Factors Influencing the Adoption of Agricultural Machinery by Chinese Maize Farmers
Abstract
:1. Introduction
2. Materials and Methods
2.1. Data Source
2.2. Research Study Design
2.3. Theoretical Framework
3. Results and Discussion
3.1. Descriptive Statistics
3.2. Empirical Results
4. Conclusions
- (I)
- Moderate scale production
- (II)
- Crop diversification
- (III)
- Subsidizing agricultural machinery and its extension education
- (IV)
- Land consolidation
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Agricultural Technology | Country | Target Group | Method of Analysis | Factors Affect the Adoption | References |
---|---|---|---|---|---|
Rotary cultivator for plowing | China | Maize farmers | A control function approach with an instrumental variable | Education (−), Household size (−), Extension contact (+), Transportation condition (+), Access to credit (+), Irrigation (+), Farm size (+), Pesticide costs (+), Fertilizer costs (+), Seed costs (−) | [11] |
Several farm machines which can be used in maize production and postharvest management | China | Maize farmers | Bivariate ordered probit model and endogeneity-corrected ordinary least square regression model | Gender (−), Household size (−), Farm size (+), Soil fertility (+), Subsidy (+) | [4] |
Mechanization services | China | Maize farmers | Multivariable probit model | Number of family members, Number of parcels, The distance to township, Off-farm employment (+), Age (+) | [9] |
Total machinery horsepower used in plowing, sowing, and harvesting | China | Wheat farmers and maize farmers. | Ordinary least squares (OLS) with instrumental variables (IV) | Land fragmentation (−), Total operating area (+), Machinery price (−), | [7] |
Agricultural machines for pesticide application | China | Maize farmers | Endogenous switching regression model | Gender (−), Risk preference (−), Transportation condition (+), Subsidy (+), Extension contact (+) | [10] |
Three soil conservation practices | Spain | Olive farmers | Multivariate probit model | Olive grove area (+), Family labor force (−), Belong to an irrigation district (+), Farm profitability (+) | [12] |
Conservation tillage, compost, and chemical fertilizer | Ethiopia | Wheat farmers, barley farmers, and teff farmers | Trivariate probit model | Male (+), Age (−), Labor (+), Extension (+), Farmer organizations (+), Farm size (+), Plot ownership (+), Plot slope (−) | [13] |
Variables | Definitions | Mean | Std. Dev. |
---|---|---|---|
Dependent variables | |||
Mechanical plowing | 1 if the farm used machines for plowing in maize production; 0 otherwise | 0.580 | 0.494 |
Mechanical seeding | 1 if the farm used machines for seeding in maize production; 0 otherwise | 0.439 | 0.496 |
Mechanical harvesting | 1 if the farm used machines for harvesting in maize production; 0 otherwise | 0.467 | 0.499 |
Mechanical spraying | 1 if the farm used machines for pesticide spraying in maize production; 0 otherwise | 0.178 | 0.383 |
Explanatory variables | |||
Maize sowing area | Total areas of maize growing in the farm (mu) | 6.487 | 12.650 |
Number of discrete fields in the farm | Number of discrete fields in the farm used for agricultural production | 5.754 | 6.157 |
Arable land area | Total areas of arable land in the farm (mu) | 10.001 | 19.446 |
Crop diversity | Number of crops produced on the farm | 2.727 | 1.648 |
Family labor | Number of people participating in agricultural production in the family | 1.961 | 0.822 |
Subsidy | 1 if the farm received a subsidy to support agricultural production; 0 otherwise | 0.763 | 0.425 |
Technical assistance | 1 if the farm received technical assistance for agricultural production; 0 otherwise | 0.100 | 0.300 |
Economies of scale | Total value of agricultural output by the farm (unit: 1000 yuan) | 12.907 | 36.084 |
Southwest | 1 if the farm is located in Sichuan, Chongqing, Guizhou, or Yunnan; 0 otherwise | 0.248 | 0.432 |
Northeast | 1 if the farm is located in Liaoning, Jilin, or Heilongjiang; 0 otherwise | 0.181 | 0.385 |
North | 1 if the farm is located in Beijing, Tianjin, Hebei, or Inner Mongolia; 0 otherwise | 0.128 | 0.334 |
