1.1. Introduction of Factors Influencing Carbon Emissions Trading and Carbon Pricing
Our lives and economy have improved immensely with industrialization. However, such developments are at the cost of using vast amounts of fuel energy, increasing carbon dioxide emissions, and endangering the ecosystem and environment. The sustainable development of global economy and society are threatened [
1,
2]. Carbon emission’s trading is a market mechanism aimed at reducing emissions of greenhouse gas. Adoption of United Nations Framework Convention on Climate Change (UNFCCC) in 1992 and establishment of the Kyoto Protocol promoted implementations of carbon emissions trading system in many countries. Since putting the system into operation in 2005, the European Union now have the largest and most developed carbon trading system in the world, accounting for 90% of global transactions [
3]. Emissions Trading System (ETS) or carbon emission reduction program have subsequently been set up in New Zealand, Tokyo, Australia, Canada, and Switzerland. The carbon emissions trading system improves the global energy-environment-economic issues. The relationship between economic growth, carbon trade markets, and environment demonstrates as shown in
Figure 1. This paper adopts AQI value to describe the environmental problems. The smaller the index is, the better air quality is. Different scholars hold different views on relationship between carbon trade price and AQI [
4,
5]. Accompanied by the development of economy, the emission of carbon dioxide will increase. As limitation of carbon quota will increase the demand of carbon trade, the carbon trade price will increase as the result. In this way, the emission of carbon dioxide can be controlled, which will improve the air quality. Therefore, we suppose there is negative relationship between carbon trade price and AQI.
As a member of the Tokyo Protocol, a major consumer of energy and a large carbon emissions country, China has actively taken measures to improve the efficiency of energy utilization and promote clean energy consumption, including passing the Renewable Energy Law and Energy Specific Regulations. In the fifth Plenary Session of the Eighteenth Communist Party of China (CPC) Central Committee, the idea of “green development” was put forward as one of the five important concepts related to the overall development of the country. The session also promoted low-carbon development. The nineteenth CPC National Congress stressed the importance of a rapid ecological and environmental reform, building a new economic system of green, low-carbon and cycle development. On 9 December 2017, the National Development and Reform Commission formally issued the “National Carbon Emissions Trading Market Construction Program (power generation industry)”. This marked the official beginning of China’s carbon emissions trading system. The National Development and Reform Commission previously conducted emissions trading pilot programs in Beijing, Shanghai, Tianjin, Chongqing, Hubei, Guangdong, and Shenzhen, covering key emission industries ranging from petrochemical, chemical, building materials, iron and steel, nonferrous metals to paper, electricity, and aviation. From June 2013 to June 2014, exchanges in all seven cities and regions started to open. Carbon emissions trading were conducted through combinations of carbon quotas and China Certified Emission Reductions (CCER). As of November 2017, the seven exchanges have accumulated more than two billion tons of carbon dioxide equivalents, with a turnover of more than 4.6 billion Yuan, which will make contribution to descending the quantity of the global greenhouse gases.
To ensure the smooth start and docking of local carbon markets, an efficient price regulation mechanism is key. The correct carbon price can not only improve the efficiency of resource allocations but also effectively reflect the cost of emission reduction. Current research on carbon price mainly focus on analyzing factors influencing carbon price, the correlation between carbon price and other energy prices, and the risk of carbon price fluctuations. Zhong et al. [
6] studied the effects of carbon prices on China’s energy prices and price fluctuations and found that fluctuations in carbon price can cause China’s energy prices to change but had little effect on overall prices (on commodity prices). Some scholars also studied the linkage effect of different carbon markets, using Dynamic Conditional Correlation Generalized Auto Regressive Conditional Heteroskedasticity (DCC-GARCH) model to conduct empirical research on the dynamic correlation between domestic and foreign carbon quotas prices [
7]. Research on the relationship between carbon emission prices and the stock market are mainly conducted using Autoregressive moving average model (ARMA), Auto Regressive Conditional Heteroskedasticity (ARCH), Generalized Auto Regressive Conditional Heteroskedasticity (GARCH), Generalized Error Distribution-Generalized Auto Regressive Conditional Heteroskedasticity (GED-GARCH), and vector auto regressive model (VAR). Koch et al. [
8] examined the rule of corporations in carbon emission levels. Qin and Tao [
9,
10] found a positive relationship between corporate stock returns and carbon trading futures. Regional carbon emissions market can be influenced by politics, trading system, heterogeneous environment, policies, as well as regional factors and Chinese characteristics [
11]. As a relatively new market in China, data is not abundant making it difficult to classic econometric models to study carbon prices. A new approach is required to examine the factors influencing carbon prices in China.
