The Impact of Green Finance on Agricultural Non-Point Source Pollution: Analysis of the Role of Environmental Regulation and Rural Land Transfer
Abstract
:1. Introduction
- (1)
- The theoretical aspect. Using the latest panel data from 30 provinces in China, the relationship between GF and ANPSP was validated, expanding the application scope of GF theory. At this stage, researchers focus on how to use limited financial funds to achieve low-carbon and sustainable agricultural development. However, non-point source pollution from nitrogen (N), phosphorus (P), and chemical oxygen demand (COD) emissions in agricultural production has been neglected. This study has enriched the understanding of green finance and agricultural cleaner production, and its conclusions have contributed to the literature of agricultural pollution control.
- (2)
- In terms of current situation analysis, by depicting the relevant status of GF and ANPSP, the preliminary effectiveness of ANPSP control can be described.
- (3)
- In terms of testing relationships. Clarifying the role of environmental regulation and land transfer as mediating variables in their relationship provides empirical evidence for understanding their mechanistic relationship. The conclusion is helpful for enriching the research perspective of financial and agricultural pollution control.
- (4)
- Policy guidance and sustainable development. Testing the relationship between GF and ANPSP, exploring whether the two have a positive or negative impact, and revealing the reasons behind it can provide practical decision-making guidance for policy makers. Since the main physical carriers of agricultural non-point source pollution are the soil and rivers, the conclusions of this study are particularly important for the achievement of the United Nations Sustainable Development Goals, especially SDG 6. It is obvious that in the process of controlling the flow of COD, P, and N to rivers, the water resources of urban and rural areas can be effectively protected. According to SDG 14 and 6, improving river water quality not only ensures the supply of clean water for cities and towns but also helps to protect underwater biodiversity. In addition, according to SDG 15, mitigation of soil pollution from non-point sources contributes to the protection, restoration, and promotion of sustainable use of land ecosystems and to halting the reversal of land degradation. Meanwhile, as the world’s largest developing country, China has the characteristics of a large population, large-scale agricultural production, rapid economic development, and increasingly prominent environmental issues, and these characteristics have a certain universality in the research practice of GF and ANPSP. Therefore, the research conclusions of this article can provide theoretical references for other countries and regions with similar situations.
2. Literature Review
2.1. The Necessity of Using Green Finance to Reduce Agricultural Non-Point Source Pollution
2.2. Measurement Methods and Treatment Measures of Agricultural Non-Point Source Pollution
2.3. The Role and Challenge of Green Finance in Controlling Agricultural Surface Pollution
2.4. Research Gap
- (1)
- GF, as an important tool for environmental protection, has been vigorously promoted, but there has been little in-depth exploration of its relationship with ANPSP. There is limited research on the relationship between China’s financial development and ANPSP, and the existing policies and financial instruments often fail to target specific problems in the agricultural sector, making the potential of GF in promoting agricultural technological innovation and sustainable practices yet to be fully explored [14]. Although a few studies have identified GF as an innovative solution to alleviate ANPSP, they have not analyzed the role of government environmental regulation and rural land transfer [40].
- (2)
- The measurement method and evaluation system of ANPSP need to be improved. When it comes to the measurement of agricultural surface pollution, the existing research is not comprehensive enough in their scope of measurement, mostly focusing on the pollution emissions of specific crops or specific regions, while there is insufficient systematic assessment of the agricultural sector as a whole [41]. Using a single or local source of pollution, such as fertilizer use or livestock farming, makes it difficult to fully cover all sources of pollution. The incomplete measurement of non-point source pollution may lead to the deviation of research results. This leads to a blind spot in the comprehensive understanding of pollution sources and the development of control strategies [42].
- (3)
- The existing research [41] has failed to explore the heterogeneity of GF and ANPSP at different economic levels. As a country with abundant geographical resources, China’s economy, agricultural production, environmental protection, and other situations vary among its provinces, and the impact of their institutional relationships may also differ.
