Smallholder farmers in Namutumba district draw on a combination of adaptation strategies to respond to effects of climate variability. However, there is limited scholarly evidence and explanation that has been conducted on the factors that influence the choice of alternative sets of strategies that smallholder farmers use in response to climate variability specific stress and literature that disentangles climatic stressors specific adaptation options. A multi-stage sampling procedure was employed to select the study area and household respondents. The study used cross-sectional research design to collect both quantitative and qualitative data. Household data was collected from 160 respondents with a structured questionnaire supported by key informant interviews. Multinomial logit modeling (MNL) was used to determine the relative influence of selected household socio-demographic factors on the choice of adaptation strategies against the dry spell. Principal Components Analysis (PCA) was used to create weighted adaptation index for categorizing various similar adaptation strategies. In order to respond to the impact of climate variability stresses, smallholder farmers have adapted growing drought-resistant crops (12.2%), extension of the agricultural frontier into wetlands during the dry spells (37%), whereas use of crop rotation (9.8%) is the most dominant strategies used to manage pest and diseases, similarly soil and water conservation (15.3%) and climate-smart planning basin (11%) are the most dominant adaptation strategies use to manage flood. Empirical results from multinomial logit modeling showed that predictor variables gender, level of education, years of farming, house size, access to credit, and own radio have a significant influence on the choice of adaptation strategies with differences significant level during the dry spell. The study recommends that future policies should focus on strengthening the existing extension training package, strengthening the existing farmer’s groups and cooperatives, encouraging informal social networks in order to boost smallholder farmers’ adaptation to climate variability.
The climate has changed, is changing, and will continue to change regardless of what investments in it mitigation are made [
Like in the other sub-Saharan countries, most smallholder farmers households in Uganda depend on cereals (most especially, maize) as a contributing; if not principal, the source of food and nutrition [
There are however several efforts by smallholder farmers to reduce climate variability challenges by adapting to strategies that include but are not limited to sharing of indigenous and improved technological knowledge on crop diversification, switching crops, irrigation, crop rotation, mulching, integrated pest management, agroforestry systems, water and soil conservation, better crop management and use of improved crop varieties among others [
The study was conducted in Magada, Bulange, Namutumba, and Ivukula Sub County of Namutumba district as show in
By considering the time and logistic constraints into account the study employed a cross-sectional survey research design in order to assess the overall activities at one shot as described by [
Secondly, four sub-counties were selected district based on the fact that they were identified the most vulnerable counties to the impacts of climate variability in Namutumba district. Two parishes were selected from each sub-county making a total of 8 parishes in all the 4 sub-counties, also purposively, basing on information that was obtained from the local leaders regarding the parishes that have suffered more from climatic shocks like floods and drought in the last ten years. From each of the 8 parishes, two villages were selected randomly from each of the parishes to make a total of 16 villages due to their agricultural production potential. Then a sample of households was selected from each of the 16 villages using proportionality sampling to the size of the population.
In this study, both qualitative and quantitative data from primary and secondary sources were used. Primary data were collected from the sampled respondents on different issues such as household characteristics observed changed in climate variability stresses, adaptation strategies employed to deal with specific climate variability stress and all other variables hypothesized to influence the choice of adaptation strategies. To have detailed information useful to draw the right conclusion from the survey exercise, qualitative information was also gathered through holding focus group discussion with smallholder farmers from the samples study area. In addition, secondary data were collected from records from different stakeholders particularly the district agricultural offices, and related literature prepared by the government and nongovernmental organization.
