首页|基于Google Earth Engine的八门湾红树林年际变化监测

基于Google Earth Engine的八门湾红树林年际变化监测

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该文基于Google Earth Engine(GEE)云平台,选择Landsat系列卫星数据,采用支持向量机(support vector ma-chines,SVM)分类方法对八门湾地区进行地物类型分类,并基于分类结果监测该地区红树林年际变化.结果表明:红树林与陆地树木之间除红外波段外反射光谱曲线极其相似,利用红外波段特征指数并结合地形数据可进行有效区分,分类结果总体精度达到 0.91;研究区红树林存在先减少后增加的变化趋势,在 2009-2013 年减少,2014-2016 年基本保持不变,2017-2021 年缓慢增加,红树林增加和坑塘减少时期是在"南红北柳"政策颁布之后,说明退塘还林政策成效显著;红树林主要是和坑塘相互变化转移,说明毁林造塘和退塘还林是影响该地区红树林变化的重要因素.红树林年际变化监测结果可以精细化分析红树林演变过程,并能精确量化红树林与其他土地类型的转化过程,从而在经济、政策上分析红树林演变因素,更有效地保护红树林.
Monitoring of inter-annual variations in mangrove forests in the Bamen Bay area based on Google Earth Engine
Based on the Google Earth Engine(GEE)cloud platform and Landsat series data,this study classified the surface features of the Bamen Bay area using the support vector machine(SVM)classification method.Furthermore,the classification results were employed to monitor the inter-annual variations of mangrove forests in the area.The analysis reveals that mangrove forests and terrestrial trees exhibit extraordinarily similar reflectance spectral curves except for infrared bands.Hence,they were effectively distinguished using the infrared band feature index and topographic data,achieving an overall classification accuracy of 91%.The classification results show that mangrove forests in the study area manifested a trend of decrease followed by increase.Specifically,they decreased from 2009 to 2013,remained almost unchanged from 2014 to 2016,and increased slowly from 2017 to 2021.The increase in mangrove forests and the decrease in pits and ponds occurred following the wetland restoration policy that requires planting mangrove forests in South China and tamarix chinensis in North China,suggesting remarkable effects of the policy for returning ponds to forests.The transfer matrix analysis reveals a mutual transfer between mangrove forests and pits,ponds,suggesting that deforesting for ponds and returning ponds to forests constitute the primary factors influencing the variations in mangrove forests.The inter-annual variation monitoring results of mangrove forests enable detailed analysis of the evolutionary process of mangrove forests and accurate quantification of the transformation between mangrove forests and other land types.Therefore,the factors influencing mangrove forest evolution can be analyzed from the perspective of economy and policy for more effective preservation of mangrove forests.

mangrove forestGoogle Earth Engineinter-annual variation monitoringBamen Bay

薛志泳、田震、朱建华、赵阳

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国家海洋技术中心,天津 300112

红树林 Google Earth Engine 年际变化监测 八门湾

海南省重点研发计划

ZDYF2023GXJS023

2024

自然资源遥感
中国国土资源航空物探遥感中心

自然资源遥感

CSTPCD北大核心
影响因子:1.275
ISSN:2097-034X
年,卷(期):2024.36(2)
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