Journal Pre-proof Integrated assessment of indoor and outdoor ventilation in street canyons with naturally-ventilated buildings by various ventilation indexes Xia Yang, Yong Zhang, Jian Hang, Yuanyuan Lin, Magnus Mattsson, Mats Sandberg, Ming Zhang, Kai Wang PII:
S0360-1323(19)30740-1
DOI:
https://doi.org/10.1016/j.buildenv.2019.106528
Reference:
BAE 106528
To appear in:
Building and Environment
Received Date: 17 September 2019 Revised Date:
4 November 2019
Accepted Date: 5 November 2019
Please cite this article as: Yang X, Zhang Y, Hang J, Lin Y, Mattsson M, Sandberg M, Zhang M, Wang K, Integrated assessment of indoor and outdoor ventilation in street canyons with naturallyventilated buildings by various ventilation indexes, Building and Environment, https://doi.org/10.1016/ j.buildenv.2019.106528. This is a PDF file of an article that has undergone enhancements after acceptance, such as the addition of a cover page and metadata, and formatting for readability, but it is not yet the definitive version of record. This version will undergo additional copyediting, typesetting and review before it is published in its final form, but we are providing this version to give early visibility of the article. Please note that, during the production process, errors may be discovered which could affect the content, and all legal disclaimers that apply to the journal pertain. © 2019 Elsevier Ltd. All rights reserved.
It provides an insight to assess the coupled indoor and outdoor ventilation by CFD. ACH by mean flows(ACHmean)/turbulence(ACHturb)/purging flow rate(ACHPFR) are adopted. Outdoor ACHPFR are from 18h-1 to 4h-1 as H/W=0.5 to 3 and only 0.8-0.9h-1 as H/W=5. Indoor ACHs is smaller than outdoor, and window sizes hardly affect outdoor ACHs. Both outdoor/indoor ACHPFR are greater than ACHmean but smaller than ACHmean+ACHturb.
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To be submitted to Building and Environment 2019
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Integrated assessment of indoor and outdoor ventilation in street canyons with
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naturally-ventilated buildings by various ventilation indexes
4 5
Xia Yang1, Yong Zhang1, Jian Hang1*, Yuanyuan Lin1, Magnus Mattsson2,
6
Mats Sandberg2, Ming Zhang3,Kai Wang4*
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1
9
Change and Natural Disaster Studies, Sun Yat-sen University, Guangzhou, P.R. China
School of Atmospheric Sciences, Guangdong Province Key Laboratory for Climate
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2
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Gävle, SE-80176 Gävle, Sweden
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3
13
and Pollution Control,State Power Environmental Protection Research Institute,
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Nanjing, 210031,China
15
4
16
London, UK
Department of Building, Energy and Environmental Engineering, University of
State Environmental Protection Key Laboratory of Atmospheric Physical Modeling
Department of Civil, Environmental and Geomatic Engineering, University College
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*Corresponding author: Jian Hang, Kai Wang
1
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Tel: +86-13710248541
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E-mail address:
[email protected];
[email protected]
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Abstract
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The integrated assessments of indoor and outdoor ventilation are still rare so far.
24
As a novelty, this paper aims to quantify the influence of street aspect ratios(building
25
height/street width, H/W=0.5-5) and window sizes(1m×1m, 1.5m×1.5m) on
26
indoor-outdoor
27
naturally-ventilated buildings. Numerical simulations with RNG k-ε model are
28
validated against experimental data and the grid independence are tested as well. Air
29
change rates per hour(ACH, h-1) are adopted for assessing indoor-outdoor ventilation
30
by mean flows(ACHmean) and turbulent fluctuations(ACHturb) respectively. Age of
31
air(τ), purging flow rate(PFR) and its corresponding ACHPFR are used to evaluate
32
overall ventilation capacities.
ventilation
in
two-dimensional
streets
with
single-sided
33
Shallower streets experience better indoor-outdoor ventilation. Outdoor ACHPFR
34
drop from 14.69-17.55h-1 to 3.96-3.97h-1 as H/W rises from 0.5 to 3. In extremely
35
deep canyon(H/W=5), two-counter-rotating vortices produce much smaller velocity at
36
low-level regions(U/Uref~10-3-10-5), resulting in small ACHPFR for outdoor
37
(~0.76-0.91h-1) and indoor in 1-13th floors(~0.03-0.61h-1). When H/W=0.5-1, leeward
38
5-6th floors experience smaller ACHPFR(e.g.~1.13-1.40h-1 as H/W=1) than the other 2
39
floors(e.g. ~1.54-9.52h-1 as H/W=1). Particularly, as H/W=2-3, leeward-side indoor
40
ACHPFR in the middle floors (except the first and top two floors) are nearly
41
constants(~1.02-1.69h-1) and much smaller than windward-side ACHPFR(~1.41-4.35h-1)
42
which increase toward upper floors. Besides, the smaller window size reduces indoor
43
ACHPFR by 19.38%~88.28%, but hardly influences outdoor ventilation. Moreover,
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both outdoor and indoor ACHPFR are greater than ACHmean but smaller than
45
ACHmean+ACHturb. Although further investigations are still required, this paper
46
provides an insight and scientific foundation on integrated indoor-outdoor ventilation
47
evaluation with various effective ventilation indexes.
48 49
Key words: Computational fluid dynamics (CFD); Urban ventilation; Building
50
natural ventilation; Air change rate per hour (ACH); Age of air; Purging flow rate
51
(PFR)
52 53
1. Introduction
54
Under rapid urbanization, an increasing number of people are living in cities.
55
According to the statistics, urban population accounts for 55% of the world’s
56
population in 2018, and it is expected to reach 68% in 2050[1]. High-density urban
57
morphology can raise the efficiency of land use and resource utilization. However,
58
such congested urban conditions may also produce serious environmental problems 3
59
such as reduced urban wind speed, weakened pollutant dilution capacity and
60
strengthened urban heat island intensity etc.[2-4].
61
Moreover, on average, people spend approximately 90% of their time indoors.
62
Indoor air quality issues, which influenced by building ventilation, are drawing
63
increasingly more attention[5]. Since mechanical ventilation requires much more
64
energy to obtain satisfactory ventilation performance, natural ventilation strategy is
65
preferred for its more healthy, lower cost and energy saving alternative, especially in
66
resource-limited regions. As displayed in Fig.A1a in Appendix, urban and building
67
layouts are the essential factors determine the ventilation in both urban streets (i.e.
68
outdoor) and natural-ventilated buildings (i.e. indoor). It is of great importance to
69
evaluate their impacts on both indoor and outdoor natural ventilation when
70
developing sustainable urban-built designs for the healthy and low-carbon urban-built
71
environment.
72
The urban canopy layers, consisting of buildings and street space with a
73
macroscopic roof interface from its above layers, are usually natural-ventilated by
74
external wind from the surrounding rural area and the above atmosphere. Wind from
75
external regions may provide relative clean air into urban areas or street canyons to
76
help pollutants dilution (i.e. urban ventilation)[6-12]. Natural ventilation in the
77
three-dimensional (3D) urban districts includes three processes: pollutants being
78
mixed and redistributed within urban areas, pollutants being diluted horizontally by
79
wind flushing urban areas and removed across urban boundaries (i.e. horizontal 4
80
ventilation), pollutants being removed out or re-entering vertically through canopy
81
roofs (i.e. vertical ventilation)[6-12]. The most key urban parameters within these
82
processes usually include frontal area index (λf, i.e. the ratio of the frontal area of
83
buildings to the total floor area) and plan area index (λp, i.e. the ratio between the
84
top-view planar area of buildings and the total floor area) [e.g.9-11]. In addition,
85
building height variations and uneven urban layouts[11-14], street shape and overall
86
urban form[15-17], ambient wind directions[16-19], lift-up building design[17-22]
87
etc., are also suggested to be the key influencing factors.
