Literature DB >> 17134821

Combining remote sensing imagery and forest age inventory for biomass mapping.

G Zheng1, J M Chen, Q J Tian, W M Ju, X Q Xia.   

Abstract

Aboveground biomass (AGB) of forests is an important component of the global carbon cycle. In this study, Landsat ETM(+) images and field forest inventory data were used to estimate AGB of forests in Liping County, Guizhou Province, China. Three different vegetation indices, including simple ratio (SR), reduced simple ratio (RSR), and normalized difference vegetation index (NDVI), were calculated from atmospherically corrected ETM(+) reflectance images. A leaf area index (LAI) map was produced from the RSR map using a regression model based on measured LAI and RSR. The LAI map was then used to develop an initial AGB map, from which forest stand age was deduced. Vegetation indices, LAI, and forest stand age were together used to develop AGB estimation models for different forest types through a stepwise regression analysis. Significant predictors of AGB changed with forest types. LAI and NDVI were significant predictors of AGB for Chinese fir (R(2)=0.93). The model using LAI and stand age as predictors explained 94% of the AGB variance for coniferous forests. Stand age captured 79% of the AGB variance for broadleaved forests (R(2)=0.792). AGB of mixed forests was predicted well by LAI and SR (R(2)=0.931). Without differentiating among forest types, the model with SR and LAI as predictors was able to explain 90% of AGB variances of all forests. In Liping County, AGB shows a strong gradient that increases from northeast to southwest. About 64% of the forests have AGB in the range from 90 to 180 t ha(-1).

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Year:  2006        PMID: 17134821     DOI: 10.1016/j.jenvman.2006.07.015

Source DB:  PubMed          Journal:  J Environ Manage        ISSN: 0301-4797            Impact factor:   6.789


  7 in total

1.  Improving artificial forest biomass estimates using afforestation age information from time series Landsat stacks.

Authors:  Liangyun Liu; Dailiang Peng; Zhihui Wang; Yong Hu
Journal:  Environ Monit Assess       Date:  2014-07-18       Impact factor: 2.513

2.  Modeling maize above-ground biomass based on machine learning approaches using UAV remote-sensing data.

Authors:  Liang Han; Guijun Yang; Huayang Dai; Bo Xu; Hao Yang; Haikuan Feng; Zhenhai Li; Xiaodong Yang
Journal:  Plant Methods       Date:  2019-02-04       Impact factor: 4.993

3.  Spatially Explicit Large Area Biomass Estimation: Three Approaches Using Forest Inventory and Remotely Sensed Imagery in a GIS.

Authors:  Michael A Wulder; Joanne C White; Richard A Fournier; Joan E Luther; Steen Magnussen
Journal:  Sensors (Basel)       Date:  2008-01-24       Impact factor: 3.576

4.  Actinobacterial community structure in the Polar Frontal waters of the Southern Ocean of the Antarctica using Geographic Information System (GIS): A novel approach to study Ocean Microbiome.

Authors:  P Sivasankar; K Priyanka; Bhagwan Rekadwad; K Sivakumar; T Thangaradjou; S Poongodi; R Manimurali; P V Bhaskar; N Anilkumar
Journal:  Data Brief       Date:  2018-02-23

5.  Retrieving Leaf Area Index (LAI) Using Remote Sensing: Theories, Methods and Sensors.

Authors:  Guang Zheng; L Monika Moskal
Journal:  Sensors (Basel)       Date:  2009-04-17       Impact factor: 3.576

6.  Mapping regional livelihood benefits from local ecosystem services assessments in rural Sahel.

Authors:  Katja Malmborg; Hanna Sinare; Elin Enfors Kautsky; Issa Ouedraogo; Line J Gordon
Journal:  PLoS One       Date:  2018-02-01       Impact factor: 3.240

7.  Combining Multi-Source Remotely Sensed Data and a Process-Based Model for Forest Aboveground Biomass Updating.

Authors:  Xiaoman Lu; Guang Zheng; Colton Miller; Ernesto Alvarado
Journal:  Sensors (Basel)       Date:  2017-09-08       Impact factor: 3.576

  7 in total

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