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首页> 外文期刊>International journal of remote sensing >A denoising-classification-retracking method to improve spaceborne estimates of the water level-surface-volume relation over the Urmia Lake in Iran
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A denoising-classification-retracking method to improve spaceborne estimates of the water level-surface-volume relation over the Urmia Lake in Iran

机译:一种去噪 - 分类 - 改善伊朗荨麻湖水位 - 表面积关系的星载估计

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摘要

Decreasing the volume of the Urmia Lake, as the largest inland water body in Iran, is one of the current environmental and water resource management concerns. This study obtains a reliable spaceborne water level (WL)-area-volume relationship for the Urmia Lake using terrestrial, aerial and satellite-based data. The aim of this study is to improve Urmia Lake's WL derived from satellite altimetry and, consequently, to more accurately estimate the volume of the lake for the last decade. To this end, improved WL is obtained from the Satellite with Argos and Altika (SARAL/AltiKa) and Jason-2 altimetry missions by performing a post-processing method. The post-processing method includes a denoising, a classification and appropriate retracking algorithms. The results are validated against in situ gauge data and also compared with results from Prototype Innovant de Systeme de Traitement pour les Applications Cotieres et l'Hydrologie (PISTACH) and Prototype on AltiKa for Coastal, Hydrology and Ice (PEACHI) products. The Denoising-Classification-Retracking (DCR) method improves the root mean square error (RMSE) of WL with respect to those of PISTACH and PEACHI by 54% and 24%, respectively. The surface area of the lake is determined from Landsat 7 Enhanced Thematic Mapper Plus (ETM+) images based on calculating normalized difference water index (NDWI). The results are validated against the surface area obtained from aerial photogrammetry and Cartosat high resolution image. Moreover, based on bathymetric map a Look-up table including surface area and volume of the lake at specific levels are formed. The obtained surface area is then compared with the values of the Look-up table. The normalized root mean square error between surface extent obtained from proposed method and corresponding values is about 11%. The estimated lake's volume is compared with the level-volume curve from the bathymetric data. The result showed the RMSE of this comparison is about 0.12 km(3). Our validated results show that the lake has lost 75% of its volume from late 2008 to early 2016 but continued with an increase in its volume in May 2017 twice as much as in early 2016. Our results support urgent or long-term restoration plan of Lake Urmia and highlight the important role of spaceborne sensors for hydrological applications.
机译:降低乌利亚湖的数量,作为伊朗最大的内陆水体,是当前的环境和水资源管理问题之一。本研究使用陆地,空中和卫星数据获得荨麻湖的可靠性星载水位(WL) - 核心关系。本研究的目的是改善乌利亚湖的WL衍生自卫星高度综合体,因此,更准确地估计过去十年湖泊的体积。为此,通过执行后处理方法,从卫星与Argos和Altika(Saral / Altika)和Jason-2 Altimetry任务中获得改进的WL。后处理方法包括去噪,分类和适当的再生算法。结果验证了原位仪表数据,也与原型创新De Systeme De Tracitement Pout Les应用程序Cotieres et L'Hydrogie(Pistach)和原型的沿海,水文和冰(Peachi)产品的原型进行了验证。去噪 - 分类 - 行李(DCR)方法将WL的根均方误差(RMSE)改善了与Pistach和Peachi的根部误差(RMSE)分别为54%和24%。基于计算归一化差异水指数(NDWI),从LANDSAT 7增强的专题映射器加(ETM +)图像确定了湖面的表面积。结果验证了从空中摄影测量和腕表高分辨率图像获得的表面积。此外,基于碱基图,形成包括在特定水平的表面积和湖的表面积和体积的查找表。然后将所获得的表面积与查找表的值进行比较。从提出的方法和相应值获得的表面范围之间的归一化均方误差约为11%。将估计的湖泊的体积与来自碱基数据的水平体积曲线进行比较。结果表明,这种比较的RMSE约为0.12公里(3)。我们的验证结果表明,湖泊从2008年底到2016年初损失了75%的批量,但2016年5月持续增加其卷两倍于2016年初的两倍。我们的结果支持紧急或长期恢复计划乌斯米湖突出了星载传感器对水文应用的重要作用。

著录项

  • 来源
    《International journal of remote sensing》 |2020年第2期|506-533|共28页
  • 作者单位

    KN Toosi Univ Technol Fac Geodesy & Geomat Engn Tehran Iran;

    KN Toosi Univ Technol Fac Geodesy & Geomat Engn Tehran Iran;

    Univ Stuttgart Inst Geodesy Stuttgart Germany;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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