Modelling the Impact of Land Cover Change on Urban Heat/Cool Island of Bengaluru Metropolitan City
Date
2023
Authors
Govind, Nithya R
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute Of Technology Karnataka Surathkal
Abstract
Urbanization has emerged as the most drastic and irreversible form of human-induced
landscape change. Rise in temperature in urban area leads to high building energy
consumption and degraded environmental qualities in the built environment. Hence,
Urban Heat Island (UHI) effect has emerged as a key research top in the field of urban
ecology and urban climatology. In most of the developing countries, man-made
developments in the environment have led to the growing demand to contextualize the
Land Use Land Cover (LULC) changes and Land Surface Temperature (LST)
variations. Due to the modification in the surface properties of the cities, a difference
in energy balance between the cities and its non-urban surroundings is observed. The
present study was focussed on the analysis of spatial and temporal patterns of LULC
and LST and its interrelationship in Bengaluru Urban district, India during the period
from 1989 to 2017 using remote sensing data. Bengaluru is one of the rapidly growing
cities in India and there is an urgent need for investigating the spatio-temporal patterns
of LULC and LST in the region. The datasets used for the study mainly comprises of
Landsat images and MODIS data from 1989 to 2020.
The land cover maps of the study area were prepared for the years 1989, 1994, 2001,
2005, 2014 and 2017 using supervised classification. Intensity analysis was performed
for the interval to analyse the LULC change and identify the driving forces. The impact
of land cover change on LST was assessed using hot spot analysis (Getis-Ord Gi*
statistics). The results of this study show that (a) dominant land cover change
experienced is the increase in urban area (approximately 40%) and the rate of land cover
change was faster in the time period 1989-2001 than 2001-2017. (b) the major transition
witnessed is from barren and agricultural land to urban (c) Over the period of 28 years,
LST patterns for different land cover classes exhibit an increasing trend with an overall
increase of approximately 6ºC and the mean LST of urban area increased by about 8ºC
(d) LST pattern change can be effectively analysed using hot spot analysis (e) As the
urban expansion occurs, the cold spots have increased, and it is mainly clustered in theurban area. It confirms the presence of an urban cool island effect in Bengaluru urban
district.
LST and land cover interaction was modelled in a comprehensive and efficient way in
the semi-arid tropical metropolitan city. Even though this interaction has been discussed
widely in many literatures, the study facilitates the modelling and parameterization of
LST and urban growth in an adequate way. Spatial distribution of LST and land cover
types of the area were examined in the circumferential direction, and the contribution
of land cover classes on LST was studied over 28 years. Urban growth and LST were
modelled
using
Landsat
and
MODIS
(Moderate
Resolution
Imaging
Spectroradiometer) data for the years 1989, 2001, 2005 and 2017 based on the
concentric ring approach. The study provides an efficient methodology for modelling
and parameterization of LST and urban growth by fitting an inverse S-curve into Urban
Density (UD) and mean LST data. In addition, Multiple Linear Regression (MLR)
models which could effectively predict the LST distribution based on surface area ratios
were developed for both day and night time. Further, the relationship between land
cover types such as urban, vegetation, water and LST is determined for different years
emphasizing the impact of land cover change on the daytime and night time surface
heating. The non-linear relationship between surface area ratios and LST was
established using a hybrid Particle Swarm Optimization - Support Vector Regression
(PSO-SVR) model for the years 1989, 2001, 2005 and 2017.
Based on the analysis of remotely sensed data for LST, it is observed that over the years,
urban core area has increased circumferentially from 5 km to 10 km, and the urban
growth has spread towards outskirts beyond 15 km from the city centre. As urban
expansion occurs, the area under the study experiences an expansive cooling effect
during day time; at night, an expansive heating effect is experienced in accordance with
the growth in UD in the suburban area and outskirts. The regression models that were
developed have relatively high accuracy with R2 value of more than 0.94 and could
explain the relationship between LST and land cover types. The study also revealed that
there exists a negative correlation between urban, vegetation, water body and LST
during day time while a positive correlation is observed during night.The values of the statistical indices prove the feasibility and efficacy of PSO algorithm
in tuning the hyperparameters of SVR. The Hybrid PSO-SVR model was built on the
tuned hyperparameters for modelling LST with different surface area ratios at different
time frames. For surface area ratio, R2 value in the range of 0.94 and 0.97 was obtained
for MLR and Hybrid PSO-SVR model respectively.
The spatio-temporal variation of urban surface characteristics and its relationship with
LST was also modelled over the period from 1989 to 2017. Remote sensing indices
such as NDVI (Normalized Difference Vegetation Index), NDWI (Normalized
Difference Water Index), and NDBI (Normalized Difference Built-up Index), was
determined from Landsat images for the years 1989, 2001, 2005 and 2017. Linear
relationship between LST and these remote sensing indices were studied by employing
MLR technique. Further, the proposed Hybrid PSO-SVR model was applied to the
datasets to predict the values of LST based on these remote sensing indices.
Hypothetical scenarios were introduced in the prediction to assess the impact of change
in vegetation and water bodies on LST. Temporal variation of urban heat anomaly of
the region over the period of study was also investigated.
NDBI has drastically increased in the year 2017 which is caused by the increase in
barren land and urban areas while NDVI and NDWI has decreased over the years.
Higher values of NDBI are scattered in the outskirts while higher NDVI and NDWI
values are distributed in the urban centre. R2 value in the range of 0.80 and 0.85 was
obtained for MLR and Hybrid PSO-SVR model respectively. Hybrid PSO-SVR model
proved to be effective in establishing the relationship between LST and urban surface
characteristics, NDVI, NDBI and NDWI and in predicting the future LST. From the
hypothetical scenario analysis, it can be concluded that introduction of vegetation and
water bodies in the suburban and urban fringes will reduce the difference in LST
between urban and rural areas. The magnitude of urban heat anomaly can be curtailed
by developing green corridors and artificial lakes in the suburban and urban fringes of
Bengaluru.Thus, this study could assist urban planners and policymakers in understanding the
scientific basis of urban heating effect and predict LST for the future implementation
of green infrastructure. The findings of this work can be used as a scientific basis for
the sustainable development and land use planning of the region in the future. The
proposed methodology could be applied to other urban areas for quantifying the
distribution of LST and different land cover types and their interrelationships.
Description
Keywords
Land use land cover, Land surface temperature, Intensity analysis, Urban cool island