key: cord-0886323-7c1mv5j2 authors: Liu, Qiang; Mao, Chunmei; Tian, Fan title: Influencing Factors of CO(2) Emissions in Chinese Power Industry: A Study from the Production and Consumption Perspectives date: 2022-05-04 journal: Comput Intell Neurosci DOI: 10.1155/2022/3615492 sha: 4c9906d2e9ab9fae442714865dd2b1d0891fe73a doc_id: 886323 cord_uid: 7c1mv5j2 China's huge regional differences are taken into consideration to study the influencing factors and their differences in CO(2) emissions of the power industry from different regions. This study aimed to improve the efficiency of CO(2) emission reduction policies. From the production and consumption perspectives, this study analyzes the influencing factors of CO(2) emissions and utilizes the Logarithmic Mean Divisia Index (LMDI) to decompose CO(2) emissions with consideration of the cross-regional power dispatching in the power industry. The results indicate that the trend of CO(2) emissions in the eastern, central, and western China seems similar during years 2005 to 2017 no matter from which perspective. From the production perspective, power consumption is the main factor in CO(2) emission increase and its affect extent may vary from different regions over a period of time. Energy efficiency inhibits CO(2) emission increase in all regions. The power structure and power distribution across regions affect CO(2) emissions significantly different in amount and direction from region to region. From the consumption perspective, economic activity plays a major role in CO(2) emission increase and plays a similar role in the trend of CO(2) emissions in three regions, but its affect extent on CO(2) emissions varies in different regions. Targeted policy recommendations are provided to reduce CO(2) emissions more effectively from China's power industry. Climate change caused by excessive carbon emissions is a serious threat to nature. China replaced the United States in 2006 to become the world's largest carbon emitter along with rapid economic development. After realizing the urgency of reducing CO 2 emissions, the Chinese government has decided to reduce carbon intensity by between 55% and 60% [1] . In addition, China committed to peak carbon emissions by 2030 at the Asia Pacific Economic Cooperation (APEC) in 2014 [2] , but it is not easy for China to fulfill this commitment [3] . e power industry in China is high in energy consumption and emission, which accounts for 50% of coal consumption and 40% of CO 2 emissions in China [4] . Apparently, the power industry should therefore be the priority to reduce CO 2 emissions. However, China is with regional differences in natural resources, economy, population, and technology. Taking this into account, we aimed to study the regional differences in CO 2 emissions in the Chinese power industry in order to improve the carbon emission efficiency. It is noteworthy that more scholars began to pay attention to the influencing factors of regional differences in CO 2 emissions. Some scholars have analyzed carbon inequality between countries and explained the root reasons for global inequality during the sample period [5, 6] . Malla (2009) [7] discussed the factors influencing the evolution of carbon emissions from the power industry in several countries. Its results have shown that the influencing extent of factors on CO 2 emissions varied in different countries. Except for studies among countries, some research studies have examined differences among regions in emissions within a broad country such as China. Liu et al. [8] studied GHG emission characteristics, trends, and influencing factors of four Chinese cities and concluded that emission reduction policies should vary in different cities. Chen et al. [9] studied regional differences in CO 2 emissions generated by coal consumption and explained that the root reason for emission differences is the disparity in economic growth. Moreover, some scholars have studied interregional differences in CO 2 emissions in the power industry. Wen and Yan [10] used a panel data model to study factors driving CO 2 emissions from the Chinese power industry from the regional and provincial perspectives. e results have shown that the impacts were different across regions. Zhou et al. [11] assessed the multiple factor impact of CO 2 emissions from power generation at the regional grid level from 2004 to 2010. e research found that the power grid in the northern China performed poorly. Yan et al. [12] further analyzed regional differences in power consumption and predicted CO 2 emissions for each region from 2013 to 2020 on the basis of Zhou et al.'s [11] paper. Nevertheless, previous research studied the regional differences and driving factors of CO 2 emissions in the power industry only from a single perspective of production and did not consider the balance between producer responsibility and consumer responsibility in emissions, which to some extent weakens the emission reduction effect. Carbon leakage is likely to be caused when producer responsibility is employed to calculate CO2 emission of power industry which means CO2 emission from the power industry in each region is equal to direct CO2 emission from thermal power