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Abstract
The upper Tekeze River Basin is facing challenges of widespread deforestation and natural vegetation cover degradation that could exacerbate the water scarcity, food insecurity and extreme poverty in the region. Using remote sensing and GIS, this study quantified the land use land cover change trend in the last three decades and analyzed the current land use / cover statues in the basin. A hybrid classification technique is applied to obtain better classification accuracy. Moreover, for automated cloud and cloud shadow detection the newly developed Mountainous Fmask is used. Using post classification change detection technique, seven major land use/cover classes were identified. These classes remained the dominant classes during the study period, showing marked changes in the area coverage within them. Based on the error matrix statistical indices, the classification accuracies of each class are found to be strong. The overall accuracy and the kappa coefficient for the 2021 map are 91% and 89%, respectively. The techniques used have contributed to improving the accuracy of the classification process and helped the classified images to practically match the ground truths. The analysis revealed settlement expansion by 570.31% in parallel with the expansion of farmland by 52.32% during the period 1991–2021. In contrast, the forestland decreased significantly, by 75.55%. The environmental degradation and unplanned use of land resources could have contributed to why the upper Tekeze basin is experiencing worsening poverty, water scarcity and food insecurity. Thus, land use/cover time series modeling is essential for various purposes, including land use planning and, managing natural resources. In this regards this study provides basic information for implementing sustainable environmental conservation strategies in the area. Furthermore, the applied methodologies may have practical applications in other similar areas.
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Details
1 Addis Ababa University, Center for Environmental Science, College of Natural and Computational Sciences, Addis Ababa, Ethiopia (GRID:grid.7123.7) (ISNI:0000 0001 1250 5688)
2 Addis Ababa University, Addis Ababa Institute of Technology, Addis Ababa, Ethiopia (GRID:grid.7123.7) (ISNI:0000 0001 1250 5688)
3 Wolkite University, Department of Physics, College of Natural and Computational Sciences, Wolkite, Ethiopia (GRID:grid.472465.6) (ISNI:0000 0004 4914 796X)
4 Haramaya University, Physics Department, College of Natural and Computational Sciences, Dire Dawa, Ethiopia (GRID:grid.192267.9) (ISNI:0000 0001 0108 7468)