1. Introduction
China’s environmental situation is gloomy as the world’s greatest energy consumer and carbon emitter. As a consequence, we must apply new development ideas, prioritize the construction of an ecological civilization system, and stick to the green, circular, and low-carbon economic development road. Dig is a driving force for high-quality economic development. Meanwhile, it is conducive to the green transformation of economic development, strengthening the prevention and control of EP, and improving the system of ecological civilization [
1,
2]. New models and business models are emerging, bringing disruptive changes to the development of modern services, advanced manufacturing, new industries, and other industries. The development of Dig mainly affects pollution through enterprise production modes, government management systems, and environmental protection supervision mechanisms [
3,
4,
5]. However, new models and business models are emerging, bringing disruptive changes to the development of modern services, advanced manufacturing, new industries, and other industries. The development of Dig mainly affects pollution through enterprise production modes, government management systems, and environmental protection supervision mechanisms [
5,
6,
7,
8]. However, the development of new generation information technology, artificial intelligence, supercomputers, and other digital technologies can improve innovation efficiency, reduce production and management costs, and promote the optimal allocation of production factors [
9,
10]. Therefore, exploring the impact of Dig development on EP and its mechanisms is of great research significance for improving the ecological environment and promoting green transformation and development of the economy.
Dig refers to a variety of economic activities that utilize digital technologies such as advanced knowledge, technology, and information to continuously optimize resource allocation and regeneration [
11]. The relevant research on Dig mainly includes Dig and total factor productivity [
12,
13], green development [
14,
15], technological innovation, and industrial integration [
9,
10,
16]. Advanced digital technology has gradually penetrated people’s daily lives, bringing great changes to production management and creating a broad space for digital transformation and industrial economic development [
3,
17]. There are many studies on the factors affecting environmental protection. The early research mainly focused on the level of economic development and EP. Grossman and Krueger [
18] found an inverted U-shaped relationship between per capita income and pollution, and proposed the environmental Kuznets curve theory (EKC). Some scholars have researched the influences and paths of EP, energy conservation, and emission reduction from different perspectives, such as developing a green economy, environmental regulation, direct financing, population agglomeration, and technological innovation [
19,
20,
21,
22,
23,
24,
25,
26]. Some of the scholars have also discussed the relationship between EP and green total factor productivity (GTFP). On the one hand, the study found that environmental policy cannot promote the long-term sustainable increase of GTFP in industrial industries, but can increase the economic output of polluting industries by covering the cost of reducing emissions [
27]. On the contrary, some studies have suggested that technological progress promoted the chemical industry to significantly increase GTFP after the implementation of the air pollution control plan [
13,
28]. However, research on the impact and mechanism analysis of the digital economy and environmental pollution in the existing literature is relatively rare. Consequently, there is currently little research concerning the way the digital economy affects environmental damage as a result. Analysis of its influence mechanism and particular effects is particularly unusual. However, the research literature on the effects of Dig on EP is relatively limited. Some scholars pay attention to the relationship between digital finance and the green economy, total factor productivity, and technological innovation. Most of the existing literature takes the Internet, big data, intelligent development, or digital finance as the entry point to analyze its impact on resource utilization and carbon emissions, but the Dig and further study of the influence of EP are relatively few.
In view of the gap in the existing literature, this paper aims to use a variety of econometric models to analyze the nonlinear effects of the digital economy on environmental pollution, and explore its impact mechanism and heterogeneity. Specifically, the main contributions of this study are as follows: First, on the basis of reasonable measurement of Dig, this article discusses the impact of Dig on EP and analyzes its impact mechanism. Second, this article verifies the nonlinear relationship between Dig and EP, and analyzes the heterogeneity from regional and industrial perspectives. Third, the spatial effects of Dig on EP are analyzed by using spatial quantile regression; furthermore, the nonlinear influence of digital economy on the discharge of sulfur dioxide, soot, and industrial wastewater is analyzed. It provides some new ideas and methods for promoting green economy development and environmental protection. Meanwhile, it provides reference for other countries to promote green, circular, and low-carbon development.
The structure of this article is as follows:
Section 1 is the introduction.
Section 2 is the literature review and presents the relevant theoretical analysis.
Section 3 deals with the research design, including variable selection, data sources, and model construction. Then,
Section 4 is the analysis of the empirical results, including the test of nonlinear relationship, robustness test, heterogeneity analysis, influence mechanism, spatial effect, and further discussion. Finally,
Section 5 provides the conclusions and some policy recommendations.
