1. Introduction
With rapid urbanization and socioeconomic development, urban energy consumption has come to account for 67% of global energy consumption [
1]. As a form of investment, energy is significant for development and construction in cities. However, excessive energy consumption may lead to a series of problems such as environmental pollution, climate change [
2], and energy supply security [
3]. Moreover, production activities, residents’ living behaviors, socioeconomic levels, and development patterns of different cities directly affect urban energy performance. Therefore, it is necessary to assess urban energy performance and explain the reasons for performance differences, which have important practical significance for transitioning to a green city and reducing inefficient energy use [
4,
5].
Energy performance studies are the foundation of assessing urban energy performance, and various studies around the world have focused on energy performance, considering mainly its connotations, assessment indicators, influencing factors, and assessment methods. The basic connotation of energy performance includes two aspects: energy efficiency and energy productivity [
6,
7]. Productivity refers to the ratio between outputs and inputs in the process of production, whereas efficiency is the ratio between actual and optimal outputs [
8,
9]. An actual production process involves not only its energy input, but also other inputs and influencing factors, which should be comprehensively analyzed. For this purpose, total factor energy efficiency and total factor energy productivity are introduced. However, for specific evaluation objectives, the connotation of energy performance is different. Herrando et al. believed that energy performance was related to the gap between building energy demand and actual building energy consumption [
10]. Tang et al. directly used energy intensity to represent building energy performance, where energy intensity is the ratio of the energy use to building area [
11]. Johansson et al. described the roles of energy performance based on its concept and compared the energy performance of various energy-saving methods in different areas at different times by measuring energy consumption under the influence of various factors [
12]. Hence, an energy performance measurement should construct a production frontier based on input-output relationships to reflect the two ratios: actual output to actual input, and actual output to optimal output. Additionally, energy performance measurement is affected by many factors. Urban energy performance can be regarded as the degree to convert inputs (including energy inputs) into optimal outputs under the influence of a variety of factors and a particular set of social regulations [
13].
Energy has been conducive to the development of nations, industries, factories, and products, and therefore the content of energy performance assessment includes not only manufacturing, factory, industrial, and national energy performance [
14,
15], but also building energy performance [
16,
17] and lighting energy performance [
18] at the micro level.
Energy performance assessment indicators and influencing factors vary according to the assessment objectives, but in general can be divided into three categories: input indicators, output indicators, and external influencing factors. The inputs refer to investments in the process of development and production, including asset investments, material investments, the product mix, labor inputs, energy inputs, and other investments [
14,
15,
16,
17,
18]. Outputs are represented by economic outputs, including industrial outputs, industrial added values, regional outputs, and other outputs [
14,
15,
16,
17,
18]. The external influencing factors contain many aspects such as region, climate, geographical location, and area [
10,
11,
12,
13,
14,
15,
16,
17,
18].
The “Energy Star” program in the United States has used stochastic frontier analysis to measure the energy performance of industrial companies and reveal the energy performance gap between current enterprises and the best enterprise [
13]. In addition, energy performance is reflected by the ratio of economic output to energy consumption, but must consider input indicators, output indicators, and various influencing factors in the measurement. As for micro-level assessment methods, they are determined according to the characteristics and requirements of the assessment objectives. For example, the energy performance of residential building walls should be assessed by combining thermal insulation performance, the sunlight absorption rate, and other factors that directly affect residential energy consumption [
10].
Current studies of urban energy performance are mainly related to the assessment of urban energy efficiency and urban sustainable development. Li and Li [
19] used data envelopment analysis to estimate the total factor energy efficiency and change trends for 210 prefecture-level cities in China from 1995 to 2006. They studied the relationships among average temperature, resource endowment, industrial structure, technological level, policy, and energy efficiency using the Tobit model, in which the effect of each factor on energy efficiency under different conditions was also varying. Caputo et al. [
20] indicated that energy efficiency solutions were closely related to other sustainability solutions for air quality, local microclimate, the quality of the public realm, and others. Xie and Mo [
21] found that the energy efficiency of Chinese prefecture-level cities was invariant with scale and investigated the effects of spatial correlation on area distribution of urban energy efficiency. Li et al. [
22] identified an urban energy efficiency hierarchy and analyzed its level transitions using a multi-level frontier DEA technique and considering data for 49 environmentally protected cities in China as an example. They also constructed a set of four ordered probit models and indicated that a number of factors such as energy technology, energy integration, environmental elements, water resources, and population could affect this hierarchy. Kilkis [
23] used the SDEWES system to evaluate sustainable development using thirty-five indicators in seven aspects from a more comprehensive perspective. Yang et al. [
24] proposed a linear dimensionless coordinate system to evaluate the urban sustainable development levels of 287 cities in the eastern, central, and western parts of China; the level of sustainable development in eastern cities was higher than that of central and western cities. Ding et al. [
25] used the TOPSIS-Entropy method to perform a quantitative assessment of the sustainable development of Chinese cities at the prefecture level and analyzed their spatial distribution based on an index system incorporating social, economic, and environmental factors. Liang et al. [
26] used principal components analysis to extract the main influencing components of sustainable urban development and proposed a method to evaluate it based on the Grey TOPSIS methodology. It is clear that the evaluation of urban sustainable development is a comprehensive evaluation of the economic, social, environmental, cultural, and other aspects of cities.
