Quantitative Estimation of Land Surface Temperature and Its Relationship with Land Use/Cover around Sonipat District, Haryana, India "2279

Urbanization is a human activity that changes the surface of the earth and degrades the surroundings of major cities all over the world. The problem is more acute in many developing cities with a high population and rapid economic growth. The present study focuses on the effect of land use/land cover (LULC) on the land surface temperature (LST) in Sonipat district, Haryana India. The LULC derived from multispectral satellite data of two periods, 2011 and 2021, indicated a significant increase in urban areas by (3%) and barren and fallow land by (7%), whereas crop land has decreased by (11%) and water bodies have remained the same, in comparison with 2011. The LST, derived from a thermal infrared sensor, showed an overall increase in LST by 5 ◦C from 2011 to 2021. The results also showed that there was a significant LST difference across the LULC units. Pearson’s correlation analysis results showed an inverse correlation between LST and NDVI across urban areas and other land use classes, whereas a positive correlation over water bodies were observed in the study area. Therefore, LST and its relationship with NDVI via LULC, is a key parameter to investigate the thermal glitches in an urban ecosystem. This can be adopted as a useful tool for analyzing the environmental influence on the ecological unit.


Introduction
The implications of the changes in land use and land cover affect all regions and sectors. Land cover is a remarkable feature on the earth's surface that is influenced by several present-day human activities. Climate is greatly affected by the human activities through changes in land use/land cover (LULC) at spatio-temporal level [1], such as growing food, cutting trees, building cities or covering the physical characteristics of the land surface in other ways, e.g., comprising grain crops, trees, or concrete [2]. This change in land can have positive and negative effects on human well-being [3]. The review of the link between land surface temperature (LST) and land use/cover has immense relevance in understanding the changing dynamics of the environment [4]. Various factors contribute to LST, varying from direct to indirect. The most visible effect of anthropogenic activities, at regional and local levels, are therefore changes in the LULC, which changes the surface energy balance, in turn influencing the surface temperature and changing the microclimate of the region [5]. Previously, scientists used the meteorological temperature of weather stations, which was discontinuous and necessitated extrapolation [6]. Today, however, the LULC change can be measured continuously over time and space, utilizing remote sensing techniques [7]. Remote sensing is a relatively cost effective and easier way of achieving up-to-date data about a large geographic area, and providing data about remote areas that are inaccessible [8]. The focus of this study was to investigate the connection between LULC and LST, defined by the temporal and spatial variations in the Sonipat District of Haryana. A quantitative analysis of the link between LULC and LST showed the cause-effect analysis and the statistical relationship between these two parameters, and the land surface temperature rises in one decade.

Study Area
The Sonipat district was chosen as the study area for this work. It falls under the National Capital Region. The district headquarters are in the city of Sonipat. Sonipat borders the states of Delhi and Uttar Pradesh. The overall climate of the Sonipat district remains dry with a hot summer, cold winter, and a rainy season for 3 months in July, August, and September. Winter starts in December. January is the coldest month, and the summer months are May and June with the maximum temperatures. Light rains appear in December, January, and February.

Object-Based LULC Classification in Google Earth Engine (GEE)
The general steps for creating a LULC classification are summarized in a Figure 1. however, the LULC change can be measured continuously over time and space, utilizing remote sensing techniques [7]. Remote sensing is a relatively cost effective and easier way of achieving up-to-date data about a large geographic area, and providing data about remote areas that are inaccessible [8]. The focus of this study was to investigate the connection between LULC and LST, defined by the temporal and spatial variations in the Sonipat District of Haryana. A quantitative analysis of the link between LULC and LST showed the cause-effect analysis and the statistical relationship between these two parameters, and the land surface temperature rises in one decade.

Study Area
The Sonipat district was chosen as the study area for this work. It falls under the National Capital Region. The district headquarters are in the city of Sonipat. Sonipat borders the states of Delhi and Uttar Pradesh. The overall climate of the Sonipat district remains dry with a hot summer, cold winter, and a rainy season for 3 months in July, August, and September. Winter starts in December. January is the coldest month, and the summer months are May and June with the maximum temperatures. Light rains appear in December, January, and February.

Object-Based LULC Classification in Google Earth Engine (GEE)
The general steps for creating a LULC classification are summarized in a Figure 1.

Estimation of LST
LST was quantified using the Landsat 8 and 5 thermal bands. This simply requires applying a set of equations of a mono-window algorithm through a raster calculator with ArcMap.

NDVI Calculations
The NDVI ratio is the normalized difference between near-infra-red (NIR) and red color band, which can be calculated using the formula below:

LULC Classification
The LULC classification for the Sonipat district obtained from the analysis using Sentinel and Landsat data is shown in Figure 2a

Estimation of LST
LST was quantified using the Landsat 8 and 5 thermal bands. This simply requires applying a set of equations of a mono-window algorithm through a raster calculator with ArcMap.

NDVI Calculations
The NDVI ratio is the normalized difference between near-infra-red (NIR) and red color band, which can be calculated using the formula below:

LULC Classification
The LULC classification for the Sonipat district obtained from the analysis using Sentinel and Landsat data is shown in Figure 2a

The Relationship between LST and NDVI by Land Use/Cover Types
Karl Pearson's correlation coefficients were computed between LST, with NDVI for the LULC classes. Table 1 shows the correlation between LST and NDVI for LULC types for the study area (Figures 3 and 4).

The Relationship between LST and NDVI by Land Use/Cover Types
Karl Pearson's correlation coefficients were computed between LST, with NDVI for the LULC classes. Table 1 shows the correlation between LST and NDVI for LULC types for the study area (Figures 3 and 4).

The Relationship between LST and NDVI by Land Use/Cover Types
Karl Pearson's correlation coefficients were computed between LST, with NDVI for the LULC classes. Table 1 shows the correlation between LST and NDVI for LULC types for the study area (Figures 3 and 4).   All the correlation coefficients were significant, at a 0.01 level of significance, and the (n) values in Table 1 show the total numbers of a polygon taken for selected LULC types for calculating the correlation between LST and NDVI. NDVI values tended to be negatively correlated with LST of all LULC, except for waterbodies for both the years. In 2011, the strongest negative correlation between LST and NDVI was found over the others: fallow/barren (-0.846), followed by cropland (−0.759) and urban and built-up (−0.341). In the 2021, the same trend of correlation between NDVI and LST was observed, LULC-wise.  All the correlation coefficients were significant, at a 0.01 level of significance, and the (n) values in Table 1 show the total numbers of a polygon taken for selected LULC types for calculating the correlation between LST and NDVI. NDVI values tended to be negatively correlated with LST of all LULC, except for waterbodies for both the years. In 2011, the strongest negative correlation between LST and NDVI was found over the others: fallow/barren (-0.846), followed by cropland (−0.759) and urban and built-up (−0.341). In the 2021, the same trend of correlation between NDVI and LST was observed, LULC-wise.

Conclusions
This study examined the LULC changes in the Sonipat District of Haryana from 2011 to 2021. The results indicated that urban and built-up land, and the supporting infrastructure, has expanded by 3%, whereas cropland has declined by 11%. Fallow/barren land has increased by 7%. The observed changes in LULC were largely attributed to rapidly growing infrastructure and poor land-use planning. Changes in LULC were accompanied by changes in LST. An identification of such hotpots in the urban environment can be useful in strategic planning for more resilient and sustainable cities.