Adaptation through Climate-Smart Agriculture: Examining the Socioeconomic Factors Influencing the Willingness to Adopt Climate-Smart Agriculture among Smallholder Maize Farmers in the Limpopo Province, South Africa
Abstract
:1. Introduction
2. Research Methodology
2.1. Description of the Study Areas
2.2. Research Design
2.2.1. Sampling Method (s) and Sample Size
- Ga-Makanye (n) =
- Gabaza (n) =
- Giyani (n) =
2.2.2. Data Collection
2.2.3. Model Specification
- is considered the variable that explains the decision to adopt CSA by smallholder maize farmers;
- is the variable that is observed adoption decision and takes the value of 1 if the smallholder farmer is willing to adopt at least three CSA practices; it is 0 if otherwise;
- is a dormant variable used to describe the decision on factors affecting the adoption of CSA practices;
- is observable variable of adoption measured as the number of CSA practices to adopt;
- C and X gives the direction for independent variables for the decision to adopt;
- and are the parameters to be estimated.
2.2.4. Analytical Techniques
Descriptive Statistics
Double-Hurdle Regression Model
Contingent Valuation Method
3. Results
3.1. Descriptive Results
3.1.1. Smallholder Maize Farmers’ Willingness to Adopt CSA in Ga-Makanye, Gabaza, and Giyani
3.1.2. Measures of Dispersion of the Sampled Smallholder Maize Farmers in Ga-Makanye, Gabaza, and Giyani
3.2. Econometric Results
3.2.1. Test for Multicollinearity
3.2.2. First Hurdle: Probit Regression Model of Results of Sampled Smallholder Maize Farmers in Ga-Makanye, Gabaza, and Giyani (n = 209)
3.2.3. Second Hurdle: Probit Regression Model of Results of Sampled Smallholder Maize Farmers in Ga-Makanye, Gabaza, and Giyani (n = 209)
4. Discussion
5. Conclusions and Recommendations
Author Contributions
Funding
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Dependent Variable | Description and Unit of Measurement | ||
---|---|---|---|
Willingness to adopt CSA | WTA*i | Binary: 1 = farmer is willing to adopt climate-smart agriculture 0 = otherwise | |
Variable label | Variable type | Description | Expected sign |
Farm size (FS) | Continuous | Size of the farm in hectares | +/- |
Educational level (EL) | Continuous | Number of years spend in school | + |
Gender (GND) | Dummy | 1 = if the farmer is a female, 0 = otherwise | + |
Age (AG) | Continuous | Age of the farmers in years | +/- |
Agricultural experience (AE) | Continuous | Number of years practicing agriculture | +/- |
Household size (HS) | Continuous | Number of household members | +/- |
Income diversification (ID) | Dummy | 1 = farmer diversify their level of income, 0 = otherwise | + |
Crop diversification (CD) | Dummy | 1 = farmer diversify their crop production, 0 = otherwise | + |
Access to extension services (AES) | Dummy | 1 = farmer has access to extension services, 0 = otherwise | + |
Information about climate-smart agriculture (ICSA) | Dummy | 1 = farmer has access to information, 0 = otherwise | + |
Exposure of the farm to climate risks (E) | Dummy | 1 = farmer is exposed to climate risks, 0 = otherwise | + |
