Eawag, Swiss Federal Institute of Aquatic Science and Technology, Department of Water Resources and Drinking Water, 8600 Dübendorf , Switzerland.
Eawag, Swiss Federal Institute of Aquatic Science and Technology, Department of Water Resources and Drinking Water, 8600 Dübendorf , Switzerland.
Environ Int. 2023 Jun;176:107925. doi: 10.1016/j.envint.2023.107925. Epub 2023 Apr 24.
Changes in climate and anthropogenic activities have made water salinization a significant threat worldwide, affecting biodiversity, crop productivity and contributing to water insecurity. The Horn of Africa, which includes eastern Ethiopia, northeast Kenya, Eritrea, Djibouti, and Somalia, has natural characteristics that favor high groundwater salinity. Excess salinity has been linked to infrastructure and health problems, including increased infant mortality. This region has suffered successive droughts that have limited the availability of safe drinking water resources, leading to a humanitarian crisis for which little spatially explicit information about groundwater salinity is available.
Machine learning (random forest) is used to make spatial predictions of salinity levels at three electrical conductivity (EC) thresholds using data from 8646 boreholes and wells along with environmental predictor variables. Attention is paid to understanding the input data, balancing classes, performing many iterations, specifying cut-off values, employing spatial cross-validation, and identifying spatial uncertainties.
Estimates are made for this transboundary region of the population potentially exposed to hazardous salinity levels. The findings indicate that about 11.6 million people (∼7% of the total population), including 400,000 infants and half a million pregnant women, rely on groundwater for drinking and live in areas of high groundwater salinity (EC > 1500 µS/cm). Somalia is the most affected and has the largest number of people potentially exposed. Around 50% of the Somali population (5 million people) may be exposed to unsafe salinity levels in their drinking water. In only five of Somalia's 18 regions are less than 50% of infants potentially exposed to unsafe salinity levels. The main drivers of high salinity include precipitation, groundwater recharge, evaporation, ocean proximity, and fractured rocks. The combined overall accuracy and area under the curve of multiple runs is ∼ 82%.
The modelled groundwater salinity maps for three different salinity thresholds in the Horn of Africa highlight the uneven spatial distribution of salinity in the studied countries and the large area affected, which is mainly arid flat lowlands. The results of this study provide the first detailed mapping of groundwater salinity in the region, providing essential information for water and health scientists along with decision-makers to identify and prioritize areas and populations in need of assistance.
气候变化和人为活动使水盐度成为全球范围内的重大威胁,影响生物多样性、作物生产力,并导致水不安全。包括东埃塞俄比亚、东北肯尼亚、厄立特里亚、吉布提和索马里在内的非洲之角具有有利于地下水高盐度的自然特征。过量的盐分与基础设施和健康问题有关,包括婴儿死亡率上升。该地区遭受了连续的干旱,限制了安全饮用水资源的供应,导致了人道主义危机,但对于地下水盐度的空间明确信息却很少。
使用机器学习(随机森林)方法,根据 8646 个钻孔和水井的数据以及环境预测变量,对三个电导率(EC)阈值的盐度水平进行空间预测。我们特别关注于理解输入数据、平衡类别、进行多次迭代、指定截止值、使用空间交叉验证以及识别空间不确定性。
对这一跨界地区可能暴露于危险盐度水平的人口进行了估计。研究结果表明,约有 1160 万人(占总人口的约 7%),包括 40 万婴儿和 50 万孕妇,依靠地下水作为饮用水,生活在地下水盐度高(EC>1500 µS/cm)的地区。索马里受影响最严重,受影响的人口最多。约有 50%的索马里人口(500 万人)可能面临饮用水不安全的盐度水平。在索马里的 18 个地区中,只有 5 个地区不到 50%的婴儿可能面临不安全的盐度水平。高盐度的主要驱动因素包括降水、地下水补给、蒸发、靠近海洋和断裂岩石。多次运行的总体准确率和曲线下面积约为 82%。
在非洲之角对三个不同盐度阈值的地下水盐度模型地图突出显示了研究国家盐度的不均匀空间分布和受影响的大面积地区,主要是干旱平坦的低地。本研究的结果提供了该地区地下水盐度的首次详细地图,为水和健康科学家以及决策者提供了必要的信息,以确定和优先考虑需要援助的地区和人口。