Assessing Agricultural Livelihood Vulnerability to Climate Change in Coastal Bangladesh
Abstract
:1. Introduction
2. The Agricultural Livelihood Vulnerability Index: Conceptual Framework
3. Methods
3.1. Profile of the Case Study Area
3.2. Indicator Selection, Data Collection and Transformation to Spatial Scale
3.3. Index Formation and Spatial Mapping
3.4. Hot Spot Analysis
3.5. Development of Intervention Plan
4. Results and Analysis
4.1. Exposure Dimension
4.2. Sensitivity Dimension
4.3. Adaptive Capacity Dimension
4.4. Agricultural Livelihood Vulnerability Index
4.5. Hot Spots and Factors of Spatially Heterogeneous Vulnerability
4.6. District-Level Intervention Planning
5. Discussion
5.1. Implication of Relative Spatial Vulnerability among Districts
5.2. Benefits of the ALVI Approach
5.3. Limitations of the Study and the ALVI Approach
6. Conclusions
Supplementary Materials
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Component | Sub-Component | Indicators | Sign | Proxy | HR | Source | Time Period | Weight |
---|---|---|---|---|---|---|---|---|
Exposure | Climate | Extreme temperature | ExT | Extreme max. temp. (°C) in a 50-year return period | + | BMD | 1964–2013 | 0.066 |
Changes of temperature | CoT | Changes on average annual temperature | + | BMD | 1964–2013 | 0.060 | ||
Precipitation variability | PV | (Max. precipitation–min. precipitation)/avg. precipitation | + | BMD | 1964–2013 | 0.161 | ||
Disaster | Flood hazard | FH | Computation of flood hazard score a | + | BBS | 1951–2013 | 0.145 | |
Riverbank erosion | RE | Rate of riverbank erosion (km/year) | + | USGS | 1998–2018 | 0.112 | ||
Cyclone hazard | CH | Computation of cyclone hazard score a | + | BBS | 1960–2015 | 0.156 | ||
Salinity intrusion | SI | Salinity severity index | + | SRDI | 2010 | 0.185 | ||
Drought intensity | DI | Drought intensity in Kharif season | + | * | 1994–2013 | 0.114 | ||
Sensitivity | Population | Population below poverty level | PBP | % population below extreme poverty level | + | BBS | 2011 | 0.014 |
Dependency ratio | DR | Ratio of the population < 14 and > 65 years to that 14–65 years | + | BBS | 2011 | 0.015 | ||
In migration | InM | % floating people moving in from other areas | + | BBS | 2011 | 0.014 | ||
Rural population | RP | % population living in rural area to total population | + | BBS | 2011 | 0.010 | ||
Ethnic population | EP | % population living in tribal area | + | BBS | 2011 | 0.006 | ||
Female population | FP | % female population to total population | + | BBS | 2011 | 0.012 | ||
Population growth | PG | % population increased during 2001 to 2011 | + | BBS | 2001–2011 | 0.013 | ||
Health | Disabled population | DP | % population physically disabled | + | BBS | 2011 | 0.010 | |
Infant mortality rate | IMR | Infant mortality rate (no./1000 live births) | + | BBS | 2011 | 0.010 | ||
Underweight children | UWC | % of children under 5 years old who were underweight at birth | + | BBS | 2011 | 0.016 | ||
Severely stunted growth | SSG | % children under 5 years old reported as stunted growth | + | BBS | 2011 | 0.018 | ||
Arsenic problem | AP | % tube wells with potential threat of arsenic level > 50 mg/l | + | BBS | 2011 | 0.022 | ||
Distance from a water source | DWS | % households with water source greater than 200 meters away | + | BBS | 2011 | 0.020 | ||
Unsafe drinking water | USDW | % households drinking water from an open source | + | BBS | 2011 | 0.116 | ||
Un-hygienic sanitation conditions | USC | % households without hygienic sanitation facilities | + | BBS | 2011 | 0.101 | ||
Land resources | Land use intensity | LUI | Land use intensity | + | USGS | 2018 | 0.045 | |
Land degradation | LD | Perceived land degradation index | + | Survey | 2018 | 0.067 | ||
Soil organic matter | SOM | Average organic matter content of soil (%) | - | SRDI | 2013 | 0.046 | ||
Soil phosphorus | SP | Average phosphorus content in soil (µg/gm) | - | SRDI | 2013 | 0.040 | ||
Agricultural practices | Marginalized farm holdings | MFH | Farm holding operating on 0.05 to 0.49 acre of land | + | BBS | 2011 | 0.040 | |
Arable land | AL | % net cultivated land to total land | + | BBS | 2011 | 0.066 | ||
Fish-culture area | FCA | % land utilized for inland fish farming | + | BBS | 2011 | 0.050 | ||
Rain-fed crop area | RCA | Cropland not under irrigation facilities | + | BBS | 2011 | 0.078 | ||
Livestock potential | LP | Ownership of livestock (no./household) | + | BBS | 2011 | 0.070 | ||
Crop diversity index | CDI | Computation of CDI (Shannon diversity index) b | - | BBS | 2011 | 0.050 | ||
Gross agri. production | GAP | Per capita annual GAP (m.ton) b | + | BBS | 2011 | 0.066 | ||
Productivity of rice | PoR | Average yield of rice (ton/ha) in last 5 years | - | BBS | 2011–2015 | 0.060 | ||
Adaptive capacity | Human capital | Literacy rate | LR | Literacy rate of 7+ population | + | BBS | 2011 | 0.039 |
Youth education | YE | Youth education enrollmet rate (%) | + | BBS | 2011 | 0.042 | ||
