1. Introduction
The potential threat to the environment caused by increasing greenhouse gas (GHG) emissions is accelerating the process of global warming due to the increase in carbon emissions from industrial production and domestic consumption [
1]. In recognition of the importance of reducing carbon emissions, governments and public sectors have reached a consensus on the concept of “carbon neutrality” [
2]. To achieve this goal, governments across the globe have implemented a series of measures to reduce carbon emissions [
3,
4], including energy storage resource management, carbon emissions trading, carbon taxes, carbon subsidies, and renewable energy subsidies. Among these measures, carbon emissions trading represents a pivotal policy instrument for reducing GHG emissions, such as carbon dioxide, and for actively and steadily advancing carbon peaking and carbon neutrality. This is achieved through the control of market mechanisms, which regard carbon dioxide emission rights as a commodity and establish a carbon dioxide emission right trading market [
5]. The “Emissions Trading Worldwide 2023 Status Report” published by the International Carbon Action Partnership (ICAP) indicates that regions accounting for 55% of the world’s GDP and 1/3 of the world’s population operate 28 carbon markets, which collectively cover 17% of total GHG emissions [
6]. Meanwhile, China is also actively establishing a carbon market and promoting carbon emissions trading, and “Interim rules for carbon emissions trading management” have come into force since 1 May 2024 [
7].
The carbon quota allocation method represents the foundational element of the carbon trading market, serving as the basis for the subsequent design of the carbon trading mechanism. Two primary categories of carbon quota allocation methods exist: free allocation and compensated allocation. In the nascent stages of the carbon trading market, the free allocation method can reduce the participation costs of companies and facilitate the implementation of carbon trading policies [
8]. Two principal methods may be employed to achieve such an allocation: the grandfathering principle and the benchmarking principle. The grandfathering principle establishes the initial total carbon quota based on the enterprise’s historical production carbon emission statistics. In contrast, the benchmarking principle is based on the principle of “one product, one benchmark”, whereby the government determines the benchmark carbon quota for an industry based on the industry’s total carbon emission statistics. The total carbon quota allocated to an enterprise is then calculated as the product of the benchmark carbon quota and the enterprise’s production volume.
The grandfathering principle has a less negative impact on enterprises’ production and a relatively simple allocation process. However, it may result in a reduction in the necessity for early trading. The benchmarking principle is more restrictive for high carbon emitters and can address fairness issues in a more equitable manner. However, the process of establishing benchmarks is more complex and rigorous. These two initial carbon quota allocation methods have distinct advantages and disadvantages, and their implementation varies by country and period. For instance, the European Union has implemented a hybrid system of free and remunerated carbon quota allocation. This system will gradually expand the benchmarking principle based on the grandfathering principle, with a certain percentage of remunerated auctions introduced in stages 1 and 2. New Zealand has developed allocation methods and credits for different industries [
9]. Additionally, a combination of multiple scenarios, including grandfathering, benchmarking principles, and purchasing, has been adopted for a single industry. China’s carbon market quota allocation is based on grandfathering and benchmarking guidelines, with varying methods across provinces. For example, Guangdong Province employs the benchmarking principle for the paper industry, whereas Hubei Province employs the grandfathering principle [
10]. Furthermore, the carbon quota allocation mechanism is not fixed and may also be adjusted within specific industries, according to the relevant regulations. For instance, Shenzhen modified its quota allocation method from the benchmarking principle to the grandfathering principle in 2021 for four specific industries: public transportation, port terminal, hazardous waste treatment, and subway. Additionally, Beijing altered the quota approval method from the grandfathering principle to the benchmarking principle in 2022 for two subsectors: other power generation (pumped storage) and power supply (grid). As the carbon trading market continues to evolve, an increasing number of enterprises are pursuing the optimization of their production processes and technologies with the objective of achieving low-carbon production and reducing carbon emissions [
11]. Presently, the manufacturing industry is the industrial sector with the highest energy consumption and most significant carbon emissions in China. Furthermore, manufacturing production is the primary contributor to excessive resource consumption [
12]. Therefore, it is necessary to further investigate which method is more effective in incentivizing enterprises to engage in low-carbon manufacturing and carbon emission reduction: the grandfathering principle or the benchmarking principle.
