1. Introduction
In March 2021, China, the world’s largest developing country, pledged to achieve carbon peaking by 2030 and to be carbon neutral by 2060. With 17% of China’s greenhouse gases coming from agriculture, compared to 7% in the U.S. and 11% globally, China’s agriculture has the potential to reduce carbon emissions [
1]. At the same time, the disposable income per capita of rural residents in China was only one-fourth of the disposable income per capita of urban residents [
2]. The New Economics of Labor Migration (NELM) argues that farmers will decide their labor’s destination according to the utility maximization principle [
3]. When the income gap between urban and rural areas widens, the phenomenon of farmers moving to non-agricultural areas and non-agricultural sectors occurs, which is defined by academics as rural labor force transfer [
4,
5]. At the time of reform and opening up in 1978, the urbanization rate of China’s resident population was 17.9%, and by 2020, the urbanization rate had grown to 63.9%, while the proportion of people employed in the primary sector had declined from 50.0% to 23.6% [
2]. The trend of China’s rural labor force transferring to non-agricultural areas and non-agricultural production sectors is evident [
6,
7].
The dual economic structure theory proposed by Lewis divides developing countries into a lower-productivity agricultural sector and a higher-productivity industrial sector, which gradually moves closer to the industrial sector as rural labor is transferred [
8]. In the early stage of rural labor force transfer, low rural productivity, scarcity and structural imbalance of labor force may occur in the phenomenon of idle farmland, which leads to a decline in agricultural production and the price of agricultural products as well as a decline in gross agricultural product, also inhibiting the increase in carbon emissions [
9,
10,
11]. In the later stage of labor transfer, with the improvement of farmers’ income and production efficiency, the scale of operation may be realized through “farmland consolidation”, which will reduce the cost of agricultural production and increase gross agricultural product [
12,
13]. Scale operations supported by green agricultural production technologies can improve the efficiency of agricultural carbon emissions. For example, straw return technology increases soil fertility and avoids the increase in carbon emissions caused by straw burning, and no-till planting technology reduces the energy consumption associated with tilling farmland [
14,
15]. However, the traditional rough-scale model may further increase agricultural carbon emissions [
16].
According to the theory of induced innovation, after the relative price of a factor increases, technological progress can enable abundant factors to substitute for scarce factors, offsetting the constraints on economic growth imposed by scarce factors [
17]. The rural–urban income gap increases opportunity costs for farmers to engage in agricultural production. The potential price of agricultural labor rises, so producers choose labor substitutes to maintain output levels [
18]. Labor substitutes include means of production such as pesticides, fertilizers, and machinery. Pesticides and fertilizers are indirect substitutes for labor, which increase output by consuming resources at the same rate as labor but do not contribute to reducing carbon emissions in agriculture [
19]. Machinery is a direct substitute for labor, including tillage machinery, fertilizer application machinery, irrigation machinery, etc. [
20]. Endogenous growth theory suggests that agricultural machinery is more advanced in productivity than traditional labor, reducing the misuse of fertilizers and pesticides by increasing resource use efficiency, thus reducing agricultural carbon emissions [
21,
22]. The “rebound effect” of energy economics, on the other hand, suggests that agricultural machinery improves energy efficiency but at the same time increases energy demand, resulting in energy consumption savings that fail to offset the increase in energy consumption, causing an increase in agricultural carbon emissions [
23]. With the mechanization rate of agricultural cultivation in China rising from 29.1% in 2000 to 71.2% in 2020, the role of machinery in agricultural production and carbon emissions is becoming increasingly critical [
2].
As shown in
Figure 1, we find that the transfer of rural labor and the substitution of machinery after the transfer affect the gross agricultural product and carbon emissions. Referring to the methodology of Kaya et al., we define the ratio of gross agricultural output to agricultural carbon emissions as the efficiency of agricultural carbon emissions [
24,
25,
26]. Referring to the method of Huang and Zheng and Gao, we defined the rural labor transfer ratio as (employment in rural areas—employment in agriculture)/employment in rural areas [
27,
28]. Meanwhile, the ratio of agricultural machinery power to cultivated area defines agricultural machinery intensity. Based on the above analysis, we propose Hypothesis 1:
Hypothesis H1a.