A household survey was conducted to assess the adaptation strategies employed by smallholder farmers’ households to the consequences of climate variability stressors. A structured household survey questionnaire was used to carry out household interviews. For a better understanding and facilitation process, the schedule was translated into Lusoga language. Firstly, the household questionnaires were pre-tested before actual data collection at the farm level on 10 randomly selected non-sample households to check their reliability and validity before the ready data collection, this actual help to avoid the ambiguity of some of the questionnaire items. The modification was made to amend some of the questions to make them fit to the context. Training was given for the selected 5 enumerators on the contents of the interview questionnaires and methodology to approach farmers. The survey was conducted under the close supervision and full participation of the researcher. The data collected through household survey were cross-checked with systematic focus group discussion and direct observation aimed at getting a holistic picture of the adaptation strategies of smallholder farmers to climate variability in the area. Household semi-structured questionnaire and interview were employed to determine farmers’ choice factors that influence of adaptation option to climate variability. A structured household interview was used to collect the socio-economic data of the study. The data that was obtained by this method include demographic characteristics of households, farmer’s choice and the decision of adaptation strategies to climate shocks. Structured household interviews were administered to the target respondents using a questionnaire.
To run the multinomial logit model principal component analysis (PCA) was used to reduce the obtained large numbers of adaptation strategies that are correlated with one another and response to the same construct into smaller number of categorized adaptation strategies that will account for most of the variance in the reported adaptation strategies which are used in Multinomial logit.
One of the underlying motivations for the household choice of alternative adaptation strategies to climate variability stresses is to maximize utility from expected earnings from a particular strategy [
U i j = β j X i j + ε i j (1)
where: I = 1 , ⋯ , N are the individual smallholder farmer and j = 1 , ⋯ , J are the Alternative adaptation strategies.
Xij vectors = the factors that influence smallholder farmers’ choice of adaptation practices to climate variability and εij is the random error term. In this model, we guess that smallholder farmers are rational decision makers who maximize the utility from adaptation practices in their farming activities and also predict that farmers face climatic related stresses in their farming activities will look for adaptation practices. If farmer i make choice j adaptation, in particular, we assume that Uij is the maximum utility among the J adaptation strategies.
Prob (Uij > Uik)… for all other k ≠ j, the probability of smallholder farmer chooses a particular alternative j is given by the probability that the utility of that alternative to the farmer is greater than the utility to that farmer of all other alternative J.
This study used the multinomial logit (MNL) model to analyze the factors that driver smallholder farmer choice adaptation strategies because it is widely used in studies involving multiple choices and is easier to compute than multinomial probit (MNP). The merit of using MNL model is its simplicity in calculating the choice probabilities that are expressible in analytical form. The MNL model was used by many researchers to model climate change adaptation of smallholder farmers [
To describe the multinomial logit model, let Y denoted a vector of adaptation strategies for climate variability to chosen by smallholder farmer. Assuming the adaptation method farmers’ choice depends on the socioeconomic characteristic of the farmers’ and access to informal and formal institutions. The Multinomial logit model for the adaptation choice can be specified as a relationship between the probability of choosing a practice and a set of explanatory variables X [
Prob ( Y i = j ) = e β j × i 1 + ∑ k 5 e β K x i ′ , j = 0 , 1 , 2 ⋯ 18 (1)
Equation (1) is normalized to remove indeterminacy in the model by assuming = 0 and the probabilities can be estimated as:
Prob ( Y i = j / x i ) = e β j × i 1 + ∑ k = 0 j e β K x i , j = 0 , 1 , 2 ⋯ J , β 0 = 0 (2)
Maximum likelihood estimates of Equation (2) yield the log-odds ratio
Ln ( δ Р j Р i k ) = x i , ( β i − β k ) = X i − β j ,if = 0 (3)
The dependent variable of any adaptation strategies is, therefore, the log of odd in relation to the base categories.
According to [
δ Р j δ x i = P j ( β i − ∑ k = 0 j P K β j ) = P j ( β j − β ) (4)
The marginal effects, measure the expected change in the probability of a particular choice being made with respect to a unite change in the explanatory variable [
To achieve the second objective on the factors that influence the choice of adaptation strategies by smallholder farmers in study area, the structural form was reduced and the variable fitting in the model as:; Yi = β0 + β1 gender+ β2 marital status + β3 level of education + β5 year of farming + β6 household size + β7 land size + β8 area under crops + β9 access to extension + β10 credit + β11 belong to groups + β12 land tenure + β14 income + β15 own radio + β16 information + β17 training on climate adaptation + e i , where Yi is the number of adaptation strategies smallholder farmer was involved in the explanatory variables.
