The Effect of Baffles on Heat Transfer
Raheleh Jafari
1a
, Sina Razvarz
2b
, Cristóbal Vargas-Jarillo
2c
and Alexander Gegov
3d
1
Centre for Artificial Intelligence Research (CAIR), University of Agder, Grimstad 4879, Norway
2
Departamento de Control Automatico CINVESTAV-IPN, National Polytechnic Institute, Mexico City 07360, Mexico
3
School of Computing, University of Portsmouth, Buckingham Building, Portsmouth PO13HE, U.K.
Keywords: Baffle, Heat Transfer, Computational Fluid Dynamics.
Abstract: For a long time technicians and engineers have used geometric changes of objects for the purpose of
enhancement of heat transfer. The discovery and use of nanofluids and their unique properties lead to a new
revolution on the heat transfer. This paper presents the simulation of Ansis software applied to the flow tube
with a constant flux, also studies the effect of baffles and the use of nano particles on heat transfer.
1 INTRODUCTION
Throughout the recent years with the aid of fast
computers, engineers have become able of operating
numerical computations to predict and simulate the
experiment and improve the design of models. For so
many decades, researching for improving the heat
transfer rate of a coolant liquid had been one of the
goals of engineering. The modification in properties
of fluids that are used for this purpose is one approach
that engineers used in previous years. They have been
utilized micron and nano-sized particles in order to
change and improve this property.
At Argonne National Laboratory, Choi and co-
workers (Choi, 1995) showed a considerable increase
in thermal conductivity of the liquid by suspending
nano-sized particles in a fluid (nanofluids). In another
work, Lee et al. (Lee et al., 1999) showed 20%
increase in effective thermal conductivity with using
suspension of 4.0 %vol, 35 nm CuO particles in
ethylene glycol. Das et al. (Das et al., 2003) studied
the relation between the temperature and the
increment of thermal conductivity in nanofluids
experimentally. Pak and Cho (1998) founded that the
Nusselt number of the nanofluids increases with
increasing the volume fraction of the suspended
nanoparticles and Reynolds number.
a
https://orcid.org/0000-0001-7298-2363
b
https://orcid.org/0000-0003-1549-7307
c
https://orcid.org/0000-0002-5265-3797
d
https://orcid.org/0000-0002-6166-296X
In (Xuan and Li, 2003) the increment of heat
transfer is observed by utilizing water–Cu nanofluids,
in the turbulent regime. Furthermore, in (Xuan and
Roetzel, 2000) the device of heat transfer increment
of the nanofluid is studied. In (Wen and Ding, 2004)
the fluid inclusive aluminium nanoparticle is utilized
in the tube flow in order to check the laminar heat
transfer. They applied 1.6 % nanoparticles by volume
in their fluid. The method of particle migration for
non–uniform repartition of thermal conductivity and
convective heat transfer of nanofluids in Re<800 (that
is laminar flow) is proposed in (Ding and Wen, 2005;
Ding et al. 2006). In (Yang et al., 2005) the authors
worked over a horizontal tube heat exchanger and
demonstrated that by increasing the Reynolds number
the heat transfer coefficient increases, also the fluid
temperature and particle volume fraction are in a
reverse connection. In (Nguyen et al., 2007) the
Al
2
O
3
–water nanofluid is used for the enhancement
of the heat transfer. The experiment results show that
by decreasing the size of nanoparticle superior heat
transfer coefficients can be produced. In (He et al.,
2007) the experimental result for TiO
2
nanofluids in
one vertical pipe is presented. Experiments in two
different regimes laminar and turbulent are carried
out also the experiments are repeated by a different
particle size of nanomaterials. Also, it is concluded
that the utilization of the nanoparticle concentration
Jafari, R., Razvarz, S., Vargas-Jarillo, C. and Gegov, A.
The Effect of Baffles on Heat Transfer.
