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多时相合成孔径雷达图像的洪水空间范围测绘与评估:以印度阿萨姆邦的布拉马普特拉河为例。

Mapping and assessing spatial extent of floods from multitemporal synthetic aperture radar images: a case study on Brahmaputra River in Assam State, India.

机构信息

Centre for Disaster Management and Mitigation, Vellore Institute of Technology, Vellore, Tamil Nadu, India.

出版信息

Environ Sci Pollut Res Int. 2020 Jan;27(2):1521-1532. doi: 10.1007/s11356-019-06849-6. Epub 2019 Nov 21.

DOI:10.1007/s11356-019-06849-6
PMID:31755058
Abstract

Brahmaputra is one of the perennial rivers in India which causes floods every year in the north-east state of Assam causing hindrance to normal life and damage to crops. The availability of temporal Remote Sensing (RS) data helps to study the periodical changes caused by flood event and its eventual effect on natural environment. Integrating RS and GIS methods paved a way for effective flood mapping over a large spatial extent which helps to assess the damage accurately for mitigation. In the present study, multitemporal Sentinel-1A data is exploited to assess the 2017 flood situation of Brahmaputra River in Assam state. Five data sets that are taken during flood season and one reference data taken during the non-monsoon season are used to estimate the area inundated under floods for the quantification of damage assessment. A visual interpretation map is produced using colour segmentation method by estimating the thresholds from histogram analysis. A new method is developed to identify the optimum value for threshold from statistical distribution of Synthetic Aperture Radar (SAR) data that separates flooded water and non-flooded water. From this method, the range of backscatter values for normal water are identified as - 18 to - 30 dB and the range is identified as - 19 to - 24 dB for flooded water. The results showed that the method is able to separate the flooded and non-flooded region on the microwave data set, and the derived flood extent using this method shows the inundated area of 3873.14 Km on peak flood date for the chosen study area.

摘要

雅鲁藏布江是印度的常年河流之一,每年都会在东北部的阿萨姆邦引发洪水,给当地居民的正常生活和农作物造成破坏。时间遥感(RS)数据的可用性有助于研究洪水事件引起的周期性变化及其对自然环境的最终影响。RS 和 GIS 方法的结合为大面积的有效洪水制图铺平了道路,有助于准确评估和减轻洪水灾害。在本研究中,利用多时相 Sentinel-1A 数据评估了阿萨姆邦雅鲁藏布江 2017 年的洪水情况。利用 5 个在洪水季节获取的数据和 1 个在非季风季节获取的参考数据,估算洪水淹没的面积,以进行量化评估。通过直方图分析估计阈值,利用颜色分割方法生成可视化解释图。提出了一种新的方法,从合成孔径雷达(SAR)数据的统计分布中确定最佳阈值值,以区分洪水淹没区和非洪水淹没区。根据该方法,正常水的后向散射值范围被确定为-18 到-30dB,而洪水的范围则被确定为-19 到-24dB。结果表明,该方法能够在微波数据集上区分洪水淹没区和非洪水淹没区,并且使用该方法得出的洪水范围在选定研究区域的峰值洪水日期显示了 3873.14 平方公里的淹没面积。

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