Determinant Indicators for Assessing the Adaptive Capacity of Agricultural Producers to Climate Change
Abstract
:1. Introduction
2. Materials and Methods
3. Results
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Author | Method | Level/Sector | Synthesis |
---|---|---|---|
Juhola, S. and Kruse S., 2013 | An aggregate index was designed from a set of variables and a weighted average was calculated at the dimension level. The Delphi method is used, and it is qualified using government data and statistics. | Pan-European assessment of adaptive capacity and an assessment of the adaptive capacity of the tourism sector in the European Alps | 5 dimensions 15 indicators Source: Prepared by the authors based on Greiving et al., 2011 |
Defiesta and Rapera, 2014 | Through a process of analytical hierarchy and expert judgment, the indicators were weighted. | Agricultural sector | 5 dimensions 19 indicators Source: Prepared by the authors |
Lam et al., 2014 | A vulnerability index was designed by combining the different variables representing the three dimensions using an arbitrary weighting scheme. To validate the derived vulnerability index, a regression analysis was performed between the actual damage data (dependent variable) and the predictor variables representing the three dimensions of vulnerability. The weights were revised according to the resultant regression coefficients, and the vulnerability index was recalculated and compared. | Coastal hazards in the Caribbean Region | 3 dimensions 6 indicators Source: Prepared by the authors based on Yusuf y Francisco, 2009; Brito y Arenas, 2009 |
Chen, 2014 | Descriptive data analysis was performed for all indicators. Correlation analysis and cluster analysis were used to determine the relationships between the different components of the AC index. | China’s adaptive capacity to climatic variability and climate-related disasters, both at a national level and in a regionally | 5 dimensions 46 indicators Source: Prepared by the authors based on Graedel et al. (2012) |
Ruiz Meza L. E., 2015 | Participatory methodology: interviews and participatory research workshops were used. | Adaptive capacity of small-scale coffee farmers to climate change impacts (Chiapas, Mexico) | 3 dimensions 18 indicators Source: Prepared by the authors based on Wehbe et al., 2005 |
Lockwood, 2015 | They developed psychometric scales for these dimensions and tested their internal consistency (reliability) and validity (how well the measures define the construct) using factor analysis. | Agricultural landscape in Australia | 4 dimensions 14 indicators Source: Prepared by the authors |
Nhuan, 2016 | They developed a survey based on the indicators approach to assess AC. Household survey data were processed using descriptive statistical methods, principal component analysis (PCA) and multiple linear regression analysis. | The adaptive capacity of urban households: The case of Da Nang city, Central Vietnam | 6 dimensions 17 indicators Source: Prepared by the authors |
Araya-Muñoz et al., 2016 | They created a general framework of indicators, standardized, and aggregated using fuzzy logic, and performed a sensitivity, uncertainty, and correlation analysis to assess robustness, using fuzzy overlay in ArcGIS 10. | Assessing urban adaptive capacity to climate change (Chile) | 6 dimensions 17 indicators Source: Prepared by the authors based on Acosta et al., 2013 |
Abdul-Razak Majeed and Kruse Sylvia, 2017 | Validation of determinants and indicators through interviews with experts. Ranking for each determinant and indicator was determined by the average of the ranking scores assigned to each one by all the experts. | Adaptive capacity to climate change of smallholder farmers (Northern Region of Ghana) | 6 dimensions 22 indicators Source: Prepared by the authors based on 22 authors |
Li Mengping et al., 2017 | Pearson’s correlation analysis to test the complementarity and substitution between indicators. Standardized regression coefficient and factor analysis to integrate complementary capital indicators, and a contribution rate of each factor was used to calculate the AC. | Adaptive capacity of apple farmers to drought events by impact of climate change (Loess Plateau, China). | 6 dimensions 13 indicators Source: Prepared by the authors based on Bryan et al., 2015; Huai, 2016a; Sharp, 2003 |
Monterroso R. A. and Conde C., 2017 | Standardization and normalization of the variables of each indicator. An AC index was estimated for each municipality and the final range of values was divided into five groups according to the geometric distribution of the frequencies of values. | Assesses the adaptive capacity of Mexican municipalities to address climate change | 4 dimensions 19 indicators Source: Prepared by the authors |
