The dispersion of cough-generated droplets from a person going up- or downstairs was investigated through a laboratory experiment in a water tunnel. This experiment was carried out with a manikin mounted at inclination angles facing the incoming flow to mimic a person going up or down. Detailed velocity measurements and flow visualization were conducted in the water tunnel experiments. To investigate the influence of the initial position on the motion of particles, a virtual particle approach was adopted to simulate the dispersion of particles using the measured velocity field. Particle clustering, which is caused by the unsteadiness of the flow, was observed in both flow visualization and virtual particle simulation. For the case of going upstairs, particles are concentrated below the person's shoulder and move downward with a short travel distance. For the case of going downstairs, particles dispersing over the person's head advect over for a long distance. We also found that the motion of the particles is closely related to the initial position. According to the results in this study, suggestions for the prevention of respiratory infectious disease are made.
The dispersion of cough-generated droplets from a person going up- or downstairs was investigated through a laboratory experiment in a water tunnel. This experiment was carried out with a manikin mounted at inclination angles facing the incoming flow to mimic a person going up or down. Detailed velocity measurements and flow visualization were conducted in the water tunnel experiments. To investigate the influence of the initial position on the motion of particles, a virtual particle approach was adopted to simulate the dispersion of particles using the measured velocity field. Particle clustering, which is caused by the unsteadiness of the flow, was observed in both flow visualization and virtual particle simulation. For the case of going upstairs, particles are concentrated below the person's shoulder and move downward with a short travel distance. For the case of going downstairs, particles dispersing over the person's head advect over for a long distance. We also found that the motion of the particles is closely related to the initial position. According to the results in this study, suggestions for the prevention of respiratory infectious disease are made.
A global pandemic infectious respiratory disease, coronavirus disease 2019 (COVID-19), is
threatening human life and health. Since the outbreak of COVID-19, fluid droplets expelled
from the respiratory tract have attracted much attention because the dispersion of the
infectious virus in droplets generated by talking, coughing, and sneezing is one of the
major routes of virus transmission (Wells, 1934;
Xie ; Bourouiba ; Asadi ; Smith ; Stadnytskyi ; Morawska and Milton, 2020; and Hossain and Faisal,
2021). The expelled droplets have a broad range of sizes, from less than a
micrometer to a thousand micrometers, resulting from atomization and evaporation (Xie ; Han ; and Wang ). The motion of the droplets is determined by
their diameters and initial velocities, cough airflow, and ambient airflow (Wang ). Large droplets
mainly settle downward, while small droplets can follow the motion of the airflow for more
than 15 minutes (Abuhegazy ). Khosronejad carried out a high-fidelity large-eddy simulation (LES) to study saliva
transport during coughing under both indoor (stagnant background air) and outdoor
(unidirectional mild breeze) conditions. Their results indicate that the leakage saliva
through the facial mask under outdoor conditions can travel long distances by the ambient
turbulent flow. Healthy persons may become infected by inhaling airborne droplets of the
virus with even a short exposure. Therefore, it is critical to understand droplet
transmission under different typical flow conditions in real life for modeling and
controlling the epidemics. There have been numerous studies investigating droplet
transmission in various environments, such as in a toilet (Li ), in an elevator (Dbouk and Drikakis, 2021; Sen, 2021), in a
dental clinic (Li ;
Komperda ), in a
restaurant (Liu ), in a
classroom (He ; Narayanan and Yang, 2021), and in the public transport
(Zhang ; Talaat ). Most of these
studies adopted numerical simulations to obtain the droplet motions, where the flow fields
were solved using direct numerical simulation (Fabregat
; b), LES
(Khosronejad ) or
Reynolds-averaged Navier–Stokes (RANS) equations (Dbouk and
Drikakis, 2021; Li ; 2020b; and Hossain and Faisal, 2021) coupled with Lagrangian particle tracking
methods. Experiments were also carried out to study the flow dynamics of the droplets
expelled by a sneeze (Bahl ) and to investigate the performance of face shields and masks on the
prevention of droplet spread (Verma ; 2020b; and Arumuru ).Recently, Li
