1. Introduction
China is in the process of rapid urbanization and industrialization, consuming a large amount of various fossil energy sources. At present, China’s carbon dioxide emissions have surpassed that of the United States, becoming the world’s largest carbon dioxide emitter [
1]. With the rapid economic development and urbanization, the rapid population growth is accompanied by the large-scale use of various fossil energy sources [
2]. Greenhouse gases continue to increase. Human activities emit large amounts of greenhouse gases, which contribute to the greenhouse effect and, ultimately, to global warming. The increase of carbon emissions will not only cause a series of problems, including global warming, but also endanger the sustainable development of human beings. In recent years, the warming of the climate system has become an indisputable fact. The issue of carbon emissions is also becoming more and more important for individual countries [
3]. The fifth report of the IPCC of the United Nations Special Committee on Climate Change pointed out that, since industrialization, the increase in the carbon dioxide concentration has mainly been due to emissions caused by the burning of fossil fuels and changes in land use. From 1850 to 1998, the direct carbon emissions from land use and its changes accounted for one-third of the total carbon dioxide emissions from human activities, which had a very important impact on the global carbon cycle [
4]. The impact of land use on carbon emissions has attracted widespread attention from various countries [
5].
The carbon emission effect of land use has also been studied deeply and systematically by scholars in many countries [
6]. Among them, some scholars have conducted in-depth research on the development of an agricultural soil carbon inventory in Ontario, Canada; the methods used to estimate carbon emissions range from simple empirical factors to complex process-based ecosystem models [
7]. Critical gaps have been identified and improvements proposed that can be applied to developing countries in the future. Zuo et al. [
8] deeply studied the land carbon emissions in Guangdong Province and found that the marginal carbon emission factor can reflect the real-time carbon emissions of the system more accurately. The results showed a significant increase in the marginal carbon emission factor for the peak demand time. Some researchers have studied the relationship between urban sprawl and carbon emissions in the metropolitan area of Monterrey, Mexico [
9]. Lai et al. conducted research on carbon emission assessment and carbon reduction strategies in newly urbanized areas, selecting three different new urban areas for analysis; relevant emission reduction strategies were planned and implemented [
10].
In terms of model methods and data, Lv et al. [
11] used the panel data of 11 cities in Jiangxi Province from 2007 to 2018, and Driscoll–Kraay estimation was used to explore the impact and effect of econometrics on emissions. Studies have shown that population, economy, energy and social urbanization play positive roles in promoting carbon emissions, while ecological urbanization plays a positive role in blocking carbon emissions. Luo et al. [
12] used the AIM/ENDUSE model to analyze the changes and differences of the Great Bay Area (GBA) installed capacity, power supply, energy consumption and carbon emissions under different auction ratios and price combinations. The research also explores the best way to carry out energy transformation in the power industry of GBA. Using Landsat measurements to measure carbon emissions, which are also common, Chinese scholars have calculated the number of urban agglomerations in the Yangtze River Delta. Additionally, in the past 20 years, urban land carbon emissions increased about twice as much as urban land area [
13]. The quantification of the CO
2 released by gases into the atmosphere is relevant for the evaluation of the balance between deep derivation, biogenic and anthropogenic contributions [
14]. Zhang et al. [
15] conducted in-depth research on the Yellow River Basin of China. They analyzed the spatial and temporal distribution characteristics of carbon emissions in the Yellow River from 2000 to 2019 by constructing a carbon emission model, carbon footprint and Moran’s I index. Due to the size of China’s population, the impact of China’s population aging problem on household carbon emissions is also significant, Fan et al. [
16] found that rural population aging has a significant positive effect on household carbon emissions in northern heating regions. Through the analysis of its potential mechanism, it is determined that the consumption structure and consumption level are the mediating factors that influence the nonlinear relationship between urban population aging and urban household carbon emissions.
