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利用回归模型和 Spot-6 图像估算和绘制森林生物量(案例研究:伊朗北部的赫卡尼亚森林)。

Estimating and mapping forest biomass using regression models and Spot-6 images (case study: Hyrcanian forests of north of Iran).

机构信息

Student of Forestry, Faculty of Natural resources and Environment, Science and Research Branch, Islamic Azad University, Tehran, Iran.

Department of Forestry, Faculty of Natural resources and Environment, Science and Research Branch, Islamic Azad University, Tehran, Iran.

出版信息

Environ Monit Assess. 2018 May 21;190(6):352. doi: 10.1007/s10661-018-6725-0.

Abstract

Hyrcanian forests of North of Iran are of great importance in terms of various economic and environmental aspects. In this study, Spot-6 satellite images and regression models were applied to estimate above-ground biomass in these forests. This research was carried out in six compartments in three climatic (semi-arid to humid) types and two altitude classes. In the first step, ground sampling methods at the compartment level were used to estimate aboveground biomass (Mg/ha). Then, by reviewing the results of other studies, the most appropriate vegetation indices were selected. In this study, three indices of NDVI, RVI, and TVI were calculated. We investigated the relationship between the vegetation indices and aboveground biomass measured at sample-plot level. Based on the results, the relationship between aboveground biomass values and vegetation indices was a linear regression with the highest level of significance for NDVI in all compartments. Since at the compartment level the correlation coefficient between NDVI and aboveground biomass was the highest, NDVI was used for mapping aboveground biomass. According to the results of this study, biomass values were highly different in various climatic and altitudinal classes with the highest biomass value observed in humid climate and high-altitude class.

摘要

伊朗北部的赫卡尼亚森林在各个经济和环境方面都具有重要意义。在这项研究中,使用 Spot-6 卫星图像和回归模型来估算这些森林的地上生物量。本研究在三种气候(半干旱到湿润)类型和两个海拔等级的六个小区进行。在第一步中,使用小区级地面采样方法来估算地上生物量(Mg/ha)。然后,通过回顾其他研究的结果,选择了最合适的植被指数。在这项研究中,计算了三个植被指数:NDVI、RVI 和 TVI。我们研究了植被指数与样地水平测量的地上生物量之间的关系。基于结果,地上生物量值与植被指数之间的关系是线性回归,在所有小区中,NDVI 的显著性水平最高。由于在小区水平上,NDVI 与地上生物量之间的相关系数最高,因此使用 NDVI 来绘制地上生物量图。根据这项研究的结果,不同气候和海拔等级的生物量值差异很大,在湿润气候和高海拔等级下观察到的生物量值最高。

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