1. Introduction
Since the onset of the Industrial Revolution, there has been a pronounced trend of rapid economic expansion attributed to the proliferation of diverse manufacturing and production activities [
1,
2]. However, the exacerbation of global climate warming is becoming increasingly acute due to heightened greenhouse gas emissions stemming from human activities [
3]. Fossil fuel production for industrial purposes stands out as the primary contributor to carbon emissions [
4]. Scientific studies indicate that burning fossil fuels accounts for over 80% of the total carbon emissions [
5]. Notably, approximately 75% of worldwide carbon dioxide emissions emanate from urban centers. Hence, mitigating carbon emissions is imperative in addressing the challenges precipitated by climate change in urban areas [
6,
7,
8].
Accounting for 30 percent of the world’s emissions, China presently stands as the foremost emitter of carbon dioxide [
9,
10]. With a concerted emphasis on ecological environmental governance, the Chinese government has delineated strategic objectives aimed at achieving carbon peaking by 2030 and carbon neutrality by 2060 [
11]. These goals not only underscore China’s steadfast commitment and sense of responsibility but also present a litmus test for its capacity to curtail carbon emissions. The burgeoning environmental industry has emerged as an indispensable avenue for realizing a symbiotic relationship between economic prosperity and environmental preservation, with the EIPs assuming a pivotal role in nurturing the expansion of eco-friendly enterprises [
12,
13]. To address the challenges posed by excessive energy consumption, heightened carbon emissions, and pervasive pollution within traditional sectors, China has been actively establishing EIPs since 2001 [
13,
14].
The concept of an EIP traces back to the 1960s, when industrial facilities began embracing regional cooperation strategies aimed at optimizing resource utilization, minimizing waste, and fostering recycling efforts [
15]. In the 21st century, the EIP concept has evolved into a multifaceted approach that integrates principles of industrial ecology, clean production, and waste management. It serves as a paradigm for fostering geographic proximity-based interactions, planning, and development among proximate enterprises. This evolution signals a pivotal shift for businesses away from a competitive mindset toward embracing symbiotic, collaborative, and synergistic industrial ecosystems to achieve objectives centered around reducing environmental footprints, bolstering economic efficiency, and advancing social well-being [
16,
17,
18]. The inception of the “Industrial Symbiosis” initiative in Kalundborg, Denmark, in 1970, stands as a landmark event marking the initial meaningful implementation of EIPs on a global scale [
19]. Since then, numerous developed countries, including Austria, the United States, the United Kingdom, Japan, and South Korea, have embarked on EIP initiatives of their own. While the global count of EIP projects stood at less than 50 in the year 2000, there has been a remarkable surge in their proliferation over the past decade. As of 2018, the tally had surged to 250 EIPs either operational or in various stages of development worldwide [
20,
21,
22].
Among the myriad of human activities driving economic growth in China, industrial parks have played a pivotal role. Over the past 30 years, China has established over 2000 industrial parks, accounting for over 60% of industrial output value and over 50% of GDP [
23,
24]. Driven by the dual objectives of economic growth and environmental protection, the government recognized the significance of EIPs as a win–win strategy at the industrial park level, thus joining the construction trend [
22,
25]. In 2000, the National Environmental Protection Agency initiated collaboration between the government and universities to explore EIP construction. In 2001, the first pilot EIP, the Guangxi Guigang Sugar Factory Eco-Industrial Park, was approved by the government [
24]. In 2003, the National Environmental Protection Agency issued the “
Provisional Regulations on Declaration, Naming, and Management of National Eco-Industrial Parks” and the “
Guidelines for the Trial Planning of Eco-Industrial Demonstration Parks”, marking the formal establishment of this policy [
26,
27]. As of December 2020, China had 93 EIPs distributed across all mainland provinces except Tibet and Qinghai [
23]. The construction of EIPs is promoted by the central government through pilot projects, where local governments must voluntarily apply for provincial-level EIPs, which are then reviewed and approved by the central government to decide on the pilot national EIPs in different cities [
28]. The incremental implementation nature allows for evaluating the effectiveness of EIP policies by comparing trends before and after policy implementation.
