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Article

Smallholder Farmers’ Perceived Climate-Related Risk, Impact, and Their Choices of Sustainable Adaptation Strategies

1
Department of Disaster Management, Begum Rokeya University, Rangpur 5400, Bangladesh
2
Department of Agribusiness, Bangabandhu Sheikh Mujibur Rahman Agricultural University, Gazipur 1706, Bangladesh
3
Faculty of Resilience, Rabdan Academy, Abu Dhabi 114646, United Arab Emirates
4
Department of Geography and Environmental Studies, University of Chittagong, Chittagong 4331, Bangladesh
5
Department of Geography, The University of Burdwan, West Bengal 713104, India
6
Department of Disaster Risk Management, Patuakhali Science and Technology University, Patuakhali 8602, Bangladesh
7
Department of Civil Engineering, King Khalid University, Abha 61411, Saudi Arabia
*
Authors to whom correspondence should be addressed.
Sustainability 2021, 13(21), 11922; https://doi.org/10.3390/su132111922
Submission received: 21 September 2021 / Revised: 20 October 2021 / Accepted: 23 October 2021 / Published: 28 October 2021
(This article belongs to the Special Issue Environmental Hazards: Assessing Risk and Reducing Disaster)

Abstract

:
Bangladesh is one of the most climate-vulnerable countries on the globe. The country is frequently affected by numerous climatic events including floods, droughts, cyclones, etc., which damages the farm household’s livelihood and socio-economic condition. Therefore, this work intends to appraise the smallholder farmers’ perceived climate-related risk, impact, and the factors that influence their choices of adaptation strategies to cope with the adverse impact of the climatic extreme events in northern Bangladesh. Survey data were collected from 300 respondents from two drought-prone districts of northern Bangladesh in January–February 2020. The climate-related risk perception index (CRRPI) was constructed to assess the farmers’ perceived risk. The multinominal logit (MNL) model was employed to explore the factors influencing farmers’ choices of adaptation strategies. Farmers’ perceptions of climate change risk were found to be consistent with meteorological data in the research area. Results of the CRRPI revealed that flood, drought, riverbank erosion, and heat waves were the critical risks perceived by the farmers. Farmers used a variety of adaptation measures to deal with these climatic threats, including agricultural diversification, changes in fertilizer and insecticides, and crop and seed changes. The MNL model results showed that the factors that influenced a farmer’s choices of adaptation strategies were age, education level, family members, income level, year of farming experience, and the farmer’s information on climate change. This study also demonstrated that water scarcity in the dry period and the frequency of crop diseases were the major limiting factors experienced by the farmers whilst undertaking adaptation strategies. Thus, awareness and capacity building through training and support to adopt the adaptation strategies are essential to enhance the resilience of the farmers.

Graphical Abstract

1. Introduction

Poor households in developing countries such as Bangladesh are highly affected by climate change due to their low adaptive capacity and inadequate access to alternate means of livelihood [1,2,3,4]. Moreover, extreme weather phenomena are projected to become more recurrent and intense in the forthcoming period, with potentially severe adverse effects on the livelihood of farmers in developing countries, including Bangladesh [3,5,6]. Climate change will negatively affect crop production and lead to substantial changes in farming practices [7]. Despite technological advancements, climate change and variability are yet a primary determinant of agricultural crop production, where temperature and rainfall serve as critical driving factors in productivity and rural food security perspectives [8,9]. Growing climate issues are driving the demand for efficient solutions in the agriculture sector, which will improve farmers’ livelihoods and economic situations to cope with climate change [10]. Numerous studies have predicted that changes in climatic conditions will increase the frequency and magnitude of various dangerous climatic events and disasters such as floods, drought, storms, and cyclones [2,3,4,5,6,7].
Bangladesh is one of the most densely populated agriculture-based countries across the globe. Agriculture contributes about 13% to the gross domestic product (GDP), and employment of more than 42% [11]. However, the agriculture sector is the most vulnerable to climate change and is most affected by numerous climatic change impacts such as flood, drought, riverbank erosion, extreme weather, etc., and the northern regions of Bangladesh are particularly vulnerable to such climatic impacts. Drought is an extreme climatic event in this region that harshly affects agricultural production and rural household’s livelihoods [12,13]. Flood is the most severe adverse effect on human livelihoods, and leads to more fatalities and triggers widespread material damage to such a degree that the household cannot cope without outside support due to their limited adaptive capacity and resources [13,14]. Flood and drought frequency and magnitude are mostly linked to environmental and meteorological changes in developing countries. If the impacts of climate change on farming systems are not detected properly, they might have a significant impact on food production and food security, as well as become an impediment to poverty-reduction initiatives and sustainable development. The emissions of CO2 and other greenhouse gases is rising continuously around the world, which results in an increasing temperature level that will result in climate change variability and more threats to the agricultural sector [15]. Climate change will have a substantial impact on agricultural productivity, and will result in significant changes in agricultural output [7]. To tackle climate change risk and impacts, many nations have turned to green agriculture technology, which provides sustainable adaptation measures [16].
Many studies have addressed climatic risk, impacts, and adaptation strategies in different countries in regards to mitigating the negative impacts of climate change on agriculture, including Nepal [17], China [18], Pakistan [19,20,21], Africa [22,23], Canada [24], and Australia [25]. In Bangladesh, studies on farm-level adaptation strategies have concentrated on the salinity-prone southwestern coastal region; for example, [26,27,28], drought-prone regions in the northwestern areas [12,29,30,31,32,33,34], both drought and flood-prone northern areas [9,13,35,36,37], and rural riparian areas [2,38,39]. Previous research has demonstrated that farmers typically adopt a variety of strategies to adjust agriculture to climate change risk [19,20,29,35]. Farmers use a variety of techniques in their agricultural sector such as altering crop varieties, farm diversification [35,36,37]; nonagricultural income [9,13], and changing fertilizers and pesticides [15,34]. Technological improvements include the growth of novel and heat-tolerant crops, as well as developments in irrigation and water supply systems [21,35,36]. Farmers’ psychological variables are a major concern that has resulted in different risk perceptions and adaptation techniques in response to climate change. The psychological elements assist farmers in comprehending extreme climatic occurrences, such as their risk, effects, and consequences, and so provide a perspective of taking adaptation measures to lessen climate change risk and impact [33,34,36,37].
However, research regarding farmers’ context-specific perceived climate change vulnerability associated with extreme climatic event and adaptation strategies are scarce in the northern region of Bangladesh, which is one of the extreme vulnerable regions of the country. Understanding farmers’ context-specific perceived climate-related risk and their adaptation strategies at the local farm level is crucial for supporting farm households in combatting climate change issues [26,37,40,41]. To close this research gap in earlier literature, this study aimed to investigate the smallholder farmers’ perceived climate-related risks and impact. The study further reveals the major factors influencing the choices of adaptation strategies by using farm-level data from northern Bangladesh.

