Can the Adjustment of China’s Grain Purchase and Storage Policy Improve Its Green Productivity?
Abstract
:1. Introduction
2. Analysis of Policy Evolution and Influence Mechanism
2.1. Evolutionary Logic of Maize Purchase and Storage Policy
- (1)
- Protective price policy (PPP): The government formulates the protective price before the grain put on the market. If the market price is higher than the protective price after grain put on the market, the grain purchase and storage enterprises (state-owned) will make monopolistic purchase of grain at the market price; otherwise, they will purchase grain at the protective price.
- (2)
- Temporary purchase and storage policy (TPSP): The central government announces the maize temporary purchase and storage price during the harvest. State-owned grain purchase and storage enterprises and private enterprises entrusted by the government purchase maize in Heilongjiang, Jilin, Liaoning and Inner Mongolia at this price.
- (3)
- Producer subsidy policy (PSP): The price of maize in Heilongjiang, Jilin, Liaoning and Inner Mongolia is completely determined by the supply and demand after they put on the market. Producers will get subsidy when the market price is low, and the amount of subsidy is determined by the central government, based on the overall consideration of previous production cost, current supply and demand level and basic profit.
2.2. Influence Mechanism and Policy Effects
- (1)
- Support effect. The implementation of the purchase and storage policy provides basic struts for grain production and food security. Purchase and storage policy featuring the minimum price purchase policy (MPPP) and TPSP, in combination with agricultural subsidies, finance, science and technology supporting policies, has increased grain output steadily especially since 2003, and food supply security has been guaranteed [38]. Despite the increase in grain output, the impact on grain productivity is uncertain. Problems caused by the purchase and storage policy, such as waste of resources, overcapacity and price inversion [35,39], which hinder the improvement of green productivity.
- (2)
- Wealth effect. The grain purchase and storage policy ensure price stability and purchase channels, which stabilizes farmers’ income, reduces market risks, and improves their enthusiasm of grain production [38]. It achieves rapid growth of grain production by encouraging farmers to expand production scale or increase inputs. However, the expansion of production scale is often confronted with the constraints of land fragmentation, the rise of production costs, natural disasters and increase in market operation risks, resulting in the loss of productivity [37,53]. Moreover, the unreasonable growth of agricultural inputs can easily lead to overcapacity, resource mismatch and decline in marginal output [39], which reduces grain productivity.
- (3)
- Demonstration effect. The grain purchase and storage policy have strong guidance [54,55]. Stable implementation of the policy will help to encourage local governments and relevant departments to attach greater importance to agricultural production, increase financial expenditure on agriculture, and improve production infrastructure. It can also increase the scientific and educational departments’ investment in research and development and talent cultivation. Furthermore, it increases the financial support from banks and credit institutions, and improves the efficiency of environmental testing by environment protection departments [51,56]. Therefore, it promotes the improvement of grain green productivity.
- (4)
- Siphon effect. In the provinces that implement grain purchase and storage policy, advantageous conditions are gradually formed, with higher grain purchase price, stable purchase channels, sound agricultural infrastructure, and higher productivity and convenient socialized services, which results in the agglomeration of grain production. Moreover, the existing advantageous conditions will also attract the capital, technology, labor and other production elements in the surrounding areas to flow to the local region, and forming a siphon effect [46], so as to promote the development of green productivity in the local region.
3. Materials and Methods
3.1. Epsilon-Based Measure (EBM) Model
3.2. Difference-in-Differences (DID) Model
3.3. Variable Selection and Data Source
4. Results and Analysis
4.1. Results of MGP and Parallel Trend Test
4.1.1. Results of Maize Green Productivity (MGP)
4.1.2. Parallel Trend Test
4.2. Natural Experiment of the Temporary Purchase and Storage Policy (TPSP)
4.2.1. Empirical Results and Analysis of the TPSP
4.2.2. Effect Analysis of the TPSP
4.3. Natural Experiment of the Producer Subsidy Policy (PSP)
4.3.1. Empirical Results and Analysis of the PSP
4.3.2. Parallel Trend Test
5. Discussions
6. Conclusions and Implications
6.1. Conclusions
- (1)
- The implementation of temporary purchase and storage policy reduces maize green productivity in the experimental group (Heilongjiang, Jilin, Liaoning and Inner Mongolia), whereas the implementation of producer subsidy policy improves maize green productivity in the experimental group, this is due to the difference of policy effects under the different regulatory objectives and measures.