generation. is method ignores the phenomenon of carbon leakage in interprovincial power dispatching and characteristics of interregional power dispatching. Scholars have studied regional carbon emissions from the consumption perspective due to power dispatching complexity. [13] extended the methods of Kang et al. (2012) [14] and Ji et al. (2016) [15] to propose a new estimation method, which is relatively accurate to measure CO 2 emissions of regional consumer. ere is vast power dispatching around China with the power grid construction to solve the contradiction of power supply and demand. Some scholars have proved that CO 2 emissions are significantly different under different measurement perspectives. It is unilateral for either producers or consumers to undertake emission reduction obligations. e accounting scheme of carbon emission responsibility based on producers and consumers should be adopted to solve the imbalance of CO 2 emissions in the regional power industry [16] . e paper adopts the method of Wang et al. [13] , Kang et al. [14] , and Ji et al. [15] to calculate regional CO 2 from both production and consumer perspectives. e core idea of "carbon accounting" schemes is to consider the spatial transfer of emissions caused by power trading to fully reflect consumers' environmental responsibility. It is more conducive to reveal the real situation of carbon emission transfer among regions to study from both production and consumption perspectives and provide correct suggestions for carbon emission reduction. erefore, this study employs Wang et al.'s [13] method to calculate regional CO 2 emissions from the production and consumption perspectives. e commonly used approach in previous papers to study the impact of factors on carbon emissions from the energy industry is the LMDI due to its adaptability, availability, and easy interpretation of results (Ang 2004) [17] . e main driving factors at present affecting CO 2 emissions from the power industry are divided into economic and social factors (economic activities, population, etc.), structural factors (energy structure, industrial structure, etc.), and efficiency factors (energy efficiency, consumption efficiency, etc.) [4, 10, [18] [19] [20] . However, seldom scholars regard power dispatching as a factor affecting carbon emissions. With the power dispatching increase, it should be considered as an influencing factor of CO 2 emissions caused by power generation [20] . Even if some scholars have taken power dispatching as a driving factor in carbon emission, research was studied at the national level but without taking regional differences into account. We argue that there should be differences in the impact of power dispatching on carbon emissions in power import and export regions. e current existing literature rarely considered power dispatching as a driving factor when studying regional differences in CO 2 emissions in the power industry. is usually leads to deviations in the accuracy of assessment results. On this basis, we first divide China into three regions based on different economic and geographic distributions and then calculate regional CO 2 emissions from the power industry from the production and consumption perspectives, respectively. Finally, we employ the LMDI method to determine the factors influencing the regional CO 2 emissions of China's power industry from two perspectives. Compared with existing research, we intend to contribute in two ways: (1) this study analyzes the variation trend of regional carbon emissions from both production and consumption perspectives under consideration of mass cross-regional power dispatching in China's power industry, which makes the analysis results more systematic and comprehensive. (2) Moreover, this study also divided CO 2 emission influencing factors from the power industry into production factor and consumption factor, which can determine influencing factors on CO 2 emissions from the regional power industry more accurately, and provided valuable suggestions for China to formulate more effective policies on carbon emission reduction. e rest of the study is structured as follows. Section 2 introduces the main calculation method and data description. Section 3 presents the decomposition results and discussion. Section 4 summarizes the paper and provides policy recommendations. Computational Intelligence and Neuroscience considering power dispatching across regions. e CO 2 emission formula for the given region is as follows: where C a is the CO 2 emission amount from burning of fossil fuels in one area. i is the fossil fuel type. F i is the quantity of the ith fossil fuel in this area. K is the net heating value. ε i is the oxidizer of carbon. c i is the carbon emission coefficient. 