Smallholder farmers who observed the existence of climate variability had suitably choice and implement one or more adaptation strategies as means to reduce the adverse effects of the climate variability stresses. Results from household survey indicate that smallholder farmers have choice and employed ranges of long-term and short-term adaptation strategies, some of which are inward and outward-looking and might require financial or non-financial resources in order to deal with specific climatic stress such as dry spell, floods, heavy rain, pest and diseases, occurrence of hailstorm in the study area as presented in
Adaptation strategies | Percent responses to climatic stresses | |||
---|---|---|---|---|
Dry spells | Flood | Pest and disease | Heavy rains | |
Building water harvesting structures | 33.8 | 6.9 | 0 | 8.8 |
Building soil and water conservation | 26.3 | 42.5 | 0 | 40 |
Introduce micro-irrigation | 34.5 | 0 | 0 | 0 |
Growing early maturing crop varieties | 67.5 | 24.4 | 52.5 | 22.5 |
Use improve seed | 0 | 0 | 60.6 | 0 |
Growing drought-resistant crop varieties | 81.3 | 0 | 29.4 | 0 |
Use crop rotation | 0 | 1.3 | 83.1 | 5 |
Use inter-cropping | 0 | 1.3 | 68.1 | 9.4 |
Use mixed farming | 64.8 | 30 | 63.8 | 34.4 |
Change crop calendar | 56.9 | 12 | 29.4 | 21.3 |
Mulching | 0.1 | 28.1 | 3.75 | 21.9 |
Use cover crop | 0.2 | 13.1 | 14.4 | 8.8 |
Use of grass strip | 0 | 10.6 | 0.63 | 9.4 |
Temporary migration | 0 | 0 | 0 | 4.4 |
Engaged in off-farm business | 67.5 | 25.6 | 43.8 | 40 |
Sale of labor to another farm | 19.4 | 4.38 | 8.13 | 33.8 |
Growing food security crop | 76.9 | 21.9 | 39.4 | 38.1 |
Use of granary | 5 | 5.63 | 10.6 | 7.5 |
Use of silos/cribs | 3.75 | 0.63 | 1.88 | 0 |
Earlier land preparation | 59.4 | 8.13 | 43.9 | 15.6 |
Climate-smart planting basins | 17.5 | 28.8 | 6.25 | 33.1 |
Cultivate in wetland | 37 | 1.88 | 0 | 23 |
Rearing livestock | 58.1 | 20.6 | 45.6 | 26.9 |
Source: Computed from field survey data, 2016 (multiple responses).
Smallholder farmers also reported the growing of drought tolerant crop varieties, such as cassava. By far, the most effective long-term adaptation strategy employed by farmers is to diversify their income include engaging off-farm activities during dry spell. The farmers during FGDs reported that when you extensively engaged in off-farm activities, such as wage-earning jobs, owning small shops, or selling livestock, you have a better chance to deals with climate-related stresses than their farming neighbors. The farmers were more hesitant to practices mixed farming order to adapt to the unexpected occurrence of a dry spell. This finding agrees with the current discussion about crop diversity in which most smallholder farmers are interested in changing their cropping practices to better suit the current, drier, weather conditions [
Adaptation strategies employed by smallholder farmers during floods include building soil and water conservation structures (42.5%) and water harvesting structures (6.9%) for example building trenches and reservoirs to divert and store runoff water. During the focus group discussion (FGDs) farmers reported building trenches but due to the labor requirements, people only built trenches to protect those areas under crop and home. Many smallholder farmers would like to expand these trench practices to better manage with future floods. One farmer in Madaga Sub County also constructed pools and canals to divert and hold the excess water, but due to the local traditional techniques of construction, these reservoirs usually broke down during heavy rains.
