five

Lake Mälaren watershed Inputs used in MEWS project

收藏
DataONE2025-09-30 更新2025-10-11 收录
下载链接:
https://search.dataone.org/view/sha256:60929f327ae478b8065a1d086ea5d7d5342183990d999ab2721930b77583bf3a
下载链接
链接失效反馈
官方服务:
资源简介:
The project MEWS (Managing Events and Extremes in Water Supply) is a 3 year effort funded through the European Union Water4All partnership, and also with funding supplied by the funders associated with the participating countries. The project is led by Sweden with other participants from Germany, Israel, Denmark and Canada. The project is investigating the effects of hydroclimatic extreme events on drinking water supplies by examining the importance of not only the magnitude of extreme event inputs, but also the importance of the hydrodynamic regulation of the movement and processing of event water that moves through the water supply from inflow to withdrawal . Three water supplies under study are Lake Malaren Sweden, Lake Kinneret Israel , and the Ohra reservoir in Germany. The overriding goal of this project is to develop a freely available comprehensive modelling tool that will allow stakeholders to evaluate the effects of extreme hydro-climatic events on drinking water quality. More information is available at https://mews-water.com/ Here we provide an archive of the historical data used to test and develop the watershed model that simulate the inputs to the Swedish MEWS study site

MEWS(Managing Events and Extremes in Water Supply,即供水事件与极端情况管理)项目是一项为期三年的研究计划,由欧盟Water4All伙伴关系提供资助,同时获得各参与国相关出资方的资金支持。本项目由瑞典牵头,德国、以色列、丹麦及加拿大的协作机构共同参与。本项目聚焦水文气候极端事件(hydroclimatic extreme events)对饮用水供水系统的影响,研究不仅关注极端事件输入的量级,同时也探究从进水到取水全过程中,供水系统内事件性水体运移与处理的水动力调控(hydrodynamic regulation)机制的重要性。本次研究涵盖的三个供水系统分别为瑞典的梅拉伦湖(Lake Malaren)、以色列的基尼烈湖(Lake Kinneret)以及德国的奥赫拉水库(Ohra reservoir)。本项目的核心目标是开发一款可免费获取的综合性建模工具,助力利益相关方评估水文气候极端事件对饮用水水质的影响。更多详情可访问 https://mews-water.com/ 本次我们提供了用于测试与开发瑞典MEWS研究站点流域模型(watershed model)的历史数据集档案。
创建时间:
2025-10-04
5,000+
优质数据集
54 个
任务类型
进入经典数据集
二维码
社区交流群

面向社区/商业的数据集话题

二维码
科研交流群

面向高校/科研机构的开源数据集话题

数据驱动未来

携手共赢发展

商业合作