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Urban areas occupy 3% of ice free land area but are cumulatively responsible for emission of
75% of Green House Gases (GHGs), therefore contribute significantly in global warming.
Developing regions are expected to house nearly 90% of future growth by 2050 with 35% of the
growth concentrated in just three countries – India, China and Nigeria. Apart from the high
pressure of urban growth in these regions, inadequate infrastructure and lack of implementation
of planned urban development is going to exacerbate a number of climatic and environmental
problems such as heat stress, air pollution, global warming, and increased use of artificial energy,
storm water runoff, and overall environmental degradation in these regions. Increased frequency
of natural disasters and extreme weather events in these regions calls for scientific understanding
of impact of urban areas on climate and vice versa to ensure sustainable development and to
mitigate climate change impacts.
Lack of information on Urban Canopy Parameters (UCPs) is considered as one of the major
reason behind limited urban climate research and modeling in developing regions. Availability
of detailed information on UCPs is critical for urban climate studies as well as for implementation
of recent Urban Canopy Models (UCMs) for scientific understanding of climatic phenomenon in
these regions. Urban Canopy parameters define those characteristics of urban built form which
has direct or indirect bearing on urban climate. Most of the studies in developed world have
utilised 3D GIS database either developed from ground survey or remotely sensed data such as
Aerial Photographs, Airborne LiDAR and high resolution InSAR data for retrieval of UCPs.
However, nonexistence of 3D GIS database and non-availability of above RS datasets in
developing regions necessitates to employ widely available alternative datasets for retrieval of
UCPs. Hence, this study focuses on retrieval of UCPs by employing Very High Resolution
Satellite (VHRS) optical stereo data in highly dense and complex urban environment of Delhi,
India. Not many studies have explored the use of VHRS data for extraction of UCPs, however,
the repeat availability, extensive coverage and low cost makes this data much suitable for
generation of UCPs. It further dwells into the demonstration of retrieved UCPs for urban climatic
applications in the study region.
Although, the impact of 3D UCPs on urban climate is significant and it is considered as one of
the main contributor to UHI phenomenon. However, a very few studies have analyzed
relationship of 3D UCPs such as building height, frontal area index, floor area ratio and sky view
factor with spatially variable climate indicators such as RS derived Land Surface Temperature
Characterization of urban canopy parameters and their relationship with spatially variable urban climate indicators
Kshama Gupta, 12910002, Ph.D. (2018-2019), IITR vi
(LST) and it remained largely unexplored even for the regions having highly planned urban
infrastructure Hence, the study also aims to analyze the relationship of generated UCPs especially
3D UCPs with spatially variable climate indicators.
The Delhi Urban Agglomeration (UA) , which is the third largest UA of the world and largest
UA of the India, has been selected as the study area due to its sprawled, highly heterogeneous
and complex development characteristics of urban built form, high air pollution levels, high
anthropogenic pressure and challenging composite climate.
A novel step-by step methodology have been developed in this study to extract key UCPs such
as building height, building surface fraction and wall area ratio from VHRS optical stereo data
in complex urban environment of study region. Photogrammetric processing of VHRS optical
stereo data (Pleiades1A/1B) have been carried out to obtain Digital Surface Model (DSM),
Digital Terrain Model (DTM), normalized DSM (nDSM) and ortho images which have been
further employed to retrieve key UCPs . The nDSM contains the height of all above ground
objects that includes vegetation, building and all elevated objects. The key UCPs thus retrieved
have been employed to compute other UCPs in complex urban environment of Delhi. The
validation of key UCPs derived through VHR optical stereo images have shown good accuracy
with ground measurements. The Mean error, RMSE and MAE for building heights has been
found to be less than 1 m and Cumulative Random Error (CRE) ranged from 2.5% to 9.9% in
high rise to low rise development respectively. The other key UCPs such as Land Use Land cover
(Accuracy ~ 85%), Building Surface Fraction (BSF) (Accuracy ~84.27%) and SVF (RMSE-
0.046 and correlation-0.94) also displayed reasonable accuracy. It renders VHR optical stereo
data a good choice for generation of UCPs especially in a highly heterogeneous urban built-up
environment.