44/12 is the molecular weight ratio. We assume that the carbon emission coefficients of various fuels remain constant during the study period. Although the coefficients vary over time due to changes in fossil fuel grade, these changes are relatively small. erefore, it can be ignored in the analysis of more important coefficients in CO 2 emissions [18] . Perspective. Decomposition from the production perspective of CO 2 emission is expressed as follows: where E is the fossil fuel consumption for thermal power generation in the region. Q F is the thermal power generation in the region. Q P is the overall amount of power generated in the region (including thermal power and hydroelectric power). Q T is the total power consumption in the region (including final consumption and transmission loss). Equation ( 2) is equivalent as follows: e function could be edited as follows according to the LMDI additive decomposition method: According to the LMDI additive decomposition method, we decompose the overall change amount (△C) of CO 2 emission from the power industry into five influencing factors based on the producer responsibility in the base year and target year. CC is the carbon emission coefficient. ΔC CC is the impact of the fossil fuel structure change. EE is the energy efficiency of thermal power. ΔC EE is the influence of the energy conversion efficiency change in thermal power. ES is the power structure. ΔC ES is the change influence of power structure on CO 2 emission. IO is the power dispatching across regions. ΔC IO is the impact of changes in power distribution across regions. Q is the power consumption. ΔC Q is the impact of changes in power consumption on CO 2 . t 2 and t 1 are base year and target year, respectively (t 2 > t 1 ). We utilize the following formulas to calculate these driving factors: L is the logarithmic mean value: Perspective. Local power consumption should be taken into account when calculating the overall CO 2 emissions in the region. CO 2 emissions from power utilization are estimated as follows: where C is the actual CO 2 emissions in the region based on consumer responsibility. C b is the CO 2 emission allocation due to cross-regional power dispatching, which will be discussed in the next section. C a is the CO 2 emissions from thermal power in the region. C b is the CO 2 emission allocation in the region. We classify all provinces into two types according to [13] . where Δ is the net power consumption of one province. O is the output power from one province, while I is the input power from other provinces. Δ > 0 means that the input power exceeds output power, and the province will be regarded as power import province. Δ < 0 means that the output power exceeds input power, and then, the province will be regarded as power export province. We assume that each province gives priority to power production of its own. where C b m is the power export province. m is CO 2 emission dispatching. Q F m is the thermal power produced by province m. Q p m is the overall power produced by province m (including thermal power generation and hydroelectric power generation). Q F m /Q p m is the ratio of the thermal power Computational Intelligence and Neuroscience 3 generation to total power generation in province m. C F m is the CO 2 emissions from thermal power generation in province m. C F m /Q F m is the emission factor of the thermal power generation. Provinces. where C b n is the dispatch of CO 2 emissions in the power import province. m m�1 |C b m |/ m m�1 Q F m is the power emission factor of the total output thermal power generation, and Q F m is the thermal power generation distributed from province m. m m�1 Q F m / m m�1 Q T m is the ratio of dispatching amount on thermal power generation to total power dispatching. Q T m is the total export power of the power output province (including thermal power generation and hydroelectric power generation). Perspective. According to Kaya (1989) [21] and considering the importance of industrial structure change, we decompose the exponent of CO 2 emissions from consumption perspective as follows: Its abbreviation is as follows: GDP is the gross domestic product of the region. P is the resident population of the region. Similar to the above description, the annual rate of CO 2 increase can be decomposed into the following formula: where CI is the carbon intensity of power consumption, reflecting the cleanliness of power consumption in the region. ΔC CI is the influence of power consumption on carbon intensity changes. EI is the power intensity, which reflects the industrial structure. ΔC EI is the impact of power intensity changes. EA is the economic activities. ΔC EA is the impact of economic development and change. ΔC P is the impact of population size fluctuations. e right side of (15) can be computed as equations (5)-(9), which are not listed here due to limited space. Considering the data accessibility and the impacts of COVID-19 pandemic on energy consumption in 2020, the Chinese power industry data from 2005 to 2019 were used in this study. We employ data on energy consumption caused by power generation in different provinces from the China Energy Statistical Yearbook (2005-2019). Besides, population data and GDP data came from China Statistical Yearbook (2005-2019). Regional GDP from 2005 to 2019 was converted on the basis of the price level in 2005. e IPCC effective CO 2 emission factor and net calorific value of fuel were also considered. According to the geographical distribution and economic level, 30 provinces in China (Tibet, Taiwan, and Hong Kong were excluded) were divided into three parts. e detailed classification is listed in Table 1 . 