Input–Output Analysis of China’s CO 2 Emissions in 2017 Based on Data of 149 Sectors

: High-precision CO 2 emission data by sector are of great signiﬁcance for formulating CO 2 emission reduction plans. This study decomposes low-precision energy consumption data from China into 149 sectors according to the high-precision input–output (I–O) table for 2017. An economic I–O life cycle assessment model, incorporating sensitivity analysis, is constructed to analyze the distribution characteristics of CO 2 emissions among sectors. Considering production, the electricity/heat production and supply sector contributed the most (51.20%) to the total direct CO 2 emissions. The top 10 sectors with the highest direct CO 2 emissions accounted for >80% of the total CO 2 emissions. From a demand-based perspective, the top 13 sectors with the highest CO 2 emissions emitted 5171.14 Mt CO 2 (59.78% of the total), primarily as indirect emissions; in particular, the housing construction sector contributed 23.97% of the total. Based on these results, promoting decarbonization of the power industry and improving energy and raw material utilization efﬁciencies of other production sectors are the primary emission reduction measures. Compared with low-precision models, our model can improve the precision and accuracy of analysis results and more effectively guide the formulation of emission reduction policies.


Introduction
With increasing global climate change, the reduction of carbon emissions whose major source is energy combustion [1] has become the focus of all countries. In 2019, China had the highest carbon emissions accounting for approximately 27.9% of global carbon emissions [2]. Therefore, it is important to reduce the country's emissions in order to contribute to global climate change mitigation. At the 75th United Nations General Assembly in September 2020, China proposed to achieve peak CO 2 emissions by 2030 and carbon neutrality by 2060. To facilitate formulation of emission reduction plans, it is necessary to study China's carbon emissions from energy combustion based on a higher sector resolution.
The aggregation and decomposition of emission sectors are important aspects of research on CO 2 emissions mitigation. The classification of sectors in the China Energy Statistical Yearbook (e.g., [3]) varies from that used in the input-output (I-O) table (e.g., [4]). The former lists approximately 40 categories, while in the latter, there are >100 sectors. To maintain consistency between the two with energy consumption data, most studies aggregate the I-O tables into approximately 40 sectors. However, this may cause inaccurate estimations and distortion of carbon emissions at the sectoral level [5][6][7][8]. Lenzen [9] proved that, in case information required for sectoral decomposition is lacking, the results of sectoral decomposition based on a small amount of actual data are better than the results of sectoral aggregation. Lindner et al. [10] demonstrated that when the power sector was disaggregated, an increased amount of information led to an increased accuracy in the carbon emission intensity of each sector obtained through sectoral decomposition. Therefore, it is necessary to further split the sectors and use higher sector resolution data to investigate carbon emissions and, thus, improve the reliability and accuracy of the analysis results.
There are two methods for sectoral disaggregation. The first method involves decomposition of the I-O table and most studies using this method usually only focus on a few typical sectors [8,[11][12][13][14][15][16], such as the construction and power sectors. Meng et al. [11] divided the construction sector into 12 subsectors based on the sectoral intermediate purchases and investment data and obtained the extended I-O table of 53 sectors of Beijing city. Linder et al. [12] used regional information and cost data for operation and maintenance of power plants to split the electricity sector into transmission, distribution and eight other subsectors representing different types of technology in power plants. Moreover, some studies have used other methods to obtain power subsectors [13,15]. However, the decomposition method cannot be effectively applied to the complete I-O table. It cannot satisfy the requirement of decomposing the energy consumption table; hence, we do not employ this method in our study.
The second method is to decompose energy consumption data or carbon emission data. Few studies apply this method, as it has higher requirements for sectoral data. Insufficient sectoral data may introduce biases in this allocation method [17]. In general, energy consumption data are allocated based on the sectoral intermediate purchases or demands and carbon emissions data are allocated based on the sectoral carbon emission intensity. Minx et al. [18] and Zhang et al. [17] decomposed the carbon emission and energy consumption data, respectively, of multiple sectors to correspond to sectors in the I-O table. The allocation coefficients obtained by Minx et al. were based on the carbon emission intensity of 95 sectors derived by normalization and that of the latter, was based on sectoral direct inputs. Douglas and Nishioka [19] allocated carbon emission data based on the sectoral intermediate demands. However, these studies have their own limitations. The sector resolution of Douglas and Nishioka [18] was too low and only included 41 sectors, even after decomposition. After using the allocation method, the number of sectors in Zhang et al. [17] and Minx et al. [18] were 95 and 135, respectively. However, the latter lacks more accurate allocation coefficients than the former, because it assumed that all I-O sectors that map to the one energy sector have the same emission intensity (the number of carbon emission intensity data before normalization were only 44). Although Zhang et al. [17] is the most accurate of the three; they did not deduct the non-energy use of fuels when calculating the total carbon emissions. Moreover, the allocation method of their study also needs to be improved.
To solve the above shortcomings, the present study uses the 2017 I-O table of 149 sectors in China and decomposed energy consumption data to construct an economic I-O life cycle assessment (LCA) carbon emission analysis model [20]. The model incorporates production-and demand-based perspectives to analyze the distribution of carbon emissions from energy combustion among sectors. Most of the current studies employ structural decomposition analysis (SDA) to analyze carbon emissions [18,[21][22][23]. However, the core objective of this study is to analyze the sectoral distribution characteristics of high-precision carbon emission data of China. Therefore, we utilize the economic I-O LCA (EIO-LCA) [20], even though it appears relatively simple, to analyze carbon emissions. Furthermore, as uncertainty management is indispensable to any model development and evaluation [24], we incorporated sensitivity analysis of changing number of sectors in our model to improve the reliability of our results.
There exist a few studies that apply uncertainty or sensitivity analysis in the I-O model of environmental extension [25]. However, the incorporation of sensitivity analysis into the framework of this study makes our approach a novel one. Our study improves on the allocation method used in Zhang et al. [17] by extending the number of sectors from 45 to 149. Specifically, when the distribution coefficient is 0, we modified the coefficient to make our allocation reasonable. Compared with other similar work [17,18], our results are more accurate. We achieved this accuracy by adopting more precise allocation coefficients. Additionally, we address the limitation that Zhang et al. [17] failed to deduct the non-energy use of fuels.
The rest of this paper is structured as follows: Section 2 details the methods and data sources used in this study, focusing on the method of energy consumption data allocation. Section 3 analyzes and discusses the results. Finally, Section 4 summarizes the conclusions, highlights the limitations and puts forward the main policy suggestions.

