This paper studies the influencing factors of carbon dioxide emissions in China’s manufacturing industry and explores the specific driving effects of factors that affect carbon emissions by using the extended LMDI decomposition model. The literature review thus includes two aspects: a literature review of the factors that affect energy consumption and carbon emissions and a literature review related to the factors that affect carbon emissions during manufacturing.
2.1. Energy Consumption and Factors that Affect Carbon Emissions
The structural decomposition analysis (SDA) and index decomposition analysis (IDA) are two main analysis methods that determine the factors related to energy consumption and carbon dioxide emissions. SDA is based on the input-output model. Rose and Casler [
7] reviewed SDA’s theoretical basis and main features. By decomposing the changes in carbon dioxide emissions in China, Su and Ang [
8] analyzed and compared the four SDA methods and provided guidance for the selection of methods. The Laspeyres exponential decomposition method and the logarithmic mean division index (LMDI) decomposition method are the two most commonly used IDA methods. The traditional Laspeyres method has the problem that high residuals cannot be explained in the decomposition of the carbon emissions history, especially in long-term multivariate analyses. Albrecht et al. [
9] used the Shapley decomposition technique to study carbon dioxide emissions in four Organization for Economic Co-operation and Development (OECD) countries, which made it possible to decompose without surplus. Ang et al. [
10] considered the logarithmic mean splitting index method as the preferred method by comparing various exponential decomposition methods. On the basis of previous research, Ang [
11] provided practical guidance for the LMDI decomposition method. However, LMDI decomposition still has the problem of how to deal with negative values in the data set. Ang [
12] provided a strategy and criteria to deal with negative values that eliminates the deficiency of the only LMDI decomposition method in practical applications. The improved LMDI method has been widely used in existing decomposition systems because of its practicability and accuracy.
In recent years, domestic and foreign scholars have used the LMDI decomposition model in many empirical studies of the influencing factors of energy consumption and carbon emissions. Sheinbaum et al. [
13] conducted an LMDI decomposition analysis of energy use and carbon dioxide emission changes in the Mexican steel industry from 1970 to 2006 and found that industrial activities contributed to a significant increase in primary energy consumption; energy structure and energy efficiency played important roles in reducing energy consumption and carbon dioxide emissions. Olanrewaju [
14], Román et al. [
15] and Zhang et al. [
16] used the LMDI decomposition method to decompose related energy and CO
2 emissions in South Africa, Colombia and China and found that economic activities were the main reason for the growth of CO
2 emissions. Ma et al. [
17] put forward an LMDI decomposition method based on the Sankey diagram of energy and carbon dioxide distribution and analyzed the influencing factors of China’s energy CO
2 emissions. It was found that the growth of per capita GDP was the main factor that promoted the growth of CO
2 emissions. The reduction in energy intensity and the improvement of energy supply efficiency slowed the growth of CO
2 emissions. Xu et al. [
18] obtained the same conclusion by analyzing the decomposition of the factors that affect energy consumption at different stages and industries in China. Some scholars also used the LMDI decomposition method to decompose energy-related carbon emissions in different regions of China, most through dividing the influencing factors into economic activities, energy intensity, energy efficiency, industrial structure and so on [
19,
20,
21,
22]. It was found that current economic activities and energy intensity are the main driving factors of energy-related carbon emissions. Economic activities play a decisive role in increasing energy-related carbon emissions, whereas energy intensity is the main factor that restrains them.
Industry is China’s largest carbon emissions sector and scholars have done much work on the decomposition of industrial energy-related carbon emissions. Chen et al. [
23] analyzed the carbon dioxide emissions of energy-related industries in China from 1985 to 2007 by using the LMDI method and found that the per capita GDP is the largest positive driving factor for the growth of industrial CO
2 emissions and that energy intensity could significantly reduce the CO
2 emissions of energy-related industries in China. Liu et al. [
24] also found that industrial activities and energy intensity have been the main reasons for changes in carbon emissions in China’s industrial sector, whereas the effects of thermoelectric emission factors, fuel transfer and energy structure transfer have played only secondary roles. Xie et al. [
25] decomposed the influencing factors of carbon dioxide emissions from China’s oil refining and coking industries into five factors: emission coefficient, energy structure, energy intensity, industrial activity and industrial scale. The study found that industrial activity was the main driving force for CO
2 emissions growth, followed by industrial scale and energy intensity. Lin et al. [
26] decomposed and analyzed the changes of energy-related CO
2 in China’s textile industry and found that industrial activities and energy intensity were the main determinants of carbon dioxide emissions. Zhang et al. [
27] used LMDI decomposition method to explore the main driving factors of China’s coal chemical industry’s carbon dioxide emissions. The study found that economic growth and energy intensity are the main factors leading to the increase of carbon dioxide emissions and the industrial structure is the main factor for carbon dioxide reduction. Du et al. [
28] studied the driving factors of China’s high-energy-intensive industries and energy-related carbon dioxide emission changes by using the LMDI decomposition method. The study found that the expansion of industrial scale was the leading force explaining CO
2 emissions change in China’s high-energy-intensive industries. Energy intensity was the main factor driving the decline of CO
2 emissions. The impact of energy structure and industrial structure on CO
2 emissions was relatively small.