3.1. Outline of CO 2 Emissions from the Power Industry. As shown in Figure 1 , the CO 2 emissions in three regions from 2005 to 2017 mainly go through two phases, and their trends are also similar no matter from which perspective. e first phase is from years 2005 to 2011, and the CO 2 emissions in all regions increased significantly over time. e second phase is after 2011, and CO 2 emissions in each region are only slightly increased and even decreased in some years. e trend of CO 2 emissions in recent years proves that the Chinese green and low-carbon policies in the power industry have been effectively implemented. Although the overall trend of CO 2 emissions in three regions is almost the same, it is obvious that CO 2 emissions look higher from the consumption perspective than those from the production perspective in all tress regions. e growth rate of CO 2 emissions in central China was lower than the other two regions from the production perspective. e CO 2 emissions in western China exceeded the central China from 2010 to 2011. is is mainly due to two main reasons: economic development is positively correlated with power consumption, so the developed eastern China requires a large amount of power to support its high economy. On the other hand, the economic development of western China is mainly extensive and it has carried on enterprise with high CO 2 emissions from other regions during industrial development and upgrading of China's industries. e growth rate of CO 2 emissions in the eastern China was apparently the highest from consumption perspective. e current economic development needs power support, and the high economic aggregate in eastern China is precisely supported by large quantities of power consumption. is will become even more evident under the principle of "People who consume who take the responsibility." In general, the eastern China is with the highest carbon emissions from either production perspective or consumption perspective. erefore, the eastern China should play a leading role in carbon reduction projects in the power industry. In addition, Figures 1(a) and 1(b) indicate that the regional amount and growth rate of CO 2 emissions are significantly different and the consumption side is higher than the production side in three regions from both perspectives. erefore, the analysis from two perspectives can provide a more systematic and comprehensive understanding of regional differences in CO 2 emissions in the power industry. We discuss the impact of driving factors of three regions on CO 2 emissions from the Chinese power industry in this section. e power consumption is the most important factor for CO 2 generation in all regions, which is known from results (as shown in Figure 2 and Table 2 ). e energy efficiency is the major factor in restraining every region's CO 2 emissions even though the energy efficiency improvements in the west were not significant at the beginning of the study. e power generation structure and crossregional power distribution have different effects on CO 2 emissions in terms of scale and direction in three regions. e carbon emission coefficient is not the main driving factor compared with other factors during the study period. We will discuss more details in the following parts. Changes in carbon emission coefficient have a relatively low impact on CO 2 emissions compared with other factors in all regions. It reflects that the change in fossil fuel structure in the thermal power generation is small. e ratio of coal in total fossil fuel for the thermal power generation has always remained above 90% and has no signs of decline as shown in Table 3 . Generally speaking, the fossil energy structure mainly depends on the overall regional resources. In China, the structure of fossil energy has been in a state of "more coal, less oil, and shortage of natural gas." e raw coal occupies 70% of energy consumption and will not change greatly in a short time [16] . e results show that the changes in fossil fuel structure affecting CO 2 emissions in the power industry are weak. It also proves that there is still a long way to change the mix of fossil fuels in the thermal power generation in all regions. e energy efficiency of thermal power generation is the main factor to restrain CO 2 emissions from the power industry in all regions. e CO 2 emission reductions in the eastern, central, and western China reached 43.25%, 39.86%, and 21.05%, respectively (Table 2 ). Although energy efficiency increased in all regions from 2005 to 2019, it had a smaller impact on CO 2 emission reduction in the western China than in the rest of the two regions. Additionally, we can see from Table 4 that the initial energy efficiency level is inconsistent in three regions during the study period and decreased from the east to the west. ese phenomena are mainly caused by two reasons: (1) the economy of the central and western regions is relatively backward, which still keeps following the traditional extensive growth model. Both the central China and western China pay little attention to environmental protection; (2) it is also directly related to the resource they owned. For example, the environmental cost