Smallholder farmers reported the use of climate-smart planting basin (
This finding agrees with much of the adaptation strategies literature echoed in Uganda by smallholder farmers in the effort to deal with climate variability-related stresses [
Smallholder farmers were also asked to mention the adaptation strategies they use dealing pests and diseases incidences. The results show that the use of crop rotation (83.1%) emerged as the most used adaptation practices against pests and diseases and the use of intercropping, mulching, abandon the growing of some crops which are easily susceptible pest and disease attacked were some of the practices employed in the area. All these methods are known as integrated pest management that involves the use of different methods in managing pests and disease in crops at a given time. During focus groups discussion with farmers, harvested cereals are also preserved by keeping them above fire places in specially made stores known as Ekyaagi in Lusoga. Farmers, however, acknowledged that cereals stored still get infested by pests. They are not aware of the correct heap width and even for how long the Ekyaagi can be effective, leave alone the amount of heat needed.
As noticed earlier, the majority of the smallholder farmers who choice adaptation strategies engage in multiple combinations of adaptation strategies in response to specific stress. Therefore, in this study, the identified adaptation strategies choose by smallholder farmers in response to climatic stresses were combined into categories with respect to each stress for the convenience of model’s analysis and because of their close relationship. They identify adaptation strategies were attached weight using principal component analysis (PCA). PCA is fundamentally a dimension reduction technique for multivariate data analysis, according to [
Adaptation strategies used during dry spell | Rotated component | Categorization | |||
---|---|---|---|---|---|
1 | 2 | 3 | 4 | ||
Soil and water conservation structures | 0.804* | Soil and water conservation techniques | |||
Water harvesting structures | 0.782* | ||||
Micro-irrigation | 0.560* | ||||
Mixed farming | 0.797* | Diversify multiple occupations | |||
Rearing livestock | 0.681* | ||||
Engaging in off-farm business | 0.605* | ||||
Growing Early maturing crop varieties | 0.797* | ||||
Drought resistant crop varieties | 0.649* | ||||
Improved seeds | 0.534* | ||||
Changing crop calendar | 0.880* | Changing crop calendar | |||
Abandon growing some crops | 0.765* | ||||
Cultivating wetland | −0.718* | Cultivating in wetland | |||
Growing food security crops | 0.728* |
Notes: Rotation method: varimax with Kaiser normalization. * is variable loadings.
Before running the model, different tests which are very essential for multinomial logit model were undertaken. The Multinomial logit model was employed to determine the factors that influence smallholder farmers’ choice of adaptation strategy to climate variability stresses with 21 explanatory variables. The model was fitted into STATA version 12 and tested for multicollinearity. The existence of multicollinearity between the explanatory variable was checked using Variance Inflating Factor (VIF) and correlation matrix methods prior to running the final regression analysis. The results of the test indicate the presence of no severe problem of multicollinearity among the explanatory variables. The rule of thumb for interpreting is that the variance inflation factor should be between 0 and 1. If the VIF is equal to 1 there is no problem of multicollinearity among independent variables, but if the Variance Inflation Factor (VIF) is more than 1, the independent variables might be moderately correlated. A VIF between 5 and 10 specifies high correlation that could be complex [
Therefore the use of the MNL model description was found to be suitable, and model has been used previously by different scholars [
In this subsection,
The Multinomial Logit Model was run taking “No adaptation options” as the base category against which the remaining outcomes are compared with. Given the argument from the literature that parameter estimates of the multinomial logit model provide only the direction of the effect of the independent variable on the dependent variable. Then we go further to compute the magnitude of effect by using strata command margins, dydx (*) pre (out (*)) after multinomial logit model by computed the marginal effect for the ease of interpretation, for each outcome in the dependent variable. In the context of this research the marginal
Variable | VIF | 1/VIF |
---|---|---|
Marital | 1.87 | 0.482878 |
Area under crop | 1.74 | 0.582912 |
Age | 1.68 | 0.581335 |
Access to extension | 1.66 | 0.667802 |
Access to training | 1.50 | 0.679056 |
Years of farming | 1.58 | 0.69862 |
Level of education | 1.43 | 0.712606 |
Household size | 1.41 | 0.720076 |
HHs income | 1.49 | 0.739874 |
Land size | 1.35 | 0.759503 |
Land tenure | 1.31 | 0.772303 |
Gender | 1.28 | 0.827789 |
Belonging to a group | 1.14 | 0.840883 |
Access to credit | 1.11 | 0.848579 |
Own radio | 1.11 | 0.945426 |
Mean VIF 1.45 |
Source: own survey results, 2016.
