1. Introduction
As a large agricultural producer, agriculture is a basic industry for the construction and development of China’s national economy. Rural financial markets have long been plagued by financial absenteeism and inadequate supply, resulting in lagging rural economic development and widening urban-rural income gaps. Studies have found that the implementation of agricultural financial policies plays an important role in compensating for the distortions in the cross-sectoral flow of capital caused by the different degrees of financial frictions between sectors [
1], as well as helping farm households to escape from poverty [
2]. At the same time, relying solely on public finance policies to support agriculture cannot play its proper role, and the combination of public finance and commercial finance is the key to building a sustainable rural financial system [
3]. Therefore, guiding the financial sector through policies to help agricultural development is an important tool for the rapid development of rural financial markets. Modern agricultural production is a subject of supply chains involving multiple subjects in the industrial chain, and in this context agricultural supply chain finance becomes an important innovative force to break the rural financial market settlement and plays a positive role in poverty alleviation [
4].
It can be seen that policy support and modern supply chain management play great roles in promoting the development of agriculture. Green credit policy (GCP), one of the supportive policies vigorously promoted by the government, is designed for environmental protection and sustainable development. Therefore, we focus on the impact of green credit policy on the profits of the farmer and the bank, which are both decision makers in the supply chain. We investigate optimal strategies of each subject under the green agricultural supply chain through the Stackelberg model, explore the mechanism of the impact of green credit on the whole agricultural supply chain and the optimization path to promote the benign development of the agricultural supply chain.
Our novelties and contributions are as follows. First, previous studies on green credit have mostly focused on macro level, but we study the influence mechanism of green credit from a micro perspective. We introduce green credit to the traditional agricultural supply chain to study the impact of green credit policies on green supply chain. Second, previous studies on agricultural supply chains are mainly about production and risk. We introduce green credit policy into traditional agricultural supply chains to broaden their research content. Third, previous studies on supply chain finance did not consider the randomness of output, but the output of agricultural products is stochastic because of climate change and natural disasters. We consider the characteristics of agricultural production and the randomness of output, which also makes our research more relevant to real world conditions.
2. Literature Review
The literature studies on green credit policy (GCP) are mainly related to the impact of green finance on building development, river and lake construction and marine economic areas, but there is a lack of studies on the agricultural sector [
5,
6,
7]. Scholars have mostly studied the impact of green finance on industry and regional economies from a macro perspective. Some scholars have analyzed the current situation of green finance as well as the existing problems [
8,
9]. The problems of backward development of green finance in Hebei was found to include the lack of effective incentive policies, narrow financing channels and high financing costs in traditional industries [
10]. Forest area, wastewater emissions, energy consumption, investment in environmental management and industrial structure can significantly increase the demand for green finance in eastern China [
11]. The green credit effect was calculated in the Data Envelopment Analysis (DEA) model [
12]. There is a non-linear characteristic in the economic growth effect of green finance, and the effect is scalable [
13].
Some studies focus on aspects, such as performance evaluation and risk management of green finance. A green finance risk evaluation index system was constructed for China, taking into account the government, market and capital supply and demand [
14]. One study added non-financial and green financial indicators to improve the performance evaluation system [
15]. Another study analyzed that the risk of loss for green finance investment projects can be reduced by constructing a multi-party game model of the government, financial institutions and green enterprises [
16].
Green finance and growth has also been studied for its environmental impacts. Green finance policy was found to inhibit polluting industries while promoting environmentally conscious industries with a greater impact in eastern versus western China [
17]. Directions of green growth pathways were influenced by differences in inherent technical incentives in carbon reduction policies under carbon markets, carbon taxes and hybrid policies [
18].
In terms of research methods, scholars have mostly used empirical models for macro data. Green factors can be incorporated into the traditional macro model [
19]. Some scholars use the Computable General Equilibrium (CGE) model to study the systemic effects of green credit policies [
20,
21,
22,
23]. The Dynamic Stochastic General Equilibrium (DSGE) model can be used to study problems in green finance-related areas [
24]. The traditional DSGE model has been improved to determine the mechanisms and effects of green credit incentive policies [
25].