The general situation and differences of urban energy performance in Chinese provincial capitals should be determined because Chinese provincial capitals are typical representatives of Chinese cities. At present, these studies related to energy performance in Chinese provincial capitals mainly reflect the aspects described below. Chen and Xu [
27] studied relationships between air pollution and economic growth in Chinese provincial capitals and divided these relationships into six main types. Based on the hypothesis of an environmental Kuznets curve, they concluded that the relations between the three main kinds of pollutants in cities and urban economic growth were relatively weak. The relationships between the three main kinds of pollutants and industry showed an inverted U shape, whereas the relationships between the three main kinds of pollutants and tertiary industry showed a U shape. In addition, some researchers had analyzed the annual and daily variation of gases and particulate pollutants [
28,
29]. Fang et al. [
30] pointed out that carbon dioxide emission levels were positively correlated with urban regional growth and that carbon dioxide emission levels were also associated with urban continuity and urban shape. Combining with the major function zoning strategy of cities, Du et al. [
31] studied the competitiveness of Chinese provincial capitals from the four aspects of economics, social culture, environment, and geography. Fan and Qi [
32] combined economic, environmental, and social equity indices to measure sustainable development in major cities in China. This study emphasized the sustainable development tendencies of Chinese cities and their driving factors.
From the analyses just described, the following conclusions can be drawn. First, energy performance assessment has been widely implemented in countries, enterprises, products, buildings, and home appliances. However, studies of urban energy performance assessment are relatively few. Second, the energy performance assessment indicators and influencing factors used varied with different assessment objectives. Therefore, the selection of urban energy performance assessment indicators and influencing factors should be based on urban characteristics and assessment requirements. Third, assessment and factor analysis of urban energy efficiency are typically carried out by different methods separately, which increases calculation errors and ignores the impacts of random factors. Urban sustainable development assessment focuses on multiple aspects of cities. Because energy is an important input and a basic part of urban sustainable development, exploring its performance is essential to analyzing urban sustainable development. Fourth, Chinese provincial capitals can reflect the energy performance of Chinese cities at all levels, but few studies exist on energy performance assessment of provincial capitals. Studies related to Chinese provincial capitals often focus on urban air pollution, urban climate change, and urban sustainable development.
Therefore, the innovations of this research are the following: first, the research field of energy performance has been extended to cities. Urban energy performance assessment not only considers urban energy efficiency, but also takes into account urban energy productivity, providing references for urban sustainable development assessment. Second, urban energy performance assessment indicators and influencing factors, once selected based on theory and literature analysis, could be used to construct a performance assessment system and to analyze the effects of various factors on energy performance. Chosen from an endogenous perspective, assessment indicators were used to measure urban energy performance. Concluded from an exogenous perspective, influencing factors were used to explain the reasons for performance differences. Third, an urban energy performance assessment and influencing factor model was constructed by the improved stochastic frontier analysis method. This model quantified the relations between actual outputs and inputs as well as between actual and optimal outputs with the help of a production frontier, comprehensively considered the impacts of random errors and the inefficiency levels of urban productions on energy performance, and incorporated performance assessment and factor analysis into a system that could effectively reflect the energy performance levels of cities, make assessment results more accurate and objective, and reduce the errors caused by two-stage study. Fourth, based on panel data for Chinese provincial capitals from 2004 to 2013, empirical research could periodically update the various levels of urban energy performance and help to propose corresponding policy recommendations to improve urban energy performance.