effects refer to change in probability of a particular choice of adaptation strategiesagainst climate variability stresses for a unit change in the explanatory variables. Therefore, MNL model was run based on one the of most occurring climate variability stress, that is, dry spell.
The hypothesized explanatory variables were entered into Multinomial logit model (MNL) to see their individual and aggregate influence on the choice of adaptation strategies in response to a dry spell in Namutumba district. As the results indicate clearly in
As mention earlier, the parameter estimates of the MNL model provide only the direction of the effect of the explanatory variables on the response variable: parameter estimates do not denote actual magnitude of change or probabilities.
Explanatory variable | Soil and water conservation Coef. p-value | Diversify multiples occupation Coef. p-value | Changing crop Calendar Coef. p-value | Cultivating in wetland Coef. p-value |
---|---|---|---|---|
Gender | 0.911 0.096* | 0.356 0.057** | 0.998 0.393 | 1.576 0.168 |
Age of HHs | −0.0.13 0.019** | −6.459 0.111 | −4.466 0.269 | −4.799 0.232 |
Marital status | −1.402 0.028** | −0.199 0.856 | −2.851 0.056** | -3.997 0.008*** |
Level-education | 1.751 0.001*** | 0.042** 0.581 | −0.951 0.397 | −1.520 0.151 |
Years farming | 0.042 0.581 | 1.300 0.199 | .1385 0.505 | 0.025 0.736 |
Household size | 0.159 0.057** | −2.008 0.069** | 0.030 0.687 | 0.216 0.827 |
Land size | 0.820 0.283 | 3.650 0.053** | 0.404 0.691 | −2.790 0.213 |
Area under crop | 2.519 0.338 | −6.139 0.002*** | −2.300 0.304 | 5.210 0.045** |
HHs income | −1.088 0.013** | 5.538 0.003*** | 4.283 0.005*** | -4.602 0.021** |
Belong to group | 1.132 0.005*** | −2.811 0.044** | 5.815 0.002*** | 5.474 0.003*** |
Land tenure | −2.768 0.052** | −0.873 0.560 | −3.462 0.018** | −4.261 0.003*** |
Access to credit | −3.230 0.028** | 4.152 0.560 | −0.696 0.646 | −1.303 0.372 |
Access extension | 1.516 0.048** | −1.417 0.600 | 3.629 0.174 | 3.395 0.202 |
Access to climate change training | −2.103 0.445 | 0.424 0.705 | −1.654 0.542 | −1.256 0.641 |
Own radio | 1.846 0.031** | 1.546 0.058** | 1.292 0.060** | 1.732 0.118 |
cons | −5.699 0.335 | −7.223 0.136 | −0.036 0.974 | −5.840 0.082** |
Base category No adaptation; Number of observations 160; LR chi2(56) 136.36; Log likelihood 175.6034; Prob > chi2 0.0000; Pseudo R-Square 0.3397; Notes: *, **, *** = significant at 10%, 5%, and 1% probability level, respectively.
