Benchmarking Community Disaster Resilience in Nepal
Abstract
:1. Introduction
- How does community resilience manifest itself across Nepal?
- Do clusters of higher and lower community resilience exist across Nepal?
2. Concept of Resilience and Its Measurement
2.1. Defining Resilience
2.2. Measuring Disaster Resilience
3. Materials and Methods
3.1. Study Area
3.2. Selection of Variables
3.3. Methods
4. Results
4.1. Components of CDRI
4.2. Geographic Distribution of CDRI Components
4.3. Spatial Distribution of CDRI Scores
4.4. Spatial Agglomeration of CDRI Scores
5. Discussion
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Dates | Disaster Type | Death (Missing) | Injured | Estimated Damages (NPR Million) | Impacted Districts | |
---|---|---|---|---|---|---|
1 | 2019-03-31 | Windstorm | 27 | 1122 | 90 | Bara, Parsa |
2 | 2017-08-14 | Flood | 134 | 22 | 60,716.6 * | 35 districts, 18 Tarai districts severely affected |
3 | 2016-07-26 | Landslide | 25 (1) | 7 | - | Pyuthan |
4 | 2015-07-30 | Landslide | 27 (1) | 3 | - | Kaski |
5 | 2015-06-12 | Landslide | 39 | 8 | - | Taplejung |
6 | 2015-04-25 | Earthquake | 8970 | 22,302 | 706,461 ** | 31 (out of 77) districts |
7 | 2014-10-14 | Snowstorm | 48 | - | - | Mustang (impact of HudHud cyclone) |
8 | 2014-08-14 | Flood | 34 (91) | 26 | 10,052 | Surkhet |
9 | 2014-08-14 | Flood | 14 (4) | 2 | 511.84 | Dang |
10 | 2014-08-13 | Flood | 33 (15) | 2 | 3775.4 | Bardiya |
11 | 2014-08-13 | Flood | 15 (5) | 2 | 480 | Banke |
12 | 2014-08-02 | Landslide | 33 (123) | 47 | 130.4 *** | Sindhupalchowk |
13 | 2014-04-18 | Avalanche | 13 (3) | 7 | - | Solukhumbu |
14 | 2012-09-30 | Landslide | 10 (4) | - | - | Ilam |
15 | 2012-09-23 | Avalanche | 9 (3) | 13 | - | Gorkha |
16 | 2012-05-05 | Flash Flood | 40 (32) | 5 | 11 | Kaski |
17 | 2011-09-18 | Earthquake | 6 | 30 | - | Eastern districts |
18 | 2008-08-18 | Flood | 55 | 2,350 | 3,773.6 **** | Sunsari (Koshi embankment breach) |
Index/Model (Authors) | Type | Methodological Approach | Geographic Focus (Country, Study Area) | Domains & Number of Indicators | |
---|---|---|---|---|---|
1 | Baseline Resilience Index for Communities (BRIC) (Cutter et al. 2010) [26] | Index | Disaster Resilience of Place (DROP) | United States, FEMA Region IV | Social (7), Economic (7), Institutional (8), Infrastructural (7), Community Capital (7) |
2 | Climate Disaster Resilience Index (CDRI) (Shaw & IDEM 2009) [33] | Index | Qualitative approach | Indonesia, Banda Aceh; Thailand, Bangkok; Sri Lanka, Colombo; Vietnam, Danang & Hue; Philippines, Iloilo & City of San Fernando; India, Mumbai; and Japan, Yokohama | Natural (2), Physical (8), Social (3), Economics (6), Institutional (4) |
3 | Coastal community resilience (CCR) (Courtney et al. 2008) [34] | Tool | Participatory process | Thailand, Sri Lanka, Indonesia, India, and the Maldives (Indian Ocean region) | Governance (4), Society and Economy (4), Coastal Resource Management (4), Land Use and Structural Design (4), Risk Knowledge (4), Warning and Evacuation (4), Emergency Response (4), Disaster Recovery (4) |
