1. Introduction
The greenhouse effect and global climate change are now urgent worldwide challenges that require national attention due to the overabundance of carbon dioxide emissions. The environment is greatly impacted by the carbon dioxide produced by human economic activity. China has pledged to reach its “carbon peak” by 2030 (Liu et al., 2023 [
1]), with the aim of stabilizing and then reducing its annual carbon dioxide emissions. By 2060, China hopes to be “carbon neutral” (Antimiani et al., 2023 [
2]).
Due to the current global climate change, governments of various countries have introduced a series of laws and policies, such as carbon tax, carbon quotas, carbon trading, penalties, subsidies, and hybrid carbon policies, to limit carbon emissions (Alegoz et al., 2021 [
3]). The carbon emission cap and trading mechanism, which combines administrative regulation with market adjustment, has been proven an effective way for controlling carbon emissions. The core of the carbon trading mechanism is that governments allocate a certain amount of carbon emission allowance to companies. If enterprises exceed these allowances during production, they must purchase additional carbon emission rights on the market. This mechanism incentivizes companies to improve energy efficiency and adopt cleaner technologies, thereby reducing carbon emissions without adding costs (Xu et al., 2016 [
4]). Furthermore, customers are placing higher value on products that are low-carbon and environmentally friendly as a result of their growing knowledge of environmental protection. Concerns about sustainable goods among consumers are driving businesses to take environmental effects into account during the product design and production processes, as seen by the market’s increased demand for low-carbon items.
Facing increasing environmental standards and regulatory requirements globally, manufacturers are under pressure to adopt new technologies or update equipment to effectively control carbon emissions and reduce environmental pollution. For instance, the strict environmental regulations implemented in China in 2016 led to the closure of thousands of small and medium-sized enterprises, highlighting the direct impact of environmental regulations on business operations. Government incentives, such as subsidies to promote the increase in the use of clean energy (CER), not only help to mitigate climate change but also drive the green transformation of the economy (Bi et al., 2017 [
5]). In addition to these regulations and incentives, the retailer’s fairness concerns can provide motivation for CER. However, despite these external factors providing momentum for the development of a low-carbon supply chain, manufacturers still face the challenge of information asymmetry (Sarkar et al., 2023 [
6]), which may erode the trust necessary for transactions between producers and consumers, making the transaction process more complex and time-consuming, ultimately hindering cooperation and coordination among all participants. It is worth noting that some customers have distrust issues with low-carbon products, and in addition, many consumers hope that these products have traceability.
The application of blockchain in the carbon trading sector provides solutions to these problems, improving visibility and trustworthiness, while also significantly reducing the costs and intricacies associated with carbon trading (Fernando et al., 2021 [
7]). With the feature of immutability, it is a distributed innovation in contrast to conventional centralized information sharing systems. These characteristics can provide a more efficient and transparent approach to carbon management. A typical example is the collaboration between IBM and Veridium Labs, which resulted in an innovative blockchain-based carbon credit trading solution (IBM Newsroom, 2018 [
8]). This collaboration gave rise to a digital token called “Verde”, which is associated with the use of carbon credits. By utilizing the immutable recording and detailed traceability capabilities of blockchain, the system ensures the authenticity of carbon credit, thereby improving the credibility and efficiency of carbon credit transactions. China launched the world’s largest carbon trading plan in 2017, with the goal of reducing greenhouse gas emissions. To ensure transparency and prevent fraud, it has explored the use of blockchain technology in its emissions trading system. By recording transactions and carbon credits on distributed ledgers, the aim is to improve the integrity and efficiency of trading systems (Weng et al., 2018 [
9]).
Blockchain has another application, which helps address the issues of emotional fairness and profit imbalance in the supply chain. For example, Starbucks collaborates with Microsoft to use blockchain technology to show customers and supply chain participants the movement and transformation of their coffee (Sokolowsky 2019 [
10]). Amazon has implemented blockchain technology to provide end-to-end traceability for Nescafé coffee beans. This thorough transparency not only helps customers trust that the product is real and of high quality, but it also gives all participants in the supply chain the ability to understand each other’s profit, leading to more equitable outcomes for coffee producers who might otherwise be treated unfairly (Alamsyah et al., 2023 [
11]).
