利用陆地卫星图像和陆地数据间接预测乌克兰波利西亚森林枯木生物量的方法

Q4 Agricultural and Biological Sciences
M. Matsala, V. Myroniuk, A. Bilous, A. Terentiev, P. Diachuk, R. Zadorozhniuk
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引用次数: 3

摘要

森林生物量的空间明确和一致的制图是全面和适当地计算不同尺度的碳收支和生产力潜力的关键任务之一。陆地卫星图像与陆基数据结合并使用现代机器学习技术进行处理,是绘制枯木等森林成分地图的合适数据源。利用枯木生物量和蓄积量之间的关系,我们间接绘制了乌克兰北部研究区域内的生态系统分区。应用了几种机器学习技术:随机森林(RF)用于土地覆盖和树种分类任务,k-近邻(k-NN)和梯度增强机(GBM)用于枯木输入目的。土地覆盖(81.9%)和树种分类(78.9%)的总体精度较高。使用k-NN和GBM进行的枯木生物量映射的结果匹配非常好(分别为8.4±2.3 t·ha - 1(平均值的17%)和8.1±1.7 t·ha - 1(平均值的16%),分别为平均±SD枯木生物量储量),表明集合增强器在以空间显式方式预测森林生物量方面具有很强的潜力。这项研究遇到的主要挑战与现有地面数据的局限性有关,因此显示乌克兰需要编制国家统计盘存所涉问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An indirect approach to predict deadwood biomass in forests of Ukrainian Polissya using Landsat images and terrestrial data
Abstract Spatially explicit and consistent mapping of forest biomass is one of the key tasks towards full and appropriate accounting of carbon budgets and productivity potentials at different scales. Landsat imagery coupled with terrestrial-based data and processed using modern machine learning techniques is a suitable data source for mapping of forest components such as deadwood. Using relationships between deadwood biomass and growing stock volume, here we indirectly map this ecosystem compartment within the study area in northern Ukraine. Several machine learning techniques were applied: Random Forest (RF) for the land cover and tree species classification task, k-Nearest Neighbours (k-NN) and Gradient Boosting Machines (GBM) for the deadwood imputation purpose. Land cover (81.9%) and tree species classification (78.9%) were performed with a relatively high level of overall accuracy. Outputs of deadwood biomass mapping using k-NN and GBM matched quite well (8.4 ± 2.3 t·ha−1 (17% of the mean) vs. 8.1 ± 1.7 t·ha−1 (16% of the mean), respectively mean ± SD deadwood biomass stock), indicating a strong potential of ensemble boosters to predict forest biomass in a spatially explicit manner. The main challenges met in the study were related to the limitations of available ground-based data, thus showing the need for national statistical inventory implications in Ukraine.
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来源期刊
Forestry Studies
Forestry Studies Agricultural and Biological Sciences-Forestry
CiteScore
0.70
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