To delve deeper into the environmental ramifications of EIP policies, this study contextualizes the policy impact of EIPs as a quasi-natural experiment within China. It employs a multi-period difference-in-difference (DID) method and a mediation effect model on panel data encompassing 282 prefecture-level cities spanning from 2006 to 2021. Firstly, the carbon emission efficiency for each city during the sample period was computed utilizing the Super-SBM DEA model, which accounts for unexpected outputs. Subsequently, the implementation of EIP policies is observed to yield a significant positive impact on enhancing urban carbon emission efficiency through multi-period difference-in-difference analysis, with a battery of tests ensuring the robustness of these findings. Lastly, by scrutinizing the transmission mechanism, it is posited that EIP policies can effectively foster the improvement of urban carbon emission efficiency through three avenues: optimizing industrial structure, bolstering agglomeration effects, and augmenting innovation ability. Furthermore, the promotional effect of EIP policies is notably pronounced in the eastern and central regions as well as in non-resource-based cities.
The subsequent sections are organized as follows:
Section 2 reviews the extant literature, succinctly delineating the incremental contributions of this study;
Section 3 scrutinizes relevant theories and posits specific hypotheses;
Section 4 delineates the research methodology encompassing model configurations, variable selection, and data sources;
Section 5 presents empirical findings and analysis, including baseline regression, robustness tests, mechanism analysis, and heterogeneity analysis; and
Section 6 furnishes research conclusions and policy recommendations while contemplating future research avenues.
2. Literature Review
The existing body of literature concerning EIP research predominantly revolves around two core dimensions, including qualitative analysis and quantitative evaluation. Qualitative inquiries into EIPs often delve into their evolutionary trajectory, developmental patterns, case-specific examinations, and the establishment of standardized frameworks. For instance, Yu et al. (2015) [
29] undertook a meticulous case study of the Rizhao EIP in China, elucidating that pivotal drivers such as environmental standards, tax incentives, and fiscal subsidies are instrumental in fostering industrial symbiosis. Perrucci et al. (2022) [
30] conducted a comprehensive meta-analysis scrutinizing failed EIP endeavors in American history, thus unraveling the nuanced spectrum of costs and benefits associated with EIPs while shedding light on their elevated failure rates. Furthermore, Tseng et al. (2021) [
31] employed the Delphi method to intricately construct a hierarchical framework encapsulating qualitative insights into the transformative dimensions of EIPs, thereby elucidating their potential environmental and societal impacts. Conversely, quantitative investigations into EIPs gravitate towards gauging their economic and environmental efficacy. For instance, Liu et al. (2012) [
32] utilized the logarithmic average Divisia index method to quantify the overarching ecological efficiency of EIPs, revealing stark regional differentials in environmental performance coupled with a noteworthy annual enhancement rate of 89.4%. In contrast to the conventional life cycle assessment (LCA), the ecological footprint approach emerges as a more intuitive and transparent mechanism, facilitating the measurement of EIPs’ natural resource demands and the evaluation of ecosystem pressures [
21]. Similarly, Fan et al. (2017) [
20] employed an ecological footprint model to assess the environmental ramifications, thereby showcasing EIPs’ potential in optimizing energy and material utilization while mitigating the ecological footprint of industrial activities. Nevertheless, quantitative research on EIPs predominantly gravitates towards appraising the operational performance of industrial parks, with scant literature scrutinizing the reverberating impacts of EIPs on carbon emission efficiency as a policy catalyst.
Furthermore, research closely aligned with the carbon emissions theme primarily concentrates on two facets: firstly, evaluating carbon emission efficiency. The Malmquist index within the DEA model stands as one of the extensively employed efficiency assessment techniques [
33]. Originating from the work of Lozano and Humphrey (2002) [
34] and Boisso et al. (2000) [
35], Fare et al. formulated this index to gauge decision-making unit productivity. Nonetheless, conventional Malmquist indices overlook unexpected outputs during the production process, potentially introducing measurement biases. To tackle this concern, Zhu et al. (2023) [
36] pioneered the development of a directional distance function, derived from the traditional distance function, to compute the total factor productivity index while integrating unexpected outputs. Consequently, assessing carbon emission efficiency through the lens of total factor productivity constitutes standard practice within academia [
37]. By establishing a production frontier grounded in input–output relationships, carbon emission efficiency is delineated as the deviation between actual emissions and the theoretically optimal value on the production frontier [
38].
