Dynamic spatial regression models for space-varying forest stand tables
Andrew O. Finley, Sudipto Banerjee, Aaron R. Weiskittel, Chad Babcock,, and Bruce D. Cook

TL;DR
This paper introduces a dynamic multivariate Poisson spatial regression model for estimating high-resolution forest stand tables, effectively capturing spatial and inter-class correlations to improve forest management planning.
Contribution
It develops a novel spatial regression approach that incorporates auxiliary data and models residual spatial structure for detailed forest stand mapping.
Findings
Model improves fit and prediction accuracy.
Incorporates LiDAR data for enhanced estimates.
Provides high-resolution stand table maps with uncertainty measures.
Abstract
Many forest management planning decisions are based on information about the number of trees by species and diameter per unit area. This information is commonly summarized in a stand table, where a stand is defined as a group of forest trees of sufficiently uniform species composition, age, condition, or productivity to be considered a homogeneous unit for planning purposes. Typically information used to construct stand tables is gleaned from observed subsets of the forest selected using a probability-based sampling design. Such sampling campaigns are expensive and hence only a small number of sample units are typically observed. This data paucity means that stand tables can only be estimated for relatively large areal units. Contemporary forest management planning and spatially explicit ecosystem models require stand table input at higher spatial resolution than can be affordably…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · Forest ecology and management · Soil Geostatistics and Mapping