At the consumer level, heightened low-carbon awareness among consumers will also provide an incentive for enterprises to engage in green emission reduction. The advent of information technology has facilitated consumers’ access to information regarding product pricing, quality, and green performance. The purchasing decisions of consumers with low-carbon preferences will be influenced not only by factors related to emission-reduction efforts and low-carbon advertisements but also by the information they have previously gathered and the expectations they have formed (reference points). Moreover, by comparing the actual low-carbon level of a current product with the low-carbon reference level of a previously purchased product, consumers are more likely to make a purchase when they perceive a gain [
13]. According to NIQ 2024 Consumer Outlook, 66% of consumers are willing to pay more for sustainable goods, with millennials being the most willing to pay extra for sustainable products. About 45% of respondents indicated that a company’s commitment to environmental stewardship can influence their purchasing decisions. Therefore, this trend has prompted many companies to include carbon footprint information on their products, with the aim of enhancing their market competitiveness. As pivotal actors in the initial stages of the supply chain, manufacturers are implementing measures to enhance the environmental sustainability of their products and bolster their corporate reputation. For example, the Midea Group, headquartered in Guangdong Province, China, is dedicated to the establishment of a low-carbon supply chain. Their air-conditioning products are manufactured in accordance with green manufacturing technology and energy-saving equipment, and the use of environmentally friendly materials, such as GWP refrigerants, is prioritized in product design in order to reduce the impact on the environment.
In conclusion, enterprises guarantee the stable operation of the carbon trading market by engaging in the purchase or sale of carbon emission credits within the carbon trading market. Although the government is not directly involved in carbon trading, it can indirectly influence carbon trading through the initial allocation of carbon quotas, the implementation of carbon pricing policies, and other means. These measures are designed to achieve the desired reduction in carbon emissions. Meanwhile, the low-carbon reference effect has a significant impact on consumer behavior and enterprise product decisions. Consequently, the equations include both the carbon quota and the consumers’ low-carbon reference effect. By examining the influence of disparate carbon quota distribution methods on the decision-making processes of supply chain members, it is possible to establish a foundation upon which manufacturers and retailers can base their emission-reduction strategies. Furthermore, this paper makes a further contribution by focusing on the fact that the reduction in carbon emissions by enterprises in the supply chain is a process that extends over a long period of time. The effect of decisions made by these enterprises in previous stages will affect the decisions made regarding the reduction in carbon emissions in subsequent stages. In addition, the carbon emissions of the final product will be affected by the decisions regarding the reduction in carbon emissions made by the different enterprises in the supply chain. Given this, it is assumed that the consumers’ low-carbon reference level exhibits dynamic change characteristics in line with the evolution of emission-reduction efforts and the influence of low-carbon publicity, which is introduced into different differential game models.
However, few studies have simultaneously considered the effects of different carbon quota allocation methods and consumer reference effects on the operational decisions of supply chain members. In light of this research gap, it is necessary to address the following questions: (1) How do the optimal paths of low-carbon reference levels for consumers differ under different carbon quota allocation scenarios? (2) What are the effects of different scenarios on manufacturers’ efforts to reduce emissions and retailers’ commitment to low-carbon practices? (3) How do different principles for carbon trading systems affect the profitability of supply chain members differently?
The rest of the paper is structured as follows:
Section 2 presents a review of the literature on supply chain management under carbon trading policy, carbon quota allocation mechanisms, and consumers’ low-carbon reference effect and other related fields.
Section 3 describes the supply chain differential game problem under different carbon quota methods and proposes hypotheses.
Section 4 compares the optimal operating decisions of manufacturers and retailers under different carbon quota allocation methods.
Section 5 is a numerical analysis.
Section 6 is the discussion, and
Section 7 concludes the paper and presents shortcomings and prospects. All demonstrations are provided in
Appendix A.