88
In particular, two-dimensional (2D) street canyon, which simplifies the urban
89
geometry and complex urban form to an infinitely long street surrounded by buildings
90
on both sides with a perpendicular approaching wind direction, is widely employed to
91
analyze micro-scale climatology in urban areas [e.g.22-31]. The ventilation
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performance of the simplified 2D street canyons is usually worse than that of the 3D
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urban models, since lateral boundary effects are neglected and pollutants can only be
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vertically removed out across street roofs. Street aspect ratio (street height/street
95
width, H/W) becomes the first key parameter for local turbulence and pollutant
96
dispersion. Three flow regimes, i.e. the isolated-roughness flow regime (H/W<0.3),
97
the wake-interference flow regime (0.3
98
one-main-vortex structure (0.67
99
with considerable urban ventilation performance[23-26, 29]. The fourth regime,
100
named as the multi-vortex regime in which two or more vertically-aligned vortices 5
101
appear, usually induces much weaker pedestrian-level wind and worse urban street
102
ventilation [e.g.27-31]. However, there are different findings on the multi-vortex
103
regime in the literature [e.g.27-31]. The wind-tunnel-scale studies report that, with the
104
reference Reynolds number (Re) of 12000 (H=6cm), two contra-rotative vortexes are
105
formed as H/W>1.67 and three to five vertically aligned vortexes are formed as
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H/W=3-5[27-28]. However, the other group finds only one main vortex exists as
107
H/W=1-4 and two main vortexes appear as H/W=5-6 in full-scale street canyons
108
(W=24m, H=24-144m, Re~106–107)[30-31]. Recently, by conducting water channel
109
experiments with three aspect ratios(H/W=1, 1.5 and 2, Re~104-105), Chew et al.[32]
110
experimentally verifies that the widely adopted Re=11,000 is not applicable for Re
111
independence of 2D street canyons as H/W>1.5. Thus full-scale 2D deep street canyon
112
models(H/W=2-6)
113
wind-tunnel-scale models sometimes cannot [27-28].
usually
satisfy
Re
independence
requirement[30-31]
but
114
Furthermore, natural building ventilation is an important strategy in the
115
development of sustainable and healthy indoor environments, which represents the
116
process of exchanging indoor air with outdoor external air by natural wind. In the past
117
decades, many researches contributed to natural building ventilation assessment as
118
reviewed by Chen[5]. Similar Reynolds number independence phenomena is also
119
reported for the flow and pollutant dispersion coupling indoor and outdoor[33]. In
120
addition, the literature experimentally confirmed natural ventilation through the
121
windows or doors can reach large air change rate per hour of ACH=69h-1[34] which 6
122
can effectively reduce 24-hour air-borne infection probability predicted by Well-Riley
123
model. Different from mechanical ventilation in enclosed space such as hospital
124
isolation rooms[35], aircraft cabins[36] and high-speed trains[37] etc., building
125
natural ventilation significantly depends on the coupling impacts between indoor and
126
outdoor airflow[38-44]. Therefore, besides the locations and sizes of the ventilation
127
openings[38-40], ambient building arrangement and wind conditions [41-46], balcony
128
settings[47-48] etc. have been verified as key influencing factors. Furthermore, if
129
background wind speed is relatively small, thermal buoyancy force may significantly
130
interact with wind-driven dynamic force or dominate the flow for both urban
131
(outdoor)[49, 50] and building (indoor)[51, 52] ventilation. It represents natural
132
ventilation performance can be maximized or compromised by the proper or improper
133
external flow conditions which are determined by the surrounding urban morphology
134
and background atmospheric conditions. For example, greater building packing
135
densities usually reduce pressure difference across buildings, and subsequently
136
decrease natural building ventilation potential.
137
To conclude, it is meaningful to develop sustainable urban-built design for
138
improving both urban ventilation and natural building ventilation at the same time,
139
which are influenced by building packing densities, street aspect ratios, building
140
height variations and ambient wind directions etc. Previous investigations have been
141
performed for outdoor ventilation modelling in urban areas or indoor ventilation
142
assessment in naturally-ventilated buildings separately, however the integrated 7
143
evaluations of both indoor and outdoor ventilation with effective ventilation indexes
144
are still rare so far.
145
Therefore, this paper aims to adopt effective ventilation indexes to assess both
146
indoor and outdoor ventilation driven by mean flows and turbulent fluctuations. As a
147
start, we first consider urban ventilation and wind-driven single-sided building
148
ventilation in 2D street canyons with naturally-ventilated buildings under neutral
149
atmospheric conditions. The influences of aspect ratios (H/W=0.5, 0.67, 1, 2, 3, 5) and
150
window sizes (1.5m×1.5m or 1m×1m) are first emphasized. Because only ACH is not
151
sufficient to assess how external air is supplied into a room or street for indoor or
152
outdoor ventilation[44], three ventilation indexes— age of air, air change rate per
153
hour by mean flows and turbulence fluctuations (ACH), purging flow rate (PFR) and
154
the corresponding ACHPFR are used to quantify both building and urban ventilation
155
capacity. Overall, this paper is one of the first attempt to couple indoor and outdoor
156
ventilation assessment in street canyons with multi-storey naturally-ventilated
157
buildings. Previous CFD studies of the inter-unit dispersion [e.g. 37, 48] or natural
158
building ventilation [e.g. 41-44] by coupling indoor and outdoor airflow can provide
159
meaningful reference to present CFD simulations for integrated urban-built natural
160
ventilation evaluation.
161
This paper is structured as follows: Section 2 presents model descriptions of the
162
investigated and CFD methodologies by coupling indoor and outdoor airflow. Section
163
3 introduces ventilation indexes, i.e. air change rate per hour, age of air and purging 8
164
flow rate for indoor and outdoor ventilation assessments. Section 4 depicts results and
165
discussions. The conclusions are drawn in Section 5.
166 167
2. Model descriptions and CFD methodology
168
At present, comparing with wind tunnel experiments and field measurements,
169
computational fluid dynamics (CFD) simulations can be fully controlled and can offer
170
the data of every parameter at each point of CFD domain. Thus CFD is becoming the
171
most widely used method for indoor and outdoor ventilation modeling, i.e. indoor
172
ventilation [e.g. 35-36], outdoor ventilation[8-22, 27-31, 55-62] and that by coupling
173
indoor and outdoor[33, 39-48,52-54] simulations. There are coupled and decoupled
174
approaches in indoor-outdoor flow simulations[41-44, 52-54]. In a coupled method,
175
both the outdoor and indoor environments are simulated in a single computational
176
domain. As recommended and reviewed in the literature[53-56], this paper will
177
employ the coupled approach which has been verified to be more accurate for flow
178
modelling in the proximity of and through the ventilation openings than the decoupled
179
approach. The accuracy and reliability of CFD simulations for indoor and outdoor
180
airflow will be carefully validated following the CFD guidelines[53-61].
181 182 183
2.1 Turbulence models in CFD simulations Although large eddy simulation (LES) models are known to perform better in 9
184
predicting turbulent flows than the Reynolds-Averaged Navier-Stokes (RANS)
185
approach does[53-57, 62], RANS models have been adopted more widely for both
186
indoor and outdoor ventilation modelling[8-12, 14-19, 35-37, 39-50] because they
187
predict mean flows and the spatial average flow properties generally well with much
188
less computational time than LES. Among RANS approaches, the Renormalization
189
Group (RNG) k-ε model is recommended as one of the best choices and the most
190
widely-adopted for predicting the flow coupling indoor and outdoor[e.g. 44, 48, 53].
191
In this study, Ansys FLUENT[63] with the RNG k-ε model is used to solve the
192
steady-state flow field. The governing equations for the flow and turbulent quantities
193
of incompressible fluid are shown as below.
194
The mass conservation equation: =0
195
(1)
The momentum conservation equation: =−
1 +
196
−
''
(2)
''
The transport equations of turbulent kinetic energy (k) and its dissipation rate (ε): =
+
−
(3)
10
=
4
5+'
0
6
7 − '20
2
(4)
197
Where #" means time-averaged velocity components (Ux,Uy,Uz is the velocity in
198
stream-wise, span-wise and vertical directions). v represents the kinematic viscosity.
199
The Reynolds stress tensor: −
’’
’’
=
2 − kδij 3
+
8
(5)
200
$ij is the Kroneker delta (a piecewise function of variables i and j). And the kinematic
201
eddy viscosity:
8
202
= '(
2
(6)
The turbulence production term: =
8
×
;
;
+
;
(7)
203
The default constants in the RNG k-ε model are as follows[63]:
204
'( = 0.0845,
= 1.393,/0 = 1.393,'
0
= 1.42,'20 = 1.68
205 206
2.2 Validation of airflow for building ventilation coupling indoor and outdoor
207
In this study, a wind tunnel experiment at Cardiff University[64] involving
208
windward and leeward single-sided ventilation of a single cubic building was used to 11
209
validate present CFD methodologies including the turbulence models and grid
210
settings.
211
For accurate full-scale airflow simulation, Re similarity is significant in this study.
212
In Jiang’s experiment[64], the reference Re number is about 162,000, which is large
213
enough to ensure the Re independence. As shown in Fig.1b, a full-scale building
214
model with the height of H=2.5m was built in our CFD simulations. The scale ratio of
215
building model to wind tunnel model equals 10:1. The window with a size of
216
1.25m×0.84m is located in the middle of windward or leeward building wall. Fig.1a
217
displays the computational domain. The distances from the domain inlet, domain
218
outlet, domain top, domain lateral boundaries to the building model are 4H, 8H, 4H,
219
4H respectively. The dimensions are similar with those in the literature [44] and
220
match the wind tunnel experiment as well.
221 222
At the domain inlet, the vertical profiles of stream-wise velocity follow a logarithmic law, and the turbulent quantities were defined as follows[44]. < 6=7 = 6 ∗ /@7 AB6 =/=C 7 6=7 =
∗
2
(8a)
/D'(
6=7 = '( E/F
E/2
(8b) /6@=7
(8c)
223
where u* is the friction velocity, equals 1.068m/s, κ is Von Karman’s constant which
224
equals 0.41, =C equals 0.05m denoting the roughness height in the full-scale model,
225
velocity components in y and z directions are zero, '( is 0.09. These profiles at the 12
226
domain inlet refer to those measured in wind tunnel[64] and previous literature[44].
227
Zero normal gradient boundary conditions are adopted at the domain outlet (i.e.
228
outflow), domain roof and lateral boundaries (i.e. symmetry).