Thus, the marginal effects from the MNL, which measure the expected change in probability of a particular choice adaptation being made with respect to a unit change in an independent variable, are indicated and discussed (
The marginal effect results were considered for interpretation.
Gender of household head: As hypothesized earlier, the gender of the household head is significantly and positively connected with the likelihood of choosing soil and water conservation and cultivating in the wetland by 0.004 and
Explanatory variable | Soil and water conservation techniques | Diversify multiples occupation | Changing crop calendar | Cultivating in wetland | No adaptation | |||||
---|---|---|---|---|---|---|---|---|---|---|
dy/dx | p-value | dy/dx | p-value | dy/dx | p-value | dy/dx | p-value | dy/dx | p-value | |
Gender | 0.1123 | 0.004*** | −0.1297 | 0.051** | −0.0247 | 0.673 | 0.1289 | 0.002*** | −0.0469 | 0.274 |
Age of HHs | −0.7095 | 0.001*** | −0.008 | 0.965 | 0.2076 | 0.158 | 0.2099 | 0.240 | 0.3003 | 0.038** |
Marital status | −0.0443 | 0.657 | 0.1166 | 0.248 | 0.0124 | 0.907 | −0.2076 | 0.107 | 0.1229 | 0.007*** |
Level-education | 0.0285 | 0.001*** | −0.0140 | 0.004*** | 0.0266 | 0.587 | −0.0711 | 0.177 | 0.0419 | 0.010* |
Years farming | 0.0157 | 0.002*** | −0.0028 | 0.527 | −0.0036 | 0.318 | −0.0066 | 0.118 | −0.0028 | 0.321 |
Household size | 0.0225 | 0.689 | 0.1125 | 0.007*** | −0.0300 | 0.602 | −0.0789 | 0.209 | −0.0258 | 0.480 |
Land size | 0.1385 | 0.175 | −0.0228 | 0.836 | −0.0392 | 0.672 | −0.1824 | 0.118 | 0.1059 | 0.195 |
Area under crop | −0.1278 | 0.239 | −0.0226 | 0.848 | 0.0551 | 0.604 | 0.1972 | 0.001*** | −0.2018 | 0.036** |
HHs income | −0.0397 | 0.657 | −0.1275 | 0.163 | −0.1145 | 0.251 | 0.0547 | 0.561 | 0.2269 | 0.567 |
Belong to group | 0.1069 | 0.000*** | 0.0738 | 0.361 | 0.0933 | 0.238 | 0.0492 | 0.531 | −0.2232 | 0.932 |
Land tenure | 0.0637 | 0.395 | 0.0385 | 0.641 | −0.0298 | 0.730 | −0.2123 | 0.003*** | 0.1399 | 0.002*** |
Access to credit | −0.2663 | 0.000*** | 0.0629 | 0.389 | 0.0964 | 0.185 | 0.0267 | 0.712 | 0.1399 | 0.002*** |
Access extension | 0.2783 | 0.003*** | −0.0068 | 0.953 | 0.0242 | 0.000*** | −0.0756 | 0.552 | −0.1717 | 0.024** |
Acctraincliva | −0.1347 | 0.247 | 0.0796 | 0.482 | −0.0301 | 0.767 | −0.0178 | 0.886 | 0.0673 | 0.560 |
Own radio | 0.2783 | 0.296 | 0.1548 | 0.006*** | 0.1027 | 0.001*** | −0.0895 | 0.137 | −0.0200 | 0.616 |
Notes: *, **, *** = significant at 10%, 5%, and 1% probability level, respectively. Level-Educ (Education level), Areundcro (Area under crop), (Belonging to group), Accredit (Access to credit), Accexten (Access to extension), Acctraincliva (Training on climate variability related topic), and Own radio.
