The Impact of Transformation of Farmers’ Livelihood on the Increasing Labor Costs of Grain Plantation in China
Abstract
:1. Introduction
2. Materials and Methods
2.1. Measurement of Labor Cost of Grain Production and Farmers’ Livelihood Transformation
2.2. Evaluation of Farmers’ Livelihood Transformation
2.3. Multiple Linear Regression Model of Farmers’ Livelihood Transformation and Labor Cost in Grain Production
3. Results
3.1. The Soaring Labor Cost in Grain Production
3.2. The Spatiotemporal Change in Farmers’ Livelihood Transformation
3.3. The Impact of Farmers’ Livelihood Transformation on the Labor Cost of Grain Production
4. Discussion
4.1. “Traps” Hidden in the Farmers’ Livelihood Transformation
4.2. Consequences of Soaring Labor Cost in Grain Production
4.3. Policy Implications
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Types | Contents | Explanation |
---|---|---|
Production cost | Labor cost | The cost of labors (home labors and hiring labors) in the process of sowing, ploughing, and harvesting, etc. |
Material input cost | The cost of material inputs, such as chemical fertilizers, pesticides, and seeds. | |
Land cost | Land cost | The cost of farmers subcontracting other farmers’ arable land, or renting the motorized land of the collective economic organization (such as land fixtures such as ditches, and motorized wells) |
Indicator | Explanation |
---|---|
Income (IK) | |
Wage income (I1) | The farmers’ income by engaging in a variety of part-time and sporadic jobs to obtain remuneration and benefits |
Agricultural operation income (I2) | The farmers’ income from the regular household production and management activities, which mainly refers to the income from the agricultural products on their arable land |
Property income (I3) | The farmers’ income from family-owned property (bank deposits, securities) and real property (houses, cars, collectibles, etc.), such as the income of renting a house or renting land. |
Transfer income (I4) | The remittances from family members who are living outside the rural area, the subsidies, the insurance payments, the relief fund, pensions, compensation income from land acquisition, financial subsidies, and other transfer income |
Expenditure (EK) | |
Food (E1) | Farmers’ expenditure on categories E1–E8 |
Clothing (E2) | |
Accommodation (E3) | |
Home equipment and services (E4) | |
Transport and Communications (E5) | |
Cultural and educational entertainment supplies (E6) | |
Health care (E7) | |
Other goods and services (E8) |
Variables | Instruction of the Indicator | |
---|---|---|
Dependent Variable | Y | The ratio of labor cost in the total cost of grain production |
Independent variable () | X1 | Farmers’ Residual Livelihood Ratio |
X2 | Farmers’ Livelihood Simpson Index | |
Control variable () | X3 | Contribution of the primary industry to local GDP |
X4 | Proportion of primary industry employees in local employees | |
X5 | Price index of agricultural means of production, which is used to relatively reflect the price changes of agricultural means of production, including small farm tools, feed, mechanized farm tools, chemical fertilizers, pesticides and pesticide machinery, and oil for agricultural machinery. | |
X6 | The proportion of expenditure on agriculture, forestry, and water resources in the total local public budget | |
X7 | Mechanization input on per unit local arable land area | |
X8 | Effective irrigation area | |
X9 | Grain yield per unit area | |
X10 | Engel’s coefficient of local farmers (the proportion of the food expenditure in the total expenditure) | |
X11 | Non-grain plantation degree (the ratio of plantation area between local grain crops to economy crops) | |
X12 | Non-agricultural land use degree (the proportion of cultivated land in total administrative land area) | |
X13 | Urbanization level (the proportion of urban population in the total population) | |
X14 | Local per capita disposable income |
Year | Yield | Price | Revenue | Total Cost | Net Profit | Profit/Cost |
---|---|---|---|---|---|---|
(kg/hm2) | ($/t) | ($/hm2) | ($/hm2) | ($/hm2) | (%) | |
Rice | ||||||
2009 | 6937.2 | 287.0 | 1992.5 | 1485.3 | 546.2 | 36.8 |
2019 | 7342.8 | 400.1 | 2744.3 | 2699.9 | 44.4 | 1.7 |
Increment rate (%) | 5.9 | 39.4 | 37.7 | 81.8 | −91.9 | −95.5 |