In the field of research on supply chain fairness concerns, academia has traditionally focused on recycling and remanufacturing issues within closed-loop supply chains (Sumit et al., 2021 [
12]; Li et al., 2021 [
13]; Wang et al., 2023 [
14]). However, with the increasing severity of global climate change trends, carbon emission policies and the emission reduction measures of manufacturers have become particularly critical, and their importance cannot be overlooked. Moreover, in the actual operation of supply chains, there is often an asymmetry and delay in information between upstream suppliers and downstream retailers, which makes the demand for fair transactions more urgent for downstream retailers (Sarkar et al., 2023 [
6]).
Considering these background factors, it becomes clear that every link in the supply chain is essential to the overall sustainability. If a party in the supply chain excessively pursues economic benefits while neglecting the fairness of society and the environment, it can lead to environmental destruction and social instability. The use of blockchain and a focus on fairness can effectively balance the needs of different stakeholders and promote the achievement of sustainable development goals. Within the supply chain, different participants are interdependent, with connections in terms of resources, information, and interests. If any party feels treated unfairly, it can undermine the stability of the supply chain, increase barriers to cooperation, and even lead to the dissolution of cooperative relationships.
Although existing research has explored the impact of blockchain on supply chain emission reduction decisions (Hua et al., 2020 [
15]; Yue et al., 2021 [
16]), these studies have often neglected the carbon quota trading process and have not fully considered the impact of carbon trading costs on corporate emission reduction decisions and the strategic choice of introducing blockchain technology. To fill this research gap, this paper studies a supply chain model involving manufacturers and retailers under the context of carbon trading, where the manufacturer must decide whether to adopt blockchain technology, and the retailer shows concern for emotional fairness. This study specifically seeks to address the following issues: (1) Do the supply chain members always have the incentive to adopt blockchain technology and exhibit fairness concerns? (2) How does the reduction in the size of the market, the coefficient of cost for reducing carbon emissions, the cost per unit for implementing blockchain technology and a fairness concern coefficient affect the supply chain? (3) What are the optimal strategies for manufacturer and retailer, respectively, during independent decision-making and collective supply chain decision-making?
To respond to the questions raised above, we established a supply chain model that includes a dominant manufacturer and a following retailer. The manufacturer committed to reducing carbon emissions during its production activities. We think that the adoption of blockchain technology may increase cost per unit for implementing blockchain technology for the manufacturer, which may weaken certain factors of potential market size. Sometimes, in order to maintain the long-term stability of the supply chain, members of the supply chain not only focus on their own interests but also pay attention to the fairness of transactions, exhibiting fairness concern.
In situations where information is not fully transparent, both fairness concerns and the adoption of blockchain technology can mitigate uncertainty and build trust. The decision-makers’ perception of fairness can influence their decision-making behaviors, and especially when a party among the supply chain members perceives an unfair profit distribution, it will affect the cooperation between the upstream and downstream of the supply chain (Wu et al., 2014 [
17]). As for blockchain, it helps retailers facing lower profit margins in implementing a suite of strategies to address unfair practices. By evaluating factors such as unit product carbon emission reductions, sales quantity, and profit, the members in a supply chain can select the most suitable strategies to optimize their supply chain management, aligning with their unique needs and market conditions.
We found that applying blockchain to the supply chain brings several advantages for both manufacturer and retailer, such as improving the cost per unit for implementing blockchain, increasing order quantity, and increasing profits. However, the increased cost of blockchain applications may reduce these benefits, leading to a decrease in profits. It is crucial for supply chain members to carefully weigh the costs and the benefits when adopting technological innovations to ensure sustainability without compromising competitiveness and profitability. Similar to previous studies (Zhang et al., 2018 [
18]; Zhou et al., 2016 [
19]), we assume that the retailer has fairness concerns. It may impact production efficiency and make it difficult to balance efficiency with the goal of reducing carbon emissions. If the cost of carbon reduction is relatively high and the cost of carbon trading is also relatively low, the retailer and manufacturer might find that sharing the carbon reduction costs through cooperation is more economical and effective. Under such circumstances, the retailer’s profit may be positively correlated with their level of fairness concerns, as both parties can gain economic incentives from carbon reduction through equitable profit-sharing and collaboration, thereby promoting the entire supply chain to evolve in a more environmentally friendly and sustainable direction.