229
RNG k-ε model was employed in this validation. Standard wall function was used
230
as near-wall treatment. The SIMPLE algorithm was adopted as pressure-velocity
231
coupling method. The second order upwind scheme was used for discretizing the
232
convection and diffusion-convection terms. The absolute residual for continuity
233
equation, velocity components, k, ε were all below 10-5. The calculation didn’t stop
234
until all residuals became constant.
235
Different grid arrangements with the minimum grid size of 0.05m (fine grid),
236
0.1m (medium grid), 0.2m (coarse grid) at wall surfaces were compared to test the
237
grid independence of numerical solutions. The grid expansion ratio is 1.25 from wall
238
surfaces toward the surroundings. Fig.2 depicts the vertical profiles of normalized
239
stream-wise velocity (Ux(z)/Uref) from both experimental data and numerical results at
240
the lines of x=-H/25, x=H/2 and/or x=3H/2 in the centre plane of the cube. The
241
numerical profiles of velocity below and near building height (z<1.2H) show a good
242
agreement with the wind tunnel data, which confirms that present CFD methods is
243
performing well in the prediction of single-sided ventilation airflow by coupling
244
indoor and outdoor. In terms of different grid arrangements, three computed statistics
245
named normalised mean square error (NMSE), fractional bias (FB) and correlation
246
coefficient (R) were computed [65]. Table. 1 compared the three grid arrangements 13
247
deviation, which shows high correlation between simulation results and wind tunnel
248
data (R>0.956) The FB values indicate that simulation results generally overestimate,
249
though the overestimation is small (e.g. -0.008~-0.261). In addition, the low values of
250
NMSE are found. From the table, fine grid arrangements and medium grid
251
arrangements have a higher R, besides, their NMSE and FB are smaller than coarse
252
grid arrangements. The medium grid and fine grid perform the same well and better
253
than the coarse grid in predicting velocity profiles(Table.1). Considering both the
254
simulation accuracy and computational time cost, the medium grid arrangement was
255
used in the indoor mesh generation and further CFD modelling.
256 257
2.3 CFD setups in case studies
258
An ideal two-dimensional urban street canyon is built for the CFD simulations in
259
this study. For example, Fig.3a shows the full-scale computational domain of H/W=2
260
and the detail description of target canyon with indoor rooms. The span-wise length(y
261
direction) of target street canyon(L) and building width(B) remain constant as
262
L=B=20m, the specific height of each floor is 3m including 0.3m floor slab. In this
263
study, only one window set in the windward or leeward wall in each storey of the
264
buildings alongside the street and single-sided natural ventilation is considered here.
265
Fig.3b provides the schematic view of mesh information on the vertical center plane.
266
The improved resolution cells is used for window area, considering its importance in
14
267
the indoor-outdoor air exchange. In this study, six aspect ratios (H/W) and two
268
window sizes, which consist twelve different cases are investigated(Table.2).
269
Different cases with various building configurations are named as Case [H/W,
270
w(window size)], where ‘H/W’ represents the various building heights and street
271
canyon width and ‘w(window size)’ is employed to discriminate the two window size.
272
For example, the case when building height and street canyon width are both 24m
273
thus the calculated H/W=1, and window size=1.5m×1.5m, is named as Case [1, w1.5].
274
The opening ratio which denotes the percentage of the area of window against the
275
area of the wall (i.e. 9.26% or 20.83% in this paper) has been used to characterize the
276
window size and window setting dimensions.
277
When dealing with the approaching flows from the domain inlet to the target
278
urban model, a certain number of buildings sets up in front of and behind the target
279
building to serve as roughness elements in order to develop an urban boundary layer[6,
280
28-31, 45,49]. In this study, both front and rear of the target street canyon has a
281
typical street canyon to reproduce roughness elements. At the domain inlet, the
282
vertical profiles of stream-wise velocity and turbulent quantities are defined in Eq.(9):
(9a)
= L6< 6=7 × M K 72
ε K 6=7 = 283
=−I J 7 =H
Q
(9b)
Q
S S OP R TU VW
(9c)
Where the reference velocity Uref=3m/s. H indicates the building height and the 15
284
reference height zref=24m. The power-law exponent of
285
underlying surface roughness above medium-dense urban area. The turbulent kinetic
286
energy
287
Eq.(9b), where turbulence intensity M K = 0.1 and a=1[60]. Von Karman constant
288
@ = 0.41 and '( = 0.09 are empirical constants.
K
= 0.22 indicates
is calculated from the mean wind speed and the turbulence intensity using
289
For the lateral and upper boundaries of the computational domain and the
290
downstream boundary, the normal velocity component and normal gradients of
291
tangential velocity components are set to zero (i.e. zero normal gradient).
292
To conduct the numerical simulations, the governing equations are discretized to
293
algebraic equations on a staggered grid system based on the finite volume method
294
(FVM). Standard wall function is used as near-wall treatment. The discretization
295
schemes used for the convection and diffusion terms are the second-order upwind
296
scheme. And the pressure and velocity couple with the SIMPLE algorithm.
297
Convergence is assumed to be obtained when all residuals [e.g. 53] stop decreasing
298
and reached a minimum value of 10-6 for x, y and z momentum, 10-5 for k and 10-4 for
299
ε and continuity.
300 301
3. Ventilation assessment indexes for indoor and outdoor
302
In recent years, some indoor ventilation indices have been used to assess and
303
quantify urban ventilation and pollutant dilution capacity such as air change rate per 16
304
hour (ACH) [7-9, 17, 40-44], purging flow rate (PFR) and net escape velocity (NEV)
305
[16, 66], age of air (τ) and air exchange efficiency[8-11], etc. These studies treat
306
urban canopy layers (UCL) as outdoor space similar with indoor environments and
307
propose the assumption that the ventilation processes outdoors and indoors are similar:
308
supplying external air and distributing them within a space, pollutant dilution and
309
removal by mean flows, recirculation of contaminants by turbulent mixing. The major
310
difference is that there is a large-area open boundary (i.e. urban roof) at the urban top,
311
whose fraction of area is much larger than that of supplies and openings (windows etc)
312
to the total surface area of rooms or buildings. Therefore, pollutant removal induced
313
by vertical turbulent diffusion across street roofs are much more significant for urban
314
ventilation than that through windows/openings of rooms for indoor ventilation.
315
For considerations of ventilation effectiveness, Fig.4 briefly illustrates various
316
ventilation indices for outdoor (Fig. 4a) and indoor (Fig.4b) respectively. First, the age
317
of air (τ, unit: s) is employed in evaluating how external wind supplies relatively
318
clean air into a room or street canyon. Then air change rate per hour (ACH, unit: h-1)
319
due to mean flows (ACHmean) and turbulent diffusion (ACHturb) are separately defined
320
to assess the strength of air exchange across street roofs or window openings. Finally,
321
to assess the net natural ventilation performance induced by mean flows and turbulent
322
diffusion, purging flow rate (PFR) are adopted for both street canyon (outdoor) and
323
rooms (indoor).
324
It is worth mentioning that, in the following tracer gas simulations, carbon 17
325
monoxide (CO) is employed as the tracer gas in rooms or the target street canyon for
326
indoor and outdoor ventilation respectively. And the CO source with the pollutant
327
emission rate of 10-5kg·m-3s-1 is located in the entire target street(Fig. 4a) or rooms
328
(Fig. 4b) for outdoor and indoor age of air simulation and PFR calculation.
329
The governing equation of time-averaged concentration is: O
−
O
]^
= _`
(10)
330
where
331
pollutants ]^ =
332
by the literature [8-12, 66], the pollutant was set in the entire street or the whole
333
rooms separately after the steady airflow obtained at the emission rate
334
_`=10-5kg∙m-3∙s-1.
is the time-averaged velocity components, the turbulent eddy diffusivity of 8 /a^8 ,
a^8 = 0.7 is the turbulent Schmidt number as recommended
335
For boundary conditions of Eq.(10), the inflow concentration is defined as zero
336
at the domain inlet, zero normal flux condition is set at wall surfaces and zero normal
337
gradient condition is applied at the domain roof and outlet.
338 339 340
3.1 Age of air (τ) Local mean age of air (τ) was originally defined to represent how long the
341
external air can reach an arbitrary point after it enters a room[5, 65], by supposing that
342
external air of a room is relatively clean and its age is zero. Later, it was extended for
18
343
urban ventilation assessment[8-11] by assuming that the external air is cleaner than
344
that in the street canyon and external wind can bring fresh air into a street to help
345
pollutant dilution. Thus the poor-ventilated zones in a room or street require a longer
346
time for external air to arrive and experience larger age of air for indoor[5, 44, 67] or
347
outdoor[8-11]. Here we also note that the age of air for street canyon is actually the
348
effective age of air[8].
349
This paper adopts the homogeneous emission method[67] to calculate age of air
350
in target street canyon[8] and each room of multi-storey buildings[44]. If a
351
homogeneous pollutant release rate (_`, kg∙m-3∙s-1) is fixed in the entire target street or
352
ventilated room, age of air (τ, unit: s) is proportional to the concentration attained at
353
the same point as defined in Eq.(11): f = 'g /_`
(11)
354
where _` is the emission rate in target street canyon or each room which equals 10-5
355
kg∙m-3∙s-1 in this study. τ and Cp are the age of air and tracer gas concentration at a
356
point respectively.
