3.3. Exploration of the Impacts of Urban Land Use Spatial Patterns on Energy Consumption
To examine the links between urban spatial patterns and energy consumption, the estimated urban energy consumption served as the dependent variable and spatial metric values served as the independent variable. The impacts of urban land use spatial pattern on energy consumption were investigated using panel data models.
Table 3 presents the correlations among the spatial metrics in the study. Based on the calculated correlation coefficients, four pairs of metrics met the requirement: CA and LPI (Model 1); CA and ENN_AM (Model 2); NP and SHAPE_AM (Model 3); and LPI and SHAPE_AM (Model 4). The four combinations of metrics were adopted to build four regression models.
Table 4 demonstrated that the variable intercepts and constant coefficients model should be adopted for these four models. The results of the Hausman test (
Table 5) showed that the fixed effect model was selected for further analyses.
The test results indicated that a relationship occurred between the spatial metrics and energy consumption as follows:
where
is the energy consumption of city
i;
is the city fixed coefficient;
and
represent the two spatial metrics for city
i at time
t;
and
are the coefficients of the selected spatial metrics; and
is the error term.
Four fixed effect models for estimating the overall energy consumption were estimated based on the four different combinations of spatial metrics (
Table 6). The first model examined the effect of the composition of CA and LPI on energy consumption. Similarly, the other three models investigated the effects of the composition of CA and ENN_AM, NP and SHAPE_AM, and LPI and SHAPE_AM on energy consumption. The parameters of the relationship between energy consumption and urban spatial pattern were estimated using the panel data analysis. The variable coefficients results showed that urban spatial patterns had important but different impacts on energy consumption, and all coefficients were significant at the level of 1%. Therefore, all selected spatial metrics were significantly correlated with energy consumption. CA, NP, LPI, and SHAPE_AM had positive relationships with energy consumption (the coefficient of LPI was negative in Model 4 but was not significant), whereas ENN_AM was negatively correlated with city-level energy consumption.
The positive correlation between CA and overall energy consumption indicated that urban expansion was related to the increased energy consumption, which is consistent with the widely known relationship between urban area and energy consumption in other investigation areas [
36]. The positive relationship can be explained from the perspective of population growth and economic development [
37]. The increase in population, which is the main driver of urban growth, was responsible for the increase in energy consumption. Along with the dramatic urbanization process in China, individuals migrating from rural areas to urban areas accounted for the greatest contribution to the significant population growth in urban areas. The new urban migrants consumed greater energy per capita than their rural settlements. A large percentage of energy supply in rural areas relies on biomass, whereas urban energy consumption is primarily derived from commercial fuels. Additionally, the change in the lifestyle of migrants because of the rural-to-urban migration would cause changes in the typical energy consumption profile of these migrants [
38]. The socioeconomic activities of rural-to-urban migrants shifted from agricultural to service, construction, and industrial activities, which have significantly different energy intensities compared with agricultural activities in rural areas.
The rapid economic development also contributed to the dramatic urban expansion. In China, manufacturing industries are commonly characterized as having low energy efficiency and high labor intensity and normally play an important role in the regional economy of most cities in China [
39], in which more energy-consuming sectors are concentrated in urban areas. Therefore, the development of regional economies should be the one of the most important factors influencing the increase of energy consumption. Moreover, rising incomes make the lifestyles of urban residents more energy intensive [
25]. China will face a huge challenge if urban expansion in the future remains at a high rate.
As indicated by the estimated results, NP had a significantly positive effect on energy consumption. Massive construction formed many new urban patches, which represented a crucial contributor to the rapid growth of urban areas. The development of new urban patches may lead to the accelerated development of private and public transport, which requires more energy. Private transport significantly increases because of the newly developed patches [
40]. For example, the scatter pattern of working and residential areas leads to long traveling distances between residences and work places [
41]. Additionally, the new urban patches require more public infrastructure than the development within existing urban patches. The energy consumption could increase because of the construction and maintenance of the infrastructure [
4]. Consequently, the growth in NP could have resulted in increased energy consumption.
SHAPE_AM represents the jaggedness of the shape of the patches. As indicated by
Table 6, SHAPE_AM had a significant positive impact on energy consumption, which is consistent with the results of previous studies [
42,
43]. A compact urban pattern has been suggested to promote sustainable development because of the increased accessibility and reduced travel distance and the regeneration of urban areas [
44,
45].