2. Conceptual Framework of the Study

Climate risks, including extreme climatic phenomena such as droughts, floods, riverbank erosion, and heatwaves, have adversely affected crop production and the livelihoods of millions of households [7,42]. To combat climate-related risk and impacts on crop production, farmers persistently take many adaptation measures [43] that are not always similar to other’s livelihood pursuits. In our research, we defined climate change as observed or perceived changes in the local atmospheric condition over the past 30 years in terms of frequency of extreme environmental phenomena such as droughts, floods, heatwaves, cold periods, and so on [44]. Therefore, the level to which an environmental system (in our case, a farm) is susceptible to an environmental stimulus is associated with the farm’s capacity to be adversely affected and cope with its detrimental effects [45].
Many approaches have been used in the existing literature to gain insights into climate-related risk perceptions. Of these, most studies have focused on measuring risk perception of climate change from their own experiences and through different factors, including social, cultural, and psychological, by using Likert scales [2,38,39,46]. The Likert scale is broadly utilized in behavioral studies that help to develop relative insight scales. In this study, we also adopted a Likert scale to measure farmers’ risk perception of climate change. In such a manner, the perception output is expressed by index-based values. These index values are defined by a modified climate-related risk perception score (CRRPS) and the modified climate-related risk perception index (CRRPI) to inspire a superior understanding of how farmers perceive climate-related risks and impacts (Section 3.5). Such climatic risks include crop pests, irrigation risks, animal diseases, etc., which adversely affect water availability, reducing crop yields and farm income, and increases crop pests (Figure 1).
Adaptation strategies to cope with the effects of climate change in principle can be planned for farm households’ resilience. For example, on a short-term basis, a few adaptation measures, such as livestock rearing and vegetable gardening, as well as nonagricultural income, provide a better resilience. The farmers take some medium-term adaptation measures to strengthen resiliency, such as altering crop varieties, altering seed quality, and changes in irrigation systems and planting time to fight against medium-term impacts of climatic risk and vulnerabilities (Figure 1) [35]. In long-term adaptation strategies, farmers’ practice farm diversification; increasing nonagricultural income helps them to cope with extreme climatic events such as droughts, floods, heatwaves, etc. [36,37].
Most of the measures were reported as short to medium-term plans. However, we did not differentiate farmers’ adaptation measures into short-, medium-, or long-term, and instead represented them as specific measures, and explored the significant adaptation measures and persistency that effectively helped the farmers cope with climate change (Figure 1). Based on these criteria, we reported the following assumptions: (i) farmers who have sound understanding or knowledge and experience of a higher degree of effects in terms of climate-related risk on their crop production and livelihoods are more probable to adopt adaptation measures than other farmers; and (ii) the adaptation strategies are effectively helping the farmers to cope with this climate change in this region by reducing impacts and vulnerabilities. The decision to pursue these adaptation measures while considering the related factors is an appropriate action against the effects of climate change on their crop production, and economic and property damages. Thus, exploring these risk perceptions, effects, and effective adaptation strategies is used to make sustainable planning, policy, and appropriate measures concerning climate change.

3. Materials and Methods

3.1. Study Area

The present study was performed at the Phulbari and Hatibandha Upazilas in the Kurigram and Lalmonirhat districts of the northern region of Bangladesh, respectively. The area is geographically situated within 25 adaptation strategies. suste and 89°0′0″ E to 89°3′0″ E longitude (Figure 2). Then, four villages from these two Upazlias were selected for data collection while considering three aspects: (i) these villages, situated on the bank of the Teesta and Dharla Rivers, are highly vulnerable to flooding, and every year enormous floods occur in this area; (ii) the levels of severity of riverbank erosion that was recognized through an extensive review of the reports in newspapers and in consultation with local-level field experts; and (iii) the intensity of heatwaves and droughts in the dry period that was acknowledged by the review of a scientific journal and discussion with local people [37]. Char Gorok Mondol and Asiyar Bazar of Phulbari Upazila, East Daoabari, and North Daoabari of Hatibandha Upazila were selected for this research based on the aforementioned aspects.
More than 72% of the people are directly dependent on agriculture in this area. In terms of geographical location, the climatic condition of the region is sub-tropical wet and dry, and low rainfall in the area (<1200 mm on average) has been observed in the last three decades. Moreover, the future prediction shows that this will be decreasing slightly within the 21st century [3]. These climatic disasters and their impacts in the area severely damaged the farmers’ agricultural sectors, livelihoods, and properties, which lead to socio-economic disruption and threats to food security. Therefore, a multistage sampling technique was applied to appraise farmers’ perceived climate-related risk, impact on crop productions, and the factors influencing farmers’ adaptation strategies in northern Bangladesh. In the first stage, the two Upazilas in the Kurigram and Lalmonirhat districts were selected. The second stage included the random selection of four villages corresponding to population size, while the third stage included the random selection of villages corresponding to each village size. The final stage was the random selection of 300 households equivalent to the size of the chosen villages.

3.2. Sample Size Determination

Cochran’s formula was used to determine the sample size [47]. According to the Upazila agricultural office of Phulbari and Hatibandha, the total number of farmers in these selected four villages was 1400. The estimated sample size was 300 (80 for Char Gorok Mondal, 70 for Asiyar Bazar in Phulbari Upazila, 80 for East Daoabari, and 70 for North Daoabari in Hatibandha Upazila). The confidence level and margin of error (confidence interval) were 95% and 5%, respectively.
n = n 0 1 + n 0 1 N  
where:
n = Sample size of a given population;
n 0   = Sample size for infinitive population; and
N = Population size.

3.3. Data Collection

Both qualitative and quantitative approaches, including a household survey and key informant interviews, were adopted to collect the dataset for this research. The survey datasets were collected from January to February 2020, before the COVID-19 pandemic began, through a semistructured questionnaire (see supplementary material) using a face-to-face interview method. The household head (male or female) was the respondent. The respondents were selected randomly from the list of farmers, which was received from the local agricultural extension office, and this technique also utilized a top-down approach to explore the real climate-related risk, impact, and adaptation strategies in two drought-prone regions. Before designing a questionnaire, regular discussions were held with the community-educated persons, including teachers, an elderly person with good knowledge, local government authorities, nongovernmental organizations (NGOs), farmers, and during field observations. Each of the questions followed a chronological association to understand the influence of various variables related to climate-related risk, impacts, and adaptation strategies. There were five sections in the questionnaire: (1) demographic and farm profiles of the respondents such as age, education, income level, earning members, etc.; (2) farmers’ perceived risks related to climate change, (3) determinants of climate change and its risk severity including floods, droughts, and riverbank erosion; (4) perception of climate change vulnerability in crop production; and (5) farmers’ adoption of the adaptation strategies toward these threats.
Moreover, we gathered rainfall and temperature datasets for the last 35 years (1984–2018) from the Rangpur observation station of the Bangladesh Meteorological Department [48]. General linear regression was performed to obtain the mean rainfall and temperature trends [7]. The aim of the climatic dataset was to verify the climatic variables with farmers’ perceptions, which change frequently in the study region. In addition, photos of several major adaptation strategies with necessary notes were taken while visiting and surveying the study sites.

