1.1. Research Motivation
Against the backdrop of global warming, the low-carbon development mode is becoming an important solution to, and a prerequisite for, solving the world’s ecological problems and climate change [
1,
2,
3]. To this end, countries around the world have adopted a global compact to reduce carbon emissions by upgrading “carbon peak” and “carbon neutrality” to national strategies and proposing a vision of a carbon-free future [
4,
5]. As the second-largest economy in the world, China has also become the largest carbon emitter [
6]. In a joint effort to address global climate and ecological issues, China is taking active measures to control carbon emissions. At present, China has already reached the milestone of reducing its carbon emission intensity by 40% to 50% [
7]. Furthermore, it commits itself to a carbon peak by 2030 and carbon neutrality before 2060 [
8].
China’s economic achievements over the past decades are attributed to the enormous dividends from its industrialization process. As its industrialization continues to deepen, however, extensive and high-energy-consuming industrial development has put tremendous pressure on the ecological environment and poses a great challenge to the “double carbon” goals [
9]. According to the Climate Analysis Indicators Tool (CAIT) database of the World Resources Institute (available at
https://www.climatewatchdata.org/data-explorer/ (accessed on 12 July 2021)), China’s carbon emission in 2019 reached 9.79 billion metric tons, of which the industrial sector accounted for 84.53%, much higher than the 7.47% and 0.93% for the transportation and agriculture sectors, respectively. To achieve its “carbon neutrality” mission, therefore, China should attach importance to effectively improving the efficiency of industrial carbon emissions, promoting the green transformation of the industrial sector, and improving the ecological environment. Thus, it is practically significant to scientifically measure the carbon emission efficiency and reduction potential of the industrial sector and profoundly analyze the influencing factors. All this will help promote low carbonization in industries and achieve the “double carbon” goals, thereby realizing sustainable economic and social development.
Theoretically, it is essential to grasp the connotations of carbon emission efficiency before reasonably evaluating such efficiency in the industrial sector. Early literature primarily equates carbon efficiency with carbon productivity (the GDP output per unit of carbon emissions) [
10], the carbon index (indicating the price and liquidity of carbon trading market) [
11], or carbon intensity (carbon emissions per unit of GDP) [
12]. These concepts emphasize the trade-off between the desired and undesired output and reflect the endogenous link between carbon emissions and economic development, though they ignore the impacts from input sources. Efficiency, however, indicates how efficiently resources are used or to which extent the optimal output is achieved under such conditions as given inputs and technology [
13]. Hence, focusing only on the output has great limitations. Further, carbon emission efficiency results from a combination of factors, such as resource inputs, management experience, production technology, and types of output, all of which need to be assessed holistically. Such complex efficiency implies that it should be evaluated through a total-factor measurement method [
14,
15,
16]. Only on this basis will it be of practical significance to discuss carbon reduction and explore pathways to reduce emissions more efficiently.
While the existing literature investigates carbon emission efficiency extensively, there are still some areas for improvement. Firstly, stochastic frontier analysis (SFA) has the advantage of stripping the interference from stochastic disturbances and can improve the estimation accuracy of technical efficiency [
17]. Although scholars apply various methods to measure carbon emission efficiency in a total-factor way, few researchers combine SFA with the evaluation of carbon emission efficiency and carbon reduction potential. In this regard, we try to introduce the concept of carbon productivity [
10] on the basis of SFA by setting average carbon output as the dependent variable of the model and use the corresponding technical efficiency to assess the efficiency of industrial carbon emissions. Logically, via given input resources and production technology, technical efficiency based on SFA measures the ratio of actual output to the optimal output. Using carbon productivity as an output variable implies that technical efficiency is measured by controlling carbon emissions. We refer to such technical efficiency as green-technology efficiency (occasionally “GTE” for short). Carbon emission efficiency in the context of low-carbon development also requires maximizing desired output while minimizing undesired output (carbon emissions), conditional on a given resource input. Therefore, carbon emission efficiency is consistent with what green-technology efficiency means. In other words, the technical efficiency represented by the ratio of the actual average carbon output to its optimal value also reflects the carbon emission efficiency at the current level of green production technology. Secondly, there is little discussion of the carbon reduction potential, and regional reduction potential is mainly compared on a qualitative or simulative basis, still lacking quantitative approaches [
18]. Complementary to technical efficiency, technical efficiency loss indicates the difference between the average carbon output of a production unit and the corresponding optimal level. When this loss exists, it means that there is room to reduce carbon emissions for the unit. Therefore, technical efficiency loss provides us with a suitable tool for quantifying carbon reduction potential, thus further contributing to carbon reduction policies. Thirdly, the literature rarely explores the influencing factor of carbon emission efficiency while considering the spatial dimension. The regional conditions (such as economic development, technology level, resources, etc.) are quite uneven in China. It should be noted that ignoring the spatial element may lead to biased results, since this element implies the potential spatial spillover effect of carbon emission efficiency, reduction potential, and relevant influencing factors. Hence factor analysis entails spatial econometrics analysis. Fourthly, most studies delve into carbon emission efficiency from one or two aspects of efficiency evaluation, spatial and temporal characteristics, reduction potential measurement, or factor analysis, though a unified analytical framework is yet to be established. The complementarity of technical efficiency and its loss also provides us with an opportunity to assess carbon emission efficiency and reduction potential simultaneously, and makes the analysis of their influencing factors internally consistent.
