1. Introduction
Global warming caused by massive carbon dioxide emissions can lead to a chain of reactions that result in ecological disasters [
1]. Industry [
2], construction [
3], transportation [
4], and agriculture [
5] are the pillars of global carbon emissions [
6]. Nearly 25% of global energy-related CO
2 emissions are generated by the transportation sector each year, 75% of which originate from the road traffic sector [
7]. China is the largest emitter of carbon in the world, accounting for 28.8% of world energy carbon emissions [
8]. In China, transportation is the second largest source of carbon emissions, after the secondary industry, and is the industry with the most rapid growth [
9]. Many studies have identified the direct impact of the transportation industry on the deterioration of the ecological environment. The main factor is the consumption of unclean energy in the process, manifested by low transport efficiency (TE) through technology, travel mode, travel distance, and other links, thus leading to higher carbon dioxide emissions [
10,
11,
12]. As a key indicator to measure the orderly development of the urban transportation system, TE can represent the social development process with the goal of socio-economic sustainability [
13]. Environmental indicators represented by total carbon emissions (CEs), per capita carbon emissions (CEP), and carbon emission intensity (CEI) can effectively evaluate the low carbon level (LCL) in urban cities, which represents a social development process aimed at ecological sustainability. Therefore, exploring the relationship between LCL and TE can provide a reference for comprehensive sustainable development in China.
For LCL, the current research has mainly focused on the construction of low-carbon cities. One method, which evaluates the issue from the perspectives of the economy, society, and urban planning [
14,
15], involves a commitment to building an evaluation system for low-carbon cities based on statistical data; the other approach is to directly calculate carbon dioxide emissions based on the ecosystem [
16,
17], with different calculation methods for diverse scales of research. In large-scale national or provincial studies, scholars have often used statistical data for calculation [
18,
19,
20,
21]; however, in small-scale areas of prefecture-level cities and below, nighttime light data are often applied for inversion to obtain more accurate carbon emission data due to difficulty accessing refined statistical data [
22,
23,
24,
25]. The definition of TE concentrates on the perspectives of travel and transportation. Costa and Markellos [
26] posited that transportation efficiency is the ratio of effective output to corresponding input, reflecting the operating state of the transportation system. Fielding et al. [
27] identified that transport efficiency should be considered from both supply and demand perspectives, including the social value of transport services and the externalities they generate. Measurement models are widely adopted in efficiency measurement [
28]. Variables such as labor force, facilities, and capital are often considered as inputs of TE [
29]; cargo and passenger turnover are often used to measure the output results [
30,
31]. Moreover, levels of technology and management have also been found to affect TE [
32]. Few studies have focused on the relationship between LCL and TE to date; instead, they have focused more on transportation carbon emission efficiency.
As academia has various definitions of TE, studies have been conducted from different perspectives [
33,
34,
35]. Thus far, there have been relatively more studies on the interaction between urbanization and the ecological environment at the macro level [
36,
37,
38]. Urbanization can bring many benefits to residents, but it may also lead to a series of environmental problems [
39,
40]. On the contrary, changes in the ecological environment also have an impact on human well-being [
41]. Most of the literature emphasizes the coupling perspective [
42,
43] and the use of the coupling coordination degree model to evaluate the interaction intensity and balanced development level among subsystems on the premise of scientific quantification in urban socio-economic subsystems and ecological subsystems [
44,
45]. The new demands for sustainable development require a more specific and practical perspective to assess the mechanism at the micro level [
46], where TE is one of the key links affecting LCL. Although some studies have included environmental indicators in the evaluation system of TE, a large number of studies have proved that there is a complex linear relationship between the environment and traffic systems [
47]. At the same time, the influencing factors and contribution degrees of TE in different regions vary and, thus, cannot be generalized. Therefore, the question of how to choose appropriate indicators to perform a systematic TE evaluation needs more discussion, considering the current vague concept of TE. What exactly is TE? How can it be evaluated scientifically and comprehensively? Academia needs a more unified answer. Secondly, previous studies have always taken traffic conditions as the driving factor of economic development to further discuss the impact of social and economic shifts on the ecological environment, but they do not explain the specific relationship between traffic conditions and the ecological environment, which means that the relationship between TE and LCL is not clear. At present, a large number of studies have been carried out on transportation carbon emissions, but there are only a few studies on urban LCL from the perspective of TE. What is the relationship between TE and LCL? What is the response mechanism for both? Sorting out these issues will have far-reaching implications for policy makers to promote carbon-neutral goals and mitigate global climate change.