The literature on green supply chain management and finance is relatively well established. Some researchers have studied the social impact of green supply chain management. Green supply chain management has been found to have a positive multiplier effect on environment issues [
26]. In a structural equations modeling study involving 159 manufacturers, green supply chain management practices were found to synergistically improve operational performance and economics while reducing environmental impacts [
27]. A prior study on financing strategies in green supply chains concluded that green supply chain finance is an important force to help enterprises complete the paradigm shift and promote sustainable development [
28]. Past research on the environmental performance of 58 microfinance institutions in Europe found that the scale of investment by non-banking financial institutions was closely related to the total environmental performance of society [
29].
The business strategies of companies in the supply chain are also the focus of study. In green product supply chains where manufacturers are financially constrained, retailers should participate in manufacturer financing by adopting the early payment discount of zero financing strategy [
30]. The manufacturer prefers to purchase from low-cost green enterprises with less risk, and the positive impact of green credit policy (GCP) on supplier performance is also more concentrated in low-cost enterprises [
31].
From related studies of supply chain finance, we can see that fuzzy theory and game theory models are widely used in pricing strategies. The Stackelberg game model was used to analyze the pricing and greening strategies for a competitive dual-channel green supply chain under a uniform pricing strategy [
32]. The one-population evolutionary game theory was used to discuss the pricing strategy and long-term actions of socially concerned producers [
33]. The fuzzy theory was used to explore pricing of substitutable goods in a supply chain with a common retailer and two competitive producers [
34]. By using game theory, the pricing policies for dual-channel supply chains with green investment and sales effort under uncertain demand were investigated [
35]. Another study investigated the pricing and coordination issues of a two-echelon green supply chain system under both green and hybrid production modes [
36].
The introduction of supply chains into agriculture began in the 1990s. In the beginning, a complete set of network and agricultural information decision support systems that were suitable for China’s situation were constructed [
37]. Since then, Chinese scholars have studied many issues around the agricultural supply chain, such as farmers’ income under bank credit, the randomness of agricultural output and the risk protection of insurance for farmers [
38,
39,
40]. In addition, scholars have also investigated online agricultural supply chain, risk evaluation, prevention and control of agricultural supply chains, performance evaluation and agricultural supply chains in the context of big data and blockchain [
41,
42,
43,
44,
45].
These practices and previous studies indicate that green supply chain management is mainly focused on manufacturing industries, such as automotive, furniture, electrical and electronics and construction, but less on agriculture. Prior literature focuses mainly on the environmental and economic impacts of green supply chain implementation or the decision making of internal companies, but less on the impact of green incentives from external governments on the supply chain. The practice of green finance is also widespread, and there are many scholars who have studied the impact of green credit policies on industries from the perspective of policy effects. However, most are macro-level empirical studies, and there is a lack of micro-level theoretical studies. As for agricultural supply chains, studies focus on output uncertainty, optimal decision making and risk management. However, there is less literature on the introduction of green credit on the basis of traditional agricultural supply chains and policy impacts on these types of supply chains. Furthermore, there is a lack of quantitative studies in particular on agricultural green supply chain finance. Therefore, against the background that China attaches great importance to agricultural development and the lack of relevant research, we introduce green finance to the traditional agricultural supply chain, investigate optimal strategies of each subject under the green agricultural supply chain through the Stackelberg model, investigate the impact of green credit policies on the green supply chain and propose corresponding policy recommendations.