4 | Coastal Resilience Index (Sempier et al. 2010) [35] | Score card | - | USA, Gulf Coast | Community Capacities: Critical Infrastructure & Facilities, Transportation Issues, Community Plans & Agreements, Mitigation Measures, Business Plans, Social Systems |
5 | Communities Advancing Resilience Toolkit (CART) (Pfefferbaum et al. 2013) [36] | Tool | Qualitative, participatory approach | Individual Communities (not specified) | Connection and Caring (8), Resources (6), Transformative potential (1), Disaster Management (4) |
6 | Community Disaster Resilience Index (CDRI) (Yoon et al. 2015) [25] | Index | Statistical approach, factor analysis | South Korea, 229 local municipalities | Human (5), Social (3), Economic (3), Institutional (5), Physical (4), Environmental (4) |
7 | Community Disaster Resilience Index (Mayunga 2007) [37] | Index | Theoretical Framework Matrix | USA, Texas | Social Capital (3), Economic Capital (3), Human Capital (4), Physical Capital (3), Natural Capital (3) |
8 | Community Resilience Index (Kafle 2012) [27] | Index | Statistical approach | Indonesia, Aceh | Process (10), Outcome (25) |
9 | Community-Based Resilience Analysis (CoBRA) (UNDP 2014) [38] | Tool | Participatory qualitative approaches | Kenya and Uganda | Community Characteristics |
10 | Conjoint Community Resilience Assessment Measurement (CCRAM) (Cohen et al. 2013) [39] | Tool | Literature reviews and DELPHI | Israel, 9 towns | Community Capacities: Leadership, collective efficacy, preparedness, place attachment, social trust, social relationship |
11 | Modified BRIC (Siebeneck et al. 2015) [6] | Index | Statistical approach, factor analysis | Thailand, 76 provinces | Social (6), Economic (3), Institutional (11), Community (5) |
12 | PEOPLES (Reneschier et al. 2010) [40] | Tool | MCEER | USA, New York | Population and Demographics (3), Environmental/Ecosystem (6), Organized Governmental Services (3), Physical Infrastructure (2), Lifestyle & Community Competence (3), Economic Development (3), Social-Cultural Capital (7) |
13 | Rural Resilience Index (RRI) (Cox & Halmen 2015) [41] | Index | Participatory action research | Canada, British Columbia | Social Fabric, Community Resources, Disaster Management |
Resilience Concept (VARIABLE NAME) | Variable Description | Data Source | Impact on Resilience |
---|---|---|---|
Social resilience | |||
Pre-retirement age (PAGE65) | % pop below 65 years of age | Census 2011 | Positive |
Transportation (PVEHICLE) | % households with at least one vehicle | Census 2011 | Positive |
Communication capacity (PPHONE) | % households with telephone service available | Census 2011 | Positive |
Information access (PRADIO) | % of household with access to a radio | Census 2011 | Positive |
Language competency (PNEPALI) | % pop proficient Nepali speakers | Census 2011 | Positive |