4. Model Analysis
The objective of this section is to analyze the impact of consumers’ low-carbon reference effect on companies’ multi-period dynamic emission-reduction decisions under different carbon trading policies. To this end, this section commences with the assumption of a scenario of no emissions penalty (Model N) as the baseline, based on the problem description and assumptions presented in the previous section. This subsection is devoted to an analysis of the impact of consumers’ low-carbon reference level on the equilibrium strategy, with a particular focus on the contrast with the subsequent study of different carbon trading policy scenarios. Following this, two specific carbon quota trading policies are analyzed in detail: the carbon trading policy based on the grandfathering principle (Model G) and the one based on the benchmarking principle (Model B).
4.1. Trading Policy without Carbon Quotas (Model N)
A baseline model is first developed to investigate the impact of consumers’ low-carbon reference effects on manufacturers’ emission-reduction efforts and retailers’ low-carbon publicity efforts in the absence of carbon quota policy constraints. It is unnecessary to consider the constraints of carbon quotas throughout the decision-making process. However, consumers’ low-carbon reference effect consistently influences the choices made by supply chain members during the decision-making process. Then the profit functions of the supply chain members in the infinite time domain can be expressed as follows:
In light of the solution to the optimal control problem in the study [
48], the Hamilton–Jacobian–Bellman equation, which is satisfied by the optimal control problem of each member of the supply chain at any time, can be derived using Bellman’s continuous dynamic programming theory and differential game theory:
and are the optimal profit value functions of the manufacturer and the retailer, respectively, representing their total profit at time t. denotes the first-order derivative of the manufacturer’s profit optimum function with respect to the emission-reduction reference, implying the marginal contribution of a unit change in the consumer’s emission-reduction reference to the manufacturer’s profits, and corresponds to the retailer by the same logic.
Proposition 1. Applying the backward induction method to solve the above game model, the optimal feedback strategy between the manufacturers and the retailers is as follows: The optimal path of the consumer’s low-carbon reference level is as follows:where is the steady state value of the low-carbon reference level. Proposition 2. The profit optimum functions of manufacturers and retailers in case of no emissions penalty are as follows: (The proofs of Propositions 1 and 2 are presented in
Appendix A).
Deduction 1. , , , .
Proof. , , , □
Deduction 1 suggests that for retailers, the effort they invest in low-carbon publicity is positively correlated with the coefficient of the effect of the level of low-carbon publicity on demand and the parameter of consumption memory and negatively correlated with the coefficient of the effect of low-carbon publicity of the product on the low-carbon reference and the coefficient of the effect of the low-carbon reference on demand.
(1) Retailers would be willing to increase their investment in low-carbon publicity when they perceive more demand from the same unit of publicity effort. (2) As the coefficient of consumer memory increases, the level of retailer publicity rises. This can be attributed to the fact that consumers tend to have a short-term memory for the product’s low-carbon level (the larger is). The less the past level of the product’s emission reduction affects the consumer, the more sensitive the consumer is to short-term low-carbon publicity. Such sensitivity raises consumer expectations and demand for the current low-carbon level of products, which in turn will lead retailers to enhance the level of low-carbon publicity. (3) The low-carbon reference effect exerts a suppressive influence on retailer publicity, as retailers reduce their publicity investment in order to maintain profitability and avoid loss due to the low-carbon reference effect, which results in a reduction in consumer demand. The decision-making process in question engenders a vicious circle that is detrimental to the sustainable development of low-carbon supply chains. Therefore, it is imperative that supply chain members adopt a more precise and innovative approach to communication, eschewing excessive promotion and effectively influencing demand and purchasing behaviors.
Deduction 2. , , , .
Proof. , , , . □
Deduction 2 demonstrates that when carbon trading is not considered, the product emission-reduction effort paid by manufacturers is positively correlated with the coefficient of consumer low-carbon preference and the coefficient of the effect of low-carbon reference on demand and negatively correlated with the parameters of consumer memory and the coefficient of the cost of emission reduction.
(1) As consumers are keen to purchase low-carbon products and consider the discrepancy between the actual low-carbon level and the low-carbon reference level when making purchasing decisions, manufacturers would make greater emission-reduction efforts to encourage consumers’ willingness to purchase. (2) When consumers retain a long-term memory of a product’s low-carbon level (the smaller ), manufacturers are more inclined to invest in emission-reduction efforts. This phenomenon can be attributed to the formation of consumers’ low-carbon reference levels based on previous product emission reductions, as their emphasis on long-term emission-reduction levels increases, they will consequently demand higher levels of reduction from manufacturers. In order to achieve more substantial emission reduction, the government can advocate for consumers to cultivate their long-term low-carbon awareness and pay attention to the long-term emission-reduction level of products, thereby encouraging manufacturers to increase their investment in emission reduction and to reduce the carbon emissions of their products. (3) An increase in the coefficient of emission-reduction costs could discourage manufacturers from participating in low-carbon emission reduction.