357 358
3.2 Air change rate per hour (ACHmean and ACHturb)
359
Air change rate per hour (ACH) has been widely adopted to evaluate ventilation
360
in rooms [5, 40-44] which represents the rate at which the total indoor volume is
361
replaced with external fresh air. Later, it was adopted to quantify ventilation capacity 19
362
in 2D street canyons or 3D urban models[6-7, 11, 17]. ACH (unit:hj 7 induced by mean flows and turbulence fluctuation across the
363 364
urban canopy boundaries and room openings are defined as below [6-7, 11, 17]: k'Il
mK
=
k'I8pHq =
3600nl oA
mK
3600n8pHq oA
Qmean = ∫ V • ndA
(12a)
Qturb = ± ∫ 0.5σ u dA
(12b)
365
nl
366
where ACHmean and ACHturb are air change rate per hour induced by the volumetric flow
367 368
rates (m3·s-1) through boundaries of a room or street by mean flows (Qmean) and turbulent ur r fluctuations (Qturb). V is velocity vector, n is the normal direction of room openings or
369
street roofs, A is surface area; σ u = w ' w '= u ' u ' = 2 k / 3 is the fluctuation velocity
370
on room opening or street roofs based on the approximation of isotropic turbulence (k is
371
the turbulent kinetic energy)[6-7, 11, 17].
mK
and n8pHq is the volumetric flow rate (m3·s-1) of a room or canyon.
372
In this paper, ACHmean only indicates the indoor and outdoor air exchange under
373
the influence of the mean velocity at the top of street canyon or window in the rooms.
374
ACHturb further describes the air exchange caused by turbulent fluctuations across the
375
street canopy or windows, but they cannot describe the net ventilation capacity. Thus
376
purging flow rate will be defined later.
377 378 379
3.3 Purging flow rate (PFR) and the corresponding ACHPFR The purging flow rate (PFR, unit:m3·s-1) was first defined to assess the net 20
380
airflow rate of flushing a room induced by the mean flows (i.e. convection) and
381
turbulent diffusion[67]. Later, PFR was extended for evaluating the net capacity of
382
removing pollutant in urban domain[16, 66, 68].
383
Thus, this paper adopts PFR as the net airflow rate of flushing the whole room
384
(indoor) or street canyon (outdoor) induced by both convection and turbulent
385
diffusion. As defined in Eq.(13a), if a homogeneous tracer gas release rate (_` ,
386
kg∙m-3∙s-1) is fixed in the entire target street or ventilated room(Fig.4), PFR can be
387
calculated as the ratio of tracer gas release rate to the spatial mean concentration in
388
the volume. Moreover, to have a better comparison between indoor and outdoor
389
ventilation, ACHPFR which is the ACH calculated by PFR is also defined in Eq.(13b).
390
PFR and ACHPFR are defined as below: rst =
_` × oA < 'g >
k'Iwxy =
(13a)
3600rst oA
(13b)
391
Here _` =10-5 kg∙m-3 ∙s-1 is the volumetric emission rate, <'g > is spatial mean
392
concentration (kg∙m-3). In addition, this paper defined PFR as the source of a whole
393
room or a whole canyon rather than a source point to reflect dilution properties.
394 395
4. Results and discussions
396
4.1 Influence of aspect ratio in shallow canyon (H/W=0.5, 0.67, 1 as H=24m) 21
397
This subsection investigates the influence of aspect ratio on the indoor and
398
outdoor ventilation in three kinds of shallow street canyons(H/W=0.5, 0.67, 1) with
399
the constant building height(H=24m) but different street widths.
400
4.1.1 Outdoor ventilation in shallow street canyons (H/W=0.5-1)
401
Fig.5-6 first display the simulated normalized velocity magnitude(U/Uref),
402
normalized turbulent kinetic energy(k/Uref2) and the outdoor age of air (τ) as H/W=0.5,
403
0.67, 1 respectively. As depicted in Fig.5, only one main clockwise vortex appears in
404
all these three streets, and the vortex center with H/W=0.5 locates near the windward
405
wall, while those with H/W=0.67, 1 are near the street centre. In addition, U/Uref near
406
windward-side wall is found to be always greater than that near leeward-side wall.
407
Furthermore, the normalized turbulent kinetic energy is considerably larger when near
408
street roof and windward walls than that near street ground and leeward walls. The
409
maximum k/Uref2 (>0.08) appears at the upper corner of street roof and windward
410
building. Meanwhile, in such single-sided ventilated buildings, the indoor velocity is
411
always much smaller than outdoor. More importantly, when street width decreases
412
from 48m to 24m, k/Uref2 becomes smaller in the whole canyon. As a result of flow
413
field in Fig. 5, wind first transports external clean air into the windward side, thus the
414
windward side age of air is smaller than the leeward side and around vortex centre
415
(Fig.6). Moreover, narrower street canyon tends to experience greater age of air and
416
worse ventilation in the entire street. Especially for H/W=1, air near the corner of the
417
leeward building and street center is particularly old (τ>500s). 22
418
To quantify the outdoor ventilation capacity, Table.3 summarizes ACHPFR and air
419
change rates per hour across street roofs due to mean flows(ACHmean) and turbulent
420
diffusion(ACHturb) in these three street canyons with H/W=0.5, 0.67 and 1(H=24m). It
421
is noticed that as H/W rises from 0.5 and 0.67 to 1, ACHmean decreases from 6.07 and
422
7.98h-1 to 5.93h-1, meanwhile ACHturb is reduced considerably from 34.59 and
423
22.94h-1 to 15.15h-1. For the net ventilation capacity of mean flows and turbulence
424
fluctuations, ACHPFR goes down a little from 14.69 and 13.95h-1 to 10.78h-1. In all
425
cases, outdoor ACHPFR is larger than ACHmean but smaller than the sum of ACHmean
426
and ACHturb. For example, in H/W=0.5, the sum of ACHmean and ACHturb is 40.66h-1
427
and ACHPFR is 14.69h-1. Pertaining to the specific ventilation efficiency of ACHPFR
428
associating with ACHmean and ACHturb still require further researches. In summary,
429
results show that outdoor ventilation for narrower street of H/W=1 is poorer than
430
shallower canyons(H/W=0.5, 0.67).
431 432
4.1.2 Indoor single-sided ventilation of near-road buildings(H/W=0.5-1)
433
As an example, Fig.7a-b displays velocity vector and normalized stream-wise
434
velocity(Ux/ Uref) within and near all rooms of near-road buildings in Case[0.5, w1.5]
435
and indoor age of air in all rooms in Case[0.5, w1.5], Case[0.67, w1.5], Case[1, w1.5].
436
Generally, indoor space is naturally-ventilated by air exchange through openings (e.g.
437
flow or stream-wise velocity perpendicular to windows here). Fig.7a shows that
23
438
normalized stream-wise velocity in the windward-side rooms is larger than that in the
439
leeward-side rooms, and the flow fields are similar in the middle floors (2th to 7th
440
floor). Subsequently, the windward-side rooms possess better ventilation capacity
441
than leeward-side rooms and the upper floors obviously experience smaller age of air
442
than other floors because of the larger local velocity. Besides, in leeward-side rooms,
443
the age of air become larger as H/W increases from 0.5 to 1. On the contrary, in the
444
first or second floor of the windward-side rooms, age of air as H/W=0.5 and 0.67 is
445
greater than that as H/W =1(Fig.7b).
446
To evaluate the influence of aspect ratios on indoor ventilation, Fig.7c-e
447
compares ACHmean, ACHturb, ACHPFR for all leeward and windward rooms in Case[0.5,
448
w1.5], Case[0.67, w1.5], Case[1, w1.5]. Because of the uniform motion at the window
449
of the middle levels where the outdoor velocity vector is parallel to the
450
window(Fig.7a as an example), the smallest ACHmean as H/W=0.5-1 appears in 4th and
451
5th floor (~0.26h-1-1.04h-1) for both windward-side and leeward-side rooms(Fig.7c).
452
ACHturb in the upper floors are larger than that in the lower floors in windward
453
building(Fig.7d), for example 33.22h-1 in the top floor and 8.53h-1 in the first floor at
454
windward building as H/W=0.5, which is consistent with the distribution of k. While
455
ACHturb in leeward-side rooms (~3.20h-1-9.06h-1) is much smaller than the
456
windward-side (~4.95h-1-33.22h-1) in all three cases. In addition, as H/W increases
457
from 0.5 and 0.67 to 1, ACHturb decreases significantly. Subsequently, as shown in
458
Fig.7e, the air purification ability(i.e.indoor ACHPFR) improves in the wider canyon, 24
459
and the distribution of ACHPFR in different floors demonstrates great discrepancy with
460
that of ACHmean. Windward-side ACHPFR above the 3th floor basically rise toward
461
upper floors, while leeward-side ACHPFR decreases with the increasing floor number
462
except the roof-level two floors. For example, as H/W=1, leeward 5-6th floor
463
experience the smaller ACHPFR from 1.13 to1.40h-1 comparing with the other
464
floors(~1.54-9.52h-1).
