1. Introduction
China’s economy has grown dramatically in the last 40 years [
1]. This economic boom has not only increased China’s wealth, job possibilities, and technical advancement but also considerably improved its people’s well-being [
2]. According to the National Bureau of Statistics of China, the average life expectancy of the Chinese population increased from 68.2 to 77.93 years between 1978 and 2020 [
3]. The gross enrollment rate in higher education increased from 0.26% to 54.4%, and the incidence of rural poverty decreased from 97.5% to 0.6%.
However, along with high economic growth, China also faces severe ecological degradation and over-consumption of resources [
4], which reduces the environmental well-being of sustainable development and undermines overall human well-being [
5]. According to a study by the Chinese Academy of Social Sciences [
6], China is the world’s second-largest economy, but among 133 countries, it ranked ninth from the bottom in terms of eco-environmental competitiveness and second from the bottom in terms of air quality in 2012.
To achieve human-centered sustainable development, China must move its economy gradually toward high-quality development and its development model to “intensification, efficiency, greening, and well-being” [
7]. The report of the 19th National Congress of the Communist Party of China emphasizes that the primary goal of development is to improve people’s well-being. Under the new development concept, improving the efficiency of natural resources and ecological inputs to the level of human well-being is an unavoidable choice to support China’s green transition and achieve sustainable development [
8]. The concept of ecological well-being performance (EWP) first came from occidental countries and was proposed by Daly (1974) [
9], who used this as an indicator to measure countries’ sustainable development. Zhu (2013) [
10] introduced the concept of EWP to China and expressed EWP as the ratio of Human Development Index (HDI) to Ecological Footprint (EF). In essence, EWP measures eco-efficiency to enhance human well-being and is a broader extension of sustainable development [
11,
12]. Policymakers and academics focus on assessing EWP for coordinating economic, social, and environmental development and well-being improvement [
13,
14]. At the same time, compared with developed countries, such as the United States and European countries, China is a less developed country with a more severe situation of spatial differences and sustainable development. A detailed analysis of the evolution of spatial differences in China’s EWP and its driving effects can serve as a guide for promoting regional coordination and sustainable enhancement of EWP.
This study aimed to construct a comprehensive and accurate EWP evaluation model to quantitatively measure the EWP values at China’s regional and provincial levels. Then, we analyzed in-depth the sources of spatial differences and spatial polarization trends of EWP and clarified the policy priorities for China’s future coordinated regional development. Finally, the drivers of EWP were dissected to discover effective strategies for promoting long-term EWP improvement in China.
2. Literature Review
In recent years, considerable research around the world has focused on EWP and has achieved relatively fruitful results (
Table 1). Early studies mainly focused on expanding the evaluation methods of EWP, which can be broadly divided into two types: the efficiency model and the ratio. The efficiency model method evaluates EWP by combining multiple input and output indicators and centers on calculating efficiency values based on the distance between each production unit point and frontier. For example, Dietz et al. (2009) [
15] measured EWP for 135 countries based on the Stochastic Frontier Analysis (SFA) model. Bian et al. (2020) [
16] used the super-efficiency slack-based measure (Super-SBM) model to evaluate the EWP of 30 provincial capitals in China.
The second method measures EWP by the ratio of well-being output to ecological consumption. Since Rees [
24] introduced the EF in 1992, EF has been recognized as the definitive indicator of human ecological consumption. The characteristic and outstanding advantage of EF is the measurement of ecological consumption from the consumption side and in dimensions of both sources and sinks [
25]. Well-being evaluation indicators can generally be classified as subjective, objective, and composite [
8]. No other objective well-being indicator is as popular in academic and policy-making circles as the HDI [
26], which was constructed on the theory of viable capacity of Sen (1989) [
27], covers several countries and presents the advantages of being continuous in time and complete in content [
28]. On this basis, Zhang et al. (2018) [
8] applied the ratio of HDI to EF to measure EWP in 82 countries with populations above 10 million. In addition, common objective well-being indicators include the Physical Quality of Life Index (PQoL) [
29] and Life Expectancy at Birth (LEB) [
30]. Subjective well-being assessment indicators focus on individuals’ perceptions and feelings about the surrounding social environment [
31], and commonly used factors include life satisfaction [
32] and the happiness index [
33]. In contrast, composite well-being indicators combine the advantages of both subjective and objective indicators, of which the Happy Life Years (HLY) [
17] and the Happy Planet Index (HPI) [
34] are typical. Common (2007) [
17] applied the ratio of HLY to EF to measure the sustainable development in 143 countries.