4. Discussion
The urban energy performance assessment indicators and influencing factors selected in this paper have passed the coefficient test, which fully demonstrates the relations of each indicator and factor to urban energy performance. The assessment indicators and influencing factors incorporate climate change, economic growth, energy consumption, and other aspects that are also the focus of current research on Chinese provincial capitals and cover the main variables used by Chen and Xu [
27], Fang et al. [
30], Du et al. [
31], and Fan and Qi [
32]. Compared with other assessment methods, the urban energy performance assessment and factor analysis model constructed by the improved stochastic frontier analysis method can fully consider the energy performance differences of cities and random errors and fully reflect the dual roles of assessment indicators and influencing factors on urban energy performance, making the assessment results more objective and accurate.
From 2004 to 2013, the average energy performance of Chinese provincial capitals was 0.498, which shows that Chinese provincial capitals had an energy-saving potential of 50% under constant outputs. In other words, the energy-saving potential of Chinese provincial capitals was great. The increases in the standard deviation indicated that the gap between the energy performances of different cities has increased in recent years. Between 2004 and 2013, the maxima of all provincial capitals showed a rising trend, which indicates that the cities with higher energy performance still had growth potential and attained large increases. The lack of significant changes in the minimum from year to year shows that the average values of energy performance in provincial capitals showed an increasing trend, but that the growth rate was less than the maximum. Therefore, the urban energy performance of Chinese provincial capitals was still improved by those cities with higher performance. In the long run, the gap in urban energy performance among provincial capitals will gradually increase. The maximum energy performance in each provincial capital reflects the highest performance level of each city in recent years and also provides a benchmark for future energy performance improvements.
At present, the energy performance of Chinese provincial capitals is increasing, but further efforts should be made to enhance it, further verifying the conclusions reached by Xie and Mo [
21]. The coefficients of elasticity for urban energy performance assessment indicators indicates that energy input is also an important investment in promoting socioeconomic development. The marginal effect of population density on economic development has been gradually reduced, but increases in population density still resulted in more energy consumption. As a result, urban energy performance decreased in this case. A higher urbanization level is bound to enhance investments in science, technology, education, and infrastructure, leading to sustainable use of renewable energy and high quality of life for residents and strengthening the population agglomeration effect, which could help reduce urban energy consumption and further elevate urban energy performance. The temperature index was calculated using American cooling degree days. This factor comprehensively reflects urban temperature and urban heating requirements. If the temperature index increases, urban heating requirements and urban energy consumption will decrease, and therefore the urban energy performance will improve. Household car ownership in Chinese provincial capitals was still rising between 2004 and 2013 despite the introduction of vehicle driving restrictions and new energy-efficient vehicle promotion policies, indicating that the popularity of new energy-efficient vehicles gradually increased and that the increase in car ownership did not result in more energy consumption [
47]. Therefore, household car ownership is negatively correlated with urban energy performance.
It is concluded that the energy performance of different provincial capitals in China varies widely from the urban energy performance assessment results, as shown in
Table 3. According to the locations of cities within each class in
Table 7, the cities with higher energy performance are mostly in eastern China, the cities with moderate energy performance are located in central part of China, and the cities with lower energy performance are mainly distributed in northwestern and southwestern China. Thus, the urban energy performance of Chinese provincial capitals decreases from east to west. In recent decades, China’s economy has continued to develop, and social living standards have been continuously improved [
48,
49]. Thanks to the excellent geographical location, environmental condition and policy support (such as coastal development strategy, market economic reform), the total economic output and per capita income of southeast coastal areas in China are significantly better than those of central and western regions. The gap between the eastern and western regions continues to expand [
31,
50]. The economic and social development in the southeast coastal areas has increased the concentration of labor and capital [
51], so the level of urbanization and the population pressure has increased [
52]. In addition, the innovation efficiency and technical level of these areas have also been developed [
53]. Especially in the three major economic zones, the level of economy, social security, infrastructure construction, and technological innovation in these regions is better than that in other regions [
25,
53,
54]. Through the above analysis, we can draw a conclusion that the socioeconomic development level of eastern coastal areas in China is better than that of the western areas, and uneven regional development has gradually become a major challenge for China’s development [
55]. The regional characteristics of socioeconomic development in China are similar to the distribution characteristics of urban energy performance. Therefore, it is speculated that there is a correlation between socioeconomic development level and urban energy performance.