3.4. Multinomial Logit (MNL) Model

The multinomial logit (MNL) model is the most robust regression model that is widely used for the nominal result [9,49]. The main advantage of this model is that it permits the study of choices over more than two categories and allows the determination of choice likelihoods for various classes [9,49]. Any adaptation strategies may be adopted under the certain circumstance of efficiency and benefit maximization [50]. Thus, this study used this model due to farmer’s adaptation strategies utilizing discrete dependent variables with various choices of strategies.
To represent MNL, let Uh and Uk imply a random choice variable of farmers i, who can select between any two choices, then the random utility model can be stated as follows:
U i h = V i h + ε i h
U i k = V i k + ε i k
where U i h and U i k are the farmer random utility in Equation (2) of farmers’ selected options h and k, respectively; V i h , V i k indicate the deterministic (explainable) or systematic utility components; ε i h and ε i k are the stochastic (random) variables that represent the unobservable effect on individual selections and measurement errors, and are expected to be independently and identically distributed [51]. On the basis of utility extension performance, a farm household will only select an option h if U i h > U i k for all   h k . Deterministic components V i h or V i k denote an attribute vector x; for example, V i h = x i h β or   V i k = x i k β . Therefore, utility is not easily noticeable; rather, a farm household’s selection of an adaption measure can be seen. While there are numerous options, the likelihood of different adaptations can be represented as a probability:
P r [ Y i = h x = P U i h > U i k = P r x i β h + ε i h x i β k ε i k > 0 x   a n d = P r x i β h β k ] + ε i h ε i k > 0 x ] = Pr x i β + ε > 0 x  
where β represents an unknown vector coefficient, x denotes a vector of explanatory factors influencing adaptation choice, and ε indicates a random error term. The probability that a farm household will select option h for a given x is provided as follows:
P r Y i = h / x = e β h x i 1 + k = 1 m e β k x i
The selected models can evaluate Equation (5) [51]. The assumption of independence of irrelevant alternatives (IIA) must be met in order to obtain unbiased and reliable parameters of the model [52]. It implies that the likelihood of a certain farm family adopting a specific adaptation approach is independent from the probability of picking an alternative adaptation strategy. The parameters assessed by the MNL model offer only the direction of the impact of the independent variables on the dependent variable, but the assessment does not describe either the actual level of changes or likelihoods. So, the marginal effects are functions of the probability itself, and compute the predictable change in likelihood of a specific choice being made to a unit variation in an independent variable from the mean [53]. The marginal impact can be represented by the following Equation (6):
P r m x n = P r h β h n h = 1 H 1 P r h β h n
Marginal effects determine the likelihood of variation in the probability of adapting to a specific choice in response to a unit change in an explanatory variable [51]. An MNL model may be thought of as simultaneously calculating binary logits for all potential differences among the results. With Z outputs, only Z-1 binary logits must be approximated. Farmers could select their preferred choice from a set of unordered and distinct adaption strategies, one of which was the base category. For this work, there were seven adaptation strategies (dependent variables), and 10 explanatory variables (independent variable) were chosen for the MNL analysis to explore the factors that influenced the choices of farmer’s adaptation strategies, which are shown in the following Table 1.

3.5. Climate-Related Risk Perception Index (CRRPI)

The climate-related risk perception index (CRRPI) was constructed based on the modified climate-related risk perception score (CRRPS) to evaluate the farmers’ perceived climate-related risks against any climatic phenomenon based on their inherent experience [39]. Climate change risk perception is a multitask procedure that depends on different factors including socio-economic, demographic, political, and cultural activities [54]. Overall, personal understanding leads to a pivotal role in identifying farmers’ perceived climate-related risks [55]. Some studies have adopted Likert scales to estimate farmer’s perceived climate-related risks [2,38,39,46]. The Likert scale is generally employed in behavioral research that aids in developing a relative perception level. In our study, we also adopted a similar type of Likert scale to determine farmers’ perceived climate-related risks. In such a case, the CRRPS and CRRPI were applied thoroughly to obtain a better understanding of how farmers perceived climate-related risks.
The participants were requested to appraise their view on 10 climatic phenomenon statements to gain a thorough understanding of the relative perception of the respondents on the 10 chosen climatic phenomena. A six-point Likert scale was adopted to estimate their perception levels. The Likert scale ranged from “no perception” to “very high perception” where in the middle of two lower and upper corners, “very low perception”, “low perception”, “medium perception”, and “high perception” were incorporated in this study. For ease of analysis, the values of equivalent perception scales were varied; for example, 0 for no, 1 for very low, 2 for low, 3 for medium, 4 for high, and 5 for very high, respectively.
The CCRPS was computed to justify the purpose using Equation (7):
Climate-Related   Risk   Perception   Score   ( CRRPS ) = CRRPn × 0 + CRRPvl × 1 + CRRPl × 2 + CRRPm × 3 + CRRPh × 4 + CRRPvh × 5
where CRRPn = the number of participants with no perception;
  • CRRPvl = the number of participants with very low perception;
  • CRRPl = the number of participants with low perception;
  • CRRPm = the number of participants with medium perception;
  • CRRPh = the number of participants with high perception, and;
  • CRRPvh = the number of participants with very high perception of risk.
Since there were 150 respondents from Phulbari Upazila and 150 respondents from Hatibandha Upazila, the CRRPS for any climatic phenomenon could be varied from 0 to 750 in both the Upazilas, which meant the lower boundary would be 0 and the upper boundary would be 750, respectively. Afterward, we transformed the CRRPS into a standardized index for further explanation of the outcomes. To standardize the CRRPS, we applied Equation (8):
CRRPI = (Total CRRPS Value)/ (Respective maximum CRRPS Value) × 100
where the total CRRPS value was computed by multiplying perception values with total perception frequency against each climatic phenomenon, and the respective maximum CRRPS value was computed by dividing the total CRRPS value by the uppermost maximum boundary value and multiplying it by 100. CRRPI allowed us to understand and classify farmers’ perceived climate-related risks [39,42,49]. The CRRPI values ranged from 0 to 100, where 0 and 100 were the minimum and maximum levels of farmers’ perceived climate-related risks in the study area.

3.6. Statistical Analyses

Statistical analyses, such as a descriptive analysis and the mean annual temperature and annual rainfall datasets, were performed for 1984–2018 to compare these with farmers’ perceptions of the climate change variables. A general linear regression was performed to obtain the mean temperature and rainfall trends. In this study, we used an MNL model to reveal the factors influencing adaptation strategies that the farmers in the study region adopted in their choices of adaptation strategies [9,52,53,56,57]. All statistical analyses were performed using STATA (version 12) and MATLAB (version 2018a) software, and the study map was prepared using ArcGIS (version 10.7).

3.7. Ethical Statement

Participants were informed of the particular purpose of this research before proceeding to the questionnaire. Participants’ consent was acquired before the survey, and their anonymity was established. The survey was done only once, and the survey could be accomplished or ended whenever they wished. The questionnaire survey content and procedure were suitably reviewed and approved by the proposal assessment and ethical committee of the Department of Disaster Management of Begum Rokeya University, Rangpur.

4. Results

4.1. Demographic and Farm Profiles of the Respondents

The demographic and farm types of the farmers are outlined in Table 2. Most of the respondents were in the age group of 41–50 years in both the Upazilas. The education level of the respondents in both the Upazilas showed that only a small percentage had education status above the secondary level. In the Phulbari and Hatibandha Upazila, about 23.3% and 36% had primary education, and 26% and 24% had secondary education, respectively. The majority of the respondents in both the Upazilas had four or five members in their family. Still, the member ratio of more than six (>6) was higher in Phulbari Upazila (24.7%) than in Hatibandha Upazila (12.7%). Farmers in Phulbari Upazila were less experienced in farming than in Hatibandha (Table 2).
Most of the farmers relied on agricultural activities. For farmers’ monthly income levels in the region, most households had income levels ranging from USD 47.05 to USD 70.58. The streets and transportation are also insufficient in the region. Small machines that farmers drive to market their goods primarily included vans, cycles, rickshaws, and tempos.

4.2. Farmers’ Perception about Climate Change

To investigate farmers’ perception of climate change, they were asked their opinion on whether the temperature, rainfall, flood, and drought frequency in the region over the last 30 years had increased, decreased, or did not change, or if they did not know. Figure 3 shows that most of the farmers in both the Upazilas perceived that the temperature and drought intensity were increased over the last 30 years (Figure 3a). Regarding temperature and drought in Phulbari Upazila, 93% and 69.87% of the farmers, respectively, perceived an increase. The farmers observed irregularities in this climatic variable with time and distribution, which caused solemn concerns for their farming plan. The study revealed that the farmers perceived the rainfall as slightly decreasing, and that the flood frequency was continually increasing due to the geographical transboundary river setting. In Phulbari and Hatibandha Upazilas, 37% and 34% of the farmers respectively perceived that the rainfall was decreasing. Regarding flood intensity, most of the respondents in Phulbari and Hatibandha Upazilas perceived that flooding was increasing, and the ratios were 88.73% and 94.68%, respectively.
More importantly, the farmers’ perception of rainfall and temperature changes was also supported by the observed meteorological data. The observed datasets indicated that annual mean temperature showed an upward trend (R2 = 0.2224, p < 0.05) from 1984 to 2018 in the study region (Figure 3b). By contrast, the mean rainfall exhibited a downward trend (R2 = 0.2277, p < 0.05) over the observation period (Figure 3c), which was in good agreement with the farmers’ perceptions.

