Artificial Neural Network and Remote Sensing combined to predict the Aboveground Biomass in the Cerrado biome.

IF 1.1 4区 综合性期刊 Q3 MULTIDISCIPLINARY SCIENCES Anais da Academia Brasileira de Ciencias Pub Date : 2024-08-23 eCollection Date: 2024-01-01 DOI:10.1590/0001-3765202420221041
Paula L G Oliveira, Eraldo A T Matricardi, Eder P Miguel, Ben Hur Marimon Júnior, Alba Valéria Rezende
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Abstract

Cerrado is the second largest biome in Brazil, and it is responsible for providing us several ecosystem services, including the functions of storing Carbon and biodiversity conservation. In this study, we developed a modeling approach to predict the Aboveground biomass (AGB) in Cerrado vegetation using Artificial Neural Networks (ANNs), vegetation indices retrieved from RapidEye satellite imagery, and field data acquired within the Federal District territory, Brazil. Correlation testing was performed to identify potential vegetation index candidates to be used as input in the AGB modeling. Several ANNs were trained to predict the AGB in the study area using vegetation indices and field data. The optimum ANN was selected according to criteria of mean error of the estimate, correlation coefficient, and graphical analysis. The best performing ANN showed a predictive power of 90% and RMSE less than 17%. The validation tests showed no significant difference between the observed and ANN-predicted values. We estimated an average AGB of 16.55± 8.6 Mg.ha-1 in shrublands in the study area. Our study results indicate that vegetation indices and ANNs combined could accurately estimate the AGB in the Cerrado vegetation in the study area, showing to be a promising methodological approach to be broadly applied throughout the Cerrado biome.

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人工神经网络与遥感相结合,预测塞拉多生物群落的地上生物量。
Cerrado 是巴西第二大生物群落,它为我们提供了多种生态系统服务,包括碳储存和生物多样性保护功能。在这项研究中,我们开发了一种建模方法,利用人工神经网络(ANN)、从 RapidEye 卫星图像中获取的植被指数以及在巴西联邦区境内获取的实地数据,预测 Cerrado 植被的地上生物量(AGB)。进行了相关性测试,以确定潜在的候选植被指数,作为 AGB 建模的输入。利用植被指数和实地数据训练了多个 ANN,以预测研究区域的 AGB。根据估算的平均误差、相关系数和图形分析等标准,选出了最佳 ANN。表现最好的 ANN 预测能力达到 90%,均方根误差小于 17%。验证测试表明,观测值和 ANN 预测值之间没有明显差异。我们估计研究区域灌木林地的平均 AGB 为 16.55± 8.6 兆克/公顷-1。我们的研究结果表明,植被指数与方差网络相结合可准确估算研究区域塞拉多植被的AGB,是一种有望在塞拉多生物群落中广泛应用的方法。
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来源期刊
Anais da Academia Brasileira de Ciencias
Anais da Academia Brasileira de Ciencias 综合性期刊-综合性期刊
CiteScore
2.20
自引率
0.00%
发文量
347
审稿时长
1 months
期刊介绍: The Brazilian Academy of Sciences (BAS) publishes its journal, Annals of the Brazilian Academy of Sciences (AABC, in its Brazilianportuguese acronym ), every 3 months, being the oldest journal in Brazil with conkinuous distribukion, daking back to 1929. This scienkihic journal aims to publish the advances in scienkihic research from both Brazilian and foreigner scienkists, who work in the main research centers in the whole world, always looking for excellence. Essenkially a mulkidisciplinary journal, the AABC cover, with both reviews and original researches, the diverse areas represented in the Academy, such as Biology, Physics, Biomedical Sciences, Chemistry, Agrarian Sciences, Engineering, Mathemakics, Social, Health and Earth Sciences.
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