Method and Data
This study used the EIO-LCA model [20] to analyze China's carbon emissions. The model is expressed by Equation (1): where B represents the sectoral carbon emission matrix; (I − A) − I-O table; and R = diag(r 11 , r 22 , · · · r nn ), which is the amount of CO 2 directly emitted by a sector per unit of monetary output, where r ii = c i x i , c i represents sectoral carbon emissions, x i represents the total sectoral output.

Energy Consumption Data Allocation Method
Few studies completely divide the energy consumption sector according to the sector classification of the I-O table. We primarily referred to Zhang et al. [17] and Minx et al. [18] as they are more representative. The former represents the allocation of energy consumption data based on direct inputs and the latter represents the allocation of carbon emissions data based on carbon emission intensity. Minx et al. [18] obtained the carbon emission intensity of 95 sectors (the number of sectors of I-O table) in three steps. First, the output was aggregated into the sector classification used in the energy and emissions data; second, the emission intensity of 44 sectors (the number of sectors of energy consumption table) was obtained; finally, all I-O sectors that map to the one energy sector were assumed to have the identical emission intensity which was normalized to obtain the emission intensity of 95 sectors. To obtain the carbon emission inventory of 135 sectors, Zhang et al. [17] first calculated the energy consumption data allocation coefficients according the direct inputs of the fuel production sectors; then, these coefficients were multiplied with the corresponding energy consumption data to derive the energy consumption table of 135 sectors; the process can be formulated as Equation (2): where e k,ja and e k,j represent the consumption of fuel type (k) corresponding to sectors ja and j, respectively; z p,ja and z p,jk represent the intermediate inputs of sector p to sectors ja and jk. Sectors ja . . . jk are all subsectors of sector j. Thus, we split some sectors of the energy consumption table according to the "Industrial classification for national economic activities" (GB/T 4754-2017) [17,26]. There were 149 sectors after decomposition (Table A1) and for ease of presentation, the sectors in the figures are represented by their corresponding numbers. Briefly, different types of energy were correlated with 149 sectors that produce the corresponding type of energy. Then, the allocation coefficients of energy consumption data were linked to the proportion of the sectoral intermediate inputs in the I-O table. Finally, this ratio was multiplied by the energy consumption of the corresponding sector in the energy consumption table of 45 sectors to derive an energy consumption table of 149 sectors. A schematic of this method is shown in Figure 1. Before allocating the energy consumption data, the energy consumption data allocation coefficient of each sector was calculated using Equations (3) and (4): z p,j1 + z p,j2 + . . . + z p,jn = z p,j , (2 ≤ n < 149) where p indicates the sector producing this type of fuel (energy) in the I-O table of 149 sectors (Table 1); d p,ji indicates the allocation coefficient of energy production sector p corresponding to sector ji; z p,ji and z p,j represent the intermediate inputs of sector p to sector ji and j, respectively; sectors j1, j2 . . . jn are all subsectors of sector j and 2 ≤ n < 149. The corresponding relationship is shown in Table A1. Figure 2 shows the schematic diagram that explains the attainment of allocation coefficients of energy consumption data. We considered raw coal consumed by farming (sector 01) as an example. Its allocation coefficient is equal to the intermediate input of mining and washing of coal (sector 06) to farming (sector 01), divided by the intermediate input of sector 06 to the primary industry (sectors 01-05). The parameters are appropriately represented in Figure 2. The production sector of raw coal corresponds to the mining and washing of coal (sector 06) in the I-O table, coke corresponds to the processing of coal (sector 42), natural gas corresponds to the extraction of petroleum and natural gas (sector 07) and gasoline corresponds to the processing of refined petroleum and nuclear fuel (sector 41). Finally, the energy allocation coefficients corresponding to the four fuel production sectors (sectors 06, 07, 41 and 42) can be calculated according to corresponding sectors.  Table   06 Mining and washing of coal All coal products 07

