Determinants of Household-Level Coping Strategies and Recoveries from Riverine Flood Disasters: Empirical Evidence from the Right Bank of Teesta River, Bangladesh
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Sampling and Data Collection
3. Variables Selection and Statistical Analysis
3.1. Dependent Variables
- ▪
- Borrowing money: The term borrowing includes all kinds of strategies that a household employed to take loans from others. The formal sources include banks and non-governmental organizations (NGOs), whereas informal sources include local money lenders, friends, relatives, or neighbors. In extreme situations, some people borrow money by selling labor or field crops with an advance payment. Households that employed one or a combination of these strategies were grouped in this category.
- ▪
- Assets disposal: Disposable items include financial and physical assets. The physical disposable assets are comprised of livestock (poultry, cattle, goats), household utensils, jewelry, trees, crops, land. On the other hand, financial assets include household savings (deposits). If a household sold any physical assets or used up its savings in response to flood, it was classified in this category.
- ▪
- ▪ Consumption reduction: Food scarcity is common in disaster-affected areas. Households adopt numerous strategies to cope with shocks, including consumption smoothing, resorting to cheap foods, wild foods collection [16]. In this study, consumption reduction implies a household reducing their consumption in response to a flood disaster, in the form of meal skipping or starvation.
- ▪
- Temporary migration: Migration to cities or other flood-free areas is a common measure to compensate losses incurred from flood. If a family member from a household migrated outside of the flood prone area (study area) for income and then returned to their houses within six months, the household was labeled in this category.
- ▪
- Grants from external sources: Grants from external sources are vital for short-term survival. It helps flood disaster victims to compensate their losses [21]. Grants are distributed among flood victims by the local/national government, NGOs, local elites, or a host of other organizations. In this study, if a household received grants from external sources (e.g., government, NGOs, or local elites), it was classified in this category.
3.2. Explanatory Variables
3.3. Recovery from Flood Disasters
3.4. Data Analysis
4. Results and Discussion
4.1. Households’ Characteristics
4.2. Household-Level Coping Strategies
4.3. Determinants of Coping Strategies
- ▪
- The Hazard Component
- ▪
- The Exposure Component
- ▪
- The Vulnerability Component
- ▪
- The Capacity Component
4.4. Association between Coping Strategies and Post-Disaster Recovery
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Groups | Measures |
---|---|
Borrowing money | Borrowed money from NGOs |
Borrowed money from local money lenders | |
Borrowed money from relatives | |
Borrowed money from friends | |
Borrowed money from banks | |
Borrowed money by selling labor in advance | |
Borrowed money by selling crops in advance | |
Assets disposal | Sold poultry (livestock) |