3. Research Design
3.1. Variable Selection
3.1.1. Explained Variable
Environmental pollution (EP). Some studies show that sulfur dioxide, industrial soot, and wastewater discharge will directly affect people’s health and EP [
44,
71]. In this paper, the above three indexes and entropy weight method are selected to measure the EP status.
Figure 1 shows the dynamic evolution trend of EP from 2010 to 2020. The central position of the nuclear density distribution curve gradually moves to the right, which means that the overall situation of EP in China has become serious. The distribution pattern of EP in China showed a trend of multi-peak development from 2011 to 2018, with the main peak becoming larger and the slope becoming steeper, indicating that the absolute difference of EP in different regions was expanding. However, from 2018 to 2020, the peak value of pollution distribution became smaller and presented as unimodal. This indicates that the EP situation was improved, and the polarization development phenomenon was alleviated to a certain extent.
3.1.2. Main Explanatory Variable
Combined with the concept of the digital economy (Dig) and the availability of data, the evaluation index system was constructed by selecting the Internet penetration rate, the number of access ports, the number of domain names, the proportion of Internet employees, the total amount of telecom business per capita, the proportion of e-commerce and software business in Gross Domestic Product (GDP), and the Digital Inclusive Finance Index from the industrial development environment, digital industrialization, industrial digitization, fundamentals of digital industry development, and other dimensions [
16,
22], to calculate the level of Dig in all regions of China.
As can be seen from the
Figure 1: First, the center of distribution keeps moving to the right, which means that the development level of the Dig is on the rise. Second, it shows a trend of right-trailing, indicating that there are large differences in Dig between regions. Thirdly, since 2011, the distribution of Dig has shifted from a single peak to multiple peaks, and the span of peaks has gradually increased. It can be seen that the Dig has a trend of multi-polarization, and the development gap between regions is increasing. Hence, generally speaking, the development level of China’s Dig is constantly improving, and there are obvious differences between different regions.
3.1.3. Control Variables
The level of economic development (egdp) is expressed using the logarithm of GDP per capita [
68,
72]; Grossman and Krueger found an inverted U-shaped relationship between economic development level and EP, according to the EKC theory [
18]. Therefore, the quadratic form of economic development level was considered (egdp
2). Opening to the outside world (open) can bring in advanced technology and talents and reduce the cost of production and operation. This article is expressed by the proportion of foreign investment to GDP [
52,
73]. High levels of human capital (hc) mean that administrative costs are likely to be reduced, as reflected in the ratio of the number of students with a university degree or above to the number of employees [
40]. Transport facilities (trf) use a logarithmic measure of highway length per capita [
74]. Government intervention (gov) is directly related to the independent initiative of the government, enterprises, and people to protect the environment in their daily life. It is measured by the proportion of government fiscal expenditure to GDP [
75].
3.1.4. Mechanism Variables
Technological innovation (inn): The development of Dig is helpful to effectively improve the efficiency and ability of technological innovation, thus helping to alleviate environmental stress. The logarithm of sales revenue of new product is taken as the output index to measure technological innovation [
14,
29]. Industrial structure (ins) Dig promotes the development of green economy by promoting the transformation and upgrading of industrial association and industrial structure. The ratio of the value added from the tertiary industry to GDP is used to measure the change of industrial structure [
76,
77]. Asset allocation efficiency (aae): The application and development of digital technology can help optimize the allocation of resources, improve the utilization efficiency, and then reduce the waste of resources. It is expressed by the proportion of fixed asset investment in the tertiary industry and the added value of the tertiary industry [
37,
78].
3.2. Data Source
We used panel data of 30 Chinese provinces from 2010 to 2020 (excluding Tibet, Hong Kong, Macao, and Taiwan). Relevant data were obtained from the China Statistical Yearbook, China Environmental Statistical Yearbook, China Industrial Economic Statistical Yearbook, China Tertiary Industry Statistical Yearbook, China Energy Statistical Yearbook, Internet Finance Research Center of Peking University, Official Website of the National Bureau of Statistics, and statistical yearbooks of provinces and cities.
