植被-水体指数组合:基于Google Earth Engine的红树林特征与分布的算法指数组合

A. D. Rahmawati
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引用次数: 0

摘要

生活在交错带的红树林在经济和生态方面具有相当重要的作用。这一战略作用需要空间数据来促进红树林地区的管理和发展。红树林制图过程通常采用手工方法,即通过软件,在需要大量数据存储的图像管理方面存在缺点和局限性。基于云计算的谷歌地球引擎(Google Earth Engine, GEE)地图平台可以管理大范围的图像和处理时空数据。然而,该平台需要索引公式或组合来帮助分类和提高地球表面制图的准确性。结合VWB-IC(植被-水-建筑指数组合)公式的创新预计将对雅加达湾红树林地区的特征进行分类。该组合由三类指数组成,即植被指数(NDVI、GNDVI、ARVI、EVI、SLAVI和SAVI)、水体指数(NDWI、MNDWI和LSWI)和建筑指数(IBI和NDBI)。该组合使用随机森林(RF)机器学习算法方法与Sentinel-2 MSI(多光谱仪器)卫星图像源并通过GEE平台翻译红树林分类。该平台生成栅格数据用于土地利用分类(包括红树林),然后使用ArcMap软件继续分析。获得的红树林面积为220.43公顷,位于雅加达湾,分为Angke Kapuk自然旅游公园和Pantai Indah Kapuk红树林生态旅游区。这项研究的数据有望为城市地区红树林地图绘制的组合指数公式提供建议。空间分布面积可作为雅加达湾红树林区域的评价资料
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Vegetation-Water-Built Up Index Combined: Algorithm Indices Combination for Characterization and distribution of Mangrove Forest through Google Earth Engine
Mangroves that live in ecotone areas have a fairly significant role in the economy and ecology. This strategic role requires spatial data to facilitate the management and development of mangrove areas. The mangrove mapping process usually uses a manual method, namely through software, and has shortcomings and limitations in image management that require massive data storage. Cloud computing-based Google Earth Engine (GEE) mapping platform can manage images with an extensive scope and spatiotemporal data processing. However, this platform requires index formulas or combinations to help classify and increase accuracy in mapping the earth’s surface. The innovation with the combined VWB-IC (Vegetation-Water-Built-up Index Combined) formula is projected to classify the characteristics of mangrove areas in Jakarta Bay. The combination consists of three types of indices, namely vegetation index (NDVI, GNDVI, ARVI, EVI, SLAVI, and SAVI), water (NDWI, MNDWI, and LSWI), and buildings (IBI and NDBI). This combination is used to translate the classification of mangroves using the Random Forest (RF) machine learning algorithm method with the Sentinel-2 MSI (Multispectral Instrument) satellite image source and through the GEE platform. This platform generates raster data for land use classification (including mangroves), and then the analysis is continued using ArcMap software. The obtained mangrove area is 220.43 ha, located in Jakarta Bay and divided into the Angke Kapuk Nature Tourism Park and the Pantai Indah Kapuk Mangrove Ecotourism Area. The data from this research is expected to provide a recommendation for a combination index formula for mapping mangrove areas in urban areas. The spatial distribution area can be used as an evaluation material in mangrove areas in Jakarta Bay
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