Non-special needs (PNODIS) | % pop without sensor, physical, or mental disability | Census 2011 | Positive |
Education (PBSLC) | % pop without school degree (School leaving certificate (SLC) education) | Census 2011 | Negative |
Female-headed households (PFEMHH) | % female-headed households | Census 2011 | Negative |
Caste (PDALIT) | % Dalit population | Census 2011 | Negative |
Economic resilience | |||
Homeownership (POWNHH) | % owner-occupied housing units | Census 2011 | Positive |
Employment rate (PEMPLOY) | % labor force employed | Census 2011 | Positive |
Non-dependence on primary sectors (PNOAGRI) | % pop not employed in farming, fishing, forestry, and extractive industries | Census 2011 | Positive |
Employment (PFEMEMPLOY) | % female labor force participation | Census 2011 | Negative |
Community Capital | |||
Place attachment (PSAMEDIS) | % pop born in the same place | Census 2011 | Positive |
5-yr migration (PMIGRATED) | % pop who migrated within previous 5 years | Census 2011 | Negative |
Absentee population (PABSENTPOP) | % pop who are working outside of the country | Census 2011 | Negative |
Infrastructure Resilience | |||
Sturdier housing types (PRCC) | % housing units with reinforced cement concrete (RCC) foundation | Census 2011 | Positive |
Internet Infrastructure (PINTERNET) | % of households with internet access | Census 2011 | Positive |
Cooking capabilities (PHHGASELEC) | % of households with gas and/or electric cooking capabilities | Census 2011 | Positive |
Environmental resilience | |||
Rainy days (PRAINYDAY) | Average no. of rainy days | Karki, Schickhoff [56] | Negative |
Elevation (AVGELEV) | Average elevation | ASTER GDEM | Negative |
Pervious surfaces (PPERVIOUS) | Average % perviousness | ICIMOD 2011 | Positive |
Component | Loaded Variables | Factor Loadings | Component Theme | % of Variance |
---|---|---|---|---|
1 | PRCC | 0.840 | Infrastructure | 26.05 |
PINTERNET | 0.837 | |||
PNOAGRI | 0.703 | |||
PPHONE | 0.539 | |||
PBSLC | -0.704 | |||
PSAMEDIS | -0.752 | |||
POWNHH | -0.817 | |||
2 | PFEMEMPLOY | 0.840 | Economic-Social | 18.72 |
PEMPLOY | 0.796 | |||
PNEPALI | 0.655 | |||
AVGRAINY | 0.633 | |||
AVGELEV | 0.591 | |||
PRADIO | 0.506 | |||
PNODIS | -0.568 | |||
PVEHICLE | -0.748 | |||
3 | PABSENTPOP | 0.805 | Community Capital | 8.94 |
PFEMHH | 0.767 | |||
PPHONE | 0.552 | |||
PAGE65 | -0.639 | |||
4 | AVGELEV | 0.664 | Environmental | 5.56 |
PPERVIOUS | -0.789 | |||
5 | PDALIT | 0.842 | Caste | 5.01 |
6 | PMIGRATED | 0.989 | Migration | 4.77 |
Total | 69.05 |
Eco-Region | Total Number of Districts | Total Number of VDCs | Number (and %) of VDCs in Each CDRI Categories | ||||
---|---|---|---|---|---|---|---|
High | High-Medium | Medium | Medium-Low | Low | |||
Mountain | 16 | 544 | 31 (5.7%) | 114 (20.9%) | 319 (58.6%) | 79 (14.5%%) | 1 (0.2%) |
Hill | 39 | 2033 | 200 (9.8%) | 603 (29.7%) | 937 (46.1%) | 290 (14.3%) | 3 (0.1%) |
Tarai | 20 | 1394 | 7 (0.5%) | 87 (6.2%) | 459 (32.9%) | 703 (50.4%) | 138 (9.9%) |
