Local Indicator-Based Flood Vulnerability Indices and Predictors of Relocation in the Ketu South Municipal Area of Ghana
Abstract
:1. Introduction
1.1. The Concept of Vulnerability
1.2. Developing a Vulnerability Index (Composite Index)
1.3. Adaptation Options
1.4. Relocation
1.5. Conceptual Base of the Study
2. Materials and Methods
2.1. Study Area
2.2. Data Collection
- →
- S = Required Sample Size,
- →
- X = Z value (e.g., 1.96 for 95% confidence level),
- →
- N = Population size,
- →
- P = Population proportion (expressed as decimal)(assumed to be 0.5 (50%) since this would provide the maximum sample size), and
- →
- d = Degree of accuracy (5%), expressed as a proportion (0.5): the margin of error.
2.3. Data Analysis
2.3.1. Determination of Indices for Vulnerability
- is the standardized index for each community (c),
- S is observed value for each community, and
- and are the observed maximum and minimum values respectively.
- →
- V = Composite community vulnerability index,
- →
- E = Exposure sub-index,
- →
- S = Sensitivity sub-index, and
- →
- C = Adaptive capacity sub-index.
2.3.2. Determination of Predictors of Relocation
2.4. Ethical Considerations
Components | Indicators | Description |
---|---|---|
Exposure | Flood frequency Average flood frequency in community Average flood frequency in households | Flood frequency measures the return period of flood events in the communities. |
Average flood duration | Flood duration is the number of days the flood takes to recede in the communities. | |
Flood depth Percentage of households with flood depth at waist height | Flood depth determines the height of flood from the ground level to the water surface, the higher the depth the greater the degree of damage [66]. | |
Flood magnitude Percentage of households that reported flood magnitude as more | Flood magnitude was measured based on the perception of the respondents, and this is classified as less, medium, or more. | |
Flood impacts Percentage of households who have experienced house property damage Percentage of households who have experienced livelihood impacts Percentage of households who had experienced impacts on water source Percentage of households who experienced impacts on food source Percentage of households who experienced health impacts | Flood impacts were measured at household levels in the dimension of house property damage, livelihood loss, water and food source impacts, and health impacts, as identified in the qualitative studies. | |
Sensitivity | Percentage of female-headed households | Studies have demonstrated that the female populations have lower chances of gaining access to resources and information during and after a disaster, and this had had a negative impact on their physical and mental health. It is also widely documented that women have higher mortality and poverty rates in disaster occurrences, and studies have found that the female population and female-headed households have positive and significant statistical effects or relation to the severity of social vulnerability of a locality [16,29,55,67,68]. |
Average household size | In high-density areas, there is less probability of evacuation and a higher risk of death [66]. | |
Number of children <5 years | The young, that is, children under five (5) years of age, are most often unable to respond to disasters without assistance [56,57], and they are more susceptible to significant physical and psychological impacts [69,70,71]. Children who have inadequate support from family are usually disadvantaged when they have to respond to a disaster [72]. | |
Number of elderlies >65 years | Elderly groups, even if they are not poor or physically weak, are more likely to lack the physical and economic resources necessary to respond to a disaster efficiently and effectively [72]. Besides the physical challenges that evacuation and relocation bring, elderly people become depressed about leaving their own homes to stay in a group quarter or a rescue place. | |