Sensitivity to climate risks (S) | Dummy | 1 = farmer is sensitive to climate risks, 0 = otherwise | +/- |
Insurance (IS) | Dummy | 1 = farmer has insurance, 0 = otherwise | - |
Cooperative membership (CM) | Dummy | 1 = farmer is cooperative member, 0 = otherwise | +/- |
Socioeconomic Variable | Ga-Makanye (%) | Gabaza (%) | Giyani (%) |
---|---|---|---|
Gender | |||
Female | 50 | 77 | 70.8 |
Male | 50 | 23 | 29.2 |
Educational level | |||
No education | 15.4 | 33.3 | 42.7 |
Primary | 26.9 | 24.1 | 35.4 |
Secondary | 42.3 | 27.6 | 11.5 |
Tertiary | 15.4 | 14.9 | 10.4 |
Access to extension services | 59.3 | 66.7 | 49 |
Access to Information about CSA | 50 | 44.8 | 45.8 |
Exposure to climate risks | 85 | 86 | 85 |
Sensitivity to climate risks | 73 | 63 | 67 |
Socioeconomic Variable | Mean | St. Deviation | Min | Max | t-Test (Sig. 2-Tailed) |
---|---|---|---|---|---|
Age (years) | 60 | 18.57 | 21 | 83 | 51.7 ** |
Experience (years) | 24 | 20.59 | 3 | 70 | 78.9 ** |
Household size (per head) | 5 | 2.21 | 2 | 11 | 93.2 ** |
Farm size (hectares) | 4 | 4.63 | 0, 50 | 19 | 60.7 ** |
Socioeconomic Variable | Mean | St. Deviation | Min | Max | t-Test (Sig. 2-Tailed) |
---|---|---|---|---|---|
Age (years) | 67 | 14.75 | 23 | 94 | 37.9 ** |
Experience (years) | 25 | 19.57 | 1 | 75 | 16.2 ** |
Household size (per head) | 5 | 3.04 | 1 | 14 | 28.5 ** |
Farm size (hectares) | 2 | 1.20 | 0.25 | 8 | 60.3 ** |
Socioeconomic Variable | Mean | St. Deviation | Min | Max | t-Test (Sig. 2-Tailed) |
---|---|---|---|---|---|
Age (years) | 64 | 13.75 | 30 | 85 | 17.0 ** |
Experience (years) | 27 | 16.04 | 12 | 50 | 95.9 ** |
Household size (per head) | 6 | 2.37 | 0 | 12 | 3.2 ** |
Farm size (hectares) | 2 | 1.99 | 0.25 | 12 | 78.7 ** |
Explanatory Variables | Collinearity Statistics | |
---|---|---|
VIF | 1/VIF | |
Farm size (in hectares) | 1.097 | 0.911 |
Educational level | 1.805 | 0.554 |
Gender of a maize farmer | 1.069 | 0.935 |
Agricultural experience | 1.900 | 0.526 |
Household size | 1.058 | 0.945 |
Income diversification | 1.332 | 0.750 |
Crop diversification | 1.200 | 0.833 |
Access to extension services | 1.169 | 0.855 |
Information about CSA | 1.201 | 0.833 |
Exposure to climate risks | 1.263 | 0.792 |
Sensitivity to climate risks | 1.335 | 0.749 |
Farmers’ cooperative membership | 1.033 | 0.968 |
Mean VIF | 1.2885 |
Coef. | Std. Err. | Z | p ≤ z | |
---|---|---|---|---|
Farmers’ characteristics | ||||
Constant | 0.3029 | 0.7824 | 0.39 | 0.700 |
Farm size (FS) | 0.0038 | 0.0504 | 0.07 | 0.940 |
Education (EL) | 0.2961 ** | 0.1365 | 2.17 | 0.030 |
Gender (GND) | 0.0518 | 0.2358 | 0.22 | 0.826 |
Age (AGE) | −0.0009 | 0.0099 | −0.09 | 0.928 |
Agricultural Experience (AE) | −0.1621 ** | 0.0072 | 2.26 | 0.024 |
Household size (HS) | −0.0726 ** | 0.0378 | −1.92 | 0.055 |
Vulnerability indicators | ||||
Exposure to climate risks (E) | 0.4800 | 0.3087 | 1.55 | 0.120 |
Sensitivity to climate risks (S) | −0.1833 | 0.2387 | −0.77 | 0.442 |
Factors influencing Willingness to adopt Climate-Smart Agriculture | ||||