The rest of this study is organized as follows:
Section 2 reviews the relevant literature. We show the model framework and the equilibrium outcomes in
Section 3.
Section 4 analyzes the model. The models are compared in
Section 5 and conduct numerical simulation in
Section 6. We conclude the paper and discuss opportunities for future research.
Section 7. Details of proofs are provided in
Appendix A.
4. Equilibrium Analyses
In this study, we assume that the market demand without blockchain and with blockchain are
and
, respectively. The potential market size is
under case B (with blockchain), while the market scale is reduced to
under case N (without blockchain). The price elasticity coefficient is 1 (Ferrer et al., 2006 [
49]). The manufacturer’s total cost to realize carbon emission reduction is
, where
is the coefficient of cost for reducing carbon emissions and
is the product’s carbon emission reduction.
4.1. Without Fairness Concern and Blockchain (Case NN)
When the manufacturer does not consider using blockchain and the retailer does not have fairness concerns. The manufacturer’s and retailer’s profits in case NN are given as follows:
Derived from Equation (3), ; therefore, when , the Hessian matrix is negative define, and to ensure the model is meaningful, we assume , which implies that decision models are solvable and optimal decisions are positive and finite.
As the Stackelberg leader, the manufacturer first announced wholesale price and carbon emission reduction. Second, the retailer determined the retail price based on the leader’s decision. Backward induction was used to solve the optimizations. The optimal solutions can be easily derived and are given in Lemma 1.
Lemma 1. Without blockchain and fairness concerns, the optimal solution in Case NN is as follows:
By analyzing the optimal solutions of Case NN, the proposition can be derived as follows:
Proposition 1. Role of the reduction in the size of the market in Case NN.
(i) The first derivatives of , , , and are negatively correlated with .
(ii) For the wholesale price: When , if , then decrease with . When , if , then decrease with ; if , then increase with .
(iii) For the retail price: When , if , then decrease with . When , if , then decrease with ; if , then increase with .
Proposition 1 demonstrates that product’s carbon emission reduction, order quantity, the manufacturer’s profit, and the retailer’s profit are all decreasing with . The impacts wholesale price and retail price are related to the coefficient of cost for reducing carbon emissions and carbon trading price . For example, when cost coefficient of carbon emission reduction and the cost of carbon trading are relatively low, the wholesale price is negatively correlated with . When the coefficient of cost for reducing carbon emissions is relatively high (), if the cost of carbon trading is lower than a specific threshold, will decrease with . If the cost of carbon trading exceeds a specific threshold, will increase with .
4.2. The Manufacturer Adopts Blockchain Technology (Case BN)
Manufacturer adopting blockchain will result in the unit operating costs associated with blockchain. Let denote the cost per unit for implementing blockchain technology. To make sure case BN is meaningful, we assume and , which implies that decision models are solvable and optimal decisions are positive and finite.
The manufacturer’s profit:
By applying backward induction, the optimal solutions in Case BN can be derived in Lemma 2.
Lemma 2. The manufacturer adopts blockchain technology; the optimal solution in Case BN is as follows:
By analyzing the optimal solutions of Case BN, Proposition 2 can be derived as follows.
Proposition 2. Role of the cost per unit for implementing blockchain in Case BN.
(i) The first derivatives of , , , and are negatively correlated with .
(ii) For the wholesale price: When , if , then decrease with . When , if , then increase with ; if , then decrease with . When , increase with .
(iii) For the retail price: When , if , then decrease with . When , if , then increase with ; if , then decrease with . When , increase with .
From Proposition 2, we know that under Case BN, the higher the cost per unit for implementing blockchain technology, the lower the product’s carbon emission reduction, order quantity, the manufacturer’s profit, and the retailer’s profit. Moreover, when k is less than a certain threshold (), the wholesale price always decreases as increases, and when k is more than a certain threshold (), the product wholesale price always increases as increases. When k is within a specific range (), if , the wholesale price will increase as increases. Proposition 2(iii) demonstrates how the impact of on the wholesale price is equal to that of on the retail price.