District | Total VDCs | % of VDCs in each category of DRI | Total Population Census 2011 | % population in each category of DRI | |||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
High | High-Medium | Medium | Medium-Low | Low | High | High-Medium | Medium | Medium-Low | Low | ||||
1 | Taplejung | 50 | 6.00% | 24.00% | 68.00% | 2.00% | - | 126,448 | 2.51% | 35.14% | 60.74% | 1.61% | - |
2 | Panchthar | 41 | - | 9.76% | 90.24% | - | - | 190,491 | - | 16.30% | 83.70% | - | - |
3 | Ilam | 49 | - | 4.08% | 77.55% | 18.37% | - | 287,932 | - | 7.73% | 74.74% | 17.53% | - |
4 | Jhapa | 50 | 4.00% | 14.00% | 50.00% | 32.00% | - | 807,934 | 7.53% | 28.25% | 47.09% | 17.12% | - |
5 | Morang | 66 | 1.52% | 12.12% | 46.97% | 37.88% | 1.52% | 959,568 | 0.59% | 15.53% | 59.05% | 23.98% | 0.85% |
6 | Sunsari | 52 | 3.85% | 3.85% | 50.00% | 40.38% | 1.92% | 753,244 | 18.80% | 13.67% | 41.37% | 24.96% | 1.20% |
7 | Dhankuta | 36 | - | 5.56% | 83.33% | 11.11% | - | 161,398 | - | 19.36% | 67.95% | 12.69% | - |
8 | Terhathum | 32 | - | 21.88% | 71.88% | 6.25% | - | 100,833 | - | 24.68% | 70.12% | 5.19% | - |
9 | Sankhuwasabha | 34 | 5.88% | 2.94% | 70.59% | 17.65% | 2.94% | 158,222 | 7.05% | 16.62% | 64.38% | 11.72% | 0.23% |
10 | Bhojpur | 63 | - | 6.35% | 74.60% | 19.05% | - | 181,225 | - | 9.30% | 72.13% | 18.57% | - |
11 | Solukhumbu | 34 | 5.88% | 23.53% | 58.82% | 11.76% | - | 105,119 | 5.35% | 21.56% | 58.68% | 14.41% | - |
12 | Khotang | 76 | 1.32% | 6.58% | 75.00% | 17.11% | - | 205,225 | 0.81% | 4.65% | 77.70% | 16.84% | - |
13 | Okhaldhunga | 56 | - | 3.57% | 76.79% | 19.64% | - | 146,824 | - | 5.22% | 75.33% | 19.44% | - |
14 | Udayapur | 45 | - | - | 55.56% | 44.44% | - | 315,429 | - | - | 76.84% | 23.16% | - |
15 | Saptari | 115 | - | 0.87% | 53.04% | 46.09% | - | 637,844 | - | 0.96% | 56.47% | 42.57% | - |
16 | Siraha | 108 | - | 4.63% | 57.41% | 37.96% | - | 635,627 | - | 6.61% | 58.73% | 34.66% | - |
17 | Dhanusa | 102 | - | 9.80% | 54.90% | 34.31% | 0.98% | 753,682 | - | 21.39% | 47.93% | 29.75% | 0.93% |
18 | Mahottari | 77 | - | 1.30% | 35.06% | 61.04% | 2.60% | 625,207 | - | 1.07% | 35.23% | 61.45% | 2.25% |
19 | Sarlahi | 100 | - | 1.00% | 5.00% | 72.00% | 22.00% | 769,330 | - | 1.33% | 7.73% | 73.99% | 16.95% |
20 | Sindhuli | 54 | - | 1.85% | 42.59% | 55.56% | - | 293,173 | - | 13.44% | 37.11% | 49.45% | - |
21 | Ramechhap | 55 | - | 5.45% | 76.36% | 18.18% | - | 201,423 | - | 7.67% | 72.67% | 19.66% | - |
22 | Dolakha | 52 | 5.77% | 15.38% | 71.15% | 7.69% | - | 185,099 | 5.45% | 23.39% | 65.70% | 5.46% | - |
23 | Sindhupalchok | 79 | 2.53% | 11.39% | 69.62% | 16.46% | - | 285,770 | 3.45% | 13.96% | 66.30% | 16.29% | - |
24 | Kavrepalanchok | 90 | 1.11% | 3.33% | 45.56% | 50.00% | - | 375,221 | 6.60% | 5.98% | 46.39% | 41.03% | - |
25 | Lalitpur | 42 | 23.81% | 16.67% | 35.71% | 23.81% | - | 457,606 | 72.04% | 13.19% | 10.35% | 4.42% | - |
26 | Bhaktapur | 18 | 44.44% | 16.67% | 38.89% | 0.00% | - | 298,704 | 77.82% | 7.01% | 15.17% | - | - |