465
Overall, when the building height remains the same, the wider the canyon, the
466
better both indoor and outdoor ventilation performance. And windward-side rooms
467
basically enjoy the better ventilation than leeward-side rooms. Indoor ACHPFR for
468
most rooms(~1-5h-1) are smaller than those of outdoor ACHPFR(10.78-14.69h-1).
469 470
4.2 Influence of aspect ratios in typical deep canyon(H/W=2, 3 as W=24m)
471
Street aspect ratio is the key parameter affecting the airflow characteristic. This
472
subsection investigates the influence of raising aspect ratio on both indoor and
473
outdoor ventilation in typical deep street canyons(H/W=2, 3) with the constant street
474
width(W=24m) but different building heights(H=48, 72m with 16, 24 floors).
475
Fig.8a-f represent the configuration of the normalized velocity(U/Uref) field and
476
outdoor age of air for Case [1,w1.5], [2,w1.5] and [3,w1.5](H/W=1-3). Obviously,
477
there is only one main vortex in all three street canyons. This one-main-vortex
478
structure in deep street with H/W=2 and 3 can be verified by the scale-model outdoor 25
479
measurement displayed in the Appendix (see Fig. A1) and our previous study[22].
480
Moreover, as H/W rises from 1 to 3, the wind speed reduces and urban age of air
481
increases dramatically in the whole street canyon. In particular, Fig.8g-h illustrate
482
horizontal profiles of pedestrian-level normalized velocity and age of air at z=1.5m in
483
target street canyon. In contrast to street with H/W=1, the pedestrian-level normalized
484
velocity with H/W=3 is nearly seven times smaller and its age of air is almost four
485
times larger (i.e. much older air stays calm along the lower part of the canyon).
486
As indicated in Table.3, compared to shallow street(10.78-14.69h-1 as H/W=0.5-1),
487
outdoor ACHPFR drop evidently in typical deep canyon(3.96-6.08h-1 as H/W=2-3).
488
Similarly, ACHmean decreases dramatically from 5.93-7.98h-1 to 1.02-1.51h-1, however
489
ACHturb is reduced less times(15.15-34.59h-1 to 11.52-17.11h-1). All these results
490
confirm the much worse outdoor ventilation in typical deep street(H/W=2-3) than the
491
shallow ones(H/W=0.5-1).
492
As shown in Fig.8a, c, e, there is a uniform vertical motion on the facade of
493
windward side and leeward side. Such flow pattern causes the poor ability to expel the
494
fresh air into the rooms in the middle floors as H/W=2-3. As a result, Fig.9a shows the
495
age of air in the middle-floor rooms of deep street(H/W=2-3) have comparatively
496
similar values(~3500s) which is much greater than that(~1000s) in shallow street
497
(H/W=0.5-1). Particularly, as H/W=3, the age of air in the first floor of windward and
498
leeward side reach up to 7000s and 5000s respectively. The top floors generally
499
experience much younger air than the other floors. Moreover, Fig.9a also depicted the 26
500
differences in indoor ventilation capacity(i.e. age of air) between windward-side and
501
leeward-side for the typical deep canyons(H/W=2, 3) is more evident than that for the
502
shallow canyons(H/W=0.5, 0.67, 1).
503
Then Fig.9b-d depict various indoor ACHs of all rooms as H/W=1-3. It
504
demonstrates that ACHPFR is also greater than ACHmean but much less than
505
ACHmean+ACHturb. Indoor ACHmean and ACHPFR in the middle floors are relatively
506
small (e.g. ACHPFR~1.36h-1, 1.08h-1 and 1.10h-1 in leeward 5th, 9th, 11th floor as
507
H/W=1, 2, 3 respectively), and those in the upper and lower floors are much larger. In
508
deep streets with H/W=2 and 3, the constant ACHmean and ACHPFR in the middle floors
509
(except the top and bottom two floors) are found much smaller(e.g. leeward-side
510
ACHPFR~1.02-1.69h-1 and windward-side ACHPFR~1.41-4.35h-1) than shallow streets
511
as H/W=0.5-1(leeward-side ACHPFR~1.13-2.72h-1 and windward-side ACHPFR
512
~2.54-7.14h-1 ).
513
Additionally, for indoor ventilation in leeward-side rooms as H/W=2 and
514
3(Fig.9c-d), we can find the small but relatively comparable ACHmean(0.20-0.82h-1
515
and 0.07-0.52h-1), ACHturb(3.41-5.45h-1 and 1.78-4.60h-1) and ACHPFR(1.07-2.29h-1
516
and 0.72-1.72h-1). In windward-side rooms, indoor ACHturb and ACHPFR are found
517
rising significantly with the increase of z/H. And leeward-side rooms always have a
518
poorer ventilation performance than windward-side, for example, leeward-side
519
ACHPFR (~1.93h-1) at the top-floor room is at least four times smaller than
520
windward-side ACHPFR (~8.59h-1) as H/W=2. 27
521
Overall, in contrast to shallow streets(outdoor ACHPFR~10.78-14.69h-1,
522
H/W=0.5-1), typical deep canyon as H/W=2 and 3 experience worse outdoor
523
ventilation(ACHPFR~3.96-6.09h-1) due to the smaller velocity, moreover the
524
leeward-side middle-floor rooms(except the first and second floors) attain smaller
525
ACHPFR(~1.02-1.69h-1) and windward-side ACHPFR rise toward the upper floors
526
(~1.41-4.35h-1).
527 528
4.3 Indoor and outdoor ventilation in extremely deep street canyon(H/W=5)
529
This indoor and outdoor ventilation are further investigated for the extreme deep
530
canyon(H/W=5) with W=24m and H=120m(40 floors). Fig.10 represents the flow
531
field and indoor-outdoor ventilation capacity in extremely deep canyon when H/W=5,
532
with window size of 1.5m×1.5m. Contrary to shallow and typical deep street canyon,
533
two counter-rotating vortices are observed as H/W=5, including one main, stronger
534
and clockwise vortex in the upper part and another weaker counter-clockwise vortex
535
in the lower part(Fig.10a). In general, the main vortex in the upper part is similar to
536
H/W=3, while the velocity in the lower part of canyon is very small (Fig.8g, U/Uref
537
~10-3-10-5).
538
As indicated in Table.3, outdoor ACHs become relatively small as H/W=5, i.e.
539
0.76 h-1, 0.61h-1 and 6.91h-1 for ACHPFR, ACHmean, ACHturb respectively. In particular,
540
ACHPFR as H/W=5(0.76 h-1) is only 19.2% of that as H/W=3(3.96 h-1). Fig.10b 28
541
displays that k/Uref declines exponentially toward low levels of the extremely deep
542
street canyon(H/W=5), which is 10-2 near windward side around the roof height and
543
10-6-10-7 at the pedestrian level. These variations result in seriously adverse effect to
544
the airflow at the lower part of canyon and age of air reaches as large as 3×104s at the
545
pedestrian level(Fig.10c). Age of air ranges from 5×103s to 3×104s in the lower part
546
(below 10th floor) of the canyon and age of air at pedestrian level(Fig.8h) increases
547
from leeward side to windward side owing to the weak and counterclockwise vortex.
548
In addition, the junction of two vortices is at the level of 10th to 16th
549
floor(Fig.10a), which leads the airflow entering into the rooms through different ways
550
below and above it. Fig.10d shows the detailed description of various indoor ACH
551
indices. Indoor ACHmean in leeward-side rooms is small(~10-3-10-1h-1). For the lower
552
floors, less ACHs(e.g. ACHPFR~0.04-0.61h-1) appears in 1st-13th floors and a great
553
increase can be found in the windward 13th-16th floors which is consistent with the
554
junction location of two vortices. Leeward-side rooms experience smaller ACHs than
555
windward-side rooms. Windward-side rooms at the 39th and 40th floor enjoy a much
556
better ventilation performance than other floors, and ACHPFR increases suddenly from
557
4.31h-1 of the 38th floor to 8.11h-1 of the 40th floor.
558
To sum up, when the canyon is extremely deep(H/W=5), the lower
559
counter-clockwise weak vortex will be produced below the upper clockwise vortex, as
560
a result, leeward-side pedestrian regions attain slightly younger air than windward
561
side. The wind in the lower-vortex region is 1-2 order weaker, thus street ventilation 29
562
in this region is extremely poor and rooms in the corresponding lower floors(1-13th
563
floors) experience extremely small indoor ACHPFR(~0.04-0.61h-1) than the
564
upper-vortex regions(16-40 floors, ~0.98-8.11h-1). Under such weak indoor and
565
outdoor airflow, future research will consider the influence of buoyancy force induced
566
by solar shading and air-wall temperature difference whose effects cannot be
567
neglected.
