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Land cover classification and change detection analysis of Qaroun and Wadi El-Rayyan lakes using multi-temporal remotely sensed imagery

机译:利用多时相遥感影像对Qaroun和Wadi El-Rayyan湖泊进行土地覆盖分类和变化检测分析

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摘要

The Qaroun Lake, Wadi El-Rayyan, and Wadi El-Hitan are some of the most promising ecotourism destinations in Egypt due to their natural mineral resources, wildlife, and biodiversity in addition to their historic heritage that dates back to the age of The Pharos. These natural resources should be managed and maintained without affecting the needs of future generations. Land use/land cover change is the most important factor in causing biodiversity loss. Accordingly, the objectives of this study are to identify, quantify, and model future land cover changes using remote sensing and GIS techniques. To fulfill the objectives of the study, a hybrid image classification is employed using the combination of unsupervised and supervised classification methods to detect land cover types. Post-classification comparison is used to map changes in land cover between 2000 and 2017. Markov model is applied to analyze, predict, and simulate future land cover changes from 2017 to 2050. This is in order to safeguard against the adverse effects and negative consequences of land cover changes, preserve the natural resources, and consequently achieve goals of sustainable development. The outcome of this study can provide policy makers and urban planners with the required information regarding the status of the environment and subsequently reduce pressure on natural resources in order to facilitate conservation planning and sustainable development.
机译:Qaroun湖,Wadi El-Rayyan和Wadi El-Hitan是埃及最有前途的生态旅游目的地,因为它们的天然矿产资源,野生动植物和生物多样性以及可追溯到Pharos时代的历史遗产。这些自然资源应加以管理和维护,而不影响子孙后代的需求。土地利用/土地覆被变化是造成生物多样性丧失的最重要因素。因此,本研究的目标是使用遥感和GIS技术识别,量化和建模未来的土地覆盖变化。为了实现本研究的目的,采用了混合图像分类,结合了无监督和监督分类方法来检测土地覆盖类型。分类后比较用于绘制2000年至2017年之间的土地覆被变化图。马尔可夫模型用于分析,预测和模拟2017年至2050年的未来土地覆被变化。这是为了防止不利影响和负面影响土地覆盖变化,保护自然资源并因此实现可持续发展的目标。这项研究的结果可以为政策制定者和城市规划者提供有关环境状况的必要信息,并随后减轻对自然资源的压力,以促进保护规划和可持续发展。

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