of hydro-rich provinces such as Sichuan and Yunnan is lower than the cost of coal-fired power. As a result, the production capacity of thermal power in these regions is not fully utilized and the energy efficiency of thermal power generation is low. Based on differences in energy efficiency in regions, the central China and western China have great potential to improve technologies of energy conversion. Consumption. Hydropower is taken as the main comparison of power generation structure change. e power However, it is 40% of hydroelectric power generated from the west and less than 10% of hydroelectric power generated from the east from a regional perspective (Figure 3 ). Although the eastern China takes a low ratio in hydropower generation, it has little potential to increase this proportion (from technology perspective). e exploitable hydropower in the east coast of China only accounts for about 6% of the [22] . erefore, China should focus on optimizing the energy structure of power generation in the central and western China, especially in the western China, which is rich in natural resources. Power generation structure improvement is an efficient measure to reduce emissions, which can not only ensure the power generation but also avoid environmental pollution. e unbalanced distribution of regional natural resources is also one of the reasons affecting power dispatching. China has begun to implement power distribution measures since the 1990s to solve the mismatch problem of regional power supply and demand. Figure 2 illustrates that the impact on scale and direction of power distribution on CO 2 emissions is inconsistent among regions. e power dispatching increases CO 2 emission in eastern and central China while promoting the CO 2 emissions in western China. Although power dispatching plays different roles in different regions, it is beneficial to restrain CO 2 emissions from the power industry. us, increased efforts will continue to make power dispatching. e suppression effect on CO 2 emission of power transfer in eastern China is mainly because power import can not only solve the problem of Computational Intelligence and Neuroscience 7 insufficient power supply but also has a relatively low cost compared with power generation technology improvement. erefore, the ratio of power imports is increasing year by year. e effect of power dispatching on CO 2 emissions in western China is by promoting to suppress, and it is because the western China has already transferred natural resource advantage into economic advantage through power dispatching. With hydropower ratio growth, the western China benefits from providing clean energy to the east and reduces local environmental pollution as well [23, 24] . In addition, the import power of central China declines, indicating that power generation pressure in the central China has shifted in search of lower economic costs. China will continue to vigorously promote power dispatching to address the imbalance between supply and demand and reduce emissions by current policies. us, western China should accelerate the improvement of energy efficiency and power generation structure with increased power dispatching. Power consumption is the primary factor that increases CO 2 emissions of the power industry with an impact of 158.39%, 170.12%, and 147.91% on overall CO 2 emissions in eastern, central, and western China, respectively. According to Figure 2 , the impact of power consumption on CO 2 emissions from the power industry is almost consistent with the economic cycle. Mi and Zhao (2012) [25] have verified the Granger causality between power consumption and economic development. ey believe that economic development inevitably leads to power consumption, and power consumption will support economic development in turn. It is interesting to find out that although three regions are different in initial economic levels, the power consumption has almost the same tendency to affect CO 2 emissions from the power consumption. As a result, we could not simply assume that the CO 2 emission growth rate caused by power consumption is lower in central and western China because of the lower level of economic development. Moreover, Figure 2 indicates that the enhancement effects of power consumption on CO 2 emissions in the power industry reduce in all regions since 2011, especially in the central China. Nevertheless, the power consumption restriction has its limitation in reducing CO 2 emissions due to tons of power required in regional development. High economic development and intensive population in eastern China lead to high power consumption demand. e acceleration of industrialization also required huge amounts of power in western China. Compared with western and eastern China, the central China is a transitional zone and its power consumption has a relatively lower impact on CO 2 emissions, but its power consumption, which remains stable, has no trend of decline. Economic activity is the main factor leading to CO 2 emission increase in three regions, and affecting trends in all regions seem similar, but CO 2 emissions in 2017 from economic activity in eastern China increased rapidly. Still, the carbon intensity