LPI had a significant positive impact on the overall energy consumption. Compared with previous studies [
34], our results indicated that the overall energy consumption would decrease with the growth of the percentage of the largest urban patches (the city core). Many researchers believe that compact cities have environmental, social and fiscal advantages and result in energy conservation [
45]. To some degree, the negative relationship between LPI and energy consumption suggests that compact urban patterns are correlated with less energy consumption. However, the traffic congestion associated with compact cities, which has been ignored by previous studies, has become a serious problem for the reduction of energy consumption. Traffic congestion is commonly characterized by longer trip times, lower speeds, and increased vehicular queuing [
46]. Moreover, because larger city cores provide a greater number of functions, activities would be concentrated in these areas [
47]. However, larger city cores could result in traffic congestion because of the high settlement density and insufficient road resources. Therefore, traffic congestion plays a significant role in rising energy consumption. Additionally, Makido et al. concluded that the monocentric urban pattern with high density settlements may lead to high energy consumption [
43]. Accordingly, the development of polycentric urban patterns can decrease energy consumption.
One interesting finding was the negative correlation between ENN_AM and energy consumption, which differs from the results of previous studies. Yin et al. noted that decreased distances to a city center were the most influential factor for improving energy efficiency in the Kumamoto metropolitan area [
48]. Chen et al. argued that ENN_MN had a positive correlation with energy consumption in the Pearl River Delta [
34]. In this study, ENN_MN was replaced by ENN_AM, which averaged the distances by weighting patch areas so that smaller patches weighed less than larger patches. This weighting improved the measure of ENN_MN at the global level because the generation of smaller patches showed a stronger correlation with image pixel size than natural or artificial objects [
49], which may have been one of the reasons for the different correlation results. Moreover, the increased number of private cars may primarily explain the different correlation results because the number of cars increases along with the increases in income and changes in lifestyles. Therefore, the potential traffic for shopping and leisure activities will increase when the spatial connection between relatively smaller patches and city cores is strong because additional energy will be consumed by the increased travel distances. Such changes are particularly obvious in fast-developing regions with many new residential areas built within new urban patches that are distant from the city core. The roads that connect new patches with the city core are constructed after new residential areas are constructed. However, if facilities such as hospitals, schools and markets are not included in such construction, then the residents must travel long distances between the city center, where these facilities are located, and their residences to access these service facilities.
Considering regional differences, the same procedure was performed to investigate the impacts of urban spatial patterns on energy consumption for the cities in the eastern, central, western, and northeast regions. The estimated parameters for the four regions are listed in
Table 7,
Table 8,
Table 9 and
Table 10. As shown in these tables, the spatial metrics (CA, NP, LPI, SHAPE_AM) were significantly related to energy consumption at the level of 5% or less in the eastern, central, and western regions. The coefficient of ENN_AM was significant in the western and eastern regions but was not significant at the level of 5% in the central region, which means that the rising energy consumption could not be explained by the variation of ENN_AM value. Additionally, because of the limited samples in the northeast region, only CA and LPI had significant correlations with energy consumption.
Focusing on the four regions, certain estimated coefficients suggested that the estimated outputs were consistent with the results generated by the models at the national level. Moreover, note that the impact of the spatial pattern on city level energy consumption varied spatially as exemplified by the impact of increasing urban land area on energy consumption, which had the greatest effect in the central region, followed by the eastern, western and northeast regions. The increased urban land area in the central region was mainly attributed to the rapid development of industries with high energy intensity, which would result in the rapid rise in energy consumption.
Additionally, the results showed that the impacts of other spatial pattern metrics on city level energy consumption were also variable. With an increase in the SHAPE_AM value of 1 in Model 3, the energy consumption in the eastern, central, and western regions increased by 41.8031 × 104, 36.1556 × 104, and 14.2506 × 104 tons of SCE, respectively. The effect of urban pattern compactness in the eastern region was more marked than that in the other regions. Moreover, the impact of NP on urban energy consumption in the central region was more significant than that in the other regions.
The impact of LPI on energy consumption was positive in the eastern, western, and northeast regions, whereas it was negative in the central region. This regional difference could be attributed to differences in the economic and infrastructure levels among the different regions. The cities in the eastern and northeast regions are characterized by rapid urbanization and economic development as well as high population density. Although the relatively complete infrastructure and transportation system in a city core provides good opportunities for development, the rapidly increasing number of private cars could cause serious congestion. In the western region, the transportation system is not complete because of the relatively lower economic level. Therefore, congestion is also significant. However, congestion is not as serious in the central region as it is in other regions.