The urbanization rate in China has shown a sharp increase over the past three decades. The increasing demand for transportation land has contributed to dramatic improvements in the transportation infrastructure. As the political, cultural, economic, scientific, and technological innovation center of China, Beijing has encountered traffic congestion, excessive commuting times, and other low TE problems in the process of development. The prolonged, unreasonable use of transportation land will pose a threat to the ecological environment. This study aims to explore the response relationship between LCL and TE. The results are obtained via the carbon emission measurement method proposed by the IPCC to measure the LCL of Beijing. TE is explored from the following three aspects: input, resource utilization, and externality. Appropriate evaluation indicators are established to build a TE evaluation system for Beijing. Capitalizing on the advantages of principal component analysis (PCA) in data dimension reduction, removal of redundant information, and feature extraction [
48,
49], we use PCA to calculate the indicator weights. In TE evaluation, because we hope to examine TE from different aspects, the hierarchical evaluation mode of a fuzzy comprehensive evaluation is suitable for this study. That is, the sub-factors are evaluated first, and then the entire system is comprehensively evaluated. This step-by-step approach makes the entire evaluation process clearer [
50]. We used it to obtain the TE index of Beijing. Then, we also use the decoupling model and the coupling coordination degree model to analyze the relationship between the two. In theory, we define TE from another perspective and use another method to enrich the empirical literature on the corresponding relationship between TE and LCL. In practice, this study provides insight for policymakers on how to optimize the sustainable development model of transportation and environmental systems.
Therefore, starting from the necessity of reducing carbon emissions in transportation, Beijing is taken as an example to evaluate the urban low-carbon development level and TE during the period 2000–2020 and to obtain the relationship between the two to achieve the following goals: (1) improve the understanding of TE, and establish a reasonable evaluation system at the input and output levels based on the influencing factors of TE; (2) enrich the research content regarding TE’s impact on urban LCL, focusing on the connection between the transportation system and ecological environment, and explore the ecological effects caused by the transportation system from the concept of efficiency; (3) provide new ideas on carbon emission reductions and establish a win–win model of high efficiency and low carbon emissions; and (4) provide a reference to achieve the goal of “carbon neutrality” as soon as possible in the traffic structure optimization path.
3. Results
3.1. LCL Time Evolution
The changes in CEs and their growth rate in Beijing from 2000 to 2020 are shown in
Figure 2a. From the perspective of the carbon emission scale, CEs in Beijing show three consecutive trends in stages, with an overall trend of first rising, then stabilizing, and finally rapidly declining. CEs decreased from 103.201 million tons in 2000 to 61.117 million tons in 2020. The first stage was from 2000 to 2007, during which the total volume decreased in 2002, while the overall performance showed a rapid rise. CEs increased by 21.2%, with an average annual growth rate of nearly 3%. The second stage was from 2008 to 2010, during which the change in CEs in Beijing was relatively stable, and showed a slight decline in 2008. After 2010, CEs in Beijing decreased significantly, from 127.639 million tons in 2010 to 61.117 million tons in 2020, with a decrease rate of 52.1%.
To specifically grasp the carbon emission change in Beijing, it is necessary to further analyze the structural characteristics of carbon emissions (
Figure 3). It is not difficult to identify that the consumption of coal and coke gradually decreased during the study period. In general, there was a positive correlation between the carbon emission change and CE change in coal resources. The coal resources changed significantly from a dominant position at the beginning of the study period to a low proportion at the end, which can be interpreted as the energy consumption structure in Beijing gradually becoming optimized. On the contrary, with the acceleration of urbanization and the rapid development of the transportation industry in Beijing, the proportions of fuel oil, diesel oil, kerosene, gasoline, and crude oil resources have gradually increased. Among these, crude oil resources have changed from being the second largest source of carbon emissions to the first. As a clean energy source, the proportion of natural gas increased steadily in the late period of this study; however, natural gas does not represent a large share, thus indicating that Beijing still has significant potential to optimize its energy structure.