Number of disables | The mentally or physically disabled have a lesser capability to respond to a disaster effectively, as they require additional assistance to prepare for and recover from disasters. Disaster managers need to target areas with more disabled people, for early evacuation and also for disaster preparation measures [59,60,73]. | |
Number of women | Considering factors such as domestic responsibilities, women are, in a way, less able to respond appropriately to a crisis. Their domestic responsibilities and status may restrict their ability to respond quickly in terms of evacuation to rescue grounds or seeking relief on time in the advent of a disaster [71,72]. | |
Adaptive Capacity | Percentage of households that receive early warning information on flood | The availability of early warning systems in a community provides an opportunity for disaster preparedness, early warnings, and emergency information, which in extent substantially reduce the vulnerability of the exposed population to a hazard, including saving lives and minimizing potential injuries and property loss [74]. |
Percentage of households that were aware of recent flood before flooding | Flood awareness reduces flood risk [3]. | |
Percentage of households that have community support to address flood risk | Societal groups involved in flood disasters are critical to manage the effects of the disaster in the absence of official state agencies. In comparison to communities without evidence of civil society flood mitigation/adaptation, a community having evidence of civil society flood mitigation/adaptation was judged as better equipped [3]. | |
Percentage of households that receive government intervention | Flood victims’ access to any type of support might be a crucial adaptation technique. Households that reported receiving support from their local government, friends, and family networks were considered to be more adaptable than those who did not [3]. | |
Recovery Percentage of households that are satisfied with government intervention Percentage of households that recovers to the previous efficient state after a flood Percentage of households that have flood insurance Percentage of households with multiple sources of income | The need to recover after a disaster necessitates long-term rehabilitation efforts that are influenced by the underlying socioeconomic processes and structural limitations. The recovery of an individual or a society is influenced by capital re-accumulation processes and external interventions [75]. In [75], income, government interventions, and number of businesses (livelihoods), among others, are identified as the determinants for recovery after a disaster. | |
Percentage of households with information assets | Ownership of household assets, information, and communication gadgets (e.g., televisions, radio and mobile phones) makes a household better off in receiving and processing information on imminent hazards, and also in preparation for and evacuating from a hazard [17]. Televisions, radios, and mobile phones are important in mediating socioeconomic vulnerability. They act as a medium of information access, and their usage does not necessarily require a high literacy level or formal education [76]. | |
Percentage of households with transportation assets | Lack of transportation assets is an important aspect that increases the vulnerability of an individual or a social group. Empirically, we find evidence that the lack of transportation assets resulted in unnecessary suffering for persons living in poverty or near poverty in the central region of New Orleans, who did not have privately owned vehicles or other means of transportation to leave their homes to safer grounds [23]. | |