numerically investigated the dispersion of cough-generated droplets from a person going up
or down on an escalator and studied the effects of the slope and speed of the escalator on
droplet dispersion. They observed a “downwash” flow in the person’s wake for the case of the
ascending escalator and an “upwash” flow for the person on the descending escalator. The
difference in the wake structures behind the person has a significant impact on the
dispersion of the droplets. The droplets from the descending person can travel a long
distance at the height of the head, and a person following behind [even at the safe distance
suggested by World Health Organization (2021)] is at
risk of inhaling the droplets. In the above work, a RANS solver was employed to obtain the
steady flow field, and a stochastic velocity model was used to study the influence of
turbulent fluctuations on droplet motions. Alternatively, Wang proposed a continuous random walk model to
simulate turbulent fluctuations in violent expiratory events. Few studies have investigated
the influences of unsteady flow on the dispersion of respiratory fluid droplets.In this paper, we carry out laboratory water tunnel experiments to investigate the droplet
dispersion exhaled from a person going up- or downstairs, with the particular focus on
elucidating the effects of flow unsteadiness on droplet dispersion. The rest of this paper
is organized as follows: We first introduce the experimental setup in Sec. II. The results in terms of flow fields and particle
dispersion are analyzed in Sec. III. A virtual particle
approach is also adopted to study the effect of the initial position on the particle
concentration. Finally, we offer discussions and conclusions on the particle dispersion for
a person going up- or downstairs in Sec. IV.
Suggestions for the prevention of respiratory infectious diseases are proposed based on the
analyses of our results.
EXPERIMENTAL SETUP
In this study, laboratory experiments using manikin models were carried out in a water
tunnel. The measurement domain covers the whole region behind the manikin, as shown in Fig. 1(a). The water tunnel, made of acrylic plates, has a
test section with a cross section of 380 × 380 mm2 and a streamwise length of
800 mm. The free-stream velocity U is 180 mm/s
with a turbulence intensity of ∼1.5%, which was measured using particle image velocimetry
(PIV). As shown in Fig. 1, a human-shaped manikin model
was mounted ∼27 cm downstream from the inlet of the test section. The manikin model has a
height of 9 cm, denoted by H0. The Reynolds number based on the
height of the manikin and incoming flow speed is ∼1.5 × 104 (the temperature of
water is ∼20°C), which is smaller than the practical Reynolds number of
due to the limitation of the experimental equipment. Compared
with the simulated results given in Fig. 2 from Li , the flow pattern
obtained by our experiments (see Fig. 2) is similar to
their numerical results, although the Reynolds number is different. Therefore, the
experimental fields are assumed to be equivalent to the real situation. The feet of the
manikin were fixed on a flat plate, as shown in Fig.
1(a), which was raised ∼10 cm from the bottom wall of the water tunnel, so that the
head of the manikin was approximately in the center of the cross section. Three manikin
models were manufactured in a three-dimensional printer with white resin. The model was
mounted facing the incoming flow at an inclination angle β, as sketched in
Fig. 1(c). Three different inclination angles were
considered in this study, i.e., β = 60°, 90°, and 120°, where
β = 120° and 60° represent the person going up- and downstairs,
respectively, while β = 90° corresponds to the case of a person walking on
flat ground. Each model had a small hole (of diameter 1 mm) at the mouth and one hole at the
feet (to connect with the hollow body). A lifted bottle was connected to the hole at the
feet through a flexible tube. The bottle was filled with a mixture of water and fluorescent
particles; the median diameter of the particles was 7 μm and the density
was 1500 kg/m3. A speed-control switch was installed on the tube. When the switch
is opened, the fluorescent mixture driven by gravity is ejected into the flow field against
the incoming flow from the mouth of the manikin. The average ejection speed was ∼33 cm/s,
estimated from the flow and time. Note that the fluorescent particles were only used to
qualitatively visualize the motion of ejected particles.
FIG. 1.
(a) Schematic diagram of the experimental setup; the incoming flow speed is
U. (b) Front view of the manikin used in
the experiment. (c) Side view of the manikin. From left to right are the inclination
angles β = 120°, 90°, and 60°, where β = 120° and 60°
represent the person going up- and downstairs, respectively, while β =
90° corresponds to the case in which a person walks on flat ground.