4.3. Decisions with Retailer’s Fairness Concerns (Case NF)
Due to the manufacturer’s dominant position, which has led to a great deal of resentment in the retailer, it benefits the most. At this time, the retailer’s concern for a fair distribution of profits will have a huge impact on the operation of the supply chain. Therefore, the retailer will not take maximizing their profits as the objective function but pay more attention to the profit gap between themselves and the manufacturer. Referring to the handling method of Nie et al. (2017) [
31], a simplified fairness utility function is adopted. Thus, the retailer’s utility function under fairness concerns can be represented:
in which
represents the retailer’s coefficient of fairness concern; the larger the value of
, the higher the level of the retailer’s concern for fairness. The utility of the retailer is negatively correlated with the difference in profits between manufacturer and retailer. When manufacturer earns more profits than the retailer, the utility of the retailer decreases.
The profits of the manufacturer and the retailer in case NF are as follows:
By applying backward induction, the optimal solutions in Case NF can be derived in Lemma 3.
Lemma 3. Considering the retailer’s fairness concern, the optimal decisions and profits in Case NF are as follows:
By analyzing the optimal solutions of Case NF, some propositions could be derived as follows:
Proposition 3. Role of the reduction in the size of the market in Case NF.
(i) The first derivatives of , , , and are negatively correlated with .
(ii) For the wholesale price: When , if , then decrease with . When , if , then decrease with ; if , then increase with .
(iii) For the retail price: When , if , then decrease with . When , if , then decrease with ; if , then increase with .
Similar to Proposition 2, the reduction in the size of the market also has a negative impact on the lower the product’s carbon emission reduction, order quantity, the manufacturer’s profit, and the retailer’s profit, and the impacts of on wholesale price and retail price are also related to and .
Proposition 4. Role of fairness concerns in Case NF.
(i) The first derivatives of and are negatively correlated with .
(ii) For the order quantity: has a positive correlation with .
(iii) For the wholesale price: When , if , then decrease with . When , if , then decrease with ; if , then increase with .
(iv) When decrease with and increase otherwise.
(v) For the retailer’s profits: When , if , then decrease with . When , if , then increase with ; if , then decrease with .
Proposition 4 (i) and (ii) shows that the product’s carbon emission reduction and the manufacturer’s profit decrease as increase, and the relationship between the order and the fairness concerns is opposite of the above. Proposition 4(iii) demonstrates that the effect of fairness concerns on wholesale price is manifold. When is below a specific threshold, decrease with . When t is greater than a certain threshold, if t is also higher than a certain threshold, increase with . According to Proposition 4(iv), the retail price will decrease with if the cost of carbon trading is sufficiently low. From Proposition 4(v), when the coefficient of cost for reducing carbon emissions is relatively low, it implies that manufacturer can implement carbon reduction measures with little impact on her profits. However, if the retailer has a strong concern for fair profit distribution, he may demand a share of the additional profits resulting from carbon reduction measures. In this case, the manufacturer, leveraging her dominant position, might negotiate to pass on some of the costs to the retailer or exert pressure in profit distribution to maintain her leading position and profit advantage. As a result, the retailer’s profits may decrease due to his pursuit of fairness, leading to a negative correlation between his actual profits and his fairness concern.
Proposition 5. Role of coefficient of cost for reducing carbon emissions.
(i) The first derivatives of , , , , , , , , , , , and are negatively correlated with .
(ii) For the wholesale price: If , and increase with and decrease otherwise, , increase with and decrease otherwise,
(iii) For the retail price: If , , , and increase with and decrease otherwise.
