Above-ground biomass estimation in a Mediterranean sparse coppice oak forest using Sentinel-2 data

IF 1.7 3区 农林科学 Q2 FORESTRY
Fardin Moradi, S. M. M. Sadeghi, H. B. Heidarlou, A. Deljouei, Erfan Boshkar, S. A. Borz
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引用次数: 13

Abstract

Implementing a scheduled and reliable estimation of forest characteristics is important for the sustainable management of forests. This study aimed at evaluating the capability of Sentinel-2 satellite data to estimate above-ground biomass (AGB) in coppice forests of Persian oak (Quercus brantii var. persica) located in Western Iran. To estimate the AGB, field data collection was implemented in 80 square plots (40×40 m, area of 1600 m2). Two diameters of the crown were measured and used to calculate the AGB of each tree based on allometric equations. Then, the performance of satellite data in estimating the AGB was evaluated for the area of study using the field-based AGB (dependent variable) as well as the spectral band values, spectrally-derived vegetation indices (independent variables) and four machine learning (ML) algorithms: Multi-Layer Perceptron Artificial Neural Network (MLPNN), k-Nearest Neighbor (kNN), Random Forest (RF), and Support Vector Regression (SVR). A five-fold cross-validation was used to verify the effectiveness of models. Examination of the Pearson’s correlation coefficient between AGB and the extracted ‎values showed that IPVI and NDVI vegetation indices had the highest correlation with AGB (r = 0.897). The results indicated that the MLPNN algorithm was the best ML option (RMSE = 1.71 t ha-1; MAE = 1.37 t ha-1; relative RMSE = 24.75%; R2 = 0.87) in estimating the AGB, providing new insights on the capability of remotely sensed-based AGB modeling of sparse Mediterranean forest ecosystems in an area with limited number of field sample plots.
利用Sentinel-2数据估算地中海稀疏矮林的地上生物量
对森林特征进行有计划和可靠的估计对森林的可持续管理很重要。本研究旨在评估哨兵2号卫星数据估计伊朗西部波斯橡树(Quercus brantii var.persica)矮林地上生物量(AGB)的能力。为了估计AGB,在80平方地块(40×40 m,面积1600 m2)中进行了现场数据收集。测量树冠的两个直径,并根据异速生长方程计算每棵树的AGB。然后,使用基于现场的AGB(因变量)、光谱带值、光谱衍生的植被指数(自变量)和四种机器学习(ML)算法:多层感知器人工神经网络(MLPNN)、k-最近邻(kNN)、随机森林(RF),以及支持向量回归(SVR)。使用五次交叉验证来验证模型的有效性。AGB与提取的‎结果表明,IPVI和NDVI植被指数与AGB的相关性最高(r=0.897),为在野外采样点数量有限的地区对稀疏的地中海森林生态系统进行基于遥感的AGB建模的能力提供了新的见解。
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来源期刊
CiteScore
2.20
自引率
11.10%
发文量
11
审稿时长
12 weeks
期刊介绍: Annals of Forest Research is a semestrial open access journal, which publishes research articles, research notes and critical review papers, exclusively in English, on topics dealing with forestry and environmental sciences. The journal promotes high scientific level articles, by following international editorial conventions and by applying a peer-review selection process.
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