The drivers of industrial carbon emissions in the different provinces of China have also attracted widespread attention from scholars. Zhao et al. [
29] performed an empirical analysis of the influencing factors of Shanghai’s industrial carbon emissions by using the LMDI method and found that industrial output is the main driving force of Shanghai’s industrial carbon emissions and that the decline in energy intensity and the adjustment of energy and industrial structure are the main determinants that need to be targeted to reduce Shanghai’s industrial carbon emissions. Deng et al. [
30] used the structural decomposition analysis-logarithmic mean splitting index (SDA-LMDI) model to analyze the driving factors of energy-related CO
2 emissions in Yunnan Province, one of China’s underdeveloped provinces. The results showed that the rapid growth of high-carbon product exports in metal processing and the power sector are the main factors that lead to carbon dioxide emissions. Based on the log-average splitting index decomposition method of extended Kaya identities, Wu et al. [
31] analyzed the changes in industrial carbon dioxide emissions in 39 industrial sectors in Northeastern Inner Mongolia from 2003 to 2012. It was found that the growth effect and population effect were the key driving forces of carbon dioxide emissions in industrial sectors in Inner Mongolia and that energy intensity efficiency was a major factor in the reduction of carbon dioxide emissions. In addition, the LMDI decomposition method has also been widely used in the analysis of carbon emission influencing factors in transportation, electric power, housing and other fields [
32,
33,
34,
35].
2.2. Factors that Affect Manufacturing Carbon Emissions
In manufacturing carbon-related research, Akbostancı [
36] used the LMDI decomposition method to decompose the changes in CO
2 emissions in the Turkish manufacturing industry and found that the changes in total industrial activity and energy intensity were the main factors for CO
2 changes during the study period. Kim [
37] and Jeong [
38] used the LMDI decomposition method to decompose the influential factors of energy consumption and greenhouse gas emissions in the Korean manufacturing industry. It was found that structural effects and intensity effects play major roles in reducing energy consumption and greenhouse gas emissions and that the structural effect is greater than the intensity effect. Hammond et al. [
39] divided the UK manufacturing industry into the energy-intensive (EI) subsector and the nonenergy-intensive (NEI) subsector and used the LMDI decomposition methods to classify influencing factors into output scale, industrial structure, energy intensity, fuel mix and electricity emission factor; they found that the decline in energy intensity was the main factor in the reduction of carbon emissions. In addition, on the basis of the Disia index method, Ang and Pandiyan [
40] used two common methods to decompose the factors that affect CO
2 emission changes into energy intensity effects, energy structure effects, CO
2 emission factor effects and industrial structure effects. Schipper [
41] used Adaptive-Weighting-Divisia decomposition to analyze the CO
2 emissions of the manufacturing sector in 13 International Energy Agency countries in 1994 and decomposed the factors that affect CO
2 emissions into energy intensity, industrial structure, energy structure and economic output. The results showed that the energy intensity and output scale effect are the main factors that lead to different CO
2 emission changes in manufacturing industries.
In the research on carbon emissions from China’s manufacturing industry, many scholars have used the LMDI decomposition method to decompose the factors that affect China’s manufacturing CO
2 emissions into emission factor effects, energy intensity effects, energy structure effects, industrial structure effects and industrial activity effects (Ren et al. [
42], Xue [
43], Wang et al. [
44], Wang et al. [
45]). Ren et al. [
42] found that a decrease in energy intensity leads to a significant reduction in CO
2 emissions, whereas the impacts of emission factors, industrial structure and energy structure on CO
2 emissions are relatively small. Xue [
43] and Wang et al. [
44] found that industrial activity expansion is the main reason for the increase in CO
2 emissions in China’s manufacturing industry. Wang et al. [
45] found that, in addition to industrial activity, industrial structure adjustment is an important factor for China’s manufacturing industry to reduce the rate of carbon emissions. Ma et al. [
46] decomposed China’s manufacturing industry into three categories—high, medium and low energy consumption—and used the LMDI decomposition method to decompose the energy-related carbon emission factors that affect the manufacturing industry. It was found that the added value of the manufacturing industry is the most important positive driver of carbon emission change and that energy intensity is the most important negative driver. Chen et al. [
47] divided the change point and cycle of carbon dioxide in China’s manufacturing industry from 1985 to 2010 by using the gray relational analysis method. Xu et al. [
48] found that the driving factors of carbon emissions in China’s manufacturing industry have strong periodic characteristics and that output effect and energy intensity are the main factors. From the perspective of structure and efficiency share, Pan et al. [
49] explored the changes in the carbon intensity of China’s manufacturing industry and found that the decline in carbon intensity was caused by efficiency. Li et al. [
50] used STIRPAT model to examine the impact of rationalization and upgrading of manufacturing structure on carbon emissions in China from the perspective of natural resource dependence from 2003 to 2014. The results shown that rationalization and upgrading of manufacturing structure will help to curb carbon dioxide emissions, which is limited by a region’s dependence on natural resources.
