Back to Search Start Over

Model-assisted estimation of forest resources with generalized additive models

Authors :
Göran Kauermann
Jean D. Opsomer
F. Jay Breidt
Gretchen G. Moisen
Publication Year :
2007
Publisher :
AMER STATISTICAL ASSOC, 2007.

Abstract

Multiphase surveys are often conducted in forest inventories, with the goal of estimating forested area and tree characteristics over large regions. This article describes how design-based estimation of such quantities, based on information gathered during ground visits of sampled plots, can be made more precise by incorporating auxiliary information available from remote sensing. The relationship between the ground visit measurements and the remote sensing variables is modeled using generalized additive models. Nonparametric estimators for these models are discussed and applied to forest data collected in the mountains of northern Utah. Model-assisted estimators that use the nonparametric regression fits are proposed for these data. The design context of this study is two-phase systematic sampling from a spatial continuum, under which properties of model-assisted estimators are derived. Difficulties with the standard variance estimation approach, which assumes simple random sampling in each phase, are de...

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....df0d5412288472ba37adbe00606cb1cd
Full Text :
https://doi.org/10.1198/016214506000001491