Suppr超能文献

在温带森林中能否利用陆地卫星数据评估树种多样性?

Can tree species diversity be assessed with Landsat data in a temperate forest?

作者信息

Arekhi Maliheh, Yılmaz Osman Yalçın, Yılmaz Hatice, Akyüz Yaşar Feyza

机构信息

Department of Forest Engineering, Faculty of Forestry, Istanbul University, 34473 Bahçeköy, Istanbul, Turkey.

Ornamental Plants Cultivation Program, Vocational School of Forestry, Faculty of Forestry, Istanbul University, 34473 Bahçeköy, Istanbul, Turkey.

出版信息

Environ Monit Assess. 2017 Oct 28;189(11):586. doi: 10.1007/s10661-017-6295-6.

Abstract

The diversity of forest trees as an indicator of ecosystem health can be assessed using the spectral characteristics of plant communities through remote sensing data. The objectives of this study were to investigate alpha and beta tree diversity using Landsat data for six dates in the Gönen dam watershed of Turkey. We used richness and the Shannon and Simpson diversity indices to calculate tree alpha diversity. We also represented the relationship between beta diversity and remotely sensed data using species composition similarity and spectral distance similarity of sampling plots via quantile regression. A total of 99 sampling units, each 20 m × 20 m, were selected using geographically stratified random sampling method. Within each plot, the tree species were identified, and all of the trees with a diameter at breast height (dbh) larger than 7 cm were measured. Presence/absence and abundance data (tree species number and tree species basal area) of tree species were used to determine the relationship between richness and the Shannon and Simpson diversity indices, which were computed with ground field data, and spectral variables derived (2 × 2 pixels and 3 × 3 pixels) from Landsat 8 OLI data. The Shannon-Weiner index had the highest correlation. For all six dates, NDVI (normalized difference vegetation index) was the spectral variable most strongly correlated with the Shannon index and the tree diversity variables. The Ratio of green to red (VI) was the spectral variable least correlated with the tree diversity variables and the Shannon basal area. In both beta diversity curves, the slope of the OLS regression was low, while in the upper quantile, it was approximately twice the lower quantiles. The Jaccard index is closed to one with little difference in both two beta diversity approaches. This result is due to increasing the similarity between the sampling plots when they are located close to each other. The intercept differences between two investigated beta diversity were strongly related to the development stage of a number of sampling plots in the tree species basal area method. To obtain beta diversity, the tree basal area method indicates better result than the tree species number method at representing similarity of regions which are located close together. In conclusion, NDVI is helpful for estimating the alpha diversity of trees over large areas when the vegetation is at the maximum growing season. Beta diversity could be obtained with the spectral heterogeneity of Landsat data. Future tree diversity studies using remote sensing data should select data sets when vegetation is at the maximum growing season. Also, forest tree diversity investigations can be identified by using higher-resolution remote sensing data such as ESA Sentinel 2 data which is freely available since June 2015.

摘要

森林树木的多样性作为生态系统健康的一个指标,可以通过遥感数据利用植物群落的光谱特征来评估。本研究的目的是利用土耳其戈嫩大坝流域六个日期的陆地卫星数据调查α和β树木多样性。我们使用丰富度以及香农和辛普森多样性指数来计算树木α多样性。我们还通过分位数回归,利用样地的物种组成相似度和光谱距离相似度来表示β多样性与遥感数据之间的关系。采用地理分层随机抽样方法共选取了99个采样单元,每个采样单元为20米×20米。在每个样地内,识别树木种类,并测量所有胸径大于7厘米的树木。利用树木种类的存在/缺失和丰度数据(树木种类数量和树木种类断面积)来确定丰富度与香农和辛普森多样性指数之间的关系,这些指数是根据地面实地数据计算得出的,以及从陆地卫星8号OLI数据导出的光谱变量(2×2像素和3×3像素)。香农 - 韦纳指数具有最高的相关性。在所有六个日期中,归一化差异植被指数(NDVI)是与香农指数和树木多样性变量相关性最强的光谱变量。绿红比(VI)是与树木多样性变量和香农断面积相关性最小的光谱变量。在两条β多样性曲线中,普通最小二乘法(OLS)回归的斜率较低,而在上分位数中,它大约是下分位数的两倍。在两种β多样性方法中,杰卡德指数都接近1,差异很小。这一结果是由于当采样样地彼此靠近时,它们之间的相似度增加。两种研究β多样性之间的截距差异与树木种类断面积方法中一些采样样地的发育阶段密切相关。为了获得β多样性,在表示彼此靠近区域的相似度时,树木断面积方法比树木种类数量方法的结果更好。总之,当植被处于最大生长季节时,NDVI有助于估计大面积树木的α多样性。利用陆地卫星数据的光谱异质性可以获得β多样性。未来使用遥感数据进行树木多样性研究时,应在植被处于最大生长季节时选择数据集。此外,森林树木多样性调查可以通过使用更高分辨率的遥感数据来识别,如自2015年6月起免费提供的欧洲航天局哨兵2号数据。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验