3. Methods
3.1. The Basic Model
We considered an agricultural supply chain consisting of a representative farmer, a buyer of agricultural products and a bank that introduced green credit-related activities. In this supply chain, the bank as the leader and the farmer as the follower constitute a Stackelberg game model. The bank sets the green loan rate and the farmer chooses his own loan amount according to the bank’s rate. At the same time, the bank can predict the loan amount of the farmer and set the green loan rate based on it. The green loans can receive subsidized interest rates from the finance department and a certain degree of required reserve ratio (RRR) cuts from the central bank. The farmer takes out a mortgage with his fixed assets and starts to organize production after obtaining the loan. We assume that all production is financed by a green loan from the bank. At the end of the production period, the farmer sells all the agricultural products to the buyer.
At the beginning of the production period, the bank predicts the amount of the loan of the farmer and thus sets the green loan rate r where 0 < r < 1. The farmer observes the green loan interest rate and thus uses his fixed assets a as collateral to apply for a green loan from the bank in the amount of I. We divide the lending business of the bank into two types, green loans and non-green loans. We call the interest rate corresponding to the loans that the bank lends to the farmer for agricultural production the green loan interest rate, which is r. While other loans are non-green loans, and the corresponding interest rate is the non-green loan interest rate. After obtaining the financing, the farmer starts to produce agricultural products. We assume that the production process is affected by other factors, such as climate change and seasonal changes, so there is an uncertainty in the final yield of agricultural products. We use a random variable μ denoting the production efficiency, whose probability density function and distribution function are f(μ) and F(μ), respectively. The output of the farmer is expressed as Q = μ × I. At the end of the production period, the farmer sells all the agricultural products to the buyer in this supply chain. The buyer sells all the agricultural products in the market to maximize his profit.
For sales, we adopted the assumption that all agricultural products can achieve the equilibrium of supply and demand in the market at the price
p [
46]. We assume that the market demand of agricultural products
D is elastic to the price
p, and
.
denotes the choke price of agricultural products, it means that once the market price of the product is higher than the choke price, its demand becomes zero. k is the inverse of the price elasticity of demand, it describes the demand responsiveness to product price. We can get
from the equation
. When the product market is cleared, the market demand is equal to the total supply of agricultural products, that is
D = Q. What is more, the buyer can purchase agricultural products at price
w, which is lower than the market price
p. We set
w = m × p, where m denotes the bargaining power of the buyer, 0 <
m < 1.
The bank we introduced is a bank that conducts green credit activities. We assumed that the bank operates deposit and loan business on a daily basis. The deposit business is to deposit for households and pay interest to households on their deposits, and the interest rate is
. The loan business is divided into two categories: green loan business and non-green loan business. The volume of green loans is
I, the interest rate on green loans is
r, while the volume of non-green loans is
and the corresponding rate is
. The bank is required to pay statutory deposit reserve and excess deposit reserve as required by the central bank. As a result of green credit activities, the bank can get the green credit subsidy at
q × F × I from the finance department, where
F is the subsidy rate,
q is the percentage of the subsidy that the bank gets. What is more, the bank can also get the central bank’s targeted RRR cuts based on green loan volume and green refinancing. The specific process is shown in
Figure 1.
3.2. Optimal Strategy for the Farmer
When considering the optimal strategy of the farmer, we divided the production cycle into two phases. During Phase 1 at the beginning of the production period, the farmer applies to the bank for a green loan with his own fixed assets a (the paper assumes that all loans applied by the farmer are green loans) and determines the loan amount I. During Phase 2, the famer invests the entire loan into production. After producing the agricultural products, the farmer sells all the agricultural products to the buyer at price w.
The farmer’s revenue comes from the agricultural products that he sells, so the revenue of the farmer is calculated by multiplying quantity Q and the price w of the agricultural products. So, its revenue is expressed as . Since the farmer pays the principal and interest on the loan, the sum of principal and interest, , is considered a cost of production.