4.2. Trading Policy Based on the Grandfathering Principle (Model G)
This subsection develops a model to investigate the decision-making process of manufacturers and retailers when considering the low-carbon reference effect under the carbon trading policy of the grandfathering principle. In this decision-making process, the government grants a company a free and freely tradable carbon quota
for the current period after reviewing the company’s historical carbon emissions statistics. In this instance, companies consider the gains or losses resulting from the quota constraints while accounting for the impact of consumers’ low-carbon reference effect. If the quota in question is insufficient to support production and operational activities, it can be purchased in the carbon market at the price
of a unit of carbon quota from a company with a surplus of carbon quotas, which increases costs. Alternatively, the surplus carbon quotas would be sold at the same price to generate carbon revenue, with the price
of carbon trading determined by the government. The profit functions of the manufacturer and the retailer are expressed as follows:
The Hamilton–Jacobian–Bellman equations satisfied by the optimal control problem are as follows:
Proposition 3. Under the trading policy based on the grandfathering principle, the optimal feedback strategy for manufacturers and retailers is as follows: is the steady-state value of the low-carbon reference level.
Proposition 4. The profit optimum functions for manufacturers and retailers at time under the trading policy based on the grandfathering principle are as follows: The coefficients are as follows:where .
(The proofs of Propositions 3 and 4 are presented in
Appendix A).
4.3. Trading Policy Based on the Benchmarking Principle (Model B)
A carbon trading policy based on the benchmarking principle entails the government’s collection of carbon emission statistics for products within the same industry, after which the carbon quota g for that specific type of product is determined. In contrast to the trading policy based on a company’s historical carbon emissions statistics, this trading policy adheres to the principle of the “individual” product, whereas the trading policy in the previous section is based on the principle of the “whole” company. Similarly, in this subsection, the consumers’ low-carbon reference effect and the level of low-carbon publicity jointly affect the demand for the product, at which point the profit functions of the manufacturers and the retailers are expressed as follows:
According to the optimal control theory, the HJB equations are as follows:
Proposition 5. The optimal feedback strategy for manufacturers and retailers under the trading policy based on the benchmarking principle is as follows:where is the steady-state value of the low-carbon reference level.
Proposition 6. The profit optimum functions for manufacturers and retailers at time
under the trading policy based on the benchmarking principle are as follows: The coefficients are as follows:where .
(The procedures for proving Propositions 5 and 6 are similar to those for Propositions 4 and 5 and will not be reiterated here).
4.4. Comparative Analysis
Deduction 3. .
The extent of low-carbon publicity afforded to products by retailers is identical under both the grandfathering-based carbon trading policy and the benchmarking-based carbon trading policy, as the implementation of the trading policy does not have a direct impact on retailers. Carbon trading policies provide market signals indicating a preference for low-carbon products. Furthermore, the level of low-carbon publicity by retailers, as a downstream part of the supply chain, can also influence consumer purchasing decisions. In comparison to a scenario with no emissions penalty, manufacturers act as the dominant players in the market, enhancing their emission-reduction levels within the constraints of the carbon trading policy. Retailers, in contrast, act as followers, observing the decision-making behaviors of manufacturers and subsequently modifying their promotional strategies in order to maximize profits.
Deduction 4. .
