利用近距离和遥感技术估算阿萨姆邦 Behali 储备林的森林生物物理和生物化学参数

IF 1.1 4区 环境科学与生态学 Q4 ECOLOGY
Bishal Kanu, Bikash Ranjan Parida, Somnath Bar, Chandra Shekhar Dwivedi, Arvind Chandra Pandey
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引用次数: 0

摘要

森林生物物理和生物化学参数对评估森林健康状况至关重要。由于多维数据收集和解读带来的好处,近距离和遥感方法的整合在植物特征描述中越来越普遍。本研究旨在推断位于喜马拉雅山脉东部的贝哈里保护区森林(BRF)的生物物理和生物化学参数。具体而言,利用哨兵-2A 传感器的红边光谱波段来推导叶面积指数(LAI)、增强植被指数(EVI)和归一化红边差值(NDRE)。此外,归一化面积反射曲线(NAOC)用于推算叶片叶绿素含量和叶片氮含量。生物物理参数分析表明,LAI 在 0 至 5.5 m2/m2 之间。健康密林的 LAI 大于 4.5,占面积的 37.5%。卫星得出的 NDRE 与测量的叶片叶绿素含量和氮含量有显著的正相关,其决定系数 (R2) 分别为 0.88 和 0.89。基于 NAOC 经验模型的密林叶片叶绿素含量介于 30 至 45 μg/cm2 之间。根据氮平衡指数(NBI)估算,密林的叶片氮含量在 40 至 70 之间(无单位)。近景数据和遥感数据的协同作用展示了一种监测保护区森林健康状况的稳健而高效的方法。检索到的生物物理和生物化学参数提供了有关森林健康的重要信息,这对森林保护、植树造林、监测和管理至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Estimating forest biophysical and biochemical parameters in Behali Reserve Forest (Assam) using proximal and remote sensing techniques

Estimating forest biophysical and biochemical parameters in Behali Reserve Forest (Assam) using proximal and remote sensing techniques

Forest biophysical and biochemical parameters are critical for assessing forest health. The integration of proximal and remote sensing approaches is becoming more prevalent for plant characterization because of the benefits associated with multi-dimensional data collection and interpretation. This study aims to deduce the biophysical and biochemical parameters of forests in the Behali Reserve Forest (BRF) located in the Eastern Himalayas. Specifically, the red-edge spectral bands of the Sentinel-2A sensor were deployed to derive the Leaf Area Index (LAI), Enhanced Vegetation Index (EVI), and Normalized Difference Red-Edge (NDRE). Furthermore, the Normalized Area Over Reflectance Curve (NAOC) is used to deduce leaf chlorophyll content and leaf nitrogen content. The biophysical parameters analysis showed that the LAI ranged from 0 to 5.5 m2/m2. The healthy dense forests showed an LAI of more than 4.5 that comprised 37.5% of the area. The satellite-derived NDRE has a significant positive association with measured leaf chlorophyll and nitrogen contents that exhibited coefficient of determination (R2) of 0.88 and 0.89, respectively. The NAOC-based empirical model leaf chlorophyll content of dense forests ranges between 30 and 45 μg/cm2. The leaf nitrogen content of dense forest as demonstrated by the Nitrogen Balance Index (NBI) was estimated between 40 and 70 (unitless). The synergy of near-proximal and remote sensing data has demonstrated a robust and efficient method of monitoring the health of forests in reserve forests. The retrieved biophysical and biochemical parameters have supplied crucial information on forest health which is vital for forest conservation, plantation, monitoring and management.

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来源期刊
Tropical Ecology
Tropical Ecology ECOLOGY-
CiteScore
3.30
自引率
6.20%
发文量
71
审稿时长
>12 weeks
期刊介绍: Tropical Ecology is devoted to all aspects of fundamental and applied ecological research in tropical and sub-tropical ecosystems. Nevertheless, the cutting-edge research in new ecological concepts, methodology and reviews on contemporary themes, not necessarily confined to tropics and sub-tropics, may also be considered for publication at the discretion of the Editor-in-Chief. Areas of current interest include: Biological diversity and its management; Conservation and restoration ecology; Human ecology; Ecological economics; Ecosystem structure and functioning; Ecosystem services; Ecosystem sustainability; Stress and disturbance ecology; Ecology of global change; Ecological modeling; Evolutionary ecology; Quantitative ecology; and Social ecology. The Journal Tropical Ecology features a distinguished editorial board, working on various ecological aspects of tropical and sub-tropical systems from diverse continents. Tropical Ecology publishes: · Original research papers · Short communications · Reviews and Mini-reviews on topical themes · Scientific correspondence · Book Reviews
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