Water resource assessment in data-scarce hydrological regions based on limited underwater survey points

IF 3 4区 环境科学与生态学 Q3 ENVIRONMENTAL SCIENCES
Chen Wang, Bo Zhang, Rui Zhu, Ruonan Wei, Zhen Bian
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Abstract

Lake topography, which serves as a crucial basis for water resource monitoring, has been extensively applied in hydrological and geomorphological research. However, monitoring lake dynamics in data-scarce regions remains challenging due to the limited revisit frequency of altimetry satellites and uncertainties in estimating submerged depths based on surrounding terrain. Focusing on the Shapotou region of Ningxia, this study collected bathymetric data using an unmanned surface vessel and employed interpolation methods and machine learning (XGBoost) to determine the most effective approach for constructing the lake digital elevation model (DEM). The relationship curve between water area, water level, and water reserve, derived from DEM analysis and calculation, is integrated with remote sensing imagery, thus facilitating the efficient monitoring of lake water dynamics. This approach provides valuable scientific and practical support for water resource management in remote or data-scarce regions lacking conventional hydrological infrastructure. The results indicate that: (1) Despite the theoretical potential of machine learning for underwater terrain prediction, this study demonstrates that traditional spatial interpolation methods offer greater advantages in areas characterized by data scarcity and significant anthropogenic terrain modification, thereby providing empirical evidence to guide method selection under similar conditions. (2) The average annual water storage of lakes in the study area was estimated at 336.249 × 104 m3 by integrating relationship curves with remote sensing imagery. Total storage reached a minimum of 307.246 × 104 m3 in 2016 and a maximum of 411.802 × 104 m3 in 2024. Water level fluctuations were generally less than 1 m, revealing the relative stability of lakes in arid regions.

基于有限水下测点的数据稀缺水文区水资源评价。
湖泊地形是水资源监测的重要依据,在水文和地貌学研究中得到了广泛的应用。然而,由于测高卫星的重访频率有限,以及基于周围地形估算淹没深度的不确定性,在数据稀缺地区监测湖泊动态仍然具有挑战性。以宁夏沙坡头地区为研究对象,利用无人水面船采集水深数据,采用插值方法和机器学习技术(XGBoost)确定构建湖泊数字高程模型(DEM)的最有效方法。将DEM分析计算得到的水域、水位、蓄水量关系曲线与遥感影像相结合,便于对湖泊水动态进行高效监测。该方法为缺乏传统水文基础设施的偏远或数据匮乏地区的水资源管理提供了宝贵的科学和实践支持。结果表明:(1)尽管机器学习在水下地形预测中具有理论潜力,但本研究表明,传统的空间插值方法在数据稀缺和人为地形改变显著的地区具有更大的优势,从而为指导类似条件下的方法选择提供了经验证据。(2)利用关系曲线与遥感影像相结合,估算研究区湖泊年平均储水量为336.249 × 104 m3。2016年库存量最小为307.246 × 104 m3, 2024年库存量最大为411.802 × 104 m3。水位波动一般小于1 m,揭示了干旱区湖泊的相对稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Environmental Monitoring and Assessment
Environmental Monitoring and Assessment 环境科学-环境科学
CiteScore
4.70
自引率
6.70%
发文量
1000
审稿时长
7.3 months
期刊介绍: Environmental Monitoring and Assessment emphasizes technical developments and data arising from environmental monitoring and assessment, the use of scientific principles in the design of monitoring systems at the local, regional and global scales, and the use of monitoring data in assessing the consequences of natural resource management actions and pollution risks to man and the environment.
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