Wheat | ||||||
2009 | 5671.2 | 268.2 | 1519.2 | 1232.8 | 327.2 | 26.5 |
2019 | 6802.2 | 324.7 | 2269.9 | 2237.1 | 32.8 | 1.5 |
Increment rate (%) | 19.9 | 21.1 | 49.4 | 81.5 | −90.0 | −94.5 |
Maize | ||||||
2009 | 6449.1 | 237.7 | 1533.2 | 1198.2 | 381.3 | 31.8 |
2019 | 7558.5 | 259.5 | 2019.6 | 2295.3 | −275.6 | −12.0 |
Increment rate (%) | 17.2 | 9.2 | 31.7 | 91.6 | −172.3 | −137.7 |
Variables | Rice | Wheat | Maize | |||
---|---|---|---|---|---|---|
Tolerance | VIF | Tolerance | VIF | Tolerance | VIF | |
The farmers’ residual livelihood ratio (X1) | 0.159 | 6.308 | 0.124 | 8.084 | 0.124 | 8.084 |
The farmers’ livelihood Simpson Index (X2) | 0.130 | 7.694 | 0.149 | 6.694 | 0.149 | 6.694 |
Contribution of the primary industry to local GDP (X3) | 0.109 | 9.202 | 0.109 | 9.202 | 0.122 | 8.202 |
Proportion of primary industry employees in local employees (X4) | 0.038 | 26.584 | 0.038 | 26.584 | 0.152 | 6.584 |
Price index of agricultural means of production (X5) | 0.464 | 2.155 | 0.103 | 9.715 | 0.103 | 9.715 |
The proportion of expenditure on agriculture, forestry, and water resources in the total local public budget (X6) | 0.058 | 17.113 | 0.058 | 17.113 | 0.037 | 27.113 |
Mechanization input on per unit arable land area (X7) | 0.376 | 2.662 | 0.171 | 5.853 | 0.171 | 5.853 |
Effective irrigation area (X8) | 0.035 | 28.363 | 0.108 | 9.301 | 0.108 | 9.301 |
Grain yield per unit area (X9) | 0.238 | 4.210 | 0.103 | 9.751 | 0.068 | 14.751 |
Engel’s coefficient of local farmers (X10) | 0.144 | 6.925 | 0.121 | 8.298 | 0.108 | 9.298 |
Non-grain plantation degree (X11) | 0.105 | 9.479 | 0.038 | 26.325 | 0.038 | 26.325 |
Non-agricultural land use degree (X12) | 0.048 | 20.831 | 0.048 | 20.831 | 0.102 | 9.831 |
Urbanization level (X13) | 0.059 | 16.809 | 0.147 | 6.809 | 0.147 | 6.809 |
Local per capita disposable income (X14) | 0.113 | 8.866 | 0.039 | 25.957 | 0.100 | 9.957 |
Variables | Standard Regression Coefficient | |||
---|---|---|---|---|
Rice | Wheat | Maize | ||
The farmers’ residual livelihood ratio (X1) | X1 | −0.186 * | −0.173 * | −0.241 * |
The farmers’ livelihood Simpson Index (X2) | X2 | 0.803 * | 0.057 * | 0.1 * |
Contribution of the primary industry to local GDP (X3) | X3 | −0.762 | −0.222 | −0.256 |
Proportion of primary industry employees in local employees (X4) | X4 | - | - | −0.536 |
Price index of agricultural means of production (X5) | X5 | −0.4 | −0.067 | −0.014 |
The proportion of expenditure on agriculture, forestry, and water resources in the total local public budget (X6) | X6 | - | - | - |
Mechanization input on per unit arable land area (X7) | X7 | −0.431 ** | −0.183 ** | −0.319 ** |
Effective irrigation area (X8) | X8 | - | −0.254 | −0.269 |
Grain yield per unit area (X9) | X9 | −0.458 * | −0.820 * | - |
Engel’s coefficient of local farmers (X10) | X10 | 0.1 * | 0.069 * | 0.124 * |
Non-grain plantation degree (X11) | X11 | −0.653 * | - | - |
Non-agricultural land use degree (X12) | X12 | - | - | −0.014 * |
Urbanization level (X13) | X13 | - | −0.441 | −0.113 |
Local per capita disposable income (X14) | X14 | 0.08 | - | 0.212 |
R2 | 1.00 | 1.00 | 0.813 | |
a-R2 | 0.815 | 0.806 | 0.661 | |
DW | 1.682 | 1.519 | 2.246 | |
F | 3.705 | 2.890 | 2.43 | |
sig | 0.001 | 0.005 | 0.02 |
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Jiang, X.; Yin, G.; Lou, Y.; Xie, S.; Wei, W. The Impact of Transformation of Farmers’ Livelihood on the Increasing Labor Costs of Grain Plantation in China. Sustainability 2021, 13, 11637. https://doi.org/10.3390/su132111637
Jiang X, Yin G, Lou Y, Xie S, Wei W. The Impact of Transformation of Farmers’ Livelihood on the Increasing Labor Costs of Grain Plantation in China. Sustainability. 2021; 13(21):11637. https://doi.org/10.3390/su132111637
Chicago/Turabian StyleJiang, Xilong, Guanyi Yin, Yi Lou, Shuai Xie, and Wei Wei. 2021. "The Impact of Transformation of Farmers’ Livelihood on the Increasing Labor Costs of Grain Plantation in China" Sustainability 13, no. 21: 11637. https://doi.org/10.3390/su132111637
APA StyleJiang, X., Yin, G., Lou, Y., Xie, S., & Wei, W. (2021). The Impact of Transformation of Farmers’ Livelihood on the Increasing Labor Costs of Grain Plantation in China. Sustainability, 13(21), 11637. https://doi.org/10.3390/su132111637