FIG. 2.
Mean flow fields (a), (c), and (e) and instantaneous flow fields (b), (d), and (f) with
superimposition of vectors, one for every three vectors, are shown for clarity. The
contours in (a), (c), and (e) represent the mean vorticity, and the contours in (b),
(d), and (f) represent vortical structures identified by the
Q-criterion. The nondimensional time interval in these figures
corresponds to a physical time interval of 0.05 s.
(a) Schematic diagram of the experimental setup; the incoming flow speed is
U. (b) Front view of the manikin used in
the experiment. (c) Side view of the manikin. From left to right are the inclination
angles β = 120°, 90°, and 60°, where β = 120° and 60°
represent the person going up- and downstairs, respectively, while β =
90° corresponds to the case in which a person walks on flat ground.Mean flow fields (a), (c), and (e) and instantaneous flow fields (b), (d), and (f) with
superimposition of vectors, one for every three vectors, are shown for clarity. The
contours in (a), (c), and (e) represent the mean vorticity, and the contours in (b),
(d), and (f) represent vortical structures identified by the
Q-criterion. The nondimensional time interval in these figures
corresponds to a physical time interval of 0.05 s.Two kinds of experiments are carried out to serve different purposes. One is flow
visualization of the particle dispersion by using fluorescent particles ejected from the
mouth of the manikin, and the other is flow field measurement behind the manikin by adopting
PIV. For flow visualization, only the fluorescent particles are ejected into the water
tunnel, and these particles are excited by a continuous 532 nm laser sheet with a thickness
of 1 mm. The laser sheet is parallel to the sidewall and illuminates the flow field in the
central plane of the manikin. The back of the manikins is painted with black flat lacquer to
reduce the surface light reflection. The visualization images for particle dispersion are
recorded by a high-speed camera (Fastcam SA8/15K-M2 with a resolution of 1280 × 1024
pixels2) equipped with a long-pass filter. For flow field measurement, the
experimental configuration is similar to that of flow visualization, except that hollow
glass microspheres with a diameter of 20–60 μm are seeded in the water
tunnel as tracers. Table I presents the parameters of
the PIV experiments. The camera is placed perpendicularly to the sidewall of the tunnel, and
the field of view is ∼15 × 12 cm2. The motion of the tracer is recorded at a
frequency of 500 Hz for each case. An in-house PIV software with a three-pass window
deformation iterative multigrid scheme is used to compute the velocity fields from the PIV
images. The initial interrogation window is 96 × 96 pixels2, and the final
interrogation window is 48 × 48 pixels2 with an overlap of 75%. The PIV velocity
outliers are identified through the normalized median test and are replaced by the vectors
obtained using linear interpolation of the neighboring vectors. The final velocity fields
are smoothed by a two-dimensional Gaussian filter with a size of three grids. In the present
work, the velocity and the length are nondimensionalized by the free-stream velocity
U and the height of the manikin
H0, respectively. Accordingly, the time is scaled by
H0/U.
TABLE I.
The parameters of the PIV experiments.
Manikin height (cm)
Angle β (deg)
Flow speed (m/s)
Field of view (cm2)
Sampling frequency (Hz)
Image size (pixel2)
9
60
0.18
15 × 12
500
1280 × 1024
9
90
0.18
15 × 12
500
1280 × 1024
9
120
0.18
15 × 12
500
1280 × 1024
The parameters of the PIV experiments.
RESULTS
Flow field
We first examine the mean velocity fields for three inclination angles in Figs. 2(a), 2(c),
and 2(e). The mean velocity fields agree well with
the results of the RANS simulation in Li , 2021b). Only the
wake flow in the horizontal–vertical plane is analyzed since we focus on the motion of
particles in the gravitational direction. When the manikin leans forward
(β = 120°) to represent a person walking upstairs [see Fig. 2(e)], the flow separates at the head, indicated by
S1, and reattaches at the hip S2, generating a
separation or a recirculation region. For the inclination angle of 90°, representing the
person walking on a flat ground, the flow separates at both locations S1
and S2, as shown in Fig. 2(c).