According to the changes in CEP and the growth rate shown in
Figure 2b, the CEP of Beijing principally includes two stages. The first stage was from 2000 to 2006, in which the carbon emissions per capita fluctuated, showing a trend of decreasing initially, then increasing, and finally decreasing slightly. In the second stage, from 2007 to 2020, CEP showed a trend of continuous decline, and the rate of decline gradually stabilized until the outbreak of COVID-19 in 2020 when there was a rapid decline, finally reaching the low point of CEP in the study period. During this period, the proportion of energy carbon emissions from the secondary industry in Beijing decreased significantly, and enterprises with high energy consumption and high pollution were gradually replaced with new industries. In the process of promoting the optimization of the industrial structure, Beijing has continuously reduced its dependence on energy, and the whole society has gradually formed an environmentally friendly low-carbon model.
CEI reflects the extent to which a region’s low-carbon economy has progressed. The CEI of Beijing continued to decline from 3.15 tons/10,000 CNY in 2000 to 0.17 tons/100 million CNY in 2020. The trend of decline gradually slowed down, indicating that Beijing has slowly implemented the low-carbon economic development mode and continuously improved its energy utilization efficiency (
Figure 2c). Nevertheless, because there are difficulties in maintaining the early, rapid low-carbon economic development, the relative development mode of energy conservation and emission reductions has gradually entered the bottleneck period.
3.2. TE Time Evolution
As can be seen in
Figure 4a, the traffic operation status of Beijing continues to show a positive trend; meanwhile, the inefficient traffic operation has gradually declined with the expansion of the spatial traffic structure, the improvement in management levels, and the construction of infrastructure. The traffic operation status of the whole city is moving steadily towards an efficient mode.
During the study period, the TE index of Beijing was generally improved, which can be divided into three stages (
Figure 4b). The first period was from 2000 to 2008. During this period, TE increased in a step-like shape. TE increased continuously and then decreased every three years, with the TE index increasing from 1.12 to 2.84. The second stage was from 2009 to 2019, during which TE increased but at a slow rate overall, from 2.861 in 2009 to 3.661 in 2019. It can be speculated that, in this decade, the traffic resources of Beijing gradually became saturated and approached the equilibrium state of supply and demand. However, in the previous stage, Beijing’s economy developed rapidly with the tertiary industry becoming increasingly mature, and the proportion of industrial structure grew continuously. In the early development stage, the transportation sector received policy support and made obvious progress. In 2020, TE in Beijing decreased compared with the previous year, principally due to the impact of the pandemic, when urban transport activities were restricted by a series of policies [
56]. The passenger volume, freight volume, and passenger turnover decreased significantly, which seriously hindered the development of traffic flow and resulted in the stagnation in TE in that year.
3.3. Regression Results of TE and LCL
In order to further study the correlation between TE and urban LCL, this study conducted correlation analyses between the TE index and CEs, CEP, and CEI in Beijing (
Table 8). The results show that the absolute value of the correlation coefficient between TE and CEs is low, from which the relationship between TE and CEs could not be identified. The absolute value of the correlation coefficient between TE, CEP, and CEI is high, with a 1% significance level. Therefore, a negative correlation is inferred between TE, CEP, and CEI. A higher TE would lead to a lower CEP and a lower CEI, indicating that the increase in TE drives the development of urban LCL. As shown in
Figure 5, the TE index has a good fitting effect with CEP and CEI, implying a negative correlation to some extent.