The existing research on energy consumption and carbon emissions generally focuses on traditional factors such as emission factors, energy structure, energy intensity, industrial structure and economic activities and there is a consensus that economic activity is the most important factor leading to increased carbon emissions. The decline in energy intensity is an important factor in the reduction of carbon emissions. Normally, the standard coal equivalent of fossil energy combustion will not change significantly in a short period of time except for electricity [
51]. Under other unchanged conditions, a decrease in energy intensity is associated with an improvement in energy efficiency, which is conducive to the reduction of carbon emissions. As economic growth has difficulty getting rid of its dependence on fossil energy combustion, the expansion of the output scale will inevitably lead to an increase in carbon emissions [
52]. Chen et al. [
53] found that China’s coal-based energy structure and consumption structure have little potential to reduce carbon emissions and carbon intensity by adjusting the energy structure in the short term. Some scholars have found that fixed asset investment has an important impact on China’s carbon emissions, in addition to traditional economic factors. Dong et al. [
54] pointed out that although most studies have confirmed that economic scale expansion is the primary factor related to China’s carbon emissions, economic scale expansion is the result of a combination of factors, such as fixed asset investment and fixed asset investment is a necessary condition and basic driving force for economic expansion. Shao et al. [
52] found that in the process of China’s rapid urbanization, a large fixed asset investment was applied to infrastructure construction, resulting in a large amount of fossil energy consumption and an increase in carbon emissions, resulting in China’s economy into a low sustainable development mode of “industrial investment-economic growth-energy consumption-carbon emission.” Wang et al. [
55] used the expanded STIRPAT model to analyze the time series of the main driving factors of carbon emissions of energy consumption in Guangdong province from 1990 to 2014 and found that in addition to economic growth, fixed asset investment was the most important factor for carbon emission growth. Wang and Wang [
56] used the extended STIRPAT model to analyze the main driving factors of Xinjiang’s energy consumption carbon emissions in 1952–2014. It was found that in 2001–2014, fixed asset investment and economic growth were the main contributors to carbon emission growth and carbon intensity was the most important contributor to the curbing of carbon emissions growth. Shao et al. [
52] used the generalized split index method (GDIM) to analyze the driving factors of the evolution of carbon emissions in China’s manufacturing industry from 1995 to 2014. The study found that investment scale was the main factor that led to the increase in carbon emissions and investment intensity and output intensity are the key factors to the reduction in carbon emissions.
In addition, some scholars have found that intangible capital, such as innovation, information and communication technology, plays an important role in energy intensity and carbon emissions. Yang and Shi [
57] analyzed the relationship between intangible capital (including computerized information, innovative property (R&D), brand equity and organization capital) and departmental energy intensity based on the data sets of 40 economies in the World Input and Output Database. It was found that intangible capital plays an important role in reducing the energy intensity of the sector. Herrerias et al. [
58] found that R&D expenditure and innovation activities are the main reasons for the decline in China’s energy intensity. Based on the STIRPAT model, Ding et al. [
59] studied the factors influencing China’s manufacturing carbon emissions and found that population and wealth have positive effects on China’s manufacturing carbon emissions, whereas technical factors have negative effects. Li et al. [
60] constructed a model of the factors influencing carbon dioxide emissions in China through the panel data model and analyzed the impacts of energy consumption intensity, energy consumption structure and technological innovation on China’s total carbon dioxide emissions in 2005–2010. The results showed that an improvement in China’s energy consumption structure and investment in technological innovation could reduce the carbon emissions brought about by economic growth to a large extent.
Given the above, fixed asset investment and innovation factors appear to have important impacts on carbon emissions, while the existing concerns on the impact of manufacturing carbon emissions are obviously insufficient. Therefore, a large amount of empirical research needs to be supplemented. Compared with the existing literature, the contributions and main innovations of this research are mainly reflected by the following aspects. Firstly, the time span of the data sample in this paper is 1995–2015, which is longer than the existing research time span, providing more detailed information on the historical trend of CO2 emission change in China’s manufacturing industry. Secondly, the research period is divided into four stages, the “Ninth Five-Year Plan,” the “Tenth Five-Year Plan,” the “Eleventh Five-Year Plan” and the “Twelfth Five-Year Plan,” to better reflect the driving mechanism of CO2 emission changes in the manufacturing industry in different stages of planned economy. Third, based on traditional factors (emission factors, energy structure, energy intensity, industrial structure and economic activities), this paper incorporates fixed asset investment and innovation input factors (R&D efficiency, R&D intensity and investment intensity). Therefore, on the one hand, the LMDI decomposition model is expanded and on the other hand, the impacts of fixed asset investment and innovation investment on China’s manufacturing carbon emissions are discussed, which helps to provide a policy reference for emission reductions from the source.