Deduction 4 is analogous to the study [
26], which posits that manufacturers will invest greater resources to enhance product emission reduction under carbon trading policies than they would under policies that have no emissions penalty. This may be attributed to the fact that the carbon trading policy establishes a ceiling on the quantity of carbon emissions that a company is permitted to emit, compelling manufacturers to implement measures to reduce carbon emissions to comply with the policy and avoid exceeding the carbon emission limits. The degree of carbon emission reduction achieved by manufacturers in accordance with the benchmarking principle is more pronounced than that observed under the grandfathering principle. When a manufacturer is confronted with elevated product carbon emissions, it may refrain from pursuing emission-reduction measures if the supplementary benefits that could be attained through carbon reduction strategies are not commensurate with the costs associated with such reductions. This is particularly true in instances where there is a substantial scope for emission reduction. In such circumstances, manufacturers may choose to reduce the production of their products as a means of meeting the total carbon emission limits e set by the government. In contrast, the benchmarking principle establishes explicit individual carbon emission limits for products, necessitating that manufacturers achieve specified emission-reduction targets for their respective products, thus prompting them to implement more aggressive emission-reduction measures.
Deduction 5. .
In the absence of an emissions penalty, the initial low-carbon reference level is typically low, and the low-carbon reference level formed within the consumer is also low. Consequently, the actual low-carbon level of the product is easily able to satisfy the consumer. The advent of carbon trading policy has the potential to influence the differentiation of products by manufacturers, who may enhance the low-carbon attributes of their products to align with market demand. Conversely, retailers may also adopt promotional activities to publicize the characteristics of low-carbon products. This differentiation strategy may increase consumers’ sensitivity to low-carbon attributes, which in turn may increase their low-carbon reference effect. Meanwhile, the emission-reduction endeavors of manufacturers are influenced by the consumers’ low-carbon reference effect. Additionally, Deduction 4 indicates that the product emission-reduction level under the benchmarking principle is superior to that under the grandfathering principle. It follows that the low-carbon reference level under the benchmarking principle is greater than that under the grandfathering principle.
(The procedures for proving Propositions 5 and 6 are similar to those for Propositions 4 and 5 and will not be reiterated here).
The complexity of some analytical solution expressions makes direct discussion challenging. This paper therefore draws on existing literature [
18,
29] and conducts a sensitivity analysis of equilibrium strategies and profits for the manufacturer and retailer under different scenarios, which is achieved through algebraic assignments and arithmetic examples in
Section 5 arithmetic analysis.
6. Discussion
This paper investigates the long-term impacts of different carbon quota allocation methods and consumers’ low-carbon reference effects on carbon emission reduction in supply chains. The differential game models are constructed under three scenarios, with the incorporation of the consumers’ low-carbon reference effect. First, a two-tier supply chain, in which one manufacturer plays the dominant role and one retailer assumes the follower position, more accurately reflects the actual situation. Secondly, a more comprehensive theoretical model of reality leads to some illuminating conclusions for managers.
First, the implementation of carbon quota allocation is conducive to enhancing the reduction in carbon emissions from manufacturers’ products. In order to meet the demand for green and low-carbon consumption, achieve a higher level of dynamic equilibrium between supply and demand, and enhance the overall effectiveness of the supply chain, manufacturers must reduce the carbon emissions of their products through the input of emission-reduction technologies. Meanwhile, retailers may also be encouraged to invest more in publicity.
Secondly, within a defined range, the extent of carbon emission reduction by manufacturers is positively correlated with the price of carbon trading, and an increase in the price of carbon trading can facilitate the efforts of retailers in publicizing their products. Consumers’ low-carbon reference should raise the demand for product emission reduction and low-carbon promotion, and manufacturers and retailers need to proactively cater to consumers’ demand and improve product emission reduction in order to avoid the negative impact of the low-carbon reference effect.
Finally, the introduction of a carbon trading policy can also improve the profits of manufacturers and supply chains and further strengthen the economic resilience of supply chains in the face of risks, thus enhancing the resilience of supply chains. This is evidenced by the intensification of benefits among members of the supply chain. One such initiative is the generation of revenue through the sale of surplus carbon quotas in the carbon trading market. For instance, based on data from 2021, the revenue that BYD could potentially generate through the sale of carbon quotas is valued at over CNY 8 billion, which places it at the forefront among Chinese car manufacturers in this regard. According to the most recent fourth-quarter and annual reports for 2023, Tesla’s total annual revenue from the sale of carbon quotas increased from $1.78 billion to $1.79 billion. For another, the provision of carbon footprint information on products encourages the promotion of low-carbon products to attract consumers.