From the fitting results, it can be seen that CEs and TE present “W”-shaped curves; however, due to the limited number of samples, the trend in the latter half is unknown, or it may be an inverted “N”-shaped curve. Meanwhile, TE is highly correlated with CEP and CEI according to the correlation analysis results, so the regression analysis can be performed. Therefore, this section focuses on the relationships between TE, CEP, and CEI, and the regression models are as follows:
The regression model of TE and CEP in Beijing:
The regression model of TE and CEI in Beijing:
CEP and TE present an inverted U-shaped curve, and the peak value is reached when the TE index is 1.64, where CEP is the highest. When the TE index is less than 1.64, TE increases at the cost of emitting more carbon dioxide. With the gradual implementation of technological innovation and related policies, such as increasing the use of new energy sources, TE is no longer improved at the expense of the ecological environment, under which the environment and economy develop together in a sustainable way. CEI and TE can, to some extent, be interpreted as being in a linear correlation, where the relative logarithmic fitting results are better than the linear fitting results. With the increase in TE, CEI gradually decreases. CEI reaches the turning point when the TE index is 2.452. Specifically, when the TE index is less than 2.452, the decreasing rate of CEI is greater than 1; meanwhile, the reduction rate of CEI is less than 1 when the TE index is greater than 2.452.
3.4. Decoupling Analysis of TE and LCL
As can be seen in
Table 9, the decoupling states of TE with CEs and CEP in Beijing have changed from a weak to a strong status, and CEP has reached a strong decoupling state with TE relatively early. At the same time, TE and CEI in Beijing are in a state of strong decoupling during the entire study period, which changes from −0.51 in the first stage to −4.79 in the fourth, and the absolute value of the decoupling elastic coefficient increases rapidly. It can be seen that TE in Beijing shows an upward trend at each stage; meanwhile, CEs increase in the first two stages and then decrease, and their growth rate is slightly slower than that of TE in the first two stages. Similarly, CEP increases in the first stage and then decreases in the following stage. In the first stage, CEP grows more slowly than TE. The CEI declines throughout the study period. With the increase in TE, the pressure on the ecological environment is reduced, and the LCL of Beijing increases.
3.5. Analysis of Coordinated Development of TE and LCL
The results imply that the urban LCL represented by TE, CEs, CEP, and CEI show a trend of development from low coordination to an extreme level of coordination (
Table S1); among them, the coordination degree between CEI and TE increases the fastest, followed by that of CEP and CE.
The coupling degree of LCL represented by TE and CEs can be divided into two periods. From 2000 to 2010, the overall coupling degree of the two presented an inverted “U”-shaped structure; that is, they experienced the antagonism stage, run-in stage, coupling stage, and then regressed to the separation stage. In this 10-year period, the coupling coordination degree also closely showed an inverted “U”-shaped structure, but the coupling degree did not present significant fluctuation and exhibited a low coordination degree in 2010. After 2010, the coupling degree and coordination degree gradually increased, showing rapid growth in the early stage, and then slowing until reaching extreme coordination. The reason is that in the early stage, the traffic expansion introduced by rapid urbanization needs to adapt to the ecological environment, and during this adaptation process, certain resources are consumed. When these consumed resources reach the carrying capacity of the ecological system, the development level of the ecological environment, namely the LCL development of the studied city, is relatively underdeveloped. Improvements in TE will bring economic growth; meanwhile, the lagging development of the ecological environment will restrict the further expansion of urban traffic and affect the stability of the supply and demand structure, further constraining the improvements in TE. Consequently, in order to solve the stagnation in LCL development, more funds are required to invest in the restoration and improvement of the ecological environment so as to promote the coordinated coupling development of TE and LCL at a high level.
During the study period, LCL and TE remained in the coupling stage for a long time, despite the LCL coupling degree characterized by TE and CEP being lower than 0.8 during 2004–2008, indicating that LCL characterized by CEP and TE has maintained a high degree of consistency. From 2004 to 2008, the coupling coordination degree of TE and LCL was low. After 2008, the progress in urban LCL was emphasized, together with the strengthening of urban transportation construction, aiming to promote their moderate coordination development to a significant degree.
The coupling degrees of LCL and TE represented by CEI were all above 0.8 during the study period, indicating an all-time coupling state. In terms of the coupling coordination degree, there were three stages in the increase in deceleration. Efficient TE is conducive to improving residents’ travel intentions. Under the reasonable resource utilization and management of the urban transportation system, the TE will be improved to form a positive feedback response between the systems. Rapid social and economic activities provide financial and policy support for the progress of urban LCL and promote improvements in the coordination level of these two factors.