Socio-Economic Resilience to Floods in Coastal Areas of Thailand
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Data Collection
2.3. Data Analysis
3. Results
3.1. Exposure and Vulnerability
3.2. Resilience to Disasters
3.3. Coping Capacities
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Unit | Krabi (8 Districts) | Nakhon Si Thammarat (23 Districts) |
---|---|---|
Subdistrict | 48 | 131 |
Subdistrict municipality | 12 | 49 |
Town municipality | 1 | 3 |
City municipality | 0 | 1 |
Sub- Indicators | Variables | Definition 1 | Data Sources (Year) 2 |
---|---|---|---|
Exposure | Population density | Population density (scale 0 to 5) 0 = 0 1 = 1–200 people per square kilometer 2 = 201–400 people per square kilometer 3 = 401–600 people per square kilometer 4 601–800 people per square kilometer 5 > 800 people per square kilometer | DOPA (2017) |
Vulnerability | Percentage of infant | Percentage of infant (scale 0 to 5) 0 = 0% 1 = 0.1–0.4% 2 = 0.5–0.8% 3 = 0.9–1.2% 4 = 1.3–1.7% 5 > 1.7% | DOPA (2017) |
Percentage of children under the age of five | Percentage of children under the age of five (scale 0 to 5) 0 = 0% 1 = 0.1–2.5% 2 = 2.6–5.0% 3 = 5.1–7.5% 4 = 7.6–10.0% 5 > 10.0% | DOPA (2017) | |
Percentage of elderly population (60+) | Percentage of elderly population (60+) (scale 0 to 5) 0 = 0% 1 = 0.1–5.0% 2 = 5.1–10.0% 3 = 10.1–15.0% 4 = 15.1–20.0% 5 > 20.0% | DOPA (2017) | |
Number of prisoners | Number of prisoners that exposed or at risk from disasters (scale 0 to 5) 0 = 0 1 = 1–1000 prisoners 2 = 1001–2000 prisoners 3 = 2001–3000 prisoners 4 = 3001–4000 prisoners 5 > 4000 prisoners | DOC (2018) | |
Number of orphans and homeless persons | Number of orphans and homeless persons that exposed or at risk from disasters (scale 0 to 5) 0 = 0 1 = 1–100 persons 2 = 101–200 persons 3 = 201–300 persons 4 = 301–400 persons 5 > 400 persons | DCY, DSDW, DJOP (2019) | |
Number of disabled persons | Number of disabled persons that exposed or at risk from disasters (scale 0 to 5) 0 = 0 1 = 1–250 persons 2 = 251–500 persons 3 = 501–750 persons 4 = 751–1000 persons 5 > 1000 persons | DSDW, Krabi Provincial PHO, Nakhon Si Thammarat Provincial PHO (2019) | |
Prevalence of chronic diseases | Prevalence of chronic diseases include CKD, COPD, DM, HT, DM+HT, stroke (scale 0 to 5) 0 = 0 1 = total disease prevalence 0.1–3.5 2 = total disease prevalence 3.6–7.0 3 = total disease prevalence 7.1–10.5 4 = total disease prevalence 10.6–14.0 5 = total disease prevalence > 14.0 | Krabi Provincial PHO, Nakhon Si Thammarat Provincial PHO (2019) | |
Total area of mangrove forest | Total area of mangrove forest (scale 0 to 5) 0 = 0 rai 1 = 1–3000 rai 2 = 3001–6000 rai 3 = 6001–9000 rai 4 = 9001–12000 rai 5 > 12,000 rai | DMCR (2018) | |
Soft coping capacity | Literacy rate | Literacy rate (scale 0 to 1) 0 < 90% 1 ≥ 90% | NSO (2018) |
Hard coping capacy | Hospital at subdistrict level | Hospital at subdistrict level (scale 0 to 1) 0 = No 1 = Yes | Strategy and Planning Division, Office of the Permanent Secretary of MoPH (2019) |
Hospital at district and provincial level | Hospital at district and provincial level (scale 0 to 1) 0 = No 1 = Yes | Strategy and Planning Division, Office of the Permanent Secretary of MoPH (2019) | |
Telecommunication development | Information and communication technology master plan at SAO and municipality level (scale 0 to 1) 0 = No 1 = Yes | DLA, SAOs, Municipalities (2019) |
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Langkulsen, U.; Rwodzi, D.T.; Cheewinsiriwat, P.; Nakhapakorn, K.; Moses, C. Socio-Economic Resilience to Floods in Coastal Areas of Thailand. Int. J. Environ. Res. Public Health 2022, 19, 7316. https://doi.org/10.3390/ijerph19127316
Langkulsen U, Rwodzi DT, Cheewinsiriwat P, Nakhapakorn K, Moses C. Socio-Economic Resilience to Floods in Coastal Areas of Thailand. International Journal of Environmental Research and Public Health. 2022; 19(12):7316. https://doi.org/10.3390/ijerph19127316
Chicago/Turabian StyleLangkulsen, Uma, Desire Tarwireyi Rwodzi, Pannee Cheewinsiriwat, Kanchana Nakhapakorn, and Cherith Moses. 2022. "Socio-Economic Resilience to Floods in Coastal Areas of Thailand" International Journal of Environmental Research and Public Health 19, no. 12: 7316. https://doi.org/10.3390/ijerph19127316
APA StyleLangkulsen, U., Rwodzi, D. T., Cheewinsiriwat, P., Nakhapakorn, K., & Moses, C. (2022). Socio-Economic Resilience to Floods in Coastal Areas of Thailand. International Journal of Environmental Research and Public Health, 19(12), 7316. https://doi.org/10.3390/ijerph19127316