The following recommendations for managerial action are derived from the findings of the aforementioned study: First, it is recommended that governments and regulatory authorities continue to promote and enhance carbon trading systems, with a particular focus on carbon trading policies that are aligned with the benchmarking principle. The government should invest in the establishment of a comprehensive and accurate industry carbon emissions database, which aims to collect and analyze carbon emissions data from the procurement of raw materials, through production, to the sale of products. Furthermore, the establishment of more scientific individual carbon limits based on industry averages and the carbon emission performance of leading companies will provide data support for the formulation and adjustment of policies, thus promoting long-term action on carbon emission reduction by manufacturers. Secondly, the carbon price represents a pivotal policy factor that motivates companies to curtail their emissions. When establishing the carbon price, it is essential that the government or the regulatory authority responsible for setting the carbon trading benchmark price considers the country’s economic situation and the industry’s affordability. This ensures that the carbon trading price can effectively promote the emission reduction target without imposing an excessive burden on economic development. A progressive adjustment strategy can be implemented to afford companies and the market sufficient time to adapt to the new carbon pricing policy. In the initial stages of implementing a carbon trading policy, the carbon trading price can be set at a relatively low level, allowing market participants to establish the actual price through trading. Subsequently, the efficacy of the carbon pricing policy is evaluated on a regular basis, and the price setting is adjusted in accordance with environmental changes and policy objectives.
7. Conclusions
Presently, China’s national carbon trading market is still in its infancy. The prevailing approach is the free allocation of carbon emission rights. However, the long-term impact of grandfathering and benchmarking principles on carbon emission reduction in the supply chain remains to be studied. In this context, the impacts of no emissions penalty trading, the grandfathering principle, and the benchmarking principle on manufacturers’ emission-reduction efforts, retailers’ low-carbon promotion, and their respective profits are compared. The optimal carbon emission reduction decisions and optimal profits of supply chain members in different models are further solved, and the equilibrium solutions under different decision-making modes are compared and analyzed. This analysis leads to the following main conclusions:
In comparison to the absence of carbon trading, the implementation of the policy has been observed to enhance both consumers’ low-carbon reference effect and manufacturers’ long-term emission-reduction level. In particular, the impact of manufacturers’ carbon emission reduction levels is more pronounced under the carbon trading policy based on the benchmarking principle.
In comparison to the no emissions penalty trading, the implementation of the policy has been observed to enhance both consumers’ low-carbon reference effect and manufacturers’ long-term emission-reduction level. In particular, the impact of manufacturers’ carbon emission reduction levels is more pronounced under the carbon trading policy based on the benchmarking principle.
The implementation of a carbon trading policy has been demonstrated to be an effective means of enhancing the level of low-carbon publicity among retailers. This level of publicity is found to be consistent across retailers, regardless of their respective benchmarking and grandfathering principles.
The introduction of a low-carbon reference effect without consideration of emissions penalty may encourage carbon reduction by manufacturers. However, the low-carbon reference level has a dampening effect on the profits of manufacturers and retailers. The incorporation of carbon trading policies into the low-carbon reference effect may prove to be a beneficial factor in driving profit growth.
Carbon quota allocation based on the grandfathering principle positively affects manufacturers’ profitability, while unit carbon quota allocation based on the benchmarking principle facilitates the individual effort level and profitability of each member of the supply chain.
Although the difference in the initial low-carbon reference level affects the trend of the low-carbon reference level over time, it would ultimately converge to the same stable value for the same carbon quota approach.
While this study offers valuable insights for low-carbon supply chain companies in their emission-reduction decision-making processes, there are still some limitations. First, the modeling does not consider the real-time pricing strategy of the companies’ products nor does it take into account the impact of product prices on market demand. The incorporation of these factors into the model and subsequent analysis represents a promising avenue for future research. Furthermore, this paper assumes that the overall carbon quota amount under the grandfathering principle and the individual carbon emission limit under the benchmarking principle remain constant over time. In addition, future research directions include characterizing the change process of the aforementioned parameters over time in the model. Finally, this paper primarily examines the influence of carbon trading policies on supply chain members. Carbon taxes and subsidies are effective emission-reduction policy tools. Further research should comprehensively assess the impact of various carbon emission reduction policies on supply chain members.