568 569
4.4 Effects of window size on indoor-outdoor ventilation
570
The indoor-outdoor air exchange is significant associated with the window size
571
which plays the critical role on the natural ventilation. As an example, Fig.11 shows
572
the velocity and age of air in Case[1,w1.5] and Case[1,w1] with window sizes of
573
1.5m×1.5m(Fig.11a,c) and 1m×1m(Fig.11b,d) with opening ratio of 20.83% and 9.6%
574
respectively. Fig.11a-b confirms that the vortex location and velocity are almost the
575
same for two window sizes. Thus, there is little difference in the air age
576
distribution(Fig.11c-d). Similarly, Table.4 lists ACHmean, ACHturb and ACHPFR under
577
different aspect ratios(H/W~0.5-5) with these two window sizes, showing that the
578
discrepancies of ACHs between two window sizes are very small, suggesting the
579
impact of window sizes on outdoor ventilation is negligible.
580
However, the indoor ventilation capacity may be seriously deteriorated with the
581
decrease of window size. Fig.12a-b display the indoor age of air in windward-side and 30
582
leeward-side rooms with two window sizes as H/W=1-3. Obviously, smaller window
583
size(1m×1m) experience about double age of air than larger one (1.5m×1.5m). For
584
example, as H/W=3, age of air in first floor of the leeward and windward buildings
585
reach from 5000s and 7000s to 10000s and 20000s respectively. Fig.12c-e depict the
586
percentage of ACH: ACH(1m×1m) /ACH(1.5m×1.5m) on each floor as H/W=1-3. Window
587
size of 1m×1m attains much smaller indoor ACHmean than window size of 1.5m×1.5m,
588
such percentage ranges from 25%-60% for most middle floors and those in the upper
589
and lower floors usually exceed the middle floors. ACHturb is also found to be
590
decreased to around 42% in each floor when reducing the window area. In addition,
591
the overall ventilation performance (ACHPFR) can be reduced to 11.72%-80.62%.
592
Generally, ACHPFR decreases to 44% on average. In summary, reducing the window
593
size, i.e. the area of indoor contract with outdoor environment, can decrease indoor
594
ventilation considerably but produce less effect on outdoor ventilation in street
595
canyon.
596
If window size decreases from 1.5m×1.5m to 1m×1m in extremely deep canyon
597
(H/W=5), Fig.13a verifies the velocity in the upper part of canyon remains unchanged,
598
while the flow in lower part of canyon is slightly influenced. That with small window
599
size is more in line with the previous study of ideal street canyon without coupling
600
indoor-outdoor ventilation[22]. Consequently, as shown in Fig.13b, the decreases of
601
indoor ACHPFR above the 15th floor are around 38.27% to 62.75% as window size is
602
smaller. When emphasizing the indoor ventilation in the lower part of canyon, 31
603
although ACHPFR changes a lot, the ventilation performance is still poor due to the
604
small velocity(Fig.8g). To some extent, the impact of window sizes on the airflow of
605
street canyon is more significant in the lower levels for extremely deep canyon.
606 607
5. Conclusions
608
Better understanding the impact of urban-built geometry on both outdoor
609
ventilation in street canyons and indoor ventilation in naturally-ventilated buildings is
610
becoming more significant to provide guidance for developing sustainable and healthy
611
urban-built environments. As a novelty, this paper investigates the influence of street
612
aspect ratios and window sizes on the integrated indoor-outdoor ventilation in 2D
613
street canyons with single-ventilated multi-storey buildings(shallow, deep and
614
extremely deep types as H/W=0.5-1, 2-3 and 5). Validated by wind tunnel experiments,
615
CFD simulations with RNG k-ε model are performed to solve flow fields in street
616
canyons and near-road buildings by coupling indoor-outdoor interaction. As a novelty,
617
both indoor and outdoor ventilation capacity are analyzed by multiple ventilation
618
concepts such as age of air(τ) and air change rate per hour(ACH) etc. Particularly,
619
purging flow rate(PFR) and its corresponding ACHPFR are adopted for overall indoor
620
and outdoor ventilation assessment.
621
For outdoor ventilation, there is a clockwise vortex in the street canyon as
622
H/W=0.5-3 and two counter-rotating vortices as H/W=5. Street canyons with smaller 32
623
aspect ratios(i.e. wider streets) experience more ACHs and smaller age of air for both
624
outdoor and indoor ventilation. In particular, outdoor ACHPFR goes down from
625
14.69-17.55h-1 to 3.96h-1 as H/W is from 0.5 to 3 and dramatically decreases to
626
0.76-0.91h-1 in extremely deep canyon as H/W=5. Besides, leeward-side air in street
627
canyons is older than windward-side as H/W=0.5-3, however, in lower part of canyon
628
as H/W=5, windward-side air is older owing to the weak and lower-level
629
counterclockwise vortex.
630
For indoor ventilation, in shallow streets with H/W=0.5-1(8-floor buildings),
631
ACHmean and ACHPFR in leeward 4-6th floor experience the smaller ACHs(e.g. ACHPFR
632
~1.13-1.64h-1 as H/W=1) comparing to other floors. In deep streets with H/W=2 and 3
633
(16 and 24 floors), the ACHmean and ACHPFR in leeward-side middle-floor(except the
634
top and bottom two floors) are nearly constants and much smaller(e.g.
635
ACHPFR~1.02-1.69h-1) than the windward-side(e.g.ACHPFR~1.41-4.35h-1) which
636
increase toward the upper floors. As H/W=0.5-3, windward-side rooms basically
637
attain better ventilation than leeward-side. Furthermore, the difference of indoor age
638
of air between leeward-side and windward-side rooms as H/W=2-3 is larger than
639
H/W=0.5-1. In extremely deep street(H/W=5), the lower-level vortex flow is 1-2 order
640
weaker than the upper-vortex region, producing extremely small indoor ACHPFR
641
(0.04-0.61h-1) in the corresponding low-level floors(1-13th floors). Indoor ACHs in the
642
upper-level vortex region(16-40th floors) are similar with those as H/W=3.
643
Finally, the indoor ventilation capacity and efficiency vary significantly with the 33
644
change of window size. Decreasing window size from 1.5m×1.5m to 1m×1m will
645
reduce ACHPFR by 19.38%~88.28%, while little influence outdoor ventilation of street
646
canyon. In general, ACHPFR is greater than ACHmean but smaller than the sum of
647
ACHmean and ACHturb for both outdoor and indoor ventilation.
648
Since the indoor-outdoor ventilation in shallow 2D street canyons(H/W=0.5-1)
649
are similar but become much worse in deep 2D streets as H/W=2-3 and extremely
650
weak as H/W=5, H/W=1 could be the optimized considering both indoor-outdoor
651
ventilation and land resources. Nevertheless, too large aspect ratio (e.g. H/W=5)
652
should not be recommended to avoid the two-main-vortex situations and ensure
653
required ventilation. As shown in Fig. A1d in Appendix, in deep streets with weak
654
indoor and outdoor airflow, the influence of buoyancy force induced by solar shading
655
and air-wall temperature difference will be further considered. In addition, the
656
realistic wind speed and directions may vary with time, so the impacts of unsteady
657
boundaries on indoor and outdoor ventilation will be further taken into account.
658
Although it still requires further investigations before providing practical
659
guideline for sustainable urban-built ventilation design, this paper provides an insight
660
and scientific foundation on integrated indoor-outdoor ventilation with various
661
effective ventilation indexes and proposes effective methodologies for indoor-outdoor
662
ventilation assessment in more complicated urban-built configurations.
34
663 664
Acknowledgments This study was financially supported by National Key R&D Program of China
665
[2016YFC0202206, 2016YFC0202205 and 2016YFC0202204], National Natural
666
Science Foundation--Outstanding Youth Foundation (No. 41622502), STINT (dnr
667
CH2017- 7271) and the National Natural Science Foundation of China (No.
668
51811530017 and 41875015) as well as the Key projects of Guangdong Natural
669
Science Foundation (No 2018B030311068).
670 671 672
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874
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876 877 878
Figure list
879
Fig. 1 (a) Details of the computational domain and boundary conditions, (b)
880
dimensions of the computational model and grids arrangements on the ground, (c) the
881
measured lines of the velocity profiles.
882 883
Fig. 2 Vertical profiles of Ux/Uref along lines at the centre section of building model
884
for windward and/or leeward single-sided ventilation: (a-b) x=-H/25, (c-d) x=H/2, (e-f)
885
x=3H/2.
886 887
Fig. 3 (a) Descriptions of computational domain and target street canyon; (b) Grid
888
arrangements with minimum size of 0.1m in Case [2, w1.5]. 46
889 890
Fig. 4 The illustration of the age of air, PFR, Qmean and Qturb calculation.
891 892
Fig. 5 Normalized velocity (U/Uref) and turbulent kinetic energy (k/ Uref) in (a-b) Case
893
[0.5, w1.5], (c-d) Case [0.67, w1.5], (e-f) Case [1, w1.5].
894 895
Fig. 6 The outdoor age of air (τ, unit:s) in (a) Case [0.5, w1.5], (b) Case [0.67, w1.5],
896
(c) Case [1, w1.5].
897 898
Fig. 7 (a) Velocity vector and normalized stream-wise velocity within and near the
899
rooms in all floors of leeward and windward buildings in Case [0.5, w1.5]. Indoor
900
ventilation indices in all leeward and windward rooms in Case [0.5, w1.5], Case [0.67,
901
w1.5], Case [1, w1.5]: (b) age of air, (c) ACHmean, (d) ACHturb, (e) ACHPFR.
