1. Introduction
Land use/land cover (LULC) change associated with urbanization is the important cause of global climate change and often results in remarkable urban heat island (UHI) effects, which will influence the regional climate and socio-economic development [
1,
2]. Qualitative studies on the correlation between LULC and land surface temperature (LST) help us in appropriate land use planning and UHI mitigation [
3]. Numerous studies have been devoted to the effect of LULC change on UHI effects and possible mitigation strategies [
4,
5]. By the Landsat Enhanced Thematic Mapper Plus (ETM+) onboard Landsat 7 on July 2001 and the LULC classification from Rhode island GIS, the spatial distribution of LULC and the daytime LST in Providence were identified. The densely populated residential districts, commercial and industrial areas represent urban heat islands. On an average, the summertime land surface temperature is 20 °C higher than in the surrounding suburban areas and 13 °C higher than in neighborhoods with trees. The highest mean LST of 32.5 °C is observed in mixed industrial areas, followed by industrial area and commercial with the range of 31–32 °C. Jusuf
et al. investigated the influence of various LULC types on UHI in Singapore [
6]. The results showed that the land use influenced urban temperature. During daytime, land surface temperature (LST) decreased from industrial, commercial, airport, residential to parks. However, during the nighttime, the order is commercial, residential, park, industrial, and airport. Weng
et al. utilized landscape metrics and assessed the impact of LULC pattern on LST, and found that LST is positively correlated with impervious surface fraction but negatively correlated with the green vegetation fraction [
7].
Generally, the above studies have shown that urban heat islands are closely related to urban land use structure and construction pattern and urban green space, contrary to impervious surfaces, form urban cold islands and help weakening the urban heat island effect [
8,
9]. Therefore, many scholars from the perspective of geography, meteorology and biology have elaborated the cooling mechanism of urban green space and proposed appropriate urban planning frameworks for UHI mitigation.
However, urban green spaces in a significantly heterogeneous matrix have a more complex external environment [
10]. In those cases some green patches present higher temperature than other patches and would not have a conspicuous cooling effect. Some recent studies have confirmed the above phenomenon. By means of a combination of dynamic monitoring and meteorological measurements for greenery itself and its neighborhood, Ge and Zhou described the pattern of heat islands and green islands of Shanghai city, China, and revealed that with the increasing of urban green space area, the percentage of low-temperature areas of most green patches is rising, the percentage of moderate temperatures declining, and the percentage of high temperature percentage sharp declined. The “instability” of the green cooling effect is caused by the unique heat sources around the green patch [
11]. The phenomenon of high temperature was primarily due to existing unique heat sources around those green patches which cause the instability of the green cooling effect. Su and Yang assessed the association of urban land use types and their surface temperature and found that for the green patches of the same size, the neighborhood landscape matrix affect their cooling effect, and those green patches trapped in buildings have a poor cooling effect [
12]. Lin
et al. found that green spatial structure factors such as green land area, forestry and green growth quantity, can influence the characteristic of ecological fields to a certain extent [
13]. Under the same or similar conditions, when the green land area reached a certain area, the scope of lowering temperature and raising humidity per unit area became lower with the further increase of the green areas. The system exchanges between the green land and non-green land are not only controlled by the plant leaf surface index but also influenced by the area, geometric distribution, forestry, growth yield of the green land, and the environmental and climate factors around the green land.
Previous studies have shown that urban green space, contrary to impervious surfaces, form urban cold islands and help to weaken the urban heat island effect. However, urban green spaces in a significantly heterogeneous matrix have a more complex external environment and then some green patches show unusual temperatures [
14]. Nanjing, which has experienced the fastest urbanization rate in China, is a typical place to study the UHI since it was usually referred to as one of Chinese ‘four-big stove’ cities (Nanjing, Wuhan, Chongqing and Nanchang, characterized by more hot days (over 37 °C) in summer) in the past decade. The paper aims to: (1) identify high temperature areas (HTAs) and normal temperature areas (NTAs) of the green patches and (2) elaborate the effect of its buffer environments on the formation of high temperature parts based on the analysis of surface temperature structure of green patches.
2. Data and Methods
Nanjing city (31o14′–32o17′N, 118o21′–119o14′E) belongs to the moist monsoon climate area of subtropical zone at 15.3 °C of average temperature of the whole year. It is an important comprehensive industrial base and hub of communications in eastern China.
Figure 1.
The study area and greenery system.
Figure 1.
The study area and greenery system.
It has grown rapidly and has a heavy industrial structure such as the petrochemical industry, electronic information, biological medicine, automobile and machinery. Over 55% of the whole area is covered by mountain forest and water surfaces. The Yangtze River is next to the west of Nanjing and passes through the study area, Nanjing metropolitan area (
Figure 1). As one of the YRD’s three central cities (Shanghai, Nanjing, Hangzhou), Nanjing was usually taken as one of Chinese ‘4-big stove’ cities in the past decade. Recently Nanjing metropolitan area permits planning for an integrated green space network, aiming at flexibility for future urban expansion and environmental benefits.