and power intensity of power consumption are two key factors to restrain CO 2 emissions and these two factors influence CO 2 emissions, which vary from region to region. e population density has a relatively lower effect compared with other drivers. e carbon intensity of power consumption is an intensity index to measure the cleanliness of regional power consumption from the consumption perspective. It plays a positive role in reducing CO 2 emissions, which accounts for -46.82%, -46.19%, and -61.83% of overall CO 2 emission changes in eastern, central, and western China, respectively, during the study period (Table 5 ). Contrary to the above energy efficiency factors, the carbon intensity of power consumption in western China is the lowest, indicating that power consumption in western China has the highest cleanliness (Table 6 ). e western China has no responsibility to bear CO 2 emissions generated by power output, and its carbon intensity of power consumption can accurately measure the power consumption cleanliness. However, the power consumption cleanliness in western China decreased in 2017, which might be affected by extensive industry migration. Besides, the clean energy development in central and western China is also an important reason for the highest cleanliness of power consumption in the western China. As Figure 4 demonstrates, the carbon intensity of power consumption has a low impact on CO 2 emissions in three regions at the beginning of the study while increases significantly in the later stage, which is mainly attributed to the cleanliness improvement of power consumption due to the rapid growth of hydropower in the central and western China at the end of the study. e power consumption cleanliness improves greatly and plays a role in restraining CO 2 emissions in the eastern China due to the implementation of power transmission project. e carbon intensity of power consumption is an index influenced by multiple factors, including the cleanliness of region that only produced power and imported power. Everyone should work together to improve the power consumption cleanliness. Power intensity represents the dependence of GDP on power consumption. Its change reflects the influence of industry structure change. Although the power intensity promotes the CO 2 emissions in western China during the study period, it is the main factor in reducing CO 2 emissions in all regions. Compared with eastern and central China, the change in power intensity in western China has less impact on CO 2 emissions. is is mainly due to different industrialization levels in three regions. Table 7 demonstrates that there are significant differences in power intensity levels of three regions. e power intensity decreases progressively from east to west, which reflects the differences in the original industry structure among regions. After a series of national strategies issued, some highconsumption and high-polluting industries have been moved inland and the overall economic growth disparities among regions have been gradually reduced [26, 27] . e results indicate that the reduction in secondary power consumption in western China is not obvious, but the industry structure has gradually improved in the western China. Actually, the Chinese government acknowledges that the industry transfer can only eliminate regional economic differences, but not reduce total CO 2 emissions. us, the backward heavy industry technologies and industries in all regions should be eliminated to reduce total carbon emissions. e per capita GDP is a comprehensive indicator reflecting economic growth and quality of life. Figure 4 indicates that economic activity is the first driving factor for CO 2 emission increase from the power industry in all regions. e overall change in three regions increased by 177.50%, 209.06%, and 178.44%, respectively. is finding is in line with the results of Yang and Lin (2016) [4] and [18] . e power generation, which is an essential element of productive activity, supports economic development. e economic development in turn gives rise to power demand and CO 2 emission increase. ere are obvious economic level differences among regions in China since the reform and opening-up [28] . However, the influences of economic activity on driving CO 2 emissions in the three regions are in the same manner and fluctuate with the economic cycle. is is because economic activity (GDP/P) changes with the economy when the fluctuation of population scope in a region is very small. With the Chinese economy entering the new normal, the GDP growth has been transformed from rapid growth into medium-high-level growth since 2013. e economic activity makes a lower contribution to decreasing CO 2 emissions with the development of high-quality economy. Scholars have proved that economic growth and environmental pollution have an inverted U-shaped relationship. ere is still a long way for eastern China to reach the inflection point of inverted U shape of the most economically developed region in China. us, the economic activity will become the major driving factor in environmental pollution for a long time [29, 30] , but economic activity can restrain CO 2 emissions from the power