4.3. Farmers Perceived Climate-Related Risks

On the basis of the modified climate-related risk perception score (CRRPS), we can state that the farmers had very low to very high levels of sensitivity. In Phulbari Upazila, the results showed that the three climatic events; e.g., soil problems, crop pests, and animal disease (score 300–388), had very low to medium sensitivity levels, while in Hatibandha Upazila, only the soil problem (score 331) had the same level of sensitivity. On the other hand, the remaining climatic phenomena in both the Upazilas had medium to very high sensitivity levels: in Phulbari Upazila, the scores ranged from 444 to 543; and in Hatibandha Upazila, 436 to 553.
The SCCRPI values in both the Upazilas represented that the farmers’ perceived climate-related risk type was heterogeneous, and varied from 40–72.40 in Phulbari Upazila and 44.13–73.73 in Hatibandha Upazila (Table 3). Most of the farmers in both Upazilas had medium to very high risk perception index values (Table 3). Farmers rated various climatic events such as droughts, floods, riverbank erosion, and other events on a scale of very high, high, medium, low, and very low, depending on psychological, socio-economic, demographic, and cultural factors [54]. Farmers in both Upazilas believed that soil problems, crop pests, and irrigation dangers were all serious threats to their agriculture industry as a result of climate change. Several studies already stated this climate risk perception based on Likert scales [2,38,39,46]. This study showed that the farmers of the Hatibandha Upazila were most risk-prone to climatic events. The FGD also indicated that estimated index values for every climatic event matched with farmers’ accumulative responses. Table 3 shows the farmers’ perceived climate-related risk according to 10 prearranged climatic phenomena, along with risk perception scores and risk index values.
Afterward, we calculated the respective risk perception score and risk index value for each climactic phenomenon; we ranked them on a 1–10 scale for sound understanding and analysis. The CRRPI showed that in both the Upazilas, farmers perceived that floods, droughts, riverbank erosion, heatwaves, crop pests, and irrigation risks were the significant risks of climate change. In addition, different researchers found comparative outcomes [2,38,39,58].

4.4. Perceived Impacts of Climate Change on Crop Production

Table 4 presents the farmers’ perceptions of the impacts of climate change on crop production. Drought appeared as the main risk to crop production in the study area. Respondents implied that rivers, channels, and dams with good water supply sources for their agricultural fields were no longer adequate or had wholly dried up. Most of the respondents stated that droughts impacted crop production “to a great extent”, and soil conditions had become unsuitable for planting “little to some extent”. In addition, the frequency of crop disease increased due to the incidence of pests and other climate-related hazards, which made it difficult to produce quality crops. Thus, farmers incurred huge income losses from farming.

4.5. Adaptation Strategies Choices by the Farmers

The adaptation strategies that farmers chose to cope with climate change are outlined in Table 5. The survey results showed that a majority of the farmers in both the Upazilas chose changing fertilizers and pesticides—37.3% in Phulbari Upazila and 40% in Hatibandha Upazila. The ratio of increasing nonagricultural-income in the Phulbari and Hatibandha Upazilas were 27% and 23%, respectively. In addition, 16% of farmers in the Phulbari and 15% in Hatibandha Upazilas were changing their irrigation systems and crop-planting times for better agricultural output.
The climate-tolerable crop variety and good seed quality brought the farmers excellent agricultural output in the region. Table 5 shows that 11% of the farmers in Hatibandha Upazila and 14.7% in Phulbari Upazila chose alteration of seed quality. Livestock rearing and vegetable gardening were effective adaptation strategies to fight against climate change. The results revealed that the livestock rearing and vegetable gardening ratio in Phulbari Upazila was higher than in the Hatibandha Upazila, and the ratios were 9.3% and 6.6%, respectively. Farmers reported that they used more irrigation for their crops during periods of drought or extreme temperature, and particularly at swing steps while increasing crop pests due to heavy rainfall and after flooding, farmers used more pesticides to protect their crops from damage. In addition, farmers who were informed of soil problems reported using changes in fertilizer to preserve soil fertility.

4.6. Factors Influencing Farmers’ Choices of Adaptation Strategies

Table 6 shows the factors influencing farmers’ adaptation strategies for climate change in the study area. The MNL model was noteworthy at a 1% level, which denoted that all the independent variables jointly influenced the dependent variables. In both the Upazilas, the age of the farmers was positively related to the increasing nonagricultural income, changes in fertilizer and pesticides, and alterations of seed quality. In Phulbari Upazila, a farmer’s age positively influenced increasing nonagricultural income (0.001, p < 0.05), changing fertilizers and pesticides (0.003, p < 0.05), and alterations of seed quality (0.005, p < 0.05); while in Hatibandha Upazila, increasing nonagricultural income (0.115, p < 0.1) and changing fertilizers and pesticides (0.035, p < 0.05) were positively related to age, but alteration of seed quality was conversely related to age (−g.082, p < 0.1). Thus, an increasing farmer’s age in the both Upazilas increased their nonagricultural income, and the rate of changing fertilizers and pesticides. Altering seed quality adaptation strategies is increasing, which also is relative to livestock rearing and vegetable gardening adaptation strategies. Evidence from various sources denoted a positive influence of a households’ education level on climate change adaptation [50]. This indicated that farmers who had a higher level of education were more expected to adapt better to climate change impacts. Education levels in both Upazilas were positively related to irrigation systems and planting time (0.064, p < 0.01 in Phulbari Upazila and 0.025, p < 0.05 in Hatibandha Upazila). Farmers’ farming experience was significantly related to three adaptation strategies in both the Upazilas. In Phulbari and Hatibandha Upazilas, farming experience showed a significant positive influence on changing fertilizers and pesticides (0.063, p < 0.1; 0.088, p < 0.05), and changing irrigation systems and planting times (p < 0.05; p < 0.01). This revealed that the farmers with increasing farming experience had adopted changing fertilizers and pesticides, and changing irrigation systems and planting times, relative to livestock rearing and vegetable gardening strategies, to combat climate change. Table 6 shows that credit accessibility and using technology had no significant influence on adaption strategies in the study area. The study showed that support from the government, nongovernment, and others in both Upazilas had a positive relation with alteration of seed quality in Phulbari Upazila (0.021, p < 0.1) and in Hatibandha Upazila (0.009, p < 0.1).
Table 6 shows that the family members had a positive relationship with increasing nonagricultural income and alteration of crop varieties. In Phulbari and Hatibandha Upazilas, for increasing nonagricultural income, the results were 0.019, p < 0.05 and 0.019, p < 0.05, respectively; and for alteration of crop varieties, 0.033, p < 0.05 and 0.016, p < 0.01, respectively. The results revealed that increasing income level and land ownership positively influenced all the adaptation strategies in the study region. Shiferaw and Holden emphasized that wealth is assumed to represent prior achievement of the household head and their capability to tolerate risks [59]. Thus, a household head with a high income level and more assets is in a good position to choose adaptation strategies. The study also found that farmers had more information on climate change, altered crop varieties, and changing irrigation and planting times. In Phulbari and Hatibandha Upazilas, farmers that had more information of climate change made choices on alteration of crop varieties (0.085, p < 0.05; 0.115, p < 0.05) and changing irrigation and planting times (0.007, p < 01; 0.175, p < 0.1) relative to livestock rearing and vegetable gardening adaptation strategies. The outcome agreed with with earlier studies that showed that access to information via additional services raises the probability of adapting to climate change impacts [60].