- (2)
- Under the demonstration effect of temporary purchase and storage policy or producer subsidy policy, the improvement of effective irrigation and the increase in agricultural financial expenditure are important factors to improve maize green productivity. The lag of the experimental group in the development of agricultural mechanization has been hindering the development of maize green production.
- (3)
- After the shift from temporary purchase and storage policy to producer subsidy policy, continuous increase in production capacity hinders the improvement of maize green productivity under the support effect of two policies. Under the wealth effect of two policies, the influence of farmers’ income and agricultural production price on the maize green productivity shifts from negative to positive because of the change of farmers’ production concept and technical improvement. Under the siphon effect of two policies, the influence of production agglomeration on maize green productivity shifts from negative to positive because of the competitive advantages of the attracted producers in production technology, resource management and environmental protection consciousness.
6.2. Policy Implications
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Policy | Background | Objectives | Measures | Impacts |
---|---|---|---|---|
Protective price policy (PPP) 1997–2007 | With monopolistic purchase by the government, the purchase price is higher than sales price. The purchased grain cannot achieve profitable sales. Therefore, the local governments have heavy financial burden, and state-owned grain enterprises face serious loss [34]. | The policy aims to adjust grain production structure on the premise of maintaining farmers’ enthusiasm for grain production. It is also expected to achieve profitable sales of policy grain reserves and reduce the financial burden of the government. | Protective price is implemented for the purchasing price, and the local governments make purchase without limitation. The areas implementing PPP is reduced and the level of protective price is lowered. | In the initial stage of the implementation of the policy, the enthusiasm for grain production and sales was improved, and the loss situation of state-owned enterprises took a turn for the better [35]. However, in the later stage, monopolistic purchase slowed down the growth of farmers’ income and decreased their enthusiasm for production, which led to the instability of investment in grain production and the low productivity [35,36]. |
Temporary purchase and storage policy (TPSP) 2008–2015 | In the later stage of its implementation, PPP led to unstable grain output, low productivity and slowdown of the growth rate of farmers’ income [35,36]. Additionally, the mismatch between domestic grain production and consumption, together with the sharp decline of international grain prices, led to the low price of maize in the domestic market and the lack of farmers’ enthusiasm for production [35,37]. | It aims to improve overall productivity, increase the purchase price to stabilize the farmers’ enthusiasm for grain production, strengthen government regulation of the grain market to guarantee the security of grain supply. | TPSP is implemented in Heilongjiang, Jilin, Liaoning and Inner Mongolia, with an increase in purchase price each year. Moreover, a competitive auction system is formulated to regulate the sales of policy grain. | Grain prices regulation system was improved. Grain output increased steadily, and farmers’ income grew rapidly [37]. However, the continuous implementation of TPSP and the annual increase in purchase prices also led to such problems as overcapacity of maize, increased pressure for inventory and import, heavy financial burden, frequent factor mismatch and resource waste [37,38]. |
