Study on the Influence of Population Urbanization on Agricultural Eco-Efficiency and on Agricultural Eco-Efficiency Remeasuring in China
Abstract
:1. Introduction
2. Literature Overview
3. Materials and Methods
3.1. Agro-Ecological Efficiency Measurement
3.2. Association Hypothesis Testing Based on The PVAR Model
3.3. Panel Tobit Model Construction
- (1)
- Direct impact: Per capita agricultural value added (PADA) to a certain extent reflects the state of agricultural economic development and is the basis of agro-ecological development, and may have different impacts on agro-ecological efficiency at different stages. Rural human capital (AHM) is the basic condition for agro-ecological development. Generally speaking, the higher the quality of the rural labour force, the more favourable it is to agro-ecological development, characterised here by the average number of years of education of the rural household labour force. Agricultural water infrastructure (EIR) is measured by the proportion of effectively irrigated area to total sown area. The agricultural disaster rate (ADR) reflects the impact of natural environmental factors and is measured as the ratio of agricultural disaster area to total sown crop area.
- (2)
- Indirect impact: According to Lewis’ dualistic economic theory, the level of regional industrialization and the conditions of population mobility will all affect the transfer of agricultural population and thus the development of agriculture. Among them, as the share of the tertiary sector in GDP will continue to increase as the level of industrialization increases, this paper expresses the level of industrialization (IND) as the share of the value added of the tertiary sector in GDP. The ratio of the sum of railway mileage, inland waterway mileage and road mileage to national land area is used to reflect the conditions of population mobility (transport infrastructure, TRAF).
3.4. Data Sources
4. Results
4.1. Agro-Ecological Efficiency Evaluation
- (1)
- A subregional discussion of the evolution of agro-ecological efficiency according to the regional divisions of the Statistical Bulletin of the National Economic and Social Development of the People’s Republic of China 2020 (Figure 1).
- I.
- The change in national agricultural eco-efficiency from 2001 to 2020 is relatively stable, with the overall mean value remaining around 1.00. The change in AEE in the western region (Inner Mongolia, Guangxi, Chongqing, Sichuan, Guizhou, Yunnan, Tibet, Shaanxi, Gansu, Qinghai, Ningxia and Xinjiang) remains relatively consistent with the national agricultural change.
- II.
- Agricultural eco-efficiency values in central China (Henan, Hubei, Hunan, Anhui, Jiangxi and Shanxi) show large fluctuations over time, with a W-shaped trend, and the region as a whole is in an inefficient state.
- III.
- The average regional agro-ecological efficiency values for the eastern regions of China (Beijing, Tianjin, Hebei, Shanghai, Jiangsu, Zhejiang, Fujian, Shandong, Guangdong and Hainan) and the northeastern regions (Liaoning, Jilin and Heilongjiang) are all in the medium efficiency range. However, the AEE in the eastern region stabilized at around 1.05 after a decrease in efficiency between 2010 and 2011, with an overall decrease. The AEE in the Northeast region, on the other hand, showed an overall upward trend.
- IV.
- Eastern China is the most urbanized region in China in terms of population, and therefore urbanization is an important factor among those affecting agro-ecological efficiency. The northeastern region is a significant region for food production in China, and agro-ecological efficiency may also be influenced by various direct aspects under the perspective of agricultural production. This section provides ideas and rational explanations for the selection of influencing factors for the construction of the panel Tobit model in the paper.
- (2)
- A discussion of the classification of agro-ecological efficiency in China’s provinces in terms of spatial and temporal evolution patterns (Figure 2).
- I.
- Between 2001 and 2020, Gansu, Yunnan and Shanxi were in the low-efficiency region for a long time, while the eco-efficiency values of Hunan, Hubei, Jiangxi, Hebei and Guangxi were also in the low-efficiency state most of the time. The agro-ecological efficiency of the three traditionally large agricultural provinces, including Hebei, Hubei and Hunan, were all in a state of low-efficiency after 2012.
- II.
- Most of the eastern regions are in a moderately efficient state, with no provinces or cities in the eastern coastal region being in an inefficient region. However, the eastern coastal region includes provinces and cities such as Guangdong, Shanghai, Jiangsu, Zhejiang, Shandong and Tianjin, which represent the most rapid and highest level of population urbanization in China. Thus, once again, the need for research on the impact of population urbanization on agro-ecological efficiency has been side-lined.
- III.