5. Discussion

5.1. Farmers Perception on Temperature and Rainfall Changes

It was noteworthy that farmers’ perceptions of temperature and rainfall variations in the last three decades were similar to the observed changes, in that temperature is increasing significantly, and rainfall is decreasing (Figure 2). A similar type of finding was also reported by [2,61,62], which implies that farmer’s opinions were beneficial, and their perceptions were consistent with the observed changes in temperature and rainfall in Bangladesh. Similarly, [63,64] found a comparable farmer perception of climate change at a global scale in which more accurate perceptions were seen in temperature compared to rainfall.
In comparison, [61] revealed that household-level perceptions of precipitation and winter temperatures in coastal Bangladesh were not well comparable with the recorded dataset, which could have been due to a lack of knowledge and some other socio-economic status. However, this study found a higher accuracy rate for climate change perceptions among the farmers, better education and socio-economic status, living closer to the market, using media, etc. The reasons for drought can be meteorological or hydrological, which result in irregularities in temperature and rainfall; a high evaporation rate; or groundwater depletion, all of which damage the agricultural sector and socio-economic conditions [12,53,60,61]. The meteorological and hydrological drought combination results in agricultural drought, which confines the loss of agricultural productivity to impacts including low precipitation, humidity, evapotranspiration, soil moisture, etc. [65]. These findings showed that farmers in the region face numerous drought risks associated with socio-economic threats. This situation becomes exceptionally severe, as the farmers have already lost agricultural productivity and farming income, with a probable further downward trend in the future. The farmers in this region may remain vulnerable to severe drought if they are not able to develop appropriate adaptation strategies. So, external support is essential for the farmers in the area to enhance their adaptation capacities.

5.2. Farmers’ Perceived Climate-Related Risk, Impacts, and Their Choices of Adaptation Strategies

Several studies [2,62,65,66,67,68,69,70] have identified that farmers’ perceptions of climate change impacts and their adaptions play a crucial role in reducing climate change impacts on crop production. Farm households’ reported numbers of risks revealed the significance of climate-related situations for agricultural operation. The study revealed that floods, droughts, riverbank erosion, heatwaves, and crop pests were the major climatic risks of climate change perceived by the farmers in both the Upazilas. Farmers rated these climatic occurrences on a scale of very high, high, medium, low, and very low, depending on their demographic, cultural, and psychological aspects, and then made a decision to implement adaptation measures to mitigate the risks and repercussions of climate change. Comparative outcomes were found by different researchers [2,38,39,58,61,66]. On the basis of the climate-related risk perception index (CRRPI) it was revealed that in Phulbari Upazila, heatwaves, droughts, heavy storms, and riverbank erosion were the top climatic risks. Floods, crop pests, animal diseases, and irrigation risks were also identified by the farmers in both Upazilas. Similar results were reported in the studies of [71,72], which indicated that farmers’ perceptions were comparable and reliable in formulating and implementing adaptation policies and strategies. The maintenance of crop production is essential for the farmers, but climate change is severely influencing it. The scarcity of water, increasing crop diseases, reduced crop yields, increasing pest incidence, and changing planting times were among the worst impacts due to climate-related risks such as droughts, floods, heat waves, crop pests, etc., in both Upazilas. Farmers reported that in recent times, the quality of crop production has been more complicated and climate change prolongs crop harvesting. Another study conducted by [12] identified droughts as a major disaster in northern Bangladesh that have more significant impacts on agriculture, social life, and human health. If the effects of climate change on farming systems are not identified in a cost-effective manner, it could seriously affect food production and food security, and also might be a hindrance to poverty-reduction attempts.
Farm households have pursued many adaptation strategies in response to numerous climate-related risks and impacts. In this study, we initially reported seven adaptation strategies based on their farm experience, climate-related risk, impacts, and factors including socio-demographic, cultural, and psychological. The adaptation strategies were: increasing nonagricultural income, alteration of crop varieties, alteration of seed quality, changing irrigation systems and planting times, and farm diversification, which reduced the impacts and vulnerabilities of the crop production as well as socio-economic damages due to climate change. Farmers’ practices included all these measurements at various times; for example, in livestock rearing and vegetable gardening in the short- and medium-terms, their practices were to change crop varieties, alter seed quality, change irrigation systems and planting times, etc. The study revealed that changing fertilizers and pesticides was the topmost adaptation strategy taken by farmers that resulted in increasing crops yields and helped to protect crops from diseases and pests. Farmers also changed fertilizer and pesticide brands and increased doses in a systematic ways, which resulted in better crop outputs. The salient feature of this study was that it identified the factors that influenced farmers in their choices of climate change adaptation. Age, income level, family members, farming experience, and climate change information positively affected farmers when choosing those adaptation strategies to combat the impacts of climate change [64]. The age of the farmers was positively related to increasing nonagricultural income, changing fertilizers and pesticides, and alteration of seed quality, which indicated that with an increasing age of the farmers, they chose these strategies more relative to livestock rearing and vegetable gardening. The different studies found that if the household head had a higher education, it positively influenced climate change adaptation [57]. The study also found similar results in that education positively influenced the farmers to change irrigation systems and planting times, and change fertilizers and pesticides in the region. Family members had a positive relationship with increasing nonagricultural income and farm diversification, which denoted that increasing family members also increased nonagricultural income and farm diversification, which improved the livelihood standards of the farmers. The study also found that farmers had more information on climate change, and that they had increased the likelihood of adopting strategies to climate change [60]. Strategies to increase nonagricultural income, which were practiced by the farmers, could be for short or long periods, depending on the risk scenarios. The farmers practiced increasing nonagricultural income to decrease agricultural dependency, and changed fertilizers, pesticides, and irrigation systems, which helped them to cope with climate change with resiliency (Figure 4). Farmers in the region adopted changing irrigation systems during drought events, while during flood events, they adopted nonagricultural income. The implementation of these adaptation measures at the right time can help to mitigate the future negative effects of climate change in the study region.

6. Limitations of the Study

This work had some limitations, such as a small sample size, a self-reported questionnaire that was prone to bias, and cross-sectional data. However, necessary steps were taken to solve the problems associated with cross-sectional survey data, resulting in rigorous results. In this study mostly socio-economic variables were considered for analysis, but there might have been other variables that influenced farmers’ adaptation strategies. The wider generalization of the results should be interpreted with caution, because the data were collected mainly from farm households in the Phulbari and Hatibandha Upazilas of Bangladesh.

7. Conclusions and Policy Recommendations

This study examined smallholder farmers’ perceptions of climate-related risks, their influence on agriculture, and their adaptation strategies for dealing with the adverse impact of climatic hazards on their farms. A total of 380 households were surveyed. The study revealed that climate change has a detrimental effect on the agricultural sectors, particularly on rural farmers in northern region of Bangladesh. CCRPI values revealed that floods, droughts, riverbank erosion, heatwaves, and attraction of crop pests were the significant risks of climate change perceived by the farmers. These events have a substantial impact on their agricultural activities. Farm households’ perceived risks related to climate change were further supported by the meteorological data in the study area. The study revealed that water shortages in the dry period and the frequency of crop diseases were the major restrictive factors on crop production faced by the farmers. Farmers in the region identified changing fertilizers and insecticides as the most effective adaptation techniques. Results from MNL analyses indicated that education, information on climate change, and age were the factors that positively influenced farmers’ choices of adaptation strategies. Extension services managed by experienced and skilled extension mediators would be encouraged to instruct and sensitize farmers about the impact of climate change on agriculture, as well as to teach efficient use of farm inputs such as farm chemicals, the unnecessary use of which could worsen the impact of climate change on farming production in the future. For long-term climate adaptability of the farmers, nonformal education services would provide a future resiliency. The modern irrigation system and rainwater harvesting could be introduced by the government in this region. It is essential to make the farmers aware of the climate risks and provide early warnings associated with natural disasters to diminish farming and livestock losses. The farmers could also offer information about flood- and drought-tolerant, high-yield crop varieties to improve soil quality and irrigation tools for the sustainability of farming.