902 903
Fig. 8 Normalized velocity (U/Uref) and outdoor age of air (τ, s) in (a-b) Case [1,
904
w1.5], (c-d) [2, w1.5], (e-f) [3, w1.5] respectively. Horizontal profiles of (g)
905
normalized velocity and (h) outdoor age of air (τ, unit:s) at z=1.5m.
906
47
907
Fig. 9 (a) Indoor age of air (τ, unit:s) and ventilation indices including ACHmean,
908
ACHturb, ACHPFR of all leeward rooms and windward rooms in (b) Case [1, w1.5], (c)
909
[2, w1.5], (d) [3, w1.5].
910 911
Fig. 10 (a) Flow field, (b) turbulent kinetic energy, (c) age of air (τ, unit:s) in outdoor.
912
(d) Indoor ventilation indices in all leeward and windward rooms in Case [5, w1.5].
913 914
Fig. 11 Normalized velocity (U/Uref) and outdoor age of air (τ, unit:s) in (a,c) Case [1,
915
w1.5] and (b,d) Case [1, w1] respectively.
916 917
Fig. 12 Comparisons of indoor age of air (τ, unit:s) between different window size in
918
(a) leeward rooms and (b) windward rooms as H/W=1-3. Percentage of ACH:
919
ACH(1m×1m) /ACH (1.5m×1.5m) in (c) H/W=1, (d) H/W=2, (e) H/W=3.
920 921
Fig. 13 (a) Comparison of flow field, (b) percentage of ACHPFR in H/W=5.
48
922
Appendix A. Flow pattern validation for 2D street canyon with H/W=2 and 3 by
923
scale-model outdoor experiments
924
As displayed in Fig.A1b, an outdoor scale-model filed experiments was carried
925
out by Zhang et al.[22] to study the flow patterns in two-dimensional (2D) street
926
canyon with various street aspect ratios (building height H=1.2 m; H/W=1,2,3; street
927
length L=12.5m>10H). For each type of streets canyon (H/W=1, 2, 3), a set of 3D
928
ultrasonic anemometers were used to measure the temporal profiles of velocity
929
components (Ux, Uy and Uz) and turbulence at five different heights (z=0.3, 0.6, 0.9,
930
1.44, 2.4 m) (Fig.A1b). The sampling rate was 20 Hz for all anemometers. As a
931
example, Fig.A1c presents the experimental profiles of stream-wise velocity (Ux, i.e.
932
perpendicular to the street axis) in street canyon with H/W=2 and 3. In both cases, the
933
wind-driven dynamic force dominates urban airflow and Reynolds number
934
independence requirement is fully satisfied, as the Reynolds number is large
935
(Re~1.5×105≫11000 as Uref~2.0 m·s-1) and buoyancy force is relatively weak (i.e.
936
Froude number Fr =
937
U ref 2 gH (∆T / Tref )
~10.2 as △T=10 K and Uref = 2.0m s-1).
As shown in Fig.A1c and A1d, it is obvious that regardless of aspect ratio , the
938
stream-wise velocities at z=0.25H are positive while those at z=0.75H and z=2H are
939
negative, confirming that there is only one main vortex in such 2D deep street
940
canyon(H/W=2 and 3) in the field measurement. The findings are consistent with the
941
flow patterns of CFD results in this paper. More detailed experimental setups can 49
942
referred to Zhang et al.[22].
50
(a)
(b)
(c)
Fig. 1 (a) Details of the computational domain and boundary conditions, (b) dimensions of the computational model and grids arrangements on the ground, (c) the measured lines of the velocity profiles.
1
experiment data CFD results by RNG k-ε model with 1.8 fine grid (0.05m×0.05m×0.05m) medium grid (0.1m×0.1m×0.1m) 1.6 coarse grid (0.2m×0.2m×0.2m) 1.4
2.0
1.2
1.2
experiment data CFD results by RNG k-ε model with fine grid (0.05m×0.05m×0.05m) medium grid (0.1m×0.1m×0.1m) 1.6 coarse grid (0.2m×0.2m×0.2m) 1.4 1.8
y/H
y/H
2.0
1.0
1.0
0.8
0.8
0.6
0.6 0.4
0.4
wind
0.2
-H/25
0.0 -0.4
-0.2
0.0
0.2
wind
0.2
0.4
0.6
-H/25
0.0
0.8
1.0
-0.4
1.2
-0.2
0.0
0.2
0.8
1.0
1.2
1.2
(b)
2.0
experiment data CFD results by RNG k-ε model with fine grid (0.05m×0.05m×0.05m) medium grid (0.1m×0.1m×0.1m) 1.6 coarse grid (0.2m×0.2m×0.2m) 1.4
2.0
1.8
1.8
1.2
1.2
experiment data CFD results by RNG k-ε model with fine grid (0.05m×0.05m×0.05m) medium grid (0.1m×0.1m×0.1m) 1.6 coarse grid (0.2m×0.2m×0.2m) 1.4
y/H
y/H
(a)
1.0
1.0
0.8
0.8
0.6
0.6 0.4
wind
0.2
wind
0.2
H/2 -H/2
0.0 -0.4
-0.2
0.0
0.2
0.4
0.6
0.8
H/2
0.0
1.0
1.2
-0.4
-0.2
0.0
0.2
U/Uref
(c)
0.6
0.8
1.0
0.6
0.8
1.0
(d)
experiment data CFD results by RNG k-ε model with fine grid (0.05m×0.05m×0.05m) medium grid (0.1m×0.1m×0.1m) 1.6 coarse grid (0.2m×0.2m×0.2m) 1.4
2.0
1.2
1.2
experiment data CFD results by RNG k-ε model with 1.8 fine grid (0.05m×0.05m×0.05m) medium grid (0.1m×0.1m×0.1m) 1.6 coarse grid (0.2m×0.2m×0.2m) 1.4
y/H
1.8
1.0
1.0
0.8
0.8
0.6
0.6 0.4
0.4
wind
0.2
-3H/2 3H/2 -0.2
0.0
0.2
0.4
U/Uref
wind
0.2
0.0 -0.4
0.4
U/Uref
2.0
y/H
0.6
U/Uref
U/Uref
0.4
0.4
0.6
0.8
1.0
1.2
3H/2
0.0 -0.4
-0.2
0.0
0.2
0.4
1.2
U/Uref
(e) (f) Fig. 2 Vertical profiles of Ux/Uref along lines at the centre section of building model for windward and/or leeward single-sided ventilation: (a-b) x=-H/25, (c-d) x=H/2, (e-f) x=3H/2.
2
(a)
(b) Fig.3 (a) Descriptions of computational domain and target street canyon; (b) Grid arrangements with minimum size of 0.1m in Case [2, w1.5].
3
Fig. 4 The illustration of the age of air, PFR, Qmean and Qturb calculation.
4
(a)
(b)
(c)
(d)
(e) (f) Fig. 5 Normalized velocity (U/Uref) and turbulent kinetic energy (k/Uref) in (a-b) Case [0.5, w1.5], (c-d) Case [0.67, w1.5], (e-f) Case [1, w1.5].
5
(a)
(b)
(c) Fig.6 The outdoor age of air (τ, unit:s) in (a) Case [0.5, w1.5], (b) Case [0.67, w1.5], (c) Case [1, w1.5].
6
(a)
(b)
7
8 7
Floor No.
6
ACHmean
0.26h-1
5
1.04h-1
4
1.02h-1
Leeward Windward
0.46h-1 3
Case [0.5,w1.5] Case [0.67,w1.5] Case [1,w1.5]
2 1 0
1
2
3 4 ACHmean (h-1)
5
6
7
8
(c) 8 7
Floor No.
6
ACHturb
5 4 3
Leeward Windward Case [0.5,w1.5] Case [0.67,w1.5] Case [1,w1.5]
2 1 0
4
8
12
16 20 ACHturb (h-1)
24
28
32
36
(d) 8 7
Floor No.
6 5
ACHPFR
4 3
Leeward Windward Case [0.5,w1.5] Case [0.67,w1.5] Case [1,w1.5]
2 1 0
1
2
3
4
5 6 7 ACHPFR (h-1)
8
9
10
11
12
(e) Fig. 7 (a) Velocity vector and normalized stream-wise velocity within and near the rooms in all floors of leeward and windward buildings in Case [0.5, w1.5]. Indoor ventilation indices in all leeward and windward rooms in Case [0.5, w1.5], Case [0.67, w1.5], Case [1, w1.5]: (b) age of air, (c) ACHmean, (d) ACHturb, (e) ACHPFR. 8
(a)
(b)
(c)
(d)
9
(e)
(f) 6
101
10
10
Normalized velocity at z=1.5m Case [1,w1.5] Case [3,w1.5] Case [2,w1.5] Case [5,w1.5]
Age of air at z=1.5m Case [1,w1.5] Case [2,w1.5]
Case [3,w1.5] Case [5,w1.5]
105
0
10
-1
10
-2
10
-3
10
-4
10
-5
H/W=5 Age of air (s)
U/Uref
H/W=1 H/W=2 H/W=3
104
H/W=3
103
H/W=2 H/W=5
-0.6 -0.5 -0.4 -0.3 -0.2 -0.1
0.0
x/W
(g)
0.1
0.2
0.3
0.4
0.5
H/W=1
2
10 0.6
-0.6 -0.5 -0.4 -0.3 -0.2 -0.1
0.0
0.1
0.2
0.3
0.4
0.5
x/W
(h)
Fig. 8 Normalized velocity (U/Uref) and outdoor age of air (τ, s) in (a-b) Case [1, w1.5], (c-d) [2, w1.5], (e-f) [3, w1.5] respectively. Horizontal profiles of (g) normalized velocity and (h) outdoor age of air (τ, unit:s) at z=1.5m.