- Jiangsu and Heilongjiang were all in a state of high efficiency after 2012, while Shaanxi, Hainan and Tibet decreased from high to medium efficiency. It is also evident from Figure 2 that the number of inefficient areas in China’s agro-ecological efficiency has gradually increased over time, and has shown a concentration in the central region. Therefore, if China is to achieve high-quality agricultural development, it needs to pay extra attention to the central region and the long-term inefficient regions.
- (3)
- Analysed in relation to regional characteristics.
- I.
- Heilongjiang Province has always been highly efficient in terms of agro-ecological efficiency. Heilongjiang is known as the “granary” of China and was the first region in China to start large-scale agricultural production. With large-scale agricultural production and relatively flat land, grain output is the mainstay, and labour inputs and livestock inputs are small. The Heilongjiang province has mature agricultural production on a large scale after more than 50 years of mechanized land clearing. Thus, the provinces can consider agricultural production models with the high input of agricultural machinery according to their internal terrain. Similar areas include Jilin, Liaoning and Xinjiang.
- II.
- Guizhou is predominantly mountainous, with difficult large-scale grain production and high levels of draft animal inputs, but the mean value of agro-ecological efficiency is 1.07. This is mainly due to the large scale of cash crop production in Guizhou, the relatively high proportion of economic output and the low level of machinery inputs. Similar regions include Tibet, Yunnan and Guangxi. However, the mean agro-ecological efficiency of Yunnan is 0.5197. The reason for this is that Yunnan has large inputs of chemical fertilizers, pesticides, agricultural films and draft animals, and serious surface pollution. Therefore, what Yunnan needs to face now is how to use agricultural chemicals efficiently and consider mechanization power substitution. Properly restructuring crop cultivation to improve economic output is also an important way to improve agro-ecological efficiency in Yunnan at present.
- III.
- The south-eastern coastal region, such as Jiangsu, has a high level of agricultural machinery inputs and a low level of agricultural chemical inputs. In addition to the fact that the southeast coastal region is rich in water resources and the land is mostly plain, it has a relatively reasonable cropping structure. Inefficient regions such as Hubei and Hunan have similar labour, machinery, and irrigation inputs as the eastern coastal regions, but have high agricultural chemical inputs and lower economic output per unit and food output than provinces and cities of the same size. It can be assumed that these regions possess low input utilization rates. China is still in a region of low agro-ecological efficiency and needs to strengthen the use of agricultural chemicals as inputs.
4.2. The Results of PVAR Model
4.2.1. Panel Unit Root Test and Lag Order Determination
4.2.2. Analysis of PVAR Model Results
4.3. Analysis of Panel Tobit Model Results
5. Discussion
- (1)
- Agro-ecological efficiency values are relatively high in eastern and northeastern China, with an overall medium efficiency status, but with a slight downward trend in AEE in the eastern region. The evolution of AEE values in the western region and the country as a whole follows a similar trend, showing a downward trend over time and dropping from moderate to low efficiency. The overall AEE in the central region is in an inefficient state. From a macro perspective, the central provinces need to pay more attention to agro-ecological efficiency in order to achieve sustainable, high-quality agricultural development in China as a whole.
- (2)
- In terms of temporal evolution, both inefficient and efficient regions have increased, and agro-ecological efficiency has shown a bifurcation in the region. The inefficient regions tend to be concentrated in the central region, and Gansu, Yunnan and Shanxi have been in the inefficient regions for a long time, so researchers can conduct more microscopic studies on the central region and the provinces that have been in the inefficient regions for a long time.
- (3)
- The analysis of the results from the provincial and municipal characteristics shows that in areas with flat terrain and more abundant water resources, the large-scale production model can be adopted, and the representative region is Heilongjiang. The second is in regions with relatively developed economies, where reference can be made to the efficient model of input utilization in the southeast coastal areas, controlling certain costs and increasing output through good business systems. The third is in regions where food cultivation is difficult and economic output can be increased by adjusting the proportion of cash crops grown.
- (4)
- Considering that China’s “national agricultural security” strategy emphasizes stable and sufficient grain output and increased production, and that Heilongjiang, Jilin and Liaoning provinces are established as grain production bases at the national policy level, it is clear that there is a certain degree of differentiation in the positioning of agricultural production in each province in China. Therefore, in this study, grain output is also included as the main desired output in the AEE measurement. The desired effect of grain output in these three regions offsets the negative output and enhances overall efficiency when input factors increase and non-desired output increases.
