GeoDAR: Georeferenced global dam and reservoir dataset for bridging attributes and geolocations

Jida Wang, B. Walter, Fangfang Yao, Chunqiao Song, Meng Ding, A. S. Maroof, Jingying Zhu, Chenyu Fan, Aote Xin, J. Mcalister, S. Sikder, Y. Sheng, G. Allen, J. Crétaux, Y. Wada
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引用次数: 19

Abstract

Abstract. Dams and reservoirs are among the most widespread human-made infrastructure on Earth. Despite their societal and environmental significance, spatial inventories of dams and reservoirs, even for the large ones, are insufficient. A dilemma of the existing georeferenced dam datasets is the polarized focus on either dam quantity and spatial coverage (e.g., GOODD) or detailed attributes for limited dam quantity or regions (e.g., GRanD and national inventories). One of the most comprehensive datasets, the World Register of Dams (WRD) maintained by the International Commission on Large Dams (ICOLD), documents nearly 60,000 dams with an extensive suite of attributes. Unfortunately, WRD records are not georeferenced, limiting the benefits of their attributes for spatially explicit applications. To bridge the gap between attribute accessibility and spatial explicitness, we introduce the Georeferenced global Dam And Reservoir (GeoDAR) dataset, created by utilizing online geocoding API and multi-source inventories. We release GeoDAR in two successive versions (v1.0 and v1.1) at https://doi.org/10.6084/m9.figshare.13670527. GeoDAR v1.0 holds 21,051 dam points georeferenced from WRD, whereas v1.1 consists of a) 23,680 dam points after a careful harmonization between GeoDAR v1.0 and GRanD and b) 20,214 reservoir polygons retrieved from high-resolution water masks. Due to geocoding challenges, GeoDAR spatially resolved 40 % of the records in WRD which, however, comprise over 90 % of the total reservoir area, catchment area, and reservoir storage capacity. GeoDAR does not release the proprietary WRD attributes, but upon individual user requests we can assist in associating GeoDAR spatial features with the WRD attribute information that users have acquired from ICOLD. With a dam quantity triple that of GRanD, GeoDAR significantly enhances the spatial details of smaller but more widespread dams and reservoirs, and complements other existing global dam inventories. Along with its extended attribute accessibility, GeoDAR is expected to benefit a broad range of applications in hydrologic modelling, water resource management, ecosystem health, and energy planning.
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GeoDAR:基于地理参考的全球水坝和水库数据集,用于桥接属性和地理位置
摘要水坝和水库是地球上最普遍的人造基础设施之一。尽管水坝和水库具有社会和环境意义,但即使是大型水坝和水库的空间清单也是不足的。现有地理参考水坝数据集的一个困境是,要么两极分化地关注水坝数量和空间覆盖(例如,good dd),要么关注有限水坝数量或区域的详细属性(例如,大和国家清单)。由国际水坝委员会(ICOLD)维护的世界水坝登记册(WRD)是最全面的数据集之一,它记录了近6万座水坝的一系列广泛属性。不幸的是,WRD记录不是地理引用的,这限制了它们的属性对空间显式应用程序的好处。为了弥合属性可及性和空间显式性之间的差距,我们引入了地理参考的全球水坝和水库(GeoDAR)数据集,该数据集利用在线地理编码API和多源清单创建。我们在https://doi.org/10.6084/m9.figshare.13670527上发布了两个连续的版本(v1.0和v1.1)。GeoDAR v1.0包含21,051个基于WRD地理参考的水坝点,而v1.1包含a)在GeoDAR v1.0和GRanD之间仔细协调后的23,680个水坝点,以及b)从高分辨率水掩膜中检索的20,214个水库多边形。由于地理编码的挑战,GeoDAR在空间上解决了WRD中40%的记录,然而,这些记录占总水库面积、集水区面积和水库存储容量的90%以上。GeoDAR不发布专有的WRD属性,但根据个人用户的请求,我们可以帮助将GeoDAR空间特征与用户从ICOLD获得的WRD属性信息相关联。GeoDAR的水坝数量是GRanD的三倍,大大增强了较小但分布更广的水坝和水库的空间细节,并补充了其他现有的全球水坝清单。随着其扩展的属性可及性,GeoDAR有望在水文建模、水资源管理、生态系统健康和能源规划方面得到广泛应用。
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