利用遥感技术监测抬高沼泽的环境支持条件

Q3 Earth and Planetary Sciences
Saheba Bhatnagar, Bidisha Ghosh, S. Regan, O. Naughton, P. Johnston, L. Gill
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引用次数: 13

摘要

摘要传统的监测湿地和监测湿地随时间变化的方法既耗时又昂贵。许多湿地的交通不便和地处偏远也是一个限制因素。因此,人们日益认识到遥感技术是实地生态系统监测的可行和具有成本效益的替代办法。湿地包括各种各样的栖息地,如沼泽、沼泽、沼泽和沼泽。在这项研究中,我们集中在一个自然湿地-克拉拉沼泽,Co. Offaly,一个饲养沼泽位于爱尔兰中部。这项研究的目的是利用遥感技术查明和监测沼泽的环境条件。本研究中的环境条件是指沼泽的植被组成,以及它是处于完整(泥炭形成)状态还是退化状态。它可以用植被、水(土壤湿度)和地形来描述。基于卫星数据的植被指数(VIs)已被广泛用于评估植被特性的变化。本研究使用来自Sentinel-2 MSI, Landsat 8 OLI的中分辨率数据进行VI分析。初步研究了利用边缘检测和分割技术,即熵滤波、canny边缘检测和图切分割相结合来划定沼泽边界的方法。一旦确定了沼泽的边界,就研究圈定区域的光谱。对Sentinel-2 MSI和Landsat 8 OLI反演的NDVI、ARVI、SAVI、NDWI等VIs进行了分析。数字高程模型(DEM)也被用于更好的分类。所有这些特征(特征)都是将沼泽分类为广泛的植被群落(称为生态群落)的基础,这些植被群落表明了沼泽生境的质量。这一分析得到了实地生态系统的验证。结果表明,利用光谱信息和植被指数聚类,可以在光谱RS特征与湿地生态区之间建立额外的联系。因此,这项研究的好处在于了解生态系统(沼泽)环境条件,并定义适当的指标,通过这些指标可以监测条件的变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monitoring environmental supporting conditions of a raised bog using remote sensing techniques
Abstract. Conventional methods of monitoring wetlands and detecting changes over time can be time-consuming and costly. Inaccessibility and remoteness of many wetlands is also a limiting factor. Hence, there is a growing recognition of remote sensing techniques as a viable and cost-effective alternative to field-based ecosystem monitoring. Wetlands encompass a diverse array of habitats, for example, fens, bogs, marshes, and swamps. In this study, we concentrate on a natural wetland – Clara Bog, Co. Offaly, a raised bog situated in the Irish midlands. The aim of the study is to identify and monitor the environmental conditions of the bog using remote sensing techniques. Environmental conditions in this study refer to the vegetation composition of the bog and whether it is in an intact (peat-forming) or degraded state. It can be described using vegetation, the presence of water (soil moisture) and topography. Vegetation indices (VIs) derived from satellite data have been widely used to assess variations in properties of vegetation. This study uses mid-resolution data from Sentinel-2 MSI, Landsat 8 OLI for VI analysis. An initial study to delineate the boundary of the bog using the combination of edge detection and segmentation techniques namely, entropy filtering, canny edge detection, and graph-cut segmentation is performed. Once the bog boundary is defined, spectra of the delineated area are studied. VIs like NDVI, ARVI, SAVI, NDWI, derived using Sentinel-2 MSI and Landsat 8 OLI are analysed. A digital elevation model (DEM) was also used for better classification. All of these characteristics (features) serve as a basis for classifying the bog into broad vegetation communities (termed ecotopes) that indicate the quality of raised bog habitat. This analysis is validated using field derived ecotopes. The results show that, by using spectral information and vegetation index clustering, an additional linkage can be established between spectral RS signatures and wetland ecotopes. Hence, the benefit of the study is in understanding ecosystem (bog) environmental conditions and in defining appropriate metrics by which changes in the conditions can be monitored.
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来源期刊
Proceedings of the International Association of Hydrological Sciences
Proceedings of the International Association of Hydrological Sciences Earth and Planetary Sciences-Earth and Planetary Sciences (all)
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