Consequently, two large recirculation regions are formed behind the manikin, and the
reattachment point is approximately at the back of the manikin body. When the inclination
angle is decreased to 60° to simulate the person walking downstairs [Fig. 2(a)], flow separation mainly occurs at location
S2 and the flow reattaches to the manikin body at approximately location
S1. As a result, a vortical structure with positive spanwise vorticity
is formed behind the manikin body. In summary, flow separation arises primarily at
locations S1 and S2 for a person walking up- and
downstairs, respectively. In Figs. 2(a), 2(c), and 2(e), a
“downwash” mean velocity field behind the manikin can be seen when the flow separation
occurs at S1, while an “upwash” mean velocity field is observed when the
flow separation occurs at S2. This shows that the inclination angle has a
distinct effect on the airflow behind a walking person, as evidenced in the simulation
(Li ).The instantaneous vortical structures, rendered using the Q-criterion,
are displayed in Figs. 2(b), 2(d), and 2(f) at three instants
for each case. The Q-criterion is a vortex identification criterion
estimated as the second invariant of the velocity gradient tensor (Hunt ), which indicates the region with
vorticity larger than the strain. The vortices marked by the Q-criterion
are mainly shed from locations S1 and S2. The vortices
shedding from S1 are advected at the height of the head due to the
“upwash” effect [see Fig. 2(b)] for
β = 60°, whereas the vortical structures move toward the ground due to
the “downwash” effect [see Fig. 2(c)] for
β = 120°. No clear periodicity was observed in the vortex shedding
given by the considerable three-dimensional effect.
Dispersion of particles
In addition to the transmission of large droplets, airborne transmission is also a
critical route for the transmission of respiratory diseases. Aerosols with diameters
smaller than 10 μm can be generated via expiratory events or evaporation
(Wang ; Dbouk and Drikakis, 2020a; 2021; Morawska and Milton, 2020;
Abuhegazy ; Liu ; Stadnytskyi ; and Mittal ). Given their
small sizes, the aerosols are expected to follow the motion of airflow for a considerably
long time. To investigate this scenario, fluorescent particles with a median diameter of 7
μm were ejected from the mouth of the manikin to mimic small
virus-laden respiratory fluid droplets expelled by coughing or sneezing. The response
frequency of fluorescent particles is ∼250 kHz, which implies that the fluorescent
particles can fully follow the flow motion. Therefore, the fluorescent particles in the
water were used to simulate the airborne transmission of small droplets. The particle
distribution is exhibited in Fig. 3, where the top
and bottom rows show the results corresponding to the person going down- and upstairs,
respectively. Figures 3(a) and 3(c) display the intensity of particle fluorescence averaged over all
measured images, and Figs. 3(b) and 3(d) show the instantaneous particle distribution at
individual times. The particle dispersion behind the manikin is different when the manikin
is leaning forward or backward. For a person walking upstairs or ascending with an
escalator [see Figs. 3(c) and 3(d)], most particles distribute below the manikin shoulder and move
downward due to the reattachment circulation and the “downwash” velocity. The particles
are spread more uniformly in space [see Fig. 3(d)],
and the spatially local concentration of the particles decreases quickly and is expected
to drop lower than a safe concentration quickly. For a person walking downstairs or
descending on an escalator [see Figs. 3(a) and 3(b)], particles are advected over the head of the
manikin. The particle distribution concentrates in a narrow band located at a height
slightly higher than the head due to the “upwash” velocity. This particle band is
elongated downstream, while the local concentration of the particles remains at a high
level for a long distance. This suggests that a person of a similar height suffers a
higher risk of infection when walking downstairs in the wake of an infectious person.
FIG. 3.
Visualization of the motion of particles expelled from the mouth of the manikin with
inclination angles of 60° (a) and (b) and 120° (c) and (d). Panels (a) and (c) display
the average intensity of particle fluorescence, and panels (b) and (d) show the
instantaneous particle distribution at three times. The white arrows mark the ejection
direction of the particles. The nondimensional time interval in these figures
corresponds to a physical time interval of 0.1 s.
Visualization of the motion of particles expelled from the mouth of the manikin with
inclination angles of 60° (a) and (b) and 120° (c) and (d). Panels (a) and (c) display
the average intensity of particle fluorescence, and panels (b) and (d) show the
instantaneous particle distribution at three times. The white arrows mark the ejection
direction of the particles. The nondimensional time interval in these figures
corresponds to a physical time interval of 0.1 s.