Corresponding Fuel Type (k) In The Energy Consumption
Extraction of petroleum and natural gas Crude oil, liquefied natural gas and natural gas 41 Processing of refined petroleum and nuclear fuel All petroleum products 42 Processing of coal Coke, coal gas and other coking products Then, using the allocation coefficients obtained above, the energy consumption of different energy types in the 149 sectors can be calculated by Equations (5) and (6): where D and A represent the disaggregated and aggregated matrices, respectively; they correspond to a 149 × 149 and 45 × 45 matrix; k represents different types of energy; e D k,ji indicates the consumption of k corresponding to the sector ji in the energy consumption table of 149 sectors; and e A k,j indicates the consumption of k corresponding to the sector j. As an example of the application of this equation: the consumption of raw coal by farming (sector 01) in the energy consumption table of 149 sectors should be equal to the consumption of raw coal by agriculture, forestry, animal husbandry and fishery (sector 01 in the 45-sector classification) multiplied by the allocation coefficient of raw coal corresponding to the farming (sector 01).
However, according to the above calculation process, there are still some energy consumption data that cannot be fully allocated. Specifically, the intermediate input of a certain energy production sector to other sectors (corresponding to one or more sectors in the I-O table of 149 sectors) may be 0. For example, in Table 1, the intermediate input of processing of coal (sector 42) to the primary industry (sectors 01-05) is 0, but agriculture, forestry, animal husbandry and fishery (sector 01 in the 45-sector classification) consume coke and other coking products. Similarly, the intermediate input of the extraction of petroleum and natural gas (sector 07) to wholesale/retail trade and catering (sectors 117-120) is also 0; however, wholesale/retail trade and catering (sector 44 in the 45-sector classification) consume natural gas.
Zhang et al. [17] did not consider the above problems. However, we provide specific solutions. In case, the intermediate input is 0 when the energy consumption data are allocated, then the allocation coefficient corresponding to processing of coal (sector 42) is updated to the allocation coefficient corresponding to the mining and washing of coal (sector 06); similarly, the allocation coefficient corresponding to the extraction of petroleum and natural gas (sector 07) is updated to the allocation coefficient corresponding to the processing of refined petroleum and nuclear fuel (sector 41). In this manner, we can use the adjusted allocation coefficients to calculate the energy consumption of 149 sectors.
After obtaining the preliminary energy consumption table of the 149 sectors according to the above-mentioned allocating method, the amount of energy loss was allocated to each sector based on the proportion of energy consumption of various sectors. Next, the energy consumption for raw materials was obtained according to the proportion of energy consumption in sectors 41-60 (except for sector 50, which does not use energy for raw material); this value was then subtracted from the total energy consumption to obtain the energy consumption for combustion. The energy consumption for power generation and heating were allocated to the production and supply of electric/heat power (sector 98) and the net international marine fuel consumption was allocated to sectors 105-116 according to the proportion of energy consumed in the sector.

