FREZING-TIME CALCULATIONS
NAMA : ISRA AMANDA SUNOKI
NIM : 05021381520047
Freezing
times are basic design criteria for freezing systems and represent the
residence time for the food product within the freezing system required to
achieve the desired level of freezing. The most widely accepted definition of
freezing time is the time required to reduce the product temperature from some
initial magnitude to an established final temperature at the slowest cooling
location. An alternative definition changes the endpoint to the mass average
enthalpy equivalent to the desired final temperature for product.
Freezing-Time
Equations
Numerous
equations and approaches to freezing-time prediction have been proposed and
utilized. The best known and most used of the prediction methods is based on
Planck’s equation (1913):
The
limitations to Planck’s equation for estimation of freezing times for foods are
numerous and have been discussed by Heldman and Singh (1981) and Ramaswami and
Tung (1981). One of the concerns is selection of a latent heat magnitude (L) and an appropriate value for the
thermal conductivity (k). In addition,
the basic equation does not account for the time required for removal of
sensible heat from un frozen product above the initial freezing temperature or
for removal of frozen product sensible heat.
Cleland
and Earle (1977, 1979a, 1979b, 1982) developed and presented a modification
with sound emprical justification. The authors use Planck’s equation in
dimensionless form:
The influence of sensible heat above
freezing is incorporated by introducing Plank’s number:
The values of the constants (P and R) are determined by using charts with relationship between
Planck’s number and Stefan’s number.
Figure: Chart providing P and
R constants for Planck’s equation when applied to a brick or block
geometry.
Figure: Chart showing the Plack’s
number vs the Stefan number for determinations of different values of the
empirical modification P.
Figure: Chart showing the Plack’s
number vs the Stefan number for determinations of different values of the
empirical modification P.
Product
shape is considered by an equivalent heat-transfer dimension (EHTD), as
determined by:
Figure: Chart showing the Biot
number vs. The shape factor for determination of different values of W.
Numerical Methods
The
evolution of hight-speed computing systems and appropriate numerical methods
have provided opportunities to solve camplex partial differential equations
with temperature-dependent properties. Equations of the following form for
one-dimensional heat transfer during freezing of the product can be solved to
predict temperature distribution histories within the Product:
Freezing times are restablished at the point when the temperature history curve passes through the temperature established for the storage of the frozen product. The numerical solutions can be
Used to compute enthalpy distributions
and mass-average enthalpies. Often, mass-average enthalpies equivalent to the
desired final temperature are used to establish the end of the freezing
process.
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