Percentage of literate household heads | Households with limited education are usually less proficient in reading and are therefore less likely to access emergency information if they are not assisted. They are also more subjected to income fluctuations due to unsecured employment and are less able to manage risk [77]. | |
Average income | Low-income people are economically weak and are affected by disasters disproportionately. It is identified that they are unable to afford assets or generate income that can help them prepare for a disaster or recover after a disaster [16,59]. |
Indicators | Max | Min | Adina | Amutsinu | Salakope | Agavedzi | Blekusu |
---|---|---|---|---|---|---|---|
Average flood frequency in community (per annum) | 5.5 | 3.65 | 3.65 | 5.18 | 5.5 | 4.23 | 4.69 |
Average flood frequency in households (per annum) | 5.75 | 3.067 | 3.13 | 4.29 | 5.75 | 3.66 | 3.067 |
Average flood duration (days) | 22.19 | 6.06 | 22.19 | 11.412 | 6.06 | 12.53 | 18.64 |
Percentage of households with flood depth at waist height | 29.03 | 88.24 | 71.43 | 88.24 | 87.50 | 29.03 | 81.20 |
Percentage of households that reported flood magnitude as more | 81.95 | 67.74 | 74.60 | 76.47 | 75.00 | 67.74 | 81.95 |
Percentage of households who have experienced house property damage | 88.71 | 64.66 | 69.84 | 76.47 | 75.00 | 88.71 | 64.66 |
Percentage of households who have experienced livelihood impacts | 87.50 | 67.67 | 85.71 | 76.47 | 87.50 | 72.58 | 67.67 |
Percentage of households who had experienced impact on water source | 42.86 | 8.06 | 42.86 | 23.53 | 25.00 | 8.06 | 11.28 |
Percentage of households who experienced impact on food source | 94.12 | 81.25 | 92.06 | 94.12 | 81.25 | 88.71 | 74.44 |
Percentage of households who experienced health impacts | 68.75 | 34.92 | 34.92 | 52.94 | 68.75 | 58.06 | 44.36 |
Indicators | Max | Min | Adina | Amutsinu | Salakope | Agavedzi | Blekusu |
---|---|---|---|---|---|---|---|
Percentage of female headed households | 82.35 | 56.35 | 56.35 | 82.35 | 81.25 | 59.68 | 61.65 |
Average household size | 12.18 | 9.63 | 10.59 | 12.18 | 14.63 | 9.63 | 9.66 |
Number of children <5 years | 241 | 37 | 214 | 37 | 46 | 95 | 241 |
Number of elderlies >65 years | 171 | 13 | 111 | 13 | 16 | 52 | 171 |
Number of disables | 92 | 3 | 43 | 3 | 5 | 39 | 92 |
Number of women | 569 | 79 | 459 | 79 | 97 | 240 | 569 |
Indicators | Min | Max | Adina | Amutsinu | Salakope | Agavedzi | Blekusu |
---|---|---|---|---|---|---|---|
Percentage of households that receive early warning information on flood | 18.80 | 53.97 | 53.97 | 23.53 | 31.25 | 27.42 | 18.80 |
Percentage of households that were aware of recent flood prior to flooding | 0.00 | 22.58 | 11.11 | 17.65 | 0.00 | 22.58 | 12.78 |
Percentage of households that have community support to address flood risk | 0.00 | 6.35 | 6.35 | 0.00 | 0.00 | 0.00 | 6.02 |
Percentage of households that receive government intervention | 0.00 | 38.35 | 2.38 | 0.00 | 0.00 | 11.29 | 38.35 |
Percentage of households that are satisfied with government intervention | 0.00 | 18.80 | 2.38 | 0.00 | 0.00 | 9.68 | 18.80 |
Percentage of households that recovers to the previous efficient state after a flood | 0.00 | 53.97 | 53.97 | 41.18 | 75.00 | 37.10 | 49.62 |
Percentage of households that have flood insurance | 0 | 3.76 | 2.38 | 0 | 0 | 0 | 3.759398 |
Percentage of households with multiple sources of income | 0 | 73.68 | 71.43 | 52.94 | 56.25 | 67.74 | 73.68 |
Percentage of households with information assets | 0 | 92.06 | 92.06 | 88.24 | 100 | 87.10 | 87.22 |
Percentage of households with transportation assets | 35.29 | 51.88 | 40.48 | 35.29 | 37.5 | 51.61 | 51.88 |
3. Results
3.1. Sociodemographic Characteristics of Survey Respondents (Household Heads)
3.2. Vulnerability Indices for the Exposed Communities
3.3. Determinants of Relocation Adaptation Option