3. Theoretical Analysis and Research Hypotheses
3.1. Direct Effect of Green Finance on Agricultural Non-Point Source Pollution
3.2. Mediating Mechanism of Green Finance to Reduce Agricultural Non-Point Source Pollution
3.2.1. The Mediating Role of Government Environmental Regulation
3.2.2. The Mediating Role of Rural Land Transfer
3.3. Economic Heterogeneity in the Impact of Green Finance and Agricultural Non-Point Source Pollution
3.4. Research Framework
4. Methodology
4.1. Variable Setting
4.1.1. Explained Variable
- (1)
- Agricultural fertilizers. The primary pollutants from agricultural fertilizers include nitrogen, phosphorus, and compound fertilizers. This paper employs the output coefficient method to account for the variances in fertilizer loss rates due to different planting methods. Since the focus is on TN and TP pollution from fertilizer inputs, and the phosphorus fertilizer inputs in statistical yearbooks are indicated as phosphorus pentoxide (P2O5), these inputs are adjusted by multiplying them by 43.66%. Additionally, in line with recent domestic fertilizer practices and prior research findings, the compound fertilizer is converted to TN at 40% and P2O5 at 32%. The fertilizer loss coefficient is derived by averaging the results from different regional samples, based on existing studies [59]. This specific accounting approach is in accordance with the methods used in the second national pollution source census.
- (2)
- Livestock and poultry farming. The pollution emissions are calculated as the product of the total quantity of livestock and poultry (either in stock or slaughtered), multiplied by both the pollution discharge coefficient and the wastage coefficient. The discharge coefficients for feces and urine of livestock and poultry are sourced from SEPA data (2022). The formula applied is the following: livestock and poultry pollution intensity (kg per head per annum) = rearing cycle × fecal (urine) emission factor × fecal (urine) pollutant excretion coefficient. In this study, livestock and poultry statistics encompass cattle, sheep, and pigs. For cattle and sheep, which have a rearing period of more than one year, the total breeding amount is based on the year-end stock. For pigs, due to their rearing period of less than one year, the total breeding amount is determined by the current year’s output.
- (3)
- Aquaculture. ANPSP primarily arises from bait residues, aquaculture excreta, and chemicals. The extent of this pollution is contingent on the aquaculture type and method. The China Statistical Yearbook classifies aquaculture production into marine and freshwater categories. Given that artificial aquaculture is a significant pollution contributor, this paper exclusively utilizes data from freshwater aquaculture for its analyses. The primary aquaculture species include freshwater fish, crustaceans, shellfish, and other aquatic organisms. The production and discharge coefficients for aquaculture are derived from the First National Pollution Source Census: Handbook of Production and Discharge Coefficients for Pollution Sources in Aquaculture, supplemented by additional literature [60].
- (4)
- Crops. The primary pollutants from crops include residues, vegetable wastes, and other debris from agricultural production [61]. Given the diverse range of crops, this paper focuses on the seven most representative ones for analysis: rice, wheat, maize, beans, potatoes, oilseeds, and vegetables. The estimation of surface source pollution from agricultural solid waste involves calculating the crop residue yield based on the grass-to-grain ratio and determining the total nitrogen (TN), total phosphorus (TP), and COD content from the nutrient composition of the straw. Recognizing the varied straw utilization methods in rural areas, each with different nutrient loss rates, the final emission formula for farmland solid waste pollution is the following: emissions (tons) = total crop production (tons) × production coefficient × straw utilization structure × straw nutrient loss rate, where the production coefficient equals the grass-to-grain ratio multiplied by the straw nutrient content [62].
- (5)
- Rural life. Pollution in rural life primarily comprises domestic sewage and human feces. The annual production coefficients per capita for COD, TN, and TP in domestic wastewater are 5.84 kg/person, 0.584 kg/person, and 0.146 kg/person, respectively, with an emission factor of 100%. For human feces, the corresponding coefficients are 19.8 kg/person, 3.06 kg/person, and 0.64 kg/person, respectively, with an emission factor of 10% [63].
- (6)
- Pesticides. Pesticide residues are calculated as the amount of pesticides applied multiplied by a residue factor of 0.5.
- (7)
- Agricultural film. The amount of agricultural film residue is determined by multiplying the quantity of agricultural film used by a residue factor of 0.1.