Since then, relevant literature has gradually expanded from the evaluation method to research content, mainly focusing on analyzing spatial differences in EWP. Yao et al. (2020) [
18] analyzed the spatial distribution characteristics of EWP in China through the spatial autocorrelation model and found a significant positive correlation. Wang et al. (2021) [
19] used the σ and β convergence models to explore the spatial differences of EWP in eight economic regions in China. A convergence trend was found only for the southwest region, thus confirming that China’s EWP exhibits an imbalance with widening regional differences. Wang and Feng (2020) [
20] used the Theil index to explore the spatial differences of EWP among the three major regions of east, central, and west China. The results indicated that inter-regional differences had a significant impact on the contribution of EWP.
In addition, the driving factors of EWP have been explored. Zhu and Zhang (2014) [
21] decomposed EWP into the Economic Performance of Natural Consumption (EPNC) and Welfare Performance of Economic Output (WPEO) to explore its relationship with levels of well-being, natural consumption, and economic growth. Behjat and Tarazkar (2021) [
22] used the Autoregressive Distributed Lag (ARDL) approach to explore the short- and long-term relationships between EWP and GDP per capita in Iran. Empirical results showed that GDP per capita had a significant and positive relation with EWP, but the effect of population and energy consumption was negative. Feng et al. (2019) [
23] decomposed EWP into Industrial Structure Green Adjustment (ISGA) and Green Total Factor Productivity (GTFP) in a dynamic spatial panel model, which showed that both can effectively promote EWP in China. However, increasing GDP, expanding the scale of industrial agglomeration, and strengthening government intervention are not conducive to EWP.
Summarizing the existing literature, the EWP research has been expanded, but further improvements may be explored in the following areas. First, as the idea of “people-centered” development increasingly advances, measuring people’s happiness has become an integral part of assessing China’s EWP. However, objective well-being indicators are mainly used in constructing the evaluation model of EWP in China, and fewer studies select a combination of subjective and objective well-being indicators. Second, most existing research concentrates on assessing the spatial differences in China’s EWP by splitting into three primary regions: East, Central, and West. Not only is portraying the evolution of spatial differences in China’s EWP from many angles difficult, but the trend of spatial polarization is also rarely examined. Finally, existing studies have typically decomposed EWP into the ratio of GDP to EF and the ratio of HDI to GDP when exploring EWP drivers. Although this decomposition method links EWP with well-being, natural consumption, and economic growth, reflecting the direct impact of economic growth on China’s EWP is difficult. Moreover, subjective well-being indicators are not incorporated into the framework of EWP decomposition studies in China.
The following were the primary goals of this study. First, to accurately analyze China’s EWP, we first built a model based on the Comprehensive Well-being Index (CWI). Second, from the perspective of eight economic regions, the Dagum Gini coefficient and spatial polarization index were used to examine the evolution of spatial differences in China’s EWP, particularly the trend of spatial polarization. Third, using the Kaya Identity and LMDI method, we analyzed the driving effects of EWP in China with a unique paradigm and explored practical ways to promote sustainable development and coordinated regional development in China.