Holland, 2017 | An AC index was created, the variables were selected through interviews with 109 experts and 3 indicator validation workshops were held. | Mapping adaptive capacity and smallholder agriculture (Central America) | 5 dimensions 14 indicators Source: Prepared by the authors |
Hoan N., 2019 | Qualitative methods: it was based on rating motivation and abilities (MOTA). An AC index was designed based on farmers’ motivation and abilities and semi-structured interviews were conducted to assess the perception, motivation and capacity of farmers. | Assessing the adaptive capacity of farmers under the impact of saltwater intrusion by effect to climate change (Vietnamese Mekong Delta) | 3 dimensions 6 indicators 14 sub indicators Source: Prepared by the authors based on Fogg, 2009 |
Zanmassou Y. et al., 2020 | Five groups of indicators were created based on the five capitals, the data were normalized and two weighting schemes were used to combine the indicators in a composite index: equal weighting and expert judgment. In order to analyze the consistency of the uncertainty, a Monte Carlo simulation was performed. | Assessment of smallholder farmers’ adaptive Capacity to climate change (Benin, Africa) | 6 dimensions 22 indicators Source: Prepared by the authors based on 11 authors |
Matewos T., 2020 | Mixed research: qualitative and quantitative data were collected. Cross-sectional household surveys, key informant interviews and focus group discussions were used to collect relevant data. | Local adaptive capacity to climate change in drought prone (districts of rural Sidama, Ethiopia) | 5 dimensions 14 indicators Source: Prepared by authors based on Ludi et al., 2011 |
W. Chepkoech, et al., 2020 | They conducted an expert online rating survey (n = 35). The Kruskal-Wallis H test and a t-test were used to test the independence of AC scores and the access to existing resources. | Adaptive capacity of smallholder African indigenous vegetable farmers to climate change (Kenya) | 5 dimensions 20 indicators Source: Prepared by authors based on Abdul-Razak and Kruse (2017), Defiesta and Rapera (2014), Eakin and Bojorquez Tapia (2008). |
Abbas Khan N. et. al., 2020 | Data were acquired through a farm-level survey, and the variables obtained were grouped into three clusters. Principal component analysis was applied as an exploratory analysis. The data were normalized and weights were assigned to each variable according to expert judgment and the AC Index was calculated. | Mapping rice farmers’ adaptive capacity of Agricultura (rice farmers) | 3 dimensions 11 indicators Source: Prepared by the authors based on Sendhil R. et al., 2018 |
Choden, 2020 | Households selected through simple random sampling were surveyed on perception of changes in climate and on available capital assets. A factor analysis was performed using Varimax with Kaiser normalization rotation and a Principal Component Analysis (PCA). | Assessment of adaptive capacity to climate change at household and village-levels. (Nikachu, Bután) | 6 dimensions 19 indicators Source: Prepared by the authors |
Putri, 2020 | Through interviews with key informants selected through purposive sampling and an AC index was created. | Community adaptive capacity (Semarang, Indonesia) | 5 dimensions 7 indicators Source: Prepared by the authors |
Parveen, 2022 | A tree of decision criteria was built, the criteria were standardized on a 0–1 scale range and finally a climate change vulnerability assessment was conducted. | Climate change vulnerability assessment: a case study in the Indian | 3 dimensions 10 indicators Source: Prepared by authors based on 10 authors |
Indicator | Clarity | Relevance | Monitoring | Weighted Sum Value |
---|---|---|---|---|
I1. Percentage of farmers with various sources of income in the study region | 2 | 2 | 2 | 2 |
I2. Percentage of farmers with ownership rights to their plot(s) in the study region (locality, municipality) | 2 | 2 | 2 | 2 |
I3. Percentage of farmers with access to credit or financing in the study region | 2 | 1.8 | 1.9 | 1.9 |
I4. Percentage of farmers who have agricultural insurance in the study region | 2 | 1.6 | 1.9 | 1.83 |
I5. Percentage of farmers (head of household) who can read/write in the study region | 2 | 2 | 2 | 2 |
I6. Proportion of farmer household members (aged 6 to 24 years) currently attending school | 2 | 2 | 2 | 2 |
I7. Proportion of farmers who have received technical assistance or training in the last 5 years | 2 | 2 | 2 | 2 |