Characterization of UCPs in the study region revealed highly dense, heterogeneous and sprawled
character which has significant impact on urban climate. High Building Surface Fraction value
(>0.6) in more than 35% of built-up area has shown high building density while distribution of
Mean building height in study area revealed a highly sprawled character of the study region as
nearly 96% of buildings falls in the height range of 3 -21m. Only 4% of buildings have height
more than 21m and building with more than 30 m in height are very few and are mainly found in
the peripheral region. Nearly 50% of built-up area has standard deviation of building height more
than 2 which is indicative of highly heterogeneous and complex development in the study region.
Characterization of urban canopy parameters and their relationship with spatially variable urban climate indicators
Kshama Gupta, 12910002, Ph.D. (2018-2019), IITR vii
Generated UCPs were further utilized to demonstrate few applications of UCPs such as
Ventilation assessment and GIS based Local Climate Zone (LCZ) map which can be utilized to
understand and characterize the urban climate phenomenon as well as for urban climate research
and modeling. The pixel based classification methodology proposed by World Urban database
and Access Portal Tool (WUDAPT), which have been widely applied to collect data on urban
form and function by utilizing free RS datasets and GIS software, provided poor accuracy
(overall accuracy -49.43% and kappa ~0.46) of LCZ classification in the complex urban
environment of study area. However, GIS based LCZ maps generated from application of
detailed UCPs displayed high accuracy of classification (overall Accuracy >85% and kappa
~0.86) not only for the entire classification but even for each LCZ class.
Analysis of ventilation path maps showed merely 17% of built-up area as ventilated area. More
than 45% area falls under weak or blocked ventilation and nearly 38% area is partially ventilated.
The ventilation map of Delhi clearly brings out the lack of adequate ventilation in the study area
which makes the city prone to severe air pollution in winter season and high UHI conditions. The
unavailability of proper ventilation corridors retards the air flow within the built-up area resulted
in very weak circulation and thereby restricts the continuous flow and exchange of fresh air in
these regions.
The spatially variable climate indicators (LST, temperature at 2m and wind speed at 10m) for the
assessment of relationship with UCPs, ventilation assessment and LCZ map have been obtained
from Landsat 8 and WRF simulations. The primary results of UCPs-LST relationship revealed
strong correlation with 2D UCPS while 3D UCPs other than building height and surface
roughness length did not show strong correlation. For 3D UCPs, complete temperature data cube
in horizontal as well as vertical direction may help in analyzing the relationship. The key UCPs
which exhibited strong relationship with LST were utilized to analyze the variability of Surface
Urban Heat Island (SUHI) across all four seasons in a year. SUHI intensities was found to be
maximum during winter season while lowest during post-monsoon season across all UCPs.
The ventilation–LST relationship in study area revealed an interesting finding that well ventilated
area has mean lower temperature and higher mean wind speed as compared to weak ventilation
area. The difference in the mean temperature of both the classes were highest in monsoon season
which raises serious concerns regarding the thermal comfort in built-up area. Although, the study
area is mostly dry during the year, but, in monsoon season humidity level is more than 80% and
slight increase in temperature leads to substantial increase in thermal stress. Analysis of GIS
Characterization of urban canopy parameters and their relationship with spatially variable urban climate indicators
Kshama Gupta, 12910002, Ph.D. (2018-2019), IITR viii
based LCZ map with LST of all four seasons revealed that all the built-up LCZ classes other than
open low rise and sparsely built LCZ exhibited more temperature than mean LST is all seasons.
However, out of all built-up classes’ heavy industry, large low rise and compact low rise
exhibited maximum deviations from mean LST for most of the seasons.
The study recommends the use of VHRS optical stereo data for retrieval of 2D as well as 3D
UCPs in complex and heterogeneous urban environment of developing regions. This is the next
best suitable alternative available in the absence of Airborne LiDAR and aerial images data in
the developing regions. Similarly, study also recommends use of retrieved UCPs for ventilation
assessment and GIS based LCZ map in developing regions. Availability of information on UCPs
has substantial potential for understanding the climate characteristics of urban areas in
developing regions, carrying out urban climate research, improved modeling of urban climate
phenomenon and climate oriented urban planning to mitigate climate change impacts and to
ensure sustainable development. |
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