industry to some extent. For instance, officials in prosperous regions have a strong sense of environmental protection, while officials in impoverished regions are limited to economic development. erefore, maintaining high-quality economic development is an effective way to slow down CO 2 emissions. e impact of population size on CO 2 emissions can be ignored compared with other influencing factors. e change in population size influences CO 2 emissions more obvious in eastern China compared with the rest of the two regions. e eastern China has a large population, which is mainly because of massive influx of people attracted by its blossom. Overall, population size has little effect in CO 2 emissions and it will not change much in the coming years [19] . is study aims to study regional differences in CO 2 emissions from China's power industry. Due to the universality of cross-regional power dispatching in the power industry, different regions have different CO 2 emission responsibility from the production and consumption perspectives. is study decomposes CO 2 emissions by LMDI and determines the factors affecting CO 2 emissions from both mentioned perspectives. Based on the decomposition results from 2005 to 2017, we observe significant differences in factors influencing CO 2 emissions from the power industry in scale and direction among regions. erefore, measures to reduce CO 2 emissions from the power industry should vary from region to region. is research has mainly discussed the impact of energy supply and demand distribution on carbon emissions from perspectives of energy supply and demand and power dispatching, and we aim to provide a reference for planning decision-makers and institution makers. From the production perspective, (1) Although power consumption has a decreased influence on CO 2 emissions in recent years, it remains the leading factor increasing CO 2 emissions in all regions. It is unrealistic in practice to control CO 2 emissions by restraining power consumption, especially in the eastern and western China. However, the Chinese government can enforce economic regulations to avoid excessive demand, which will contribute to reducing CO 2 emissions. (2) Energy efficiency is the main factor restraining CO 2 emissions in all regions, but the initial levels of energy efficiency in different regions are significantly different. e central China and western China still have plenty of room to improve energy efficiency compared with the eastern China. us, the government should increase financial investment in energy efficiency in these two regions, such as continuing to restrict small-scale power generation enterprises and encouraging advanced energy conversion technologies. (3) In addition, power structure and power distribution affect CO 2 emissions differently in scale and direction in three regions. erefore, measures to reduce CO 2 emissions should vary from region to region. For example, the central and western China should take advantage of rich resources to optimize the power generation and thus reduce carbon emissions. Moreover, the eastern China should increase the dispatching of project to send power from the west to the east with the increase in hydroelectric power generation, so that the eastern China can fully benefit from hydropower of other regions. From the consumption perspective, (1) Economic activity is the major factor to increase CO 2 emissions in all regions, and its influences on increasing CO 2 emissions in all regions bear out the similar trend. As the economy grows, the local government should increase fiscal spending on environmental protection, especially in less developed areas where officials lack adequate awareness of environmental protection. In addition, China should always pay attention to the economic growth quality and accelerate the transformation of economic model from extensive to intensive. (2) e power intensity should keep improving despite that the overall CO 2 emissions continue to rise. e carbon intensity of power consumption and power intensity are main restraining factors to CO 2 emissions in all regions, and their influences vary in different regions. It is wisdom for the Chinese government to implement industry transformation policies given that different regions are different in industrialization and economic development. e eastern China has transferred energy-intensive and heavily polluting industries to the central and western China as they have abundant natural resources and favorable markets, which can reduce the energy loss and cost during transportation. However, the regions that industry moves into should reject the backward industries to avoid carbon leakage and achieve the overall goal of low CO 2 emissions. To sum up, reducing CO 2 emissions is not a simple unilateral action. e Chinese government should recognize regional differences and adopt targeted policies from the production and consumption perspectives to create a "low-carbon environment" for the power industry. From the perspective of cross-region power dispatching policy: (1) is study discussed the cross-region power allocation, which was viewed as an effective energy-carbon allocation measure. Currently, from the