Producer subsidy policy (PSP) 2016–2019 | As international grain prices continued to decline and domestic grain production costs increased, implementation of TPSP led to higher domestic price of maize than the international price, and the import volume of maize remains high [35,36]. Moreover, overcapacity of maize stimulated by the policy led to continuous increase in temporary storage inventory and financial pressure [35,39]. | The policy aims to alleviate the problems of maize overcapacity, increased inventory and import pressure and heavy financial burden. It also expects to reduce factor mismatch and resource waste, and optimize the grain production structure to match supply with demand. | TPSP for maize in Heilongjiang, Jilin, Liaoning and Inner Mongolia is abolished. The support policy of “market pricing + producer subsidy” is implemented. | Initial effect was achieved in adjustment of grain production structure. Maize production capacity was controlled. The inventory pressure was effectively released. Import volume decreased significantly. Productivity was improved, and the problems of factor mismatch and resource waste were alleviated [39]. |
Summary | The government monopoly purchase, protective price purchase and temporary purchase can directly lead to a substantial increase in the grain purchase price, which makes it difficult for the purchased grain to achieve profitable sales, and results in overcapacity, resource waste, inventory pressure, financial burden and the lack of international competitiveness. However, these reasons have jointly promoted the continuous adjustment and reform of China’s grain policy. | The goal of the Chinese government to adjust the grain purchase and storage policies is to realize the market-oriented reform on the basis of ensuring the grain supply security and farmers’ enthusiasm for production, further release market vitality, improve production efficiency, reduce resource waste and carbon emissions, and finally improve the sustainability of grain production. | In different periods, the Chinese government has adopted different purchase and storage measures to ensure the realization of policy objectives. From the various purchase and storage measures included in PPP, TPSP and PSP, the implementation and adjustment of different measures always focus on reducing government intervention and strengthening market forces; and the continuous adjustment and upgrading of various measures are to achieve sustainable security of food supply. | In the early stage of PPP, TPSP and PSP, significant effects have been achieved in stabilizing grain planting income and farmers’ production enthusiasm; however, due to the strong policy intervention of PPP and TPSP, problems such as resource waste, excessive financial burden and low production efficiency occurred in the later stage of PPP and TPSP. As the pioneer in the structural reform of the grain supply side, the implementation of PSP has effectively reduced excess production capacity, improved the problem of resource waste, and is more in line with the concept of sustainable development of the grain industry. |