8. Highlights

  • Climate-related risk perception index was constructed to assess farmer’s perceived risk
  • The multi-nominal logit model identified the factor influencing adaptation strategies
  • Flood, drought, riverbank erosion, and heat wave were the key risk perceived by the farmers.
  • Adaptation strategies were affected by farmer’s ability to respond to climatic hazards

Supplementary Materials

The following are available online at https://www.mdpi.com/article/10.3390/su132111922/s1, Questionnaire On Smallholder Farmers’ Perceived Climate-Related Risk, Impact, and Their Choices of Sustainable Adaptation Strategies.

Author Contributions

Conceptualization, A.A.M. and A.R.M.T.I.; methodology, S.C.P.; software, A.A.M.; validation, G.M.M.A., A.R.M.T.I. and J.M.; formal analysis, A.A.M.; investigation, M.A.S.; resources, E.A.; data curation, S.R.; writing—original draft preparation, A.R.M.T.I.; writing—review and editing, A.A.M.; visualization, S.R.; supervision, A.R.M.T.I.; project administration, J.M.; funding acquisition, E.A., J.M. All authors have read and agreed to the published version of the manuscript.

Funding

The authors extend their appreciation to the Deanship of Scientific Research at King Khalid University (grant number R.G.P.2/194/42). The authors also appreciate the Krishi Gobeshona Foundation (KGF) for funding this work.

Institutional Review Board Statement

“The study was conducted according to the guidelines of the Declaration of Helsinki, and approved by the Institutional Review Board (or Ethics Committee) of Dept. of Disaster Management, Begum Rokeya University, Rangpur (protocol code 2021/1000(1) and 15 April 2021.

Informed Consent Statement

Written informed consent has been obtained from the participants to publish this paper.

Data Availability Statement

Data are available on reasonable request on corresponding author.

Acknowledgments

The authors gratefully acknowledge generous philanthropic support from the Office of the Vice President of the Rabdan Academy, The United Arab Emirates (UAE).