1.2. Introduction of Grey Relational Degree
Grey relational analysis is an important branch of grey system theory. It is the cornerstone of grey system analysis, modeling, prediction, and decision-making. The analysis is built upon determining the correlation between time series lines or curves of each factor in the system. The closer the line or curve is, the greater the correlation between the factors, and vice versa [
12].
Grey relational analysis (GRA) was created by Professor Deng Julong. Many scholars have then followed this train of thought and put forward various grey relational analysis models, including absolute relational model [
13], T type relational model [
14], B type and C type relational degree [
15,
16], and slope relational degree [
17]. In recent years, many scholars have proposed new models based on this idea or improving previous models. Zhang et al. [
18], based on Deng’s model, proposed a GRA-AR relational model, which considers both absolute and relative differences. Xie et al. [
19] proposed a grey geometric relational model. Liu et al. [
20,
21,
22,
23] based on the integral area of folded lines built a grey absolute relational model and a similarity-perspective grey relational. Shi constructed the grey periodic relational degree and the grey amplitude relational from different perspectives. Zhang et al. [
24] used the principle of vector projection, proposed a new grey projection relational model. To investigate the similarity and correlation of dynamic changes between time series, Li et al. [
25] proposed a grey rate of change relational degree.
In recent years, the Grey relational theory has matured. It has been widely applied in economics, social science, industry, agriculture, mining, transportation, education, medicine, ecology, water conservancy, geology, and aviation. Luo et al. [
26] applied the Grey relational degree theory to investment decision-making and proved that Grey system theory is effective in uncertain information systems. Zheng et al. [
27] used B type absolute relational degree to identify liver cancer cells. In view of the complexity of performance assessment and the limitations of existing performance evaluation methods, Zhang et al. [
28] established an employee performance evaluation model based on Grey Relational Analysis. Introducing an improved Grey relational analysis method into the risk assessment of supply chains, Chen et al. [
29] established an evaluation model. Zhu [
30] combined grey relational analysis method and information entropy theory, proposed a grey entropy relation to fitness assignment strategy. It has been used in relation with differential algorithm and genetic algorithm to solve target flow shop scheduling problems.
Nelabhotla et al. [
31] applied Taguchi-based grey relational analysis (TGRA) for the optimization of chemical mechanical planarization (CMP) process-parameters of c-plane gallium-nitride (GaN), in potassium-permanganate/alumina (KMnO
4/Al
2O
3) slurry. Wang [
32] applied Grey relational analysis to the optimization of mining costs. Jiang et al. [
33] constructed a grey relational model of four real estates and their relation with other estates and industries. Kumar et al. [
34] used grey relational grade method to compare two different rapid prototyping systems based on dimensional performance. There are many scholars improve the Grey relational analysis and prediction models in many fields [
35,
36,
37,
38,
39,
40,
41].
1.3. Research Motivation and Content
There are still shortcomings with traditional grey relational models, such as a grey relational model based on area. When a time series changes its position, the overall shape does not change but correlation results have changed. It no longer has the characteristics of an affinity. This grey relational model is based on the area between lines which can only reflect the similarity between series. The lines themselves is a poor representation of series characteristics and difficult to show specific periodic fluctuations. Most of the existing relational models are only suitable for isochronous equidistance sequences, which greatly limits their application. To overcome these shortcomings, this paper proposes a relational model based on center coordinates of an inscribed circle of a triangle. The unique coordinates hold the characteristics of a change in the time series. The degree of correlation between variables can be observed from the range of change and the direction of change.
In addition, examining factors influencing the price of carbon emissions trading provides support for the establishment and improvement of China’s unified carbon trading system. China’s carbon trading emissions market only just opened, acquiring carbon emissions trading data acquisition is not easy. The process has the typical characteristics of “small sample and little information”. This paper first provides a comprehensive literature review of grey relational model and the relationship between China’s carbon emissions futures market prices and their influencing factors. This is followed by an introduction of basic concepts concerning inscribed circle of a triangle. A model using center coordinates of the inscribed circle of a triangle is constructed to overcome shortcomings of traditional grey relational model. Properties of the new model will be discussed. Next, the model is applied to explore the correlation between price and its influencing factors of China’s carbon emissions trading market, verifying the effectiveness, feasibility and superiority of the model. The final section is concluding remarks and prospects.