This paper takes 30 provincial administrative units in China as the study area to explore the spatial and temporal evolution of land use carbon emissions, carbon absorption and net carbon emissions in China’s provinces from 2003 to 2016 and analyzes the fairness and variability of carbon emissions through the Gini coefficient, ecological support coefficient and economic contributive coefficient of land use carbon emissions based on a spatial and temporal analysis. A relevant study on land use carbon compensation was also conducted. This paper analyzes the pattern of land use carbon sources and carbon absorption in China as a whole and provides a reference basis for advocating energy conservation and emission reduction and developing a regional low-carbon economy in China. This paper is important for improving the efficiency of carbon emission reduction task allocation in each province and further understanding the intrinsic mechanism of land use carbon emissions.
3. Results and Discussion
3.1. Trends in Carbon Emissions and Carbon Absorption Time in Provinces
To further clarify the temporal trends of land use carbon emissions and carbon absorption in each province, this paper calculated the tendency values of the total land use CO2 emissions and absorption in each province of China from 2003 to 2016 using a trend analysis. The natural breakpoint method of ArcGIS was used to divide the growth trend of CO2 emissions and total absorption of land use in each province into five types: slow growth, slower growth, medium growth, faster growth and rapid growth.
The carbon emission results show (
Table 1) that three provinces in China are of the rapid growth type and four provinces are of the faster growth type, concentrated in the west, as well as the middle reaches of the Yellow River (
Figure 4), mainly due to the rapid growth of arable land and construction land area in these areas. Seven provinces in China belong to the slow growth type, and 12 provinces belong to the slower growth type concentrated in the northwest, southwest and southern coastal areas, as well as the northeast, mainly due to the relatively low level of economic development in these provinces and the land use is mostly woodland and grassland. With the continuous expansion of the woodland and grassland areas, carbon emissions grow slowly.
The results of the carbon absorption (
Table 2) show that two provinces in China are of the rapid growth type and three provinces are of the faster growth type, concentrated in the middle reaches of the Yellow River and the northern coastal areas (
Figure 4). Due to the development of agricultural production, scientific and technological progress, the crop yield per unit area significantly increased; therefore, the carbon sequestration capacity of the crops during the reproductive period also increased, and the rate of the carbon absorption grew rapidly. Eleven provinces in the country are designated as slow growth, and nine provinces are slower growth and are concentrated in the northwestern, southwestern, southern coastal areas and northeastern regions. This is mainly because of the development of the western development strategy back to forest, pasture and grass. However, because of the slow increase in woodland and grassland areas, the growth of CO
2 absorption is slow.
3.2. The Characteristics of Space–Time Distribution of Carbon Absorption in Land Use
The global Moran’s I index reflects the aggregate change of the national land use CO
2 absorption distribution. The global Moran’s I indices for 2005, 2010 and 2015 were 0.162, 0.173 and 0.181. The index is positive at the 1% significance level and shows an upward trend. Scatter plots, as shown in
Figure 5, show that there was a spatial positive correlation in CO
2 absorption, and the correlation gradually increased during the study period.
In order to analyze the spatial aggregation type of CO2 absorption in land use, the LISA index of 30 provinces was calculated, and four types of High–High Cluster, High–Low Outlier, Low–High Outlier and Low–Low Cluster were calculated according to the LISA index.
The results found a High–Low Outlier area in Inner Mongolia, a Low–Low Cluster has formed in Shanghai and a High–High Cluster was formed in Yunnan in 2010 (
Figure 6). The Inner Mongolian grassland area is large and is seen as the main carrier of carbon absorption. The area of cultivated land and woodland in Shanghai is small, and the carbon absorption is relatively small. In 2010, the State Council approved an overall land use plan for Yunnan Province, with special emphasis on strengthening the protection of cultivated land, especially basic farmland, strictly controlling the occupation of cultivated land by non-farm construction, increasing the intensity of supplementary cultivated land and strengthening the protection and construction of basic farmland, stabilizing the quantity and improving the quality so the CO
2 absorption is higher.
