GIS与遥感在多时相卫星影像土地利用、土地覆被变化及植被动态分析中的应用埃塞俄比亚北部提格雷地区Mariamdehan Kebele病例

Esayas Meresa, Yikunoamlak Gebrewhid
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引用次数: 1

摘要

探测土地利用和土地覆盖变化以及植被状况已成为目前管理和监测人为活动引起的环境变化战略的中心组成部分。为了做出这样的决定,地理信息技术提供了新的工具来进行植被和土地利用土地覆盖变化检测分析,以管理和明智地利用自然资源,并为特定研究领域的决策者提供信息。本研究利用1984年、2005年和2015年maryamdehan kebele的多时相卫星图像,利用地理信息技术分析了土地利用、土地覆盖(LULC)变化和植被动态。主要和次要数据均来自不同的来源。从govis.usgs.gov网站下载1984年、2005年和2015年的卫星图像,利用手持GPS采集地面控制点(GCP)数据,在Erdas imagine和ArcGIS环境下进行监督图像分类。研究结果表明,在每个时期检测到6个主要的土地利用和土地覆盖等级,并计算了植被值。结果表明,该区总面积为3646.49公顷,其中1984年林地占40.691%,草地占26.15%,农田占10.81%,2005年居民点占52.41%,林地占25.04%,农田占11.71%,2015年林地占35.14%,居民点占30.04%,农田占14.74%。由于城市扩张和农业活动的影响,2015年水资源从9.3%减少到0.64%,裸地也从3.18%减少到0.903%。此外,由于气候变化和人为干预,1984 - 2015年的植被状况呈正弦趋势。研究结果表明,利用地理信息学工具进行土地利用变化监测和植被动态分析,对土地利用管理和自然资源的合理利用具有重要意义,可为决策者制定未来规划和可持续发展提供信息。
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Application of GIS and Remote Sensing to Analyse Land Use Land Cover Change Detection and Vegetation Dynamics Using Multi-temporal Satellite Images; The Case of Mariamdehan Kebele, Tigray Region, Northern Ethiopia
Detecting Land use and land cover change and vegetation condition has become a central component in current strategies for managing and monitoring of environmental changes caused by anthropogenic activities. To come up with such decisions, geoinformatics technology is providing new tools to conduct vegetation and land use land cover change detection analysis for managing and wise utilisation of natural resources as well as to provide information for policymakers in a given study area. This study examines the use of geoinformatics technology to analyse land use land cover (LULC) change and vegetation dynamics using multi-temporal satellite images for the maryamdehan kebele in the years 1984, 2005 and 2015. Both primary and secondary data were used from different sources. Satellite images of the year 1984, 2005 and 2015 were downloaded from the govis.usgs.gov website and ground control points (GCP) data were collected by handheld GPS for supervised image classification in Erdas imagine and ArcGIS environment. The findings show that six main land use land cover classes were detected and vegetation values were also computed in each period.  As a result, the total area of the kebele was 3646.49 hectare, from which in 1984 forest area (40.691%), grassland (26.15%) and farmland (10.81%) were dominant classes and in 2005 settlement (52.41%), forest area (25.04%) & farmland (11.71%) and in 2015, 35.14% was covered by forest land, 30.04% by Settlement, and 14.74% by farmland. Water resource decreases from 9.3% to 0.64% in 2015 and the bare land also changes from 3.18% to 0.903% because of urban expansion and agricultural activities in the kebele. In addition, the vegetation condition looks like a sinusoidal trend from the year 1984 up to 2015 because of climate change and human interventions in the kebele. To conclude that detecting LULC change and analysis of vegetation dynamics plays a great role in land use management and wise utilisation of natural resources by applying Geoinformatics tools in the kebele and it provides information for the policymakers to prepared future plan and for sustainable development.
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