Sectoral CO 2 Emission Calculation Method
In this study, the sectoral approach was used to calculate CO 2 emissions from energy combustion in order to improve the accuracy of the sub-sectoral CO 2 emission data to the maximum extent. According to the energy consumption table of the 149 sectors obtained by the above method, the CO 2 emissions of these sectors can be calculated by Equation (7): where c k,j represents the CO 2 emissions produced by sector j consuming fuel k; e D k,j represents the consumption of fuel k by sector j; lvh k represents the average low calorific value of fuel k; and CF k,j represents the carbon emission factor of fuel k consumed by sector j, which can be written as Equation (8): where C k,j represents the carbon content of fuel k consumed by sector j and O k,j represents the carbon oxidation rate of fuel k consumed by sector j.  [27,28]. To solve this problem, the methods of Chen et al. [29] and Tian et al. [30] were used for reference to construct the 2017 non-competitive I-O table by dividing the intermediate inputs and final demands into domestic and import parts. We assumed that the import rates of a sector's intermediate and final demands (excluding exports) were identical and equal to the sector's average import rate. Then, the demand for imported products were subtracted from the sector's intermediate and final demand according to this ratio to obtain the intermediate and final demands of domestic products, as expressed by Equations (9) and (10):

Data
where z ij and f i represent the intermediate and final demands in the non-competitive I-O represents the average import rate of sector i; m i represents the imports of sector i; and g i represents the sum of the total intermediate demand and the total final demand excluding exports of sector i.

Energy Consumption Data and Carbon Emission Factors
The energy consumption data used in this study were obtained from the energy balance sheet and final physical energy consumption table by industry in the 2018 China Energy Statistical Yearbook [3]. The I-O data were obtained from the non-competitive I-O table of 149 sectors after processing (as in Section 2.2.1). The carbon emission factor data were from the "Provincial Greenhouse Gas Inventory Compilation Guide (Trial)" [31] and "2005 People's Republic of China National Greenhouse Gas Inventory" [32].  (Table 2), leading to a collective direct CO 2 emission of 7061.11 Mt, which accounted for 81.62% of the total CO 2 emissions from all sectors. As most of the CO 2 emissions were generated from these 10 sectors, from a production-based perspective, emission reduction policies should focus on the production practices of them to control the corresponding direct CO 2 emissions.   Figure 4 presents the relationship between the direct CO 2 emissions of sector 98 (production and supply of electric/heat power) and the final demands of other sectors. This shows that 91.10% of CO 2 emissions from sector 98 were generated by providing electricity and heat to other sectors (not including sector 98 itself). The top seven sectors (sectors 101, 98, 102, 77, 103, 141 and 149) that consumed the most electricity and heat induced 2184. 19 Mt of CO 2 emissions from sector 98, which is nearly half of the total direct emissions from this sector ( Table 3). The highest contribution was from housing construction (sector 101), which accounted for 19.98% of the total direct emissions from the supply of electric and heat power (Table 3). Therefore, emission reduction in sector 98 could commence considering the following two aspects. First, improvement of the power generation efficiency of electric/heat power and controlling carbon emissions in the power generation process. Second, improvement of the power efficiency of other sectors, especially the six sectors listed in Table 3, to control power consumption in production activities.