27 | Kathmandu | 59 | 54.24% | 16.95% | 27.12% | 1.69% | - | 1,699,289 | 92.52% | 3.45% | 3.77% | 0.27% | - |
28 | Nuwakot | 62 | - | 4.84% | 43.55% | 50.00% | 1.61% | 275,775 | - | 11.75% | 42.33% | 45.02% | 0.90% |
29 | Rasuwa | 18 | - | 22.22% | 72.22% | 5.56% | - | 42,133 | - | 17.42% | 77.43% | 5.15% | - |
30 | Dhading | 50 | 2.00% | 12.00% | 64.00% | 22.00% | - | 334,292 | 6.04% | 11.07% | 61.15% | 21.75% | - |
31 | Makwanpur | 44 | 2.27% | - | 25.00% | 68.18% | 4.55% | 415,601 | 20.37% | - | 27.77% | 49.56% | 2.29% |
32 | Rautahat | 97 | - | - | 2.06% | 62.89% | 35.05% | 686,059 | - | - | 0.58% | 68.95% | 30.47% |
33 | Bara | 99 | - | - | 7.07% | 60.61% | 32.32% | 685,831 | - | - | 8.14% | 65.55% | 26.30% |
34 | Parsa | 83 | - | 1.20% | 7.23% | 68.67% | 22.89% | 597,769 | - | 0.58% | 26.87% | 55.08% | 17.47% |
35 | Chitawan | 38 | 2.63% | 39.47% | 36.84% | 13.16% | 7.89% | 569,732 | 25.25% | 38.75% | 27.92% | 5.55% | 2.53% |
36 | Gorkha | 67 | 8.96% | 31.34% | 47.76% | 11.94% | - | 268,942 | 19.63% | 28.50% | 45.76% | 6.10% | - |
37 | Lamjung | 61 | 24.59% | 50.82% | 21.31% | 3.28% | - | 166,150 | 36.90% | 43.65% | 17.12% | 2.33% | - |
38 | Manang | 13 | - | 15.38% | 61.54% | 15.38% | - | 5,553 | - | 27.12% | 65.08% | 7.80% | - |
39 | Kaski | 45 | 26.67% | 64.44% | 8.89% | - | - | 480,952 | 74.60% | 23.48% | 1.92% | - | - |
40 | Tanahu | 47 | 34.04% | 48.94% | 17.02% | - | - | 320,547 | 45.50% | 42.99% | 11.51% | - | - |
41 | Syangja | 62 | 12.90% | 59.68% | 27.42% | - | - | 288,100 | 16.96% | 61.62% | 21.42% | - | - |
42 | Parbat | 55 | 25.45% | 63.64% | 10.91% | - | - | 145,667 | 32.26% | 59.60% | 8.14% | - | - |
43 | Baglung | 60 | 50.00% | 50.00% | - | - | - | 266,630 | 53.56% | 46.44% | - | - | - |
44 | Myagdi | 41 | 34.15% | 58.54% | 4.88% | - | - | 109,606 | 43.02% | 54.64% | 2.34% | - | - |
45 | Mustang | 16 | 12.50% | 37.50% | 31.25% | 18.75% | - | 11,593 | 12.40% | 52.34% | 19.54% | 15.72% | - |
46 | Palpa | 66 | 1.52% | 37.88% | 53.03% | 7.58% | - | 258,893 | 11.24% | 37.62% | 44.01% | 7.13% | - |
47 | Nawalparasi | 74 | - | 14.86% | 43.24% | 41.89% | - | 638,954 | - | 25.72% | 45.52% | 28.75% | - |
48 | Rupandehi | 71 | 1.41% | 11.27% | 16.90% | 61.97% | 8.45% | 874,566 | 13.55% | 24.08% | 15.82% | 39.63% | 6.93% |
49 | Kapilbastu | 78 | - | 2.56% | 26.92% | 67.95% | 2.56% | 569,834 | - | 3.54% | 32.91% | 61.42% | 2.12% |
50 | Arghakhanchi | 42 | 9.52% | 73.81% | 16.67% | - | - | 196,895 | 13.29% | 66.20% | 20.51% | - | - |
51 | Gulmi | 79 | 5.06% | 81.01% | 13.92% | - | - | 279,005 | 8.14% | 78.43% | 13.43% | - | - |
52 | Rukum | 43 | 4.65% | 20.93% | 69.77% | 4.65% | - | 207,290 | 2.19% | 20.95% | 73.62% | 3.24% | - |
53 | Salyan | 47 | - | 6.38% | 74.47% | 19.15% | - | 241,716 | - | 7.30% | 73.55% | 19.15% | - |
54 | Rolpa | 51 | - | 29.41% | 68.63% | 1.96% | - | 221,177 | - | 28.71% | 69.26% | 2.02% | - |
55 | Pyuthan | 49 | 18.37% | 67.35% | 14.29% | - | - | 226,796 | 20.86% | 67.06% | 12.08% | - | - |