- (5)
- The results of the agro-ecological efficiency (AEE) values obtained in the paper were compared with existing studies. The mean value of AEE for each region in the paper is higher than that of Wang [29]. The mean value of the overall results of Jiang [31] for measuring agricultural eco-efficiency in China is 0.8032, while the national mean value obtained in this paper is 0.9819, which is numerically higher. The AEE values are generally higher in the southeast coastal region in this paper’s study. This is similar to the findings of Chenxuan [33] and other researchers.
- (1)
- The impulse response plots and ANOVA of the PVAR model reveal that agro-ecological efficiency is negatively affected when there is a negative shock to population urbanization. However, the main impact contribution of a shock to agro-ecological efficiency is by itself. This means that when population urbanization is hit, it has a significant “one-way shock” effect on agro-ecological efficiency, and the negative effect on agro-ecological efficiency has a long-term effect.
- (2)
- The panel Tobit regression results show that population urbanization, rural human capital, agricultural water infrastructure and the level of regional industrialization have a negative impact on agro-ecological efficiency at a statistical level. Not all elements of the model construction that included only external influences were significant, similar to the results obtained from the PVAR variance decomposition, i.e., when agro-ecological efficiency was shocked, the impact on population urbanization was relatively small.
- (3)
- The analysis of the results of the PVAR model and the panel Tobit model combined shows that the advancement of population urbanization has a negative impact on agro-ecological efficiency. This finding supports the conclusions of Berry [24] and Chaolin [25]. However, other changes brought about by population urbanization, such as transport infrastructure and economic growth, will promote agro-ecological efficiency. In contrast to the findings of SHANG [27], the paper analyses a larger amount of panel data and finds that population urbanization has a significant negative effect on agro-ecological efficiency.
- (4)
- The findings of the paper need to be summarized in two parts: (I) The increase in population urbanization has a direct inhibiting effect on agro-ecological efficiency. However, the institutional and technological changes that accompany population urbanization can have a catalytic effect on agro-ecological efficiency. (II) The degradation of population urbanization can also have a dampening effect on agro-ecological efficiency. For example, the return of population to the countryside can lead to a surplus of agricultural labour, or the economic decline that accompanies the degradation of population urbanization can lead to a reduction in agro-ecological efficiency. Therefore, in the promotion of population urbanization, agricultural population transfer should not be restricted and urbanization should not be put on hold in order to enhance agro-ecological efficiency.
- (5)
- Combining the results of the AEE remeasurement and the results of the models in this paper, it can be learned that China’s agricultural eco-efficiency as a whole is in an inefficient state, and more attention needs to be paid to green and efficient production in agriculture. The advantages brought about by population urbanization should be brought into full play, and agricultural eco-efficiency should be improved in all aspects through the introduction of regulatory technology [33] and the introduction of industrial and commercial capital [48]. Therefore, subsequent studies can explore the multifaceted effects of various external factors, such as the intensity of industrial and commercial capital inputs and the level of technological inputs, on food security and agro-ecological efficiency in order to find more suitable ecological and efficient agricultural production models in different parts of China, and to ensure China’s agricultural security and food safety.
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Indicators | Variables | Variable Description |
---|---|---|
Resource input | Labour input | Agricultural workforce (10,000 people) |
Land input | Total area sown to crop (thousands of ha) | |
Irrigation inputs | Effective irrigated area (thousands of ha) | |
Agricultural machinery power inputs | Total agricultural machinery power (×10 thousand kW) | |
