| Literature DB >> 33479169 |
Lisa M Dellmuth1, Frida A-M Bender2, Aiden R Jönsson2, Elisabeth L Rosvold3, Nina von Uexkull4.
Abstract
As the climate changes, human livelihoods will increasingly be threatened by extreme weather events. To provide adequate disaster relief, states extensively rely on multilateral institutions, in particular the United Nations (UN). However, the determinants of this multilateral disaster aid channeled through the UN are poorly understood. To fill this gap, we examine the determinants of UN disaster aid using a dataset on UN aid covering almost 2,000 climate-related disasters occurring between 2006 and 2017. We make two principal contributions. First, we add to research on disaster impacts by linking existing disaster data from the Emergency Events Database (EM-DAT) to a meteorological reanalysis. We generate a uniquely global hazard severity measure that is comparable across different climate-related disaster types, and assess and bolster measurement validity of EM-DAT climate-related disasters. Second, by combining these data with social data on aid and its correlates, we contribute to the literature on aid disbursements. We show that UN disaster aid is primarily shaped by humanitarian considerations, rather than by strategic donor interests. These results are supported by a series of regression and out-of-sample prediction analyses and appear consistent with the view that multilateral institutions are able to shield aid allocation decisions from particular state interests to ensure that aid is motivated by need.Entities:
Keywords: United Nations; disaster relief aid; extreme events; multilateral institutions; natural hazards
Year: 2021 PMID: 33479169 PMCID: PMC7848546 DOI: 10.1073/pnas.2018293118
Source DB: PubMed Journal: Proc Natl Acad Sci U S A ISSN: 0027-8424 Impact factor: 12.779
Fig. 1.Overall distributions (“All”) compared against EM-DAT–listed disaster distributions of maximum sustained wind speed at 10 m height (Umax) during storms (A), daily precipitation (P1d) during flooding events (B), 180-d accumulated precipitation (P180d) during droughts (C), daily maximum temperature at 2-m height (Tmax) during heat waves (D), and daily minimum temperature at 2-m height (Tmin) during cold waves (E). Results of Welch’s t tests are included (t-statistic); *P < 0.05, **P < 0.01. Red crosses indicate mean values, notches indicate median values, and whiskers indicate quartiles.
Meteorological variables used in the calculation of yearly hazard severity
| Disaster type | Meteorological variable/index | Yearly hazard severity | |
| Flood | One-day SPI (from dailyaccumulated precipitation) | ||
| Drought | Six-month SPI (from 180-daccumulated precipitation) | ||
| Storm | Daily maximum sustainedwind speed at 10 m | ||
| Heat wave | Daily maximumtemperature at 2 m | ||
| Cold wave | Daily minimumtemperature at 2 m | ||
For each disaster, the hazard severity measure is calculated as the number of daily events (on day i) per year (with n days) that meet the condition (notated with Iverson brackets; i.e., [P] = 1 if the condition P is true, otherwise, [P] = 0). Δ represents the variable’s deviation from its climatological mean; all deviations and means are calculated for each grid cell’s distribution of values, as climate is specific to locality. All values are normalized by the number of data points (ERA-Interim grid cells) m for comparability.
Fig. 2.Hazard severity (A) and total UN aid per affected person (B), averages for 2013–2017. Total UN aid includes aid including immediate disaster relief (CERF aid), disaster reconstruction aid (CBPF aid), and other bilateral and multilateral aid raised by the UN.
Regression analysis of UN aid
| Immediate short-run disaster aid through CERF (log) | Long-run disaster reconstruction aid through CBPF (log) | Other bilateral and multilateral funds coordinated by the UN (log) | |
| Needs-related factors | |||
| Hazard severity | 0.001 | 0.012*** | 0.002** |
| (0.175) | (0.001) | (0.003) | |
| Total affected persons (log) | 0.003** | 0.033* | −0.000 |
| (0.002) | (0.017) | (0.835) | |
| State fragility index | 0.002*** | 0.029*** | 0.006** |
| (0.000) | (0.000) | (0.003) | |
| Strategic factors | |||
| PTAs signed | −0.002 | −0.105 | −0.014 |
| (0.776) | (0.392) | (0.678) | |
| Former P5 colony | −0.010 | −0.130 | 0.035 |
| (0.318) | (0.423) | (0.350) | |
| Oil endowment | −0.009* | −0.092 | −0.012 |
| (0.029) | (0.199) | (0.417) | |
| Emergency ODA (residuals) | 0.006* | 0.144*** | 0.018*** |
| (0.020) | (0.000) | (0.000) | |
| UNGA voting with the United States | −0.072* | 2.610*** | 0.450* |
| (0.037) | (0.001) | (0.027) | |
| Controls: | |||
| Conflict | 0.017 | −0.040 | 0.061 |
| (0.310) | (0.894) | (0.244) | |
| Drought | 0.090*** | 1.070*** | 0.197** |
| (0.000) | (0.001) | (0.003) | |
| Extreme temperature and co-occurring disasters | 0.088*** | 1.050** | 0.196** |
| (0.000) | (0.004) | (0.004) | |
| Flood | 0.006 | −0.248 | −0.013 |
| (0.797) | (0.292) | (0.725) | |
| Storm | 0.037** | 0.224 | 0.035 |
| (0.006) | (0.281) | (0.525) | |
| No. of observations | 1,731 | 1,731 | 1,731 |
| Bayesian Information Criterion | 62.026 | 1,161.896 | 304.797 |
| Log likelihood | 24.910 | −525.025 | −96.475 |
Constant included but not reported. P values in parentheses, estimated on the basis of heteroscedasticity-robust (Huber–White) SEs, clustered at the level of years. *P < 0.05, **P < 0.01, ***P < 0.001. Estimates from a Tobit regression model. See for model specification. Preferential trade agreements abbreviated as PTA.