Motivated by the above background and analysis, we aim to add a new perspective to the evaluation of industrial carbon emission efficiency. We also expect to provide a systematic framework for assessing carbon emission efficiency, quantitatively measuring the reduction potential, and identifying the influencing channels. To this end, we use the green-technology efficiency approach to assess industrial carbon emission efficiency and calculate the potential of the industrial sectors of 11 provinces and municipalities in YRB to reduce industrial carbon emissions. At the same time, we apply several spatial econometric models to identify specific influencing channels of emission efficiency. Overall, by empirically testing this framework, this paper offers a reference for the research on other yardsticks or sector objects, lays a scientific basis for formulating carbon reduction policies, and ultimately serves the goal of carbon neutrality.
1.2. Literature Review
Carbon emission efficiency has always been a major research focus, with topics ranging from measurement methods, reduction potential, spatio-temporal characteristics, and investigation of the influencing factors.
To measure carbon emission efficiency, researchers have adopted different methods, among which the most commonly employed are data envelopment analysis (DEA) and its extensions since they integrate environmental factors and require no parameter estimation [
16,
19,
20]. Using DEA, Meng et al. [
21] calculate the carbon emission efficiency of 30 provincial-level divisions of China and find that the efficiency gradually declines from the east to the west. Through the same method, Wang et al. [
22] estimate the carbon emission efficiency of China’s service sector, uncovering that its emission efficiency is consistent with the level of regional economic development. Moreover, studies have introduced the Malmquist carbon emission index (MCPI)—DEA [
23,
24], the slack variable-based super-efficiency (SBMSE)—DEA [
25,
26], and the non-radial directional distance function (NDDF)—DEA [
16,
27] to measure the carbon emission efficiency of the world’s high-carbon emitters or specific industries and then to explore their dynamic evolution patterns. Considering that DEA is subject to the interference of stochastic disturbances from environments, several researchers have also attempted to address this issue through SFA. Sun et al. [
17], for example, evaluate the greenhouse gas emission efficiency in 26 industrial sub-sectors of China, and Zhang and Chen [
28] estimate the carbon emission efficiency of the Yangtze River Economic Belt. One problem of their analyses is that they both directly take undesirable emissions as the input variable. Yet placing emissions on the input side is unreasonable when energy consumption is already in place. This is because carbon emission efficiency characterizes the proportional relationship among carbon emissions, economic growth, and energy consumption [
29].
Research into carbon emission efficiency aims partly to promote carbon reduction. As research progresses, the carbon emission reduction (potential) has also captured increasing attention. Yang et al. [
18] construct a carbon reduction potential index for urban construction land in 30 provincial-level divisions of China, indicating that 17 of them, with an index above one, face mandatory reduction pressure. By decomposing total carbon emissions, Song and Zhang [
30] calculate the theoretical values of carbon reduction for 19 countries and regions and find that only five reach the theoretical values. Wang et al. [
6] identify China’s “lagging carbon-reduction regions” based on whether a province or municipality has achieved its milestone reduction targets, and then proposed, for such a province or municipality, optimized paths to carbon reduction through “efficiency and cost” analysis. Overall, these studies usually analyze this issue qualitatively. Furthermore, some literature has also attempted to quantify the carbon reduction potential under various reduction scenarios by using counterfactual inference methods. Based on Monte Carlo simulation, for example, Lin and Xie [
31] estimate the potential of China’s transport sector, revealing that this potential would be 304.59 (422.99) million tons under a moderate (advanced) emission-reduction scenario, respectively. Similarly, Guo et al. [
32] simulate the potential to mitigate China’s carbon intensity in business-as-usual and planned scenarios, concluding a 34.22% and a 37.64 % potential for the two scenarios, respectively. These analyses, however, only allow us to perceive the possible room for carbon reduction, and their results may largely deviate from the existing situation.
Under different conditions of economic development and resource endowment, carbon emission efficiency and its reduction potential vary among regions. Scholars are also interested in the spatial characteristics and the changing trends presented by efficiency and potential. For instance, Yang et al. [
33] compared the regional differences in carbon emission efficiency among 30 Chinese provincial-level divisions between 1998 and 2015. They suggest that the eastern coastal areas of China emit carbons more efficiently than the central and western inland regions, a result consistent with that of Ma [
34] and Zhang and Yu [
35]. In the meantime, they also confirm that these efficiency differences are decreasing, showing a convergence in efficiency. Furthermore, Du et al. [
20] look into the spatial distribution dynamics of provincial carbon emission efficiency in China’s construction sector and similarly observe a decreasing trend from east to west. Explorations of the spatio-temporal evolutions of emission efficiency and reduction potential offer us additional insights into the actualities of carbon mitigation. Overall, existing studies focus more on the spatio-temporal characteristics of efficiency but less on reduction potential.
In the long run, understanding the intrinsic mechanisms and identifying the drivers of carbon emission efficiency will lay an important foundation for formulating carbon reduction policies. One strand of literature uses the Logarithmic Mean Division Index (LMDI) to factorize carbon emissions, highlighting the importance of energy emission intensity, energy structure, energy intensity, and output scale at the aggregate level [
36,
37]. Many others explore how factors influence carbon emission efficiency from the angles of economy, society, technology, or management system [
23,
28,
38]. Based on a quantile regression of panel data for 56 countries, Xie et al. [
39] prove that technological progress is crucial to promoting carbon emission efficiency. Li and Cheng [
38] point out that poor management is the root cause of carbon inefficiency in China’s manufacturing sector. Dong et al. [
40] discover a long-term equilibrium relationship among industrial structure upgrading, economic growth, and carbon emissions. Yang et al. [
33] unfold that industrial carbon emission efficiency is positively impacted by foreign direct investment, the level of economic development, technological progress, and government intervention, and negatively by the energy consumption structure. On the other hand, an extensive literature has demonstrated that significant spatial spillover effects exist in carbon emission efficiency in China’s industrial sectors. This result illustrates that the spatial dimension is also important to research the influencing factors of emission efficiency [
20,
33,
41]. As for the influencing factors, however, there is little discussion about their spillover effects.