No matter the manufacturer adopts blockchain or the retailer has fairness concerns, the product’s carbon emission reduction, order quantity, the manufacturer’s profit, and the retailer’s profit are all negatively correlated with the coefficient of cost for reducing carbon emissions. For the wholesale price, the level of carbon trading prices plays a decisive role in the relationship between wholesale price and the carbon emission reduction cost coefficient. When the cost of carbon trading exceeds a certain preset threshold, a positive correlation emerges between wholesale prices and the coefficient of cost for reducing carbon emissions. In this scenario, as the cost of carbon reduction increases, manufacturer may raise wholesale prices, partially passing on the increased costs to retailer. This reflects the heightened sensitivity of manufacturer to carbon emission costs at higher carbon trading prices and their strategy of adjusting cost burdens through pricing mechanisms. Conversely, when the cost of carbon trading is below this threshold, the situation is reversed. In terms of retail pricing, if the cost of carbon trading exceeds a certain threshold. There is a positive correlation between the retail price and the coefficient of cost for reducing carbon emissions in three different cases. However, if the cost of carbon trading falls below this threshold, the relationship between the retail price and the coefficient of cost for reducing carbon emissions becomes negative. This relationship may be influenced by a variety of factors. When the cost of carbon trading is high, the retailer may believe that consumers are willing to pay a higher price for products that reduce their carbon footprint, thereby increasing the retail price. Conversely, when the cost of carbon trading is relatively low, the retailer may choose to lower prices to attract consumers and compensate for the potential loss of market share due to increased environmental costs (Proposition 5).
5. Comparison
The equilibrium findings obtained in
Section 4 under the three cases are compared in this section. The following propositions illustrate the comparative results on the product’s carbon emission reduction, order quantity, the manufacturer’s profit, and the retailer’s profit.
Proposition 6. The comparative results regarding the product’s carbon emission reduction under the three cases are given as follows:
(i) If , ;
(ii) If , ;
(iii) If , .
Proposition 6 shows the product’s carbon emission reduction for these three cases. The result reveals that each case has . The intuition behind the observation is as follows: If the retailer is more focused on fair profit distribution, he is likely to devote more energy and resources to negotiations and competition with the manufacturer, rather than to joint efforts in carbon reduction. This could lead to an increase in carbon emissions within the supply chain.
With regard to Case BN and Case NN: Note that if cost per unit for implementing blockchain technology is not sufficiently high (), then regardless of whether the manufacturer is fair-minded or not, adopting blockchain can improve the product’s carbon emission reduction and order quantity. In addition, if the cost per unit for implementing blockchain remains below a certain threshold, the manufacturer’s profit with blockchain will be higher than without it. However, if the cost per unit for implementing blockchain exceeds this threshold, the manufacturer’s profit margin will decrease. The impact of blockchain implementation costs on profit margins is an important factor to consider for manufacturer. This indicates that cost per unit for implementing blockchain is the primary determinant of whether or not the manufacturer uses blockchain technology.
Proposition 7. The comparative results for the order quantity under the three cases satisfy the following relationship:
(i) If , ;
(ii) If , ;
(iii) If , .
Proposition 7 presents the comparative results regarding the order quantity in the three cases. The results shows that the order quantity under NN is always higher than that under NF. If the retailer is not concerned with fairness and increases retail price to pursue higher profits, this will diminish the product’s market competitiveness, resulting in a decrease in order quantity. On the other hand, when the retailer has a fairness concern, he is more likely to maintain reasonable pricing, which not only attracts more customers and boosts sales but also fosters a positive cooperative relationship with the manufacturer. This approach can enhance the efficiency and profitability of the supply chain over time. When the cost per unit for implementing blockchain is relatively low, the manufacturer is willing to adopt this technology. The immutability and transparency of blockchain make transactions more reliable and transparent, enhancing trust among participants and facilitating more transactions and sales volume.
Proposition 8. The comparative results for total profit under the three cases satisfy the following relationship:
(i) If , .
(ii) If , .
(iii) If , .
Proposition 8 shows the variations in the supply chain’s profit for the three cases. We obtain that the whole supply chain always profits less under Case NF, partly because if the retailer does not care about fairness, they may adopt strategies to increase their profit such as raising product prices to achieve a higher profit margin. This tactic might increase the retailer’s profit in the short term, but over the long term, it could lead to a decrease in market demand, as consumers may become dissatisfied with the higher prices and reduce their purchasing.
