Development of Desertification Indicators for Desertification Monitoring from Landsat Images Using Python Programming

Q4 Social Sciences
L. G. Taha, M. A. Basheer, A. M. Mohamed
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引用次数: 1

Abstract

Nowadays, desertification is one of the most serious environment socioeconomic issues and sand dune advances are a major threat that causes desertification. Wadi El-Rayan is one of the areas facing severe dune migration. Therefore, it's important to monitor desertification and study sand dune migration in this area. Image differencing for the years 2000 (Landsat ETM+) and 2019 (OLI images) and Bi-temporal layer stacking was performed. It was found that image differencing is a superior method to get changes of the study area compared to the visual method (Bi-temporal layer stacking). This research develops a quantitative technique for desertification assessment by developing indicators using Landsat images. Spatial distribution of the movement of sand dunes using some spectral indices (NDVI, BSI, LDI, and LST) was studied and a Python script was developed to calculate these indices. The results show that NDVI and BSI indices are the best indices in the identification and detection of vegetation. It was found that mobile sand dunes on the southern side of the lower Wadi El-Rayan Lake caused filling up of large part of the lower lake. The indices results show that sand movement decreased the size of the lower Wadi El-Rayan Lake and there are reclamation activities in the west of the lower lake. The results show that a good result could be achieved from the developed codes compared to ready-made software (ENVI 5).
利用Python编程从陆地卫星图像开发荒漠化监测指标
沙漠化是当今世界最严重的环境社会经济问题之一,而沙丘的发展是造成沙漠化的主要威胁之一。Wadi El-Rayan是面临严重沙丘迁移的地区之一。因此,对该地区进行沙漠化监测和沙丘迁移研究具有重要意义。进行了2000年(Landsat ETM+)和2019年(OLI)影像的影像差异和双时相层叠加。研究发现,与视觉方法(双时间层叠加)相比,图像差分法更能获得研究区域的变化。本研究通过利用陆地卫星图像制定指标,发展了荒漠化评估的定量技术。利用NDVI、BSI、LDI和LST等光谱指数研究了沙丘运动的空间分布,并开发了Python脚本来计算这些指数。结果表明,NDVI和BSI是植被识别和检测的最佳指标。研究发现,下瓦迪拉延湖南侧的移动沙丘导致下湖大部分淤积。结果表明,沙尘运动使河底湖下游面积减小,河底湖西部存在填海造地活动。结果表明,与现有软件(ENVI 5)相比,所开发的代码可以取得较好的效果。
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
Geoplanning Journal of Geomatics and Planning
Geoplanning Journal of Geomatics and Planning Earth and Planetary Sciences-Computers in Earth Sciences
CiteScore
1.00
自引率
0.00%
发文量
5
审稿时长
4 weeks
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