4.1.2. Explanatory Variables
4.1.3. Mediator Variables
4.1.4. Control Variable
4.2. Data Sources
4.3. Empirical Model
4.3.1. Benchmark Regression Model
4.3.2. Mediating Effects Modeling
5. Results
5.1. Benchmark Regression Results
5.2. Tests for Mediating Effects
5.3. Robustness Tests
5.4. Heterogeneity Analysis
6. Conclusions and Policy Implication
6.1. Conclusions
6.2. Policy Implication
- (1)
- The relevant part needs to improve the infrastructure and product standards of green finance to support the green development of agriculture. To maximize the impact of GF on addressing ANPSP, it is imperative to clearly define the strategic direction and functional roles of financial institutions in supporting rural ecological civilization. This involves enhancing the provision of green credit by small- and medium-sized banks, expanding the scope of financial subsidies, and increasing incentives for investments in GF, particularly in areas of taxation and technological innovation. These measures aim to effectively curb the financial constraints associated with managing ANPSP. Additionally, optimizing the policy framework for the growth of agriculture-related GF is essential. This includes offering preferential treatment to green credit products and prioritizing compensation rights for green bonds and other financial instruments. China’s agricultural standards mainly focus on farm construction, production process, and the quality and safety of agricultural products. However, the standardization system for green environmental protection and ecological sustainability needs to be improved. The national agricultural authorities should speed up the establishment of green agriculture-related standards and provide reference standards for green credit, green bonds, and other financing instruments to provide access thresholds and supervise according to the standards to prevent “green bleaching” problems. Relevant government departments can guide agriculture-related enterprises and producers to pay attention to environmental testing, pollution control and ecological protection through the formulation of green agricultural credit evaluation standards.
- (2)
- Harmonizing GF and ER policies. Creating synergies between GF policies and ER is vital for effectively tackling ANPSP. Firstly, governments and regulatory bodies should establish and enforce transparent, equitable ER, including the implementation of environmental administrative agreements. These agreements should recognize the equal standing of governments and entities responsible for ANPSP, ensuring clear communication during negotiations to balance economic and environmental benefits. Secondly, enhancing environmental support through initial lenient ER policies encourages innovation that improves the efficiency of ANPSP control. Specific measures include offering subsidies, loans, or other financial aid for technological upgrades and industrial transformation to meet new environmental standards. Lastly, financial institutions must innovate green financial products and services in accordance with ER requirements to avoid problems such as mismatched financial products with green development needs and low market acceptance of green financial products.
- (3)
- Optimizing land transfer policies. To encourage farmers’ participation in land transfer and facilitate large-scale agricultural land management, government departments must enhance the rural land transfer system and environment. This includes refining the mechanism to incentivize practices that reduce ANPSP, implementing and improving the “three-rights partition” system of agricultural land, and establishing an efficient and reliable platform for agricultural land transfer and trading. The government should play a guiding role in the establishment and improvement of the rural property rights trading platform and standardize the agricultural land transfer market. This requires government departments to formulate a price guidance mechanism for large-scale land transfer according to local conditions and provide price consultation for both sides of land management right transfer negotiation. Financial institutions should not adopt a single or traditional way to support land circulation and should comprehensively consider the land circulation situation and other factors in each region according to their own business capabilities and advantages. The innovative financial products related to the transfer of agricultural land mainly include the mortgage of land management rights, agricultural land bonds, land securitization, land banks, and land funds. These financial products must be continuously innovated according to local conditions. Agricultural land trust transfer, as one of the innovative transferring methods, plays an important role in promoting land moderate scale management and clean production and creates good conditions for effectively releasing land management rights. In order to further activate the right of management of agricultural land and promote the promotion of trust transfer of agricultural land, the Chinese government should formulate normative documents of trust. At present, there is a Trust Law as legal support, but it is not detailed to the level of agricultural land trust. The authors suggest that this should be confirmed in the Trust Law, and the Rural Land Contract Law should clearly list the trust transfer of agricultural land.
- (4)
- Tailoring policies to regional economic heterogeneity. Policies must be adapted to the varying levels of regional economic development. In less economically developed areas, it is essential to strengthen and refine the rural financial system. This involves using tax incentives and other policies to motivate rural financial institutions, like the Agricultural Credit Union, to expand their lending to green agricultural production. Moreover, increasing awareness and education about GF in rural areas can improve farmers’ recognition and participation in green financial initiatives, fostering the growth and interaction of ecological products and GF. In contrast, regions with higher economic development require not only policy-based financial support for agriculture and improved financial literacy but also the establishment of a comprehensive rural financial supervision system. This system should regulate the financial activities of rural financial institutions through laws and regulations, aiming to redirect their investments from non-agricultural sectors to agricultural ones. At the same time, as an agricultural powerhouse, China has diversified its agricultural production, covering small-scale household contract farming to large-scale mechanized agriculture. The terrain is complex, and there are significant differences in agricultural production conditions among different regions. The mechanization level is higher in plain areas, and the opposite is true in hilly and mountainous areas. The climate is diverse, from the cold temperate zone in the north to the subtropical and tropical zones in the south, with diverse agricultural production environments and high levels of uncertainty. In this context, China’s agricultural development faces the challenge of balancing green development and efficiency improvement. Countries with similar agricultural conditions to China, such as India and Brazil, also face problems such as abundant natural resources but complex agricultural environments and high pressure on agricultural governance. Therefore, these countries can learn from China’s experience in GF and ANPSP governance and guide the transformation of agriculture towards sustainable development through fiscal and financial policy support.