Secondly, factors driving carbon emission efficiency were investigated. Numerous scholars have extensively examined the influencing factors of carbon emissions from various perspectives. Li et al. (2018) [
39] employed Structural Decomposition Analysis (SDA) to pinpoint emission intensity, changes in production inputs, and output structure as the primary drivers for reducing urban carbon dioxide emissions. Carbon emission reduction in the industrial sector stands as a pivotal aspect of achieving green sustainable development. Cui (2023) [
40] assessed the implicit carbon emissions of the industrial sector by developing a non-competitive input–output model and a structural decomposition model, revealing that the demand scale could also significantly influence carbon emissions. Urban expansion exhibits a U-shaped direct effect on local carbon dioxide emissions, while it demonstrates an inverted U-shaped spatial spillover effect on adjacent urban carbon emissions [
41]. In the industrial production realm, the production structure of an economy profoundly impacts its carbon dioxide emissions. To attain carbon emission reduction objectives, comprehensive research on industrial structure is imperative. Hu et al. (2023) [
42] gauged the rationalization level of industrial structure through Theil’s index calculation, determining that in the short term, with industrial structure rationalization, carbon emissions will increase, but in the long term carbon emissions will decrease with industrial structure rationalization. Presently, China’s industrial structure is gradually optimizing, with close coordination established among relevant departments. However, in comparison to the industrial structure characteristics of developed nations, China’s industrialization process remains in its nascent stages [
43]. Cross-regional adjustments in industrial structure not only need to align with regional objectives but also involve inter-regional industrial transfers. Rational arrangement of industrial layout can facilitate the optimization of industrial structure [
44]. Furthermore, extant research indicates that industrial agglomeration in sectors such as industry and manufacturing yields significant emission reduction effects [
45]. A U-shaped relationship exists between industrial agglomeration and carbon emissions, with industrial agglomeration closely linked to the degree of environmental regulation [
46]. Additionally, manufacturing agglomeration may attenuate the carbon emission reduction effect initiated by urban digital trade, while the agglomeration of productive services could enhance this effect [
47]. Using a Spatial Durbin Model (SDM), Zhang (2024) [
48] revealed that the concentration of green finance exhibits spatial spillover effects on regional carbon emissions, underscoring the need for increased fiscal backing for green and low-carbon projects. Moreover, the efficacy of urban carbon dioxide emissions is impacted by the degree of innovation. Employing the continuous double difference method, Liu (2022) [
49] discovered that policies incentivizing innovation have a notable adverse effect on urban carbon dioxide emissions. Several scholars have delved into the interactive dynamics between innovation and economic advancement concerning carbon emissions. Their findings indicate that both the economy and innovation contribute to carbon emission reduction, with the economy facilitating such reductions through mechanisms of innovation [
50]. Generally, the influence of innovation on the economy adheres to a U-shaped curve. Nevertheless, Fang’s (2022) [
51] investigation unveiled a linear relationship between green innovation and its economic impact. Additionally, the combined effect of digital finance and green technology innovation significantly fosters UCEE, albeit with a suppressive impact on the carbon emission efficiency of neighboring cities [
6].
In summary, notwithstanding the significant research contributions made by scholars in the field under investigation, several deficiencies persist in the existing literature. In
Table 1, we have compiled a summary of the existing literature. However, certain deficiencies may be apparent in these relevant studies. Firstly, there exists a notable gap in directly examining the impact of EIPs on urban carbon emissions, coupled with a lack of comprehensive and in-depth analysis regarding the underlying mechanisms. Given that EIPs represent a nascent form of industrial organization and novel environmental policy, it is imperative to refrain from merely extrapolating insights from other industrial innovation studies when elucidating its influence on urban carbon emissions. Secondly, a degree of contention surrounds the evaluation of agglomeration effects or innovation concerning the tangible efficacy of urban carbon reduction, necessitating further empirical substantiation. Moreover, prevailing research predominantly focuses on developed nations, with scant attention afforded to developing countries like China. Consequently, the generalizability of prior research findings to developing contexts warrants verification. Lastly, methodologically, prior studies have leaned towards qualitative case analyses, raising concerns regarding researcher subjectivity and sample validity. Furthermore, traditional quantitative analytical approaches employed in these studies inadequately address endogeneity concerns.
The primary aim is to empirically investigate the direct impacts of EIP policies on UCEE and to unravel the underlying mechanisms. This study makes several notable contributions. Firstly, it delves into the role of EIPs in environmental governance, with UCEE as the central focus, thereby enriching the discourse on EIPs within the environmental domain. Secondly, it narrows its focus to China’s specific context, utilizing precise sample data at the prefecture level to discern policy impacts on cities more accurately. Thirdly, from a methodological perspective, it introduces an innovative application of the multi-period DID method to EIP research, broadening the analytical toolkit for examining EIP’s contributions to environmental governance while effectively addressing endogeneity concerns, thus bolstering the scientific robustness and validity of the findings. Lastly, the study advances the understanding of EIP policies’ influence on urban carbon emissions by dissecting and validating the underlying mechanisms both theoretically and empirically. This deeper analysis elucidates the varying effects of EIP policies on urban characteristics, contributing to a more nuanced theoretical comprehension of EIP policy.
