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:: Volume 7, Issue 15 (2-2020) ::
PEC 2020, 7(15): 295-318 Back to browse issues page
Quantifying the trend of vegetation changes using remote sensing (Case study: Fars Province)
Maliheh Behrang Manesh1 , Hassan Khosravi * , Hossein Azarnivand1 , Alfonso Senatore3
1- Department of Arid and Mountainous Regions Reclamation, Faculty of Natural Resources, University of Tehran
University of Tehran, Department of Arid and Mountainous Regions Reclamation, Faculty of Natural Resources, University of Tehran , hakhosravi@ut.ac.ir
3- Department of Environmental and Chemical Engineering, University della Calabria, Rende, Italy
Abstract:   (3467 Views)
Investigating the sustainability of vegetation changes is one of the most important issues of vegetation management in the direction of sustainable development. It is necessary to conduct studies in this regard to select appropriate management for greater compatibility with new conditions. In this research, changes in the vegetation dynamics trend of Fars province were studied using the NDVI index obtained from MOD13Q1 during the period 2001 to 2017. Mann-Kendall and Thiel-Sen tests in the Earth Trends Modeler of TerrSet software and the Hurst index in the ArcGIS software were calculated, then the results were combined with each other. Theil-Sen trend for statistical analysis of the changes slope, and Mann-Kendall test to determine the significance of these changes are a new approach to investigate the NDVI time series data analysis process. Overlaying the results of the trend analysis and Hurst index, the future sustainability in the NDVI changes was also calculated. According to the analysis of the Horst index, the trend of vegetation changes in the future is contrary to the changes that have taken place in the past.. In addition, the results of total trend analysis indicate that plant growth in mountainous areas continuously improves at a higher rate than the plains. Finally, the results of analyzing the Horst index and the process of vegetation changes showed that the highest number of pixels is for the month of May with 41.1% located in Class B. Class B represents that the rehabilitation trend has replaced the degradation trend in the region  and this trend will not continue in the future. This month, the northern and southern strips of the province have a maximum value.
Keywords: Horst Index, Mann-Kendall, NDVI, Thiel-Sen
Full-Text [PDF 1828 kb]   (1406 Downloads)    
Type of Study: Research | Subject: Special
Received: 2019/03/19 | Accepted: 2019/06/10 | Published: 2020/03/17
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Behrang Manesh M, Khosravi H, Azarnivand H, Senatore A. Quantifying the trend of vegetation changes using remote sensing (Case study: Fars Province). PEC 2020; 7 (15) :295-318
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Volume 7, Issue 15 (2-2020) Back to browse issues page
مجله حفاظت زیست بوم گیاهان Journal of Plant Ecosystem Conservation
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