Variable | Units | Mean | Maximum | Minimum | Std. Dev. | Data Source |
---|---|---|---|---|---|---|
Maize production | 104 t | 922.302 | 4280.190 | 82.000 | 826.224 | Data from the National Bureau of Statistics of China |
Maize planting area | 104 ha | 165.883 | 736.115 | 13.110 | 130.298 | |
Staple grain production | 104 t | 2134.275 | 7022.560 | 218.900 | 1456.767 | |
Total power of agricultural machinery | 104 kW | 3420.046 | 13,353.020 | 288.400 | 2827.475 | |
Total agricultural planting area | 104 ha | 683.271 | 1490.272 | 97.760 | 327.212 | |
Total effective irrigated area | 104 ha | 254.983 | 617.759 | 34.359 | 147.818 | |
Total cultivated area | 104 ha | 594.473 | 1586.410 | 110.706 | 247.190 | |
Temperature fluctuation index | — | 0.011 | 0.293 | −0.235 | 0.068 | |
Precipitation fluctuation index | — | −0.002 | 2.736 | −0.613 | 0.267 | |
Sunshine change index | — | −0.001 | 0.256 | −0.374 | 0.090 | |
Agricultural production price index | — | 1.030 | 1.281 | 0.919 | 0.059 | |
Fertilizer for maize production | 104 t | 54.190 | 228.033 | 5.208 | 44.071 | Data from the Compilation of Cost-Benefit Data of Agricultural Products in China (1998–2020) |
Pesticide for maize production | 104 t | 0.030 | 0.150 | 0.002 | 0.033 | |
Agricultural film for maize production | 104 t | 0.909 | 7.924 | 0.006 | 1.384 | |
Diesel oil for maize production | 104 t | 0.320 | 4.247 | 0.001 | 0.503 | |
Seed for maize production | 104 t | 6.303 | 25.551 | 0.499 | 4.746 | |
Electricity for maize production | 104 kWh | 78,591.310 | 576,021.100 | 65.640 | 100,492.700 | |
Labor for maize production | 104 day | 19,480.860 | 59,891.500 | 2163.150 | 11,048.620 | |
Labor for staple grain production | 104 day | 47,034.500 | 189,096.800 | 4079.624 | 28,468.230 | |
Machinery for maize production | 104 CNY | 175,169.900 | 1,562,619.000 | 59.084 | 265,001.900 | |
Per capita income of rural residents | 104 CNY | 0.585 | 2.268 | 0.119 | 0.432 | Data from the China Rural Statistical Yearbook (1998–2020) |
Agricultural disaster area | 104 ha | 164.861 | 739.370 | 2.910 | 113.166 | |
Local agricultural fiscal expenditure | 108 CNY | 284.575 | 1310.890 | 3.925 | 300.258 | |
Per capita income of urban residents | 104 CNY | 1.603 | 5.106 | 0.359 | 1.045 | Data from the Statistical Yearbooks of each province |
Local fiscal expenditure | 108 CNY | 2458.199 | 12,573.550 | 33.630 | 2502.075 | |
Urban population | 104 people | 2045.297 | 6194.000 | 168.718 | 1252.349 | |
Total population | 104 people | 4862.998 | 10,106.000 | 530.000 | 2506.600 |
Variable Name | Policies | Groups | Periods | Differences | ||
---|---|---|---|---|---|---|
1997–2007 | 2008–2015 | 2016–2019 | ||||
Mean value of MGP | TPSP | Experimental group 1 | 0.9753 | 0.9976 | — | 0.0223 |
Control group 1 | 0.9204 | 0.9633 | — | 0.0429 | ||
Difference 1 | 0.0549 | 0.0343 | — | −0.0206 | ||
PSP | Experimental group 2 | — | 0.9976 | 1.0133 | 0.0157 | |
Control group 2 | — | 0.9633 | 0.9572 | −0.0061 | ||
Difference 2 | — | 0.0343 | 0.0561 | 0.0218 |
Variables | Model 1 | Model 2 | Model 3 | Model 4 | Model 5 | Model 6 | Model 7 |
---|---|---|---|---|---|---|---|
DIDTPSP × year2008 | — | −0.0640 *** (0.0079) | −0.0321 ** (0.0160) | — | — | — | — |
DIDTPSP × year2006 | — | — | — | −0.0208 (0.0164) | — | — | — |
DIDTPSP × year2007 | — | — | — | — | −0.0175 (0.0158) | — | — |
DIDTPSP × year2009 | — | — | — | — | — | −0.0291 (0.0217) | — |