3.3. Space-Time Distribution Characteristics of Carbon Emissions from Land Use
As shown in
Figure 7, the global Moran’s I indices of the 30 provinces in 2005, 2010 and 2015 were 0.278, 0.280 and 0.257, showing significant spatial clustering. The significance showed a trend of increasing first and then decreasing. It can be seen that carbon emissions show a positive spatial autocorrelation on the whole, and the clustering in the sub-quadrants is more prominent. This shows that China’s provincial carbon emissions mainly show High–High and Low–Low spatial agglomeration characteristics, indicating that China’s provincial carbon has a high spatial dependence.
It was found (
Figure 8) that high-value carbon emission communities were formed in Liaoning, Shanxi, Shandong and Jiangsu. The high-value carbon emissions in 2015 were concentrated in Shanxi, Shandong and Inner Mongolia. Shanxi Province is a famous coal-producing area in the country, and its energy structure is dominated by coal. Shanxi Province is a typical coal-based energy economy. Rapid economic development has accelerated the massive increase in carbon emissions. Shandong Province has experienced rapid economic development in recent years, urbanization and industrialization have progressed rapidly and much cultivated land has been converted into construction land. The increase in construction land is an important reason for the high concentration of carbon emissions in Shandong Province. In 2005, the carbon emissions of Inner Mongolia showed a high concentration, which was due to the fact that there are many industries with high energy consumption in Inner Mongolia, and the construction land area of Inner Mongolia is gradually expanding.
3.4. Spatiotemporal Distribution of Net Carbon Emissions from Land Use
As shown in
Figure 9, the global Moran’s I of the 30 provinces in 2005, 2010 and 2015 were 0.236, 0.241 and 0.241, showing significant spatial clustering. It can be seen from
Figure 9 that the total net carbon emissions show a positive spatial autocorrelation on the whole, and the clustering in the sub-quadrants is more prominent. The provinces are mainly concentrated in the first and third quadrants, and there are fewer provinces in the fourth quadrant. This shows that the total net carbon emissions in China’s provinces mainly show High–High and Low–Low agglomeration. When the Low–High situation appeared in 2005, it indicated that there was a spatial connection form in which the low net carbon emission area was surrounded by the high net carbon emission area, and there was a strong negative spatial correlation and significant heterogeneity.
It was found (
Figure 10) that a Low-High Outlier was formed in Inner Mongolia in 2005. It can be seen that Inner Mongolia is affected by the surrounding high agglomeration areas, such as Liaoning and Shanxi. The High-High cluster of net carbon emissions was mainly in Shanxi, Henan, Shandong and Liaoning. This is due to the large area of construction land in these provinces, the rapid economic development in recent years and the large energy consumption. By 2015, Liaoning and Henan were no longer high-value clusters. This is because Liaoning and Henan Provinces have adjusted their energy-intensive industries in response to the national emission reduction policy. In 2005, a Low-Low cluster was formed in Sichuan and Yunnan. By 2015, the Yunnan-Guangxi Low-Low Cluster was finally formed. This is because the two provinces of China, Yunnan and Guangxi, have vast forest areas and a strong carbon absorption capacity.
3.5. Gini Coefficient, Ecological Support Coefficient and Economic Contributive Coefficient
The Gini coefficient from 2003 to 2016 was calculated by Formula 10, and the trend is shown in
Figure 11. The Gini coefficient of carbon emissions from 2003 to 2016 was concentrated between 0.2636 and 0.3522 and was relatively average from 2010 to 2012. As a whole, the study period shows a decreasing trend followed by an increasing trend, using 2012 as the cut-off point. The Gini coefficient kept decreasing from 2003 to 2012, which indicated that, with the implementation of national policies such as Western development and the revitalization of old industrial bases in Northeast China, the synergy of regional development has been enhanced. At the same time, the implementation of various forest protection policies has promoted the continuous narrowing of the gap between the distribution of carbon emissions and carbon absorption between regions. The Gini coefficient increased slightly from 2013 to 2016, indicating a gradual widening of the gap between the regional distribution of carbon emissions and carbon absorption.
