transition temperature of the drysolids (Tgs). Nevertheless, from Fig. 7B, it can be concluded that the secondtemperature limit (glass transition of the dry solids) is a stronger optimizationparameter during freeze drying than the former.
CONCLUSIONS
Mathematical simulations were used to predict freeze-drying kinetics andtemperature profiles of food slabs and to study the impact of some parameterson the process. The nonlinear governing equations were solved numericallyand the results were compared to experimental data. The comparison revealeda very good agreement between predicted and experimental freeze-dryingkinetics and sublimation temperature, while the predicted temperature profilesdid not closely represent the experimental data. To improve the prediction ofthe present model, the following considerations should be taken into account:(1) to include a complex formulation of permeability, (2) to add the secondstage (desorption) of freeze drying (3) to consider two different thermalresistances (one for the bottom, taking into account the thermal contact withthe heating plate and the other for the top of the sample) and (4) to considertwo dimensional transfers. In addition, extra experimental research should bedone to determine physical properties, such as thermal conductivity as afunction of pressure, C2 coefficient, pore radius and isotherm function at twotemperatures (below and up 0C) etc.
The simulations showed that the use of an experimental heat transfercoefficient is a better option for simulation than to consider pure radiation
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FREEZE-DRYING SIMULATION 127
FIG. 7. (A) EFFECT OF THE HEATING PLATE TEMPERATURE ON FREEZE-DRYING
KINETICS. (B) EFFECT OF HEATING PLATE TEMPERATURE ON SAMPLETEMPERATURE PROFILE
0
10
20
30
40
50
60
70
80
90
100
0 5 10 15 20 25 30 35 40
Time (h)
-20
-10
0
10
20
30
40
Heating temperature (C)
Temperatureofproduct(C)
Surface of sample Front of sublimation
0
10
20
30
40
50
60
70
80
90
100
0 5 10 15 20 25 30 35 40
Time (h)
0
10
20
30
40
50
60
70
80
90
100
0 5 10 15 20 25 30 35 40
Time (h)
0
10
20
30
40
50
60
70
80
90
100
0 5 10 15 20 25 30 35 40
Time (h)
Waterremaining(X/X0)100
A
-20
-10
0
10
20
30
40
Heating temperature (C)
Temperatureofproduct(C)
Surface of sample Front of sublimation
-20
-10
0
10
20
30
40
80706050403020100
Heating temperature (C)
Temperatureofproduct(C)
Surface of sample Front of sublimation
B
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128 S. KHALLOUFI, J.-L. ROBERT and C. RATTI
through a theoretical expression. In addition, the heating plate temperatureshowed a major effect on freeze-drying kinetics and surface temperature. Thissimulation program can therefore be used as a tool for the optimization of thefreeze-drying process.
NOMENCLATURE
r Mass density (kg/m3)s Stephan-Boltzmann constant values (J/s.m2.K4)DH Latent heat (kJ/kg)e PorosityC1 Knudsen constant value (m)C2 Dimensionless constantCp Specific heat (J/kgK)
DAB Molecular diffusivity (m2/s)E Half the thickness (m)F Radiation view factorFF Frozen fraction of water (kg frozen water/kg total water)h
P
Mass transfer coefficient (kg/Pa m2 s)hT Heat transfer coefficient (J/m2.s.K)k Thermal conductivity (J/m.K.s)
L Length (m)l Width (m)
M Molecular weight (kg/kmol)m Vapor flux (kg/s.m2)P Pressure (Pa)Per Permeability (s)P
iniInitial pressure (Pa)
Pmax Pressure at the beginning (Pa)Pmin Pressure at the end (Pa)q Heat flux (J/s)
R Gas constant value (J/kmol.K)r Pore radius of dried layer (m)S Interface position (m)T Temperature (K)Tini Initial temperature (K)t Time (s)Tg Glass transition temperature (K)Tm Melting temperature (K)V Volume (m3)WC Initial water content (kg water per kg fresh product)
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FREEZE-DRYING SIMULATION 129
X Amount of water (kg)x Spatial position (m)
Subscript
chamber conditionsd dry
f frozenr remainings solid
sat saturationsub sublimationT totalv vapor0 initial
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