There are three cases in which the farmer repays bank loans after the sale of agricultural products. Case 1 is when the sales revenue is greater than the principal and interest sum of the loan, that is to say
. The farmer can use the sales revenue to repay the principal and interest. At this point, the farmer’s profit function is:
Case 2 is when the sales revenue is less than the loan and its interest, but the sum of the sales revenue and the total value of fixed assets is greater than the principal and interest of the loan to be repaid, that is to say
>
. At this time, the farmer will use all his sales revenue and part of the fixed assets to repay the principal and interest of the loan. This means that the farmer will lose part of his fixed assets. The farmer’s profit function is:
The value of the profit function is negative, indicating the amount of the farmer’s loss.
Case 3 is when the sum of sales revenue and the total value of fixed assets is less than the loan interest, that is
. The farmer cannot repay the loan principal and interest in full. The bank can only get all the sales income assets of the farmer, which is
. At this time, the farmer will lose all the fixed assets, and its profit function is:
Noting that the profit function is the same in Case 1 and Case 2, we only need to consider the threshold values for Case 2 and Case 3. It is not difficult to derive the threshold values
for the production efficiency
μ, as follows:
The interval of production efficiency
corresponds to Case 1 and Case 2. Meanwhile, the interval of production efficiency
corresponds to Case 3. Note that
and
denote the upper limit and the lower limit of production efficiency in the state of nature, respectively. In addition, the financial department will give a total amount of
F × I for the interest subsidy, the farmer will take a share of
1−q and the bank will have the remaining part. Therefore, the profit of the farmers is:
The important conclusions about the farmer’s optimal decision that we obtained are as follows:
Proposition 1. Assuming that the fixed assets of the farmer are , the price of agricultural products sold to the buyer is w, the market choke price is,the production efficiency of agricultural products is μ, the bargaining power of the buyer is m, the inverse of the market demand elasticity is k, the green loan interest rate set by the bank is r, the interest subsidy set by the finance department is F and the share of the interest subsidy for the farmer is (1−q), so the optimization problem of the farmer is: The optimal loan amount I* for the farmer satisfies the following equation: The proof of Proposition 1 is given in Appendix A. Remark 1. I* and r are a one-to-one corresponding functional relationship. That is to say, when the bank’s green loan interest rate is certain, the farmer can choose the optimal loan amount that maximizes his profit.
Proposition 2. Farmer’s optimal loan amount I* decreases with an increase in the green loan rate r set by the bank. In other words, an increase in the loan rate inhibits the amount of loans that farmer takes out. We can get .
Therefore, the increase in the interest rate of loans will further affect the production activity situation of the farmer. The proof of Proposition 2 is given in Appendix B. 3.3. Optimal Decision of the Bank
For the bank, it is an enterprise and needs to meet the goal of profit maximization. The bank’s income mainly comes from the interest income of two kind of loan programs, green loan and the non-green loan, and the interest subsidy from the Ministry of Finance based on the green loans. The bank’s costs include interest on household deposits and interest on green refinancing.
Corresponding to the loan repayment of the farmer, the bank’s income from green loan business is also divided into the three cases, exactly the same as the famer. In Case 1 and Case 2 the bank can recover the full amount of the loan and earn the corresponding interest. So, its green program income is: In Case 3, the bank cannot get its capital back. What the bank gets is the sum of the farmer’s income and fixed assets. So, the bank’s green program income is: .
The return of the bank’s non-green loan business is
.
, which represents the amount of non-green loan while
is the rate of it,
. The return from interest subsidy is
q × F × I.