Taking 2016 as an example, the ecological support coefficient of carbon emissions in China’s provinces is analyzed. It is found in
Figure 12 that the spatial distribution of the ecological support coefficient is quite different. Inner Mongolia, Heilongjiang, Jilin, Fujian, Jiangxi, Hubei, Hunan, Guangxi, Chongqing, Sichuan, Yunnan, Gansu, Qinghai, Xinjiang and 14 other provinces exceeded 1.0, and the highest was Qinghai at 6.76. The ecological support coefficients in Northeastern and Southwestern China are generally high, most of which are above 2.0. This shows that the main grain-producing areas and forest-rich areas have a high carbon sink capacity and relatively low carbon emission intensity. The ecological support coefficients of Beijing, Tianjin, Shanxi, Shanghai, Ningxia, etc. are lower than 0.3, causing inequity. This shows that the low carbon sink level of the above regions struggles to offset the carbon emissions generated, causing other regions to bear the burden. The ecological and environmental impacts caused by the greenhouse effect are disproportionate to the carbon emissions.
Figure 12 shows that the economic contributive coefficient is between 0.15 and 4.24. Beijing’s economic contributive coefficient is the highest at 4.24. Shanxi’s is the lowest at 0.15. This shows that the economic contribution rate and carbon emission contribution rate of each province are in an unbalanced state, and the spatial distribution is obviously different. The overall spatial characteristics are that the economic contributive coefficients of the Beijing-Tianjin region, the Yangtze River Delta, the two lakes and the Guangdong region are high, which indicates that the above regions have a higher economic development efficiency and energy utilization efficiency and stronger carbon productivity. Hebei, Shanxi, Inner Mongolia, Liaoning, Heilongjiang, Guizhou, Shaanxi, Gansu, Ningxia and Xinjiang are all below 0.7, along with most of these are western and northeastern provinces, which are important areas that cause inequity. The above regional economic development efficiency and energy utilization efficiency are low. As a result of generating a certain percentage of carbon emissions, the regional GDP that matches the carbon emissions has not been harvested.
According to the 2016 economic contributive coefficient and ecological support coefficient, the divisions into different evaluation matrices are shown in
Table 3.
From
Table 3, it can be seen that
ECC > 1 and
ESC > 1 accounted for 30% of the study area. Jilin, Fujian, Jiangxi, Hunan, Hubei, Guangxi, Chongqing, Sichuan, Yunnan, etc. have a moderate level of economic development compared with the other provinces. These provinces have a relatively high economic development efficiency and high carbon ecological capacity.
There are eight provinces in the areas of ECC > 1 and ESC < 1, accounting for 26.67% of the research area. Beijing, Tianjin, Shanghai, Jiangsu, Zhejiang, Guangdong, etc. have higher levels of economic development. Their ecological support coefficients are low, and from an ecological perspective, that has harmed the interests of other regions.
Regions with ECC < 1 and ESC > 1 account for five provinces. The economic development of Inner Mongolia, Heilongjiang, Gansu, Qinghai and Xinjiang and, in some other more sparsely populated areas, is relatively backwards, and the economic contributive coefficient is low, but the ecological support coefficient is high. Either the area of crop planting is extensive or the woodland and grassland are rich in resources and the carbon absorption is high. From an ecological perspective, that contributes to other regions.
Other provinces are “too-low” areas. These provinces have low ecological support coefficients and economic contributive coefficients, and their carbon emission ratios exceed the carbon sinks and GDP ratios at the same time. They are important areas that lead to unfair carbon emissions. From the perspective of economic development and ecology, these regions have harmed the interests of other regions.
4. Conclusions
During the study period, the provinces with rapid growth and faster growth carbon emissions nationwide were concentrated in the west and the middle reaches of the Yellow River. Slow growth and slower growth provinces are concentrated in the northwest, southwest, southern coastal regions and the northeast. The provinces with rapid growth and faster growth carbon absorption throughout the country are concentrated in the middle reaches of the Yellow River and the northern coastal areas. The provinces with slow growth and slower growth are concentrated in the northwestern, southwestern, south coastal and northeastern areas.