Sold cattle (livestock) | |
Sold goats (livestock) | |
Sold household’sgoods (household assets) | |
Sold/leased out jewelry (household assets) | |
Sold/leased out lands (household assets) | |
Sold crops (household assets) | |
Sold trees (household assets) | |
Spent previous savings | |
Consumption reduction | Starvation/meal skipping during flood |
Temporary migration | Temporary migration for work |
Grants from external sources | Received emergency support from NGOs |
Received emergency support from government | |
Received emergency support from local elites |
Explanatory Variables | Dependent Variable: Borrowing Money | Dependent Variable: Assets Disposal | Dependent Variable: Consumption Reduction | Dependent Variable: Temporary Migration | Dependent Variable: Grants from External Sources | |||||
---|---|---|---|---|---|---|---|---|---|---|
B a | Exp(B) b | B a | Exp(B) b | B a | Exp(B) b | B a | Exp(B) b | B a | Exp(B) b | |
Floodwater depth | −0.97 (0.70) | 0.38 [0.10, 1.48] | −0.94 (0.55) | 0.39 [0.13, 1.15] | 2.25 *** (0.58) | 9.46 [3.05, 29.36] | −0.26 (0.57) | 0.77 [0.25, 2.35] | −0.48 (0.52) | 0.62 [0.23, 1.71] |
Location of house | 1.09 *** (0.39) | 2.98 [1.40, 6.36] | −0.86 * (0.43) | 0.42 [0.18, 0.97] | 0.35 (0.41) | 1.42 [0.64, 3.17] | 0.0 6(0.37) | 1.06 [0.51, 2.21] | 0.85 * (0.39) | 2.34 [1.08, 5.07] |
Affected by disease | 0.99 * (0.43) | 2.68 [1.16, 6.18] | −0.80 (0.46) | 0.45 [0.18, 1.11] | 0.77 (0.46) | 2.15 [0.87, 5.32] | 1.28 * (0.52) | 3.59 [1.31, 9.87] | 0.53 (0.38) | 1.71 [0.82, 3.56] |
Age | −0.03 * (0.01) | 0.97 [0.95, 1.00] | 0.00 (0.01) | 1.00 [0.98, 1.02] | −0.01 (0.01) | 0.99 [0.97, 1.01] | −0.02 * (0.01) | 0.98 [0.96, 1.00] | 0.01 (0.01) | 1.01 [0.99, 1.02] |
Female | −1.62 ** (0.59) | 0.20 [0.06, 0.64] | −0.24 (0.52) | 0.79 [0.28, 2.19] | 0.08 (0.55) | 1.08 [0.37, 3.20] | −0.37 (0.70) | 0.69 [0.18, 2.75] | −0.16 (0.57) | 0.85 [0.28, 2.57] |
Agricultural landless | 0.12 (0.34) | 1.13 [0.58, 2.22] | −1.12 *** (0.28) | 0.33 [0.19, 0.56] | 1.00 *** (0.29) | 2.71 [1.55, 4.75] | 0.95 *** (0.28) | 2.58 [1.49, 4.47] | −0.08 (0.25) | 0.93 [0.56, 1.53] |
Crop save | −0.22 (0.37) | 0.80 [0.39, 1.66] | 0.48 (0.33) | 1.62 [0.84, 3.11] | −1.76 *** (0.42) | 0.17 [0.08, 0.39] | 0.84 *** (0.29) | 2.31 [1.31, 4.09] | −0.21 (0.28) | 0.81 [0.46, 1.41] |
Mobile phone | 0.89 * (0.43) | 2.44 [1.06, 5.63] | 0.28 (0.34) | 1.32 [0.67, 2.59] | −0.02 (0.36) | 0.98 [0.49, 1.97] | 1.07 * (0.49) | 2.92 [1.11, 7.63] | −0.22 (0.36) | 0.80 [0.40, 1.62] |
Mitigation measures | 0.08 (0.41) | 1.08 [0.49, 2.40] | 0.28 (0.31) | 1.33 [0.73, 2.42] | −0.80 ** (0.31) | 0.45 [0.25, 0.83] | 0.92 * (0.41) | 2.50 [1.13, 5.55] | 0.46 (0.32) | 1.58 [0.84, 2.97] |
Nonfarm income | −1.06 *** (0.34) | 0.35 [0.18, 0.67] | 0.77 ** (0.31) | 2.16 [1.19, 3.94] | −0.47 (0.31) | 0.63 [0.34, 1.15] | −0.09 (0.29) | 0.91 [0.52, 1.61] | −0.20 (0.27) | 0.82 [0.49, 1.39] |
Gajaghanta | −0.36 (0.57) | 0.70 [0.23, 2.12] | 0.34 (0.37) | 1.41 [0.68, 2.92] | −0.53 (0.40) | 0.59 [0.27, 1.28] | −0.34 (0.38) | 0.71 [0.34, 1.51] | −1.86 *** (0.36) | 0.16 [0.08, 0.31] |
Belka | −1.05 (0.57) | 0.35 [0.12, 1.07] | 1.18 *** (0.40) | 3.25 [1.49, 7.08] | −1.53 *** (0.43) | 0.22 [0.09, 0.50] | −0.77 (0.40) | 0.47 [0.21, 1.01] | −1.67 *** (0.36) | 0.19 [0.09, 0.38] |