F, which is the rate of interest subsidy of green loan set by the financial department and
q is the bank’s share part of interest subsidy. On the other hand, the cost of the bank includes interest
to pay for the deposit and interest
to pay for the green refinancing. The
D and
H denote the bank’s deposit amount and green refinancing amount, respectively. Meanwhile,
and
represent the rate of the two kinds of business mentioned above, respectively. The profit equation of the bank is specified as:
The bank’s income and expenditure must be satisfied with the financial assets and liabilities identical equation. The assets include the total credit assets of the two types of loan programs issued by the bank and the legal and excess reserves deposited with the central bank as required. The liabilities include the household deposits and the green refinance loans. The asset liability identical equation is shown as follows:
In this equation,
s is the required reserve ratio (RRR), which is the minimum required proportion of reserves that banks are required by the central bank to keep on hand and not loan out. The variable
V is the RRR cuts, which is the reduction of RRR allowed by the central bank. Reducing RRR via subsidies with all other things being equal, increases the loans by the bank which will have a positive macro-economic impact. We assume that RRR cuts for the bank depends on the share of banks’ green credit volume, and the higher the share of green credit, the more cuts the bank grants [
32]. Therefore, we express this targeted rate of reduction by the following equation:
We use to describe the volume of green credit as a share of total credit, and use G to denote the rate reduction elasticity, which shows the decrease in the required reserve ratio for each 1% increase in the volume of green credit.
The variable
H represents the amount of refinancing that the bank obtains from the central bank. The more the bank refinanced, the more assets it would have to run for profit. Assuming a proportional relationship between the amount of refinancing that a bank can obtain and the amount of green credit that it already has, with the proportionality factor denoted by
M, we get a formula as:
We obtain the following proposition for the optimal decision variables with respect to the bank:
Proposition 3. Assuming that in the bank, the household deposit interest rate is , and the loan business is divided into two categories: green loan business and non-green loan business. The green loan volume is I and the interest rate is r, while the non-green loan volume is and the interest rate is.
Variable F is the discount rate, q is the share of the interest subsidy that the bank gets, is the required reserve ratio, V is the RRR cuts that are specified by the central bank, G is the flexibility of the reduction rate, H is the amount of refinancing and M is the ratio coefficient between the amount of refinancing and the volume of green loans. Therefore, the optimization problem for farmers is: The bank’s optimal lending rate r* satisfies the following equation: The proof of Proposition 3 is given in Appendix C. 5. Discussion
5.1. Research Results
In this paper, we build a Stackelberg model in which the bank sets the green loan rate as the leader, and the farmer chooses his own loan amount according to the bank’s rate as the follower. At the same time, the bank can predict the loan amount of the farmer and set the green loan rate based on it. Our study demonstrates that the optimal loan amount and the optimal loan interest rate exist in the green supply chain, and the increase in loan interest rate will suppress the loan amount of the farmer. In the game process, the bank and the farmer adopt their own optimal strategies, but they do not make the whole supply chain optimal, and there is large room for optimization. The implementation of green credit incentive policy has a positive effect on the utility of both the bank and the farmer. The green credit incentive policy gives income subsidies to farmers and banks, and expands the assets that banks can use for lending. In addition, the support from the finance department and the central bank to banks raises the income level of banks and reduces the degree of income loss due to the adjustment of interest rates by banks, giving them room to reduce the interest rate of loans, which helps to improve the overall utility level of the supply chain.
In previous studies of green supply chains, the income of each subject is calculated in terms of the success of the delivery of goods [
50]. In contrast, this paper considers the characteristics of agricultural production and refers to relevant studies on agricultural supply chains to calculate the income of each subject in terms of the randomness of the production of agricultural products, which is more in line with the situation of agricultural production. For the discussion of green credit, previous studies have either investigated the connotation and model of green finance qualitatively [
51], used general equilibrium models to study the effects of green credit policies [
22] or used empirical methods to study the effects of corporate behavior on corporate governance under green finance policies [
52]. This paper absorbs the discussion of green finance policy from previous studies and adopts the game model, which is widely used in supply chain research, in model construction, which is more suitable to develop the research on green supply chain finance.
5.2. Research Implications
The findings of this paper help to optimize the benefits of each subject in the agricultural supply chain, enhancing the overall efficiency of the agricultural supply chain. It has policy guidance significance for green finance-assisted agricultural development, which is conducive to achieving sustainable agricultural development. Based on the research results, we make the following policy recommendations.