0.002 at 1% level of significance during dry spell. Male-headed households were 10.9% associated with the choice of soil and water conservation and cultivation in the wetland at 12.9% during the dry spell. It is more expected that male-headed households have more likelihood of choosing these strategies than the female because they are labor demanding and require better information. This finding concurs with the argument that male-headed households are more likely to get skills and information about new strategies, unlike female-headed households who have inadequate access to information [
Age of the household head: Results in
Marital status: The coefficient of marital status was positively and significantly correlated to the probability of the household choosing no adaptation at p < 0.010 during the period of a dry spell. This implies that there is an inverse relationship between marital status and farmers’ choice of no adaptation to the impact of dry spell. Thus, the marital status of the respondents is not inquisitive about the vagaries of a dry spell while the majority who were, married and not aged is more knowledgeable about climate variability. This suggests that unmarried household heads could have a small household size which could mean less family labor for crop production practices and less engagement in adaptation strategy against the dry spell.
Level of education: Smallholder farmer level of education increases the probability of choosing soil and water conservation to dry spell at 1% probability level (p < 0.001). This implied that a unit increase in the level of education would result in a 1.4% increase in the probability of choosing soil and water conservation against the impact of a dry spell on their farming activities. These results are in agreement with the findings of [
Belonging to a group: Involvement of the smallholder farmer in group is positive and significantly at less than 1% level (p < 0.000) related to choose of soil and water conservation as an adaptation strategy employed by smallholder farmers during dry spell, implying that the probability of choosing soil and water conservation as an adaptation strategy during dry spell is higher for those farmers who have got involved with different farmers groups compared to smallholder farmer who is not a member in any farmers group or doesn’t participate in such coordinated actions and groups. This reflection as an indication that membership and engagement in farmers groups encourage farmers to engage in a join strategies orientation and learning; farmers involved in farmer field school (FFS) share knowledge and innovation ideas, discuss problems and challenges with others and engage in collaborative decision-making.
Year of farming experience: As expected, experienced farmers in farming have an increased likelihood of using all adaptation strategies. The coefficient of smallholder farmer farming experience was significantly and positively with to the choice of soil and water conservation as adaptation strategies against dry spell at 1% significant level (p < 0.002). Highly experienced farmers in farming tend to have more information, skills in farming practices and management about dry spell period and are in the position to spread climate variability threat by developing strategic complementarities between activities such as soil and water conservation techniques and crop-livestock diversification. The results of this study reveal that as smallholder farmers advance in years of farming experience increase the choice of soil and water conservation by 1.6%, as an adaptation strategy to dry spell. This result is consistent with finding [
The area under crop: The coefficient of an area under crop was positively and significantly correlated with the choice of cultivating in wetland during the dry spell at 1% significant level (p < 0.001) as shown in
Access to credit: As the marginal coefficient shown in
Access to extension service: Results of the multinomial logit models shows that access to extension amenities has positive and significant association with the probability of choosing soil and water conservation at p < 0.003 and changing crop calendar at p < 0.003 level of significance. This indicates that a one-unit increase in the extension contact is likely to increase the likelihood of the smallholder farmer choosing and adapting soil and water conservation and changing cropping calendar category as adaptation strategies to dry spell by 27.8% and 24.2% higher than those households’ who do not have access to extension services. Smallholder farmers who have regular access to extension services are more likely to be informed of the expected dry spell period. This result concurs with many researchers; [
Own Radio: As hypothesized earlier, having a radio by smallholder farmers has a positive and significant influence on the choice of engagement in diversifying multiples occupation at p < 0.006% and changing of crop calendar at p < 0.001. Ownership of radio has the likelihood of increasing the probability of choosing to diversify multiples occupation category such as off-farm business and mixed farming adaptation strategies and changing crop calendar during dry spell by 15.5% and 10.3% respectively. Households with access to radio are privilege to lots of information on how to deal with dry spell. This suggests that dry spell awareness campaign on radio and other media channels is an effective way of providing information to smallholder farmers on how to prepare and cope during the period of dry spell occurrence by engaging in practices of diversifying multiples occupation. Radio such as Baaba FM in Jinja and Eye FM were mentioned during the focus group discussion (FGDs) to provide information and campaign on the expected period of the dry spell in the area.