10
0.6
(a) 8
7
Floor No.
6
5
Case [1,w1.5]
0.47h-1
ACHmean 4
3
2
leeward windward ACHturb leeward windward ACHPFR leeward windward
1 10-1
100
101
102
ACH (h-1)
(b)
11
Floor No.
16 15 14 13 12 11 10 9 8 7 6 5 4 3 2 1
Case [2,w1.5]
0.20h-1
ACHmean leeward windward ACHturb leeward windward ACHPFR leeward windward
10-1
100
101
102
-1
ACH (h )
(c) 24 22 20 18
0.19h-1
Floor No.
16 Case [3,w1.5]
14
ACHmean
12
leeward windward ACHturb
10 8
leeward windward ACHPFR
6 4
leeward windward
2 0 10-1
100
101
102
ACH (h-1) (d) Fig. 9 (a) Indoor age of air (τ, unit:s) and ventilation indices including ACHmean, ACHturb, ACHPFR of all leeward rooms and windward rooms in Case (b) [1, w1.5], (c) [2, w1.5], (d) [3, w1.5].
12
(a)
13
(b) 40
(c) Case [5,w1.5] ACHmean
36
leeward windward ACHturb
32 28
leeward windward ACHPFR
Floor No.
24 20
leeward windward
16 12 8 4 0 10-3
10-2
10-1
100
101
102
-1
ACH (h )
(d) Fig. 10 (a) Flow field, (b) turbulent kinetic energy, (c) age of air (τ, unit:s) in outdoor. (d) Indoor ventilation indices in all leeward and windward rooms in Case [5, w1.5].
14
(a)
(b)
(c) (d) Fig.11 Normalized velocity (U/Uref) and outdoor age of air (τ, unit:s) in (a,c) Case [1, w1.5] and (b,d) Case [1, w1] respectively.
15
(a)
(b)
16
8 7 Percentage of ACH as H/W=1: ACH(1m×1m) / ACH(1.5m×1.5m)
Floor No.
6 5
ACHmean
4
leeward windward ACHturb
3
leeward windward ACHPFR
2
leeward windward
1 0
10
20
30
40 50 60 70 ACH(1m×1m) / ACH(1.5m×1.5m)( %)
80
90
100
(c) 16 14 12
Percentage of ACH as H/W=2: ACH(1m×1m) / ACH(1.5m×1.5m) ACHmean leeward windward ACHturb
Floor No.
10 8
leeward windward ACHPFR
6 4
leeward windward
2
0
10
20
30
40 50 60 70 ACH(1m×1m) / ACH(1.5m×1.5m)( %)
80
90
100
(d) 24 22 20 18
Percentage of ACH as H/W=3: ACH(1m×1m) / ACH(1.5m×1.5m)
Floor No.
16
ACHmean
14
leeward windward ACHturb
12 10
6
leeward windward ACHPFR
4
leeward windward
8
2 0
10
20
30
40 50 60 70 ACH(1m×1m) / ACH(1.5m×1.5m)( %)
80
90
100
(e) Fig. 12 Comparisons of indoor age of air (τ, unit:s) between different window size in (a) leeward rooms and (b) windward rooms as H/W=1-3. Percentage of ACH: ACH(1m×1m) /ACH (1.5m×1.5m) in (c) H/W=1, (d) H/W=2, (e) H/W=3. 17
(a) 40
Percentage of ACHPFR in H/W=5:
36
ACH(1m×1m) / ACH(1.5m×1.5m)
32
leeward
28
windward
Floor No.
24 20 16 12 8 4 0 0
25
50
75
100
125
150
175
ACH(1m×1m) / ACH(1.5m×1.5m) (%)
(b) Fig. 13 (a) Comparison of flow field, (b) percentage of ACHPFR in H/W=5.
18
(a)
19
Location of 3D supersonic anemometer
z=2.4m=2H
z=1.44m=1.2H
H=1.2m
z=0.9m z=0.6m z=0.3m=0.25H (b)
20
-5
AR=H/W=2 (H=120cm)
-4
u velocity (North-South) at 240cm 90cm 30cm
u (m/s)
-3
-u=south wind
-2
z=2H
-1.747m/s
-1
N
S -0.162m/s 0.145m/s
0
z=0.25H
1 10 52 35 18 00 43 26 09 51 34 32: 31: 31: 31: 31: 30: 30: 30: 29: 29: 10: 10: 10: 10: 10: 10: 10: 10: 10: 10:
time -5
AR=H/W=3 (H=120cm) -4
u velocity (North-South) at 240cm 90cm 30cm
-u=south wind
u (m/s)
-3
z=2H
-2 -1
S
N
-0.045m/s
0
z=0.25H 1 :50 :56 14
:0 :57 14
7
:24 :57 14
:42 :57 14
:59 :57 14
:16 :58 14
:34 :58 14
:51 :58 14
:0 :59 14
8
:25 :59 14
time
(c)
(d) Fig. A1. (a) Model setups of scale-model outdoor experiment on street canyon models with H/W=1, 2 and 3. (b) View of 3D ultrasonic anemometer locations. Example profile of streamwise velocity (Ux, m s-1) in street canyon with (c) H/W=2 and 3. (d)Future outdoor field measurement of urban-built ventilation by coupling indoor and outdoor airflow. 21
Table.1 Result of the flow statistical analysis of simulation values against with wind tunnel data from [64] x=-H/25 Fine grid
Windward single-sided ventilation
Leeward single-sided ventilation
x=H/2
Medium grid Coarse grid
Fine grid
x=3H/2
Medium grid Coarse grid
Fine grid
Medium grid Coarse grid
NMSE
0.017
0.017
0.017
0.019
0.023
0.015
0.015
0.015
0.018
FB
-0.116
-0.120
-0.122
-0.022
-0.008
-0.034
-0.101
-0.107
-0.107
R
0.998
0.998
0.997
0.986
0.982
0.988
0.997
0.997
0.996
NMSE
0.034
0.034
0.036
0.073
0.061
0.080
0.020
0.020
0.022
FB
0.206
0.207
0.210
0.261
0.249
0.239
0.162
0.170
0.175
R
0.999
0.998
0.997
0.963
0.971
0.956
0.997
0.997
0.996
Table.2 Case studies investigated
H/W
H(m)
0.5 0.67
W(m) 48
24
1
Window size (Opening ratio)
36
1.5m×1.5m (20.83%) 0.3m
24
0.8m 1.25m
2
48
3
72
24
Window
0.9m 4m
5
1m×1m (9.26%)
1.25m
1.5m
Window
1.5m
2.7m
0.9m 4m
120
Different cases with various building configurations are named as Case [H/W, w(window size)]. Where ‘H/W’ represents the various building heights and street canyon width. ‘w(window size)’ is employed to discriminate the two window size. For example, when building heights and street canyon width of 24m and H/W=1, window size=1.5m×1.5m is named as Case [1, w1.5].
Table. 3 Air change rates across street roof due to mean flows (ACHmean) and turbulent diffusion (ACHturb), and the overall ventilation capacity (ACHPFR) in window size 1.5m×1.5m, H/W=0.5, 0.67, 1, 2, 3,5 H/W
H
0.5 0.67
24m
W
ACHmean
ACHturb
ACHmean+ ACHturb
ACHPFR
48m
6.07
34.59
40.66
14.69
36m
7.98
22.94
30.92
13.95
5.93
15.15
21.08
10.78
1.51
17.11
18.62
6.08
1 2
48m 24m
3
72m
1.02
11.52
12.54
3.96
5
120
0.61
6.91
7.52
0.76
Table. 4 ACHPFR and ACHmean, ACHturb across street roof due to mean flows and turbulent diffusion in window size 1m×1m and 1.5m×1.5m, H/W=0.5, 0.67, 1, 2, 3,5 Case Name
ACHmean
ACHturb
ACHmean+ ACHturb
ACHPFR
[ 0.5 ,w1.5]
6.07
34.59
40.66
14.69
[ 0.5 ,w1]
5.88
36.48
42.36
17.55
[0.67,w1.5]
7.98
22.94
30.92
13.95
[0.67,w1]
7.98
23.88
31.86
15.11
[1,w1.5]
5.93
15.15
21.08
10.78
[1,w1]
6.01
14.83
20.84
10.58
[2,w1.5]
1.51
17.11
18.62
6.08
[2,w1]
1.51
17.11
18.62
6.09
[3,w1.5]
1.02
11.52
12.54
3.96
[3,w1]
1.02
11.52
12.54
3.97
[5,w1.5]
0.61
6.91
7.52
0.76
[5,w1]
0.61
6.91
7.52
0.91