DOI: 10.5220/0007832206070612
In Proceedings of the 16th International Conference on Informatics in Control, Automation and Robotics (ICINCO 2019), pages 607-612
ISBN: 978-989-758-380-3
Copyright
c
2019 by SCITEPRESS – Science and Technology Publications, Lda. All rights reserved
607
has an impact on the increment of the convective heat
transfer coefficient. In (Heris et al., 2006; 2007) the
experimental outcomes of the convective heat
transfer of water and Aluminium oxide nanofluids
inside a circular tube is demonstrated. It is concluded
that by utilizing the nanoparticles the heat transfer
coefficient increases. Some researchers have been
worked on numerical methods and have been
introduced the equation for the convective heat
transfer of nanofluids (Roy et al., 2004; Palm et al.,
2006). In (Buongiorno, 2006) the laminar and
turbulence regime are used for modeling, also the
viscosity effect is studied. Furthermore, it is shown
that by reduction of viscosity the heat transfer
increases. Viscosity, as well as particle volume
fraction, have less amount in the viscous sub-layer,
but conductivity in that region has more amount. In
(Daungthongsuk and Wongwises, 2007; Patel et al.,
2005; Bergles, 1985; Nijemeisland and Dixon, 2001;
Vyver et al., 2003; Sivashanmugam, 2008) the
computational fluid dynamics (CFD) models are
introduced, also the heat transfer is increased by
utilizing CFD simulation and changes in the
parameters of the system such as the geometry of tube
and active fluid through the pipe. Also, the model is
comprised of experimental models. In order to
estimate the average shell-side heat transfer
coefficients as well as pressure drop, many
investigations is carried out (Tinker, 1951; Bell,
1963; Donohue, 1949; Palen and Taborek, 1969).
Recently, artificial neural networks (ANNs) have
become universal and many interesting ANN usages
are reported in engineering area (Jafari and Yu, 2015;
Jafari et al., 2016a; 2016b; 2017a; 2017b, 2018a;
2018b; Razvarz et al., 2017; 2018a; 2018b; 2018c,
2019; Yu et al., 2019). In (Aly, 2015) a neural
network controller technique is suggested for control
of the pump flow rate.
The present study concentrates on the heat
transfer enhancement in the laminar developing
region with changing the geometry of pipe via adding
the baffles in the pipeline also effect of adding of
nanoparticle in the enhancement of heat transfer. The
Ansis program is utilized in order to simulate the
model and results.
The rest of the paper is structured as follows:
Section 2 presents the analysis of data and introduces
the properties of nanofluid. Section 3 describes the
experimental details and method of simulation the
approach of changing the geometry of the model is
stated. Section 4 presents the result of the simulation
and effect of changing of the model in the Nusselt
number as well as the thermal conductivity. Finally,
conclusions are given in Section 5.
2 ANALYSIS OF DATA
Analysis of the heat transfer behaviour of the
nanofluids is carried out by the evaluation of the local
heat transfer coefficient and local Nusselt number
which are defined as

"



(1)
where Nu [dimensionless parameter ] is Nusselt
number, q'' [
] is the heat flux, D [m] is the diameter
of the tube, 
.
and k
.
are thermal
connectivity and thermal conductivity of the fluid
respectively, also
[k] and
[k] are the local wall
and fluid temperatures (in kelvins) respectively. The
utilized thermal conductivity value is at the average
bulk temperature. The density and specific heat of the
nanofluid is evaluated using the averaged volume
fraction ratio, which is generally acceptable and is
defined as
pbfnf
φρρφ1ρ
(2)
where

is the density of nanofluid,

is the
density of the basic fluid,
is the density of
nanoparticle and is Nanomaterial concentration.
Figure 1: Schematic of the experimental setup.
