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Improvement of Mangrove Soil Carbon Stocks Estimation in North Vietnam Using Sentinel-2 Data and Machine Learning Approach

机译:使用Sentinel-2数据和机器学习方法改进北越南红树土壤碳储量估算

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Quantifying total carbon (TC) stocks in soil across various mangrove ecosystems is key to understanding the global carbon cycle to reduce greenhouse gas emissions. Estimating mangrove TC at a large scale remains challenging due to the difficulty and high cost of soil carbon measurements when the number of samples is high. In the present study, we investigated the capability of Sentinel-2 multispectral data together with a state-of-the-art machine learning (ML) technique, which is a combination of CatBoost regression (CBR) and a genetic algorithm (GA) for feature selection and optimization (the CBR-GA model) to estimate the mangrove soil C stocks across the mangrove ecosystems in North Vietnam. We used the field survey data collected from 177 soil cores. We compared the performance of the proposed model with those of the four ML algorithms, i.e., the extreme gradient boosting regression (XGBR), the light gradient boosting machine regression (LGBMR), the support vector regression (SVR), and the random forest regression (RFR) models. Our proposed model estimated the TC level in the soil as 35.06-166.83 Mg ha(-1) (average = 92.27 Mg ha(-1)) with satisfactory accuracy (R (2) = 0.665, RMSE = 18.41 Mg ha(-1)) and yielded the best prediction performance among all the ML techniques. We conclude that the Sentinel-2 data combined with the CBR-GA model can improve estimates of the mangrove TC at 10 m spatial resolution in tropical areas. The effectiveness of the proposed approach should be further evaluated for different mangrove soils of the other mangrove ecosystems in tropical and semi-tropical regions.
机译:定量各种红树林生态系统的土壤中的总碳(TC)库存是了解全球碳循环以减少温室气体排放的关键。由于样品数量高的土壤碳测量的难度和高成本,估计红树林TC仍然具有挑战性。在本研究中,我们将Sentinel-2多光谱数据与最先进的机器学习(ML)技术一起调查了Sentinel-2多光谱数据的能力,其是Catboost回归(CBR)和遗传算法(GA)的组合特征选择和优化(CBR-GA型号),以估算红树林北越南红树林生态系统中的土壤C股。我们使用从177个土壤核心收集的现场调查数据。我们将所提出的模型与四毫升算法的性能进行比较,即极端梯度升压回归(XGBR),光梯度升压机回归(LGBMR),支持向量回归(SVR),以及随机林回归(RFR)模型。我们所提出的模型估计土壤中的TC水平为35.06-166.83 mg(-1)(平均= 92.27mg ha(-1)),精度令人满意(r(2)= 0.665,RMSE = 18.41 mg ha(-1 ))并在所有ML技术中产生最佳预测性能。我们得出结论,与CBR-GA模型相结合的Sentinel-2数据可以在热带地区的10米空间分辨率下改善红树林TC的估计。在热带和半热带地区的其他红树林生态系统的不同红树林中,应进一步评估拟议方法的有效性。

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