I8. Number of years (average) of experience in agricultural production of farmers in the study region | 2 | 2 | 2 | 2 |
I9. Percentage of farmers who have experienced changes due to climatic events (in their production unit or in the study area) | 1.7 | 2 | 2 | 1.9 |
I10. Percentage of farmers in the region with irrigation technology for agricultural production | 2 | 2 | 2 | 2 |
I11. Percentage of people in the region with machinery to carry out agricultural activities | 2 | 1.9 | 2 | 1.97 |
I12. Proportion of farmers in the region that have information and communication technology for productive activities | 2 | 1.9 | 2 | 1.97 |
I13. Degree of accessibility to paved roads in the region (locality/municipality) | 2 | 2 | 2 | 2 |
I14. Farmers in the study region (locality, municipality) participating in a primary sector organization | 2 | 2 | 2 | 2 |
I15. Farmers in the region (locality, municipality) who participate in a social or community organization | 2 | 2 | 2 | 2 |
I16. Degree of institutional capacity of the municipality/state to cope with climate change | 2 | 2 | 1.5 | 1.83 |
I17. Forest cover of the study region (locality/municipality) | 2 | 1.9 | 1.7 | 1.87 |
I18. Availability of water per capita in the state | 2 | 2 | 1 | 1.67 |
I19. Degree of soil quality in the study region | 2 | 2 | 0.9 | 1.63 |
Dimension | Specific Dimension | Indicator |
---|---|---|
D1. Economic resources | SD1. Sources of income | I1. Percentage of farmers with various sources of income in the study region |
SD2. Land tenure and ownership | I2. Percentage of farmers with ownership rights to their plot(s) in the study region (locality, municipality) | |
SD3. Access to credit/insurance | I3. Percentage of farmers with access to credit or financing in the study region | |
I4. Percentage of farmers who have agricultural insurance in the study region | ||
D2. Human resources | SD4. Education | I5. Percentage of farmers (head of household) who can read/write in the study region |
I6. Proportion of farmer household members (aged 6 to 24 years) currently attending school | ||
SD5. Training | I7. Proportion of farmers who have received technical assistance or training in the last 5 years | |
SD6. Agricultural experience | I8. Number of years (average) of experience in agricultural production of farmers in the study region | |
SD7. Perception of climate change | I9. Percentage of farmers who have experienced changes due to climatic events (in their production unit or in the study area) | |
D3. Infrastructure for production and marketing | SD8. Technology for production | I10. Percentage of farmers in the region with irrigation technology for agricultural production |
I11. Percentage of people in the region with machinery to carry out agricultural activities | ||
I12. Proportion of farmers in the region that have information and communication technology for productive activities | ||
SD9. Accessibility to roads | I13. Degree of accessibility to paved roads in the region (locality/municipality) | |
D4. Social capital | SD10. Organization | I14. Farmers in the study region (locality, municipality) participating in a primary sector organization |
I15. Producers in the region (locality, municipality) who participate in a social or community organization | ||
D5. Institutionality | SD11. Institutional capacity | I16. Degree of institutional capacity of the municipality/state to cope with climate change |
D6. Natural resources | SD12. Forest use | I17. Forest cover of the study region (locality/municipality) |
SD13. Water | I18. Availability of water per capita in the state | |
SD14. Soil | I19. Degree of soil quality in the study region |
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Maldonado-Méndez, M.d.L.; Romo-Lozano, J.L.; Monterroso-Rivas, A.I. Determinant Indicators for Assessing the Adaptive Capacity of Agricultural Producers to Climate Change. Atmosphere 2022, 13, 1114. https://doi.org/10.3390/atmos13071114
Maldonado-Méndez MdL, Romo-Lozano JL, Monterroso-Rivas AI. Determinant Indicators for Assessing the Adaptive Capacity of Agricultural Producers to Climate Change. Atmosphere. 2022; 13(7):1114. https://doi.org/10.3390/atmos13071114
Chicago/Turabian StyleMaldonado-Méndez, María de Lourdes, José Luis Romo-Lozano, and Alejandro Ismael Monterroso-Rivas. 2022. "Determinant Indicators for Assessing the Adaptive Capacity of Agricultural Producers to Climate Change" Atmosphere 13, no. 7: 1114. https://doi.org/10.3390/atmos13071114
APA StyleMaldonado-Méndez, M. d. L., Romo-Lozano, J. L., & Monterroso-Rivas, A. I. (2022). Determinant Indicators for Assessing the Adaptive Capacity of Agricultural Producers to Climate Change. Atmosphere, 13(7), 1114. https://doi.org/10.3390/atmos13071114