Constant | 2.31 * (1.10) | 10.07 | 2.20 * (0.93) | 9.03 | −1.26 (0.93) | 0.28 | −3.28 *** (1.06) | 0.04 | −0.55 (0.88) | 0.58 |
Log Likelihood | 266.31 | 317.096 | 345.51 | 354.186 | 421.07 | |||||
Wald Chi Square | 46.981 | 65.077 | 105.767 | 48.252 | 60.689 | |||||
Cox & Snell R Square | 0.117 | 0.159 | 0.245 | 0.120 | 0.149 | |||||
Nagelkerke R Square | 0.208 | 0.231 | 0.350 | 0.183 | 0.206 |
a | b | c | d | e | f | g | h | i | j | k | l | |
---|---|---|---|---|---|---|---|---|---|---|---|---|
a. Floodwater depth | 1 | −0.036 | 0.196 ** | −0.001 | 0.088 | 0.1 | −0.059 | −0.210 ** | −0.154 ** | −0.137 ** | 0.158 ** | 0.058 |
b. Location of house | 1 | −0.067 | −0.036 | 0.068 | 0 | −0.071 | 0.005 | −0.031 | 0.022 | −0.115 * | −0.027 | |
c. Affected by disease | 1 | 0.07 | 0.028 | 0.039 | 0.006 | −0.085 | 0.006 | −0.102 * | 0.003 | −0.043 | ||
d. Age | 1 | 0.036 | −0.074 | 0.038 | −0.081 | 0.005 | 0.111 * | 0.136 ** | −0.164 ** | |||
e. Female | 1 | 0.150 ** | −0.118 * | −0.230 ** | −0.088 | 0.058 | −0.033 | −0.121 * | ||||
f. Agricultural landless | 1 | −0.170 ** | −0.229 ** | −0.189 ** | 0.013 | 0.062 | −0.031 | |||||
g. Crop save | 1 | 0.174 ** | 0.157 ** | 0.138 ** | 0.015 | −0.035 | ||||||
h. Mobile phone | 1 | 0.139 ** | 0.048 | −0.002 | 0.058 | |||||||
i. Mitigation measures | 1 | 0.104 * | −0.056 | 0.033 | ||||||||
j. Nonfarm income | 1 | 0.093 | −0.166 ** | |||||||||
k. Gajaghanta | 1 | −0.694 ** | ||||||||||
l. Belka | 1 |
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District | Upazila | Union | Total Households | Sample Households |
---|---|---|---|---|
Nilphamari | Dimla | Purbachhatnai | 3435 | 68 |
Rangpur | Gangachara | Gajaghanta | 7929 | 158 |
Gaibandha | Sundarganj | Belka | 7608 | 151 |
Total | 18,972 | 377 |
Variables | Description | Mean | SD |
---|---|---|---|
Floodwater depth | Height of floodwater inside the home (continuous) | 2.12 | 1.03 |
Location of house | Location of home within 1000 m from the riverbank: yes = 1, otherwise = 0 | 0.85 | 0.36 |
Affected by disease | Family members infected by communicable disease in the last 5 years due to flood: yes = 1, otherwise = 0 | 0.86 | 0.35 |
Age | Age of household head (in years) | 48.93 | 14.15 |
Female | Female headed household: yes = 1, otherwise = 0 | 0.05 | 0.22 |
Agricultural landless | Household does not have agricultural lands: yes = 1, otherwise = 0 | 0.48 | 0.50 |
Crop save | Household has precautionary crop savings: yes = 1, otherwise = 0 | 0.27 | 0.45 |
Mobile phone | Household has informational device at home: yes = 1, otherwise = 0 | 0.85 | 0.36 |
Mitigation measures | Household has taken at least one structural mitigation measure to prevent a flood disaster: yes = 1, otherwise = 0 | 0.80 | 0.40 |
Nonfarm income | Household has a non-farm income source: yes = 1, otherwise = 0 | 0.33 | 0.47 |
Gajaghanta | Household lived in Gajaghanta: yes = 1, otherwise = 0 | 0.42 | 0.49 |
Belka | Household lived in Belka: yes = 1, otherwise = 0 | 0.40 | 0.49 |
Coping Strategies | Number of Coping Strategies | % of Households | |||||||||||||||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