Fertilizer inputs | Agricultural fertilizer application (converted, × 10 thousand ton) | |
Pesticide inputs | Pesticide use (ton) | |
Agricultural film inputs | Amount of agricultural film used (ton) | |
Draft animal inputs | Number of cattle in stock at the end of the year (×10 thousand head) | |
Desired output | Agricultural output | Total agricultural output (×100 million yuan) |
Food output | Total grain production (×10 thousand ton) | |
Undesired outputs | Carbon emissions | Carbon emissions from agricultural production processes (×10 thousand ton) |
Surface source pollution | Amount of surface source pollution from agricultural production inputs (×10 thousand ton) |
Variables | Indicator/Unit | Indicator Description |
---|---|---|
Explained variable | Agro-Ecological Efficiency (AEE) | Measured based on the undesired output super-efficiency SBM model |
Core explanatory variable | Level of urbanisation of population (URB)/% | Direct access |
Control variables | Economic Development in Agriculture (PADA)/(USD/person) | Value added in agriculture/population employed in agriculture |
Rural human capital (AHM)/(year) | Average years of schooling for rural household labour force | |
Water Infrastructure (EIR)/% | Effective irrigated area/total sown area | |
Agricultural disaster rate (ADR)/% | Affected area/total sown area | |
Industrialisation level (IND)/% | Tertiary sector value added/GDP | |
Transport infrastructure (TRAF)/(km/km2) | (Railway mileage + inland waterway mileage + road mileage)/Land area |
Variables | LLC Test | IPS Testing | ADF Test | Conclusion |
---|---|---|---|---|
lnAEE | −4.7640 * | −2.5058 * | −5.062 * | Stable |
lnURB | −98.688 * | −30.4752 * | −5.954 * | Stable |
Lag | 1 | 2 | 3 | 4 | 5 |
---|---|---|---|---|---|
AIC | −5.82784 | −6.10487 | −6.09801 | −6.02081 | −6.26054 * |
BIC | −5.31636 | −5.37807 * | −5.47042 | −5.32602 | −5.49098 |
HQIC | −5.62809 | −5.88297 | −5.85166 | −5.74734 | −5.95678 * |
Response Variables | Shock Variables | |
---|---|---|
lnAEE | lnURB | |
L.lnAEE | 0.5369 **(2.23) | −0.1168 **(−1.76) |
L.lnURB | −0.1915 (−0.74) | 0.8258 ***(14.06) |
Shock Variable | lnAEE | lnURB | |||
---|---|---|---|---|---|
Response Variable | lnAEE | lnURB | lnAEE | lnURB | |
Prediction period | 1 | 1.000 | 0.000 | 0.000 | 1.000 |
2 | 0.998 | 0.002 | 0.096 | 0.904 | |
3 | 0.996 | 0.004 | 0.246 | 0.754 | |
4 | 0.996 | 0.004 | 0.381 | 0.619 | |
5 | 0.995 | 0.005 | 0.486 | 0.514 | |
6 | 0.995 | 0.005 | 0.578 | 0.422 | |
7 | 0.995 | 0.005 | 0.638 | 0.362 | |
8 | 0.995 | 0.005 | 0.677 | 0.323 | |
9 | 0.994 | 0.006 | 0.701 | 0.299 | |
10 | 0.994 | 0.006 | 0.717 | 0.283 |
Explanatory Variables | Models (2) | Models (3) | Models (4) | Models (5) |
---|---|---|---|---|
URB | −0.0011721 *** (−3.98) | −0.0018583 *** (−3.43) | −0.0014495 *** (−2.70) | −0.0023082 *** (−3.65) |
PADA | 2.11 × 10−6 *** (4.34) | 2.51 × 10−6 *** (4.93) | ||
AHM | −0.0216954 *** (−2.59) | −0.0273955 *** (−3.19) | ||
EIR | −0.1310255 *** (−3.66) | −0.1126165 *** (−3.12) | ||
ADR | −0.0005539 *** (−2.65) | −0.0005818 *** (−2.81) | ||
IND | −0.0892232 (−1.43) | −0.1523307 ** (−2.35) | ||
TRAF | 0.0227137 * (1.67) | 0.0338134 ** (2.51) | ||
Constant | 1.110918 *** (42.19) | 1.344557 *** (24.29) | 1.148044 *** (35.66) | 1.439624 *** (23.06) |
Log likelihood | 588.11947 | 607.78554 | 590.2583 | 612.9421 |
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Chen, F.; Qiao, G.; Wang, N.; Zhang, D. Study on the Influence of Population Urbanization on Agricultural Eco-Efficiency and on Agricultural Eco-Efficiency Remeasuring in China. Sustainability 2022, 14, 12996. https://doi.org/10.3390/su142012996
Chen F, Qiao G, Wang N, Zhang D. Study on the Influence of Population Urbanization on Agricultural Eco-Efficiency and on Agricultural Eco-Efficiency Remeasuring in China. Sustainability. 2022; 14(20):12996. https://doi.org/10.3390/su142012996
Chicago/Turabian StyleChen, Fei, Guotong Qiao, Na Wang, and Dandan Zhang. 2022. "Study on the Influence of Population Urbanization on Agricultural Eco-Efficiency and on Agricultural Eco-Efficiency Remeasuring in China" Sustainability 14, no. 20: 12996. https://doi.org/10.3390/su142012996
APA StyleChen, F., Qiao, G., Wang, N., & Zhang, D. (2022). Study on the Influence of Population Urbanization on Agricultural Eco-Efficiency and on Agricultural Eco-Efficiency Remeasuring in China. Sustainability, 14(20), 12996. https://doi.org/10.3390/su142012996