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加纳沿海恢复力背景下红树林生态系统的非参数评估

Nonparametric assessment of mangrove ecosystem in the context of coastal resilience in Ghana.

作者信息

Aja Daniel, Miyittah Michael, Angnuureng Donatus Bapentire

机构信息

Africa Center of Excellence in Coastal Resilience, Center for Coastal Management University of Cape Coast Cape Coast Ghana.

Department of Environmental Science University of Cape Coast Cape Coast Ghana.

出版信息

Ecol Evol. 2023 Jul 31;13(8):e10388. doi: 10.1002/ece3.10388. eCollection 2023 Aug.

Abstract

Cloud cover effects make it difficult to evaluate the mangrove ecosystem in tropical locations using solely optical satellite data. Therefore, it is essential to conduct a more precise evaluation using data from several sources and appropriate models in order to manage the mangrove ecosystem as effectively as feasible. In this study, the status of the mangrove ecosystem and its potential contribution to coastal resilience were evaluated using the Google Earth Engine (GEE) and the InVEST model. The GEE was used to map changes in mangrove and other land cover types for the years 2009 and 2019 by integrating both optical and radar data. The quantity allocation disagreement index (QADI) was used to assess the classification accuracy. Mangrove height and aboveground biomass density were estimated using GEE by extracting their values from radar image clipped with a digital elevation model and mangrove vector file. A universal allometric equation that relates canopy height to aboveground biomass was applied. The InVEST model was used to calculate a hazard index of every 250 m of the shoreline with and without mangrove ecosystem. Our result showed that about 16.9% and 21% of mangrove and other vegetation cover were lost between 2009 and 2019. However, water body and bare land/built-up areas increased by 7% and 45%, respectively. The overall accuracy of 2009 and 2019 classifications was 99.6% (QADI = 0.00794) and 99.1% (QADI = 0.00529), respectively. Mangrove height and aboveground biomass generally decreased from 12.7 to 6.3 m and from 105 to 88 Mg/ha on average. The vulnerability index showed that 23%, 51% and 26% of the coastal segment in the presence of mangrove fall under very low/low, moderate and high risks, respectively. Whereas in the absence of mangrove, 8%, 38%, 39% and 15% fall under low, moderate, high and very high-risk zones, respectively. This study will among other things help the stakeholders in coastal management and marine spatial planning to identify the need to focus on conservation practices.

摘要

云层覆盖效应使得仅使用光学卫星数据来评估热带地区的红树林生态系统变得困难。因此,有必要使用来自多个来源的数据和适当的模型进行更精确的评估,以便尽可能有效地管理红树林生态系统。在本研究中,利用谷歌地球引擎(GEE)和InVEST模型评估了红树林生态系统的现状及其对海岸恢复力的潜在贡献。GEE通过整合光学和雷达数据,绘制了2009年和2019年红树林及其他土地覆盖类型的变化情况。使用数量分配不一致指数(QADI)来评估分类精度。通过从用数字高程模型和红树林矢量文件裁剪的雷达图像中提取值,利用GEE估计红树林高度和地上生物量密度。应用了一个将树冠高度与地上生物量相关联的通用异速生长方程。InVEST模型用于计算有和没有红树林生态系统的情况下,每250米海岸线的灾害指数。我们的结果表明,2009年至2019年期间,约16.9%的红树林和其他植被覆盖面积丧失。然而,水体和裸地/建成区分别增加了7%和45%。2009年和2019年分类的总体精度分别为99.6%(QADI = 0.00794)和99.1%(QADI = 0.005

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d83a/10388404/a5288f450548/ECE3-13-e10388-g011.jpg

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