Rural labor transfer will impact agricultural carbon emission efficiency.
Hypothesis H1b.
Agricultural machinery intensity will impact agricultural carbon emission efficiency.
We extend the Kaya identity and derive the following equations:
In Equation (1), C represents the agricultural carbon emissions, M denotes the agricultural machinery quantity, A indicates the area of arable land, and GAP and P signify gross agricultural production and the rural labor force quantity, respectively. ACEE represents agricultural carbon emission efficiency, shown in the reciprocal form in Equation (1), and AMI indicates the machinery intensity. TL denotes the technical level of agricultural production, i.e., the GAP contribution per agricultural machinery unit, and NS represents the level of natural resources, i.e., the amount of arable land per capita. By applying a transformation to Equation (1), the following equation is obtained:
In Equation (2), ∆ represents the rate of change, so ∆P reflects rural labor transfer (RLT). The level of agricultural technology (TL) and natural resources (NS) are exogenous factors in this paper. When the exogenous variables are controlled, ∆C is affected by ∆ACEE, ∆AMI and ∆P (RLT). After moving ∆C to the right side of Equation (2), any of ∆ACEE, ∆AMI and ∆P (RLT) moved to the left side of Equation (2) will be affected by the other two on the right. Based on the above analysis, we propose Hypothesis 2:
Hypothesis H2.
There are interactive influence mechanisms among agricultural carbon emission efficiency, rural labor transfer, and agricultural machinery intensity.
We construct a Simultaneous Equations Model of agricultural carbon emission efficiency, rural labor transfer, and agricultural machinery intensity to verify the two hypotheses. We use the 3SLS regression method to eliminate the endogeneity and analyze the three interaction mechanisms. Meanwhile, we divide China into four regions for heterogeneity analysis. The main contribution of this study lies in the following two aspects. First, from a theoretical research perspective, this paper constructs a three-way interactive influence framework of rural labor transfer, agricultural machinery intensity, and agricultural carbon emission efficiency instead of a single or unidirectional influence framework, which explains the influence mechanism of the three more scientifically. Secondly, from the perspective of practical application, this paper extends the study of rural labor transfer, agricultural machinery intensity, and agricultural carbon emission efficiency to the macro-provincial level, analyzes the heterogeneous differences in different regions, and helps to provide planning ideas for population migration, machinery input, and agricultural carbon reduction from a macro perspective.
4. Conclusions and Prospects
In this paper, we use the provincial panel data of China from 2000 to 2021 to construct a Simultaneous Equation Model of agricultural carbon emission efficiency, rural labor transfer, and agricultural machinery intensity and use the 3SLS method for regression analysis to draw the following conclusions.
Firstly, the results of model 1 in
Table 6 are consistent with Hypothesis 1. Rural labor transfer and agricultural machinery intensity will impact agricultural carbon emission efficiency, and the effect will be significantly positive at the national level. This is because the overall modernization level of Chinese agriculture is still low, and the growth of marginal output value from machinery substitution due to rural labor transfer is higher than the growth of marginal carbon emissions.
Secondly, the results of model 1 to model 3 in
Table 6 are consistent with Hypothesis 2. There are interactive influence mechanisms among agricultural carbon emission efficiency, rural labor transfer, and agricultural machinery intensity. The three causal relationships and transmission mechanisms are not unidirectional but interactive and complex. The interaction of the two variables may be in different directions. For example, the increase in the intensity of agricultural machinery promotes the efficiency of agricultural carbon emissions. However, the increase in the efficiency of agricultural carbon emissions inhibits the increase in the intensity of agricultural machinery, which suggests that the marginal contribution of machinery to the efficiency of carbon emissions from agricultural production is decreasing and that mechanization and large-scale production cannot be relied upon to improve the efficiency of agricultural carbon emissions.