6.3. Limitations and Future Research Directions
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Variable | ANPSP | GF | PGDP | TY | ZL | Road | Gov | Water |
---|---|---|---|---|---|---|---|---|
ANPSP | 1 | |||||||
GF | −0.232 *** | 1 | ||||||
PGDP | −0.214 *** | 0.839 *** | 1 | |||||
TY | −0.444 *** | 0.774 *** | 0.673 *** | 1 | ||||
ZL | 0.146 *** | 0.830 *** | 0.756 *** | 0.534 *** | 1 | |||
Road | −0.774 *** | −0.176 *** | −0.190 *** | −0.363 *** | −0.198 *** | 1 | ||
Gov | −0.073 * | −0.247 ** | −0.201 *** | 0.101 *** | 0.314 *** | 0.194 ** | 1 | |
Water | 0.252 *** | −0.290 *** | −0.367 *** | −0.276 *** | −0.301 *** | 0.414 *** | 0.401 *** | 1 |
Variable | VIF | 1/VIF |
---|---|---|
GF | 9.03 | 0.111 |
TPs | 8.30 | 0.120 |
LED | 3.94 | 0.254 |
IS | 3.49 | 0.286 |
RA | 3.14 | 0.319 |
CN | 1.77 | 0.565 |
MR | 1.64 | 0.611 |
Mean VIF | 4.47 |
Variable | HT | Breitung | IPS | ADF |
---|---|---|---|---|
ANPSP | −0.205 *** | −8.955 *** | −11.738 *** | −11.381 *** |
GF | 0.474 *** | −1.741 ** | −2.804 *** | −7.974 *** |
TPs | 0.990 *** | −1.067 | −0.673 | −8.388 *** |
L.TPs | 0.307 *** | −2.803 *** | −1.843 ** | −7.929 |
LED | 0.986 | 5.561 | 1.377 | −9.677 *** |
L.LED | 0.385 *** | −2.732 *** | −2.041 ** | −9.752 *** |
CN | 0.069 *** | −5.939 *** | −9.542 *** | −10.424 *** |
MC | 0.439 *** | −2.377 *** | −5.707 *** | −7.388 *** |
RA | 10.311 | 0.809 | −9.684 *** | −6.232 *** |
L.RA | 0.465 *** | −1.387 * | −9.342 *** | −5.919 *** |
IS | 0.832 *** | −1.129 | −1.274 | −8.217 *** |
L.IS | 0.513 *** | −1.574 * | −1.322 * | −8.168 *** |
Method | Statistic | Result |
---|---|---|
Kao | Modified Dickey–Fuller t | −15.669 *** |
Dickey–Fuller t | −17.637 *** | |
Augmented Dickey–Fuller t | −7.168 *** | |
Unadjusted modified Dickey–Fuller t | −24.389 *** | |
Unadjusted Dickey–Fuller t | −19.211 *** | |
Pedroni | Modified Phillips–Perron t | 6.025 *** |
Phillips–Perron t | −15.094 *** | |
Augmented Dickey–Fuller t | −17.850 *** | |
Westerlund | Variance ratio | −2.036 ** |
1 | Data from the Ministry of Ecology and Environment, PRC: https://www.mee.gov.cn/home/ztbd/rdzl/wrypc/zlxz/202006/t20200616_784745.html (accessed on 9 September 2024). |
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Categories | Elements of Pollution Production | Survey Indicators | Unit | Pollutants |
---|---|---|---|---|
Agricultural fertilizers | Nitrogen fertilizer, phosphorus fertilizer, compound fertilizer | Refractive index of application | 10,000 tons | TN, TP |
Livestock and poultry breeding | Pigs, cows, sheep | Inventory/output | 10,000 heads | TN, TP, COD |
Aquaculture | Freshwater fish, crustaceans, shellfish, others | Total production | 10,000 tons | TN, TP, COD |
Farm crops | Rice, corn, wheat, beans, potatoes, oilseeds, vegetables | Total production | 10,000 tons | TN, TP, COD |
Rural life | Rural domestic sewage | Agricultural population | 10,000 persons | TN, TP, COD |
Pesticides | Pesticides | Utilization amount | 10,000 tons | Pesticide loss |
Agricultural plastic film | Agricultural plastic film | Utilization amount | 10,000 tons | Agricultural plastic film loss |
Name | Norm | Measurement | References |
---|---|---|---|
Green credit | Percentage of credits for environmental projects | Total credit for environmental projects in the province/total credit in the province | [64] |
Green investment | Investment in environmental pollution control as % of GDP | Investment in environmental pollution control/GDP | [67] |
