Forecasting future changes in Manzala Lake surface area by considering variations in land use and land cover using remote sensing approach

被引:0
作者
Hickmat Hossen
Mona G. Ibrahim
Wael Elham Mahmod
Abdelazim Negm
Kazuo Nadaoka
Oliver Saavedra
机构
[1] Egypt-Japan University of Science and Technology,Environmental Engineering Department, School of Energy Resources, Environment and Chemical & Petrochemical Engineering
[2] E-JUST,School of Energy Resources, Environment and Chemical & Petrochemical Engineering
[3] Egypt-Japan University of Science and Technology,Environmental Health Department, High Institute of Public Health
[4] Alexandria University,Civil Engineering Department, Faculty of Engineering
[5] Assiut University,Department of Water and Water Structures Engineering, Faculty of Engineering
[6] Zagazig University,Department of Transdisciplinary Science and Engineering, School of Environment and Society
[7] Tokyo Institute of Technology,Research center of Civil and Environmental Engineering
[8] Universidad Privada Boliviana,undefined
来源
Arabian Journal of Geosciences | 2018年 / 11卷
关键词
Manzala Lake; Sustainability; Waterbody; Change detection; Remote sensing; Geographic information systems;
D O I
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中图分类号
学科分类号
摘要
This study assesses the changes in surface area of Manzala Lake, the largest coastal lake in Egypt, with respect to changes in land use and land cover based on a multi-temporal classification process. A regression model is provided to predict the temporal changes in the different detected classes and to assess the sustainability of the lake waterbody. Remote sensing is an effective method for detecting the impact of anthropogenic activities on the surface area of a lagoon such as Manzala Lake. The techniques used in this study include unsupervised classification, Mahalanobis distance supervised classification, minimum distance supervised classification, maximum likelihood supervised classification, and normalized difference water index. Data extracted from satellite images are used to predict the future temporal change in each class, using a statistical regression model and considering calibration, validation, and prediction phases. It was found that the maximum likelihood classification technique has the highest overall accuracy of 93.33%. This technique is selected to observe the changes in the surface area of the lake for the period from 1984 to 2015. Study results show that the waterbody surface area of the lake declined by 46% and the area of floating vegetation, islands, and land agriculture increased by 153.52, 42.86, and 42.35% respectively during the study period. Linear regression model prediction indicates that the waterbody surface area of the lake will decrease by 25.24% during the period from 2015 to 2030, which reflects the negative impact of human activities on lake sustainability represented by a severe reduction of the waterbody area.
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