Sectoral CO 2 Emissions Based on the Demand Perspective
In some cases, the production activities of upstream and downstream sectors influence the CO 2 emissions of other sectors. The embodied CO 2 emissions caused by the final demands of various sectors in China are displayed in Figure 5. The highest embodied emissions were caused by the final demand of housing construction (sector 101), which contributed 2073.73 Mt of CO 2 (23.97% of the total emissions; Table 4), most of which was emitted by other sectors along the supply chain. The top 13 sectors with the highest embodied emissions contributed 5171.14 Mt of CO 2 , accounting for 59.78% of the total emissions from all sectors. The embodied CO 2 emissions of most sectors were mainly indirect emissions. Therefore, from a demand-based perspective, the focus should be on formulating emission reduction policies for the final demands of these 13 sectors to control corresponding CO 2 emissions.  Because the embodied CO 2 emissions of housing construction (sector 101) accounted for the largest proportion of the total emissions, we decomposed the CO 2 emissions caused by the final demand of sector 101 to observe the contributions of various sectors to it ( Figure 6). Table 5 shows that the highest contribution was from sector 98 (production and supply of electric/heat power; 884.89 Mt CO 2 ), accounting for 42.67% of the total emissions of sector 101. The next highest contribution was from the rolling of steel subsector (sector 62; 24.91%); however, the sector itself (sector 101) accounted for only 1.88% (Table 5). Therefore, the following two key points based on the final demand of the housing construction sector for controlling the CO 2 emissions caused must be considered. First, improvement of the efficiency of the use of raw materials for housing construction and reduction of the use of main raw materials while maintaining the final demand remains. Second, implementation of technological upgrades in the six sectors specified in Table 5 to control the amount of direct CO 2 emissions during their production stages.

Comparisons with Similar Studies
Chang et al. [14] and Zhang et al. [17] both used disaggregated I-O model to analyze issues in the field of energy or environment. Chang et al. [14] developed an I-O LCA model that disaggregated the construction sector of I-O tables into 14 subsectors, including 13 building types and civil engineering projects, to calculate the product chain energy of different building types in China. Their results indicated that aggregation in the construction sector led to a 15-225% overestimation of the product chain energy of buildings; the difference in material consumption of different building types cannot be sufficiently reflected in the aggregated I-O model, consequently affecting the accuracy of the calculation of the building embodied energy. This is similar to our results, which suggests that the disaggregated model has a higher-precision sectoral level and thus, can more precisely reflect the link of carbon emissions between sectors and improve the accuracy of our analysis. Zhang et al. [17] also obtained similar results, indicating that the use of aggregated models will distort the allocation of embodied carbon emissions in sectors with large carbon emissions.
However, the total carbon emissions calculated by Zhang et al. [17] were inaccurate. First, the non-energy use of fuels was incorrectly included for combustion, leading to overestimation of the total carbon emissions by double counting the carbon emissions of this part. Second, their conclusions stated that the total carbon emissions of the 135-sector classification were different from those of the 42-sector classification, which does not agree with the results of our study. According to the energy consumption data allocation method used in Zhang et al. [17], when the original energy consumption table of the 42 sectors is split into the energy consumption table of the 135 sectors, the total calculated carbon emissions in these two cases should be equal because the total energy consumption is constant. In Section 3.4, we compare China's 2017 carbon emission inventory of 149 sectors with that of 45 sectors, whereby the total CO 2 emissions in both cases were the same, but the distribution of CO 2 emissions between sectors differed.

Comparison of CO 2 Emission Inventories: 149 Sectors and 45 Sectors
To obtain the CO 2 emission inventory of 45 sectors, we aggregated the sectors in the 2017 I-O table according to the "Industrial classification for national economic activities" (GB/T 4754-2017) [26] to make them consistent with the sectors in the energy consumption table. After processing the I-O table of 149 sectors into 45 sectors, the EIO-LCA model was used to analyze the CO 2 emissions of these 45 sectors.
The results demonstrated that the sum of the direct CO 2 emissions of groups of subsectors in the carbon emission matrix of the 149 sectors was the same as that of the larger sectors of the 45 sectors. For example, the sum of the direct CO 2 emissions of sector 61-63 in the 149 sectors was equal to the CO 2 emissions of sector 26 in the 45 sectors ( Figure 7). However, the embodied CO 2 emissions were inconsistent. Considering the construction industry as an example, the embodied CO 2 emissions of this sector in the 45-sector classification were 3238.72 Mt, while the sum of embodied CO 2 emissions of sectors 101-104 of the 149-sector classification was 3314.52 Mt (2.34% more than the former). This is because direct sectoral CO 2 emissions data were used for the analysis in the EIO-LCA model. However, such differences were not distinct and had a negligible impact on the subsequent analysis; therefore, Figure 8 shows the relationship between the embodied CO 2 emissions of the construction sector in the 45-sector classification and the corresponding sectors in the 149-sector classification from a demand-based perspective.   Table 6 compares the details of the two classifications of the CO 2 emission inventory. In the 45-sector classification, the ratio of direct CO 2 emissions from the top 5 to the total CO 2 emissions is 86.88% and the ratio of embodied CO 2 emissions is 63.40%. Similarly, in the 149-sector classification, the ratios are 74.03% and 45.59%, respectively. This indicates that the sector concentration of the 45-sector CO 2 emission inventory is higher. Moreover, the sectors with large CO 2 emissions in the 149-sector inventory are all subsectors of the sectors in the 45-sector inventory (e.g., sectors 61 and 62 are subsectors of sector 26; sectors 101, 102 and 103 are subsectors of sector 42) suggesting that the 149-sector CO 2 emission inventory is more precise and accurate. For example, the 45-sector CO 2 emission inventory reveals that sector 42 contributes the most embodied CO 2 emissions; however, sector 101 is the largest emitter of CO 2 emissions in the 149-sector CO 2 emission inventory. In contrast, other subsectors of the construction sector (e.g., sector 104, building decoration and other building services) contributed marginally ( Figure 4); however, in the CO 2 emission inventory of 45 sectors, it was only possible to determine that the construction sector led to the highest emissions, while it was not possible to distinguish the contributions of this sector's subsectors. Therefore, when decomposing embodied CO 2 emissions by the final demand of a certain sector, the analyses based on the CO 2 emission matrix of 149 sectors are more specific and targeted. Accordingly, this approach can also help us to analyze the distribution characteristics of sectoral CO 2 emissions in detail. On the contrary, the analyses of the CO 2 emission matrix of 45 sectors can only provide general conclusions, which may lead to imprecise and inaccurate emission reduction policies.