In terms of Case BN, we find that when the cost per unit for implementing blockchain technology is relatively low, the profit of the whole supply chain in BN is higher than that of both NN and NF. This is consistent with our intuition that when , the manufacturer chooses to adopt blockchain to maximize its benefit.
Proposition 9. The comparative results regarding the manufacturer’s profit under the three strategies are given as follows:
(i) If , ;
(ii) If , ;
(iii) If , ;
where .
Proposition 9 compares the manufacturer’s profit in three cases. The results shows that the manufacturer’s profit under NN always higher than NF. This is because if the retailer does not have a fairness concern, he may adopt certain strategies to increase his own profits. However, if retailer has a fairness concern, he is more likely to establish a relationship with the manufacturer that is based on cooperation and trust. This relationship can promote better coordination and communication within the supply chain, thereby improving overall operational efficiency and reducing costs. Therefore, although the manufacturer may share more profits with the retailer in the short term, in the long term, a stable cooperative relationship can lead to more efficient supply chain operations, which may ultimately result in higher profits for the manufacturer than would be the case if the retailer did not care about fair distribution. When the cost per unit for implementing blockchain is relatively high, manufacturer may face challenges. The decentralized characteristic of blockchain requires a significant amount of computing resources to maintain, which leads to a significant increase in applying costs. If manufacturer cannot offset this increased cost by raising product prices or reducing other costs, her profits will be affected. Therefore, when deciding whether to adopt blockchain technology, the manufacturer needs to weigh the advantages of transparency and trust she brings against the operating costs to ensure that the technology investment can bring sustainable economic benefits.
Proposition 10. The equilibrium retail price and the retailer’s profit under the three strategies satisfy the following relationship:
- (1)
When :
- (i)
If , ;
- (ii)
If , ;
- (iii)
, .
- (2)
When :
- (i)
If , ;
- (ii)
If , ;
- (iii)
If , ;
where .
As Proposition 10 illustrates, if the coefficient of cost for reducing carbon emissions is low, each condition has . This is because as the manufacturer takes on the whole cost of carbon reduction as the dominant company in the supply chain, if the retailer has concerns about fair profit distribution, he may choose not to raise retail prices, thus maintaining a smaller profit gap with the manufacturer. This may limit, his profit growth. Conversely, if the retailer does not have fairness concerns, he may exploit the cost advantage of the manufacturer by increasing retail prices to boost his own profit. In this scenario, we have . However, this strategy may potentially undermine the long-term stability and partnership relationships within the supply chain. In the long term, fair profit distribution is more conducive to maintaining positive cooperation and benefits both the manufacturer and retailer overall. In Case BN, when the cost per unit for implementing blockchain is below a certain threshold, adopting blockchain can enable the retailer to maximize their profits. This is because blockchain technology can reduce transaction costs, enhance transparency, and improve efficiency in the supply chain, thereby reducing overall operational costs. Consequently, the retailer can obtain products at lower costs and achieve higher profits.
Proposition 11. The comparative results for the manufacturer’s and retailer’s profit under the three cases satisfy these relationships:
- (1)
When :
- (i)
If , , ;
- (ii)
If , , ;
- (iii)
If , , ;
- (iv)
If , , .
- (2)
When :
- (i)
If , , ;
- (ii)
If , , ;
- (iii)
If , , ;
- (iv)
If , , .
- (3)
When :
- (i)
If , , ;
- (ii)
If , , ;
- (iii)
If , , ;
- (iv)
If , , .
Proposition 11 summarizes the profits of the manufacturer and retailer in three cases. We find that when taking supply chain applications of blockchain technology into consideration, the cost factor is important. Blockchain is favored for its transparency, decentralization, and security, but its operational cost also impacts the decisions of the manufacturer and the retailer. When the cost per unit for implementing blockchain is relatively low, regardless of the carbon reduction cost factor, using blockchain technology is advantageous for the manufacturer and the retailer. This is because blockchain can reduce transaction costs and enhance the efficiency and transparency of the supply chain, thereby generating greater benefits for both parties.
