首页> 外文OA文献 >ESTIMATING ABOVEGROUND BIOMASS OF BAMBOO AND MIXED BAMBOO FOREST IN THUA THIEN-HUE PROVINCE, VIET NAM USING PALSAR-2 AND LANDSAT OLI DATA
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ESTIMATING ABOVEGROUND BIOMASS OF BAMBOO AND MIXED BAMBOO FOREST IN THUA THIEN-HUE PROVINCE, VIET NAM USING PALSAR-2 AND LANDSAT OLI DATA

机译:俯视Thua Thien-Hue Province的竹子和混合竹林地上的地上生物量,使用Palsar-2和Landsat Oli数据

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摘要

In this study, above-ground biomass (AGB) performance was evaluated by PALSAR-2 L-band and Landsat data for bamboo and mixed bamboo forest. The linear regression model was chosen and validated for forest biomass estimation in A Luoi district, Thua Thien Hue province, Vietnam. A Landsat 8 OLI image and a dual-polarized ALOS/PALSAR-2 L-band (HH, HV polarizations) were used. In addition, 11 diferrent vegetation indices were extracted to test the performance of Landsat data in estimating forest AGB Total of 54 plots were collected in the bamboo and mixed bamboo forest in 2016. The linear regression is used to evaluate the sensitivity of biomass to the obtained parameters, including radar polarization, optical properties, and some vegetation indices which are extracted from Landsat data. The best-fit linear regression is selected by using the Bayesian Model Average for biomass estimation. Leave-one-out cross-validation (LOOCV) was employed to test the robustness of the model through the coefficient of determination (R squared – R2) and Root Mean Squared Error (RMSE). The results show that Landsat 8 OLI data has a slightly better potential for biomass estimation than PALSAR-2 in the bamboo and mixed bamboo forest. Besides, the combination of PALSAR-2 and Landsat 8 OLI data also has a no significant improvement (R2 of 0.60) over the performance of models using only SAR (R2 of 0.49) and only Landsat data (R2 of 0.58–0.59). The univariate model was selected to estimate AGB in the bamboo and mixed bamboo forest. The model showed good accuracy with an R2 of 0.59 and an RMSE of 29.66 tons ha−1. The comparison between two approaches using the entire dataset and LOOCV demonstrates no significant difference in R (0.59 and 0.56) and RMSE (29.66 and 30.06 tons ha−1). This study performs the utilization of remote sensing data for biomass estimation in bamboo and mixed bamboo forest, which is a lack of up-to-date information in forest inventory. This study highlights the utilization of the linear regression model for estimating AGB of the bamboo forest with a limited number of field survey samples. However, future research should include a comparison with non-linear and non-parametric models.
机译:在该研究中,通过Palsar-2 L波段和竹和混合竹林的Landsat数据评估了地上生物量(AGB)性能。选择线性回归模型并验证了越南罗利区的森林生物量估计。使用LANDSAT 8 OLI图像和双极化ALOS / PALSAR-2 L波段(HH,HV偏振)。此外,提取了11个不同的植被索引以测试估算森林数据的落地数据,在2016年竹子和混合竹林中收集了54个地块的森林。线性回归用于评估生物量对所获得的敏感性参数,包括从Landsat数据中提取的雷达极化,光学性质和一些植被指数。通过使用贝叶斯模型平均值来选择最佳的线性回归以进行生物量估计。采用留下交叉验证(LOOCV)来测试模型的稳健性,通过确定系数(R平方-R2)和根均方误差(RMSE)来测试模型的鲁棒性。结果表明,Landsat 8 Oli数据在竹子和混合竹林中的波瓦拉2中具有比Palsar-2的生物质估算略有更好的潜力。此外,Palsar-2和Landsat 8 OLI数据的组合在使用SAR(R2为0.49)和仅限LANDSAT数据(R2为0.58-0.59)的模型的性能上也没有显着改善(R2为0.60)。单变量模型被选中来估计竹子和混合竹林中的AGB。该模型显示出良好的准确性,R2为0.59,RMSE为29.66吨HA-1。使用整个数据集和LoOCV的两种方法之间的比较显示R(0.59和0.56)和RMSE(29.66和30.06吨HA-1)没有显着差异。该研究执行竹子和混合竹林中生物质估计的遥感数据的利用,这是森林库存中缺乏最新信息。该研究突出了利用线性回归模型来估算竹林AGB,具有有限数量的现场调查样本。然而,未来的研究应包括与非线性和非参数模型的比较。

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