3 EXPERIMENTAL RESULT
3.1 Experimental Conditions
Experimental conditions that are performed in ideal
terms with input and outlet pressure are equal to
atmospheric pressure. It is tried to prevent all factors,
which effect the system. The length of tube that
selected is 1200 mm, the diameter is graded 45mm,
the inlet temperature is 295°K and without accepting
the thickness of the pipe. The wall temperature of
pipe is 310°K. Characteristics of sensors are used to
obtain the temperature of specified locations in the
interval of 100, 300, 500, 700, 900 and 1100, see
ICINCO 2019 - 16th International Conference on Informatics in Control, Automation and Robotics
608
Figure 1. The Position and distance of the edges are
based on nanofluids and they are applied to verify
other temperatures and liquids which are effective on
baffles. The input speed is based on the input
Reynolds number.
3.2 The Experiment Software
This test is performed with Ansis software. SimpleC
algorithm is used for solving the energy equation,
momentum equation, and mass equation defined in
the heat transfer model.
3.3 Determination of Mesh Building
The measurement is prepared with trial and error
method. Three different number of meshes are used
systematically and constantly, 46000, 96000, and
165000 with increasing 1.2 step, see Figure 2.
Comparison results between meshes are
demonstrated in Figure 3. It can be seen that the
number of 96000 mesh is more suitable and optimal.
In this figure, the meshes with the number of 96000
and 165000 are more close to experimental data.
Figure 2: Type and valve of baffling and meshing.
Figure 3: Effect of meshing in Re=1588 and repeating 500.
3.4 Baffle on the Surface
In order to increase the heat transfer, we want to
evaluate geometric changes of fluid activity.
Normally, there is a simple and regular fluid flow in
the pipe (see Figure 4). The path of the fluid is smooth
and regular. Fluid flow is steady and laminar in the
pipe. The heat transfer and temperature are expanded
along the radius of the pipe regularly (see Figure 5).
Figure 4: Variation of velocity in pipe.
Figure 5: Variation of temperature in steady and laminar
condition.
We use the baffle in the pipe and path of the flow
in order to make changes in the direction of flow and
its geometric shape. The size of baffles is determined
via the scale, size, and length of 15% pipe's diameter,
and the distance of 200mm from each other in the
spiral and zigzag form. The first and last baffles are
neglected due to the immediate effect on the flow.
The rest of the baffles are in the positions of 400, 600,
800, and 1000 mm. Here we want to measure the
influence of baffles on the amount of heat transfer
coefficient variation. The base working fluid is pure
water in this experiment and Al
2
O
3
nanoparticles are
the most common nanoparticles used with 45 nm in
size. Al
2
O
3
particles true density is 3880 kg/m3,
which can be converted to weight fraction and
volume fraction. The nanoparticles and pure water are
mixed by utilizing an ultrasonic homogenizer with the
concentration of 0 and 3% by weight.
3.5 Change Resulting from Baffle
Creation in the System
By changing the geometric shape of the pipe and
creating baffles, the fluid motion inside the pipe
varies, and the fluid flow transforms into the
turbulence by crashing with the baffles and causes an
increment in the heat transfer. As can be seen in
Figure 6, variation around the baffles creates
The Effect of Baffles on Heat Transfer
609
turbulence in the fluid. The created turbulence is
transformed into the laminar flow after having a small
distance from baffles.
a) Velocity vector
b) Variation of temperature
Figure 6: Effect of baffles in the fluid flow a) Velocity
vector b)Variation of temperature.
4 RESULTS
After analysing the data for different numbers of
Reynolds, the optimal coefficient rate of heat transfer
is obtained from different values. By adding the
baffles and nanofluids into the pipe we see a
considerable increase in the rate of heat transfer
coefficient, see Figure 7. As the chart shows in Figure
7, baffles creation improves significantly the level of
heat flux, which is mostly due to turbulence flows, the
nature and mode of baffles, also creation of vortex
and return estate in the back of baffles.
Figure 7: Rate of heat transfer coefficient in tube in
Re=1588.
5 CONCLUSION
Implementation of the baffle and the geometric
deformation of the pipe cause a dramatic increase in
heat transfer. As the experimental results show, the
creation of baffle increases the rate of heat transfer as
much as 10-20 percent. The use of nanofluids also
enhances the heat transfer. The heat transfer
efficiency can be improved by combining
nanoparticle and baffle.
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