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. A conceptual framework for the implication of assessing farmers’ perceived climate-related risk, impact, and adaptation strategies.
Figure 1. A conceptual framework for the implication of assessing farmers’ perceived climate-related risk, impact, and adaptation strategies.
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Figure 2. Map showing the survey sites in northern Bangladesh.
Figure 2. Map showing the survey sites in northern Bangladesh.
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Figure 3. (a) Farmers’ perceptions of temperature, rainfall, flood, and drought changes in last 30 years (source: field survey, 2020); (b) observed annual mean temperature; and (c) observed mean total annual rainfall (mm) trends in the study area in 1984–2018 from the Rangpur observation station of the Bangladesh Meteorological Department, 2020.
Figure 3. (a) Farmers’ perceptions of temperature, rainfall, flood, and drought changes in last 30 years (source: field survey, 2020); (b) observed annual mean temperature; and (c) observed mean total annual rainfall (mm) trends in the study area in 1984–2018 from the Rangpur observation station of the Bangladesh Meteorological Department, 2020.
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Figure 4. Adaptation strategies of farmers that adapted to cope with climate change in the study area: (a) changing fertilizers; (b) changing pesticides; (c) nonagricultural income; (d) changing irrigation systems.
Figure 4. Adaptation strategies of farmers that adapted to cope with climate change in the study area: (a) changing fertilizers; (b) changing pesticides; (c) nonagricultural income; (d) changing irrigation systems.
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Table 1. Description of the variables used in the multinominal logit model.
Table 1. Description of the variables used in the multinominal logit model.
VariablesDescriptionMeasurement
Dependent variable
Adaptation strategiesAdoption of climate change adaptation strategy (dummy)1 = Increasing nonagri. income; 2 = Alteration of crop varieties; 3 = Alteration of seed quality; 4 = Change fertilizers and pesticides; 5 = Change irrigation system and planting time; 6 = Farm diversification; 7 = Livestock rearing and vegetable gardening
Independent variables
AgeAge of respondent (dummy)1 = ≤ 0 years; 2 = 30–40 years; 3 = 41–50 years; 4 ≥50 years
EducationEducational status of the respondent (dummy)0 = Illiterate; 1 = Primary; 2 = Secondary; 3 = Higher-secondary; 4 = Graduation
Family membersNo. of members in the family (dummy)1 = Three; 2 = Four; 3 = Five; 4 = Six; 5 = ≥Six
Income level (Taka)Respondent monthly income status in Taka (dummy)1 = Low (<3000) Taka; 2 = Lower middle (3000–4000) Taka; 3 = Upper middle (4000–6000) Taka; 4 = High (>6000) Taka
Credit accessibilityWhether credit accessibility influences adaption strategy (dummy)1 = Yes; 0 = No
Using technologyTechnology influences adaption strategies (dummy)1 = Yes; 0 = No
SupportGovernment/NGO/others support influences adaptation strategy (dummy)1 = Yes; 0 = No
Land ownershipType of land ownership influences adaption strategy (dummy)1 = Own; 2 = Hire; 3 = Joint venture
Farming ExperienceYears of farming experience influences adaptation strategy (dummy)1 = ≤20 years; 2 = 20–30 years; 3 = ≥30 years
Information on climate changeWhether climate change information influences adaptation strategies (dummy)1 = Yes; 0 = No
Table 2. Demographic and farm characteristics of the study participants.
Table 2. Demographic and farm characteristics of the study participants.
Upazila (Study Area)
CharacteristicsCategoriesPhulbari %Hatibandha %
Age (Years)<30 years1020.7
30–40 years27.328
41–50 years39.340
>50 years23.311.3
EducationIlliterate38.727.3
Primary23.336
Secondary2624
Higher-secondary47.3
Graduation85.3
Family membersThree1817.3
Four28.729.3
Five21.330
Six7.310.7
>Six24.712.7
Earning membersOne50.752
Two33.340.7
Three167.3
Income level (USD)Low (<35.29)24.7
Lower middle (35.29–47.05)1212.7
Upper middle (47.05–70.58)23.331.3
High (>70.58)62.751.3
Land ownershipsOwn7669.3
Hire9.312.7
Joint venture14.718
Farming experience<20 years2842.7
20–30 years33.335.3
>30 years38.722
Plowing per yearOne0.73.3
Twice53.361.3
Thrice or more4635.3
Sources: Field Survey (2020), (income is depicted in Bangladeshi Taka; 1 USD = approx. 85 Taka as of 2 May 2021).
Table 3. Climate change risk perceptions of farmers.
Table 3. Climate change risk perceptions of farmers.
Phulbari Upazila
Respondents’ Risk Perception Frequency
Sl. No.Climate EventsVery HighHighMediumLowVery LowNoCCRPSSCCRPIRank
1Drought365037207053871.732
2Flood2246391915946461.875
3Riverbank erosion2844312513947262.934
4Heatwaves375233235054372.401
5Lightning1834463121044759.606
6Heavy storms2437433412047763.603
7Soil problems1373640193530040.0010
8Crop pests20173941171638451.209
9Animal diseases14313536171738851.738
10Irrigation risks2331393126044459.207
Hatibandha Upazila
Sl. No.Climate eventsVery highHighMediumLowVery lowNoCCRPSSCCRPIRank
1Drought3052352310051969.205
2Flood425729812255373.731
3Riverbank erosion296042190054973.202
4Heatwaves246938145054372.403
5Lightning2145393114047863.736
6Heavy storms354345207052970.534
7Soil problems15113541252333144.1310
8Crop pests2427393913843658.139
9Animal diseases1438472524243758.278
10Irrigation risks2826404313046361.737
Table 4. Farmers’ perceived impacts of climate change on crop production.
Table 4. Farmers’ perceived impacts of climate change on crop production.
Upazila (Study Area)
Perception of Climate Change Impacts on Crop Production Phulbari %MinMaMeanSDModeHatibandha %MinMaxMeanSDMode
There has been an increase in scarcity of water for productionTo no extent100.04.01.851.2126.70.04.02.000.902
To a little extent15.3 16.7
To some extent27.7 22
To a great extent41 50.7
To a very great extent6 4
The frequency of crop diseases has increasedTo no extent6.70.04.02.181.0921.30.04.02.160.992
To a little extent19.3 28
To some extent36 34
To a great extent25.3 26.7
To a very great extent12.7 10
Yields from crops have largely reducedTo no extent39.30.04.00.830.821260.03.01.090.871
To a little extent42.7 46.7
To some extent14.7 19.3
To a great extent2.7 8
To a very great extent0.7 0
Crops have increasingly been stressed by drought conditionsTo no extent4.70.04.02.301.0121.30.04.02.310.912
To a little extent13.3 13.3
To some extent26 20
To a great extent42.7 50
To a very great extent13.3 15.3
The incidence of pests has risenTo no extent4.70.04.01.981.0024.70.04.02.131.032
To a little extent30.7 23.3
To some extent33.3 36
To a great extent24.7 26
To a very great extent6.7 10
Timing of planting has been very irregular in recent yearsTo no extent39.30.04.00.790.73133.30.04.01.010.891
To a little extent43.3 36.7
To some extent16.7 26
To a great extent0.7 3.3
To a very great extent0 0.7
Loss of farm income or earningsTo no extent320.04.01.691.44024.70.04.01.971.440
To a little extent16.7 15.3
To some extent14 15.3
To a great extent25.3 28
To a very great extent12 16.7
Soil condition has become unsuitable for plantingTo no extent51.30.04.00.790.95047.30.04.00.971.110
To a little extent24.7 22.7
To some extent19.3 16
To a great extent3.3 13.3
To a very great extent1.3 0.7
Drastic decline in sale of farm ProductsTo no extent420.04.00.870.94039.30.03.01.031.060
To a little extent36 31.3
To some extent16.7 18
To a great extent3.3 9.3
To a very great extent2 2
Harvesting of crops have become
prolonged
To no extent46.70.04.00.650.71246.70.04.00.850.962
To a little extent43 38
To some extent10 15.3
To a great extent0 0
To a very great extent0 0
Quality crops have become increasingly difficult to produceTo no extent80.04.02.331.1103.30.04.02.300.913
To a little extent8.7 7.7
To some extent43.3 41.3
To a great extent22 26
To a very great extent18 21.7
Source: field survey (2020).
Table 5. Distributions of farmers according to adaptation strategies.
Table 5. Distributions of farmers according to adaptation strategies.
Upazila (Study Area)
Sl. No.Adaptation StrategiesPhulbari %Hatibandha %
1Increasing nonagri. income27 (18%)23 (15.3%)
2Altering crop varieties11 (7.3%)12 (8%)
3Altering seed quality17 (11.3%)22 (14.7%)
4Change fertilizers and pesticides56 (37.3%)60 (40%)
5Change irrigation system and planting time16 (10.7%)15 (10%)
6Farm diversification9 (6%)8 (5.3%)
7Livestock rearing and vegetable gardening14 (9.3%)10 (6.6%)
Table 6. Factors that influenced farmers’ choices of adaptation strategies for climate change using a multinomial logit model.
Table 6. Factors that influenced farmers’ choices of adaptation strategies for climate change using a multinomial logit model.
Phulbari Upazila
Explanatory VariablesAdaptation Strategies (Dependent Variable)
Increasing Non-Agri. IncomeAlteration of Crop VarietiesAlteration of Seed Quality
CoefficientMarginal EffectCoefficientMarginal EffectCoefficientMarginal Effect
Constant−15.57 **
(7.7)
−16.119 **
(8.038)
−16.3 **
(7.835)
Age3.159 **
(1.407)
0.001 **
(0.053)
−2.807 **
(1.472)
−0.013 **
(0.041)
3.202 **
(1.433)
0.005
(0.049)
Education1.599 *
(1.075)
0.046 *
(0.0333)
−1.39
(1.125)
0.014
(0.029)
−2.366 **
(1.105)
0.080 ***
(0.030)
Family members1.507 **
(0.906)
0.019 **
(0.0312)
1.904 **
(0.933)
0.019 *
(0.022)
1.589 *
(0.917)
−0.024 *
(0.027)
Income level (Taka)7.961 ***
(3.038)
−0.313 **
(25.381)
6.66 **
(3.022)
−0.052 *
(8.959)
8.274 ***
(3.06)
−0.098
(5.917)
Credit accessibility3.882 *
(2.488)
−0.053 *
(0.101, 81)
−3.305
(2.598)
−0.047
(0.081)
−4.226
(2.524)
−0.013
(0.089)
Using technology−0.932
(1.547)
−0.475
(46.669)
0.581
(1.878)
−0.235
(16.473)
−0.787
(1.603)
−0.203
(10.879)
Support0.507
(1.575)
0.0009
(0.084)
0.213
(1.713)
0.008
(0.061)
0.289 **
(1.623)
0.021 *
(0.076)
Land ownership0.671
(1.021)
0.013
(0.060)
2.199 **
(1.069)
−0.038 **
(0.031)
0.805
(1.036)
0.014
(0.049)
Farming experience2.542 **
(1.33)
0.069 **
(0.0675)
1.74
(1.431)
0.058
(0.048)
2.284
(1.377)
0.075
(0.060)
Information on climate change−0.184 **
(1.406)
0.066 *
(0.086)
2.001 *
(1.47)
0.085 *
(0.056)
0.42 *
(1.461)
0.023
(0.078)
Base category: livestock rearing and vegetable gardening
Hatibandha Upazila
Explanatory variablesAdaptation strategies (dependent variable)
Increasing non-agri. incomeAlteration of crop varietiesAlteration of seed quality
CoefficientMarginal effectCoefficientMarginal effectCoefficientMarginal effect
Constant−4.649 *
(2.875)
−5.147 *
(2.799)
−9.195 ***
(3.204)
Age0.641 *
(0.705)
0.115 *
(0.062)
−0.394 *
(0.75)
−0.044 *
(0.031)
0.292 *
(0.728)
−0.082 *
(0.039)
Education0.204
(0.577)
0.030
(0.046)
0.121
(0.634)
0.012
(0.020)
0.347
(0.602)
0.011
(0.031)
Family members1.559 ***
(0.536)
0.033 ***
(0.037)
1.324 ***
(0.542)
0.020 **
(0.016)
1.832 ***
(0.543)
0.0004 **
(0.024)
Income level (Taka)1.527 **
(0.679)
−0.075 **
(0.064)
1.482 **
(0.717)
−0.020 **
(0.028)
1.716 **
(0.756)
−0.051 **
(0.046)
Credit accessibility−0.951 *
(1.35)
−0.215 **
(0.110)
0.329
(1.329)
−0.091
(0.060)
0.656 *
(1.632)
−0.149 *
(0.079)
Using technology0.405
(1.713)
0.312
(0.224)
−1.921
(1.494)
0.132
(0.090)
−1.256
(1.615)
0.132
(0.154)
Support−2.843 ***
(1.103)
−0.059 **
(0.087)
−1.921 *
(1.134)
−0.038 *
(0.038)
3.023 ***
(1.135)
0.009 *
(0.060)
Land ownership1 **
(0.71)
−0.107
(0.078)
0.227 **
(0.653)
−0.061 **
(0.028)
0.876
(0.699)
−0.065
(0.052)
Farming experience0.686
(0.828)
0.132 *
(0.077)
0.33
(0.988)
0.052
(0.037)
0.922
(0.894)
0.056
(0.056)
Information on climate change2.772 ***
(1.052)
0.245 **
(0.114)
0.831 *
(0.989)
0.115 **
(0.056)
1.789 *
(1.014)
0.140
(0.077)
Base category: livestock rearing and vegetable gardening
Phulbari Upazila
Explanatory variablesAdaptation strategies (dependent variable)
Changing fertilizers and pesticidesChanging irrigation systems and planting timesFarm diversification
CoefficientMarginal effectCoefficientMarginal effectCoefficientMarginal effect
Constant−13.739
(7.65)
−18.068 **
(8.334)
−89.466
(1965.62)
Age3.414 ***
(1.395)
0.003 **
(0.046)
−2.903 **
(1.461)
−0.005 **
(0.035)
−3.281 **
(1.484)
0.020 **
(0.058)
Education−1.93 **
(1.068)
0.049 ***
(0.029)
2.971 ***
(1.141)
0.064 ***
(0.024)
1.151
(1.113)
0.032
(0.037)
Family members1.703 **
(0.898)
−0.020 **
(0.026)
1.689
(0.923)
−0.013
(0.020)
1.648
(0.952)
−0.0306
(0.020)
Income level (Taka)7.776 ***
(3.027)
−0.139 ***
(12.477)
9.299 ***
(3.148)
−0.125 *
(8.320)
22.548 **
(0)
−0.713
(50.350)
Credit accessibility−3.644
(2.452)
−0.040
(0.089)
−4.055
(2.576)
−0.019
(0.070)
−3.274
(2.758)
−0.048
(0.115)
Using technology0.192
(1.489)
−0.299
(22.943)
−0.064
(1.708)
−0.203
(15.298)
12.902
(1965.60)
−0.801
(92.581)
Support0.649
(1.549)
0.003
(0.075)
−0.305
(1.708)
0.021
(0.060)
0.946
(1.742)
−0.016
(0.089)
Land ownership0.431
(1.011)
0.012
(0.049)
0.015
(1.156)
0.026
(0.042)
0.856 *
(1.184)
0.003 *
(0.066)
Farming experience2.332 **
(1.305)
0.063 **
(0.060)
1.103 **
(1.417)
0.070
(0.056)
2.563
(1.471)
0.047
(0.042)
Information on climate change−0.676
(1.359)
0.055
(0.075)
0.405 **
(1.491)
0.007 **
(0.061)
−1.53
(1.584)
0.108
(0.087)
Base category: livestock rearing and vegetable gardening
LR chi2 (60) = 139.012Prob > chi2 = 0.000
Log likelihood = 366.668Pseudo R2 = 0.604
Hatibandha Upazila
Explanatory variablesAdaptation strategies (dependent variable)
Changing fertilizers and pesticidesChanging irrigation systems and planting timesFarm diversification
CoefficientMarginal effectCoefficientMarginal effectCoefficientMarginal effect
Constant−3.965 *
(2.422)
−6.346 **
(3.027)
−2.688 **
(3.275)
Age0.083 *
(0.636)
−0.066 *
(0.035)
−0.074 **
(0.732)
−0.088 *
(0.049)
−0.07
(0.772)
−0.086
(0.050)
Education−0.045
(0.543)
0.020
(0.026)
0.164 ***
(0.611)
0.025 **
(0.033)
0.234
(0.655)
0.027
(0.033)
Family members1.284 ***
(0.506)
0.019 ***
(0.021)
1.671 *
(0.55)
0.016 *
(0.028)
1.134 **
(0.593)
0.026 **
(0.029)
Income level (Taka)2.301 ***
(0.664)
−0.054 *
(0.037)
2.423 ***
(0.821)
−0.077
(.049)
2.494 ***
(0.926)
−0.074 **
(0.048)
Credit accessibility0.53
(1.235)
−0.127
(0.067)
−0.161
(1.454)
−0.164
(0.088)
−0.072
(1.673)
−0.166
(0.096)
Using technology−1.629
(1.34)
0.190
(0.135)
−1.328
(1.798)
0.245
(0.177)
−2.487
(1.973)
0.259
(0.167)
Support−2.856 ***
(1.028)
−0.026
(0.051)
−2.541 **
(1.152)
−0.023
(0.067)
−1.952
(1.252)
−0.039
(0.068)
Land ownership0.729
(0.583)
−0.059
(0.040)
−1.107
(0.71)
−0.071
(0.061)
−2.217 **
(1.122)
−0.074
(0.065)
Farming experience0.568 **
(0.802)
0.088 **
(0.044)
0.171 ***
(0.921)
0.108
(0.058)
−0.97 **
(1.06)
0.120 **
(0.059)
Information on climate change1.175 **
(0.873)
0.141 **
(0.064)
1.383 **
(1.017)
0.175 **
(0.079)
2.059
(1.232)
0.184
(0.097)
Base category: livestock rearing and vegetable gardening
LR chi2 (60) = 117.62Pseudo R2 = 0.604
Log likelihood = 396.739Pseudo R2 = 0.544
* Significance at 10% level; ** significance at 5% level; *** significance at 1% level.
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MDPI and ACS Style