2.1. Underlying Surface Derivation
Ridd obtained the composition of underlying surface components within the pixels of remote sensing images and analyzed water-heat distribution and material-energy exchange process in land use [
15]. This paper used Landsat TM images with 30-meter resolution of 5 July 2009, the Chinese Resource No.2 Image (CRSI) for 2009, topographic map of 1969 in the Nanjing city and linear spectral mixture model and under remote sensing image processing software ENVI 4.7, the modified mid-infrared normalized water index (MNDWI) and water mask are accomplished by the four steps from transforming the minimum noise component to calculating the pure pixel index to collecting the terminal class to decomposing linear spectral models and accuracy evaluation. Using the first three bands based on minimum noise separation, four kinds of end-members such as vegetation, high albedo, low albedo and soil for mixed spectral decomposition were selected and also the impervious, water, green and bare soil and others were extracted. The paper randomly selected 154,351 sample points on the original image and made an accuracy assessment in ENVI4.7. The overall accuracy of the linear spectral mixture decomposition method to extract impervious surface is more than 86.24% and kappa coefficient is 0.77.
2.2. Surface Temperature (ST) Retrieval
The image was taken at about 11 a.m. on a sunny and calm day. ST retrieved by the thermal infrared band can reflect the real and effective surface temperature under normal weather conditions. By using the mode of brightness temperature, the quantitative relationship between the grey value of thermal infrared band of TM images and the pixel brightness temperature of land surface material was obtained [
12,
16]. Thus, the concept of UHI used in this study is the surface UHI or SUHI.
The heat sources for the surface temperature are mainly from solar radiation and artificial heat sources, and thermodynamic and biological characteristics of surface material lead to differences of the endothermic, heat storage and dispersion capacity of heat sources. Thus, different urban land uses and underlying surfaces generally present a unique surface temperature range, such as the impervious surfaces present heat islands, greenery and water surfaces relatively form the cold islands in cities. However, the diversification of urban landscape confined to a limited urban area inevitably leads to a spatially compact but fragmented pattern. To maximize economic benefits, green patches are frequently decomposed and start to get closer to the impervious surfaces. Accordingly, the pattern characteristics of interfered green patch affect its cooling effect, such as its average temperature is reduced, or the high temperature part within it increases. Such temperature variations tend to occur in the adjacent parts to green-impervious surface or other surface types, and mainly are caused due to differences in their respective thermodynamic and biological characteristics. Thus, the impervious surface around the greenery may be regarded as unique heat sources, and then the temperature advection occurs in the bordering areas between them and results in the surface temperature differences.
The paper aim to identify high temperature parts of the green patch and elaborate the effect of its buffer environments on the formation of high temperature parts based on the analysis of surface temperature structure of green patches.
The first step is the identification of the high temperature zones of urban greenery. The paper obtained the temperature vector data of green patches and their temperature hierarchy structure, the mean temperature and other parameters by overlaying surface temperature and greenery layers based on ArGIS software, and then determining the boundary value of the temperature of the green high-temperature zone.
The second step is to define the parameters of the ratio of impervious surface in the buffer area of the green patch (IR). The paper chose and analyzed the effect of impervious surfaces on green temperature change mainly due to their large temperature differences caused by their respective thermodynamic and biological characteristics. Such mutual influence and effect in urban area is very obvious, and the IR index is used to reflect the impervious surface intensity in neighborhood of the green patch and their relationship.
The steps of obtaining IR index include the following: the first step is to obtain the buffer radius Rb equal to the radius of an circular whose area is equivalent to the green patch area S; the second step is to draw the buffer zone and count the area of the SB index by use of the functionality of the ArcGIS Buffer; the third step is to count the SI index by use of the overlay analysis for the impervious surface layer and Neighborhood overlay; the IR of each green patch is counted as followed:
4. Conclusions
Most studies are concerned with the cooling effect of urban greenery, but have also revealed that some patches change from NTAs into HTAs. Firstly, the temperature of 30.26 °C was defined as HTAs’ lower limit temperature. The percentage of the HTA area in the whole green area accounted for 24.87%, but also found that the range of 30.26–31 °C in HTA temperature levels is as high as 80.97%, while the range greater than 31 °C is less than 20%. The disturbance of the cooling effect of urban greenery, mainly located in industrial heat sources, construction sites and population-buildings agglomeration areas, exists but is not evident, while the HTAs are.
Secondly, the average impervious ratio (IR) of HTAs is 3.76 times than that of NTAs, and the average temperature of HTAs is 2.86 °C higher than that of NTAs. The IR levels structure of NTAs is extremely uneven, but that of HTAs is relatively even. However, the correlation coefficient between the IR and temperature of NTAs and NTAs of all samples, respectively, is only 0.101 and 0.121, both very low. Thus, the greater the impervious intensity surface is, the higher the green ST is. The IR of HTAs significantly is higher than that of NTAs and promotes the surface temperature of some green patches or parts of a green patch.
Lastly, the analysis of sampling with the same temperature show that high level of the IR still occupies a dominant part. The analysis of sampling with the same IR values show that the value of IR promotes the ratio of HTAs in green patches and the complex environment in the buffer area of a green patch also leads to differences of green ST. Else, the HTAs-A present a ring shape and are largely located the edge of the green patch, and the core area of most green patches is little disturbed by their neighborhood environment and maintains the cooling effect.
Thus, urban green spaces in a significantly heterogeneous matrix have more complex external environments, like other related studies, the paper suggested that the temperature difference of the greenery is related to the variety of geographical conditions, large differences in land use, complex landscape structure and the different characteristics of green patches, which all inevitably lead to complex and diverse factors affecting HTA formation.