From the perspective of carbon absorption, the amount of carbon absorbed by cultivated land has increased year by year, the amount of carbon absorbed by woodland has increased slowly, with a small increase overall and the amount of carbon absorbed by grassland has continued to its decrease. The degree of spatial agglomeration of carbon absorption is obvious, forming a High-High agglomeration in Yunnan Province in 2010 and always a High-Low agglomeration in Inner Mongolia and a Low-Low agglomeration in Shanghai during the study period from 2005 to 2015.
From the perspective of carbon emissions, the emissions from construction land are the main source of total carbon emissions, and the proportion of carbon emissions from cultivated land is relatively low. The degree of spatial concentration of carbon emissions has become more and more noticeable. In 2015, a High-High Cluster area of Shanxi-Shandong-Inner Mongolia was formed.
There are obvious regional differences in the net carbon emissions. From 2005 to 2015, a Low-Low agglomeration was in Southwest China and a High-High agglomeration was in the central part of China and the Bohai Rim. By 2015, the Yunnan-Guangxi Low-Low cluster and Shanxi-Shandong High-High cluster were finally formed.
Carbon emissions are unfairly distributed, and the spatial distribution is significantly different. According to the carbon emission Gini coefficient, it was found that the regional distribution gap between carbon emissions and carbon absorption increased from 2013 to 2016. The spatial differences of the ecological support coefficient and economic contributive coefficient in 2016 were more obvious. The ecological support coefficient was relatively high in Southwest and Northeast China and low in Shanxi, Beijing and Tianjin. The highest economic contributive coefficient is in Beijing, and the main regional distribution of inequitable economic contribution is concentrated in the northeast and northwest regions.
In the apportionment of carbon emission reduction responsibility, the spatial distribution characteristics of carbon emissions should be fully considered, and the carbon emissions of each province under the perspectives of producer responsibility and consumer responsibility should be comprehensively considered. The reasonable allocation of carbon emission reduction responsibilities among provinces strengthen the collaboration of provincial and regional carbon emission reduction and promote interprovincial carbon fairness. The provinces should formulate interprovincial complementary emission reduction policies to achieve their carbon reduction targets in collaboration.
Carbon compensation should be implemented in combination with land use carbon emissions and carbon absorption, and the carbon compensation standard should be adjusted appropriately with the development of the economy and the changes of carbon emissions and absorption. The existing national standards should be followed, combined with different industries and different fields to make dynamic adjustments, and appropriately improve the carbon compensation standards. Adjusting the carbon compensation standards can improve the overall effectiveness of carbon compensation, and setting uniform standards is conducive to better control the environmental impact of carbon emissions.
Optimize the structure of land use. Reasonably control the total amount and development of construction land, rationally plan construction land, improve land use efficiency and realize the economical and intensive land uses. For developed cities, it is necessary to increase the areas of green space and rationally plan urban plant configurations to enhance the carbon sinks.
Improve the policies on carbon emissions. As the state implements policies such as the large-scale development of the western region and the revitalization of the old industrial bases in Northeast China, it has strengthened the regional development synergy. However, the regional distribution gap between carbon emissions and carbon absorption has gradually widened, indicating that the government should strictly implement various forest protection policies and quota logging systems to promote the continuous narrowing of the gap between regional carbon emissions and carbon absorption and distribution. At the same time, the protection and management of grassland ecosystems should be strengthened and cultivated land protection mechanisms established. The development of unused land and idle land and shift to land use types such as woodland, grassland and cultivated land should be encouraged.
Cultivate citizens’ low-carbon awareness. The fifth report of the United Nations Intergovernmental Panel on Climate Change (IPCC) states that human activities have caused more than half of the global warming since the 1950s. It is urgent to establish the values of low-carbon environmental protection and the responsibility of low-carbon emission reduction. It is necessary to strengthen the publicity of low-carbon life and make every citizen an advocate of this.