Income diversification (ID) | 0.2923 | 0.2363 | 1.24 | 0.216 |
Crop diversification (CD) | 0.4276 ** | 0.2231 | 1.92 | 0.055 |
Access to extension services (AES) | −0.2294 | 0.2167 | −1.06 | 0.290 |
Information about CSA (ICSA) | 0.5034 ** | 0.2199 | 2.29 | 0.022 |
Cooperative membership (CM) | −0.1346 | 0.2602 | −0.52 | 0.605 |
Number of observations = 209 | ||||
Log Likelihood −105.66451 Likelihood Ratio Chi2 (13) = 55.71 Chi square (p) = <0.001 *** |
Parameter. | Coef. | Std. Err. | T | p > |t| | |
---|---|---|---|---|---|
Farmers’ characteristics | |||||
Constant | 1.0396 | 0.6622 | 1.57 | 0.118 | |
Farm size (FS) | 0.0022 | 0.0428 | 0.05 | 0.959 | |
Educational Level (EL) | 0.2816 ** | 0.1191 | 2.36 | 0.019 | |
Gender (GND) | 0.0421 | 0.1956 | 0.21 | 0.830 | |
Age (AGE) | 0.0004 | 0.0085 | 0.06 | 0.956 | |
Agricultural Experience (AE) | −0.0134 ** | 0.0061 | −2.21 | 0.029 | |
Household size (HS) | −0.0061 ** | 0.0309 | −1.95 | 0.052 | |
Vulnerability indicators | |||||
Exposure to climate risks (E) | 0.4047 | 0.2611 | 1.55 | 0.123 | |
Sensitivity to climate risks (S) | −0.1463 | 0.2051 | −0.76 | 0.476 | |
Factors influencing Willingness to adopt Climate-Smart Agriculture | |||||
Income diversification (ID) | 0.2630 | 0.2003 | 1.31 | 0.191 | |
Crop diversification (CD) | 0.3881 ** | 0.1866 | 2.08 | 0.039 | |
Access to extension services (AES) | −0.1846 | 0.1806 | −1.02 | 0.308 | |
Information about CSA (ICSA) | 0.4355 ** | 0.1888 | 2.31 | 0.022 | |
Number of observations = 209 | |||||
Pearson Goodness-of-Fit Test Likelihood Ratio Chi-Square (12) | Chi- Square | Log Likelihood | Sig. | ||
57.28 | −161.172 | <0.001 *** |
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Machete, K.C.; Senyolo, M.P.; Gidi, L.S. Adaptation through Climate-Smart Agriculture: Examining the Socioeconomic Factors Influencing the Willingness to Adopt Climate-Smart Agriculture among Smallholder Maize Farmers in the Limpopo Province, South Africa. Climate 2024, 12, 74. https://doi.org/10.3390/cli12050074
Machete KC, Senyolo MP, Gidi LS. Adaptation through Climate-Smart Agriculture: Examining the Socioeconomic Factors Influencing the Willingness to Adopt Climate-Smart Agriculture among Smallholder Maize Farmers in the Limpopo Province, South Africa. Climate. 2024; 12(5):74. https://doi.org/10.3390/cli12050074
Chicago/Turabian StyleMachete, Koketso Cathrine, Mmapatla Precious Senyolo, and Lungile Sivuyile Gidi. 2024. "Adaptation through Climate-Smart Agriculture: Examining the Socioeconomic Factors Influencing the Willingness to Adopt Climate-Smart Agriculture among Smallholder Maize Farmers in the Limpopo Province, South Africa" Climate 12, no. 5: 74. https://doi.org/10.3390/cli12050074
APA StyleMachete, K. C., Senyolo, M. P., & Gidi, L. S. (2024). Adaptation through Climate-Smart Agriculture: Examining the Socioeconomic Factors Influencing the Willingness to Adopt Climate-Smart Agriculture among Smallholder Maize Farmers in the Limpopo Province, South Africa. Climate, 12(5), 74. https://doi.org/10.3390/cli12050074