DIDTPSP × year2010 | — | — | — | — | — | — | −0.0316 (0.0271) |
GPC | 0.0047 (0.0039) | — | 0.0046 * (0.0027) | 0.0041 (0.0028) | 0.0039 (0.0027) | 0.0044 (0.0027) | 0.0049 * (0.0026) |
EIR | 0.1260 *** (0.0274) | — | 0.1524 *** (0.0282) | 0.1544 *** (0.0281) | 0.1546 *** (0.0281) | 0.1533 *** (0.0281) | 0.1492 *** (0.0282) |
AMI | −0.0133 *** (0.0031) | — | −0.0099 *** (0.0021) | −0.0099 *** (0.0022) | −0.0101 *** (0.0022) | −0.0099 *** (0.0022) | −0.0099 *** (0.0021) |
UR | 0.0656 (0.0433) | — | 0.0573 (0.0467) | 0.0573 (0.0469) | 0.0559 (0.0468) | 0.0573 (0.0468) | 0.0581 (0.0467) |
PA | 0.0063 (0.0085) | — | −0.0111 (0.0091) | −0.0112 (0.0091) | −0.0107 (0.0092) | −0.0111 (0.0092) | −0.0107 (0.0091) |
RII | 0.3275 *** (0.1003) | — | −0.1369 * (0.0819) | −0.1330 (0.0888) | −0.1413 * (0.0870) | −0.1369 (0.0878) | −0.1420 * (0.0840) |
DI | −0.0774 * (0.0394) | — | −0.1076 *** (0.0391) | −0.1044 *** (0.0390) | −0.1042 *** (0.0391) | −0.1049 *** (0.0390) | −0.1126 *** (0.0396) |
TF | −0.1434 (0.1654) | — | −0.1641 (0.1679) | −0.1486 (0.1660) | −0.1499 (0.1663) | −0.1696 (0.1708) | −0.1731 (0.1693) |
PF | −0.0258 (0.0194) | — | −0.0248 (0.0192) | −0.0258 (0.0191) | −0.0255 (0.0192) | −0.0255 (0.0191) | −0.0249 (0.0190) |
SC | −0.0478 (0.0662) | — | −0.0336 (0.0646) | −0.0359 (0.0645) | −0.0354 (0.0646) | −0.0338 (0.0645) | −0.0330 (0.0644) |
API | 0.0988 (0.0771) | — | −0.0627 * (0.0366) | −0.0607 (0.0448) | −0.0638 * (0.0378) | −0.0458 (0.0498) | −0.0508 (0.0486) |
AFE | 0.2788 (0.3098) | — | 0.0274 ** (0.0136) | 0.0127 (0.0239) | 0.0244 (0.0185) | 0.0325 * (0.0182) | 0.0306 * (0.0177) |
Province-fixed effects | Control | Control | Control | Control | Control | Control | Control |
Year-fixed effects | Control | Control | Control | Control | Control | Control | Control |
Adj-R2 | 0.543 | 0.286 | 0.698 | 0.648 | 0.647 | 0.649 | 0.651 |
Variables | Model 8 | Model 9 | Model 10 | Model 11 | Model 12 | Model 13 | Model 14 |
---|---|---|---|---|---|---|---|
GPC × DIDTPSP | 0.0068 *** (0.0018) | — | — | — | — | — | — |
EIR × DIDTPSP | — | 0.1152 ** (0.0521) | — | — | — | — | — |
AMI × DIDTPSP | — | — | −0.0051 (0.0032) | — | — | — | — |
PA × DIDTPSP | — | — | — | −0.0107 (0.0076) | — | — | — |
RII × DIDTPSP | — | — | — | — | −0.1061 ** (0.0447) | — | — |
API × DIDTPSP | — | — | — | — | −0.0323 ** (0.0154) | — | |
AFE × DIDTPSP | — | — | — | — | — | — | 0.0398 ** (0.0155) |
Control variables | Control | Control | Control | Control | Control | Control | Control |
Province-fixed effects | Control | Control | Control | Control | Control | Control | Control |
Year-fixed effects | Control | Control | Control | Control | Control | Control | Control |
Adj-R2 | 0.660 | 0.613 | 0.627 | 0.646 | 0.647 | 0.651 | 0.653 |
Variables | Model 15 | Model 16 | Model 17 | Model 18 | Model 19 | Model 20 | Model 21 |
---|---|---|---|---|---|---|---|
DIDPSP | — | 0.0735 *** (0.0073) | 0.0807 *** (0.0222) | — | — | — | — |
DIDPSP × year2014 | — | — | — | 0.0652 (0.0423) | — | — | — |
DIDPSP × year2015 | — | — | — | — | 0.0661 (0.0442) | — | — |
DIDPSP × year2017 | — | — | — | — | — | 0.0650 (0.0465) | — |
DIDPSP × year2018 | — | — | — | — | — | — | 0.0652 (0.0504) |
GPC | −0.0046 (0.0032) | — | −0.0059 ** (0.0024) | −0.0090 *** (0.0032) | −0.0075 *** (0.0028) | −0.0063 ** (0.0028) | −0.0057 * (0.0029) |
EIR | 0.1231 *** (0.0278) | — | 0.1243 *** (0.0241) | 0.1428 *** (0.0281) | 0.1330 *** (0.0275) | 0.1261 *** (0.0276) | 0.1247 *** (0.0276) |