4. Discussion
4.1. Community Vulnerability Levels
4.2. Predictors of Relocation
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Method | Equation | Description | References |
---|---|---|---|
Ranking | Uses on ordinal variables that can be converted to quantitative variables. | [34,36] | |
Z scores | Transforms all indicators values to a single scale with a mean of 0 and a standard deviation of 1. | [36,37] | |
Min–max | Rescales indicator values between 0 (worst rank) and 1 (best rank). | [3,36] | |
Distance to target | Rescales values between 0 and 1. It is the ratio of the value of the indicator to its maximum value. | [34,36] |
Community | Sensitivity | Exposure | Potential Impact | Adaptive Capacity | Community Vulnerability |
---|---|---|---|---|---|
Adina | 0.51 | 0.48 | 0.99 | 0.68 | 0.36 |
Amutsinu | 0.33 | 0.51 | 0.85 | 0.37 | 0.45 |
Salakope | 0.51 | 0.54 | 1.05 | 0.43 | 0.64 |
Agavedzi | 0.23 | 0.44 | 0.68 | 0.63 | 0.16 |
Blekusu | 0.70 | 0.23 | 0.93 | 0.95 | 0.1 |
Variable | Predictors + Compositional and Contextual Factors | ||||
---|---|---|---|---|---|
OR | SE | p Value | Confidence Interval | ||
Flood duration | 1.009646 | 0.0033071 | 0.003 | 1.003185 | 1.016148 |
Livelihoods (ref: 1 livelihood) | |||||
2 livelihoods | 0.5704749 | 0.1086301 | 0.003 | 0.3927809 | 0.8285577 |
Sea defence (ref: No) | |||||
Yes | 0.1879353 | 0.0349485 | 0.000 | 0.1305325 | 0.2705814 |
Age of household head (ref: 20–30) | |||||
40–59 | 1.067389 | 0.2157025 | 0.32 | 0.718304 | 1.586124 |
60+ | 0.8981923 | 0.1996318 | −0.48 | 0.5810074 | 1.388535 |
Gender of household head (ref: male) | |||||
Female | 1.377811 | 0.2834103 | 1.56 | 0.9206629 | 2.061951 |
House size (ref: 1–4) | |||||
5–7 | 1.282795 | 0.3962804 | 0.81 | 0.7001713 | 2.350228 |
Above 8 | 1.104163 | 0.307661 | 0.36 | 0.6395235 | 1.906381 |
Education (ref: No education) | |||||
Basic school | 1.119896 | 0.2231549 | 0.57 | 0.7578159 | 1.654975 |
Secondary school and above | 1.544611 | 0.453259 | 0.138 | 0.8690359 | 2.745366 |
Monthly Income (ref: <100) | |||||
100–400 | 1.024614 | 0.199909 | 0.12 | 0.6990134 | 1.501881 |
500–900 | 1.691449 | 0.5515699 | 1.61 | 0.892664 | 3.205014 |
1000 and above | 0.9576796 | 0.3090339 | −0.13 | 0.5087984 | 1.802581 |
Community (ref: Adina) | |||||
Agavedzi | 1.089387 | 0.1560924 | 0.32 | 0.6476522 | 1.832408 |
Blekusu | 0.8819346 | 0.1560924 | −0.71 | 0.6234237 | 1.24764 |
Probabilities Parameters | |||||
AIC | 0.653236 | Residual df | 338 | ||
BIC | −1784.577 | (1/df) Deviaance | 0.5894838 | ||
Log pseudolikelihood | −99.622777052 | (1/df) Pearson | 0.7939348 |
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Babanawo, D.; Mattah, P.A.D.; Agblorti, S.K.M.; Brempong, E.K.; Mattah, M.M.; Aheto, D.W. Local Indicator-Based Flood Vulnerability Indices and Predictors of Relocation in the Ketu South Municipal Area of Ghana. Sustainability 2022, 14, 5698. https://doi.org/10.3390/su14095698
Babanawo D, Mattah PAD, Agblorti SKM, Brempong EK, Mattah MM, Aheto DW. Local Indicator-Based Flood Vulnerability Indices and Predictors of Relocation in the Ketu South Municipal Area of Ghana. Sustainability. 2022; 14(9):5698. https://doi.org/10.3390/su14095698
Chicago/Turabian StyleBabanawo, Daystar, Precious Agbeko D. Mattah, Samuel K. M. Agblorti, Emmanuel K. Brempong, Memuna Mawusi Mattah, and Denis Worlanyo Aheto. 2022. "Local Indicator-Based Flood Vulnerability Indices and Predictors of Relocation in the Ketu South Municipal Area of Ghana" Sustainability 14, no. 9: 5698. https://doi.org/10.3390/su14095698
APA StyleBabanawo, D., Mattah, P. A. D., Agblorti, S. K. M., Brempong, E. K., Mattah, M. M., & Aheto, D. W. (2022). Local Indicator-Based Flood Vulnerability Indices and Predictors of Relocation in the Ketu South Municipal Area of Ghana. Sustainability, 14(9), 5698. https://doi.org/10.3390/su14095698