Mapping aboveground biomass by integrating geospatial and forest inventory data through a k-nearest neighbor strategy in North Central Mexico

被引:0
|
作者
Carlos A AGUIRRE-SALADO [1 ,2 ]
Eduardo J TREVIO-GARZA [1 ]
Oscar A AGUIRRE-CALDERóN [1 ]
Javier JIMNEZ-PREZ [1 ]
Marco A GONZLEZ-TAGLE [1 ]
José R VALDZ-LAZALDE [3 ]
Guillermo SNCHEZ-DíAZ [2 ]
Reija HAAPANEN [4 ]
Alejandro I AGUIRRE-SALADO [3 ]
Liliana MIRANDA-ARAGóN [5 ]
机构
[1] Faculty of Forest Sciences,Autonomous University of Nuevo Leon
[2] Faculty of Engineering,Autonomous University of San Luis Potosi
[3] Forestry Program,Postgraduate College
[4] Haapanen Forest Consulting
[5] Faculty of Agronomy and Veterinary,Autonomous University of San Luis Potosí
关键词
k-nearest neighbor; Mahalanobis; most similar neighbor; MODIS BRDF-adjusted reflectance; forest inventory; the policy of Reducing Emission from Deforestation and Forest Degradation;
D O I
暂无
中图分类号
X171 [生态系统与污染生态学];
学科分类号
071012 ; 0713 ;
摘要
As climate change negotiations progress,monitoring biomass and carbon stocks is becoming an important part of the current forest research.Therefore,national governments are interested in developing forest-monitoring strategies using geospatial technology.Among statistical methods for mapping biomass,there is a nonparametric approach called k-nearest neighbor(kNN).We compared four variations of distance metrics of the kNN for the spatially-explicit estimation of aboveground biomass in a portion of the Mexican north border of the intertropical zone.Satellite derived,climatic,and topographic predictor variables were combined with the Mexican National Forest Inventory(NFI)data to accomplish the purpose.Performance of distance metrics applied into the kNN algorithm was evaluated using a cross validation leave-one-out technique.The results indicate that the Most Similar Neighbor(MSN)approach maximizes the correlation between predictor and response variables(r=0.9).Our results are in agreement with those reported in the literature.These findings confirm the predictive potential of the MSN approach for mapping forest variables at pixel level under the policy of Reducing Emission from Deforestation and Forest Degradation(REDD+).
引用
收藏
页码:80 / 96
页数:17
相关论文
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    Carlos A AGUIRRESALADO
    Eduardo J TREVIOGARZA
    Oscar A AGUIRRECALDERN
    Javier JIMNEZPREZ
    Marco A GONZLEZTAGLE
    Jos R VALDZLAZALDE
    Guillermo SNCHEZDAZ
    Reija HAAPANEN
    Alejandro I AGUIRRESALADO
    Liliana MIRANDAARAGN
    [J]. Journal of Arid Land., 2014, 6 (01) - 96
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    [J]. JOURNAL OF ARID LAND, 2014, 6 (01) : 80 - 96
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