Mamun, A.A.; Roy, S.; Islam, A.R.M.T.; Alam, G.M.M.; Alam, E.; Chandra Pal, S.; Sattar, M.A.; Mallick, J. Smallholder Farmers’ Perceived Climate-Related Risk, Impact, and Their Choices of Sustainable Adaptation Strategies. Sustainability 2021, 13, 11922. https://doi.org/10.3390/su132111922

AMA Style

Mamun AA, Roy S, Islam ARMT, Alam GMM, Alam E, Chandra Pal S, Sattar MA, Mallick J. Smallholder Farmers’ Perceived Climate-Related Risk, Impact, and Their Choices of Sustainable Adaptation Strategies. Sustainability. 2021; 13(21):11922. https://doi.org/10.3390/su132111922

Chicago/Turabian Style

Mamun, Abdullah Al, Susmita Roy, Abu Reza Md. Towfiqul Islam, G. M. Monirul Alam, Edris Alam, Subodh Chandra Pal, Md. Abdus Sattar, and Javed Mallick. 2021. "Smallholder Farmers’ Perceived Climate-Related Risk, Impact, and Their Choices of Sustainable Adaptation Strategies" Sustainability 13, no. 21: 11922. https://doi.org/10.3390/su132111922

APA Style

Mamun, A. A., Roy, S., Islam, A. R. M. T., Alam, G. M. M., Alam, E., Chandra Pal, S., Sattar, M. A., & Mallick, J. (2021). Smallholder Farmers’ Perceived Climate-Related Risk, Impact, and Their Choices of Sustainable Adaptation Strategies. Sustainability, 13(21), 11922. https://doi.org/10.3390/su132111922

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