As for the carbon reduction cost factor, if the carbon reduction cost factor is greater than , and the unit operating cost of blockchain is greater than , then the manufacturer may opt not to adopt blockchain. Then, the manufacturer and the retailer can achieve the maximum profit in Case NN. However, this choice might compromise the stability and long-term sustainability of the supply chain. When the cost per unit for implementing blockchain exceeds a certain threshold, it will directly affect the optimal strategy choices of both the manufacturer and the retailer. The manufacturer and retailer may have different optimal solutions, which could lead to instability within the supply chain system.
6. Numerical Simulation
This section uses MATLAB to further present the numerical analysis to verify the correctness of the above conclusions. To ensure the practical significance of the results, we assume that , , , , , , , and .
Figure 1 shows that when the cost of blockchain technology is relatively low, the manufacturer is more likely to adopt this technology, not only because lower costs make the adoption of new technology more economical, but also because blockchain technology can enhance the transparency and efficiency of the supply chain, thereby promoting a reduction in carbon emissions and an increase in sales volume. However, as the cost per unit for implementing blockchain gradually increases, manufacturer may find it increasingly uneconomical to continue using this technology, leading them to reduce their dependence on blockchain, which in turn affects the reduction in carbon emissions and the demand quantity of low-carbon products.
It is worth noting that there is a threshold, and when the cost of blockchain technology exceeds this point, Case NN achieves the maximum profit. This could be because under the pressure of high costs, the manufacturer might turn to more traditional, lower-cost supply chain management methods. Although these methods may not be as technologically advanced, they may be more cost-effective in the short term. However, when blockchain technology is not adopted, even if the retailer does not have fairness concerns, product carbon emission reduction and market demand quantity of low-carbon products remain at a high level. Yet, the manufacturer will consider not only the direct economic costs but also the long-term stability of the supply chain and partnerships, reflecting her commitment to sustainable development and social responsibility.
According to
Figure 2, when the cost per unit for implementing blockchain is relatively low, adopting blockchain can maximize profits for the entire supply chain. This is because the transparency and efficiency gains brought by blockchain can significantly increase the value of the supply chain, thereby exceeding its costs. However, as the cost per unit for implementing blockchain increases, even when consumers are more sensitive to the retailer’s low-carbon promotion and blockchain technology, the overall profit of the supply chain adopting blockchain may gradually decrease. This is because the rise in costs may erode the potential benefits brought by blockchain technology.
For the whole supply chain, the retailer’s fairness concerns may reduce overall profits, as this may require suppliers to make some concessions in terms of pricing or contract terms. However, fairness concerns are crucial for maintaining the long-term stability and partnership of the supply chain. Fairness concerns help ensure that all participants in the supply chain receive reasonable returns, thereby motivating them to continue investing and improving, which is necessary to cope with market fluctuations and uncertainties. In the long term, this stability can promote more efficient collaboration, reduce conflicts and transaction costs, and ultimately lead to higher overall supply chain efficiency and stronger competitiveness in the market.
As shown in
Figure 3a,b, no matter the size of the carbon reduction coefficient, as long as the cost per unit for implementing blockchain satisfies
, the optimal strategy for both the manufacturer and the retailer is Case BN. This is because blockchain can significantly reduce transaction costs, enhance data transparency and security, and improve supply chain efficiency. Moreover, since the manufacturer bears all the associated costs, retailers can maintain or increase their profit levels without being affected by cost increases. Therefore, under these circumstances, both the manufacturer and the retailer can benefit from the operational efficiency improvements brought by blockchain technology and jointly achieve maximized profits. As the coefficient of cost for reducing carbon emissions and the cost per unit for implementing blockchain increase, the decisions of both members may diverge, potentially impacting the stability of the supply chain. The rise in costs could lead to changes in profits, which may in turn trigger strategic adjustments and shifts in market behavior. To maintain the stability of the supply chain, it is necessary to strengthen the coordination mechanisms within the supply chain to ensure a balance of interests among all parties. Additionally, the manufacturer and retailer may need to jointly explore innovative solutions to adapt to the challenges posed by increased costs, in order to preserve long-term cooperation and sustainability in the supply chain.