Effect of the initial position on particle concentration
From the dye visualization shown in Fig. 3, we
observed that the particles in the descending case (the manikin leans backward) are
advected for a long horizontal distance at the height of the head. The fluorescent
particles have a density ∼1.5 times that of water. In contrast, the ratio of the density
of respiratory droplets to that of air is ∼830 (at 20°C), which is unachievable in a water
tunnel experiment. To circumvent this difficulty, a virtual particle simulation was
carried out to capture the particle motions using the measured velocity fields. The
density ratio between the virtual particles and water was set to be the same as that of
the liquid droplets in air. The motion of the virtual particles is determined by the
Stokes number St, which is a dimensionless number defined as the ratio of
the characteristic time of a droplet (or a particle) to the characteristic time of the
flow. St is defined aswhere
ρ and
D represent the density and the diameter
of particles (or droplets), respectively, μ is the dynamic viscosity of
the fluid, and U0 and L0 are the
characteristic velocity and the length of the flow, respectively. When St
≪ 1, the particles closely follow fluid flows. In this study, the free-stream velocity and
the height of the body are utilized as the characteristic velocity and length,
respectively. The Stokes number of the particles in the water experiments should be equal
to that of droplets in air, and consequently, the diameter of the particle
D ≈
0.13D, where
D represents the diameter of the
droplets, which follows a Weibull distribution (Dbouk and
Drikakis, 2020a). The particles were continually released into unsteady flow
fields with random initial positions in a black box, as shown in Fig. 4. According to Dbouk and Drikakis
(2020a), droplets with a total number of 1008 are ejected by mouth for 0.18 s,
and the average droplet release rate is 8400/s, which is also used in our simulation. The
motion of a virtual particle is determined by Newton’s second law, where gravity,
buoyancy, and water drag force are considered in our Lagrangian solver. The drag is
extracted from the velocity data of the 2D PIV measurements. The details of the simulation
method can be found in Wang . Spline interpolation of the PIV data was adopted to obtain the velocity
at subgrids. When the positions of particles are determined at each time step, a box
counting method is utilized to obtain the local concentration (Aliseda ). The measurement domain is
divided into small boxes, and the particle number is counted in each box. The relative
local concentration C is computed as
N/max(N),
where N is the particle number in each
box.
FIG. 4.
Instantaneous relative local concentration of virtual particles in the wake of the
manikin with inclination angles of 60° (a), 90° (b), and 120° (c). The virtual
particles were continually released into the unsteady flow fields from the initial
region indicated by the black square.
Instantaneous relative local concentration of virtual particles in the wake of the
manikin with inclination angles of 60° (a), 90° (b), and 120° (c). The virtual
particles were continually released into the unsteady flow fields from the initial
region indicated by the black square.Figure 4 shows the relative local concentration of
virtual particles at a time instant. The left, middle, and right panels display the
results for inclination angles of 60°, 90°, and 120°, respectively. In Fig. 4(a) (corresponding to the case of going
downstairs), a large number of particles are distributed behind the head within an
elongated region, and other particles are mainly concentrated in the region behind the
waist. In Fig. 4(c) (corresponding to the case of
going upstairs), most particles reattach to the back of the manikin. The distribution
pattern of the virtual particles is analogous to that from the 3D RANS results of Li . This analogy
suggests that our virtual particle simulation using 2D PIV velocity data captures the key
feature of the flow in this problem. More importantly, virtual particles are observed to
preferentially localize in specific regions at high concentrations. They are expected to
be in the regions of low vorticity and high strain rate (Aliseda ). During the advection of the particles,
the particles are clustered to locally increase the concentration of virus, which leads to
a higher risk of infection.Based on the previous analysis, a person going downstairs can cause a higher infection
probability for a following person due to the “upwash” velocity. It is important to study
how to prevent or weaken the transport of droplets (particles). Therefore, we initialize
the virtual particles at different positions to investigate the influence of position on
the motion of particles. Figure 5 shows the
instantaneous relative local concentration of virtual particles in different initialized
locations. From left to right, the particles are randomly initialized within the regions
of P1 (higher than the head), P2 (behind the head), and
P3 (lower than the head). It is obvious that the particles higher than
the head can travel a long horizontal distance at the height of the body, while the
particles lower than the head move toward the ground because of the induction of the wake.
