Simplifying small area estimation with rFIA: a demonstration of tools and techniques
Hunter Stanke, Andrew O. Finley, and Grant M. Domke

TL;DR
This paper introduces rFIA, an open-source R package that simplifies the application of small area estimation methods to FIA data, enabling more accurate and detailed forest variable estimates at smaller spatial and temporal scales.
Contribution
The paper presents rFIA, a new software tool that makes complex small area estimation techniques accessible for FIA data analysis, demonstrated through two practical case studies.
Findings
rFIA facilitates county-level forest carbon stock estimation across the US.
It enables multi-decadal trend analysis of wood volume in Maine.
The package simplifies complex SAE methods for practical use.
Abstract
The United States (US) Forest Service Forest Inventory and Analysis (FIA) program operates the national forest inventory of the US. Traditionally, the FIA program has relied on sample-based approaches -- permanent plot networks and associated design-based estimators -- to estimate forest variables across large geographic areas and long periods of time. These approaches generally offer unbiased inference on large domains but fail to provide reliable estimates for small domains due to low sample sizes. Rising demand for small domain estimates will thus require the FIA program to adopt non-traditional estimation approaches that are capable of delivering defensible estimates of forest variables at increased spatial and temporal resolution, without the expense of collecting additional field data. In light of this challenge, the development of small area estimation (SAE) methods for FIA data…
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Taxonomy
TopicsForest ecology and management · Spatial and Panel Data Analysis · Soil Geostatistics and Mapping
