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Forest biomass estimation using remote sensing and field inventory: a case study of Tripura, India

机译:利用遥感和田间调查估算森林生物量:以印度特里普拉邦为例

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摘要

Forests are the potential source for managing carbon sequestration, regulating climate variations and balancing universal carbon equilibrium between sources and sinks. Further, assessment of biomass, carbon stock, and its spatial distribution is prerequisite for monitoring the health of forest ecosystem. Moreover, vegetation field inventories are valuable source of data for estimating aboveground biomass (AGB), density, and the carbon stored in biomass of forest vegetation. In view of the importance of biomass, the present study makes an attempt to estimate temporal AGB of Tripura State, India, using Moderate Resolution Imaging Spectroradiometer (MODIS), normalized difference vegetation index (NDVI), leaf area index (LAI) and the field inventory data through geospatial techniques. A model was developed for establishing the relationship between biomass, LAI, and NDVI in the selected study site. The study also aimed to improve method for quantifying and verifying inventory-based biomass stock estimation. The results demonstrate the correlation value obtained between LAI and NDVI were 0.87 and 0.53 for the years 2011 and 2014, respectively. The correlation value between estimated AGB with LAI were found as 0.66 and 0.69, while with NDVI, the values were obtained as 0.64 and 0.94 for the years 2011 and 2014, respectively. The regression model of measured biomass with MODIS NDVI and LAI was developed for the data obtained during the period 2011-2014. The developed model was used to estimate the spatial distribution of biomass and its relationship between LAI and NDVI. The R-2 values obtained were 0.832 for estimated and the measured AGB during the training and 0.826 for the validation. The results indicate that the methodology adopted in this study can help in selecting best fit model for analyzing relationship between AGB and NDVI/LAI and for estimating biomass using allometric equation at various spatial scales. The developed output thematic map showed an average biomass distribution of 32-94 Mg ha(-1). The highest biomass values (72-95 Mg ha (-1)) was confined to the dense region of the forest while the lowest biomass values (32-46 Mg ha(-1)) was identified in the outer regions of the study site.
机译:森林是管理碳固存,调节气候变化以及平衡碳源与汇之间的普遍碳平衡的潜在来源。此外,评估生物量,碳储量及其空间分布是监测森林生态系统健康的前提。此外,植被田间清单是估计森林生物量地上生物量(AGB),密度和存储的碳的有价值数据来源。考虑到生物质的重要性,本研究尝试使用中等分辨率成像光谱仪(MODIS),归一化植被指数(NDVI),叶面积指数(LAI)和田野来估计印度Tripura州的时间AGB通过地理空间技术清点数据。在选定的研究地点开发了一种用于建立生物量,LAI和NDVI之间关系的模型。该研究还旨在改进量化和验证基于清单的生物量估计的方法。结果表明,2011年和2014年LAI和NDVI之间的相关值分别为0.87和0.53。估计的AGB与LAI的相关值分别为0.66和0.69,而与NDVI的相关值在2011年和2014年分别为0.64和0.94。针对2011-2014年期间获得的数据,开发了使用MODIS NDVI和LAI测得的生物量的回归模型。建立的模型用于估计生物量的空间分布及其与LAI和NDVI的关系。所获得的R-2值在训练期间的估计AGB为0.832,在验证期间为测量的AGB为0.826。结果表明,本研究中采用的方法可以帮助选择最佳拟合模型,以分析AGB与NDVI / LAI之间的关系以及使用各种空间尺度上的异速方程估算生物量。发达的输出专题图显示平均生物量分布为32-94 Mg ha(-1)。最高的生物量值(72-95 Mg ha(-1))限于森林的密集区域,而最低的生物量值(32-46 Mg ha(-1))在研究场地的外部区域被确定。

著录项

  • 来源
    《Environmental Monitoring and Assessment》 |2019年第9期|593.1-593.15|共15页
  • 作者单位

    Shiv Nadar Univ Ctr Environm Sci & Engn Greater Noida 201314 Uttar Pradesh India|Banaras Hindu Univ Inst Environm & Sustainable Dev Varanasi Uttar Pradesh India|Banaras Hindu Univ DST Mahamana Ctr Excellence Climate Change Res Varanasi Uttar Pradesh India;

    Banaras Hindu Univ Inst Environm & Sustainable Dev Varanasi Uttar Pradesh India|Banaras Hindu Univ DST Mahamana Ctr Excellence Climate Change Res Varanasi Uttar Pradesh India;

    Kumaun Univ Dept Remote Sensing & GIS Almora India;

    Womens Coll Dept Environm Sci Agartala Tripura India;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    MODIS; NDVI; LAI; Biomass; Field inventory; LAI; Regression model;

    机译:MODIS;NDVI;赖;生物质现场库存;赖;回归模型;
  • 入库时间 2022-08-18 05:04:35

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