Eawag, Swiss Federal Institute of Aquatic Science and Technology, Department Water Resources & Drinking Water, Dübendorf, Switzerland.
Eawag, Swiss Federal Institute of Aquatic Science and Technology, Department Water Resources & Drinking Water, Dübendorf, Switzerland.
Sci Total Environ. 2020 May 15;717:137042. doi: 10.1016/j.scitotenv.2020.137042. Epub 2020 Feb 1.
Groundwater recharge indicates the existence of renewable groundwater resources and is therefore an important component in sustainability studies. However, recharge is also one of the least understood, largely because it varies in space and time and is difficult to measure directly. For most studies, only a relatively small number of measurements is available, which hampers a comprehensive understanding of processes driving recharge and the validation of hydrogeological model formulations for small- and large-scale applications. We present a new global recharge dataset encompassing >5000 locations. In order to gain insights into recharge processes, we provide a systematic analysis between the dataset and other global-scale datasets, such as climatic or soil-related parameters. Precipitation rates and seasonality in temperature and precipitation were identified as the most important variables in predicting recharge. The high dependency of recharge on climate indicates its sensitivity to climate change. We also show that vegetation and soil structure have an explanatory power for recharge. Since these conditions can be highly variable, recharge estimates based only on climatic parameters may be misleading. The freely available dataset offers diverse possibilities to study recharge processes from a variety of perspectives. By noting the existing gaps in understanding, we hope to encourage the community to initiate new research into recharge processes and subsequently make recharge data available to improve recharge predictions.
地下水补给表明可再生地下水资源的存在,因此是可持续性研究的重要组成部分。然而,补给也是最难以理解的部分之一,主要是因为它在空间和时间上存在差异,并且难以直接测量。对于大多数研究来说,只有相对较少的测量值可用,这阻碍了对驱动补给的过程的全面理解,也阻碍了对小规模和大规模应用的水文地质模型公式的验证。我们提出了一个新的全球补给数据集,其中包含>5000 个地点的数据。为了深入了解补给过程,我们在数据集和其他全球尺度数据集(如气候或土壤相关参数)之间进行了系统分析。降水率和温度及降水的季节性被确定为预测补给的最重要变量。补给对气候的高度依赖性表明其对气候变化的敏感性。我们还表明,植被和土壤结构对补给具有解释能力。由于这些条件可能高度可变,仅基于气候参数的补给估计可能会产生误导。这个免费提供的数据集为从各种角度研究补给过程提供了多种可能性。通过注意到现有理解上的差距,我们希望鼓励社区开展新的补给过程研究,并随后提供补给数据以提高补给预测的准确性。