Ekstraksi Perubahan Tutupan Vegetasi Di Kabupaten Gorontalo Menggunakan Google Earth Engine

Rakhmat Jaya Lahay, Syahrizal Koem
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Abstract

Monitoring changes in vegetation cover is important for the restoration of ecosystems in the Gorontalo Regency area. The utilization of remote sensing technology makes it possible to detect the dynamics of changes in vegetation cover spatially and temporally. The Terra MODIS satellite image collection in the study area is available in large numbers and sizes. Therefore, cloud computing-based spatial technology support is needed. Google Earth Engine (GEE) as a geospatial computing device is an alternative to cover this shortfall. The aim of this study is to explore the condition of vegetation cover spatially and temporally using the GEE platform. A total of 43 MODIS images in the study area, recording periods 2000 and 2020, were used to quickly and effectively generate vegetation cover maps. The process of downloading, processing, and analyzing data was automated through the GEE interface. The results of the mapping in 2000 and 2020 are shown by maps of vegetation cover in two classes, namely; vegetation and non-vegetation. The accuracy of the vegetation cover map shows good results, namely an overall accuracy of 0.81 for 2000 and 0.85 for 2020. The area of the non-vegetation class increased by 2815.29 ha, and the vegetation class decreased by 2767.31 ha. The map of spatial changes in vegetation cover in the study area is classified into three classes, namely revegetation, devegetation, and unchanged. Based on these results, the extraction of vegetation cover changes in the study area using the GEE platform can be carried out well.
监测植被覆盖的变化对于恢复戈隆塔洛摄政区的生态系统非常重要。遥感技术的利用使人们有可能在空间和时间上探测植被覆盖变化的动态。研究区域内的Terra MODIS卫星图像集数量巨大。因此,需要基于云计算的空间技术支持。谷歌地球引擎(GEE)作为一种地理空间计算设备是弥补这一缺口的替代方案。本研究的目的是利用GEE平台探索植被覆盖的时空条件。研究区域共有43幅MODIS图像,记录了2000年和2020年,用于快速有效地生成植被覆盖图。下载、处理和分析数据的过程通过GEE接口实现了自动化。2000年和2020年的测绘结果由两类植被覆盖图显示,即:;植被和非植被。植被覆盖图的精度显示出良好的结果,即2000年和2020年的总体精度分别为0.81和0.85。非植被类面积增加2815.29公顷,植被类面积减少2767.31公顷。研究区植被覆盖的空间变化图分为三类,即植被恢复、植被恢复和不变。基于这些结果,可以很好地利用GEE平台提取研究区的植被覆盖变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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