6. Conclusions and Policy Implications
6.1. Conclusions
In recent years, with the exacerbation of global climate change, policymakers worldwide have intensified their commitment to employing policy interventions aimed at enhancing carbon emission efficiency, thereby fostering environmental preservation and sustainable development. This study utilizes panel data encompassing 282 prefecture-level cities in China spanning from 2006 to 2021 to establish a quasi-natural experiment centered on the nationwide implementation of EIPs. Employing the difference-in-difference method, the empirical analysis scrutinizes the impact of EIP policies on UCEE. The principal research findings are outlined as follows: Firstly, the implementation of EIP policies notably enhances the carbon emission efficiency of cities. Specifically, for pilot cities, the eco-industrial park policy yields a 2.5% increase in UCEE. Secondly, EIP policies exhibit a certain lagged effect in promoting UCEE, typically manifesting in the fourth year post policy implementation. Thirdly, the establishment of EIPs facilitates UCEE improvement by optimizing industrial structure, augmenting agglomeration effects, and elevating innovation ability. Lastly, the implementation of EIPs substantially boosts carbon emission efficiency in the eastern and central regions, with comparatively diminished effects observed in the western region. The promotional impact on resource-based cities is deemed statistically insignificant, whereas it is significant for non-resource-based cities.
6.2. Policy Implications
There is a need for the government to intensify efforts in advancing the establishment of EIPs throughout China and to broaden the reach of pilot initiatives. Named EIPs demonstrate a more pronounced catalyzing effect compared to those in the approval phase. Hence, eligible industrial parks should be actively encouraged to seek EIP pre-construction qualifications, and approved EIPs should expedite park development to secure formal designation. Moreover, it is imperative to promptly compile successful practices and accomplishments from pilot cities in EIP development to serve as a blueprint for promoting EIP establishment in other locales. Given the delayed environmental advantages stemming from EIP policies in local municipalities and the escalating marginal gains in enhancing UCEE, it is imperative for the government to bolster support for park policies and funding. This could entail augmenting tax incentives, implementing preferential land policies, facilitating technological upgrades and assistance, and intensifying efforts to attract skilled professionals, thereby ensuring the sustained and resilient growth of EIPs.
Leverage the synergistic effects stemming from EIP infrastructure and optimize industrial structure. The government must thoroughly assess the present state, potential, and forthcoming trajectories of industries. Subsequently, strategic integration of diverse enterprises and projects that harmonize with existing industries should be pursued to forge competitive industrial chains. This entails fostering the lateral expansion of interconnected industries, fostering industry clusters, and bolstering overall industry competitiveness. Moreover, the Chinese government should accord priority to technological advancements. Through policy incentives and targeted initiatives, it can implement innovation-centric strategies, continually explore untapped development avenues, appropriately augment funding allocations, concentrate on bolstering technology-oriented enterprises, and facilitate the technological metamorphosis of conventional pollution-intensive sectors. Enterprises ought to proactively respond to governmental policies, hasten the shift of traditional industries towards high-tech domains, and progressively phase out equipment characterized by high pollution and energy consumption.
In addition, given the varied environmental benefits of EIP policies across different cities, the Chinese government must deeply comprehend the economic and social development contexts of pilot cities when enacting policies. This understanding should encompass factors such as urban industrial structure, economic development status, population size, and local resource and environmental conditions. By conducting a comprehensive analysis of these factors, the challenges and potential impacts of EIP policies in diverse urban settings can be accurately gauged, thereby furnishing a solid scientific foundation for policy adjustments. Furthermore, it is imperative to seamlessly integrate EIP policies into the existing industrial landscapes of respective locales. This entails a thorough consideration of the advantageous and distinctive industries prevalent in the area, with a focus on prioritizing these sectors for policy implementation. Such an approach ensures that, while EIP policies yield environmental benefits, they also align with the inherent economic development trajectories of urban regions.
6.3. Limitations
However, this study has certain limitations. Firstly, it exclusively relies on data from Chinese prefecture-level cities, thereby constraining the generalizability of the research findings to the Chinese context. Future research endeavors should adopt a comparative perspective, encompassing similar environmental policies implemented in other countries besides EIPs. Secondly, this study employs a multi-period difference-in-difference approach to evaluate the impacts of EIP policies. While this method is well-suited for panel data analysis, its implementation may pose challenges in cases of significant data gaps. Lastly, this study solely examines the environmental ramifications of EIP policies on UCEE, neglecting to simultaneously investigate their economic and social implications. Subsequent research should delve into the economic and social dividends yielded by EIP policies, further elucidating the tripartite effects of such policies.