Sensitivity Analysis
The number of sectors in the I-O tables published by the National Bureau of Statistics vary for different years; this may lead to unreliable results from carbon emission analyses when using the I-O model based on the classification of I-O tables. To enhance the reliability of sectoral analysis results, we performed sensitivity analysis by altering the number of sectors in the experiment and analyzing the results. We consequently obtained the 95 sector (shown in Table A2) carbon emission inventory and the 135 sector (shown in Table A3) carbon emission inventory according to the energy consumption data allocation method. The analysis results of the sectoral distribution characteristics of these two carbon emission inventories are detailed below.
In the carbon emission inventory of 95 sectors, the production and supply of electricity and heat power remains the largest contributor of direct carbon emissions, with smelting and processing of ferrous metals occupying the second place. These two sectors account for approximately 70% of the total emissions from all sectors. On decomposing carbon emissions from the production and supply of electricity and heat power, we discovered that the construction sector contributes the most to CO 2 emitted by the production and supply of electricity and heat power, followed by the sector itself. Moreover, the construction sector is the largest contributor of embodied carbon emissions with production and supply of electricity and heat power sector occupying the second place. Further analysis revealed that the construction sector's carbon emissions can be primarily attributed to the production and supply of electricity and heat power and smelting and processing of ferrous metals; the former provides electricity to the construction sector and the latter provides the main raw materials. Together, these two sectors contribute to > 70% of the total emissions from the construction sector (Figure 9). In the inventory of 135 sectors, the top two sectors with the largest direct carbon emissions are the production and supply of electricity and heat power (4429.59 Mt CO 2 ) and rolling of steel (1283.75 Mt CO 2 ). The rolling of steel subsector contributes to > 80% of the carbon emissions from the smelting and processing of ferrous metals sector. By analyzing the sectoral distribution characteristics, we found that the direct CO 2 emissions from the production and supply of electric/heat power caused by the electric/heat demand of the construction sector is the largest, followed by the sector itself. This observation is the same for the inventory of 95 sectors. Moreover, the two sectors with the largest embodied carbon emissions are also the same as those for inventory of 95 sectors. Additionally, decomposing the embodied carbon emissions from the construction sector revealed that the supply of electricity and steel are the two major contributors, which correspond to the production and supply of electricity/heat power and the rolling of steel sector, respectively ( Figure 10).  On reducing the number of sectors to 95 and 135, we discovered that the sectoral distribution characteristics of carbon emissions vary with the number of sectors: the coarser the sector classification, the higher the sector concentration of carbon emissions. However, the classification level of sector does not affect the carbon emissions of those sectors that have not been split. These results are general and give strong support to the reliability of our analysis.