3.3. Model Setting
The following panel model is established to study the impact of Dig development on EP:
According to theoretical analysis, Dig may affect EP through indirect effects, such as technological innovation, industrial structure optimization, and resource allocation efficiency improvement. Therefore, the transmission effect model is established to analyze its influence mechanism:
Considering that the Dig may have spatial effects on EP, it is necessary to predict the estimated value W*Y first. Then, this paper analyzes its spatial effect by means of spatial quantile regression, as shown below:
represents the EP of region i in the period t. , respectively, represent the regression coefficient. is the control variable, is the individual fixed effect, is the time fixed effects, is the random disturbance term, is the sample, and is the time. stands for Dig, represents the mechanism variable. Meanwhile, are the economic and geospatial spatial weight matrix, represents the spatial lag term, and is the spatial lag coefficient. In the formula, represents the average GDP of region during the sample period, is the mean value of the national GDP during the observation period, and represents the diagonal matrix.
5. Conclusions and Suggestions
The paper establishes an index system to estimate the development level of Dig in Chinese provinces and cities during 2010–2020, and empirically analyzes the influencing mechanisms and spatial effects of Dig on EP. Based on the research findings, this paper proposes countermeasures and suggestions.
5.1. Conclusions
The results indicate that: (1) Dig development can reduce EP, and there is an inverted U-shaped relationship between the two. Meanwhile, the robustness tests and instrumental variable methods still support these conclusions; (2) The impact of Dig development on EP shows obvious regional heterogeneity, and the inhibition effect of Dig on EP in eastern China is obviously higher than that in other regions. Additionally, the inhibition effect of the development of Dig on EP is more obvious in technology-intensive areas; (3) The analysis of influence mechanisms found that the development of Dig alleviates EP by promoting technological innovation and industrial structure optimization. However, the Dig has promoted the optimal allocation of resources, but has not played a role in EP; (4) With the improvement of the quantile level, the impact of Dig development on EP has become significant. Meanwhile, the development of Dig has a more obvious impact on the areas where EP is distributed in the middle quantile. Further discussion shows that Dig still has a significant inverted U-shaped relationship with sulfur dioxide and soot emissions, and a positive U-shaped relationship with wastewater emissions. Moreover, Dig has a negative spatial spillover effect on EP.
5.2. Suggestions
First, it is necessary to attach importance to the construction and improvement of Dig, information technology, and Internet infrastructure. The government should build new information technology development centers and information technology sharing platforms, vigorously develop new advantages of the new generation of information technology, strengthen policy support and management, and constantly improve the level of Dig. Besides, the government should formulate reasonable policies related to supporting subsidies, tax incentives, and the introduction of high-tech talents, establish a sound high-quality economy development system, deepen and accelerate the development of Dig, promote green economic development, and improve ecological progress.
Second, we should implement a differentiated industrial development strategy. Combined with the economic foundation, resource endowment, and industrial structure characteristics of each region, we should fully leverage the comparative advantages of various regions and formulate a gradient, differentiation, and dynamic digital industry development strategy. The advantages of industrial resources, upstream and downstream industrial chains, and information platform sharing in the region and surrounding areas should be utilized according to local conditions. Furthermore, through spatial spillover and radiation effects, the integrated and collaborative development of Dig and related industries in surrounding areas can be driven, thus improving production efficiency and promoting the transformation and upgrading of industrial structure.
Third, we need to leverage the new advantages of the Dig, enhance research and development innovation capabilities, and promote green and circular economic development. On the one hand, the government needs to encourage and support brick-and-mortar enterprises to enhance their technological innovation capabilities and strengthen green innovation. In this process, enterprises, the government, and the public should cultivate the awareness of green environmentalism, optimize the management system, improve the relevant mechanisms and systems of environmental management, and reduce the generation of pollution sources. On the other hand, the depth and breadth of the digital industry should be further expanded in more areas, so as to promote the deep integration of the Dig and the real economy and improve the efficiency of resource utilization, improve the utilization rate, production efficiency and allocative efficiency of various production factors, give play to the effect of pollution reduction, and reduce EP.
Finally, we need to accelerate the development of a China which is strong in manufacturing, strong in quality, and strong in cyberspace and digital, and provide new ideas and methods for promoting green economic development and building a beautiful China. At the same time, this study can provide a reference for other countries to develop a green economy and improve their environmental protection systems.
The limitation of this paper is the availability of data. Using provincial data to study Dig may be macro, but it is limited by micro-level data. Future research should focus on using urban and enterprise data to analyze the regional differences and spatial convergence of Dig and EP from a micro perspective, as well as in-depth analysis of nonlinear effects.