Climate Hazards Center, Department of Geography, University of California, Santa Barbara, California, United States of America.
Department of Geography, University of California, Santa Barbara, California, United States of America.
PLoS One. 2021 Jan 20;16(1):e0242883. doi: 10.1371/journal.pone.0242883. eCollection 2021.
Since 2015, Sub-Saharan Africa (SSA) has experienced an unprecedented rise in acute food insecurity (AFI), and current projections for the year 2020 indicate that more than 100 million Africans are estimated to receive emergency food assistance. Climate-driven drought is one of the main contributing factors to AFI, and timely and appropriate actions can be taken to mitigate impacts of AFI on lives and livelihoods through early warning systems. To support this goal, we use observations of peak Normalized Difference Vegetation Index (NDVI) as an indicator of seasonal drought conditions following a rainy season to show that delays in the onset of the rainy season (onset date) can be an effective early indicator of seasonal drought conditions. The core of this study is an evaluation of the relationship of the onset dates and peak NDVI, stratified by AFI risks, calculated using AFI reports by the United States Agency of International Development (USAID)-funded Famine Early Warning Systems Network (FEWS NET). Several parts of SSA, mostly located in East Africa (EA), reported the "Crisis" phase of AFI-requiring emergency food assistance-at least one-third of the time between April 2011 to present. The results show that the onset date can effectively explain much of the interannual variability in peak NDVI in the regions with the highest AFI risk level, particularly in EA where the median of correlation (across all the Administrative Unit 2) varies between -0.42 to -0.68. In general, an onset date delay of at least 1 dekad (10 days) increases the likelihood of seasonal drought conditions. In the regions with highest risks of AFI, an onset delay of just 1 dekad doubles the chance of the standardized anomaly of peak NDVI being below -1, making a -1 anomaly the most probable outcome. In those regions, a 2-dekads delay in the onset date is associated with a very high probability (50%) of seasonal drought conditions (-1 standardized anomaly of NDVI). Finally, a multivariate regression analysis between standardized anomaly and onset date anomaly further substantiates the negative impacts of delay in onset date on NDVI anomaly. This relationship is statistically significant over the SSA as a whole, particularly in the EA region. These results imply that the onset date can be used as an additional critical tool to provide alerts of seasonal drought development in the most food-insecure regions of SSA. Early warning systems using onset date as a tool can help trigger effective mid-season responses to save human lives, livestock, and livelihoods, and, therefore, mitigate the adverse impacts of drought hazards.
自 2015 年以来,撒哈拉以南非洲(SSA)经历了史无前例的急性粮食不安全(AFI)上升,目前对 2020 年的预测表明,估计有超过 1 亿非洲人将获得紧急粮食援助。气候驱动的干旱是 AFI 的主要促成因素之一,通过早期预警系统可以及时采取适当行动,减轻 AFI 对生命和生计的影响。为了支持这一目标,我们使用峰值归一化差异植被指数(NDVI)的观测值作为雨季之后季节性干旱状况的指标,表明雨季开始日期的延迟可以作为季节性干旱状况的有效早期指标。本研究的核心是评估开始日期和峰值 NDVI 之间的关系,根据美国国际开发署(USAID)资助的饥荒预警系统网络(FEWS NET)的 AFI 报告计算的 AFI 风险进行分层。SSA 的几个地区,主要位于东非(EA),报告说,自 2011 年 4 月至今,至少有三分之一的时间处于需要紧急粮食援助的“危机”阶段的 AFI。结果表明,在 AFI 风险水平最高的地区,开始日期可以有效地解释峰值 NDVI 年际变化的大部分,特别是在 EA,所有行政单位 2 的相关系数中位数在-0.42 到-0.68 之间变化。一般来说,开始日期至少延迟 10 天会增加季节性干旱条件发生的可能性。在 AFI 风险最高的地区,开始日期仅延迟 10 天,峰值 NDVI 的标准化异常值低于-1 的可能性就会增加一倍,使得-1 异常值成为最可能的结果。在这些地区,开始日期延迟 20 天与季节性干旱条件(NDVI 标准化异常值-1)发生的极高概率(50%)相关。最后,标准化异常值与开始日期异常值之间的多元回归分析进一步证实了开始日期延迟对 NDVI 异常值的负面影响。这一关系在整个 SSA 范围内具有统计学意义,特别是在 EA 地区。这些结果表明,开始日期可以用作提供 SSA 最粮食不安全地区季节性干旱发展警报的另一个关键工具。使用开始日期作为工具的早期预警系统可以帮助在中期及时做出反应,挽救生命、牲畜和生计,从而减轻干旱危害的不利影响。