AMI | −0.0072 ** (0.0034) | — | −0.0064 *** (0.0021) | −0.0079 ** (0.0032) | −0.0075 ** (0.0029) | −0.0074 ** (0.0030) | −0.0075 ** (0.0031) |
UR | 0.2315 * (0.1282) | — | 0.1747 * (0.1039) | 0.1135 (0.1271) | 0.1485 (0.1216) | 0.1930 (0.1233) | 0.2080* (0.1248) |
PA | 0.0339 *** (0.0088) | — | 0.0312 *** (0.0086) | 0.0292 *** (0.0083) | 0.0307 *** (0.0085) | 0.0323 *** (0.0088) | 0.0326 *** (0.0089) |
RII | 0.0892 *** (0.0351) | — | 0.1164 *** (0.0354) | 0.1208 *** (0.0365) | 0.1122 *** (0.0346) | 0.1037 *** (0.0341) | 0.0989 *** (0.0340) |
DI | −0.1093 ** (0.0487) | — | −0.1249 *** (0.0466) | −0.1291 ** (0.0498) | −0.1274 *** (0.0480) | −0.1239 ** (0.0475) | −0.1207 ** (0.0472) |
TF | 0.0806 (0.0708) | — | −0.0514 (0.0702) | 0.0007 (0.0741) | 0.0240 (0.0726) | 0.0501 (0.0707) | 0.0613 (0.0710) |
PF | 0.0103 (0.0235) | — | −0.0032 (0.0233) | 0.0158 (0.0232) | 0.0079 (0.0230) | 0.0099 (0.0232) | 0.0065 (0.0233) |
SC | −0.0826 (0.0688) | — | −0.0926 (0.0680) | −0.0833 (0.0666) | −0.0850 (0.0660) | −0.0859 (0.0664) | −0.0816 (0.0667) |
API | 0.0175 (0.0166) | — | 0.0106 (0.0082) | 0.0490 (0.0368) | 0.0143 (0.0870) | −0.0088 (0.0080) | −0.0089 (0.0184) |
AFE | 0.3393 *** (0.1117) | — | 0.2714 *** (0.0588) | 0.462 *** (0.1338) | 0.3127 *** (0.1016) | 0.3462 *** (0.1087) | 0.3637 *** (0.1138) |
Province-fixed effects | Control | Control | Control | Control | Control | Control | Control |
Year-fixed effects | Control | Control | Control | Control | Control | Control | Control |
Adj-R2 | 0.757 | 0.370 | 0.784 | 0.729 | 0.731 | 0.739 | 0.736 |
Variables | Model 22 | Model 23 | Model 24 | Model 25 | Model 26 | Model 27 | Model 28 |
---|---|---|---|---|---|---|---|
GPC × DIDPSP | −0.0017 (0.0015) | — | — | — | — | — | — |
EIR × DIDPSP | — | 0.1008 *** (0.0342) | — | — | — | — | — |
AMI × DIDPSP | — | — | −0.0073 ** (0.0033) | — | — | — | — |
PA × DIDPSP | — | — | — | 0.0287 *** (0.0086) | — | — | — |
RII × DIDPSP | — | — | — | — | 0.0601 *** (0.0246) | — | — |
API × DIDPSP | — | — | — | — | 0.0335 ** (0.0162) | — | |
AFE × DIDPSP | — | — | — | — | — | — | 0.2861 *** (0.1009) |
Control variables | Control | Control | Control | Control | Control | Control | Control |
Province-fixed effects | Control | Control | Control | Control | Control | Control | Control |
Year-fixed effects | Control | Control | Control | Control | Control | Control | Control |
Adj-R2 | 0.819 | 0.782 | 0.824 | 0.733 | 0.773 | 0.769 | 0.837 |
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Li, J.; Lin, Q. Can the Adjustment of China’s Grain Purchase and Storage Policy Improve Its Green Productivity? Int. J. Environ. Res. Public Health 2022, 19, 6310. https://doi.org/10.3390/ijerph19106310
Li J, Lin Q. Can the Adjustment of China’s Grain Purchase and Storage Policy Improve Its Green Productivity? International Journal of Environmental Research and Public Health. 2022; 19(10):6310. https://doi.org/10.3390/ijerph19106310
Chicago/Turabian StyleLi, Jingdong, and Qingning Lin. 2022. "Can the Adjustment of China’s Grain Purchase and Storage Policy Improve Its Green Productivity?" International Journal of Environmental Research and Public Health 19, no. 10: 6310. https://doi.org/10.3390/ijerph19106310
APA StyleLi, J., & Lin, Q. (2022). Can the Adjustment of China’s Grain Purchase and Storage Policy Improve Its Green Productivity? International Journal of Environmental Research and Public Health, 19(10), 6310. https://doi.org/10.3390/ijerph19106310