perspective of practice, the effectiveness of this allocation measure is mainly reflected in two aspects: (1) the cross-region power dispatching is in accord with the reality that the energy distribution does not match with the population and industry distribution in China. e energy supply in China is mostly located in the western region, while the major electricity demand from production and life is located in the coastal economic belt. Without long-distance power dispatching, most renewable energy could not be totally consumed by the local region. (2) In China, most of the renewable energy supply comes from underdeveloped regions, which have low payment capacity for energy consumption. e cross-region power dispatching could effectively improve the economy of renewable energy from the demand side, which would contribute to the carbon emission reduction process in China. is effectiveness could be viewed as the imbalance consideration of natural distribution on the supply and demand side in regional energy planning. Hence, cross-region power dispatching is generally an irresistible choice, which is similar in developed regions such as Europe and the United States. In fact, although the new petrochemical power company in the western China would generate large carbon emissions, the cross-regional scheduling is beneficial due to the advanced energy efficiency and its contribution to the stability of the power system. is is also an episode in the process of technological change in the power industry. Issues. When will this trans-regional power dispatching be ineffective? Apparently, it will result in an overall carbon emission increase to relocate power supply utilities from developed regions to underdeveloped regions simply because of carbon regulation. Moreover, the trans-regional power dispatching might result in comparative advantages of carbon permit only because of the difference in development among regions. To be specific, the carbon price is low in central and western regions thanks to abundant carbon sinks, while traditional power generation enterprises move westward because of the shortage of carbon permit. In this vein, trans-regional power dispatching should be assessed whether the increase in the economic development of western underdeveloped regions by this dispatching is worth the carbon emission generated by it. In the context of global carbon neutrality, this comparative advantage will disappear with the improvement of the balanced regional development and the diffusion of lowcarbon technologies. As a result, the extent of trans-regional power dispatching will be suppressed. Under what circumstances would this trans-regional power dispatching be more effective? In addition to the trans-regional power dispatching driven by high demand, the difference in the development intensity and potential of renewable energy among different regions are the natural driving factors for trans-regional power dispatching. From the perspective of supply side, preferential access, preferential dispatching, and preferential pricing of low-carbon power are the institutional motivation of trans-regional dispatching. From the demand side, the pricing system of integrated energy price, which includes carbon price, trading system of power system, and subsidy system of low-carbon electricity, will make it more feasible and efficient to promote trans-regional power dispatching of renewable energy power. Generally speaking, pricing market transactions and priorities of supply and demand can not only directly affect the supply and demand relationship of low-carbon power but also affect the possibility and utility of trans-regional power dispatching of low-carbon power. Finally, we try to discuss the similarities and differences between China and Europe in power dispatching and relevant policies. Since the operation of ENTSO-E in 2009, the EU has established a unified power market in the form of an operator alliance, and the proportion of transnational exchange electricity is about 15%. In particular, typical countries include Denmark (dominated by thermal and wind power), Norway (dominated by hydropower), and Sweden (dominated by hydropower and nuclear power). Due to the differences in energy distribution and demand, Computational Intelligence and Neuroscience electricity exchange between countries is common. e unified grid connection and standard would be valuable for Europe, and a flexible electricity price system and even negative electricity price (encouraging users to use off-peak electricity) and accurate power accounting ability in Europe would be valuable for China. Besides, studies in Europe show that carbon tax, carbon price, and the improvement of crossborder transmission capacity could contribute to the production of low-carbon electricity [31, 32] . e data used to support the findings of this study are included within the article. e original details of the data presented in this study are available on request from the corresponding author. e authors declare that they have no known conflicts of interests or personal relationships that could have appeared to influence the work reported in this study. 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