Economically active population | EAP | % population employed in different sectors | + | BBS | 2011 | 0.049 | ||
Female work participation | FWP | % female population engaged at non-home workplace | + | BBS | 2011 | 0.030 | ||
Financial capital | Income diversification index | IDI | Negative Herfindahl index of income diversification | + | BBS | 2011 | 0.053 | |
Foreign remitter | FR | % households receiving foreign remittances | + | BBS | 2011 | 0.030 | ||
Access to farm credit | AFC | % households having received a loan from different sources | + | BBS | 2011 | 0.045 | ||
Share of agricultural GDP | SAGDP | % households with income come from agricultural sector | + | BBS | 2011 | 0.039 | ||
Dependence on agriculture | DoA | % households with main income dependent on agriculture | - | BBS | 2011 | 0.015 | ||
Social and institutional capital | Farmers associations | FAs | % population member of a cooperative society | + | BBS | 2011 | 0.030 | |
Agricultural markets | AgM | No. of agricultural markets per 1000 farm households | + | BBS | 2011 | 0.024 | ||
Density of schools | DoS | No. of schools per 10,000 population | + | BBS | 2011 | 0.039 | ||
Density of healthcare facilities | DoHC | No. of healthcare facilities per 10,000 population | + | BBS | 2011 | 0.053 | ||
Rehabilitation support | RhS | % households receiving financial/rehabilitation support | + | BBS | 2011 | 0.019 | ||
Physical capital | Structurally sound houses | SSH | % houses with disaster-resistant construction | + | BBS | 2011 | 0.036 | |
Emergency shelters | ES | Cyclone and flood emergency shelters (no./10,000 population) | + | BBS | 2011 | 0.030 | ||
Road network | RN | Road density (meter/ha) | + | BBS | 2011 | 0.059 | ||
Share of embankments/dams | SoE | % total embankments constructed in a district | + | BBS | 2011 | 0.047 | ||
Rural electrification | RuE | % rural households connected to electrical grid | + | BBS | 2011 | 0.053 | ||
Use of mobile phones | UoMP | % households with mobile phone | + | BBS | 2011 | 0.018 | ||
Natural capital | Open water bodies | NWB | % area covered by rivers and other water bodies | + | USGS | 2018 | 0.020 | |
Natural forests | NF | % area under natural forests | + | BBS | 2011 | 0.022 | ||
Land potential | LP | Per capita land potential (total land/total population) | + | BBS | 2011 | 0.031 | ||
Use of agro-technology | Adoption of improved crop variety | AoICV | % rice field cultivated with HYV seed | + | BBS | 2011 | 0.039 | |
Use of fertilizer | UoF | Fertilizer application rate (m.ton/ha) | - | BBS | 2011 | 0.029 | ||
Use of pesticide | UoP | % cropland sprayed with pesticides | - | BBS | 2011 | 0.030 | ||
Irrigation pump | IP | % area under irrigation facilities | + | BBS | 2011 | 0.032 | ||
Crop harvester/thresher | CHT | No. of harvesters/threshers per 100 farm households | + | BBS | 2011 | 0.027 | ||
Use of bio-gas | UoBG | % households using biogas for cooking | + | BBS | 2011 | 0.020 |
Dimension | Element | Indicator | F Value | Sig. Level |
---|---|---|---|---|
Exposure | Disaster events | River bank erosion | 15.507 | 0.000 |
Cyclone hazard | 5.167 | 0.009 | ||
Drought intensity | 8.804 | 0.001 | ||
Sensitivity | Health | Infant mortality rate | 2.548 | 0.086 |
Distance to a water source | 2.943 | 0.059 | ||
Unhygienic sanitation condition | 2.951 | 0.058 | ||
Land resources | Land degradation | 3.366 | 0.040 | |
Soil phosphorus | 6.736 | 0.003 | ||
Agricultural practices | Rainfed agricultural land | 2.940 | 0.059 | |
Productivity of rice | 3.387 | 0.039 | ||
Adaptive capacity | Physical capital | Structurally sound housing | 4.050 | 0.022 |
Emergency shelter | 4.726 | 0.013 | ||
Natural capital | Open waterbody | 5.316 | 0.008 | |
Use of agro-technology | Improved crop variety | 2.578 | 0.082 | |
Use of pesticide | 4.219 | 0.019 | ||
Irrigation pump use | 2.940 | 0.059 |
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Hoque, M.Z.; Cui, S.; Xu, L.; Islam, I.; Tang, J.; Ding, S. Assessing Agricultural Livelihood Vulnerability to Climate Change in Coastal Bangladesh. Int. J. Environ. Res. Public Health 2019, 16, 4552. https://doi.org/10.3390/ijerph16224552
Hoque MZ, Cui S, Xu L, Islam I, Tang J, Ding S. Assessing Agricultural Livelihood Vulnerability to Climate Change in Coastal Bangladesh. International Journal of Environmental Research and Public Health. 2019; 16(22):4552. https://doi.org/10.3390/ijerph16224552
Chicago/Turabian StyleHoque, Muhammad Ziaul, Shenghui Cui, Lilai Xu, Imranul Islam, Jianxiong Tang, and Shengping Ding. 2019. "Assessing Agricultural Livelihood Vulnerability to Climate Change in Coastal Bangladesh" International Journal of Environmental Research and Public Health 16, no. 22: 4552. https://doi.org/10.3390/ijerph16224552
APA StyleHoque, M. Z., Cui, S., Xu, L., Islam, I., Tang, J., & Ding, S. (2019). Assessing Agricultural Livelihood Vulnerability to Climate Change in Coastal Bangladesh. International Journal of Environmental Research and Public Health, 16(22), 4552. https://doi.org/10.3390/ijerph16224552