These results suggest that we should cough with the head down toward the ground to ensure
that most of the droplets enter the wake region. This posture may be the simplest and most
efficient way to reduce droplet transmission when there is no tissue to cover the mouth
and nose.
FIG. 5.
Instantaneous relative local concentration of virtual particles in different
initialized locations. The positions of virtual particles are randomly initialized
within the black boxes higher than the head (a), behind the head (b), and lower than
the head (c). From left to right, the positions of the black boxes are indicated by
P1, P2, and P3, respectively. The
red arrows indicate the direction of motion of particles ejected from the mouth. The
inclination angle of the manikin is 60°, corresponding to the case of going
downstairs.
Instantaneous relative local concentration of virtual particles in different
initialized locations. The positions of virtual particles are randomly initialized
within the black boxes higher than the head (a), behind the head (b), and lower than
the head (c). From left to right, the positions of the black boxes are indicated by
P1, P2, and P3, respectively. The
red arrows indicate the direction of motion of particles ejected from the mouth. The
inclination angle of the manikin is 60°, corresponding to the case of going
downstairs.
DISCUSSION AND CONCLUSIONS
In this study, the dispersion of cough-generated droplets from a person going up- or
downstairs is investigated through laboratory experiments in a water tunnel, where manikins
with different inclination angles are used to mimic the person. A virtual particle
simulation based on the velocity data from the water tunnel experiments is also adopted to
study the particle dispersion.The flow behind a person is analyzed in more detail using PIV measurements. For a person
walking up- or downstairs (corresponding to inclination angles of 120° and 60°,
respectively), a “downwash” wake flow and an “upwash” wake flow are observed, causing
dramatically different particle dispersion patterns. These two distinct features generally
agree with the RANS results of Li , where the steady flow field is used in their simulation of particle
dispersion. Fluorescent dye injected from the mouth is also adopted to visualize the
particle distribution. Induced by the flow field, the fluorescent particles indeed move
toward the ground for an ascending person, while the fluorescent particles travel over the
head for a descending person. The key difference for our experiments is that the particles
(or droplets) disperse in the manner of particle clustering, which is caused by flow
unsteadiness. Particle parcels at high concentrations may result in higher risks of
infection for people following behind. Additionally, from the virtual particle simulation,
we found that the motion of the particles is mainly determined by the initial position. The
particles can travel a long horizontal distance at the height of the head if the initial
position is higher than the head; otherwise, most of the particles move toward the ground or
the back of the person. This result is consistent with the simulations by Khosronejad , where the
droplets escaping from the mask are entrained by the traveling ambient flow near the top of
the head and travel many meters from the person.Based on the findings in this study, we make the following recommendations for respiratory
infectious diseases. First, greater social distance is suggested for people going downstairs
or riding descending escalators (Li ), with consideration of the environment and scenario. Second, a proper and
polite coughing posture is essential to prevent airborne transmission. The World Health
Organization suggests covering the mouth and nose with a bent elbow or tissue when coughing
or sneezing (World Health Organization, 2021). It is
also critical that a person on an escalator cough or sneeze with the head down toward the
ground so that the dispersed droplets (escaping from the blockage of the elbow or the
tissue) are entrained into the wake region toward the ground. This may reduce the
probability of droplets being inhaled by a person following behind. Third, in contrast to
droplet dispersion in the steady flow field, unsteady fluctuations of the airflow can result
in the clustering of droplets. A high concentration of droplets slows down the dispersion of
the droplets toward a safe local concentration level and correspondingly increases the
distance of droplet dispersion with safety concerns. This nontrivial effect should be
considered in evaluating the dispersion of droplets in real cases.
Authors: Prateek Bahl; Charitha M de Silva; Abrar Ahmad Chughtai; C Raina MacIntyre; Con Doolan Journal: Exp Fluids Date: 2020-07-18 Impact factor: 2.480