Adaptation strategies used by the majority of the household’s respondents included soil and water conservation, mixed farming, engaging in off-farm activities, use of mulching, use of manure, growing of food security crop and changing planting date. Other common adaptation strategies included crop water harvesting techniques, early planting, inter-cropping, and crop rotation, cultivating in wetland and rearing livestock. Adaptation strategies like change crop calendar with respect to the stress and use of drought-tolerant crops have low adoption rates in the area. However, in some cases, the farmers opt for such strategies owing to the fact that they have limited access to resources and choices because of socioeconomic factors.
Through the use of these adaptation strategies farmers manage to increase their resilience to climate variability related stresses but there is still a need to improve household adaptation level through strengthening the farmers’ adaptation coping strategies because smallholder farmers believed that climate variability was a major cause of declining yields and increase in the crop pest and disease incident, reduction in quantity and water quality and, food shortage during certain period of the year, high risk of crop damage as a consequence of flood and dry spell in the study area. In general, based on the respondents around 99% of the smallholder farmers have taken at least one or combination of adaptation strategies in response to climate variability impact on their farming activities.
Study finding showed that several factors significantly influenced the choice of dry spell-induced adaptation strategies. These were the gender of the household, the age of household, household size, years of farming experience, access to credit, household income, membership of group or associations, access to extension services, the size of area under crop and ownership of radio.
Based on the findings and results of the study, the following recommendations are suggested to lessen the diverse impacts of climate variability on farming system and rural livelihood of smallholder farmers in Namutumba district.
1) Strengthening smallholder farmers existing water and soil conservation and expand the area cultivated with irrigation schemes. In addition, government and NGOs programmes need to build on existing knowledge and adaptation strategies in order to ensure sustainability of their activities.
2) Policymakers should focus at enhancing smallholder farmers’ household characteristics by reviewing farmer extension so as to come up with devising a package that is tailored to the perceived actual needs of smallholder farmers and designing farm management adoption programmes based on the farmers household characteristic, such as years of schooling, gender, and membership to social groups.
3) Given the high degree of uncertainty about how climate variability affects smallholder farmers in the area, government policy intervention in the state should focus primarily on strengthen the capacity of smallholder farmers and institutions for identifying and assessing climate variability through programmes to educate and inform smallholder farmers and other relevant stakeholders on climate variability and their potential impacts on farmers’ farming activities.
4) Government future policies and Non-Governmental organization programme should also be able to strengthen the ability of smallholder farmers and local institutions in the area by determining and coordinated efforts through programme that educate them on climate variability and their potential impacts on smallholder farmers’ farming activities while gearing towards increasing smallholder farmers’ access to weather forecasts as a strategy to increase awareness and therefore preparedness for drought and flood occurrences, among other climate variability related shocks. Additionally, policy interventions that encourage informal social networks i.e. farmer to farmer extension services can promote group discussions. This is very necessary for smallholder farmers to share experience, information, and knowledge among them. Therefore, policy option which is intended for reducing the climate variability related difficulties should also focus on accessing improved inputs such as better seeds, and micro-irrigation equipment’s to smallholder farmers at a fair price.
The authors gratefully acknowledge the financial support provided by the Regional Capacity building for Sustainable Natural Resource Management & Agricultural Productivity under climate change project (CAPSNAC) funded by NORED. Furthermore, we are thankful to the enumerators for translating the questions into local languages and for participating in the survey.
The authors declare no conflicts of interest regarding the publication of this paper.
Ajak, B.J., Kyazze, F.B. and Mukwaya, P.I. (2018) Choice of Adaptation Strategies to Climate Variability among Smallholder Farmers in the Maize Based Cropping System in Namutumba District, Uganda. American Journal of Climate Change, 7, 431-451. https://doi.org/10.4236/ajcc.2018.73026