Yellow-Huai River Valley | 1 if the farm is located in Shanxi, Shandong, Henan, Shaanxi, Anhui, or Jiangsu; 0 otherwise | 0.299 | 0.458 |
Northwest | 1 if the farm is located in Gansu or Ningxia; 0 otherwise | 0.055 | 0.228 |
South | 1 if the farm is located in Guangxi, Hainan, Hunan, Hubei, or Zhejiang; 0 otherwise | 0.089 | 0.285 |
Number of observations | 4165 |
Adoption Rates of Machinery Technologies in Six Agroecological Maize Regions | Overall | ||||||
---|---|---|---|---|---|---|---|
Southwest | Northeast | North | Yellow-Huai River Valley | Northwest | South | ||
Mechanical plowing | 13.74% | 22.43% | 16.80% | 35.10% | 6.66% | 5.26% | 58.01% |
Mechanical seeding | 2.13% | 25.45% | 21.46% | 42.42% | 7.17% | 1.37% | 43.87% |
Mechanical harvesting | 10.84% | 20.85% | 18.13% | 38.42% | 5.75% | 6.01% | 46.75% |
Mechanical spraying | 6.74% | 48.92% | 13.21% | 24.53% | 4.45% | 2.16% | 17.82% |
ρ | Std. Err. | ||
---|---|---|---|
Mechanical seeding vs. Mechanical plowing | ρ21 | 0.621 *** | 0.021 |
Mechanical harvesting vs. Mechanical plowing | ρ31 | 0.524 *** | 0.022 |
Mechanical spraying vs. Mechanical plowing | ρ41 | 0.483 *** | 0.030 |
Mechanical harvesting vs. Mechanical seeding | ρ32 | 0.725 *** | 0.017 |
Mechanical spraying vs. Mechanical seeding | ρ42 | 0.448 *** | 0.030 |
Mechanical spraying vs. Mechanical harvesting | ρ43 | 0.337 *** | 0.030 |
Likelihood ratio test | ρ21 = ρ31 = ρ41 = ρ32 = ρ42 = ρ43 = 0 (H0); χ2 (6) = 1772.26 *** |
Variables | Mechanical Plowing | Mechanical Seeding | Mechanical Harvesting | Mechanical Spraying | ||||
---|---|---|---|---|---|---|---|---|
Coeff. | Std. Err. | Coeff. | Std. Err. | Coeff. | Std. Err. | Coeff. | Std. Err. | |
Maize sowing area | 0.003 | (0.005) | 0.019 *** | (0.004) | 0.021 *** | (0.004) | 0.025 *** | (0.003) |
Number of discrete fields in the farm | −0.003 | (0.004) | −0.020 *** | (0.005) | −0.012 *** | (0.004) | −0.016 *** | (0.006) |
Arable land area | 0.016 *** | (0.004) | 0.004 | (0.003) | 0.002 | (0.002) | 0.000 | (0.002) |
Crop diversity | 0.031 ** | (0.015) | 0.002 | (0.018) | 0.078 *** | (0.015) | 0.069 *** | (0.020) |
Family labor | 0.107 *** | (0.026) | 0.084 *** | (0.028) | 0.074 *** | (0.026) | 0.000 | (0.031) |
Subsidy | 0.478 *** | (0.050) | 0.397 *** | (0.057) | 0.546 *** | (0.052) | 0.119 * | (0.066) |
Technical assistance | 0.245 *** | (0.072) | 0.067 | (0.076) | 0.108 | (0.069) | 0.193 ** | (0.079) |
Economies of scale | 0.001 * | (0.001) | 0.002 *** | (0.001) | 0.001 ** | (0.001) | 0.000 | (0.001) |
Northeast | 0.775 *** | (0.080) | 1.450 *** | (0.096) | 0.589 *** | (0.081) | 1.300 *** | (0.102) |
North | 1.141 *** | (0.081) | 2.039 *** | (0.097) | 1.186 *** | (0.081) | 0.669 *** | (0.104) |
Yellow-Huai River Valley | 0.876 *** | (0.061) | 1.760 *** | (0.080) | 1.014 *** | (0.064) | 0.539 *** | (0.088) |
Northwest | 0.907 *** | (0.102) | 1.671 *** | (0.108) | 0.722 *** | (0.097) | 0.531 *** | (0.124) |
South | 0.038 | (0.080) | 0.138 | (0.112) | 0.325 *** | (0.082) | −0.073 | (0.131) |
Constant | −1.215 *** | (0.093) | −1.983 *** | (0.117) | −1.614 *** | (0.097) | −1.940 *** | (0.128) |
Wald χ2 (52) | 2090.25 *** | |||||||
Log pseudo-likelihood | −7506.263 | |||||||
Replications | 200 | |||||||
Number of observations | 4165 |
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Quan, X.; Doluschitz, R. Factors Influencing the Adoption of Agricultural Machinery by Chinese Maize Farmers. Agriculture 2021, 11, 1090. https://doi.org/10.3390/agriculture11111090
Quan X, Doluschitz R. Factors Influencing the Adoption of Agricultural Machinery by Chinese Maize Farmers. Agriculture. 2021; 11(11):1090. https://doi.org/10.3390/agriculture11111090
Chicago/Turabian StyleQuan, Xiuhao, and Reiner Doluschitz. 2021. "Factors Influencing the Adoption of Agricultural Machinery by Chinese Maize Farmers" Agriculture 11, no. 11: 1090. https://doi.org/10.3390/agriculture11111090
APA StyleQuan, X., & Doluschitz, R. (2021). Factors Influencing the Adoption of Agricultural Machinery by Chinese Maize Farmers. Agriculture, 11(11), 1090. https://doi.org/10.3390/agriculture11111090