Conclusions
The number of sectors in the I-O table is usually more than that in the energy consumption table. Hence, most studies elect to aggregate the sectors of the I-O table to ensure that the sector classification of the energy consumption table is consistent with that of the I-O table; however, this can introduce inaccuracies to the results. In this study, we decomposed some sectors of the energy consumption table to make both tables consistent; then, we used the EIO-LCA model to analyze the decomposed energy consumption table.
The following conclusions can be drawn.
The production and supply of electric/heat power (sector 98) contributed the most direct CO 2 emissions, accounting for 51.20% of the total CO 2 emissions from all sectors. In addition, the sectors with the 10 highest direct CO 2 emissions accounted for >80% of the total CO 2 emissions, indicating a high sector concentration of direct CO 2 emissions, which should be the focus of emission reduction policies.
Considering the demand-based perspective, 5171.14 Mt of CO 2 was emitted by the top 13 sectors with the highest embodied CO 2 emissions, which accounted for 59.78% of the total CO 2 emissions from all sectors. Among these 13 sectors, the highest embodied CO 2 emissions corresponded to housing construction (sector 101), which accounted for 23.97% of the total CO 2 emissions. Moreover, the embodied CO 2 emissions of most sectors were mainly indirect emissions.
We compared the CO 2 emission matrices of 45 sectors and 149 sectors; however, the results based on the 45-sector inventory were not sufficiently accurate. In contrast, the CO 2 emission matrix of 149 sectors provided a more detailed perspective for the analysis of the relationship between the CO 2 emissions of different sectors, which can be used for effective development of guidelines and formulation of emission reduction policies.
On performing a sensitivity analysis, we found that the results of this study are general, that is, the higher the sector resolution, the lower the sector concentration of carbon emissions. Moreover, the sector classification level does not affect the carbon emissions of those sectors that have not been split. In future studies, SDA analysis can be employed to investigate China's high-precision carbon emission data.
It should be noted that this study had some limitations. When processing the competitive I-O table into a non-competitive I-O table, we assumed that the import rate within a sector was the same and equal to the ratio of imports/total output. This assumption may lead to two types of errors. First, the carbon intensity of imported products may be different from the carbon intensity of domestic products in China. If products are imported from developed countries, the value may be lower than that of China. Second, it is inaccurate to use only one import rate value for a certain sector. However, because we did not have adequate details on China's import structure and import intensity by sector, we only focused on the sectoral distribution characteristics of CO 2 emissions from domestic production and not those from imports. Therefore, the assumption of competitive imports was still adopted. Third, the energy consumption data allocation method based on the non-competitive I-O table of 149 sectors (Section 2.2.1) may have made the allocation coefficients of different types of energy the same, which is not the case. For example, the consumption of all petroleum products, such as gasoline and diesel, is distributed according to the allocation coefficients corresponding to the processing of refined petroleum and nuclear fuel (sector 41). The allocation method assumes that the ratio of petroleum products consumed by all sectors is constant. However, road freight transportation services may consume relatively more gasoline, while machinery supporting agricultural services may consume relatively more diesel. To solve this problem, more detailed sectoral energy consumption data from the National Bureau of Statistics of China are needed for future studies.

Policy Suggestions
From a production-based perspective, the formulation of emission reduction policies should focus on the 10 sectors with the highest CO 2 emissions (Table 2). Emission reduction measures could commence by incorporating the following aspects: first, development of low-carbon energy and promotion of decarbonization of the power industry; second, improvement of energy efficiency in other sectors in order to control energy-related carbon emissions of production activities, especially in the seven sectors listed in Table 3.
From a demand-based perspective, the formulation of emission reduction policies should focus on the 13 sectors with the highest CO 2 emissions (Table 4). Taking housing construction (sector 101)-with the largest embodied CO 2 emissions-as an example, the CO 2 emissions caused by final demand could be controlled based on the following aspects: first, improvement in raw material utilization efficiency in the housing construction sector and to reduction in the use of raw materials while maintaining the final demand; second, upgradation of technology in the six sectors ( Table 5) that contribute significantly to embodied CO 2 emissions to control direct emissions during the production stage of these sectors.

Institutional Review Board Statement: Not applicable.
Informed Consent Statement: Not applicable.

Data Availability Statement:
The data presented in this study are available on request from the corresponding author.

Conflicts of Interest:
The authors declare no conflict of interest. Table A1. Sector correspondence between input-output table and energy consumption table.

Consumption of Energy by Sector
Input-Output  Manufacture of paper and paper products 37 Manufacture of paper and paper products    Table by Sector   Sector  Sector  Table A1. Cont.