Banks should combine agricultural production data and formulate different loan interest rate schemes for different agricultural products with different planting and breeding risks and market conditions. For agricultural products that are difficult to produce or scarce in the market, interest rates can be appropriately lowered to support farmers’ loan for agricultural production. On the other hand, for agricultural products with flood market supply or low crop value, the loan interest rate can be appropriately raised. Under the premise of risk control, the central bank and government departments can target the rate of green loan interest rate reduction, so that farmers and buyers can obtain greater returns, thus enhancing the overall benefits of the agricultural green supply chain. The central bank, commercial banks and local government departments should cooperate to expand the sources of funds needed for the implementation of green credit policies, such as green credit subsidies and green refinancing, and, furthermore, tax breaks for financial institutions, farmers and buyers need to be taken into account.
In addition, the application of green credit policies in the agricultural supply chain may come with some costs. First, in the presence of constraints on the total amount of loans, the increase in green credit may cause a decrease in other lending operations. For situations that the green-loan business crowd out other businesses, banks themselves should draw red lines for green loans. The central bank should expand banks’ green and non-green credit levels to cooperate with the implementation of green refinancing and RRR reduction policies. Second, the policy income may be larger than the normal output income with the increase in the loan amount, which may result in the excess of green production capacity and make the subjects supported by the policy obtain subsidies their main source of income. So, the finance department and the central bank should set a subsidy ceiling when implementing green credit policies to make sure that the production and sale of agricultural products are the main way for farmers to generate income. They should also adjust the flexibility of subsidies, considering the difficulty of agricultural production and market conditions, so that the green credit policies can really benefit farmers.
5.3. Outlook of the Further Problems
Future research can improve on our analyses as follows. First, the acquirer, an important subject in the supply chain, its purchase price and bargaining power will have a direct impact on the farmer’s revenue. However, we didn’t discuss the acquirer’s strategies. Second, the farmer’s financing approach discussed in this paper is single external financing, meaning that the loans are provided by the commercial bank. However, with the development of supply chain finance, internal financing within the industry has also been widely adopted. Therefore, the decision-making behavior of the three parties under such a financing model can be further examined when farmers adopt a dual-channel financing model, where loans are obtained from both the bank and the acquirer. Finally, the interest subsidy policy in this paper is a direct cash subsidy from the finance department to the farmer and the bank, which may put some pressure on the government finance department. Under the dual-channel financing mode, the tax of the acquirer can be reduced to some extent and the acquirer is required to provide low-interest loans to farmers, so as to reduce the financial pressure on the government.
6. Conclusions
Nowadays, countries around the world attach great importance to green and sustainable development. Green supply chain management is an effective way of sustainable development that gives consideration to both benefit and environment. At the same time, the Chinese government has put forward lots of policies for rural agricultural development in recent years. Agricultural green supply chain is the main direction for the sustainable development of agriculture in the future. Faced with the rapid development of agriculture and rural areas and the lack of relevant research, we conducted this study.
We used the Stackelberg Leadership Model to construct a pricing model which adds green credit policies. Our study on green credit shifted from the traditional macro level to the micro level. We introduced green credit to the traditional agricultural supply chain and investigated the impact of green credit policies on the green supply chain, and broadened the research content on agricultural supply chains. At the same time, considering that agricultural production is very affected by climate conditions, we formally applied randomness of agricultural output into our models. This makes the research method of supply chain finance more suitable for agriculture and closer to reality.
Through our study, we found that optimal decisions exist for both farmer and bank in the supply chain, but there is still room for optimization in the agricultural supply chain when both bank and farmer make their own optimal decisions. The implementation of green credit policies can improve the profit of subjects in agricultural supply chain. Green credit policies also give the bank room to reduce interest rates so that the overall utility level of the supply chain could be improved, which is conducive to efficiency and sustainable development. Therefore, the government should promote green credit policies in the agricultural supply chain to improve the overall efficiency of the supply chain, while giving benefits to the subjects in the supply chain.