5. Discussion
EWP is uniquely positioned to measure the level of sustainable development and to coordinate economic, environmental, and social development. To comprehensively and accurately measure the level of sustainable development, this study incorporated subjective well-being indicators into the evaluation model of China’s EWP, which proved necessary. Bian et al. (2019) [
49] and Feng et al. (2019) [
23], considering only objective levels of well-being, arrived at the conclusion that the overall EWP in China was gradually improving. In this study, after considering residents’ happiness, the empirical results showed that the overall EWP in China declined from 2006 to 2018, consistent with Yao et al. (2020) [
18]. On the one hand, this was because the growth rate of China’s
EFI was faster than indicators such as resource consumption or environmental pollution in other studies. On the other hand, the growth rate of residents’ happiness was still very low. China’s economy is gradually shifting from rapid growth to high-quality development, and the government must focus on limiting the negative consequences of economic expansion on ecology and the environment to improve residents’ happiness [
19]. In future research, it is necessary to expand the application of subjective well-being indicators further to provide an up-to-date research perspective and analytical tools for sustainable development in China.
This study analyzed the spatial differences of EWP in China by dividing it into eight economic regions. Compared with the division method of the three major regions of East, Central and West, such a division method can portray the spatial differences of EWP in China in a more detailed way. The results indicated the relatively apparent spatial differences in EWP between the southwest and northeast regions and the northwest and northeast regions. China must break administrative barriers across regions and create a cross-regional sustainable development partnership framework [
13]. Moreover, the capacity for sustainable development is further stretched between provinces. This has led to a deepening spatial polarization of EWP in China. To avoid further deepening of spatial polarization induced by imbalanced resource allocation, China must boost top-level design and provide policy to provinces with weaker sustainable development capacity.
In addition, for China, economic growth is the primary goal of development. This study examined the direct effect of economic growth on EWP in China, and such an approach is rich in significance. Although economic progress has resulted in pollution and ecological degradation, its contribution to human well-being cannot be overlooked. Meanwhile, this study refered to the decomposition of EWP by Zhu and Zhang (2014) [
21], which placed higher demands on developing countries, including China, to achieve sustainable development. For developing countries that lag behind the United States and developed countries in Europe, in terms of economic development level and technological level, it is necessary to actively encourage technological innovation and green economic transformation to decouple economic growth from environmental consumption. Developing countries cannot only pursue economic growth, but must promote the relative development of the human development level and residents’ happiness to promote EWP enhancement. In addition, this study explored the driving effects of EWP in eight economic regions to provide a methodological reference for policymakers in other developing countries to formulate targeted and sustainable regional development policies.
6. Conclusions
First, overall EWP in China showed a decreasing trend from 2006 to 2018. Among the eight economic regions, the EWP of the northern coastal region, the eastern coastal region, and the southwest region showed an increasing trend. In contrast, the other regions showed different degrees of decrease. The EWP in the middle Yangtze River region and the southwest region is far above the national average, while that in the northeast region is the lowest. The EWP in China shows the spatial pattern of “high values clustering in the southwest region, and low values spreading outward from the northeast region and the middle Yellow River”.
Second, the spatial differences of EWP in China are widening, with inter-regional differences being the primary cause of these variances. The problem of spatial differences in EWP between the southwest and northeast regions and between the northwest and northeast regions is most prominent. The inter-provincial differences in EWP in the middle Yellow River region are the largest. Although inter-provincial differences in EWP decrease within the northeast region, economic and social development tends to be unsustainable.
Third, the spatial polarization of EWP in China deepened from 2006 to 2018. This is manifested by a significant decrease in the number of provinces with EWP levels in the middle strata. Provinces such as Inner Mongolia, Shanxi, Ningxia, and Xinjiang are further pulled apart by provinces with high EWP levels. China must pay special attention to the development of those provinces lagging in sustainable development.
Fourth, economic and technical effects have been driving China’s EWP, while objective and subjective well-being effects have been pulling it down. EWP progress in China is severely hampered by the country’s slow rate of improvement in well-being relative to economic development. The southwest region has made significant progress in terms of economic development and technical level, which has aided in EWP improvement. The technical effect is weakest in the northeast region, the Middle Yellow River region, and the northwest region. The objective well-being effect in the coastal region, the middle Yangtze River region, and the southwest region are slower to improve. The subjective well-being effect in the northern coastal region is still weakening.