Finally,
Table 7,
Table 8,
Table 9 and
Table 10 results show significant regional heterogeneity in China. Especially in the Central region, rural labor transfer and agricultural machinery intensity reduce the efficiency of agricultural carbon emissions, and the increase in agricultural machinery will alleviate rural labor transfer. It is the exact opposite of the other three regions. In the East, due to a better economic base and deeper integration of agriculture with secondary and tertiary industries, when rural labor force shifts occur, farmers prefer to move to secondary and tertiary industries rather than increase the intensity of machinery to maintain output. In the Northeastern region, because the rate of agricultural machinery is already high, the marginal contribution of machinery to carbon efficiency is meager, and increasing machinery intensity does not improve carbon efficiency, nor does an increase in carbon efficiency affect machinery intensity.
Based on the above conclusions, this paper puts forward the following policy recommendations.
First, from the perspective of rural labor force transfer, labor force transfer will increase mechanical strength, and increased mechanical strength will further promote labor force transfer. Moreover, the current trend of rural labor force transfer is difficult to reverse. The government should promote the transfer of rural land from farmers to agribusiness to achieve large-scale operation. Land transfer can effectively use the idle or abandoned farmland after the large-scale transfer of rural labor, and more professional and enthusiastic operators can operate the transferred land on a large scale, providing a good situation for other factors of production to replace the labor force and improving the efficiency of agricultural production.
Secondly, given the complex interaction mechanism of agricultural carbon emission efficiency, agricultural village labor transfer, and agricultural machinery intensity, the government should do more than just increase the intensity of machinery to improve the efficiency of agricultural carbon emissions when dealing with the rural labor shortage. The government should strengthen research on agricultural machinery technology and the renewal of clean agricultural machinery to cope with the gap in the amount of rural labor and the increase in cost. At the same time, it should increase subsidies for farmers to purchase cleaner production tools and materials and provide training to farmers to promote green agriculture development in China.
Finally, due to the significant heterogeneity of China’s regions, local governments should tailor their policies to the local conditions based on their economic base, technological level and farmers’ perceptions. For example, in the economically developed Eastern region, the government should encourage the integration of agriculture with production and service industries and encourage farmers to move to non-agricultural industries instead of non-agricultural regions. In the less developed Central areas, the government should correctly handle the relationship between rural labor transfer and agricultural mechanization, give full play to the comparative advantages of labor and machinery, and improve the total efficiency of agricultural production. In the Northeastern region, which has the best industrial base, the government should speed up the updating of green technology of agricultural machinery and give full play to its industrial advantages.
A summary of the theoretical contributions as well as the practical implications of this paper can therefore be presented:
Firstly, this paper incorporates the substitution of agricultural machinery into a system for analyzing the effect of rural labor transfer on the efficiency of agricultural carbon emissions. Moreover, through theoretical analysis and extension of Kaya identity, it is argued that labor transfer, machinery substitution and carbon emission efficiency are not unidirectional conduction mechanisms but multidirectional and complex interaction influence mechanisms. The theoretical framework proposed in this paper is proved correct by constructing the linkage model and using the 3SLS regression method to test Hypotheses 1 and 2. This paper extends the understanding of the relationship between rural labor transfer, agricultural machinery intensity and agricultural carbon emission efficiency. It enriches the theory of the influence mechanism of the three.
Secondly, this paper puts forward relevant policy recommendations based on the interaction mechanism of rural labor transfer, agricultural machinery intensity and agricultural carbon emission efficiency. It provides a new perspective for the government to deal with rural labor transfer, machinery input, and agricultural carbon reduction. At the same time, this paper analyzes the heterogeneity of China into four regions and finds the differences in the interaction mechanisms of the four regions, which provides a reference for local governments to implement policies.
However, this paper uses provincial data, which is a weaker explanation of problems in cities and counties. Additionally, this paper controls the level of technology and natural resources as exogenous variables and ignores their effects. Therefore, it is still an object of future research.