1 | 2 | 3 | 4 | 5 | 0 | ||||||||||||||||||||||
BOMO | ✓ | ⊙ | ⊙ | ⊙ | ⊙ | 🟂 | 🟂 | 🟂 | 🟂 | 🟂 | 🟂 | ✦ | ✦ | ✦ | ✦ | ✯ | 85% | ||||||||||
ASDI | ✓ | ⊙ | ⊙ | ⊙ | ⊙ | 🟂 | 🟂 | 🟂 | 🟂 | 🟂 | ✦ | ✦ | ✦ | ✯ | 73% | ||||||||||||
CORE | ✓ | ⊙ | ⊙ | ⊙ | 🟂 | 🟂 | 🟂 | 🟂 | ✦ | ✦ | ✦ | ✯ | 29% | ||||||||||||||
TEMI | ⊙ | ⊙ | 🟂 | 🟂 | 🟂 | 🟂 | ✦ | ✦ | ✯ | 23% | |||||||||||||||||
GRES | ✓ | ⊙ | ⊙ | ⊙ | 🟂 | 🟂 | 🟂 | 🟂 | 🟂 | ✦ | ✦ | ✦ | ✦ | ✯ | 34% | ||||||||||||
Number of households | 15 | 22 | 4 | 2 | 98 | 23 | 9 | 11 | 4 | 7 | 7 | 3 | 9 | 49 | 12 | 8 | 28 | 2 | 1 | 24 | 12 | 9 | 1 | 5 | 9 | 3 |
Explanatory Variables | Dependent Variable | ||||
---|---|---|---|---|---|
Borrowing Money | Assets Disposal | Consumption Reduction | Temporary Migration | Grants from External Sources | |
Floodwater depth | n.s | n.s | (2.25) *** | n.s | n.s |
Location of house | (1.09) *** | (−0.86) * | n.s | n.s | (0.85) * |
Affected by disease | (0.99) * | n.s | n.s | (1.28) * | n.s |
Age | (−0.03) * | n.s | n.s | (−0.02) * | n.s |
Female | (−1.62) ** | n.s | n.s | n.s | n.s |
Agricultural landless | n.s | (−1.12) *** | (1.00) *** | (0.95) *** | n.s |
Crop save | n.s | n.s | (−1.76) *** | (0.84) *** | n.s |
Mobile phone | (0.89) * | n.s | n.s | (1.07) * | n.s |
Mitigation measures | n.s | n.s | (−0.80) ** | (0.92) * | n.s |
Nonfarm income | (−1.06) *** | (0.77) ** | n.s | n.s | n.s |
Gajaghanta | n.s | n.s | n.s | n.s | (−1.86) *** |
Belka | n.s | (1.18) *** | (−1.53) *** | n.s | (−1.67) *** |
Constant | (2.31) * | (2.20) * | (−1.26) | (−3.28) *** | (−0.55) |
Coping Strategies Variables | Recovered from Last Flood Disaster | ||
---|---|---|---|
Yes (N = 52) | No (N = 325) | OR [CI] (N = 3377) | |
% of households borrowed money | 26.9 | 94.8 | 0.02 * [0.01–0.05] |
% of households disposed assets | 94.2 | 70.2 | 6.95 * [2.12–22.84] |
% of households reduced consumption | 13.5 | 31.1 | 0.35 * [0.15–0.79] |
% of households migrated temporarily | 15.4 | 23.7 | 0.60 [0.26–1.30] |
% of households received grants from external sources | 25.0 | 35.1 | 0.62 [0.32–1.20] |
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Mondal, M.S.H.; Murayama, T.; Nishikizawa, S. Determinants of Household-Level Coping Strategies and Recoveries from Riverine Flood Disasters: Empirical Evidence from the Right Bank of Teesta River, Bangladesh. Climate 2021, 9, 4. https://doi.org/10.3390/cli9010004
Mondal MSH, Murayama T, Nishikizawa S. Determinants of Household-Level Coping Strategies and Recoveries from Riverine Flood Disasters: Empirical Evidence from the Right Bank of Teesta River, Bangladesh. Climate. 2021; 9(1):4. https://doi.org/10.3390/cli9010004
Chicago/Turabian StyleMondal, Md. Sanaul Haque, Takehiko Murayama, and Shigeo Nishikizawa. 2021. "Determinants of Household-Level Coping Strategies and Recoveries from Riverine Flood Disasters: Empirical Evidence from the Right Bank of Teesta River, Bangladesh" Climate 9, no. 1: 4. https://doi.org/10.3390/cli9010004
APA StyleMondal, M. S. H., Murayama, T., & Nishikizawa, S. (2021). Determinants of Household-Level Coping Strategies and Recoveries from Riverine Flood Disasters: Empirical Evidence from the Right Bank of Teesta River, Bangladesh. Climate, 9(1), 4. https://doi.org/10.3390/cli9010004