56 | Dang | 41 | - | 17.07% | 48.78% | 34.15% | - | 548,141 | - | 25.38% | 42.19% | 32.42% | - |
57 | Banke | 47 | - | 8.51% | 29.79% | 44.68% | 17.02% | 485,164 | - | 21.17% | 35.72% | 30.42% | 12.69% |
58 | Bardiya | 32 | - | - | 28.13% | 68.75% | 3.13% | 423,611 | - | - | 28.79% | 69.20% | 2.01% |
59 | Surkhet | 51 | 5.88% | 37.25% | 47.06% | 9.80% | - | 343,318 | 7.57% | 42.73% | 45.49% | 4.21% | - |
60 | Jajarkot | 30 | 3.33% | 30.00% | 60.00% | 6.67% | - | 170,106 | 1.43% | 24.58% | 69.79% | 4.21% | - |
61 | Dailekh | 56 | - | 32.14% | 62.50% | 5.36% | - | 260,855 | - | 31.12% | 64.54% | 4.35% | - |
62 | Dolpa | 23 | 21.74% | 43.48% | 17.39% | 17.39% | - | 36,128 | 20.03% | 52.18% | 14.09% | 13.70% | - |
63 | Jumla | 30 | 13.33% | 30.00% | 36.67% | 20.00% | - | 107,495 | 9.92% | 36.33% | 35.06% | 18.69% | - |
64 | Kalikot | 30 | - | 23.33% | 66.67% | 10.00% | - | 136,587 | - | 26.12% | 66.49% | 7.39% | - |
65 | Mugu | 24 | 8.33% | 12.50% | 58.33% | 20.83% | - | 54,832 | 4.48% | 14.81% | 69.40% | 11.32% | - |
66 | Humla | 27 | 7.41% | 18.52% | 55.56% | 18.52% | - | 49,933 | 11.83% | 24.19% | 50.00% | 13.99% | - |
67 | Bajhang | 47 | 4.26% | 27.66% | 48.94% | 19.15% | - | 194,701 | 3.54% | 25.83% | 47.54% | 23.08% | - |
68 | Bajura | 27 | 7.41% | 40.74% | 44.44% | 7.41% | - | 134,154 | 9.43% | 40.66% | 44.57% | 5.34% | - |
69 | Achham | 75 | 5.33% | 60.00% | 33.33% | 1.33% | - | 256,188 | 2.84% | 61.90% | 33.44% | 1.82% | - |
70 | Doti | 51 | 5.88% | 50.98% | 41.18% | 1.96% | - | 207,070 | 6.81% | 54.35% | 37.37% | 1.47% | - |
71 | Kailali | 44 | - | 4.55% | 38.64% | 45.45% | 11.36% | 766,659 | - | 7.44% | 54.05% | 32.10% | 6.41% |
72 | Kanchanpur | 20 | - | 10.00% | 60.00% | 25.00% | 5.00% | 448,503 | - | 7.61% | 73.72% | 17.06% | 1.62% |
73 | Dadeldhura | 21 | - | 33.33% | 57.14% | 9.52% | - | 141,004 | - | 32.29% | 60.83% | 6.88% | - |
74 | Baitadi | 63 | - | 11.11% | 73.02% | 15.87% | - | 250,225 | - | 15.63% | 66.68% | 17.70% | - |
75 | Darchula | 41 | - | 14.63% | 58.54% | 26.83% | - | 132,484 | - | 17.63% | 55.41% | 26.96% | - |
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Aksha, S.K.; Emrich, C.T. Benchmarking Community Disaster Resilience in Nepal. Int. J. Environ. Res. Public Health 2020, 17, 1985. https://doi.org/10.3390/ijerph17061985
Aksha SK, Emrich CT. Benchmarking Community Disaster Resilience in Nepal. International Journal of Environmental Research and Public Health. 2020; 17(6):1985. https://doi.org/10.3390/ijerph17061985
Chicago/Turabian StyleAksha, Sanam K., and Christopher T. Emrich. 2020. "Benchmarking Community Disaster Resilience in Nepal" International Journal of Environmental Research and Public Health 17, no. 6: 1985. https://doi.org/10.3390/ijerph17061985
APA StyleAksha, S. K., & Emrich, C. T. (2020). Benchmarking Community Disaster Resilience in Nepal. International Journal of Environmental Research and Public Health, 17(6), 1985. https://doi.org/10.3390/ijerph17061985