Green insurance | Extent of promotion of environmental pollution liability insurance | Environmental pollution liability insurance income/total premium income | [64] |
Green bonds | Extent of green bond development | Total green bond issuance/total all bond issuance | [64] |
Green support | Percentage of fiscal expenditure on environmental protection | Financial environmental protection expenditures/financial general budget expenditures | [67] |
Green funds | Percentage of green funds | Total market capitalization of green funds/total market capitalization of all funds | [64] |
Green equity | Green equity development depth | Carbon trading, energy rights trading, emissions trading/total equity market transactions | [67] |
Variable | Code | Mean | Standard Deviation | Min | Max |
---|---|---|---|---|---|
Agricultural non-point source pollution | ANPSP | −1.474 | 0.777 | −4.787 | −0.135 |
Green finance | GF | −1.911 | 0.517 | −3.121 | −0.042 |
Environmental regulation | ER | 9.268 | 0.486 | 8.091 | 10.811 |
Land transfer | LR | 0.03 | 0.417 | −0.694 | 1.667 |
Macro-control | MC | −3.892 | 0.709 | −5.984 | −2.214 |
Level of economic development | LED | 10.355 | 0.638 | 8.527 | 11.865 |
Climatic condition | CN | 7.049 | 1.246 | 3.949 | 9.747 |
Road accessibility | RA | 11.589 | 0.872 | 9.001 | 12.913 |
Technological progress | TPs | 9.025 | 1.654 | 4.369 | 12.398 |
Industrial structure | IS | 3.791 | 0.202 | 3.353 | 4.429 |
Variable | OLS | OLS | FE | TWFE |
---|---|---|---|---|
(1) | (2) | (3) | (4) | |
GF | −0.348 *** (−4.15) | −0.415 *** (−2.85) | −0.398 * (−1.98) | −0.432 ** (−2.58) |
CV | No | Yes | Yes | Yes |
Individual fixed effect | No | No | Yes | Yes |
Time fixed effect | No | No | No | Yes |
N | 540 | 540 | 540 | 540 |
F test | 10.82 *** | 73.12 *** | ||
Hausman test | 27.59 *** | 35.50 *** |
Variable | ER | LT |
---|---|---|
GF | 0.334 *** (3.25) | 0.132 ** (2.35) |
CV | Yes | Yes |
Individual fixed effect | Yes | Yes |
Time fixed effect | Yes | Yes |
N | 540 | 540 |
(5) | (6) | (7) | |
---|---|---|---|
SDID | SDM | 2SLS | |
GF | −0.136 ** (2.02) | −0.377 ** (−2.20) | −0.425 ** (2.53) |
CV | Yes | Yes | Yes |
Individual fixed effect | Yes | Yes | Yes |
Time fixed effect | Yes | Yes | Yes |
Weak identification test | 12.947 *** | ||
Weak identification test | 22.66 |
Variable | EDLAs | EDCAs |
---|---|---|
GF | 0.214 (1.59) | −0.242 ** (−2.52) |
CV | Yes | Yes |
Individual fixed effect | Yes | Yes |
Time fixed effect | Yes | Yes |
N | 192 | 348 |
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Share and Cite
Geng, G.; Shen, Y.; Dong, C. The Impact of Green Finance on Agricultural Non-Point Source Pollution: Analysis of the Role of Environmental Regulation and Rural Land Transfer. Land 2024, 13, 1516. https://doi.org/10.3390/land13091516
Geng G, Shen Y, Dong C. The Impact of Green Finance on Agricultural Non-Point Source Pollution: Analysis of the Role of Environmental Regulation and Rural Land Transfer. Land. 2024; 13(9):1516. https://doi.org/10.3390/land13091516
Chicago/Turabian StyleGeng, Guobin, Yang Shen, and Chenguang Dong. 2024. "The Impact of Green Finance on Agricultural Non-Point Source Pollution: Analysis of the Role of Environmental Regulation and Rural Land Transfer" Land 13, no. 9: 1516. https://doi.org/10.3390/land13091516
APA StyleGeng, G., Shen, Y., & Dong, C. (2024). The Impact of Green Finance on Agricultural Non-Point Source Pollution: Analysis of the Role of Environmental Regulation and Rural Land Transfer. Land, 13(9), 1516. https://doi.org/10.3390/land13091516